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    <title>Data Matas</title>
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    <description>A show to explore all data matters. 

From small to big, every company on the market, irrespective of their industry, is a data merchant. How they choose to keep, interrogate and understand their data is now mission critical.  30 years of spaghetti-tech, data tech debt, or rapid growth challenges are the reality in most companies.

Join Aaron Phethean, veteran intrapreneur-come-entrepreneur with hundreds of lived examples of wins and losses in the data space, as he embarques on a journey of discovering what matters most in data nowadays by speaking to other technologists and business leaders who tackle their own data challenges every day. 

Learn from their mistakes and be inspired by their stories of how they've made their data make sense and work for them.

This podcast brought to you by Matatika - "Unlock the Insights in your Data"</description>
    <copyright>© 2026 Matatika</copyright>
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    <podcast:locked>yes</podcast:locked>
    <language>en</language>
    <pubDate>Thu, 12 Feb 2026 05:55:36 -0800</pubDate>
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      <title>Data Matas</title>
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    <itunes:type>episodic</itunes:type>
    <itunes:author>Matatika</itunes:author>
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    <itunes:summary>A show to explore all data matters. 

From small to big, every company on the market, irrespective of their industry, is a data merchant. How they choose to keep, interrogate and understand their data is now mission critical.  30 years of spaghetti-tech, data tech debt, or rapid growth challenges are the reality in most companies.

Join Aaron Phethean, veteran intrapreneur-come-entrepreneur with hundreds of lived examples of wins and losses in the data space, as he embarques on a journey of discovering what matters most in data nowadays by speaking to other technologists and business leaders who tackle their own data challenges every day. 

Learn from their mistakes and be inspired by their stories of how they've made their data make sense and work for them.

This podcast brought to you by Matatika - "Unlock the Insights in your Data"</itunes:summary>
    <itunes:subtitle>A show to explore all data matters.</itunes:subtitle>
    <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
    <itunes:owner>
      <itunes:name>Aaron Phethean</itunes:name>
      <itunes:email>aphethean@matatika.com</itunes:email>
    </itunes:owner>
    <itunes:complete>No</itunes:complete>
    <itunes:explicit>No</itunes:explicit>
    <item>
      <title>S3E7 - Building High-Performance Data Teams Starts With People, Not Tools</title>
      <itunes:episode>21</itunes:episode>
      <podcast:episode>21</podcast:episode>
      <itunes:title>S3E7 - Building High-Performance Data Teams Starts With People, Not Tools</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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      <description>
        <![CDATA[<p><strong>Data Engineering as a Team Sport: Coaching, Accountability, and Pragmatism</strong></p><p>In this episode, <strong>Sam Wrench</strong>, Lead at <strong>Reality Mine</strong>, joins us to explore what actually makes data teams perform at a high level.</p><p>We cover:</p><p>Why data engineering breaks down when teams optimise for tools instead of people<br> How coaching principles translate directly from elite sport to data leadership<br> Why dogfooding your own data creates faster feedback loops and better quality<br> How to think about AI as a managed colleague, not an autopilot<br> Why pragmatic, security-first tooling often beats chasing industry hype</p><p>This is a grounded conversation for anyone building data platforms that real teams and real decisions depend on.</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p><strong>Data Engineering as a Team Sport: Coaching, Accountability, and Pragmatism</strong></p><p>In this episode, <strong>Sam Wrench</strong>, Lead at <strong>Reality Mine</strong>, joins us to explore what actually makes data teams perform at a high level.</p><p>We cover:</p><p>Why data engineering breaks down when teams optimise for tools instead of people<br> How coaching principles translate directly from elite sport to data leadership<br> Why dogfooding your own data creates faster feedback loops and better quality<br> How to think about AI as a managed colleague, not an autopilot<br> Why pragmatic, security-first tooling often beats chasing industry hype</p><p>This is a grounded conversation for anyone building data platforms that real teams and real decisions depend on.</p>]]>
      </content:encoded>
      <pubDate>Thu, 12 Feb 2026 05:55:36 -0800</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/76a3d503/51b3ffd3.mp3" length="39230190" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/ogG_e7GgXLADJ-6o863d4loKuQYxcNwDFj58SeY2ef4/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS83Yzc1/OTA5MDc5MGViMTVj/YmNhYmM3NGM1MTJk/OTcwNS5wbmc.jpg"/>
      <itunes:duration>2449</itunes:duration>
      <itunes:summary>
        <![CDATA[<p><strong>Data Engineering as a Team Sport: Coaching, Accountability, and Pragmatism</strong></p><p>In this episode, <strong>Sam Wrench</strong>, Lead at <strong>Reality Mine</strong>, joins us to explore what actually makes data teams perform at a high level.</p><p>We cover:</p><p>Why data engineering breaks down when teams optimise for tools instead of people<br> How coaching principles translate directly from elite sport to data leadership<br> Why dogfooding your own data creates faster feedback loops and better quality<br> How to think about AI as a managed colleague, not an autopilot<br> Why pragmatic, security-first tooling often beats chasing industry hype</p><p>This is a grounded conversation for anyone building data platforms that real teams and real decisions depend on.</p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/76a3d503/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S3E6 - Analytics Engineering: Internal Risk vs. External Rigor</title>
      <itunes:episode>20</itunes:episode>
      <podcast:episode>20</podcast:episode>
      <itunes:title>S3E6 - Analytics Engineering: Internal Risk vs. External Rigor</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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      <link>https://share.transistor.fm/s/8b6a4f06</link>
      <description>
        <![CDATA[<p>Analytics Engineering: Internal Risk vs. External Rigor | Ft. Jack Doherty (Fresha)<br>The stakes are higher than ever for Analytics Engineers. When your data becomes a core, customer-facing product, the game changes.</p><p>Jack Doherty (Head of AE, Fresha) discusses the massive difference between internal and external analytics:</p><p>Risk vs. Rigor: Why internal projects can move fast (risk), but product-facing data demands DevOps-level rigor, testing, and governance.</p><p>Real-Time Data: The technical shift from scheduled batches to CDC for meeting customer demands for speed and consistency.</p><p>The Missing Link: Why the Semantic Layer is the future of AE, crucial for codifying business logic and powering accurate AI/Chat interfaces.</p><p>A must-watch for any AE treating data as a product.</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>Analytics Engineering: Internal Risk vs. External Rigor | Ft. Jack Doherty (Fresha)<br>The stakes are higher than ever for Analytics Engineers. When your data becomes a core, customer-facing product, the game changes.</p><p>Jack Doherty (Head of AE, Fresha) discusses the massive difference between internal and external analytics:</p><p>Risk vs. Rigor: Why internal projects can move fast (risk), but product-facing data demands DevOps-level rigor, testing, and governance.</p><p>Real-Time Data: The technical shift from scheduled batches to CDC for meeting customer demands for speed and consistency.</p><p>The Missing Link: Why the Semantic Layer is the future of AE, crucial for codifying business logic and powering accurate AI/Chat interfaces.</p><p>A must-watch for any AE treating data as a product.</p>]]>
      </content:encoded>
      <pubDate>Thu, 15 Jan 2026 10:00:00 -0800</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/8b6a4f06/8a7d7abe.mp3" length="38230769" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/_-qNfsUOpka2c1FQH8Q2fMWxt45AxCqjrH-sohycj0U/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS9mYjEz/Yzc1YzUzZWJlNDlj/YmRhOWM5NWIwYTYy/YjYyMS5wbmc.jpg"/>
      <itunes:duration>2386</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>Analytics Engineering: Internal Risk vs. External Rigor | Ft. Jack Doherty (Fresha)<br>The stakes are higher than ever for Analytics Engineers. When your data becomes a core, customer-facing product, the game changes.</p><p>Jack Doherty (Head of AE, Fresha) discusses the massive difference between internal and external analytics:</p><p>Risk vs. Rigor: Why internal projects can move fast (risk), but product-facing data demands DevOps-level rigor, testing, and governance.</p><p>Real-Time Data: The technical shift from scheduled batches to CDC for meeting customer demands for speed and consistency.</p><p>The Missing Link: Why the Semantic Layer is the future of AE, crucial for codifying business logic and powering accurate AI/Chat interfaces.</p><p>A must-watch for any AE treating data as a product.</p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/8b6a4f06/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S3E5 - Building Data Platforms That Actually Solve Business Problems</title>
      <itunes:episode>19</itunes:episode>
      <podcast:episode>19</podcast:episode>
      <itunes:title>S3E5 - Building Data Platforms That Actually Solve Business Problems</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">c6f5d95f-9cd5-45d0-ae28-1d995883cad2</guid>
      <link>https://share.transistor.fm/s/9515072a</link>
      <description>
        <![CDATA[<p>Stop Coding, Start Diagramming: How to Build Data Platforms That Deliver</p><p>If you're rushing to hire a data engineer before you have a clear business question, you’re doing it backwards.</p><p>I'm joined by Teddy Bernays (Freelance Data Engineer) to unpack his "business first" approach. Teddy shares his journey and explains why simplicity and a solid plan always beat the latest tech stack.</p><p>His top advice: "Find the problem you want to solve first. Is data the answer? Only then should you start building."</p><p>In this episode, we cover: <br>▶️ Why you should hire a Data Analyst before a Data Engineer <br>▶️ The "Diagram First" rule for technical projects <br>▶️ How to escape the painful world of legacy spreadsheets <br>▶️ Finding freelance clients in the real world (get off LinkedIn!) <br>▶️ Using AI to finally solve your documentation problems</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>Stop Coding, Start Diagramming: How to Build Data Platforms That Deliver</p><p>If you're rushing to hire a data engineer before you have a clear business question, you’re doing it backwards.</p><p>I'm joined by Teddy Bernays (Freelance Data Engineer) to unpack his "business first" approach. Teddy shares his journey and explains why simplicity and a solid plan always beat the latest tech stack.</p><p>His top advice: "Find the problem you want to solve first. Is data the answer? Only then should you start building."</p><p>In this episode, we cover: <br>▶️ Why you should hire a Data Analyst before a Data Engineer <br>▶️ The "Diagram First" rule for technical projects <br>▶️ How to escape the painful world of legacy spreadsheets <br>▶️ Finding freelance clients in the real world (get off LinkedIn!) <br>▶️ Using AI to finally solve your documentation problems</p>]]>
      </content:encoded>
      <pubDate>Fri, 19 Dec 2025 10:00:00 -0800</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/9515072a/249cf692.mp3" length="41510361" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/yCXfZ7fi1oHZpxEfAREPQRu0du_Tn3-hG7rl47wWaH0/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS82NjU4/ODhkMDdhMDU2NTRl/MGI4Zjg0Mzg0ZWUx/ZDFhMC5wbmc.jpg"/>
      <itunes:duration>2591</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>Stop Coding, Start Diagramming: How to Build Data Platforms That Deliver</p><p>If you're rushing to hire a data engineer before you have a clear business question, you’re doing it backwards.</p><p>I'm joined by Teddy Bernays (Freelance Data Engineer) to unpack his "business first" approach. Teddy shares his journey and explains why simplicity and a solid plan always beat the latest tech stack.</p><p>His top advice: "Find the problem you want to solve first. Is data the answer? Only then should you start building."</p><p>In this episode, we cover: <br>▶️ Why you should hire a Data Analyst before a Data Engineer <br>▶️ The "Diagram First" rule for technical projects <br>▶️ How to escape the painful world of legacy spreadsheets <br>▶️ Finding freelance clients in the real world (get off LinkedIn!) <br>▶️ Using AI to finally solve your documentation problems</p>]]>
      </itunes:summary>
      <itunes:keywords>Data Platform Strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/9515072a/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S3E4 - Build Strategy First. Choose Technology That Deserves It.</title>
      <itunes:episode>18</itunes:episode>
      <podcast:episode>18</podcast:episode>
      <itunes:title>S3E4 - Build Strategy First. Choose Technology That Deserves It.</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">e1db766f-68a4-4f41-8af7-216a78d76d4c</guid>
      <link>https://share.transistor.fm/s/7ac80c2f</link>
      <description>
        <![CDATA[<p><strong><br>Build Strategy First. Choose Technology That Deserves It.<br></strong><br></p><p><br>If your company’s first move is buying another tool, this episode’s for you.</p><p><br>I’m joined by <strong>Dylan Anderson</strong> (Head of Data Strategy, Perfusion) to unpack why so many data strategies fail before they begin — and how to build one that actually delivers.</p><p><br>Dylan’s worked with some of the world’s biggest organisations, helping them turn data chaos into clarity. His advice is refreshingly simple:</p><p><br>“Buying more tools doesn’t give you a strategy.”</p><p><br>In this episode, we talk about:<br> ▶️ Why data strategy starts with people, not platforms<br> ▶️ How honest technology builds trust<br> ▶️ Why simplifying your stack beats automating chaos<br> ▶️ The real future of AI — and it’s not chatbots</p><p><br>It’s a straight-talking conversation about cutting noise, making smarter technology choices, and building data foundations that actually deliver.</p><p><br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p><strong><br>Build Strategy First. Choose Technology That Deserves It.<br></strong><br></p><p><br>If your company’s first move is buying another tool, this episode’s for you.</p><p><br>I’m joined by <strong>Dylan Anderson</strong> (Head of Data Strategy, Perfusion) to unpack why so many data strategies fail before they begin — and how to build one that actually delivers.</p><p><br>Dylan’s worked with some of the world’s biggest organisations, helping them turn data chaos into clarity. His advice is refreshingly simple:</p><p><br>“Buying more tools doesn’t give you a strategy.”</p><p><br>In this episode, we talk about:<br> ▶️ Why data strategy starts with people, not platforms<br> ▶️ How honest technology builds trust<br> ▶️ Why simplifying your stack beats automating chaos<br> ▶️ The real future of AI — and it’s not chatbots</p><p><br>It’s a straight-talking conversation about cutting noise, making smarter technology choices, and building data foundations that actually deliver.</p><p><br></p>]]>
      </content:encoded>
      <pubDate>Thu, 13 Nov 2025 07:19:32 -0800</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/7ac80c2f/b71f71e8.mp3" length="32733859" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/l-J7rRI0fxtxZ0d0LdMGYc5TpAh9KB5AC_AThW8MNos/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS9kYjA5/OGJmM2MyMWExODUx/YTkzZjFhNTFkYmYx/NGFkYS5wbmc.jpg"/>
      <itunes:duration>2044</itunes:duration>
      <itunes:summary>
        <![CDATA[<p><strong><br>Build Strategy First. Choose Technology That Deserves It.<br></strong><br></p><p><br>If your company’s first move is buying another tool, this episode’s for you.</p><p><br>I’m joined by <strong>Dylan Anderson</strong> (Head of Data Strategy, Perfusion) to unpack why so many data strategies fail before they begin — and how to build one that actually delivers.</p><p><br>Dylan’s worked with some of the world’s biggest organisations, helping them turn data chaos into clarity. His advice is refreshingly simple:</p><p><br>“Buying more tools doesn’t give you a strategy.”</p><p><br>In this episode, we talk about:<br> ▶️ Why data strategy starts with people, not platforms<br> ▶️ How honest technology builds trust<br> ▶️ Why simplifying your stack beats automating chaos<br> ▶️ The real future of AI — and it’s not chatbots</p><p><br>It’s a straight-talking conversation about cutting noise, making smarter technology choices, and building data foundations that actually deliver.</p><p><br></p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/7ac80c2f/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S3E3 - Three Things to Kill Before You Build Another Dashboard</title>
      <itunes:episode>17</itunes:episode>
      <podcast:episode>17</podcast:episode>
      <itunes:title>S3E3 - Three Things to Kill Before You Build Another Dashboard</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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      <link>https://www.matatika.com/podcasts/s3e3-three-things-to-kill-before-you-build-another-dashboard/</link>
      <description>
        <![CDATA[<p>Most data teams think their next dashboard will finally deliver clarity, but every new report just adds to the noise.<br>In this episode of Data Matas, Aaron Phethean speaks with Phil Thirlwell, former Director of Analytics &amp; Data Strategy at FIS, about the three things every data leader should kill before building another dashboard: dashboard sprawl, service-desk habits, and KPI overload.<br>Phil shares how he tackled 600-plus Power BI dashboards, why “can you just…” requests destroy team focus, and how the best data leaders rebuild trust through simplification and shared ownership.</p><p>You’ll learn:<br> ▶️ Why dashboard sprawl erodes clarity and confidence<br> ▶️ How to escape the “service desk” trap and focus on real business outcomes<br> ▶️ Why trimming KPIs forces better decisions and stronger alignment<br> ▶️ How co-developing metrics builds trust across teams<br> ▶️ Why AI and automation can’t fix messy data foundations</p><p>This is a practical, candid conversation for data leaders who want less noise, more trust, and teams that deliver measurable impact.</p><p>📺 Subscribe for more real conversations with data leaders: <a href="https://www.youtube.com/@matatika">https://www.youtube.com/@matatika</a><br>🎙️ Listen on all major podcast platforms: <a href="https://www.matatika.com/podcasts">https://www.matatika.com/podcasts</a></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>Most data teams think their next dashboard will finally deliver clarity, but every new report just adds to the noise.<br>In this episode of Data Matas, Aaron Phethean speaks with Phil Thirlwell, former Director of Analytics &amp; Data Strategy at FIS, about the three things every data leader should kill before building another dashboard: dashboard sprawl, service-desk habits, and KPI overload.<br>Phil shares how he tackled 600-plus Power BI dashboards, why “can you just…” requests destroy team focus, and how the best data leaders rebuild trust through simplification and shared ownership.</p><p>You’ll learn:<br> ▶️ Why dashboard sprawl erodes clarity and confidence<br> ▶️ How to escape the “service desk” trap and focus on real business outcomes<br> ▶️ Why trimming KPIs forces better decisions and stronger alignment<br> ▶️ How co-developing metrics builds trust across teams<br> ▶️ Why AI and automation can’t fix messy data foundations</p><p>This is a practical, candid conversation for data leaders who want less noise, more trust, and teams that deliver measurable impact.</p><p>📺 Subscribe for more real conversations with data leaders: <a href="https://www.youtube.com/@matatika">https://www.youtube.com/@matatika</a><br>🎙️ Listen on all major podcast platforms: <a href="https://www.matatika.com/podcasts">https://www.matatika.com/podcasts</a></p>]]>
      </content:encoded>
      <pubDate>Thu, 30 Oct 2025 07:22:50 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/b3cb0f33/e9044148.mp3" length="36698208" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/jn006uRLMLe143QaHKvxkKazJhD9YC-JAdL5gIN1yU4/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS83MmUz/ODYwZTBlZWMxYzgy/ODAyZWIzMGUyZGIx/MjNmZC5wbmc.jpg"/>
      <itunes:duration>2246</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>Most data teams think their next dashboard will finally deliver clarity, but every new report just adds to the noise.<br>In this episode of Data Matas, Aaron Phethean speaks with Phil Thirlwell, former Director of Analytics &amp; Data Strategy at FIS, about the three things every data leader should kill before building another dashboard: dashboard sprawl, service-desk habits, and KPI overload.<br>Phil shares how he tackled 600-plus Power BI dashboards, why “can you just…” requests destroy team focus, and how the best data leaders rebuild trust through simplification and shared ownership.</p><p>You’ll learn:<br> ▶️ Why dashboard sprawl erodes clarity and confidence<br> ▶️ How to escape the “service desk” trap and focus on real business outcomes<br> ▶️ Why trimming KPIs forces better decisions and stronger alignment<br> ▶️ How co-developing metrics builds trust across teams<br> ▶️ Why AI and automation can’t fix messy data foundations</p><p>This is a practical, candid conversation for data leaders who want less noise, more trust, and teams that deliver measurable impact.</p><p>📺 Subscribe for more real conversations with data leaders: <a href="https://www.youtube.com/@matatika">https://www.youtube.com/@matatika</a><br>🎙️ Listen on all major podcast platforms: <a href="https://www.matatika.com/podcasts">https://www.matatika.com/podcasts</a></p>]]>
      </itunes:summary>
      <itunes:keywords>Dashboard; Data; AI in data; DataLeadership; DataTeams; Analytics; </itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/b3cb0f33/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S3E2 - BI Has the Worst ROI in the Modern Data Stack</title>
      <itunes:episode>16</itunes:episode>
      <podcast:episode>16</podcast:episode>
      <itunes:title>S3E2 - BI Has the Worst ROI in the Modern Data Stack</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">41375514-fe58-457c-9389-71dda7bd03db</guid>
      <link>https://www.matatika.com/podcasts/s3e2-bi-has-the-worst-roi-in-the-modern-data-stack/</link>
      <description>
        <![CDATA[<p><br>Most of the modern data stack has transformed, pipelines, compute, governance. But BI? It’s still the same dashboards and reports we were using 20 years ago. Expensive, read-only, and delivering the worst ROI in the stack.</p><p>In this episode of <em>Data Matas</em>, Ollie Hughes, CEO of<a href="https://count.co"> Count</a>, joins Aaron Phethean to share why BI tools eroded trust, why AI won’t fix reporting chaos, and how data teams can escape the “service trap” to become real decision-making partners.</p><p><strong>You’ll learn:<br></strong> ▶️ Why BI tools are the worst ROI in the modern stack<br> ▶️ How the “service trap” caps your team’s value<br> ▶️ Why AI makes reporting faster but not better<br> ▶️ How to build trust in data beyond accuracy alone<br> ▶️ Why ruthless prioritisation is the ultimate lever for data leaders</p><p>This is a practical, candid conversation about the real challenges data teams face — and how to refocus BI on clarity, trust, and decisions that matter.</p><p>📺 Subscribe for more real conversations with data leaders:<a href="https://www.youtube.com/@matatika"> https://www.youtube.com/@matatika<br></a> 🎙️ Listen on all major podcast platforms:<a href="https://www.matatika.com/podcasts/"> https://www.matatika.com/podcasts/<br></a><br></p><p><br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p><br>Most of the modern data stack has transformed, pipelines, compute, governance. But BI? It’s still the same dashboards and reports we were using 20 years ago. Expensive, read-only, and delivering the worst ROI in the stack.</p><p>In this episode of <em>Data Matas</em>, Ollie Hughes, CEO of<a href="https://count.co"> Count</a>, joins Aaron Phethean to share why BI tools eroded trust, why AI won’t fix reporting chaos, and how data teams can escape the “service trap” to become real decision-making partners.</p><p><strong>You’ll learn:<br></strong> ▶️ Why BI tools are the worst ROI in the modern stack<br> ▶️ How the “service trap” caps your team’s value<br> ▶️ Why AI makes reporting faster but not better<br> ▶️ How to build trust in data beyond accuracy alone<br> ▶️ Why ruthless prioritisation is the ultimate lever for data leaders</p><p>This is a practical, candid conversation about the real challenges data teams face — and how to refocus BI on clarity, trust, and decisions that matter.</p><p>📺 Subscribe for more real conversations with data leaders:<a href="https://www.youtube.com/@matatika"> https://www.youtube.com/@matatika<br></a> 🎙️ Listen on all major podcast platforms:<a href="https://www.matatika.com/podcasts/"> https://www.matatika.com/podcasts/<br></a><br></p><p><br></p>]]>
      </content:encoded>
      <pubDate>Thu, 16 Oct 2025 02:04:05 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/001fbe2e/f895eadd.mp3" length="36374191" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/jgU1z-xb43McmW2CqgbiK__SoGtpBJePoUrKDmieYVM/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS9lOTQ5/MzMzNzU3NTU2OGNh/NTc1YTViZGJiYzUz/YTVkYy5wbmc.jpg"/>
      <itunes:duration>2270</itunes:duration>
      <itunes:summary>
        <![CDATA[<p><br>Most of the modern data stack has transformed, pipelines, compute, governance. But BI? It’s still the same dashboards and reports we were using 20 years ago. Expensive, read-only, and delivering the worst ROI in the stack.</p><p>In this episode of <em>Data Matas</em>, Ollie Hughes, CEO of<a href="https://count.co"> Count</a>, joins Aaron Phethean to share why BI tools eroded trust, why AI won’t fix reporting chaos, and how data teams can escape the “service trap” to become real decision-making partners.</p><p><strong>You’ll learn:<br></strong> ▶️ Why BI tools are the worst ROI in the modern stack<br> ▶️ How the “service trap” caps your team’s value<br> ▶️ Why AI makes reporting faster but not better<br> ▶️ How to build trust in data beyond accuracy alone<br> ▶️ Why ruthless prioritisation is the ultimate lever for data leaders</p><p>This is a practical, candid conversation about the real challenges data teams face — and how to refocus BI on clarity, trust, and decisions that matter.</p><p>📺 Subscribe for more real conversations with data leaders:<a href="https://www.youtube.com/@matatika"> https://www.youtube.com/@matatika<br></a> 🎙️ Listen on all major podcast platforms:<a href="https://www.matatika.com/podcasts/"> https://www.matatika.com/podcasts/<br></a><br></p><p><br></p>]]>
      </itunes:summary>
      <itunes:keywords>BusinessIntelligence; DataLeadership; DataTeams; Analytics; BItools; Matatika; DataMatas; DataStrategy; Count</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/001fbe2e/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S3E1 - How Hypebeast Reached 97% AI Adoption Without Fear or Layoffs</title>
      <itunes:episode>15</itunes:episode>
      <podcast:episode>15</podcast:episode>
      <itunes:title>S3E1 - How Hypebeast Reached 97% AI Adoption Without Fear or Layoffs</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">6f480797-1a90-4710-8218-e4d14df3403e</guid>
      <link>https://share.transistor.fm/s/f7c9a9ed</link>
      <description>
        <![CDATA[<p><em>Want 97% AI Adoption? Start By Saying “Not Yet” <br></em><br></p><p><em>Hypebeast withheld access for 10 weeks, teased value, and turned demand into near-universal adoption. <br></em><br></p><p>In this episode of <em>Data Matas</em>, Aaron speaks with Sami Rahman, Director of Data &amp; AI at Hypebeast, about what it really takes to embed AI inside a modern business.</p><p>Sami shares how his psychology background shapes his approach to adoption, why fear of AI is more about broken safety nets than the technology itself, and why Hypebeast uses AI as a force multiplier — not a replacement for creative teams.</p><p>He explains how he deliberately teased AI’s potential for 10 weeks before giving access, using curiosity and scarcity to spark demand. The result? 97% adoption across the company.</p><p>Listeners will also hear how Hypebeast prioritises <em>boring but valuable</em> use cases — automating system updates, consolidating research, scanning trends — and why Sami treats AI agents as disposable tools with clear lifecycles, not permanent fixtures.</p><p>It’s a grounded, practical conversation about the human side of AI adoption and the discipline it takes to keep hype from overrunning reality.</p><p>Watch the full episode on YouTube, or listen on Spotify and Apple Podcasts.</p><p>👤 <a href="https://www.linkedin.com/in/samikrahman/">Sami Rahman on LinkedIn</a><br>👤 <a href="https://www.linkedin.com/in/aaron-phethean/">Aaron Phethean on LinkedIn</a><br>🎧 <a href="https://www.matatika.com/podcasts/">Data Matas Podcast</a><br>📺 <a href="https://www.youtube.com/@matatika">YouTube</a><br>🌐<a href="https://www.matatika.com"> Matatika Website</a></p><p><br></p><p> </p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p><em>Want 97% AI Adoption? Start By Saying “Not Yet” <br></em><br></p><p><em>Hypebeast withheld access for 10 weeks, teased value, and turned demand into near-universal adoption. <br></em><br></p><p>In this episode of <em>Data Matas</em>, Aaron speaks with Sami Rahman, Director of Data &amp; AI at Hypebeast, about what it really takes to embed AI inside a modern business.</p><p>Sami shares how his psychology background shapes his approach to adoption, why fear of AI is more about broken safety nets than the technology itself, and why Hypebeast uses AI as a force multiplier — not a replacement for creative teams.</p><p>He explains how he deliberately teased AI’s potential for 10 weeks before giving access, using curiosity and scarcity to spark demand. The result? 97% adoption across the company.</p><p>Listeners will also hear how Hypebeast prioritises <em>boring but valuable</em> use cases — automating system updates, consolidating research, scanning trends — and why Sami treats AI agents as disposable tools with clear lifecycles, not permanent fixtures.</p><p>It’s a grounded, practical conversation about the human side of AI adoption and the discipline it takes to keep hype from overrunning reality.</p><p>Watch the full episode on YouTube, or listen on Spotify and Apple Podcasts.</p><p>👤 <a href="https://www.linkedin.com/in/samikrahman/">Sami Rahman on LinkedIn</a><br>👤 <a href="https://www.linkedin.com/in/aaron-phethean/">Aaron Phethean on LinkedIn</a><br>🎧 <a href="https://www.matatika.com/podcasts/">Data Matas Podcast</a><br>📺 <a href="https://www.youtube.com/@matatika">YouTube</a><br>🌐<a href="https://www.matatika.com"> Matatika Website</a></p><p><br></p><p> </p>]]>
      </content:encoded>
      <pubDate>Thu, 02 Oct 2025 01:10:58 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/f7c9a9ed/7e8c0f03.mp3" length="58332178" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/7bfZME5khAF27w8u6yZhGKMDg2xJcXk2-5lwhkdNLT8/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS83MWIw/ZDU2MDY2OTg5ODI5/MTBjZTE4NWQ5ZmIy/NTE2MC5wbmc.jpg"/>
      <itunes:duration>2429</itunes:duration>
      <itunes:summary>
        <![CDATA[<p><em>Want 97% AI Adoption? Start By Saying “Not Yet” <br></em><br></p><p><em>Hypebeast withheld access for 10 weeks, teased value, and turned demand into near-universal adoption. <br></em><br></p><p>In this episode of <em>Data Matas</em>, Aaron speaks with Sami Rahman, Director of Data &amp; AI at Hypebeast, about what it really takes to embed AI inside a modern business.</p><p>Sami shares how his psychology background shapes his approach to adoption, why fear of AI is more about broken safety nets than the technology itself, and why Hypebeast uses AI as a force multiplier — not a replacement for creative teams.</p><p>He explains how he deliberately teased AI’s potential for 10 weeks before giving access, using curiosity and scarcity to spark demand. The result? 97% adoption across the company.</p><p>Listeners will also hear how Hypebeast prioritises <em>boring but valuable</em> use cases — automating system updates, consolidating research, scanning trends — and why Sami treats AI agents as disposable tools with clear lifecycles, not permanent fixtures.</p><p>It’s a grounded, practical conversation about the human side of AI adoption and the discipline it takes to keep hype from overrunning reality.</p><p>Watch the full episode on YouTube, or listen on Spotify and Apple Podcasts.</p><p>👤 <a href="https://www.linkedin.com/in/samikrahman/">Sami Rahman on LinkedIn</a><br>👤 <a href="https://www.linkedin.com/in/aaron-phethean/">Aaron Phethean on LinkedIn</a><br>🎧 <a href="https://www.matatika.com/podcasts/">Data Matas Podcast</a><br>📺 <a href="https://www.youtube.com/@matatika">YouTube</a><br>🌐<a href="https://www.matatika.com"> Matatika Website</a></p><p><br></p><p> </p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
    </item>
    <item>
      <title>S2E6 - Stop Scaling What You Don’t Understand With John Napoleon-Kuofie</title>
      <itunes:episode>14</itunes:episode>
      <podcast:episode>14</podcast:episode>
      <itunes:title>S2E6 - Stop Scaling What You Don’t Understand With John Napoleon-Kuofie</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">8bee223d-4860-4b66-a08a-db2c956751b9</guid>
      <link>https://share.transistor.fm/s/5868c1e7</link>
      <description>
        <![CDATA[<p>What if scaling your data platform meant starting from scratch?</p><p>In this episode of Data Matas, John Napoleon-Kuofie, Analytics Engineer at Monzo, shares what it really takes to rebuild trust in your models - inside one of the UK’s fastest-growing digital banks.</p><p>From inheriting 1,000+ undocumented DBT models to challenging the purpose of legacy tests, John walks through the decisions his team is making to improve data quality, reduce noise, and future-proof their platform. It’s a candid, practical conversation about choosing clarity over complexity, and learning to say no to work that doesn’t deliver value.</p><p>👉 In this episode, you’ll learn how to:</p><p>Rebuild inherited models by starting with real-world concepts, not assumptions</p><p>Reduce alert fatigue by testing only what matters (and ignoring the rest)</p><p>Prepare your data architecture before layering on AI or self-serve tools</p><p>Design systems that future engineers can actually understand</p><p>Foster a culture where bottom-up innovation drives real change</p><p>Watch the full episode on YouTube, or listen on Spotify and Apple Podcasts.</p><p>👤 <a href="https://www.linkedin.com/in/john-napoleon-kuofie-a3757867/">John Napoleon-Kuofie on LinkedIn</a><br>👤 <a href="https://www.linkedin.com/in/aaron-phethean/">Aaron Phethean on LinkedIn</a><br>🎧<a href="%20https://www.matatika.com/podcasts"> Data Matas Podcast</a><br>🌐 <a href="https://www.matatika.com">Matatika Website</a></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>What if scaling your data platform meant starting from scratch?</p><p>In this episode of Data Matas, John Napoleon-Kuofie, Analytics Engineer at Monzo, shares what it really takes to rebuild trust in your models - inside one of the UK’s fastest-growing digital banks.</p><p>From inheriting 1,000+ undocumented DBT models to challenging the purpose of legacy tests, John walks through the decisions his team is making to improve data quality, reduce noise, and future-proof their platform. It’s a candid, practical conversation about choosing clarity over complexity, and learning to say no to work that doesn’t deliver value.</p><p>👉 In this episode, you’ll learn how to:</p><p>Rebuild inherited models by starting with real-world concepts, not assumptions</p><p>Reduce alert fatigue by testing only what matters (and ignoring the rest)</p><p>Prepare your data architecture before layering on AI or self-serve tools</p><p>Design systems that future engineers can actually understand</p><p>Foster a culture where bottom-up innovation drives real change</p><p>Watch the full episode on YouTube, or listen on Spotify and Apple Podcasts.</p><p>👤 <a href="https://www.linkedin.com/in/john-napoleon-kuofie-a3757867/">John Napoleon-Kuofie on LinkedIn</a><br>👤 <a href="https://www.linkedin.com/in/aaron-phethean/">Aaron Phethean on LinkedIn</a><br>🎧<a href="%20https://www.matatika.com/podcasts"> Data Matas Podcast</a><br>🌐 <a href="https://www.matatika.com">Matatika Website</a></p>]]>
      </content:encoded>
      <pubDate>Wed, 11 Jun 2025 18:21:47 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/5868c1e7/97230a4b.mp3" length="34920605" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/LRlnOAVH1kXnJeldc2gXWe38ess26a49SgQO5tbyDt4/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS81M2Y4/MDA0NzA3ODc0OGEz/MjNiYmE1ZDFiYmMy/ODZiYy5wbmc.jpg"/>
      <itunes:duration>2179</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>What if scaling your data platform meant starting from scratch?</p><p>In this episode of Data Matas, John Napoleon-Kuofie, Analytics Engineer at Monzo, shares what it really takes to rebuild trust in your models - inside one of the UK’s fastest-growing digital banks.</p><p>From inheriting 1,000+ undocumented DBT models to challenging the purpose of legacy tests, John walks through the decisions his team is making to improve data quality, reduce noise, and future-proof their platform. It’s a candid, practical conversation about choosing clarity over complexity, and learning to say no to work that doesn’t deliver value.</p><p>👉 In this episode, you’ll learn how to:</p><p>Rebuild inherited models by starting with real-world concepts, not assumptions</p><p>Reduce alert fatigue by testing only what matters (and ignoring the rest)</p><p>Prepare your data architecture before layering on AI or self-serve tools</p><p>Design systems that future engineers can actually understand</p><p>Foster a culture where bottom-up innovation drives real change</p><p>Watch the full episode on YouTube, or listen on Spotify and Apple Podcasts.</p><p>👤 <a href="https://www.linkedin.com/in/john-napoleon-kuofie-a3757867/">John Napoleon-Kuofie on LinkedIn</a><br>👤 <a href="https://www.linkedin.com/in/aaron-phethean/">Aaron Phethean on LinkedIn</a><br>🎧<a href="%20https://www.matatika.com/podcasts"> Data Matas Podcast</a><br>🌐 <a href="https://www.matatika.com">Matatika Website</a></p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/5868c1e7/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S2E5 - From Learning the Tool to Designing the System: How Engineers Actually Grow</title>
      <itunes:episode>13</itunes:episode>
      <podcast:episode>13</podcast:episode>
      <itunes:title>S2E5 - From Learning the Tool to Designing the System: How Engineers Actually Grow</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">c4fa3672-74c9-4d1e-81b2-c48cec863575</guid>
      <link>https://share.transistor.fm/s/518ebb6c</link>
      <description>
        <![CDATA[<p>How do analytics engineers grow from writing SQL to designing entire data systems? And why do most companies still confuse tool mastery with real engineering skill?</p><p>In this episode of Data Matas, Oleg Agapov (Senior Analytics Engineer at Hiive) shares what it actually takes to go from junior to senior in data—beyond bootcamps, tools, and job titles. He breaks down the core shifts that matter most: thinking in systems, mastering data modelling, and creating structure that scales.</p><p>You’ll hear how Oleg is helping build self-serve analytics inside a fast-moving fintech startup, why most data work fails without discovery, and how AI is changing the role—but not replacing the role—of the analytics engineer.</p><p>🎙 Guest: Oleg Agapov, Senior Analytics Engineer at Hiive<br>Oleg has spent over 15 years in data roles, moving from analyst to engineer to analytics architect. Now at Hiive—a marketplace for private stock—he’s helping design scalable data models and BI tooling that enable business teams to self-serve. Oleg also mentors junior engineers and shares career guidance on LinkedIn weekly, offering a rare combination of technical depth and practical coaching.</p><p>⏱ Episode Takeaways &amp; Timestamps</p><p>03:40 – Why analysts become engineers (and what tools don’t teach you)<br>Why Oleg moved from analytics into engineering, and how messy data triggered a career pivot.</p><p>08:15 – What junior vs senior actually looks like in analytics engineering<br>From DBT basics to architecture thinking—how your role shifts as you grow.</p><p>12:30 – Data modelling isn’t a feature, it’s a discipline<br>Why writing queries isn’t enough—and why most engineers only realise this at scale.</p><p>17:45 – Building analytics in a three-sided marketplace startup<br>How Oleg is helping Hiive build self-serve data for a unique financial model.</p><p>24:00 – How AI fits into the modern data workflow (and where it fails)<br>Why LLMs are better reviewers than creators—and why trust still starts with humans.</p><p>28:40 – The hidden risk of AI assistants in BI tools<br>What happened when an AI assistant hallucinated a metric—and nearly caused a decision error.</p><p>Who Should Listen?<br>If you’re an analytics engineer, data modeller, or anyone growing a data team inside a startup or scale-up, this episode will help you move beyond dashboards and into strategic, scalable thinking. Especially valuable for those navigating the shift from IC to senior roles.</p><p>📢 Like this episode?<br>Subscribe to the Data Matas YouTube channel for weekly insights from real data leaders.<br>Hit the bell to get notified when new episodes go live.<br>💬 What’s one skill you think separates senior engineers from juniors? Let us know in the comments.</p><p>🔗 Links &amp; Resources</p><p>👤 Oleg Agapov on LinkedIn: https://www.linkedin.com/in/oleg-agapov<br>👤 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/<br>🌐 Matatika Website: https://www.matatika.com<br>🎧 Data Matas Podcast: https://www.matatika.com/podcasts<br>📺 Data Matas YouTube Channel: https://www.youtube.com/@matatika/podcasts<br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>How do analytics engineers grow from writing SQL to designing entire data systems? And why do most companies still confuse tool mastery with real engineering skill?</p><p>In this episode of Data Matas, Oleg Agapov (Senior Analytics Engineer at Hiive) shares what it actually takes to go from junior to senior in data—beyond bootcamps, tools, and job titles. He breaks down the core shifts that matter most: thinking in systems, mastering data modelling, and creating structure that scales.</p><p>You’ll hear how Oleg is helping build self-serve analytics inside a fast-moving fintech startup, why most data work fails without discovery, and how AI is changing the role—but not replacing the role—of the analytics engineer.</p><p>🎙 Guest: Oleg Agapov, Senior Analytics Engineer at Hiive<br>Oleg has spent over 15 years in data roles, moving from analyst to engineer to analytics architect. Now at Hiive—a marketplace for private stock—he’s helping design scalable data models and BI tooling that enable business teams to self-serve. Oleg also mentors junior engineers and shares career guidance on LinkedIn weekly, offering a rare combination of technical depth and practical coaching.</p><p>⏱ Episode Takeaways &amp; Timestamps</p><p>03:40 – Why analysts become engineers (and what tools don’t teach you)<br>Why Oleg moved from analytics into engineering, and how messy data triggered a career pivot.</p><p>08:15 – What junior vs senior actually looks like in analytics engineering<br>From DBT basics to architecture thinking—how your role shifts as you grow.</p><p>12:30 – Data modelling isn’t a feature, it’s a discipline<br>Why writing queries isn’t enough—and why most engineers only realise this at scale.</p><p>17:45 – Building analytics in a three-sided marketplace startup<br>How Oleg is helping Hiive build self-serve data for a unique financial model.</p><p>24:00 – How AI fits into the modern data workflow (and where it fails)<br>Why LLMs are better reviewers than creators—and why trust still starts with humans.</p><p>28:40 – The hidden risk of AI assistants in BI tools<br>What happened when an AI assistant hallucinated a metric—and nearly caused a decision error.</p><p>Who Should Listen?<br>If you’re an analytics engineer, data modeller, or anyone growing a data team inside a startup or scale-up, this episode will help you move beyond dashboards and into strategic, scalable thinking. Especially valuable for those navigating the shift from IC to senior roles.</p><p>📢 Like this episode?<br>Subscribe to the Data Matas YouTube channel for weekly insights from real data leaders.<br>Hit the bell to get notified when new episodes go live.<br>💬 What’s one skill you think separates senior engineers from juniors? Let us know in the comments.</p><p>🔗 Links &amp; Resources</p><p>👤 Oleg Agapov on LinkedIn: https://www.linkedin.com/in/oleg-agapov<br>👤 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/<br>🌐 Matatika Website: https://www.matatika.com<br>🎧 Data Matas Podcast: https://www.matatika.com/podcasts<br>📺 Data Matas YouTube Channel: https://www.youtube.com/@matatika/podcasts<br></p>]]>
      </content:encoded>
      <pubDate>Thu, 22 May 2025 02:11:50 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/518ebb6c/cbb28eaf.mp3" length="31833575" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/6cOaSG_27CNtji51HkCwEUfAmJZlQNjsNLy9-uUUZ6I/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS9lYzQ5/Y2NmYTViNzI3Njcx/YzAxMjE3YTM2MWVi/YjQwOC5wbmc.jpg"/>
      <itunes:duration>1986</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>How do analytics engineers grow from writing SQL to designing entire data systems? And why do most companies still confuse tool mastery with real engineering skill?</p><p>In this episode of Data Matas, Oleg Agapov (Senior Analytics Engineer at Hiive) shares what it actually takes to go from junior to senior in data—beyond bootcamps, tools, and job titles. He breaks down the core shifts that matter most: thinking in systems, mastering data modelling, and creating structure that scales.</p><p>You’ll hear how Oleg is helping build self-serve analytics inside a fast-moving fintech startup, why most data work fails without discovery, and how AI is changing the role—but not replacing the role—of the analytics engineer.</p><p>🎙 Guest: Oleg Agapov, Senior Analytics Engineer at Hiive<br>Oleg has spent over 15 years in data roles, moving from analyst to engineer to analytics architect. Now at Hiive—a marketplace for private stock—he’s helping design scalable data models and BI tooling that enable business teams to self-serve. Oleg also mentors junior engineers and shares career guidance on LinkedIn weekly, offering a rare combination of technical depth and practical coaching.</p><p>⏱ Episode Takeaways &amp; Timestamps</p><p>03:40 – Why analysts become engineers (and what tools don’t teach you)<br>Why Oleg moved from analytics into engineering, and how messy data triggered a career pivot.</p><p>08:15 – What junior vs senior actually looks like in analytics engineering<br>From DBT basics to architecture thinking—how your role shifts as you grow.</p><p>12:30 – Data modelling isn’t a feature, it’s a discipline<br>Why writing queries isn’t enough—and why most engineers only realise this at scale.</p><p>17:45 – Building analytics in a three-sided marketplace startup<br>How Oleg is helping Hiive build self-serve data for a unique financial model.</p><p>24:00 – How AI fits into the modern data workflow (and where it fails)<br>Why LLMs are better reviewers than creators—and why trust still starts with humans.</p><p>28:40 – The hidden risk of AI assistants in BI tools<br>What happened when an AI assistant hallucinated a metric—and nearly caused a decision error.</p><p>Who Should Listen?<br>If you’re an analytics engineer, data modeller, or anyone growing a data team inside a startup or scale-up, this episode will help you move beyond dashboards and into strategic, scalable thinking. Especially valuable for those navigating the shift from IC to senior roles.</p><p>📢 Like this episode?<br>Subscribe to the Data Matas YouTube channel for weekly insights from real data leaders.<br>Hit the bell to get notified when new episodes go live.<br>💬 What’s one skill you think separates senior engineers from juniors? Let us know in the comments.</p><p>🔗 Links &amp; Resources</p><p>👤 Oleg Agapov on LinkedIn: https://www.linkedin.com/in/oleg-agapov<br>👤 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/<br>🌐 Matatika Website: https://www.matatika.com<br>🎧 Data Matas Podcast: https://www.matatika.com/podcasts<br>📺 Data Matas YouTube Channel: https://www.youtube.com/@matatika/podcasts<br></p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
    </item>
    <item>
      <title>S2E4 - Data Engineers Don’t Burn Out from Work, They Burn Out from Pointless Work</title>
      <itunes:episode>12</itunes:episode>
      <podcast:episode>12</podcast:episode>
      <itunes:title>S2E4 - Data Engineers Don’t Burn Out from Work, They Burn Out from Pointless Work</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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      <link>https://share.transistor.fm/s/ba527922</link>
      <description>
        <![CDATA[<p>What if your data team’s biggest risk isn’t technical debt - but mental exhaustion?</p><p>In this brutally honest conversation, Nik Walker (Co-op) shares how a culture of low-value work and constant reactivity burns out even the best data teams, and what to do about it.</p><p>About this episode<br>Data engineers aren’t struggling because the tech is hard—they’re struggling because the work often isn’t worth doing. In this episode, Nik unpacks why discovery matters more than dashboards, how to protect your team from the myth of speed, and why AI means nothing if no one trusts the data.</p><p>You’ll get practical, real-world insights from someone scaling data infrastructure in one of the UK’s most complex legacy organisations—without breaking the team or the bank.</p><p>About the guest<br>Nik Walker is Head of Data Engineering at Co-op, leading data transformation across a massive enterprise with deep legacy tech and community-first values. Known for his human-centric leadership style and vocal advocacy for neurodiversity in data teams, Nik brings humour, candour, and serious experience to the conversation.<br>🔗 Nik on LinkedIn</p><p>Timestamps and Key Learnings<br>06:15 – How Co-op builds safe, structured teams that don’t burn out<br>→ Create psychological safety with process, not platitudes</p><p>09:27 – Why neurodiversity awareness isn’t optional in data teams<br>→ 60% of data professionals are neurodivergent—your leadership style should reflect that</p><p>18:26 – What it really takes to trust your AI outputs<br>→ If the maths is off or the data’s wrong, no one will use your model</p><p>20:28 – Stop syncing everything in real-time<br>→ You don’t need real-time pipelines—you need right-time pipelines</p><p>28:07 – Discovery over delivery: how to stop wasting time and money<br>→ Methodical work delivers more value than rushed builds</p><p>Why listen<br>If you’re a data leader tired of firefighting, low-value tasks, or untrusted dashboards, this episode is for you. Nik offers tangible advice on building better systems, defending your team’s time, and navigating real-world transformation without breaking your people.</p><p>Subscribe and join the conversation<br>Like what you heard? Hit subscribe and tap the bell so you don’t miss future episodes.</p><p>Have you faced burnout in your data team? Drop a comment below and share your experience, we’d love to hear from you.</p><p>Links and Resources<br>🔗 Nik Walker on LinkedIn: https://www.linkedin.com/in/nikolaswalker/<br>🔗 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/<br>🔗 Matatika: https://www.matatika.com<br>🎙️ Data Matas: https://www.matatika.com/podcasts/<br>📺 Data Matas YouTube channel: https://www.youtube.com/@matatika</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>What if your data team’s biggest risk isn’t technical debt - but mental exhaustion?</p><p>In this brutally honest conversation, Nik Walker (Co-op) shares how a culture of low-value work and constant reactivity burns out even the best data teams, and what to do about it.</p><p>About this episode<br>Data engineers aren’t struggling because the tech is hard—they’re struggling because the work often isn’t worth doing. In this episode, Nik unpacks why discovery matters more than dashboards, how to protect your team from the myth of speed, and why AI means nothing if no one trusts the data.</p><p>You’ll get practical, real-world insights from someone scaling data infrastructure in one of the UK’s most complex legacy organisations—without breaking the team or the bank.</p><p>About the guest<br>Nik Walker is Head of Data Engineering at Co-op, leading data transformation across a massive enterprise with deep legacy tech and community-first values. Known for his human-centric leadership style and vocal advocacy for neurodiversity in data teams, Nik brings humour, candour, and serious experience to the conversation.<br>🔗 Nik on LinkedIn</p><p>Timestamps and Key Learnings<br>06:15 – How Co-op builds safe, structured teams that don’t burn out<br>→ Create psychological safety with process, not platitudes</p><p>09:27 – Why neurodiversity awareness isn’t optional in data teams<br>→ 60% of data professionals are neurodivergent—your leadership style should reflect that</p><p>18:26 – What it really takes to trust your AI outputs<br>→ If the maths is off or the data’s wrong, no one will use your model</p><p>20:28 – Stop syncing everything in real-time<br>→ You don’t need real-time pipelines—you need right-time pipelines</p><p>28:07 – Discovery over delivery: how to stop wasting time and money<br>→ Methodical work delivers more value than rushed builds</p><p>Why listen<br>If you’re a data leader tired of firefighting, low-value tasks, or untrusted dashboards, this episode is for you. Nik offers tangible advice on building better systems, defending your team’s time, and navigating real-world transformation without breaking your people.</p><p>Subscribe and join the conversation<br>Like what you heard? Hit subscribe and tap the bell so you don’t miss future episodes.</p><p>Have you faced burnout in your data team? Drop a comment below and share your experience, we’d love to hear from you.</p><p>Links and Resources<br>🔗 Nik Walker on LinkedIn: https://www.linkedin.com/in/nikolaswalker/<br>🔗 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/<br>🔗 Matatika: https://www.matatika.com<br>🎙️ Data Matas: https://www.matatika.com/podcasts/<br>📺 Data Matas YouTube channel: https://www.youtube.com/@matatika</p>]]>
      </content:encoded>
      <pubDate>Thu, 01 May 2025 02:43:39 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/ba527922/aed1a067.mp3" length="27898575" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/GAY1mPYwNM1vrPNEjaVwH6hBMvx6GfE6b-Uuqu_8sfs/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS85NTM4/YTEwYmRjYzU3ZDg2/ZTQ2ZWQ4YzllNjNj/NzI4Ny5wbmc.jpg"/>
      <itunes:duration>1742</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>What if your data team’s biggest risk isn’t technical debt - but mental exhaustion?</p><p>In this brutally honest conversation, Nik Walker (Co-op) shares how a culture of low-value work and constant reactivity burns out even the best data teams, and what to do about it.</p><p>About this episode<br>Data engineers aren’t struggling because the tech is hard—they’re struggling because the work often isn’t worth doing. In this episode, Nik unpacks why discovery matters more than dashboards, how to protect your team from the myth of speed, and why AI means nothing if no one trusts the data.</p><p>You’ll get practical, real-world insights from someone scaling data infrastructure in one of the UK’s most complex legacy organisations—without breaking the team or the bank.</p><p>About the guest<br>Nik Walker is Head of Data Engineering at Co-op, leading data transformation across a massive enterprise with deep legacy tech and community-first values. Known for his human-centric leadership style and vocal advocacy for neurodiversity in data teams, Nik brings humour, candour, and serious experience to the conversation.<br>🔗 Nik on LinkedIn</p><p>Timestamps and Key Learnings<br>06:15 – How Co-op builds safe, structured teams that don’t burn out<br>→ Create psychological safety with process, not platitudes</p><p>09:27 – Why neurodiversity awareness isn’t optional in data teams<br>→ 60% of data professionals are neurodivergent—your leadership style should reflect that</p><p>18:26 – What it really takes to trust your AI outputs<br>→ If the maths is off or the data’s wrong, no one will use your model</p><p>20:28 – Stop syncing everything in real-time<br>→ You don’t need real-time pipelines—you need right-time pipelines</p><p>28:07 – Discovery over delivery: how to stop wasting time and money<br>→ Methodical work delivers more value than rushed builds</p><p>Why listen<br>If you’re a data leader tired of firefighting, low-value tasks, or untrusted dashboards, this episode is for you. Nik offers tangible advice on building better systems, defending your team’s time, and navigating real-world transformation without breaking your people.</p><p>Subscribe and join the conversation<br>Like what you heard? Hit subscribe and tap the bell so you don’t miss future episodes.</p><p>Have you faced burnout in your data team? Drop a comment below and share your experience, we’d love to hear from you.</p><p>Links and Resources<br>🔗 Nik Walker on LinkedIn: https://www.linkedin.com/in/nikolaswalker/<br>🔗 Aaron Phethean on LinkedIn: https://www.linkedin.com/in/aaron-phethean/<br>🔗 Matatika: https://www.matatika.com<br>🎙️ Data Matas: https://www.matatika.com/podcasts/<br>📺 Data Matas YouTube channel: https://www.youtube.com/@matatika</p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/ba527922/transcript.txt" type="text/plain"/>
    </item>
    <item>
      <title>S2E3 - Three Lessons Every Data Leader Should Steal from Quantum-Inspired Thinking" at IRIS</title>
      <itunes:episode>11</itunes:episode>
      <podcast:episode>11</podcast:episode>
      <itunes:title>S2E3 - Three Lessons Every Data Leader Should Steal from Quantum-Inspired Thinking" at IRIS</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">9589af04-6ca6-4b44-8a04-ccbbd0b55aa6</guid>
      <link>https://share.transistor.fm/s/f5d133d5</link>
      <description>
        <![CDATA[<p>In this episode, we reveal how IRIS Software is borrowing principles from quantum computing to build data systems that are adaptable, explainable, and innovation-friendly—without compromising business-as-usual.</p><p>This conversation with David Draper offers a rare inside look at how a major enterprise balances legacy systems with forward-thinking experimentation.</p><p>You’ll learn how modular architecture, protected innovation time, and explainable AI are reshaping the way IRIS builds its data infrastructure. If you’re a data leader trying to scale without spiralling into chaos, this is the episode to watch.</p><p>David Draper is the Data Science Manager at IRIS Software Group, where he leads a high-performing team at the intersection of engineering, analytics, and emerging tech. With a background in education and a passion for quantum computing, David brings a unique lens to the challenges of modern data strategy.</p><p>Timestamps and Takeaways<br>✔️04:42 – From Classroom to Data Strategy<br>David’s journey from education to enterprise data science<br>→ Leverage curiosity and teaching mindset to lead technical teams with clarity and empathy</p><p>✔️09:15 – Why Quantum Thinking Isn’t Just for Physicists<br>How quantum logic helps IRIS reimagine compute and decision-making<br>→ Adopt non-linear thinking to structure smarter, more adaptable infrastructure</p><p>✔️14:08 – Designing Modular Systems for Innovation Without Risk<br>How IRIS builds infrastructure that allows safe experimentation<br>→ Create sandbox-style systems to test and deploy without affecting BAU</p><p>✔️19:22 – Ring-Fencing Innovation Time Inside a Busy Enterprise<br>Balancing research and delivery with “go wide, then narrow” phases<br>→ Allocate structured exploration time to prevent constant firefighting</p><p>✔️24:50 – The Real ROI of Explainable AI<br>Why clarity builds trust and momentum across the business<br>→ Choose tools your stakeholders understand to drive adoption and reduce resistance</p><p>✔️30:30 – Building Teams That Experiment Responsibly<br>How culture, structure and trust shape IRIS’s approach to innovation<br>→ Foster autonomy while staying aligned to business goals</p><p>Why Listen</p><p>This episode is for data leaders, architects, and CTOs who want to scale responsibly, embed innovation, and prepare for what’s next—without being distracted by hype. It’s a tactical, grounded conversation that offers immediately applicable ideas.</p><p>🔔 Subscribe to Data Matas for more real conversations with data leaders.<br>💬 What’s one lesson from David’s approach you’d apply to your own team? Drop your thoughts in the comments.<br>🎧 Available on YouTube, Spotify, Apple Podcasts, and all major platforms.</p><p>Links<br>🔗 David Draper on LinkedIn: <a href="https://www.linkedin.com/in/david-draper-b715aa46/">https://www.linkedin.com/in/david-draper-b715aa46/</a><br>🔗 IRIS Software Group: <a href="https://www.linkedin.com/company/iris-software-group/">https://www.linkedin.com/company/iris-software-group/</a><br>🌐 Listen to more episodes: <a href="https://pod.link/1763791020">https://pod.link/1763791020</a><br>📚 Matatika resources: <a href="https://www.matatika.com/library/">https://www.matatika.com/library/</a><br>📺 Watch more episodes: <a href="https://www.matatika.com/podcasts/">https://www.matatika.com/podcasts/</a></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>In this episode, we reveal how IRIS Software is borrowing principles from quantum computing to build data systems that are adaptable, explainable, and innovation-friendly—without compromising business-as-usual.</p><p>This conversation with David Draper offers a rare inside look at how a major enterprise balances legacy systems with forward-thinking experimentation.</p><p>You’ll learn how modular architecture, protected innovation time, and explainable AI are reshaping the way IRIS builds its data infrastructure. If you’re a data leader trying to scale without spiralling into chaos, this is the episode to watch.</p><p>David Draper is the Data Science Manager at IRIS Software Group, where he leads a high-performing team at the intersection of engineering, analytics, and emerging tech. With a background in education and a passion for quantum computing, David brings a unique lens to the challenges of modern data strategy.</p><p>Timestamps and Takeaways<br>✔️04:42 – From Classroom to Data Strategy<br>David’s journey from education to enterprise data science<br>→ Leverage curiosity and teaching mindset to lead technical teams with clarity and empathy</p><p>✔️09:15 – Why Quantum Thinking Isn’t Just for Physicists<br>How quantum logic helps IRIS reimagine compute and decision-making<br>→ Adopt non-linear thinking to structure smarter, more adaptable infrastructure</p><p>✔️14:08 – Designing Modular Systems for Innovation Without Risk<br>How IRIS builds infrastructure that allows safe experimentation<br>→ Create sandbox-style systems to test and deploy without affecting BAU</p><p>✔️19:22 – Ring-Fencing Innovation Time Inside a Busy Enterprise<br>Balancing research and delivery with “go wide, then narrow” phases<br>→ Allocate structured exploration time to prevent constant firefighting</p><p>✔️24:50 – The Real ROI of Explainable AI<br>Why clarity builds trust and momentum across the business<br>→ Choose tools your stakeholders understand to drive adoption and reduce resistance</p><p>✔️30:30 – Building Teams That Experiment Responsibly<br>How culture, structure and trust shape IRIS’s approach to innovation<br>→ Foster autonomy while staying aligned to business goals</p><p>Why Listen</p><p>This episode is for data leaders, architects, and CTOs who want to scale responsibly, embed innovation, and prepare for what’s next—without being distracted by hype. It’s a tactical, grounded conversation that offers immediately applicable ideas.</p><p>🔔 Subscribe to Data Matas for more real conversations with data leaders.<br>💬 What’s one lesson from David’s approach you’d apply to your own team? Drop your thoughts in the comments.<br>🎧 Available on YouTube, Spotify, Apple Podcasts, and all major platforms.</p><p>Links<br>🔗 David Draper on LinkedIn: <a href="https://www.linkedin.com/in/david-draper-b715aa46/">https://www.linkedin.com/in/david-draper-b715aa46/</a><br>🔗 IRIS Software Group: <a href="https://www.linkedin.com/company/iris-software-group/">https://www.linkedin.com/company/iris-software-group/</a><br>🌐 Listen to more episodes: <a href="https://pod.link/1763791020">https://pod.link/1763791020</a><br>📚 Matatika resources: <a href="https://www.matatika.com/library/">https://www.matatika.com/library/</a><br>📺 Watch more episodes: <a href="https://www.matatika.com/podcasts/">https://www.matatika.com/podcasts/</a></p>]]>
      </content:encoded>
      <pubDate>Thu, 10 Apr 2025 02:00:00 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/f5d133d5/c81723f8.mp3" length="50094650" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/qrUyWeSlWkJEa-3xhJirfWyq67UjFaJfa7VPqYu7Kt0/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS8wZWM2/ZWUyMWUyMmMyYmY4/YWM0Y2VmZmNkYjUx/OTU3Mi5wbmc.jpg"/>
      <itunes:duration>3129</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>In this episode, we reveal how IRIS Software is borrowing principles from quantum computing to build data systems that are adaptable, explainable, and innovation-friendly—without compromising business-as-usual.</p><p>This conversation with David Draper offers a rare inside look at how a major enterprise balances legacy systems with forward-thinking experimentation.</p><p>You’ll learn how modular architecture, protected innovation time, and explainable AI are reshaping the way IRIS builds its data infrastructure. If you’re a data leader trying to scale without spiralling into chaos, this is the episode to watch.</p><p>David Draper is the Data Science Manager at IRIS Software Group, where he leads a high-performing team at the intersection of engineering, analytics, and emerging tech. With a background in education and a passion for quantum computing, David brings a unique lens to the challenges of modern data strategy.</p><p>Timestamps and Takeaways<br>✔️04:42 – From Classroom to Data Strategy<br>David’s journey from education to enterprise data science<br>→ Leverage curiosity and teaching mindset to lead technical teams with clarity and empathy</p><p>✔️09:15 – Why Quantum Thinking Isn’t Just for Physicists<br>How quantum logic helps IRIS reimagine compute and decision-making<br>→ Adopt non-linear thinking to structure smarter, more adaptable infrastructure</p><p>✔️14:08 – Designing Modular Systems for Innovation Without Risk<br>How IRIS builds infrastructure that allows safe experimentation<br>→ Create sandbox-style systems to test and deploy without affecting BAU</p><p>✔️19:22 – Ring-Fencing Innovation Time Inside a Busy Enterprise<br>Balancing research and delivery with “go wide, then narrow” phases<br>→ Allocate structured exploration time to prevent constant firefighting</p><p>✔️24:50 – The Real ROI of Explainable AI<br>Why clarity builds trust and momentum across the business<br>→ Choose tools your stakeholders understand to drive adoption and reduce resistance</p><p>✔️30:30 – Building Teams That Experiment Responsibly<br>How culture, structure and trust shape IRIS’s approach to innovation<br>→ Foster autonomy while staying aligned to business goals</p><p>Why Listen</p><p>This episode is for data leaders, architects, and CTOs who want to scale responsibly, embed innovation, and prepare for what’s next—without being distracted by hype. It’s a tactical, grounded conversation that offers immediately applicable ideas.</p><p>🔔 Subscribe to Data Matas for more real conversations with data leaders.<br>💬 What’s one lesson from David’s approach you’d apply to your own team? Drop your thoughts in the comments.<br>🎧 Available on YouTube, Spotify, Apple Podcasts, and all major platforms.</p><p>Links<br>🔗 David Draper on LinkedIn: <a href="https://www.linkedin.com/in/david-draper-b715aa46/">https://www.linkedin.com/in/david-draper-b715aa46/</a><br>🔗 IRIS Software Group: <a href="https://www.linkedin.com/company/iris-software-group/">https://www.linkedin.com/company/iris-software-group/</a><br>🌐 Listen to more episodes: <a href="https://pod.link/1763791020">https://pod.link/1763791020</a><br>📚 Matatika resources: <a href="https://www.matatika.com/library/">https://www.matatika.com/library/</a><br>📺 Watch more episodes: <a href="https://www.matatika.com/podcasts/">https://www.matatika.com/podcasts/</a></p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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    </item>
    <item>
      <title>S2E2 - What Crypto Data Teams Do Differently with Emily Loh</title>
      <itunes:episode>10</itunes:episode>
      <podcast:episode>10</podcast:episode>
      <itunes:title>S2E2 - What Crypto Data Teams Do Differently with Emily Loh</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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      <description>
        <![CDATA[<p><strong>What Crypto Data Teams Do Differently with Emily Loh<br></strong><br><strong>Episode Snapshot<br></strong>In this illuminating conversation, Emily Loh reveals how leading a data team in the volatile crypto space has forced innovations in resource allocation, strategic prioritisation, and AI implementation that data leaders across all industries can apply for greater impact.</p><p><strong>Guest Introduction<br></strong>Emily Loh serves as Director of Data at MoonPay, where she leads a 15-person team spanning data engineering, data science, and machine learning in a fast-evolving crypto environment. With previous experience at Coinbase and a surprising background in literature rather than computer science, Emily brings a unique storytelling perspective to data leadership that emphasises business outcomes over technical outputs.</p><p><strong>Conversation Highlights<br></strong>The discussion takes an unexpected turn when Emily reveals her humanities background, noting that her literature studies prepared her surprisingly well for data leadership: "I never thought I'd be in data, but specifically I studied literature. And in my career right now, I'm just like, 'oh, this is just really just storytelling.'" This insight evolves into a thoughtful exchange about how effective data work requires understanding human needs first, with technical implementation second.</p><p>A particularly candid moment occurs when Emily confesses, "Full disclosure, I am a formed people pleaser," sparking an authentic discussion about the struggle many data leaders face in saying "no" to low-value requests. Aaron and Emily explore how this seemingly simple act requires both courage and strategic frameworks to implement effectively.</p><p><strong>Actionable Insights<br></strong><br><strong>1. Implement the 20/40/40 resource allocation framework</strong> - Emily's team divides their time into 20% BAU (business as usual), 40% building, and 40% research, creating space for innovation even during challenging market periods. <em>Practical Application</em>: Start by auditing your team's current time allocation, then gradually shift toward this balanced model using clear opportunity sizing frameworks to evaluate potential projects.</p><p><strong>2.Break free from the "service trap" by transforming request handling</strong> - Instead of immediately building requested dashboards, train your team to ask "What decisions are you trying to make?" to focus on outcomes rather than outputs. <em>Practical Application</em>: Develop a structured intake process that guides stakeholders toward better request formulation and establishes clear value criteria for accepting work.</p><p><strong>3. Use AI strategically to eliminate team drudgery </strong>- At MoonPay, tools like Cursor help automate tedious tasks such as YAML file management, freeing analyst time for strategic work. <em>Practical Application</em>: Survey team members about their most tedious regular activities, then select appropriate AI tools that can automate these specific tasks while measuring success through time savings.</p><p><strong>4. Design data systems for uncertain futures </strong>- In crypto's rapidly changing landscape, Emily's team builds flexible architectures that can adapt to regulatory shifts and market changes. <em>Practical Application</em>: Implement modular data models that can evolve without complete rebuilds while maintaining strong data quality foundations that support agility regardless of specific technologies.</p><p><strong>Industry Context<br></strong>This conversation arrives at a critical inflection point for data leaders across industries, as generative AI promises transformation while many teams still struggle with the fundamental challenge of delivering strategic value rather than reactive reporting. Emily's experience navigating crypto's extreme volatility provides a stress-tested framework applicable to any data team facing resource constraints and rapid change.</p><p><strong>Why Listen<br></strong>This episode is essential for mid to senior-level data leaders who feel trapped in reactive work cycles and are seeking practical frameworks to increase their strategic impact. Whether you're in a traditional enterprise struggling with legacy approaches or a high-growth startup trying to balance immediate demands with future needs, Emily's battle-tested insights provide immediately applicable strategies for transformation.</p><p><strong>Episode Details<br></strong><br>Length: 37 minutes<br>Release Date: March 2025<br>Episode Number: #127</p><p>This conversation with Emily Loh offers rare insight into how crypto's extreme conditions have forced innovation in data team management—innovations that can give any data leader a competitive advantage in today's rapidly evolving landscape.</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p><strong>What Crypto Data Teams Do Differently with Emily Loh<br></strong><br><strong>Episode Snapshot<br></strong>In this illuminating conversation, Emily Loh reveals how leading a data team in the volatile crypto space has forced innovations in resource allocation, strategic prioritisation, and AI implementation that data leaders across all industries can apply for greater impact.</p><p><strong>Guest Introduction<br></strong>Emily Loh serves as Director of Data at MoonPay, where she leads a 15-person team spanning data engineering, data science, and machine learning in a fast-evolving crypto environment. With previous experience at Coinbase and a surprising background in literature rather than computer science, Emily brings a unique storytelling perspective to data leadership that emphasises business outcomes over technical outputs.</p><p><strong>Conversation Highlights<br></strong>The discussion takes an unexpected turn when Emily reveals her humanities background, noting that her literature studies prepared her surprisingly well for data leadership: "I never thought I'd be in data, but specifically I studied literature. And in my career right now, I'm just like, 'oh, this is just really just storytelling.'" This insight evolves into a thoughtful exchange about how effective data work requires understanding human needs first, with technical implementation second.</p><p>A particularly candid moment occurs when Emily confesses, "Full disclosure, I am a formed people pleaser," sparking an authentic discussion about the struggle many data leaders face in saying "no" to low-value requests. Aaron and Emily explore how this seemingly simple act requires both courage and strategic frameworks to implement effectively.</p><p><strong>Actionable Insights<br></strong><br><strong>1. Implement the 20/40/40 resource allocation framework</strong> - Emily's team divides their time into 20% BAU (business as usual), 40% building, and 40% research, creating space for innovation even during challenging market periods. <em>Practical Application</em>: Start by auditing your team's current time allocation, then gradually shift toward this balanced model using clear opportunity sizing frameworks to evaluate potential projects.</p><p><strong>2.Break free from the "service trap" by transforming request handling</strong> - Instead of immediately building requested dashboards, train your team to ask "What decisions are you trying to make?" to focus on outcomes rather than outputs. <em>Practical Application</em>: Develop a structured intake process that guides stakeholders toward better request formulation and establishes clear value criteria for accepting work.</p><p><strong>3. Use AI strategically to eliminate team drudgery </strong>- At MoonPay, tools like Cursor help automate tedious tasks such as YAML file management, freeing analyst time for strategic work. <em>Practical Application</em>: Survey team members about their most tedious regular activities, then select appropriate AI tools that can automate these specific tasks while measuring success through time savings.</p><p><strong>4. Design data systems for uncertain futures </strong>- In crypto's rapidly changing landscape, Emily's team builds flexible architectures that can adapt to regulatory shifts and market changes. <em>Practical Application</em>: Implement modular data models that can evolve without complete rebuilds while maintaining strong data quality foundations that support agility regardless of specific technologies.</p><p><strong>Industry Context<br></strong>This conversation arrives at a critical inflection point for data leaders across industries, as generative AI promises transformation while many teams still struggle with the fundamental challenge of delivering strategic value rather than reactive reporting. Emily's experience navigating crypto's extreme volatility provides a stress-tested framework applicable to any data team facing resource constraints and rapid change.</p><p><strong>Why Listen<br></strong>This episode is essential for mid to senior-level data leaders who feel trapped in reactive work cycles and are seeking practical frameworks to increase their strategic impact. Whether you're in a traditional enterprise struggling with legacy approaches or a high-growth startup trying to balance immediate demands with future needs, Emily's battle-tested insights provide immediately applicable strategies for transformation.</p><p><strong>Episode Details<br></strong><br>Length: 37 minutes<br>Release Date: March 2025<br>Episode Number: #127</p><p>This conversation with Emily Loh offers rare insight into how crypto's extreme conditions have forced innovation in data team management—innovations that can give any data leader a competitive advantage in today's rapidly evolving landscape.</p>]]>
      </content:encoded>
      <pubDate>Thu, 27 Mar 2025 03:00:00 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/40f69a1d/7773ab33.mp3" length="33026007" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
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      <itunes:duration>2063</itunes:duration>
      <itunes:summary>
        <![CDATA[<p><strong>What Crypto Data Teams Do Differently with Emily Loh<br></strong><br><strong>Episode Snapshot<br></strong>In this illuminating conversation, Emily Loh reveals how leading a data team in the volatile crypto space has forced innovations in resource allocation, strategic prioritisation, and AI implementation that data leaders across all industries can apply for greater impact.</p><p><strong>Guest Introduction<br></strong>Emily Loh serves as Director of Data at MoonPay, where she leads a 15-person team spanning data engineering, data science, and machine learning in a fast-evolving crypto environment. With previous experience at Coinbase and a surprising background in literature rather than computer science, Emily brings a unique storytelling perspective to data leadership that emphasises business outcomes over technical outputs.</p><p><strong>Conversation Highlights<br></strong>The discussion takes an unexpected turn when Emily reveals her humanities background, noting that her literature studies prepared her surprisingly well for data leadership: "I never thought I'd be in data, but specifically I studied literature. And in my career right now, I'm just like, 'oh, this is just really just storytelling.'" This insight evolves into a thoughtful exchange about how effective data work requires understanding human needs first, with technical implementation second.</p><p>A particularly candid moment occurs when Emily confesses, "Full disclosure, I am a formed people pleaser," sparking an authentic discussion about the struggle many data leaders face in saying "no" to low-value requests. Aaron and Emily explore how this seemingly simple act requires both courage and strategic frameworks to implement effectively.</p><p><strong>Actionable Insights<br></strong><br><strong>1. Implement the 20/40/40 resource allocation framework</strong> - Emily's team divides their time into 20% BAU (business as usual), 40% building, and 40% research, creating space for innovation even during challenging market periods. <em>Practical Application</em>: Start by auditing your team's current time allocation, then gradually shift toward this balanced model using clear opportunity sizing frameworks to evaluate potential projects.</p><p><strong>2.Break free from the "service trap" by transforming request handling</strong> - Instead of immediately building requested dashboards, train your team to ask "What decisions are you trying to make?" to focus on outcomes rather than outputs. <em>Practical Application</em>: Develop a structured intake process that guides stakeholders toward better request formulation and establishes clear value criteria for accepting work.</p><p><strong>3. Use AI strategically to eliminate team drudgery </strong>- At MoonPay, tools like Cursor help automate tedious tasks such as YAML file management, freeing analyst time for strategic work. <em>Practical Application</em>: Survey team members about their most tedious regular activities, then select appropriate AI tools that can automate these specific tasks while measuring success through time savings.</p><p><strong>4. Design data systems for uncertain futures </strong>- In crypto's rapidly changing landscape, Emily's team builds flexible architectures that can adapt to regulatory shifts and market changes. <em>Practical Application</em>: Implement modular data models that can evolve without complete rebuilds while maintaining strong data quality foundations that support agility regardless of specific technologies.</p><p><strong>Industry Context<br></strong>This conversation arrives at a critical inflection point for data leaders across industries, as generative AI promises transformation while many teams still struggle with the fundamental challenge of delivering strategic value rather than reactive reporting. Emily's experience navigating crypto's extreme volatility provides a stress-tested framework applicable to any data team facing resource constraints and rapid change.</p><p><strong>Why Listen<br></strong>This episode is essential for mid to senior-level data leaders who feel trapped in reactive work cycles and are seeking practical frameworks to increase their strategic impact. Whether you're in a traditional enterprise struggling with legacy approaches or a high-growth startup trying to balance immediate demands with future needs, Emily's battle-tested insights provide immediately applicable strategies for transformation.</p><p><strong>Episode Details<br></strong><br>Length: 37 minutes<br>Release Date: March 2025<br>Episode Number: #127</p><p>This conversation with Emily Loh offers rare insight into how crypto's extreme conditions have forced innovation in data team management—innovations that can give any data leader a competitive advantage in today's rapidly evolving landscape.</p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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    </item>
    <item>
      <title>S2E1 - Scaling Your Data Infrastructure with AWS's Jon Hammant</title>
      <itunes:episode>9</itunes:episode>
      <podcast:episode>9</podcast:episode>
      <itunes:title>S2E1 - Scaling Your Data Infrastructure with AWS's Jon Hammant</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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      <link>https://share.transistor.fm/s/6afbffaa</link>
      <description>
        <![CDATA[<p>Are you unknowingly overspending on cloud data infrastructure?</p><p>Many businesses migrate to the cloud expecting cost savings and efficiency, but hidden costs, vendor lock-in, and inefficient ETL processes often result in ballooning expenses. Without a strategic approach, organisations risk wasting budget on unnecessary compute, storage, and manual data management.</p><p>What You’ll Learn in This Episode</p><p>In this episode of Data Matas, host Aaron Phethean speaks with Jon Hammant, Head of Compute for UK &amp; Ireland at AWS, about the true cost of scaling data infrastructure and how businesses can optimise cloud spend. Jon shares his insights on avoiding pricing traps, reducing data migration costs, and leveraging AI-driven automation to improve efficiency.</p><p>Key Insights &amp; Timestamps</p><p>1.  - Reducing unnecessary data syncing to cut costs<br>Real-time syncing is often overused, leading to excessive compute costs. Discover how batch processing can reduce ETL expenses by up to 50%.</p><p>2.  - Conducting cloud audits to eliminate waste<br>Many organisations pay for idle compute and unused storage without realising it. Learn how to audit cloud usage and remove unnecessary expenses.</p><p>3. - Avoiding vendor lock-in and costly renewal contracts<br>Row-based ETL pricing can trap businesses into increasing costs as data volumes grow. Find out how switching to usage-based pricing can provide more control over cloud spend.</p><p>4.  - Automating data management with AI<br>Manual ETL processes drain resources and increase operational costs. Learn how AI-driven automation can streamline workflows, reduce errors, and improve efficiency.</p><p>About Jon Hammant</p><p>Jon Hammant is the Head of Compute for UK &amp; Ireland at AWS, where he helps businesses optimise cloud infrastructure, modernise data strategies, and reduce operational costs. With extensive experience in AI, cloud computing, and high-performance networking, Jon has worked with some of the world’s largest enterprises to scale data infrastructure efficiently without unnecessary spend.</p><p>Subscribe &amp; Join the Conversation</p><p>If you're looking to optimise cloud spend, reduce migration costs, or navigate vendor pricing models, this episode is for you.</p><p>🔔 Subscribe to Data Matas to get the latest insights on cloud cost optimisation, data infrastructure, and AI-driven efficiency.</p><p>Resources &amp; Links<br>📌 Jon Hammant on LinkedIn: <a href="https://www.linkedin.com/in/jhammant/">https://www.linkedin.com/in/jhammant/</a><br>📌 Matatika Podcast &amp; Resources: <a href="https://www.matatika.com/podcasts/s2e1-scaling-your-data-infrastructure-with-jon-hammant">https://www.matatika.com/podcasts/s2e1-scaling-your-data-infrastructure-with-jon-hammant</a><br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>Are you unknowingly overspending on cloud data infrastructure?</p><p>Many businesses migrate to the cloud expecting cost savings and efficiency, but hidden costs, vendor lock-in, and inefficient ETL processes often result in ballooning expenses. Without a strategic approach, organisations risk wasting budget on unnecessary compute, storage, and manual data management.</p><p>What You’ll Learn in This Episode</p><p>In this episode of Data Matas, host Aaron Phethean speaks with Jon Hammant, Head of Compute for UK &amp; Ireland at AWS, about the true cost of scaling data infrastructure and how businesses can optimise cloud spend. Jon shares his insights on avoiding pricing traps, reducing data migration costs, and leveraging AI-driven automation to improve efficiency.</p><p>Key Insights &amp; Timestamps</p><p>1.  - Reducing unnecessary data syncing to cut costs<br>Real-time syncing is often overused, leading to excessive compute costs. Discover how batch processing can reduce ETL expenses by up to 50%.</p><p>2.  - Conducting cloud audits to eliminate waste<br>Many organisations pay for idle compute and unused storage without realising it. Learn how to audit cloud usage and remove unnecessary expenses.</p><p>3. - Avoiding vendor lock-in and costly renewal contracts<br>Row-based ETL pricing can trap businesses into increasing costs as data volumes grow. Find out how switching to usage-based pricing can provide more control over cloud spend.</p><p>4.  - Automating data management with AI<br>Manual ETL processes drain resources and increase operational costs. Learn how AI-driven automation can streamline workflows, reduce errors, and improve efficiency.</p><p>About Jon Hammant</p><p>Jon Hammant is the Head of Compute for UK &amp; Ireland at AWS, where he helps businesses optimise cloud infrastructure, modernise data strategies, and reduce operational costs. With extensive experience in AI, cloud computing, and high-performance networking, Jon has worked with some of the world’s largest enterprises to scale data infrastructure efficiently without unnecessary spend.</p><p>Subscribe &amp; Join the Conversation</p><p>If you're looking to optimise cloud spend, reduce migration costs, or navigate vendor pricing models, this episode is for you.</p><p>🔔 Subscribe to Data Matas to get the latest insights on cloud cost optimisation, data infrastructure, and AI-driven efficiency.</p><p>Resources &amp; Links<br>📌 Jon Hammant on LinkedIn: <a href="https://www.linkedin.com/in/jhammant/">https://www.linkedin.com/in/jhammant/</a><br>📌 Matatika Podcast &amp; Resources: <a href="https://www.matatika.com/podcasts/s2e1-scaling-your-data-infrastructure-with-jon-hammant">https://www.matatika.com/podcasts/s2e1-scaling-your-data-infrastructure-with-jon-hammant</a><br></p>]]>
      </content:encoded>
      <pubDate>Thu, 13 Mar 2025 03:27:50 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/6afbffaa/0438dbca.mp3" length="39615974" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:image href="https://img.transistorcdn.com/67SApfctDFrh02TmeR6uSSB4j2hpX21WUTwibWDcOSs/rs:fill:0:0:1/w:1400/h:1400/q:60/mb:500000/aHR0cHM6Ly9pbWct/dXBsb2FkLXByb2R1/Y3Rpb24udHJhbnNp/c3Rvci5mbS8xY2Rl/YWEwNWRjNzRmNzQz/ZTA1ZDc5MzgyZTRi/YmZjNy5wbmc.jpg"/>
      <itunes:duration>2475</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>Are you unknowingly overspending on cloud data infrastructure?</p><p>Many businesses migrate to the cloud expecting cost savings and efficiency, but hidden costs, vendor lock-in, and inefficient ETL processes often result in ballooning expenses. Without a strategic approach, organisations risk wasting budget on unnecessary compute, storage, and manual data management.</p><p>What You’ll Learn in This Episode</p><p>In this episode of Data Matas, host Aaron Phethean speaks with Jon Hammant, Head of Compute for UK &amp; Ireland at AWS, about the true cost of scaling data infrastructure and how businesses can optimise cloud spend. Jon shares his insights on avoiding pricing traps, reducing data migration costs, and leveraging AI-driven automation to improve efficiency.</p><p>Key Insights &amp; Timestamps</p><p>1.  - Reducing unnecessary data syncing to cut costs<br>Real-time syncing is often overused, leading to excessive compute costs. Discover how batch processing can reduce ETL expenses by up to 50%.</p><p>2.  - Conducting cloud audits to eliminate waste<br>Many organisations pay for idle compute and unused storage without realising it. Learn how to audit cloud usage and remove unnecessary expenses.</p><p>3. - Avoiding vendor lock-in and costly renewal contracts<br>Row-based ETL pricing can trap businesses into increasing costs as data volumes grow. Find out how switching to usage-based pricing can provide more control over cloud spend.</p><p>4.  - Automating data management with AI<br>Manual ETL processes drain resources and increase operational costs. Learn how AI-driven automation can streamline workflows, reduce errors, and improve efficiency.</p><p>About Jon Hammant</p><p>Jon Hammant is the Head of Compute for UK &amp; Ireland at AWS, where he helps businesses optimise cloud infrastructure, modernise data strategies, and reduce operational costs. With extensive experience in AI, cloud computing, and high-performance networking, Jon has worked with some of the world’s largest enterprises to scale data infrastructure efficiently without unnecessary spend.</p><p>Subscribe &amp; Join the Conversation</p><p>If you're looking to optimise cloud spend, reduce migration costs, or navigate vendor pricing models, this episode is for you.</p><p>🔔 Subscribe to Data Matas to get the latest insights on cloud cost optimisation, data infrastructure, and AI-driven efficiency.</p><p>Resources &amp; Links<br>📌 Jon Hammant on LinkedIn: <a href="https://www.linkedin.com/in/jhammant/">https://www.linkedin.com/in/jhammant/</a><br>📌 Matatika Podcast &amp; Resources: <a href="https://www.matatika.com/podcasts/s2e1-scaling-your-data-infrastructure-with-jon-hammant">https://www.matatika.com/podcasts/s2e1-scaling-your-data-infrastructure-with-jon-hammant</a><br></p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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    <item>
      <title>Season 1 Highlights: 7 Data Strategies That Work  - What the Best Data Teams Do Differently</title>
      <itunes:episode>8</itunes:episode>
      <podcast:episode>8</podcast:episode>
      <itunes:title>Season 1 Highlights: 7 Data Strategies That Work  - What the Best Data Teams Do Differently</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">b9499262-18d8-4718-83e1-70a36cedbf2e</guid>
      <link>https://share.transistor.fm/s/b48660c3</link>
      <description>
        <![CDATA[<p>In this Season 1 Highlights episode, we break down seven proven strategies that help teams cut costs, improve data quality, and scale smarter.</p><p>We’ve spoken with data leaders, engineers, and BI experts who have tackled real-world challenges—from legacy systems and broken workflows to AI risks and siloed teams. This episode is your actionable playbook to making your data work better.</p><p><strong>Key Takeaways:<br></strong><br>✅ Fix data chaos and create a single source of truth – Jessica Franks (Not On The High Street) shares how she aligned business and tech using Wardley Maps.<br>✅ Rebuild trust in business intelligence – Joe Wright (CitySprint) explains how they solved reporting inconsistencies by consolidating systems.<br>✅ Scale smarter without overcomplicating – Stéphane Burwash (Potloc) shows how open-source tools and a data champions programme transformed their approach.<br>✅ Why ‘good enough’ beats perfection – Bethany Lyons explains how streamlining data pipelines saves time without sacrificing quality.<br>✅ Make data quality everyone’s job – Adam Dathi (MVF) reveals how cross-team collaboration fixes unreliable reporting.<br>✅ Using real-time data for better decision-making – Nick Bromley shares how transport data integration is driving smarter city planning.<br>✅ AI without the risk – Murtaza Kanchwala (Amplify Capital) details how his team successfully implemented AI while staying compliant.</p><p>🚀 Whether you're a Head of Data, CTO, BI Manager, or Data Engineer, these practical insights will help you fix inefficiencies, scale with confidence, and build a high-impact data team.</p><p>🎧 Listen now and take your data strategy to the next level and 📩 Subscribe for more insights</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>In this Season 1 Highlights episode, we break down seven proven strategies that help teams cut costs, improve data quality, and scale smarter.</p><p>We’ve spoken with data leaders, engineers, and BI experts who have tackled real-world challenges—from legacy systems and broken workflows to AI risks and siloed teams. This episode is your actionable playbook to making your data work better.</p><p><strong>Key Takeaways:<br></strong><br>✅ Fix data chaos and create a single source of truth – Jessica Franks (Not On The High Street) shares how she aligned business and tech using Wardley Maps.<br>✅ Rebuild trust in business intelligence – Joe Wright (CitySprint) explains how they solved reporting inconsistencies by consolidating systems.<br>✅ Scale smarter without overcomplicating – Stéphane Burwash (Potloc) shows how open-source tools and a data champions programme transformed their approach.<br>✅ Why ‘good enough’ beats perfection – Bethany Lyons explains how streamlining data pipelines saves time without sacrificing quality.<br>✅ Make data quality everyone’s job – Adam Dathi (MVF) reveals how cross-team collaboration fixes unreliable reporting.<br>✅ Using real-time data for better decision-making – Nick Bromley shares how transport data integration is driving smarter city planning.<br>✅ AI without the risk – Murtaza Kanchwala (Amplify Capital) details how his team successfully implemented AI while staying compliant.</p><p>🚀 Whether you're a Head of Data, CTO, BI Manager, or Data Engineer, these practical insights will help you fix inefficiencies, scale with confidence, and build a high-impact data team.</p><p>🎧 Listen now and take your data strategy to the next level and 📩 Subscribe for more insights</p>]]>
      </content:encoded>
      <pubDate>Thu, 13 Feb 2025 02:00:00 -0800</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/b48660c3/30a29274.mp3" length="31559733" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:duration>1685</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>In this Season 1 Highlights episode, we break down seven proven strategies that help teams cut costs, improve data quality, and scale smarter.</p><p>We’ve spoken with data leaders, engineers, and BI experts who have tackled real-world challenges—from legacy systems and broken workflows to AI risks and siloed teams. This episode is your actionable playbook to making your data work better.</p><p><strong>Key Takeaways:<br></strong><br>✅ Fix data chaos and create a single source of truth – Jessica Franks (Not On The High Street) shares how she aligned business and tech using Wardley Maps.<br>✅ Rebuild trust in business intelligence – Joe Wright (CitySprint) explains how they solved reporting inconsistencies by consolidating systems.<br>✅ Scale smarter without overcomplicating – Stéphane Burwash (Potloc) shows how open-source tools and a data champions programme transformed their approach.<br>✅ Why ‘good enough’ beats perfection – Bethany Lyons explains how streamlining data pipelines saves time without sacrificing quality.<br>✅ Make data quality everyone’s job – Adam Dathi (MVF) reveals how cross-team collaboration fixes unreliable reporting.<br>✅ Using real-time data for better decision-making – Nick Bromley shares how transport data integration is driving smarter city planning.<br>✅ AI without the risk – Murtaza Kanchwala (Amplify Capital) details how his team successfully implemented AI while staying compliant.</p><p>🚀 Whether you're a Head of Data, CTO, BI Manager, or Data Engineer, these practical insights will help you fix inefficiencies, scale with confidence, and build a high-impact data team.</p><p>🎧 Listen now and take your data strategy to the next level and 📩 Subscribe for more insights</p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
      <podcast:transcript url="https://share.transistor.fm/s/b48660c3/transcription.vtt" type="text/vtt" rel="captions"/>
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    </item>
    <item>
      <title>S1E7 - Unlocking Gen.AI Potential in Financial Services With Murtaza Kanchwala </title>
      <itunes:episode>7</itunes:episode>
      <podcast:episode>7</podcast:episode>
      <itunes:title>S1E7 - Unlocking Gen.AI Potential in Financial Services With Murtaza Kanchwala </itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">bda8ebc4-05c1-48ee-9fd9-2809320ad978</guid>
      <link>https://share.transistor.fm/s/df7416dd</link>
      <description>
        <![CDATA[<p>In this conversation, Murtaza Kanchwala from Amplifi Capital discusses the integration of Generative AI (Gen.AI) in financial services, sharing insights on early applications, challenges faced, and the importance of regulatory compliance. He emphasizes the need for effective team organization and the selection of appropriate AI models to enhance productivity and efficiency. The discussion also touches on the future of AI in finance, predicting the emergence of personalized AI assistants and the ongoing evolution of AI technologies.</p><p><br></p><p><strong>Takeaways</strong></p><p><br></p><p>Murtaza has been involved in financial services since 2014.</p><p>Gen.AI applications started with content generation in 2021.</p><p>Feedback from users was gathered through personal discussions.</p><p>AI hallucinations posed significant challenges in early implementations.</p><p>Internal AI solutions were prioritized before customer-facing applications.</p><p>Testing AI requires a different approach than traditional software.</p><p>The maturity of Gen.AI use cases is improving over time.</p><p>Amplifi Capital is building an AI Matrix platform for Gen.AI use cases.</p><p>Choosing the right LLM is crucial for specific use cases.</p><p>Regulatory compliance is essential in financial services AI applications.</p><p><br></p><p><strong>Sound Bites</strong></p><p>"AI is delivering something artificially."</p><p>"The landscape is moving faster than we think."</p><p><strong>Chapters</strong></p><p>00:00 Introduction to Gen.AI in Financial Services</p><p>06:27 Early Applications of Gen.AI in Finance</p><p>11:07 Maturity of Gen.AI Use Cases</p><p>16:51 Building the AI Matrix Platform</p><p>22:48 Regulatory Landscape for AI in Finance</p><p>29:37 Building Effective Squads in AI Projects</p><p>35:18 Future of AI in Financial Services</p><p><br></p><p><br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>In this conversation, Murtaza Kanchwala from Amplifi Capital discusses the integration of Generative AI (Gen.AI) in financial services, sharing insights on early applications, challenges faced, and the importance of regulatory compliance. He emphasizes the need for effective team organization and the selection of appropriate AI models to enhance productivity and efficiency. The discussion also touches on the future of AI in finance, predicting the emergence of personalized AI assistants and the ongoing evolution of AI technologies.</p><p><br></p><p><strong>Takeaways</strong></p><p><br></p><p>Murtaza has been involved in financial services since 2014.</p><p>Gen.AI applications started with content generation in 2021.</p><p>Feedback from users was gathered through personal discussions.</p><p>AI hallucinations posed significant challenges in early implementations.</p><p>Internal AI solutions were prioritized before customer-facing applications.</p><p>Testing AI requires a different approach than traditional software.</p><p>The maturity of Gen.AI use cases is improving over time.</p><p>Amplifi Capital is building an AI Matrix platform for Gen.AI use cases.</p><p>Choosing the right LLM is crucial for specific use cases.</p><p>Regulatory compliance is essential in financial services AI applications.</p><p><br></p><p><strong>Sound Bites</strong></p><p>"AI is delivering something artificially."</p><p>"The landscape is moving faster than we think."</p><p><strong>Chapters</strong></p><p>00:00 Introduction to Gen.AI in Financial Services</p><p>06:27 Early Applications of Gen.AI in Finance</p><p>11:07 Maturity of Gen.AI Use Cases</p><p>16:51 Building the AI Matrix Platform</p><p>22:48 Regulatory Landscape for AI in Finance</p><p>29:37 Building Effective Squads in AI Projects</p><p>35:18 Future of AI in Financial Services</p><p><br></p><p><br></p>]]>
      </content:encoded>
      <pubDate>Fri, 06 Dec 2024 01:50:20 -0800</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/df7416dd/22094d41.mp3" length="39855480" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:duration>2489</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>In this conversation, Murtaza Kanchwala from Amplifi Capital discusses the integration of Generative AI (Gen.AI) in financial services, sharing insights on early applications, challenges faced, and the importance of regulatory compliance. He emphasizes the need for effective team organization and the selection of appropriate AI models to enhance productivity and efficiency. The discussion also touches on the future of AI in finance, predicting the emergence of personalized AI assistants and the ongoing evolution of AI technologies.</p><p><br></p><p><strong>Takeaways</strong></p><p><br></p><p>Murtaza has been involved in financial services since 2014.</p><p>Gen.AI applications started with content generation in 2021.</p><p>Feedback from users was gathered through personal discussions.</p><p>AI hallucinations posed significant challenges in early implementations.</p><p>Internal AI solutions were prioritized before customer-facing applications.</p><p>Testing AI requires a different approach than traditional software.</p><p>The maturity of Gen.AI use cases is improving over time.</p><p>Amplifi Capital is building an AI Matrix platform for Gen.AI use cases.</p><p>Choosing the right LLM is crucial for specific use cases.</p><p>Regulatory compliance is essential in financial services AI applications.</p><p><br></p><p><strong>Sound Bites</strong></p><p>"AI is delivering something artificially."</p><p>"The landscape is moving faster than we think."</p><p><strong>Chapters</strong></p><p>00:00 Introduction to Gen.AI in Financial Services</p><p>06:27 Early Applications of Gen.AI in Finance</p><p>11:07 Maturity of Gen.AI Use Cases</p><p>16:51 Building the AI Matrix Platform</p><p>22:48 Regulatory Landscape for AI in Finance</p><p>29:37 Building Effective Squads in AI Projects</p><p>35:18 Future of AI in Financial Services</p><p><br></p><p><br></p>]]>
      </itunes:summary>
      <itunes:keywords>Gen.AI, financial services, AI applications, AI challenges, AI testing, AI maturity, Amplifi Capital, AI Matrix, LLM, regulatory considerations, team organization, future of AI</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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    </item>
    <item>
      <title>S1E6 - Navigating the Future of Transport with Real-Time Data With Nick Bromley</title>
      <itunes:episode>6</itunes:episode>
      <podcast:episode>6</podcast:episode>
      <itunes:title>S1E6 - Navigating the Future of Transport with Real-Time Data With Nick Bromley</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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      <link>https://share.transistor.fm/s/f5b16a83</link>
      <description>
        <![CDATA[<p>In this conversation, Aaron Phethean and Nick Bromley discuss the evolution and importance of transport data, particularly focusing on the integration of real-time data and mobile phone data into transport planning. They explore the challenges of data collection, the role of AI and big data in optimizing transport systems, and the future of transport data with an emphasis on privacy and security concerns.</p><p><br></p><p><strong>Takeaways</strong></p><ul><li>Good transport planning requires both short-term and long-term data analysis.</li><li>Buses provide the most flexible capacity in public transport systems.</li><li>Real-time data is crucial for understanding current transport demands.</li><li>Historical data often fails to reflect current population movements.</li><li>Mobile phone data can significantly enhance transport planning accuracy.</li><li>Data collection methods must evolve to include modern technology.</li><li>AI and big data can process vast amounts of transport data effectively.</li><li>Privacy concerns must be addressed when using personal data for transport planning.</li><li>Transparency in data usage is essential for public trust.</li><li>The future of transport data relies on secure and anonymized data sharing.</li></ul><p><br></p><p><strong>Sound Bites</strong></p><p>"What does good look like for transport data?"</p><p>"It's ludicrous to use 1920s data."</p><p><br></p><p><strong>Chapters</strong></p><p>00:00 Introduction to Innovation in Transport Data</p><p>03:28 The Importance of Buses in Urban Mobility</p><p>04:06 Understanding Transport Data Needs</p><p>06:54 The Role of Mobile Phone Data in Transport Planning</p><p>09:35 Challenges and Innovations in Data Collection</p><p>12:29 The Future of Data Privacy and Public Good</p><p>15:21 AI and Big Data in Transport Decision Making</p><p>18:15 Conclusions and Future Directions for Transport Data</p><p><br></p><p><br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>In this conversation, Aaron Phethean and Nick Bromley discuss the evolution and importance of transport data, particularly focusing on the integration of real-time data and mobile phone data into transport planning. They explore the challenges of data collection, the role of AI and big data in optimizing transport systems, and the future of transport data with an emphasis on privacy and security concerns.</p><p><br></p><p><strong>Takeaways</strong></p><ul><li>Good transport planning requires both short-term and long-term data analysis.</li><li>Buses provide the most flexible capacity in public transport systems.</li><li>Real-time data is crucial for understanding current transport demands.</li><li>Historical data often fails to reflect current population movements.</li><li>Mobile phone data can significantly enhance transport planning accuracy.</li><li>Data collection methods must evolve to include modern technology.</li><li>AI and big data can process vast amounts of transport data effectively.</li><li>Privacy concerns must be addressed when using personal data for transport planning.</li><li>Transparency in data usage is essential for public trust.</li><li>The future of transport data relies on secure and anonymized data sharing.</li></ul><p><br></p><p><strong>Sound Bites</strong></p><p>"What does good look like for transport data?"</p><p>"It's ludicrous to use 1920s data."</p><p><br></p><p><strong>Chapters</strong></p><p>00:00 Introduction to Innovation in Transport Data</p><p>03:28 The Importance of Buses in Urban Mobility</p><p>04:06 Understanding Transport Data Needs</p><p>06:54 The Role of Mobile Phone Data in Transport Planning</p><p>09:35 Challenges and Innovations in Data Collection</p><p>12:29 The Future of Data Privacy and Public Good</p><p>15:21 AI and Big Data in Transport Decision Making</p><p>18:15 Conclusions and Future Directions for Transport Data</p><p><br></p><p><br></p>]]>
      </content:encoded>
      <pubDate>Fri, 01 Nov 2024 04:03:00 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/f5b16a83/9b1481d4.mp3" length="20545690" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:duration>1283</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>In this conversation, Aaron Phethean and Nick Bromley discuss the evolution and importance of transport data, particularly focusing on the integration of real-time data and mobile phone data into transport planning. They explore the challenges of data collection, the role of AI and big data in optimizing transport systems, and the future of transport data with an emphasis on privacy and security concerns.</p><p><br></p><p><strong>Takeaways</strong></p><ul><li>Good transport planning requires both short-term and long-term data analysis.</li><li>Buses provide the most flexible capacity in public transport systems.</li><li>Real-time data is crucial for understanding current transport demands.</li><li>Historical data often fails to reflect current population movements.</li><li>Mobile phone data can significantly enhance transport planning accuracy.</li><li>Data collection methods must evolve to include modern technology.</li><li>AI and big data can process vast amounts of transport data effectively.</li><li>Privacy concerns must be addressed when using personal data for transport planning.</li><li>Transparency in data usage is essential for public trust.</li><li>The future of transport data relies on secure and anonymized data sharing.</li></ul><p><br></p><p><strong>Sound Bites</strong></p><p>"What does good look like for transport data?"</p><p>"It's ludicrous to use 1920s data."</p><p><br></p><p><strong>Chapters</strong></p><p>00:00 Introduction to Innovation in Transport Data</p><p>03:28 The Importance of Buses in Urban Mobility</p><p>04:06 Understanding Transport Data Needs</p><p>06:54 The Role of Mobile Phone Data in Transport Planning</p><p>09:35 Challenges and Innovations in Data Collection</p><p>12:29 The Future of Data Privacy and Public Good</p><p>15:21 AI and Big Data in Transport Decision Making</p><p>18:15 Conclusions and Future Directions for Transport Data</p><p><br></p><p><br></p>]]>
      </itunes:summary>
      <itunes:keywords>transport data, real-time data, AI, big data, public transport, data analysis, mobile data, privacy, infrastructure planning, innovation</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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      <podcast:transcript url="https://share.transistor.fm/s/f5b16a83/transcription" type="text/html"/>
    </item>
    <item>
      <title>S1E5 -  Data quality is a company problem, not just a data problem with Adam Dathi</title>
      <itunes:episode>5</itunes:episode>
      <podcast:episode>5</podcast:episode>
      <itunes:title>S1E5 -  Data quality is a company problem, not just a data problem with Adam Dathi</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">ef112b28-9474-4264-9c84-931ea8537d32</guid>
      <link>https://share.transistor.fm/s/6098f7e7</link>
      <description>
        <![CDATA[<p>This episode with Adam Dathi is a must-listen for anyone looking to turn data into a strategic powerhouse within their business.  Adam shares practical insights into how data teams can work seamlessly with other departments for maximum business-wide impact and gives his take on the future of AI-driven data analysis. Aaron and Adam discuss the critical role of reliable sources and governance, but also observe that this is not an isolated issue for a specific team, but a company-wide responsibility if one is looking to harness the true power of data for their business.</p><p><strong>Takeaways</strong></p><p><br></p><ul><li>Data quality is a company problem, not just a data problem.</li><li>The sophistication of data teams depends on company size.</li><li>Data governance is a hidden long-term investment.</li><li>AI can't generate ideas without human direction.</li><li>Data maturity impacts decision-making effectiveness.</li><li>Data teams need to interface better with the rest of the company.</li><li>The value of data is tied to decision-making outcomes.</li><li>Standardizing terms can improve data governance.</li><li>Data quality issues often stem from company culture.</li><li>Investing in data governance can yield hidden benefits.</li></ul><p><br></p><p><strong>Titles</strong></p><p><br></p><ul><li>AI and the Future of Data Analysis</li><li>Unlocking the Power of Data in Business</li><li>Sound Bites</li><li>"Data quality is a company problem, not just a data problem."</li><li>"The sophistication of data teams depends on company size."</li><li>"Data governance is a hidden long-term investment."</li></ul><p><br></p><p><strong>Chapters</strong></p><ul><li>00:00 Introduction to Data in Marketing</li><li>04:43 The Role of Data in Strategic Decision-Making</li><li>07:34 MVF: An Integrated Media and Marketing Company</li><li>10:45 Challenges in Data Technology and Team Dynamics</li><li>13:52 Data Quality vs. Company Culture</li><li>16:49 The Importance of Data Governance</li><li>19:55 AI's Role in Data Analysis and Decision-Making</li><li>22:39 The Future of Data and AI in Business</li><li>25:51 Conclusion and Reflections on Data's Impact</li><li>49:59 Wrapup</li><li>49:59 Final Thoughts and Reflections</li></ul><p><br></p><p><br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>This episode with Adam Dathi is a must-listen for anyone looking to turn data into a strategic powerhouse within their business.  Adam shares practical insights into how data teams can work seamlessly with other departments for maximum business-wide impact and gives his take on the future of AI-driven data analysis. Aaron and Adam discuss the critical role of reliable sources and governance, but also observe that this is not an isolated issue for a specific team, but a company-wide responsibility if one is looking to harness the true power of data for their business.</p><p><strong>Takeaways</strong></p><p><br></p><ul><li>Data quality is a company problem, not just a data problem.</li><li>The sophistication of data teams depends on company size.</li><li>Data governance is a hidden long-term investment.</li><li>AI can't generate ideas without human direction.</li><li>Data maturity impacts decision-making effectiveness.</li><li>Data teams need to interface better with the rest of the company.</li><li>The value of data is tied to decision-making outcomes.</li><li>Standardizing terms can improve data governance.</li><li>Data quality issues often stem from company culture.</li><li>Investing in data governance can yield hidden benefits.</li></ul><p><br></p><p><strong>Titles</strong></p><p><br></p><ul><li>AI and the Future of Data Analysis</li><li>Unlocking the Power of Data in Business</li><li>Sound Bites</li><li>"Data quality is a company problem, not just a data problem."</li><li>"The sophistication of data teams depends on company size."</li><li>"Data governance is a hidden long-term investment."</li></ul><p><br></p><p><strong>Chapters</strong></p><ul><li>00:00 Introduction to Data in Marketing</li><li>04:43 The Role of Data in Strategic Decision-Making</li><li>07:34 MVF: An Integrated Media and Marketing Company</li><li>10:45 Challenges in Data Technology and Team Dynamics</li><li>13:52 Data Quality vs. Company Culture</li><li>16:49 The Importance of Data Governance</li><li>19:55 AI's Role in Data Analysis and Decision-Making</li><li>22:39 The Future of Data and AI in Business</li><li>25:51 Conclusion and Reflections on Data's Impact</li><li>49:59 Wrapup</li><li>49:59 Final Thoughts and Reflections</li></ul><p><br></p><p><br></p>]]>
      </content:encoded>
      <pubDate>Fri, 18 Oct 2024 01:30:00 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/6098f7e7/b675e1f0.mp3" length="24308251" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:duration>3035</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>This episode with Adam Dathi is a must-listen for anyone looking to turn data into a strategic powerhouse within their business.  Adam shares practical insights into how data teams can work seamlessly with other departments for maximum business-wide impact and gives his take on the future of AI-driven data analysis. Aaron and Adam discuss the critical role of reliable sources and governance, but also observe that this is not an isolated issue for a specific team, but a company-wide responsibility if one is looking to harness the true power of data for their business.</p><p><strong>Takeaways</strong></p><p><br></p><ul><li>Data quality is a company problem, not just a data problem.</li><li>The sophistication of data teams depends on company size.</li><li>Data governance is a hidden long-term investment.</li><li>AI can't generate ideas without human direction.</li><li>Data maturity impacts decision-making effectiveness.</li><li>Data teams need to interface better with the rest of the company.</li><li>The value of data is tied to decision-making outcomes.</li><li>Standardizing terms can improve data governance.</li><li>Data quality issues often stem from company culture.</li><li>Investing in data governance can yield hidden benefits.</li></ul><p><br></p><p><strong>Titles</strong></p><p><br></p><ul><li>AI and the Future of Data Analysis</li><li>Unlocking the Power of Data in Business</li><li>Sound Bites</li><li>"Data quality is a company problem, not just a data problem."</li><li>"The sophistication of data teams depends on company size."</li><li>"Data governance is a hidden long-term investment."</li></ul><p><br></p><p><strong>Chapters</strong></p><ul><li>00:00 Introduction to Data in Marketing</li><li>04:43 The Role of Data in Strategic Decision-Making</li><li>07:34 MVF: An Integrated Media and Marketing Company</li><li>10:45 Challenges in Data Technology and Team Dynamics</li><li>13:52 Data Quality vs. Company Culture</li><li>16:49 The Importance of Data Governance</li><li>19:55 AI's Role in Data Analysis and Decision-Making</li><li>22:39 The Future of Data and AI in Business</li><li>25:51 Conclusion and Reflections on Data's Impact</li><li>49:59 Wrapup</li><li>49:59 Final Thoughts and Reflections</li></ul><p><br></p><p><br></p>]]>
      </itunes:summary>
      <itunes:keywords>data; big data; spaghetti data; data insights; cto; technology strategy; data strategy</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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    </item>
    <item>
      <title>S1E4 -Full stack data people with Bethany Lyons</title>
      <itunes:episode>4</itunes:episode>
      <podcast:episode>4</podcast:episode>
      <itunes:title>S1E4 -Full stack data people with Bethany Lyons</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">c468ddd6-27a0-4ffe-9208-d41e8d4b20b5</guid>
      <link>https://share.transistor.fm/s/8bd19c86</link>
      <description>
        <![CDATA[<p>This is an unmissable conversation packed with innovative perspectives where Aaron Phethean and Bethany Lyons dive into the intricate world of what “full stack” genuinely means in the data realm. Armed with facts and humor, they explore the vital role of trust, and the complexities of data reconciliation. Their discussion also ventures into the dynamic startup landscape, stressing the urgent need for creative solutions to the persistent challenges in data management and analytics that so many face. With their fresh insights, this conversation is a must for anyone looking to understand the future of the industry.</p><p><strong>Takeaways</strong></p><p><br></p><p>Be a full stack data person to have a bigger impact.</p><p>Data is a digital twin of real-world processes.</p><p>Understanding data representation is crucial for business insights.</p><p>99% of data work involves plumbing, not just visualization.</p><p>Trust in data is essential for effective decision-making.</p><p>Reconciliation of data is a complex and painful process.</p><p>Startups must solve specific problems for individual users.</p><p>Data analytics is not an assembly line; it's iterative.</p><p>The future of data solutions lies in addressing unsolved problems.</p><p>Navigating the startup landscape requires understanding customer needs.</p><p><br></p><p><strong>Titles</strong></p><p><br></p><p>Data: An Unsolved Problem</p><p>Innovating in the Data Space</p><p><br></p><p><strong>Sound Bites</strong></p><p>"Be a full stack data person."</p><p>"Data is just a digital twin of the process."</p><p>"How do we enrich the data?"</p><p><br></p><p><strong>Chapters</strong></p><p>00:00</p><p>Introduction</p><p>00:34</p><p>Introduction and Background</p><p>03:31</p><p>Sales Dynamics in Startups</p><p>06:25</p><p>The Importance of Trust in Data</p><p>09:39</p><p>Challenges in Reconciliation</p><p>12:32</p><p>Navigating Startup Challenges</p><p>14:44</p><p>Understanding Data Challenges in Organizations</p><p>17:46</p><p>The Importance of Data Representation</p><p>20:37</p><p>Navigating Data Complexity in Business</p><p>23:39</p><p>The Role of Data Teams in Organizations</p><p>26:46</p><p>Shadow IT and Data Solutions</p><p>30:04</p><p>Broadening the Data Skillset</p><p>31:03</p><p>The Concept of Full Stack Data Professionals</p><p><br></p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>This is an unmissable conversation packed with innovative perspectives where Aaron Phethean and Bethany Lyons dive into the intricate world of what “full stack” genuinely means in the data realm. Armed with facts and humor, they explore the vital role of trust, and the complexities of data reconciliation. Their discussion also ventures into the dynamic startup landscape, stressing the urgent need for creative solutions to the persistent challenges in data management and analytics that so many face. With their fresh insights, this conversation is a must for anyone looking to understand the future of the industry.</p><p><strong>Takeaways</strong></p><p><br></p><p>Be a full stack data person to have a bigger impact.</p><p>Data is a digital twin of real-world processes.</p><p>Understanding data representation is crucial for business insights.</p><p>99% of data work involves plumbing, not just visualization.</p><p>Trust in data is essential for effective decision-making.</p><p>Reconciliation of data is a complex and painful process.</p><p>Startups must solve specific problems for individual users.</p><p>Data analytics is not an assembly line; it's iterative.</p><p>The future of data solutions lies in addressing unsolved problems.</p><p>Navigating the startup landscape requires understanding customer needs.</p><p><br></p><p><strong>Titles</strong></p><p><br></p><p>Data: An Unsolved Problem</p><p>Innovating in the Data Space</p><p><br></p><p><strong>Sound Bites</strong></p><p>"Be a full stack data person."</p><p>"Data is just a digital twin of the process."</p><p>"How do we enrich the data?"</p><p><br></p><p><strong>Chapters</strong></p><p>00:00</p><p>Introduction</p><p>00:34</p><p>Introduction and Background</p><p>03:31</p><p>Sales Dynamics in Startups</p><p>06:25</p><p>The Importance of Trust in Data</p><p>09:39</p><p>Challenges in Reconciliation</p><p>12:32</p><p>Navigating Startup Challenges</p><p>14:44</p><p>Understanding Data Challenges in Organizations</p><p>17:46</p><p>The Importance of Data Representation</p><p>20:37</p><p>Navigating Data Complexity in Business</p><p>23:39</p><p>The Role of Data Teams in Organizations</p><p>26:46</p><p>Shadow IT and Data Solutions</p><p>30:04</p><p>Broadening the Data Skillset</p><p>31:03</p><p>The Concept of Full Stack Data Professionals</p><p><br></p>]]>
      </content:encoded>
      <pubDate>Tue, 01 Oct 2024 02:27:59 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/8bd19c86/fd620c0c.mp3" length="30931183" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:duration>1932</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>This is an unmissable conversation packed with innovative perspectives where Aaron Phethean and Bethany Lyons dive into the intricate world of what “full stack” genuinely means in the data realm. Armed with facts and humor, they explore the vital role of trust, and the complexities of data reconciliation. Their discussion also ventures into the dynamic startup landscape, stressing the urgent need for creative solutions to the persistent challenges in data management and analytics that so many face. With their fresh insights, this conversation is a must for anyone looking to understand the future of the industry.</p><p><strong>Takeaways</strong></p><p><br></p><p>Be a full stack data person to have a bigger impact.</p><p>Data is a digital twin of real-world processes.</p><p>Understanding data representation is crucial for business insights.</p><p>99% of data work involves plumbing, not just visualization.</p><p>Trust in data is essential for effective decision-making.</p><p>Reconciliation of data is a complex and painful process.</p><p>Startups must solve specific problems for individual users.</p><p>Data analytics is not an assembly line; it's iterative.</p><p>The future of data solutions lies in addressing unsolved problems.</p><p>Navigating the startup landscape requires understanding customer needs.</p><p><br></p><p><strong>Titles</strong></p><p><br></p><p>Data: An Unsolved Problem</p><p>Innovating in the Data Space</p><p><br></p><p><strong>Sound Bites</strong></p><p>"Be a full stack data person."</p><p>"Data is just a digital twin of the process."</p><p>"How do we enrich the data?"</p><p><br></p><p><strong>Chapters</strong></p><p>00:00</p><p>Introduction</p><p>00:34</p><p>Introduction and Background</p><p>03:31</p><p>Sales Dynamics in Startups</p><p>06:25</p><p>The Importance of Trust in Data</p><p>09:39</p><p>Challenges in Reconciliation</p><p>12:32</p><p>Navigating Startup Challenges</p><p>14:44</p><p>Understanding Data Challenges in Organizations</p><p>17:46</p><p>The Importance of Data Representation</p><p>20:37</p><p>Navigating Data Complexity in Business</p><p>23:39</p><p>The Role of Data Teams in Organizations</p><p>26:46</p><p>Shadow IT and Data Solutions</p><p>30:04</p><p>Broadening the Data Skillset</p><p>31:03</p><p>The Concept of Full Stack Data Professionals</p><p><br></p>]]>
      </itunes:summary>
      <itunes:keywords>data, startups, data professionals, data representation, data reconciliation, data solutions, analytics, data trust, data challenges, full stack data</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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    <item>
      <title>S1E3 - Building trusted analytics at Potloc with Stéphane Burwash</title>
      <itunes:episode>3</itunes:episode>
      <podcast:episode>3</podcast:episode>
      <itunes:title>S1E3 - Building trusted analytics at Potloc with Stéphane Burwash</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
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        <![CDATA[<p>In this episode of Data Matas, host Aaron Phethean and his guest Stéphane Burwash dive deep into what it takes to build a true data-driven culture. Recently promoted to Data Engineering Lead at Potloc, Stéphane shares his thoughts on building trusted analytics, where quality data is at the foundation.  The conversation digs into the hot topics of AI and self-service analytics - and questioning their relevance - as well as the application of modern technologies such as Meltano and BigQuery and "the separation of church and state" in the data space. Not only that but the two touch on the importance of the people element and emphasise the need for open and honest stakeholder management in an organisations journey to data excellence. </p><p><strong>Takeaways</strong></p><ul><li>Stéphane started his data engineering journey alone, relying on community support.</li><li>Building a community is crucial for learning and growth in data engineering.</li><li>Potloc evolved from a market insights company to a data-driven organization.</li><li>Navigating data engineering challenges requires asking questions and seeking help.</li><li>Stakeholder management is essential for successful data projects.</li><li>Technologies like Meltano and DBT are integral to Potloc's data stack.</li><li>AI is being leveraged to improve data quality and analytics processes.</li><li>Self-service analytics can empower users but requires careful governance.</li><li>Data quality issues often arise from a lack of awareness and communication.</li><li>The role of a data practitioner is to maintain a big picture perspective.</li></ul><p><strong>Sound Bites<br></strong><br></p><ul><li>"Ask questions, don't be afraid to learn."</li><li>"Everybody has been in that position."</li><li>"We shouldn't be trying to do the custom solution."</li></ul><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction and Background of Potloc</p><p>04:43<br>Role of a Data Engineer at Potluck</p><p>06:34<br>Data Sources and Technologies Used</p><p>09:58<br>Balancing Complexity and Impactful Work</p><p>15:30<br>Working with BI Analysts and Data Modeling</p><p>23:46<br>Focus on Data Quality and Maintenance</p><p>25:42<br>Challenges of Data Quality and Data Integrity</p><p>36:12<br>The Importance of Stakeholder Engagement</p><p>41:14<br>The Concept of Self-Serve Analytics</p><p>43:25<br>The Value of a Holistic Understanding of Data</p><p>47:14<br>The Role of Data Practitioners</p><p>48:15<br>Introduction</p><p>49:24<br>The Value of Online Communities and Asking Questions</p><p>50:22<br>Overcoming the Fear of Feeling Lost</p><p>50:48<br>The Generosity of the Data Community</p><p>52:10<br>Networking and Learning at Meetup Events</p><p>53:21<br>Building Connections and Getting Insights</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>In this episode of Data Matas, host Aaron Phethean and his guest Stéphane Burwash dive deep into what it takes to build a true data-driven culture. Recently promoted to Data Engineering Lead at Potloc, Stéphane shares his thoughts on building trusted analytics, where quality data is at the foundation.  The conversation digs into the hot topics of AI and self-service analytics - and questioning their relevance - as well as the application of modern technologies such as Meltano and BigQuery and "the separation of church and state" in the data space. Not only that but the two touch on the importance of the people element and emphasise the need for open and honest stakeholder management in an organisations journey to data excellence. </p><p><strong>Takeaways</strong></p><ul><li>Stéphane started his data engineering journey alone, relying on community support.</li><li>Building a community is crucial for learning and growth in data engineering.</li><li>Potloc evolved from a market insights company to a data-driven organization.</li><li>Navigating data engineering challenges requires asking questions and seeking help.</li><li>Stakeholder management is essential for successful data projects.</li><li>Technologies like Meltano and DBT are integral to Potloc's data stack.</li><li>AI is being leveraged to improve data quality and analytics processes.</li><li>Self-service analytics can empower users but requires careful governance.</li><li>Data quality issues often arise from a lack of awareness and communication.</li><li>The role of a data practitioner is to maintain a big picture perspective.</li></ul><p><strong>Sound Bites<br></strong><br></p><ul><li>"Ask questions, don't be afraid to learn."</li><li>"Everybody has been in that position."</li><li>"We shouldn't be trying to do the custom solution."</li></ul><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction and Background of Potloc</p><p>04:43<br>Role of a Data Engineer at Potluck</p><p>06:34<br>Data Sources and Technologies Used</p><p>09:58<br>Balancing Complexity and Impactful Work</p><p>15:30<br>Working with BI Analysts and Data Modeling</p><p>23:46<br>Focus on Data Quality and Maintenance</p><p>25:42<br>Challenges of Data Quality and Data Integrity</p><p>36:12<br>The Importance of Stakeholder Engagement</p><p>41:14<br>The Concept of Self-Serve Analytics</p><p>43:25<br>The Value of a Holistic Understanding of Data</p><p>47:14<br>The Role of Data Practitioners</p><p>48:15<br>Introduction</p><p>49:24<br>The Value of Online Communities and Asking Questions</p><p>50:22<br>Overcoming the Fear of Feeling Lost</p><p>50:48<br>The Generosity of the Data Community</p><p>52:10<br>Networking and Learning at Meetup Events</p><p>53:21<br>Building Connections and Getting Insights</p>]]>
      </content:encoded>
      <pubDate>Tue, 17 Sep 2024 01:59:51 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/128d5ea4/c4f20eb2.mp3" length="52361077" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:duration>3271</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>In this episode of Data Matas, host Aaron Phethean and his guest Stéphane Burwash dive deep into what it takes to build a true data-driven culture. Recently promoted to Data Engineering Lead at Potloc, Stéphane shares his thoughts on building trusted analytics, where quality data is at the foundation.  The conversation digs into the hot topics of AI and self-service analytics - and questioning their relevance - as well as the application of modern technologies such as Meltano and BigQuery and "the separation of church and state" in the data space. Not only that but the two touch on the importance of the people element and emphasise the need for open and honest stakeholder management in an organisations journey to data excellence. </p><p><strong>Takeaways</strong></p><ul><li>Stéphane started his data engineering journey alone, relying on community support.</li><li>Building a community is crucial for learning and growth in data engineering.</li><li>Potloc evolved from a market insights company to a data-driven organization.</li><li>Navigating data engineering challenges requires asking questions and seeking help.</li><li>Stakeholder management is essential for successful data projects.</li><li>Technologies like Meltano and DBT are integral to Potloc's data stack.</li><li>AI is being leveraged to improve data quality and analytics processes.</li><li>Self-service analytics can empower users but requires careful governance.</li><li>Data quality issues often arise from a lack of awareness and communication.</li><li>The role of a data practitioner is to maintain a big picture perspective.</li></ul><p><strong>Sound Bites<br></strong><br></p><ul><li>"Ask questions, don't be afraid to learn."</li><li>"Everybody has been in that position."</li><li>"We shouldn't be trying to do the custom solution."</li></ul><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction and Background of Potloc</p><p>04:43<br>Role of a Data Engineer at Potluck</p><p>06:34<br>Data Sources and Technologies Used</p><p>09:58<br>Balancing Complexity and Impactful Work</p><p>15:30<br>Working with BI Analysts and Data Modeling</p><p>23:46<br>Focus on Data Quality and Maintenance</p><p>25:42<br>Challenges of Data Quality and Data Integrity</p><p>36:12<br>The Importance of Stakeholder Engagement</p><p>41:14<br>The Concept of Self-Serve Analytics</p><p>43:25<br>The Value of a Holistic Understanding of Data</p><p>47:14<br>The Role of Data Practitioners</p><p>48:15<br>Introduction</p><p>49:24<br>The Value of Online Communities and Asking Questions</p><p>50:22<br>Overcoming the Fear of Feeling Lost</p><p>50:48<br>The Generosity of the Data Community</p><p>52:10<br>Networking and Learning at Meetup Events</p><p>53:21<br>Building Connections and Getting Insights</p>]]>
      </itunes:summary>
      <itunes:keywords>data engineering, community support, Potloc, AI in data, self-service analytics, stakeholder management, data technologies, data quality, analytics tools, data-driven decision making</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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    </item>
    <item>
      <title>S1E2 - How CitySprint Deliver, Not Only Parcels, but Data and BI - A conversation with Joe Wright</title>
      <itunes:episode>2</itunes:episode>
      <podcast:episode>2</podcast:episode>
      <itunes:title>S1E2 - How CitySprint Deliver, Not Only Parcels, but Data and BI - A conversation with Joe Wright</itunes:title>
      <itunes:episodeType>full</itunes:episodeType>
      <guid isPermaLink="false">39500bba-14e1-4f2f-9dcc-e1584a73b0e2</guid>
      <link>https://share.transistor.fm/s/de3ce5bc</link>
      <description>
        <![CDATA[<p>CitySprint is one of the largest same-day courier providers in the UK, with a strong presence in London. They operate a UK-wide network and offer same-day logistics services. The company relies on a fleet of couriers who use various modes of transport, including bikes, to quickly deliver parcels. CitySprint's goal is to move away from investigating data challenges and focus on building trust in the accuracy of their data. They are working on modernizing their infrastructure and implementing a new data management system to improve data quality and reporting. The BI team at CitySprint plays a crucial role in analyzing data and providing performance stats to different teams within the company. The team is also responsible for bridging gaps in the existing systems and ensuring the data remains current and relevant. The project aims to streamline the BI stack, create a single version of the truth, and enable faster reporting in smaller time windows. The challenge lies in managing the people side of the project and helping the team adapt to the new ways of working. In this conversation, Aaron and Joe discuss the legacy technology stack at CitySprint, including BI visualization tools, ETL tools, and the transition to Snowflake and Power BI. They also touch on the potential of AI in the business and the importance of embracing change. Joe emphasizes the need for data managers to straddle the technical and business perspectives and build strong stakeholder relationships.</p><p><strong>Takeaways</strong></p><ul><li>CitySprint is a leading same-day courier provider in the UK, with a strong presence in London.</li><li>The company is focused on improving data quality and reporting by modernizing their infrastructure and implementing a new data management system.</li><li>The BI team at CitySprint plays a crucial role in analyzing data and providing performance stats to different teams within the company.</li><li>Managing the people side of the project and helping the team adapt to the new ways of working is a key challenge. CitySprint had a legacy technology stack that included BI visualization tools and multiple ETL tools before transitioning to Snowflake and Power BI.</li><li>AI is a buzzword in the business world, and CitySprint is exploring its potential in areas such as customer sentiment analysis.</li><li>Embracing change is crucial for success in the data field, and building strong stakeholder relationships is essential for effective communication and collaboration.</li><li>Data managers need to straddle the technical and business perspectives to bridge the gap between technical experts and business managers.</li><li>The ability to adapt and embrace change is key in a rapidly evolving technological landscape.</li></ul><p><strong>Titles</strong></p><ul><li>The Role of the BI Team at CitySprint</li><li>Improving Data Quality and Reporting at CitySprint Exploring the Potential of AI in Business</li><li>The Importance of Adaptability in the Data Field</li></ul><p><strong>Sound Bites<br></strong><br></p><ul><li>"CitySprint has a fleet of couriers who use everything from large vans to bikes to quickly deliver parcels all across the UK."</li><li>"The measure of success is moving away from investigating challenges and issues within the data."</li><li>"CitySprint has a fleet of couriers who use bikes to quickly deliver parcels in London."</li><li>"What are the kinds of technologies that CitySprint had as legacy?"</li><li>"We had to rewrite the whole process for getting the data out of the business systems into Snowflake"</li><li>"AI is buzzword everywhere, isn't it?"</li></ul><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction to CitySprint</p><p>03:14<br>Data and Analytics at CitySprint</p><p>05:03<br>Modernizing Management Systems</p><p>16:29<br>Exploring AI at CitySprint</p><p>32:36<br>The Importance of Data Quality and Trust</p><p>34:11<br>Innovative Reporting and Test-Driven Development for Data Quality</p><p>35:36<br>Shifting Mindset and Processes for Data Quality</p><p>38:56<br>Building Relationships with Stakeholders in Data Management</p><p>43:16<br>The Role of People Management in Data Management</p><p>44:07<br>Designing KPIs: Balancing Behavior and Culture</p>]]>
      </description>
      <content:encoded>
        <![CDATA[<p>CitySprint is one of the largest same-day courier providers in the UK, with a strong presence in London. They operate a UK-wide network and offer same-day logistics services. The company relies on a fleet of couriers who use various modes of transport, including bikes, to quickly deliver parcels. CitySprint's goal is to move away from investigating data challenges and focus on building trust in the accuracy of their data. They are working on modernizing their infrastructure and implementing a new data management system to improve data quality and reporting. The BI team at CitySprint plays a crucial role in analyzing data and providing performance stats to different teams within the company. The team is also responsible for bridging gaps in the existing systems and ensuring the data remains current and relevant. The project aims to streamline the BI stack, create a single version of the truth, and enable faster reporting in smaller time windows. The challenge lies in managing the people side of the project and helping the team adapt to the new ways of working. In this conversation, Aaron and Joe discuss the legacy technology stack at CitySprint, including BI visualization tools, ETL tools, and the transition to Snowflake and Power BI. They also touch on the potential of AI in the business and the importance of embracing change. Joe emphasizes the need for data managers to straddle the technical and business perspectives and build strong stakeholder relationships.</p><p><strong>Takeaways</strong></p><ul><li>CitySprint is a leading same-day courier provider in the UK, with a strong presence in London.</li><li>The company is focused on improving data quality and reporting by modernizing their infrastructure and implementing a new data management system.</li><li>The BI team at CitySprint plays a crucial role in analyzing data and providing performance stats to different teams within the company.</li><li>Managing the people side of the project and helping the team adapt to the new ways of working is a key challenge. CitySprint had a legacy technology stack that included BI visualization tools and multiple ETL tools before transitioning to Snowflake and Power BI.</li><li>AI is a buzzword in the business world, and CitySprint is exploring its potential in areas such as customer sentiment analysis.</li><li>Embracing change is crucial for success in the data field, and building strong stakeholder relationships is essential for effective communication and collaboration.</li><li>Data managers need to straddle the technical and business perspectives to bridge the gap between technical experts and business managers.</li><li>The ability to adapt and embrace change is key in a rapidly evolving technological landscape.</li></ul><p><strong>Titles</strong></p><ul><li>The Role of the BI Team at CitySprint</li><li>Improving Data Quality and Reporting at CitySprint Exploring the Potential of AI in Business</li><li>The Importance of Adaptability in the Data Field</li></ul><p><strong>Sound Bites<br></strong><br></p><ul><li>"CitySprint has a fleet of couriers who use everything from large vans to bikes to quickly deliver parcels all across the UK."</li><li>"The measure of success is moving away from investigating challenges and issues within the data."</li><li>"CitySprint has a fleet of couriers who use bikes to quickly deliver parcels in London."</li><li>"What are the kinds of technologies that CitySprint had as legacy?"</li><li>"We had to rewrite the whole process for getting the data out of the business systems into Snowflake"</li><li>"AI is buzzword everywhere, isn't it?"</li></ul><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction to CitySprint</p><p>03:14<br>Data and Analytics at CitySprint</p><p>05:03<br>Modernizing Management Systems</p><p>16:29<br>Exploring AI at CitySprint</p><p>32:36<br>The Importance of Data Quality and Trust</p><p>34:11<br>Innovative Reporting and Test-Driven Development for Data Quality</p><p>35:36<br>Shifting Mindset and Processes for Data Quality</p><p>38:56<br>Building Relationships with Stakeholders in Data Management</p><p>43:16<br>The Role of People Management in Data Management</p><p>44:07<br>Designing KPIs: Balancing Behavior and Culture</p>]]>
      </content:encoded>
      <pubDate>Tue, 03 Sep 2024 02:23:09 -0700</pubDate>
      <author>Matatika</author>
      <enclosure url="https://media.transistor.fm/de3ce5bc/f7d4c88e.mp3" length="40194304" type="audio/mpeg"/>
      <itunes:author>Matatika</itunes:author>
      <itunes:duration>2511</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>CitySprint is one of the largest same-day courier providers in the UK, with a strong presence in London. They operate a UK-wide network and offer same-day logistics services. The company relies on a fleet of couriers who use various modes of transport, including bikes, to quickly deliver parcels. CitySprint's goal is to move away from investigating data challenges and focus on building trust in the accuracy of their data. They are working on modernizing their infrastructure and implementing a new data management system to improve data quality and reporting. The BI team at CitySprint plays a crucial role in analyzing data and providing performance stats to different teams within the company. The team is also responsible for bridging gaps in the existing systems and ensuring the data remains current and relevant. The project aims to streamline the BI stack, create a single version of the truth, and enable faster reporting in smaller time windows. The challenge lies in managing the people side of the project and helping the team adapt to the new ways of working. In this conversation, Aaron and Joe discuss the legacy technology stack at CitySprint, including BI visualization tools, ETL tools, and the transition to Snowflake and Power BI. They also touch on the potential of AI in the business and the importance of embracing change. Joe emphasizes the need for data managers to straddle the technical and business perspectives and build strong stakeholder relationships.</p><p><strong>Takeaways</strong></p><ul><li>CitySprint is a leading same-day courier provider in the UK, with a strong presence in London.</li><li>The company is focused on improving data quality and reporting by modernizing their infrastructure and implementing a new data management system.</li><li>The BI team at CitySprint plays a crucial role in analyzing data and providing performance stats to different teams within the company.</li><li>Managing the people side of the project and helping the team adapt to the new ways of working is a key challenge. CitySprint had a legacy technology stack that included BI visualization tools and multiple ETL tools before transitioning to Snowflake and Power BI.</li><li>AI is a buzzword in the business world, and CitySprint is exploring its potential in areas such as customer sentiment analysis.</li><li>Embracing change is crucial for success in the data field, and building strong stakeholder relationships is essential for effective communication and collaboration.</li><li>Data managers need to straddle the technical and business perspectives to bridge the gap between technical experts and business managers.</li><li>The ability to adapt and embrace change is key in a rapidly evolving technological landscape.</li></ul><p><strong>Titles</strong></p><ul><li>The Role of the BI Team at CitySprint</li><li>Improving Data Quality and Reporting at CitySprint Exploring the Potential of AI in Business</li><li>The Importance of Adaptability in the Data Field</li></ul><p><strong>Sound Bites<br></strong><br></p><ul><li>"CitySprint has a fleet of couriers who use everything from large vans to bikes to quickly deliver parcels all across the UK."</li><li>"The measure of success is moving away from investigating challenges and issues within the data."</li><li>"CitySprint has a fleet of couriers who use bikes to quickly deliver parcels in London."</li><li>"What are the kinds of technologies that CitySprint had as legacy?"</li><li>"We had to rewrite the whole process for getting the data out of the business systems into Snowflake"</li><li>"AI is buzzword everywhere, isn't it?"</li></ul><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction to CitySprint</p><p>03:14<br>Data and Analytics at CitySprint</p><p>05:03<br>Modernizing Management Systems</p><p>16:29<br>Exploring AI at CitySprint</p><p>32:36<br>The Importance of Data Quality and Trust</p><p>34:11<br>Innovative Reporting and Test-Driven Development for Data Quality</p><p>35:36<br>Shifting Mindset and Processes for Data Quality</p><p>38:56<br>Building Relationships with Stakeholders in Data Management</p><p>43:16<br>The Role of People Management in Data Management</p><p>44:07<br>Designing KPIs: Balancing Behavior and Culture</p>]]>
      </itunes:summary>
      <itunes:keywords>CitySprint, same-day courier, logistics, data challenges, data quality, reporting, BI team, infrastructure modernization, data management system, performance stats, single version of the truth, faster reporting, people management, legacy technology stack, BI visualization tools, ETL tools, Snowflake, Power BI, AI, embracing change, stakeholder relationships</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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      <title>S1E1 - Data engineering and Not on the High Street with Jessica Franks</title>
      <itunes:episode>1</itunes:episode>
      <podcast:episode>1</podcast:episode>
      <itunes:title>S1E1 - Data engineering and Not on the High Street with Jessica Franks</itunes:title>
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        <![CDATA[<p>Jessica Franks shares her experience of joining Not on the High Street as an engineering manager for the data team. She discusses the challenges of starting a new role in a new country and managing a team with diverse skill sets. Jessica explains how she tackled the lack of data strategy and created a visual representation of the data architecture using a Wardley map. She emphasizes the importance of simplifying infrastructure and improving data quality before diving into AI and ML projects. Jessica also highlights the need for clear communication and collaboration with stakeholders to ensure successful data initiatives.</p><p><br><strong>Takeaways<br></strong><br></p><ul><li>Starting a new role in a new country can be overwhelming, but with the right experience and skills, it can be managed effectively.</li><li>Creating a visual representation of the data architecture, such as a Wardley map, can help communicate the complexity and prioritize projects.</li><li>Simplifying infrastructure and improving data quality are crucial before diving into AI and ML projects.</li><li>Clear communication and collaboration with stakeholders are essential for successful data initiatives.</li></ul><p><strong>Titles</strong></p><ul><li>Navigating a New Role in a New Country</li><li>Prioritizing Infrastructure and Data Quality</li></ul><p><strong>Sound Bites</strong></p><ul><li>"Everything new sounds like you set out on an adventure and you got what you asked for. Was it scary though? Was that like, oh my god, what am I going to do?"</li><li>"Having a picture that everyone agrees this is what it is. You know, there's all too often like 10 little things in the corner that nobody really understands that that's crucial to the way things operate."</li><li>"Using a Wardley map was new to me and I instantly loved it. The way it laid it out, the way it communicated to everyone what was visible and important, but then not visible and important was sort of also, you know, that I think as a person running an engineering team is often really hard to explain that this crucial piece that no one can see, we need to do something about."</li></ul><p><br></p><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction and Setting the Scene</p><p>02:13<br>Navigating a New Role and Team</p><p>11:06<br>Visualizing Data Architecture with Wardley Maps</p><p>19:53<br>Prioritizing Infrastructure and Data Quality</p><p>28:11<br>Challenges of AI and ML in Data Initiatives</p><p>32:05<br>Conclusion and Key Takeaways</p>]]>
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        <![CDATA[<p>Jessica Franks shares her experience of joining Not on the High Street as an engineering manager for the data team. She discusses the challenges of starting a new role in a new country and managing a team with diverse skill sets. Jessica explains how she tackled the lack of data strategy and created a visual representation of the data architecture using a Wardley map. She emphasizes the importance of simplifying infrastructure and improving data quality before diving into AI and ML projects. Jessica also highlights the need for clear communication and collaboration with stakeholders to ensure successful data initiatives.</p><p><br><strong>Takeaways<br></strong><br></p><ul><li>Starting a new role in a new country can be overwhelming, but with the right experience and skills, it can be managed effectively.</li><li>Creating a visual representation of the data architecture, such as a Wardley map, can help communicate the complexity and prioritize projects.</li><li>Simplifying infrastructure and improving data quality are crucial before diving into AI and ML projects.</li><li>Clear communication and collaboration with stakeholders are essential for successful data initiatives.</li></ul><p><strong>Titles</strong></p><ul><li>Navigating a New Role in a New Country</li><li>Prioritizing Infrastructure and Data Quality</li></ul><p><strong>Sound Bites</strong></p><ul><li>"Everything new sounds like you set out on an adventure and you got what you asked for. Was it scary though? Was that like, oh my god, what am I going to do?"</li><li>"Having a picture that everyone agrees this is what it is. You know, there's all too often like 10 little things in the corner that nobody really understands that that's crucial to the way things operate."</li><li>"Using a Wardley map was new to me and I instantly loved it. The way it laid it out, the way it communicated to everyone what was visible and important, but then not visible and important was sort of also, you know, that I think as a person running an engineering team is often really hard to explain that this crucial piece that no one can see, we need to do something about."</li></ul><p><br></p><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction and Setting the Scene</p><p>02:13<br>Navigating a New Role and Team</p><p>11:06<br>Visualizing Data Architecture with Wardley Maps</p><p>19:53<br>Prioritizing Infrastructure and Data Quality</p><p>28:11<br>Challenges of AI and ML in Data Initiatives</p><p>32:05<br>Conclusion and Key Takeaways</p>]]>
      </content:encoded>
      <pubDate>Tue, 20 Aug 2024 02:05:02 -0700</pubDate>
      <author>Matatika</author>
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      <itunes:author>Matatika</itunes:author>
      <itunes:duration>2104</itunes:duration>
      <itunes:summary>
        <![CDATA[<p>Jessica Franks shares her experience of joining Not on the High Street as an engineering manager for the data team. She discusses the challenges of starting a new role in a new country and managing a team with diverse skill sets. Jessica explains how she tackled the lack of data strategy and created a visual representation of the data architecture using a Wardley map. She emphasizes the importance of simplifying infrastructure and improving data quality before diving into AI and ML projects. Jessica also highlights the need for clear communication and collaboration with stakeholders to ensure successful data initiatives.</p><p><br><strong>Takeaways<br></strong><br></p><ul><li>Starting a new role in a new country can be overwhelming, but with the right experience and skills, it can be managed effectively.</li><li>Creating a visual representation of the data architecture, such as a Wardley map, can help communicate the complexity and prioritize projects.</li><li>Simplifying infrastructure and improving data quality are crucial before diving into AI and ML projects.</li><li>Clear communication and collaboration with stakeholders are essential for successful data initiatives.</li></ul><p><strong>Titles</strong></p><ul><li>Navigating a New Role in a New Country</li><li>Prioritizing Infrastructure and Data Quality</li></ul><p><strong>Sound Bites</strong></p><ul><li>"Everything new sounds like you set out on an adventure and you got what you asked for. Was it scary though? Was that like, oh my god, what am I going to do?"</li><li>"Having a picture that everyone agrees this is what it is. You know, there's all too often like 10 little things in the corner that nobody really understands that that's crucial to the way things operate."</li><li>"Using a Wardley map was new to me and I instantly loved it. The way it laid it out, the way it communicated to everyone what was visible and important, but then not visible and important was sort of also, you know, that I think as a person running an engineering team is often really hard to explain that this crucial piece that no one can see, we need to do something about."</li></ul><p><br></p><p><strong>Chapters<br></strong><br></p><p>00:00<br>Introduction and Setting the Scene</p><p>02:13<br>Navigating a New Role and Team</p><p>11:06<br>Visualizing Data Architecture with Wardley Maps</p><p>19:53<br>Prioritizing Infrastructure and Data Quality</p><p>28:11<br>Challenges of AI and ML in Data Initiatives</p><p>32:05<br>Conclusion and Key Takeaways</p>]]>
      </itunes:summary>
      <itunes:keywords>data engineering, data team, engineering manager, data strategy, Wardley map, infrastructure, data quality, AI, ML, communication, collaboration</itunes:keywords>
      <itunes:explicit>No</itunes:explicit>
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