• Getting Real Value from AI in Insurance with Sam Worthington, CDO at Crux Underwriting
    Jul 7 2026

    In this episode of Databricks Diaries, Andy Davis is joined by Sam Worthington, Chief Data Officer at Crux Underwriting, for a practical conversation on how insurance organisations can get real value from AI.

    Sam shares his perspective on where AI is most useful in insurance, particularly around data ingestion, extraction, underwriting augmentation, bordereaux processing, fraud detection, operational efficiency and decision support.

    The conversation explores why AI is not a shortcut around poor data foundations, and why insurers need to think carefully about trust, confidence scoring, conflicting data sources and when human expertise still needs to sit in the loop.

    Sam also explains why London Market insurance presents a different challenge to more standardised personal lines environments. When risks are complex, specialist and often difficult to compare, AI needs to support underwriting expertise rather than simply replace it.

    Key topics include:

    • Why AI value in insurance often comes down to efficiency and decision support
    • The role of AI in underwriting augmentation
    • How insurers can use AI for ingestion, extraction and cleaner data capture
    • Why speed to quote matters for MGAs
    • The importance of data foundations before applying AI
    • How to manage conflicting insurance data, such as slips, emails and submissions
    • Why human referral and confidence scoring are critical in underwriting workflows
    • The difference between top-down AI use cases and bottom-up agent adoption
    • Why London Market insurance is “lumpy and bitty” compared with more standardised markets
    • How to identify the right AI use cases by starting with real business pain points

    Sam’s advice is clear: start with a genuine problem, embed the solution into the way people already work, build trust through controls and guardrails, and avoid trying to solve everything at once.

    A valuable listen for anyone working in insurance, data, underwriting, analytics or AI who is trying to separate practical opportunity from AI noise.

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    35 mins
  • Building at Unicorn Scale: Fresha CTO on Data, AI and Developer Velocity
    Jun 24 2026

    Chris Greeno, CTO at Fresha, joins Andy Davis to discuss how Fresha approaches real-time data streaming, engineering productivity, AI adoption, Claude in practice, and what it takes to build technology at serious scale.

    Chris shares a practical view of what it takes to scale technology inside a high-growth product business, covering Fresha’s approach to near real-time data streaming, architecture decisions, cost trade-offs, and the move from traditional reporting infrastructure towards more responsive data products.

    The conversation also explores how AI is changing software engineering. Chris discusses Fresha’s adoption of tools like Claude, Cursor and other AI coding assistants, why developer adoption is often harder than expected, and how engineering leaders need to rethink productivity, safety, observability and platform tooling in an AI-enabled environment.

    A particularly strong theme is mindset. Rather than seeing AI as a threat to engineering craft, Chris argues that engineers need to learn how to express their craft differently moving from writing every line of code themselves to guiding, reviewing and orchestrating AI-enabled systems.

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    36 mins
  • Stop Chasing AI Vanity Metrics. Start Chasing Value.
    Jun 11 2026

    In this episode, Andy Davis is joined by Liam Morris-Ellis, Dan Prideaux and Ankit Rawat to discuss where organisations are actually seeing value from AI today.

    The conversation moves beyond hype and explores why the biggest opportunity is not just automating individual tasks, but rethinking workflows, scaling productivity and building the right data foundations. The group also discusses AI adoption, trust, governance, data quality, human-in-the-lead thinking, and why successful AI programmes need to bring business, risk, compliance and technology teams together.

    A practical discussion for data, analytics, AI and transformation leaders who want to move from experimentation to measurable business value.

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    33 mins
  • From Social Science to Data Science: Navigating AI Leadership in the Real World — with Andreea Moldovan
    Jun 4 2026

    In this episode of Databricks Diaries, Daniel Thornton sits down with Andreea Moldovan, Associate Director of Data Science at Sage Publishing, for a candid and wide-ranging conversation about what it actually takes to lead data science and AI in the real world.

    Andreea's journey is anything but conventional — starting as a social scientist in Romania, she went on to complete a PhD funded by the Wellcome Trust, before moving through the Financial Conduct Authority, a specialist insurance company, and a price reporting agency, to ultimately find her home in academic publishing.

    In this episode, they explore:

    • Why a background in social science is one of the most underrated assets in data science and AI
    • How to quantify and communicate uncertainty to non-technical stakeholders without losing their trust
    • The mindset shift from individual contributor to data science leader — and why it's harder than it looks
    • What "outcome-first" thinking really means in practice when building AI solutions
    • How generative AI is changing the shape of data science roles — and why the fundamentals haven't changed as much as people think
    • The one constant in a decade of working in data science: change

    Whether you're an aspiring data leader, a seasoned practitioner, or simply curious about the human side of AI, this is a conversation packed with honest reflections, hard-won lessons, and a refreshing dose of realism about what the next few years hold.

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    40 mins
  • How Data Science Teams Should Prepare for AI-Driven Change
    May 27 2026

    In this episode of The Databricks Diaries, Andy Davis speaks with Sindy Yick, Head of Data Science and Machine Learning at Markerstudy Group, as part of our ongoing AI readiness series.

    Sindy brings a valuable data science perspective to the conversation, exploring why AI readiness is not just about adopting the latest tools or building agents. Instead, it starts with strong data foundations, good system design and a clear understanding of where AI can genuinely add value.

    The conversation also tackles one of the more difficult topics in AI adoption: the anxiety technical teams feel around AI agents and automation. Sindy shares her view on why AI should be treated as an assistant rather than a replacement, why junior talent still matters, and how organisations may need to rethink how they train and develop early-career data professionals.

    Show notes

    In this episode, we cover:

    • Why data quality and system foundations come before AI adoption
    • The “garbage in, garbage out” risk when applying AI to poor-quality data
    • How data science and machine learning teams are reacting to rapid AI change
    • The impact of coding agents on junior data science and engineering roles
    • Why AI is more likely to assist technical teams than fully replace them in the near term
    • The importance of stakeholder engagement, business knowledge and industry context
    • How organisations may need to rethink graduate and junior training pathways
    • Why human judgement, communication and strategic thinking are becoming more valuable
    • Potential AI use cases across insurance, including operations and underwriting
    • The importance of guardrails when moving AI closer to customer-facing or front-end applications
    • Sindy’s advice for data science leaders: stay open-minded and keep adapting

    AI readiness is not just about adopting the latest model or building the next agent.

    In this episode, Andy Davis speaks with Sindy Yick, Head of Data Science and Machine Learning at Markerstudy Group, about why strong data foundations, guardrails and human skills are critical to making AI work in practice.

    They also explore the future of junior technical roles, the rise of coding agents, and why business knowledge, stakeholder engagement and adaptability may become the most important skills for data science teams in the years ahead.

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    21 mins
  • A Data Leaders Journey - Kieran Poynton
    May 19 2026

    In this episode of the Databricks Diaries, Daniel is joined by Kieran Pointon, Director of Data & Analytics at Bromford Flagship LiveWest — one of the largest housing providers in the UK with around 120,000 homes following a recent three-way merger.

    Kieran brings 20+ years of experience across data engineering, BI, and enterprise architecture, including leadership roles at Halfords and Adidas. In this conversation, he opens up about the realities of merging three data teams, why he's betting on Microsoft Fabric over Databricks for his current platform, and how data science is helping real people get into work, education, and safer homes.

    What's covered:

    • Kieran's journey from headphones-on software engineer to data leader — and how being an introvert shaped his leadership style
    • Why "listen before you speak" is his number one piece of leadership advice
    • Building a high-performing data team at Halfords that could run without him
    • Merging Bromford, Flagship, and LiveWest — three teams, three landscapes, three ERPs
    • Why he chose Microsoft Fabric over Databricks for the new platform (and the five-year bet behind that decision)
    • The "left brain vs right brain" model: where the technology approach and business approach meet in the middle
    • Real data science use cases changing tenants' lives — condensation/damp/mould prediction, customer complaint modelling, and the "Pipeline of Talent" NLP model that's helped 450+ customers into work and education
    • How to get exec and board buy-in for data and AI initiatives
    • What makes the best analytics team — and why it's not always about the best tools or the best engineers
    • Honest advice for any data leader facing a merger or acquisition

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    44 mins
  • Data In The Boardroom with James Blagg
    May 12 2026

    In this episode of the Databricks Diaries, Daniel is joined by James Blagg, a seasoned Chief Data Officer with over 25 years of experience leading data strategy, architecture, and modernisation programmes across financial services.

    James shares hard-won lessons from a career that spans the 2008 financial crisis, the big data hype cycle, the move from Teradata appliances to cloud-native platforms, and now the AI wave. It's a candid conversation about what actually drives value in data — and the gap between vendor promises and operational reality.

    What's covered:

    • James's career journey from Oracle PL/SQL developer to CDO
    • Leading BI teams at Lloyds through the financial crisis and the HBOS integration
    • Nationwide's data simplification programme and the "almost cloud" Teradata investment
    • How platform evaluation has changed — and why cost, skills, and relationships now matter more than features
    • Why "it's on the roadmap" is the most dangerous phrase in vendor selection
    • The MVP hypothesis approach to picking analytics use cases
    • Why so many data warehouse projects are perceived as failures (and why metadata investment is finally fixing it)
    • Where AI really sits on the maturity curve — and why financial services is 10–15 years away from full back-office adoption
    • A practical playbook for governance, cost monitoring, and security guardrails before scaling AI on Databricks
    • The truth about cloud consumption pricing and reserved pricing deals

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    48 mins
  • AI Readiness in Practice with Claire Thompson, CDO at Quilter
    May 6 2026

    In this episode of The Databricks Diaries, Andy Davis is joined by Claire Thompson, Chief Data Officer at Quilter, to explore what AI readiness really looks like inside a modern financial services organisation.

    Claire shares her perspective on the pace of change in data and AI, why strong foundations still matter, and why organisations cannot afford to wait for everything to be perfect before starting. The conversation covers how to build momentum through practical use cases, engage senior stakeholders, create safe environments for experimentation, and make governance a helpful enabler rather than a blocker.

    Andy and Claire also discuss the importance of continuous learning within data teams, how to prioritise AI opportunities, and why technical teams need to get better at telling the story of the value they create.

    This episode is for data, technology and business leaders who want a grounded view of AI adoption beyond the hype, with practical lessons on moving from early experimentation to scalable, valuable outcomes.

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    34 mins