Episodes

  • The Invisible Architecture: Why Data Modelling Is the Make-or-Break for Enterprise AI
    Apr 20 2026

    Sarah and James unpack a question most AI programmes never ask early enough: is the data actually modelled? Drawing on recent benchmarks, documented enterprise failures, and hard ROI evidence, they explore why AI accuracy drops to zero without proper data foundations, why 80% of AI projects stall on data — not algorithms — and what leaders can do about it. From the London Whale to Walmart's checkout fiasco, this episode puts data modelling in the language of business risk, competitive advantage, and AI readiness.

    References:

    • A Benchmark to Understand the Role of Knowledge Graphs on Large Language Model's Accuracy for Question Answering on Enterprise SQL Databases
      https://arxiv.org/abs/2311.07509
    • The Consequences of Poor Data Quality: Uncovering the Hidden Risks
      https://www.actian.com/blog/data-management/the-costly-consequences-of-poor-data-quality/
    • The Root Causes of Failure for Artificial Intelligence Projects and How They Can Succeed
      https://www.rand.org/content/dam/rand/pubs/research_reports/RRA2600/RRA2680-1/RAND_RRA2680-1.pdf
    • Generative AI Benchmark: Increasing the Accuracy of LLMs ...
      https://data.world/blog/generative-ai-benchmark-increasing-the-accuracy-of-llms-in-the-enterprise-with-a-knowledge-graph/
    • How a Single Source of Truth for Data Unlocks Growth ...
      https://vizule.io/single-source-of-truth-data/
    • Is a Semantic Layer Necessary for Enterprise-Grade AI Agents?
      https://www.tellius.com/resources/blog/is-a-semantic-layer-necessary-for-enterprise-grade-ai-agents
    • The Consequences of Poor Data Quality: Uncovering the Hidden Risks
      https://www.actian.com/blog/data-management/the-costly-consequences-of-poor-data-quality/
    • The Impact of Poor Data Quality (and How to Fix It)
      https://www.dataversity.net/articles/the-impact-of-poor-data-quality-and-how-to-fix-it/
    • Impact of Poor Data Quality on Business Performance: Challenges, Costs, and Solutions
      https://papers.ssrn.com/sol3/papers.cfm?abstract_id=4843991
    • The ROI of Data Modeling ...
      https://sqldbm.com/blog/the-roi-of-data-modeling-speaking-to-the-c-suite-using-business-metrics/
    • Master Data Management Case Study: Luxury Retail Transformation
      https://flevy.com/topic/master-data-management/case-master-data-management-enhancement-luxury-retail
    • MDM case study: The value of the Golden Record and mastering your data
      https://qmetrix.com.au/case-study/mdm-case-study-the-value-of-the-golden-record-and-mastering-your-data/
    • JPMorgan Chase London Whale C: Risk Limits, Metrics, and Models

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    20 mins
  • Why Data Observability Matters Before AI Scales
    Apr 13 2026

    In the first episode of AI - Beyond the Hype, Sarah and James explore why data observability is one of the most overlooked foundations of enterprise AI readiness. They discuss how incomplete, delayed, duplicated, or poor-quality data can quietly undermine dashboards, reporting, and AI outcomes — and why better AI still starts with better data. (Sources: https://learn.microsoft.com/en-us/azure/cloud-adoption-framework/scenarios/cloud-scale-analytics/manage-observability, https://www.ibm.com/think/topics/ai-data-quality)

    They explain that AI success depends on more than models or tools. Organisations need confidence that data is flowing correctly from operational systems into a central platform for analytics, reporting, and AI use cases. Without strong foundations, AI can create polished outputs built on unreliable information. (Sources: https://cloud.google.com/transform/how-to-build-strong-data-foundations-gen-ai, https://www.mckinsey.com/capabilities/tech-and-ai/our-insights/the-data-dividend-fueling-generative-ai)

    The episode also unpacks the difference between pipeline monitoring and true data observability. A pipeline may run successfully and still produce untrustworthy data. Observability helps teams detect, diagnose, and prevent issues before they create business impact. (Sources: https://www.databricks.com/blog/what-is-data-observability, https://learn.microsoft.com/en-us/azure/cloud-adoption-framework/scenarios/cloud-scale-analytics/manage-observability)

    Key takeaways:

    • AI readiness is not the same as AI enthusiasm. Strong data foundations determine what is actually possible. (Source: https://www.mckinsey.com/capabilities/tech-and-ai/our-insights/the-data-dividend-fueling-generative-ai)
    • Source-system data quality should be validated early, with ongoing checks for completeness, accuracy, and uniqueness. (Source: https://docs.aws.amazon.com/wellarchitected/latest/analytics-lens/best-practice-1.1---validate-the-data-quality-of-source-systems-before-transferring-data-for-analytics..html)
    • Poor data quality is one of the most common reasons AI initiatives fail. (Source: https://www.ibm.com/think/topics/ai-data-quality)

    Why this matters:

    For leaders, this is not just a technical issue. It is a question of trust, decision quality, governance, and risk. If the data underneath reporting and AI is weak, faster systems can simply produce faster bad answers. (Sources: https://learn.microsoft.com/en-us/azure/cloud-adoption-framework/scenarios/cloud-scale-analytics/manage-observability, https://www.ibm.com/think/topics/ai-data-quality)

    Memorable ta

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    12 mins
  • AI - Beyond the Hype - Trailer
    Apr 13 2026

    Welcome to AI - Beyond the Hype — a podcast for executives, technology leaders, and data teams who want a clearer, more practical conversation about what it really takes to make AI work in the enterprise. In this short trailer, Sarah and James introduce the show and explain why data quality, observability, governance, and trust matter just as much as the AI itself.

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    2 mins