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Let's Talk Data
Let's Talk Data
Author: DQE
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© DQE
Description
Each episode, we invite a data expert to share their experiences, tips, and data-driven knowledge.
With a dynamic, conversational, and professional approach, Let’s Talk Data explores the keys to effective data management while giving you practical, actionable insights you can apply right away.
Let’s Talk Data is a podcast by DQE – Data Quality Everywhere, your go-to solution for reliable, unified customer data.
Hosted on Ausha. See ausha.co/privacy-policy for more information.
3 Episodes
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Guests : Léonard Jochem and Steve Collinge - Managing Director - Insight Retail GroupWhat are the key challenges facing retailers in 2026 ?In this two-part episode of Let’s Talk Data, we explore the structural challenges shaping retail in 2026 - and what truly separates leaders from laggards in a permanently changed environment.Retail is no longer defined by disruption alone, but by execution. Customer expectations, cost pressure, technology capability and data maturity are colliding, forcing retailers to rethink long-held assumptions.Together with Steve Collinge, we examine why the physical store is being re-engineered rather than replaced, how convenience has become the primary competitive battleground, and why data is shifting from operational by-product to strategic commercial asset.The discussion also tackles range rationalisation as a profit lever and explains why, in an AI-enabled world, people and expertise are becoming stronger differentiators - not weaker ones.The takeaway: the gap between retail leaders and losers is widening, driven less by ambition and more by disciplined execution.Part 2 dives deeper into the data foundations retailers must fix to compete in 2026.Brought to you by DQE – Data Quality Everywhere.Hosted on Ausha. See ausha.co/privacy-policy for more information.
Guests: Philippe Boulanger and Dylan Anderson - Director of Data Strategy, Analytics & AI at Atombit, creator of “The Data Ecosystem”In Episode 2, Philippe Boulanger and Dylan Anderson explore why AI has become the most powerful companion to data, and why it raises the stakes on data quality like never before. Where business intelligence and analytics once required specialist skills, long lead times, and retrospective insights, AI now puts answers directly into the hands of business users. But this new accessibility comes with a paradox: AI is only as good as the data it consumes. Poorly structured or low-quality data doesn’t just produce wrong answers, it actively misleads AI systems and amplifies errors. The episode explains why structured, contextualised data and smaller, specialised AI models grounded in a company’s own information outperform broad, generic approaches, reducing hallucinations and increasing reliability at scale.The conversation then tackles the root of the problem: decades of accumulated “data quality debt.” Many organisations treated data quality as a nice-to-have, leaving gaps in ownership, governance, and processes that AI is now exposing. Dylan outlines how leading companies turn this challenge into a competitive advantage by investing in people, processes, and design. The episode also highlights how AI itself can help repay that debt, from deduplication and anomaly detection to standardising data entry and improving compliance. The takeaway is clear: companies that fix their data foundations first are the ones that can build trustworthy AI, move faster, and make success repeatable.Brought to you by DQE - Data Quality Everywhere.Hosted on Ausha. See ausha.co/privacy-policy for more information.
Guests: Philippe Boulanger and Dylan Anderson – Director of Data Strategy, Analytics & AI at Atombit, creator of The Data EcosystemWhy do organisations generate more data than ever, yet still struggle to turn it into meaningful insight?In this two-part conversation, host Philippe Boulanger sits down with Dylan Anderson to cut through the noise and return to what truly matters: structured, reliable data as the foundation for analytics, AI, and business impact.In Episode 1, they explore why insights remain scarce despite data abundance, what “structured” and “reliable” data really mean, and how weak standards, siloed systems, and inconsistent inputs quietly undermine even the most advanced AI initiatives. Dylan shares real-world lessons, including a digital twin that couldn’t scale due to poor data quality, and outlines the practical steps leaders can take to strengthen their data foundations fast.A clear, actionable discussion that challenges the idea that “more data” is the answer, showing instead why real value comes from clarity, structure, and trust.Episode 2 will dive into how AI can turn data quality from a challenge into a competitive advantage.Brought to you by DQE – Data Quality Everywhere.Hosted on Ausha. See ausha.co/privacy-policy for more information.






