The Future of Commerce Podcast

No AI without data: Why digital success starts with the basics


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Recommendation engines, dynamic pricing, conversational CX—AI can unlock them all. But without trustworthy, unified data, AI simply amplifies bad patterns. Inspired by No AI without data: Why digital success starts with the basics, this episode separates signal from noise: the trillion-dollar cost of poor data quality, why “garbage in, garbage out” still rules, and the concrete steps leaders are taking to fix foundations before scaling AI.

What You’ll Learn in This Episode:

Why AI Fails (and How Data Breaks It)

  • The “data goldmine” myth: lots of data ≠ useful data
  • Hidden data factory: the staggering productivity drain of bad data
  • How flaws cause AI misfires: overfitting, edge-case blind spots, spurious correlations, bias, and data drift

The Foundational Fix—A Practical Blueprint

  1. Audit reality: map systems (including shadow spreadsheets), ownership, and gaps
  2. Product master cleanup: normalize attributes, units, categories, and hierarchies
  3. Customer master cleanup: dedupe, resolve parent/child relationships, link true buying history
  4. Transaction discipline: capture why (promo, override, contract) to distinguish signal from noise
  5. Integration layer: ETL/ELT into a governed warehouse/lake for a single source of truth
  6. Governance & DQM: owners, rules, SLAs, privacy (GDPR/HIPAA), and controls embedded in workflows

From Cost Center to Growth Engine

  • Cut the hidden factory (free analysts & data scientists to build, not mop up)
  • Enable reliable AI: pricing, recommendations, inventory optimization, service automation
  • Build resilience: continuous data quality, monitoring, and model retraining to counter drift

Organization & Culture—Making ‘Data First’ Stick

  • Cross-functional accountability: sales, finance, ops, IT share metrics and incentives
  • “Design for capture”: make high-quality data entry the easiest path for frontline teams
  • Iterate in quarters, not years: ship foundations, measure lift, scale patterns

Key Takeaways:

  • You can’t buy your way around data quality—AI learns whatever you feed it.
  • Clean product, customer, and transaction data is the fastest path to dependable AI.
  • Governance turns one-off cleans into durable capability (and lower operating costs).
  • Embed “why” at the point of entry to convert exceptions into learnable signals.
  • Get the data right and everything improves: pricing, CX, supply chain, analytics.

Subscribe for more pragmatic playbooks on turning AI ambition into measurable outcomes. Visit The Future of Commerce for deep dives on data governance, architecture patterns, and AI implementation. Share this episode with ops leaders, data teams, and execs who own revenue and risk.

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