How can companies stop losing revenue because marketing, inventory, and operations are working from disconnected data? In this podcast hosted by EY Chief Platform Officer Justin Leibow, Conative.ai Founder Mike Le discusses how AI forecasting helps organizations align teams, improve decision-making, and increase cash-flow efficiency. He also explores why clean, connected data matters more than models alone, and how AI agents are reshaping the way product, marketing, and inventory teams collaborate to act faster and smarter.

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Show Notes

  1. Many companies lose significant revenue because marketing, inventory, and operations decisions are made in silos rather than from a shared forecasting foundation.
  2. Demand forecasting improves dramatically when AI integrates multiple data streams instead of relying on spreadsheets, rules-based planning, or intuition.
  3. Deep learning models outperform traditional forecasting approaches because they can incorporate many more contextual signals simultaneously.
  4. The biggest obstacle to successful AI adoption is rarely the model itself—it is the quality, structure, and availability of data.
  5. Building a working AI prototype can take months, but building a reliable production-grade data infrastructure can take a year or longer.
  6. Brands often operate with conflicting or incomplete datasets across platforms like ecommerce backends, ad channels, analytics systems, and ERPs.
  7. Forecast accuracy directly affects inventory health, which in turn shapes marketing performance and cash flow outcomes.
  8. Many organizations unknowingly lose revenue because top-selling SKUs frequently go out of stock while lower-performing inventory accumulates.
  9. Aligning marketing strategy with inventory availability can produce meaningful revenue increases without increasing marketing spend.
  10. AI forecasting systems must include risk-control mechanisms so businesses can trust outputs even when operating at scale.
  11. Inventory planners initially hesitate to rely on AI because their roles carry high financial responsibility and risk exposure.
  12. Trust in AI increases quickly when teams compare their manual forecasts with machine-generated forecasts over a short evaluation period.
  13. AI can replicate hours of expert forecasting work in minutes while maintaining comparable accuracy levels.
  14. The most effective positioning for AI in operations is as a decision-support partner rather than a replacement for human judgment.
  15. Specialized AI models remain necessary for forecasting tasks because large language models are not optimized for numerical prediction workflows.
  16. Organizations that start their AI journey without first understanding their data landscape often struggle to achieve meaningful results.
  17. Data pipelines that unify signals from marketing, ecommerce, and inventory systems create the foundation for reliable forecasting automation.
  18. AI dashboards and conversational AI agents reduce the need for manual analysis by allowing teams to interact with insights directly.
  19. Teams that adopt AI tools early gain a competitive advantage over organizations still relying primarily on spreadsheets and manual planning.
  20. Over time, AI systems are evolving toward acting as digital teammates capable of executing structured analytical tasks across business workflows.

About the speaker
Mike Le Conative AI, Founder Member

Mike Le is the founder and CEO of CB/I Digital, an award-winning agency that has driven growth for brands including Melinda Maria, Naked Cashmere, LVMH, and First Citizens Bank. After arriving in New York in 2005 and launching his first digital venture in 2007, he built CB/I Digital on a deeply analytical approach to performance that uncovers the “why” behind results and fuels long-term client partnerships. In 2025, the agency earned the US Agency Award for “Best Use of AI in a Client Campaign,” its 15th industry recognition in just three years, and partnered with Amazon to help Vietnamese sellers expand in the U.S. A leader in applied AI since 2019, he has launched multiple product initiatives culminating in Conative AI, a proprietary SaaS platform helping DTC brands and Amazon sellers forecast inventory, reduce buying risks, and improve cashflow. Conative AI has already received The SaaS Award for Best Product Analytics, The AI Award for Best Business Intelligence, and a spot on The Leading 100 list of startups transforming retail. He continues to push the future of growth by connecting inventory, marketing, and AI to help brands make faster, smarter decisions

About the host
Justin Leibow EY, Platform Operations Lead

Certified Digital Product Manager (CDPM), Certified Project Manager Professional (PMP) and ScrumMaster (CSP) Specialties: Product Development, Product Management, Insurance, Banking, Financial Transformation, Process Improvement, Business Risk

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