Module A — Discovery, data & guardrails for FMCG
Frame where Google Cloud changes regulated and operational workflows in FMCG before scaling beyond pilots. Target outcome: Forecast accuracy improvement (25-40% better).
session outline
- Stakeholder map: sponsors, risk, and practitioners who own Google Cloud outcomes in your org.
- Data boundary & classification: what can flow into models vs. what stays offline—using FMCG-specific examples (e.g., Demand forecasting and inventory optimization (reducing stockouts by 40%)).
- Compliance checkpoints: Food safety and labeling regulations, Consumer protection laws requirements for FMCG.
- Acceptable use, logging, and escalation when outputs inform customer or patient-facing decisions.
- Pilot scorecard: hypothesis, baseline, success metrics (targeting: Forecast accuracy improvement (25-40% better)), and kill criteria.
labs
- Facilitated triage: three candidate Google Cloud use cases scored on feasibility × impact × risk for FMCG. Reference cases: Demand forecasting and inventory optimization (reducing stockouts by 40%); Supply chain visibility and logistics optimization.
- Compliance red-team: how Food safety and labeling regulations would challenge each brief (structure only—not legal advice).
beyond-catalog topics (custom)
- Procurement-ready comparison criteria when evaluating Google Cloud vendors for FMCG use cases.
- Region-specific regulatory touchpoints: Food safety and labeling regulations, Consumer protection laws for multi-country operations.