Let me tell you about the morning I stopped trusting my gut. It was the peak of a festive season. We had made our inventory calls the way we always had experience, historical data, and what I would charitably call ‘informed intuition’. By noon, three of our fastest-moving SKUs had stocked out in Tier 2 cities we had systematically underestimated. Meanwhile, a warehouse in the NCR region was holding six weeks’ worth of a variant nobody was buying. The result was lost sales and heavy markdown pressure. The cause was not bad luck. It was an outdated decision-making model facing a world it was never built for. That experience changed how I think about supply chain decision-making. I am not, at the core, a technology leader. I am a business leader who happens to understand that technology, specifically, artificial intelligence, is the most powerful competitive instrument a supply chain organisation in India has ever had access to. The question I now ask every single day is not: ‘Are we investing in AI?’ The question is: ‘Are we moving fast enough?’ $4.6B Projected AI in Supply Chain market in Asia-Pacific by 2028 (MarketsandMarkets, 2024) 30–50% Reduction in forecasting errors reported by early AI adopters (McKinsey Global Institute) $46B Estimated annual retail inventory distortion cost in India due to stockouts & overstocking Sources: MarketsandMarkets 2024; McKinsey Global Institute; Retailers Association of India estimates. These are not incremental improvements—they represent a fundamental shift in how supply chains sense and respond to demand. We Have Been Forecasting the Past The supply chain industry has a complicated relationship with data. We have always collected it. We have rarely trusted it fast enough to act on it. For decades, demand planning in Indian retail ran on a rhythm of monthly reviews, quarterly cycles, and annual budgets. The assumption baked into that rhythm was that tomorrow would look roughly like yesterday. It no longer does. India’s retail landscape today is defined by contradictions that confound traditional models. A consumer in Indore buys the same premium skincare brand as someone in South Mumbai, but through a quick commerce app at 11pm on a Tuesday. A Tier 3 customer in Rajasthan places a return on a fashion item because the Instagram reel made it look different from the
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