The Good Tech Companies - Retail Resilience: Srinivas Kalisetty's Vision for the Future of Supply Chain Intelligene

Episode Date: June 17, 2025

This story was originally published on HackerNoon at: https://hackernoon.com/retail-resilience-srinivas-kalisettys-vision-for-the-future-of-supply-chain-intelligene. Sri...nivas Kalisetty champions agentic AI and predictive analytics to build smarter, adaptive, and resilient retail supply chains for the future. Check more stories related to business at: https://hackernoon.com/c/business. You can also check exclusive content about #retail-supply-chain, #predictive-analytics, #agentic-ai, #srinivas-kalisetty, #smart-logistics, #ai-in-retail, #digital-supply-chain, #good-company, and more. This story was written by: @jonstojanjournalist. Learn more about this writer by checking @jonstojanjournalist's about page, and for more stories, please visit hackernoon.com. Srinivas Kalisetty’s research introduces agentic AI and predictive analytics to revolutionize retail supply chains. His vision promotes autonomous systems, ethical data use, and smart forecasting to transform operations from reactive to proactive—offering a scalable, resilient model for future-ready retail.

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Starting point is 00:00:00 This audio is presented by Hacker Noon, where anyone can learn anything about any technology. Retail Resilience. Shrini Vaz Kalasetty's Vision for the Future of Supply Chain Intelligene, by John Stoyan Journalist. In an era of unprecedented disruption and digital acceleration, one technologist is reshaping the future of how goods move, businesses operate, and consumers engage, Shrini Vaz Kalasetty. As the integration and AI lead, Kalasetty stands at the forefront of retail innovation, offering a blueprint for how next-generation artificial intelligence can transform the supply chain from a reactive system into a proactive engine of efficiency and insight. His recently published research, Agentic AI
Starting point is 00:00:41 and Predictive Analytics, revolutionizing retail supply chain management for next general resilience and efficiency, in the American Data Science Journal for Advanced Computations, explores how intelligent systems, real-time analytics, and agentic computing can support adaptive supply chains capable of withstanding today's volatile markets. Building intelligence into the backbone of retail the traditional retail supply chain, long reliant on static inventory models and siloed operations, is facing mounting pressures. From COVID-19 related disruptions to shifting consumer expectations, the industry is being forced toe-volve. Caliceti's research introduces Agentic AI as a defining technology in this transformation. Unlike conventional automation systems, Agentic AI encompasses autonomous decision-making
Starting point is 00:01:28 capabilities, allowing systems to execute strategic actions in the physical world. In the context of retail, this means systems that don't manage stock, control environmental conditions, and adapt pricing based on predictive models, all without human intervention. At its core, Agentic AI merges the best of predictive analytics and autonomous systems to create supply chains that are not only reactive but anticipatory. Retail is no longer just about moving products, notes Caliceti. It's about forecasting needs, adapting to consumer behavior in real time, and doing it all with minimal waste and maximum agility.
Starting point is 00:02:04 Predictive Analytics The crystal ball of retail one of the cornerstones of Caliceti's framework is the role of predictive analytics in supply chain forecasting. Historically, inventory and demand forecasts have relied on linear models that fail to capture the complexity of modern consumer behavior. Caliceti's paper argues that predictive analytics, enhanced by machine learning, can bridge this gap by learning from historical data, environmental factors, and market signals to optimize operations. By integrating these models into retail decision-making, businesses can predict product demand with far greater accuracy, reduce overstock and understock scenarios, and ultimately cut down
Starting point is 00:02:42 on logistics costs. We've moved from guesswork to guided strategy, says Caliseti. Predictive analytics turns data into a decision-making asset. In his research, he highlights real-world use cases, such as optimizing delivery schedules or planning store layouts, to illustrate how these tools not only improve operational efficiency but also enhance the customer experience. The shift toward smart supply chains the paper also explores the shift from traditional, fragmented systems to interconnected ecosystems.
Starting point is 00:03:12 Using smart agents, adaptive AI programs capable of managing multiple tasks across different levels of abstraction, Caliseti proposes a model in which supply chain operations can self-correct, reroute deliveries, and even adjust pricing based on market demand. The framework doesn't rely solely on predictive intelligence. It incorporates simulation environments that test AI recommendations under varied conditions, increasing reliability before deployment. It's not just about data. It's about how data is tested, interpreted, and activated in real-time, Caliceti explains. This model reflects a broader trend in the industry, the convergence of physical
Starting point is 00:03:50 infrastructure with digital intelligence. Retailers equipped with smart warehouses, autonomous delivery systems, and real-time supply chain mapping can respond to disruptions faster and more effectively than ever before. Ethical data use and scalability challenges while the technological promise is compelling, Caliseti is clear-eyed about the challenges. The paper acknowledges that deploying agentic AI at scale requires robust data infrastructure, organizational alignment, and a clear ethical framework.
Starting point is 00:04:20 In building smart supply chains, companies must prioritize transparency, data governance, and responsible prioritize transparency, data governance, and responsible AI use, the research notes. There's also the challenge of interoperability, ensuring that legacy systems, new platforms, and data streams can coexist in a seamless operational environment. Despite these hurdles, Kallisetti remains optimistic. His work emphasizes modular adoption, encouraging retailers to begin with
Starting point is 00:04:45 pilot programs before full-scale deployment. The key is to start small, validate success, and scale incrementally. A blueprint for future-proof retail what sets Caliseti apart is his holistic approach. His vision extends beyond logistics and touches every facet of retail, from how companies forecast demand and manage suppliers to how they enhance consumer engagement. He emphasizes that technology alone isn't the solution. It's the integration of human insight, adaptive algorithms, and ethical strategy that creates our resilient system.
Starting point is 00:05:17 As retailers navigate a landscape defined by uncertainty, Caliseti's research provides not just a roadmap, but a compass. By aligning digital innovation with operational reality, Shrinivas Calasetti is not merely forecasting the future of retail, he's building it. His contributions exemplify the kind of forward-thinking leadership that will shape the next decade of retail transformation. And in a world where supply chains are increasingly tested by global crises, environmental pressures, and rising consumer expectations, such innovation isn't just valuable, it's essential.
Starting point is 00:05:50 Thank you for listening to this Hacker Noon story, read by Artificial Intelligence. Visit HackerNoon.com to read, write, learn and publish.

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