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Main Author: Vivek Prasanna Prabu
Format: Recurso digital
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Published: Zenodo 2023
Online Access:https://doi.org/10.5281/zenodo.15242174
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author Vivek Prasanna Prabu
author_facet Vivek Prasanna Prabu
contents <p>The modern retail environment is shaped by dynamic consumer behavior, evolving market conditions, and increasingly complex supply chains. Traditional demand forecasting methods struggle to keep up with these changes, leading to inefficiencies such as stockouts, overstocking, and missed sales opportunities. AI-powered predictive analytics offers a transformative approach by leveraging machine learning algorithms, big data, and real-time insights to produce highly accurate demand forecasts. This technology enables retailers to identify trends, optimize inventory, improve customer satisfaction, and boost profitability. Predictive models can ingest vast datasets from point-of-sale systems, loyalty programs, weather forecasts, social media, and macroeconomic indicators. AI algorithms process this data to uncover hidden patterns, model demand drivers, and predict future demand across SKUs, locations, and time horizons. This level of precision empowers retailers to align procurement, logistics, and workforce planning with customer demand. Furthermore, predictive analytics supports agile responses to disruptions, promotional planning, and seasonal adjustments. Retailers like Amazon, Target, and Unilever have achieved notable success through AI-driven forecasting, realizing increased sales, reduced costs, and faster decision-making. However, successful adoption requires robust data governance, cross-functional collaboration, and a clear implementation roadmap. Retailers must also address challenges such as data silos, algorithmic bias, and change management. This white paper explores the capabilities, use cases, architectural foundations, implementation strategies, and success factors of AI-powered predictive analytics in retail demand forecasting. Through real-world case studies and expert insights, it offers a comprehensive guide for decision-makers seeking to harness AI for competitive advantage.</p>
format Recurso digital
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institution Zenodo
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publishDate 2023
publisher Zenodo
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spellingShingle AI-Powered Predictive Analytics for Retail Demand Forecasting
Vivek Prasanna Prabu
<p>The modern retail environment is shaped by dynamic consumer behavior, evolving market conditions, and increasingly complex supply chains. Traditional demand forecasting methods struggle to keep up with these changes, leading to inefficiencies such as stockouts, overstocking, and missed sales opportunities. AI-powered predictive analytics offers a transformative approach by leveraging machine learning algorithms, big data, and real-time insights to produce highly accurate demand forecasts. This technology enables retailers to identify trends, optimize inventory, improve customer satisfaction, and boost profitability. Predictive models can ingest vast datasets from point-of-sale systems, loyalty programs, weather forecasts, social media, and macroeconomic indicators. AI algorithms process this data to uncover hidden patterns, model demand drivers, and predict future demand across SKUs, locations, and time horizons. This level of precision empowers retailers to align procurement, logistics, and workforce planning with customer demand. Furthermore, predictive analytics supports agile responses to disruptions, promotional planning, and seasonal adjustments. Retailers like Amazon, Target, and Unilever have achieved notable success through AI-driven forecasting, realizing increased sales, reduced costs, and faster decision-making. However, successful adoption requires robust data governance, cross-functional collaboration, and a clear implementation roadmap. Retailers must also address challenges such as data silos, algorithmic bias, and change management. This white paper explores the capabilities, use cases, architectural foundations, implementation strategies, and success factors of AI-powered predictive analytics in retail demand forecasting. Through real-world case studies and expert insights, it offers a comprehensive guide for decision-makers seeking to harness AI for competitive advantage.</p>
title AI-Powered Predictive Analytics for Retail Demand Forecasting
url https://doi.org/10.5281/zenodo.15242174