Retailer Tech Tips: Inventory Optimization with Demand Forecasting

Join Guy Courtin, Vice President of Industry and Advanced Technology at Tecsys Inc., as he hosts a deep dive into the transformative power of demand forecasting in retail. Featuring Philip Barry, Global Industry Executive Advisor at Icertis, and Liza Amlani, Principal and Founder of Retail Strategy Group, this episode is a must-listen for anyone in the retail sector.

What You'll Learn:

  • Optimizing Inventory with Demand Forecasting: How algorithms can help adjust inventory levels efficiently to meet consumer demand.

  • The Role of AI and Machine Learning: Insights into how these technologies are revolutionizing inventory management strategies.

  • Enhancing Retail Operations: How effective demand forecasting influences pricing, promotions, and overall retail strategy.

  • Data for Decision Making: The types of data most valuable for forecasting and how retailers can best utilize this information.

  • Future Trends in Inventory Management: Preparing for the latest developments and how retailers can adapt to stay ahead.

Featured Experts

  • Philip Barry, Global Industry Executive Advisor - Retail, Consumer Goods, & Hospitality at Icertis. With his extensive background, Philip brings a wealth of knowledge about the challenges and opportunities in modern retail.

  • Liza Amlani, Principal and Founder at Retail Strategy Group. Liza is known for her insightful analysis and is frequently cited in major publications like Forbes and The Wall Street Journal. Her global perspective on retail strategies is invaluable for listeners.

Listen Now

Gain valuable insights and actionable advice to optimize your retail operations.

Listen to the episode here!

Stay Updated

Follow the Retail Cloud Alliance on LinkedIn for more expert discussions and the latest in retail technology trends.

Thank you to Microsoft for powering this episode of Retailer Tech Tips.

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