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Beginnt 4 June 2026 20:48

Endet 4 June 2026

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Retail AI Use Case: Building a Demand Prediction Model

Explore retail AI demand prediction models, KPIs, and implementation strategies for effective business use cases in the retail industry.
Toronto Machine Learning Series (TMLS) via YouTube

Toronto Machine Learning Series (TMLS)

6076 Kurse


42 minutes

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Übersicht

Explore retail AI demand prediction models, KPIs, and implementation strategies for effective business use cases in the retail industry.

Lehrplan

  • Introduction to Retail AI and Demand Prediction
  • Overview of AI in Retail
    Importance of Demand Prediction in Retail
    Case Studies of Successful AI Demand Prediction Models
  • Understanding Key Performance Indicators (KPIs)
  • Definition and Examples of Retail KPIs
    How AI Demand Prediction Influences KPIs
    Measuring Success: KPIs Specific to Demand Prediction
  • Data Collection and Preparation
  • Identifying Relevant Retail Data Sources
    Techniques for Data Cleaning and Preprocessing
    Feature Engineering for Demand Prediction
  • Building Demand Prediction Models
  • Overview of Machine Learning Algorithms Used for Demand Prediction
    Choosing the Right Model for Your Retail Use Case
    Hands-on Lab: Developing a Basic Demand Prediction Model
  • Evaluating Model Performance
  • Metrics for Evaluating Demand Prediction Models
    Techniques for Optimizing Model Accuracy
    Avoiding Overfitting and Underfitting
  • Implementation Strategies
  • Integrating the Model into Retail Business Processes
    Tools and Platforms for Deployment
    Ensuring Scalability and Robustness
  • Ethical and Practical Considerations
  • Handling Data Privacy and Security in Retail AI
    Addressing Bias and Fairness in Demand Prediction
  • Case Study Analysis and Project
  • In-depth Analysis of a Real-world Retail Demand Prediction Use Case
    Final Project: Build and Present a Demand Prediction Model Tailored to a Specific Retail Scenario
  • Review and Future Trends in Retail AI
  • Recap of Key Learning Points
    Discussion on Emerging Trends in Retail AI
    Preparing for Future Developments in AI Demand Prediction Models

Fachgebiete

Data Science