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Beginnt 4 June 2026 07:55
Endet 4 June 2026
00
Tage
00
Stunden
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Minuten
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Sekunden
17 hours
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Paid Course
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Übersicht
This course covers various aspects of improving AI models. Topics include introduction to model optimization, hyperparameter tuning, regularization techniques, evaluating and optimizing strategies, and deployment considerations.
Students will learn how to monitor, evaluate and enhance model performance, prevent overfitting, and apply techniques for real-world scenarios.
Lehrplan
- Introduction to AI Model Optimization
- Regularization Techniques to Prevent Overfitting
- Hyperparameter Tuning Methods
- Evaluating and Optimizing AI Strategies
- Deployment and Real-World Considerations
- Project: Building and Optimizing a Classification Model for Trading
We review how AI models work in principle and important terminology used in AI model training and optimization. We talk about where AI model optimization applies in using AI models for trading.
Overfitting is a common issue when training AI models for trading. We’ll explore bias, variance, and the role of hyperparameters in the context of various AI model types.
Get hands-on with AI model hyperparameters and discuss the various methods available to us for tuning them in a systematic or ad-hoc way, as well as the advantages and disadvantages of each method.
We discuss some practical methods and important considerations related to model optimization and evaluation in the context of AI models for trading.
We analyze important practical considerations for using AI models for trading. We discuss things we need to keep in mind as we maintain or iterate on our deployed models.
Optimize a stock price prediction model using data preprocessing, hyperparameter tuning, over/underfitting detection, model evaluation, and feature selection.
Unterrichtet von
Farid Taba
Fachgebiete
Computer Science