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Beginnt 5 June 2026 02:20

Endet 5 June 2026

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When to Use Machine Learning - Tips, Tricks and Warnings

Discover when and how to effectively apply machine learning, with practical tips and real-world examples from open-source projects and cryptocurrency trading.
EuroPython Conference via YouTube

EuroPython Conference

6076 Kurse


39 minutes

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Übersicht

Discover when and how to effectively apply machine learning, with practical tips and real-world examples from open-source projects and cryptocurrency trading.

Lehrplan

  • Introduction to Machine Learning
  • Overview of Machine Learning
    Historical Context and Evolution
    Key Concepts and Terminology
  • Identifying Machine Learning Problems
  • Types of Problems Solved by Machine Learning
    Characteristics of Successful ML Applications
    Case Studies: Open-Source Projects
  • Data Considerations
  • Data Quality and Quantity Requirements
    Data Preprocessing Techniques
    Feature Selection and Engineering
    Practical Example: Data from Cryptocurrency Markets
  • Choosing the Right Machine Learning Approach
  • Supervised vs Unsupervised Learning
    Understanding Classification, Regression, Clustering, and Dimensionality Reduction
    Algorithm Selection: Pros and Cons
    Practical Demonstration: Selecting Models for Trading Strategies
  • Implementing Machine Learning Solutions
  • Steps in Building an ML Model
    Model Training, Validation, and Testing
    Performance Metrics and Model Evaluation
    Practical Frameworks and Tools
  • Deployment Considerations
  • Scaling Machine Learning Solutions
    Integrating ML in Existing Systems
    Monitoring and Maintenance of Deployed Models
    Deployment Case Study: Real-Time Prediction in Cryptocurrency Trading
  • Common Pitfalls and Warnings
  • Overfitting and Underfitting
    Bias and Fairness in Models
    Data Leakage Issues
    Ethical and Regulatory Considerations
  • Tips and Best Practices
  • Iterative Development and Feedback Loops
    Continuous Learning and Model Updating
    Leveraging Community and Open-Source Contributions
    Lessons Learned from Industry Failures and Successes
  • Conclusion and Future Trends
  • Emerging Trends in Machine Learning
    Speculating on the Future of ML in Trading and Open-Source
    Final Thoughts and Course Recap
  • Additional Resources
  • Recommended Readings
    Online Communities and Forums
    Tools and Libraries for Further Exploration

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