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begint
Start 4 June 2026 02:04
Einde 4 June 2026
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2 weeks, 3 hours a week
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Beginner
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Free Online Course (Audit)
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Overzicht
Unlock the potential of machine learning and take your first steps towards mastering this revolutionary technology. Enrol in this course to uncover its fundamental principles, understand ethical considerations, and gain practical skills that set you apart in the field of artificial intelligence.
Lesprogramma
- Introduction to Machine Learning
- Fundamental Principles of Machine Learning
- Supervised Learning
- Unsupervised Learning
- Introduction to Neural Networks
- Model Evaluation and Optimization
- Tools and Frameworks
- Ethics in Machine Learning
- Practical Experiments
- Future Directions in Machine Learning
What is Machine Learning?
Historical context and development
Overview of current applications
Types of Machine Learning: Supervised, Unsupervised, Reinforcement
Key concepts: features, labels, models
Data collection and preprocessing
Linear regression
Classification algorithms (e.g., decision trees, SVMs)
Evaluation metrics: accuracy, precision, recall, F1 score
Clustering techniques: K-means, hierarchical clustering
Dimensionality reduction: PCA, t-SNE
Anomaly detection
Basics of neural networks and deep learning
Understanding architecture: layers, nodes, activation functions
Training process: forward and backward propagation
Cross-validation techniques
Hyperparameter tuning
Avoiding overfitting and underfitting
Overview of key libraries: Scikit-learn, TensorFlow, PyTorch
Environment setup: Anaconda, Jupyter Notebooks
Bias and fairness in AI systems
Data privacy and security issues
Accountability and transparency in models
Hands-on project: building and evaluating a simple ML model
Kaggle challenges and competitions
Collaborative exercises and peer reviews
Trends in AI and ML research
Careers and roles in machine learning and AI
Resources for continued learning and development
Gegeven door
Dev Kant
Vakgebieden
Data Science