Machine Learning Courses
course
Geometry of High-Dimensional Data
Advanced
Acquired skills: High-Dimensional Geometry Intuition, Curse of Dimensionality, Concentration of Measure, Distance Collapse, Geometric Implications for ML Algorithms
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Geospatial Data Science with Python
Intermediate
Acquired skills: Geospatial Data Fundamentals, Vector and Raster Data Handling, Coordinate Reference Systems, Spatial Operations, Geospatial Visualization, Spatial Joins and Overlays
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Graph Theory for Machine Learning with Python
Beginner
Acquired skills: Graph Theory for ML, Graph Representation in Python, Random Walks on Graphs, Graph Embedding Intuition, Similarity Scoring for Graphs, Link Prediction, Node Classification, GraphSAGE Concepts
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Handling Data Drift in Production
Advanced
Acquired skills: Drift Detection Fundamentals, Statistical Drift Metrics, Kolmogorov–Smirnov Test, Population Stability Index, Model-Based Drift Detection, Monitoring Model Degradation
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High-Dimensional Statistics
Advanced
Acquired skills: High-Dimensional Statistical Theory, Sparsity and Effective Dimensionality, Regularization and Inductive Bias, Bias–Variance Trade-offs in High Dimensions, Concentration of Measure, Geometric Intuition in High Dimensions
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Hyperparameter Tuning Basics with Python
Beginner
Acquired skills: Hyperparameter Tuning Fundamentals, Manual Search Methods, Automated Search with scikit-learn, Bayesian Optimization, Model Evaluation and Generalization
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Implicit Bias of Learning Algorithms
Advanced
Acquired skills: Implicit Bias in Machine Learning, Inductive Bias, Minimum-Norm Solutions, Maximum-Margin Solutions, Implicit Regularization in Deep Networks
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Introduction to Time Series Forecasting
Intermediate
Acquired skills: Time Series Analysis, ARIMA Modeling, Forecast Evaluation Metrics, Advanced ARIMA Techniques
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Knowledge Graphs and Embeddings
Intermediate
Acquired skills: Knowledge Graph Fundamentals, Graph Representation in Python, Knowledge Graph Embedding Models, Triple Scoring Functions, Link Prediction, Reasoning over Knowledge Graphs
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Loss Functions in Machine Learning
Intermediate
Acquired skills: Mathematical Foundations of Loss Functions, Risk Minimization Theory, Regression Loss Analysis, Classification Loss Analysis, Information-Theoretic Losses, Loss Function Selection and Comparison
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MLOps Foundations
Beginner
Acquired skills: MLOps Fundamentals, Experiment Tracking with MLflow, Model Deployment with FastAPI and Docker, Pipeline Automation with Airflow, Model Monitoring and CI/CD
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Machine Learning for Time Series Forecasting
Intermediate
Acquired skills: Time Series Windowing, Feature Engineering for TS, Tree-Based Forecasting, Gradient Boosting for TS, Temporal Validation, Forecasting Strategies, Model Evaluation and Diagnostics
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Machine Learning Courses: Key Info and Questions
1. | Introduction to Machine Learning with Python | ||
2. | Linear Regression with Python | ||
3. | Classification with Python | ||
4. | Cluster Analysis with Python | ||
5. | Introduction to Reinforcement Learning with Python |





