Machine Learning Courses
course
Fuzzy Logic and Approximate Reasoning
Intermediate
Acquired skills: Fuzzy Sets, Degrees of Truth, Membership Functions, Fuzzy Logical Operators, t-Norms and t-Conorms, Fuzzy If–Then Rules, Approximate Reasoning, Fuzzy Inference Systems
course
Generalization Bounds
Advanced
Acquired skills: PAC Generalization Bounds, VC Dimension, Rademacher Complexity, Uniform Convergence, Interpreting Generalization Bounds
course
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
course
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
course
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
course
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
course
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
course
Model Calibration with Python
Intermediate
Acquired skills: Probabilistic Model Calibration, Reliability Diagrams, Calibration Metrics (ECE, MCE, Brier Score), Platt Scaling, Isotonic Regression, Histogram Binning, Applied Calibration Workflows
course
Outlier and Novelty Detection in Python
Intermediate
Acquired skills: Outlier Detection Fundamentals, Statistical Anomaly Detection, Isolation Forest Implementation, Local Outlier Factor Analysis, One-Class SVM for Novelty Detection, Algorithm Evaluation and Comparison
course
Probabilistic Graphical Models Essentials
Intermediate
Acquired skills: Probabilistic Graphical Models, Bayesian Networks, Markov Random Fields, Conditional Independence, PGM Inference and Learning
course
Productivity Tools for Data Scientists
Intermediate
Acquired skills: Jupyter Notebook Proficiency, Workflow Automation, Effective Documentation, Reproducible Analysis Habits
course
Reinforcement Learning from Human Feedback Theory
Advanced
Acquired skills: Formal Preference Modeling, Reward Model Theory, Optimization Dynamics in RLHF, Alignment and Generalization Risks
Embrace the fascination of Tech Skills! Our AI-assistant provides real-time feedback, personalized hints, and error explanations, empowering you to learn with confidence.
With Workspaces, you can create and share projects directly on our platform. We've prepared templates for your convenience
Take control of your career development and commence your path into mastering the latest technologies
Real-world projects elevate your portfolio, showcasing practical skills to impress potential employers










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. | Mathematics for Data Science with Python |





