Data Science Courses
course
Principal Component Analysis in Python
Intermediate
Acquired skills: Dimensionality reduction , Principal component analysis (PCA) , Covariance and eigen decomposition
course
Transformers for Natural Language Processing
Intermediate
Acquired skills: Transformer Architecture, Self-Attention Mechanism, Positional Encoding, Multi-Head Attention, NLP with Transformers, Model Interpretation, Python Implementation of Transformers
course
Zero-Shot and Few-Shot Generalization
Advanced
1 STUDYING NOW
Acquired skills: Theoretical Foundations of Zero-Shot Generalization, Latent Space Reasoning, In-Context Learning Theory, Prompt-Based Generalization, Limits of LLM Generalization
course
Active Learning with Python
Intermediate
1 STUDYING NOW
Acquired skills: Active Learning Fundamentals, Label Efficiency Techniques, Sampling Strategies in ML, Uncertainty-Based Querying, Committee-Based Querying, Density-Weighted Sampling, scikit-learn Active Learning Implementation, Learning Curve Analysis
course
Deep Generative Models with Python
Advanced
Acquired skills: Generative AI , VAEs , GANs , Transformers , Diffusion Models , Evaluation Metrics for Generative AI
course
Evaluation Under Distribution Shift
Advanced
Acquired skills: Evaluation Under Distribution Shift, Robust Model Assessment, Stress Testing ML Models, Offline vs Online Evaluation Reasoning
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
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
Introduction to Reinforcement Learning with Python
Advanced
1 STUDYING NOW
Acquired skills: Reinforcement Learning Foundations, Multi-Armed Bandit Algorithms, Dynamic Programming Methods, Monte Carlo Techniques, Temporal-Difference Learning, Gymnasium Basics
course
Linear Algebra and Calculus Foundations
Beginner
Acquired skills: Vector operations and norms , Matrix multiplication and transposition , Solving linear systems , Determinants and matrix rank , Eigenvalues and eigenvectors , Partial derivatives and gradients , Directional derivatives , Multivariate chain rule , Jacobian matrices , Taylor expansions , Multiple integrals
course
Mathematical Foundations of Neural Networks
Advanced
Acquired skills: Neural Network Theory, Linear Algebra for Deep Learning, Activation Function Analysis, Approximation Theory, Expressivity of Neural Networks
course
Neural Networks Compression Theory
Advanced
Acquired skills: Neural Network Compression Theory, Information Bottleneck and MDL, Quantization and Pruning Mathematics, Knowledge Distillation Theory, Entropy and Rate–Distortion Analysis, Compression Trade-off Reasoning
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










Data Science Courses: Key Info and Questions
1. | Introduction to Neural Networks with Python | ||
2. | Introduction to Machine Learning with Python | ||
3. | Introduction to NLP with Python | ||
4. | Introduction to TensorFlow | ||
5. | Linear Regression with Python |




