Data Science Courses
course
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
course
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
course
Mathematics for Data Science with Python
Beginner
Acquired skills: Functions & Sets, Series Analysis , Limits & Derivatives , Integrals , Gradient Descent , Vectors & Matrices , Linear Transformations , Matrix Decomposition , Probability Rules , Bayes' Theorem, Statistical Measures , Probability Distributions
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
Neural Network Attention Mechanisms
Advanced
Acquired skills: Attention Mechanisms Theory, Self-Attention Intuition, Multi-Head Attention Concepts, Transformer Architecture Understanding, Mathematical Foundations of Attention
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
course
Optimization Methods in Machine Learning in Python
Beginner
Acquired skills: Mathematical Optimization, Gradient Descent, Convex Analysis, Stochastic Optimization, Momentum Methods, Adaptive Algorithms, Convergence Theory
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
Parameter-Efficient Fine-Tuning
Advanced
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Acquired skills: PEFT Theory, Low-Rank Matrix Intuition, Trade-off Analysis in Model Design, Optimization Constraints in Fine-Tuning, PEFT Deployment Reasoning
course
Principal Component Analysis in Python
Intermediate
Acquired skills: Dimensionality reduction , Principal component analysis (PCA) , Covariance and eigen decomposition
course
Prompt Engineering Basics
Beginner
Acquired skills: Prompt Engineering Fundamentals , Role and Context Prompting , Few-Shot Prompting , Chain-of-Thought Prompting , Structured Output Design , Prompt Refinement , Prompt Evaluation
course
RAG Theory Essentials
Intermediate
Acquired skills: Retrieval-Augmented Generation Fundamentals, Semantic Retrieval Concepts, Document Chunking and Indexing, Vector Search Theory, RAG Pipeline Architecture, Knowledge Integration in LLMs, RAG Evaluation Metrics, Failure Analysis in RAG, RAG System Design Patterns
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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 |





