Learn Machine Learning concepts to build AI-powered applications.
Covers the basics of machine learning, its types, and real-world applications.
Explains supervised learning techniques, algorithms, and use cases.
Covers unsupervised learning methods, clustering, and dimensionality reduction techniques.
Explores reinforcement learning concepts, rewards, and policies.
Covers popular machine learning algorithms and their applications.
Explains how to clean and preprocess data for machine learning models.
Covers techniques for evaluating and validating machine learning models.
Covers artificial neural networks, deep learning concepts, and architectures.
Explores the basics of NLP, tokenization, sentiment analysis, and text classification.
Explains the core concepts of computer vision and image analysis.
Covers time series analysis, forecasting models, and evaluation techniques.
Explains how to deploy machine learning models for production.
Explains model interpretability, explainable AI (XAI), and fairness in ML.
Explores advanced ML topics such as ensemble learning and transfer learning.