![]() |
Machine Learning God Roadmap
Month 1-2: Fundamentals
Week 1-2: Introduction to Machine Learning and Python Learn the basics of Python programming. Understand fundamental concepts in machine learning. Week 3-4: Linear Algebra and Statistics Brush up on linear algebra and statistics, which are crucial for understanding machine learning algorithms. Month 3-4: Supervised Learning Week 1-2: Regression Study linear and non-linear regression techniques. Week 3-4: Classification Explore binary and multi-class classification methods. Month 5-6: Unsupervised Learning Week 1-2: Clustering Learn about K-Means, hierarchical clustering, and DBSCAN. Week 3-4: Dimensionality Reduction Study techniques like PCA and t-SNE. Month 7-8: Deep Learning Week 1-2: Neural Networks Understand the basics of feedforward neural networks. Week 3-4: Convolutional Neural Networks (CNNs) Dive into image processing and CNNs. Month 9-10: Deep Learning Continued Week 1-2: Recurrent Neural Networks (RNNs) Explore sequential data and RNNs. Week 3-4: GANs and Transfer Learning Study Generative Adversarial Networks and transfer learning with pre-trained models. Month 11-12: Specialized Topics Week 1-2: Natural Language Processing (NLP) Delve into NLP, including text classification, sentiment analysis, and language models. Week 3-4: Reinforcement Learning Understand the basics of reinforcement learning and Q-learning. |
All times are GMT -7. The time now is 06:11 AM. |
Powered by vBulletin Copyright © 2020 vBulletin Solutions, Inc.