My personal path to learning machine learning is mostly free resources I've found on the internet, with a broad domain and interests. I suggest learning by order! (All free courses from my surfing web skills)
- python programming (DONE!)
- Python (I've already took FCC so, I'm DONE!)
- Study ML Microsoft
- Discrete Math
- Python projects and certifications, kaggle (free)
- D2L.AI (Unofficial Indonesian Translation) (STILL ON PROGRESS!!)
- Fast.ai Course (All algorithms implemented in PyTorch)
- Full stack deep Learning, 2022 (For full stack, recommendeded by an Expert)
- Khan Academy, Algebra1, Alg 2, Alg 3, Alg-Trig, Trig, Precalculus
- Essence of calculus, 3blue1brown
- Essence of Linear Algebra, 3blue1brown
- MIT OpenLearningLib, Cal 1, 2, 3,Lin-Alg, Matrix Method and Data Analysis, ML
- Multi Variable Calculus
- Linear Algebra
- Convex Optimization
- Math for Deep Learning
- Linear Algebra, Fast.Ai
- Another Linear Algebra
- Bayesian for Hackers
- Deep Learning Introduction
- Deep learning 1
- Deep learning 2
- Taught by Yan Lecun
- Machine Learning With Graphs
- Convolutional Neural Networks
- Reinforcement Learning