My interests

Machine Learning classes

 

Machine Learning classes


Andrew Ng’s Machine Learning (Stanford)2017~9 weeksSupervised/unsupervised learningOctave, Scikit-learnOutdated but covers foundational algorithms (e.g., k-means, SVM).
Deep Learning Specialization (Andrew Ng)2023~5 monthsAdvanced DL architecturesTensorFlowCovers CNNs, RNNs, and modern optimizers (Adam).
DeepMind’s Technical Writing (ML Basics)2021~10 hrsWriting for AI papersLaTeX, MarkdownUseful for documenting algorithms (e.g., white papers).
Fast.ai: Practical Deep Learning2018~3 weeksHands-on ML with real datasetsPyTorchBest for quick deployment; emphasizes practicality over theory.
Google’s Machine Learning Crash Course2018~5 hrsBeginner ML workflowsTensorFlowGood for quick basics but lacks depth.
MIT’s Introduction to Deep Learning2023~4 weeksPyTorch/TensorFlow fundamentalsPyTorch, TensorFlowUpdated for modern architectures (e.g., transformers).
Neural networks by 3Blue1Brown2025


Great starter, best explanations.
Udacity’s Machine Learning Engineer Nanodegree2017~3 monthsProduction-grade ML systemsTensorFlow, TFXCovers MLOps (e.g., pipelines) but outdated for PyTorch.

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