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    ML MOC

    Stanford: 3 separate courses.

    • AI: Reflex | States | Variables | Logic

    • ML: Supervised | Unsupervised | Deep | Tips

    • DL: CNN | RNN | Tips

    • Refreshers: algebra-calculus |probabilities-statistics

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