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this is how machine learning actually works (gradient descent with bad starting parameters)

38,694 views • 1 year ago •via X (Twitter)

10 Comments

luffy's profile picture
luffy1 year ago

sgd be like

Rainmaker's profile picture
Rainmaker2 years ago

Can Machine Learning beat the market? Check out this post on my free Substack where I share code and commentary for an XGBoost model and a Random Forest model that both deliver powerful performances.

Kandrej Arpathy's profile picture
Kandrej Arpathy1 year ago

that’s an oversimplification that is borderline fake news. you can make much memes that are both educational and funny

Salomon Metre's profile picture
Salomon Metre1 year ago

😅😅

roro's profile picture
roro1 year ago

GAN training

Nic B's profile picture
Nic B1 year ago

🤣

Jebin Einstein's profile picture
Jebin Einstein1 year ago

Just now learning “kaiming” and my timeline showing me post related to it 🤯🤯🤯🤯

Michael's profile picture
Michael1 year ago

Very accurate😀

Pehdrew's profile picture
Pehdrew1 year ago

0:25 don't elaborate! 😎

Yacine Mahdid's profile picture
Yacine Mahdid1 year ago

Reinforcement learning in the 40th step

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ℏεsam

117,570 views • 1 year ago