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timelapse #21 (12 hrs): - leetcode practice for xAI coding test - updated mnist-cuda (find repo in pinned) by adding a new CUDA training script w/ an extra hidden layer and a feature to show generalization - notes on LLM training datasets, architectures, training config, etc

216,069 次观看 • 1 年前 •via X (Twitter)

10 条评论

calibur 🜲 的头像
calibur 🜲1 年前

The grind is so real. Congrats on your training

Maximilian Schilling 的头像
Maximilian Schilling1 年前

75k views is 5h is nuts! Awesome! You are the Timelapse grand master 😂

Elliot Arledge 的头像
Elliot Arledge1 年前

you inspire me Max

λux 的头像
λux1 年前

xAI LFG 🔥

Frieda Huang 的头像
Frieda Huang1 年前

Nice. How much leetcode prep did you do?

sλrthak 的头像
sλrthak1 年前

xAI coding test? enlighten me

Raen AI 的头像
Raen AI1 年前

Locked in

Elliot Arledge 的头像
Elliot Arledge1 年前

yessir

Nothing is something 的头像
Nothing is something1 年前

We're back with timelapses.... LFG!!!!

Lucas Lain 的头像
Lucas Lain1 年前

is there a way where I can peak a classic interview for these positions?

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1,149,281 次观看 • 1 年前