80,000 Hours Podcast cover image

#47 - Catherine Olsson & Daniel Ziegler on the fast path into high-impact ML engineering roles

80,000 Hours Podcast

CHAPTER

Using Machine Learning to Scale Up Deeper Applications

I think the's approximately four different buckets of skill that are to do work in m l or deep learning. One is ordinary soft for engineering. There's machine learning implementation. And then there's m l research direction, so choosing what next problems are likely to be relevant and good approaches. If you're trying to just like, scale up deep r l agents to run faster and more parallel, you probably don't need any theory at all. Whereas ifyou're trying to prove some impossibility theorem about adversarial example s, you're going to eed a lot more theory. I think those four categories are going to be a better guide than any particular title because any problem has a blend of

00:00
Transcript
Play full episode

Remember Everything You Learn from Podcasts

Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.
App store bannerPlay store banner