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iceman_w

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Show HN: Cricket Stats GPT

cricket.pivots.fyi
1 points·by iceman_w·last year·0 comments

Ask HN: AI Modeling Projects with fast iteration times?

1 points·by iceman_w·2 years ago·0 comments

Ask HN: What's the coolest non standard application of LLMs you've seen?

68 points·by iceman_w·3 years ago·61 comments

comments

iceman_w
·last year·discuss
RL constrains the space of possible output token sequences to what is likely to lead to the correct answer. So we are inherently making a trade-off to reduce variance. A non-RL model will have higher variance, so given enough attempts, it will come up with some correct answers that an RL model can't.
iceman_w
·last year·discuss
I always thought that the point of instruction tuning and ability to use prompts to get the model to do 0 shot tasks was that you don't have to collect tons of example data/samples. The method proposed here requires you to have tons of data. If you have that, why not just fine tune the underlying model?
iceman_w
·last year·discuss
I've also been tracking the 'path to graveyard' for the startups from the last 3 years here https://pivots.fyi/
iceman_w
·2 years ago·discuss
I've been scraping YC data week over week to track things like changes in founder, pivots in the idea, company shutting down, etc. You can check it out here https://pivots.fyi/
iceman_w
·2 years ago·discuss
Thanks! The data is collected by continuously scraping the startup's website and their YC page.
iceman_w
·2 years ago·discuss
I'm working on pivots.fyi (https://pivots.fyi/).

It tracks 1000+ startups that have been founded in the last 3 years and showcases how their product, mission, team size, founders, etc. evolve week over week. It is interesting to see how quickly early stage startups pivot.

Looking for feedback/suggestions about how I can make this more useful.