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krawfy

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Show HN: PromptTools – open-source tools for evaluating LLMs and vector DBs

github.com
211 points·by krawfy·3 tahun yang lalu·24 comments

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krawfy
·2 tahun yang lalu·discuss
How is this different from other solutions like Open Interpreter?
krawfy
·3 tahun yang lalu·discuss
Good catch! We're looking to add function calling support very soon, and have an open issue for it on our GitHub. If you want to raise a PR and add it, we'll help you land it and get it merged
krawfy
·3 tahun yang lalu·discuss
Thanks Neel! We totally agree that automated evals will become an essential part of production LLM systems.
krawfy
·3 tahun yang lalu·discuss
Awesome! Let us know if there's anything from that tool that you think we should add to PromptTools
krawfy
·3 tahun yang lalu·discuss
This is really cool! When we were trying to launch the GSPMD feature for PyTorch/XLA at Google, one of our biggest bottlenecks was network overhead, but we didn't really have any robust tools to dig into it and perform root cause analysis. I'm loving the tools I see come out of Trainy.
krawfy
·3 tahun yang lalu·discuss
We've actually been in contact with the qdrant team about adding it to our roadmap! Andre (CEO) was asking for an integration. If you want to work on the PR, we'd be happy to work with you and get that merged in
krawfy
·3 tahun yang lalu·discuss
Great question, chainforge looks interesting!

We offer auto-evals as one tool in the toolbox. We also consider structured output validations, semantic similarity to an expected result, and manual feedback gathering. If anything, I've seen that people are more skeptical of LLM auto-eval because of the inherent circularity, rather than over-trusting it.

Do you have any suggestions for other evaluation methods we should add? We just got started in July and we're eager to incorporate feedback and keep building.
krawfy
·3 tahun yang lalu·discuss
Glad you think so, we agree! If you end up trying it out, we'd love to hear what you think, and what other features you'd like to see.
krawfy
·3 tahun yang lalu·discuss
For now, we just aggregate those across the models / prompts / templates you're evaluating so that you can get an aggregate score. You can export to CSV, JSON, MongoDB, or Markdown files, and we're working on more persistence features so that you can get a history of which models / prompts / templates you gave the best scores to, and keep track of your manual evaluations over time.