HackerTrans
TopNewTrendsCommentsPastAskShowJobs

yding

no profile record

Submissions

Show HN: Lines of Bash to automate LLM code review and fixes

github.com
2 points·by yding·3 tháng trước·1 comments

Show HN: Blackjack Basic Strategy Practice with DP Edges

twentone.vercel.app
1 points·by yding·5 tháng trước·0 comments

Libchatty: A faster ChatGPT wrapper in pure C

github.com
3 points·by yding·2 năm trước·0 comments

comments

yding
·3 tháng trước·discuss
When you evaluated the tools, what stood out between which ones were better or worse?
yding
·năm ngoái·discuss
Makes sense. I wonder if it affects the model output performance (sans quotes), as I could imagine that splitting up the model output to add the quotes could cause it to lose attention on what it was saying.
yding
·năm ngoái·discuss
Thanks Simon. I think this might solve one of the most common questions people ask me: how do I get Perplexity-like inline citations on my LLM output?

This looks like model fine tuning rather than after the fact pseudo justification. Do you agree?
yding
·2 năm trước·discuss
As someone who interned at Palm, love this so much!
yding
·2 năm trước·discuss
Depends on the language/standard library. For example in C if your library includes its own HTTP library that's probably not a plus.
yding
·2 năm trước·discuss
Congrats Taranjeet and Deshraj!

So after using Mem0 a bit for a hackathon project, I have sort of two thoughts: 1. Memory is extremely useful and almost a requirement when it comes to building next level agents and Mem0 is probably the best designed/easiest way to get there. 2. I think the interface between structured and unstructured memory still needs some thinking.

What I mean by that is when I look at the memory feature of OpenAI it's obviously completely unstructured, free form text, and that makes sense when it's a general use product.

At the same time, when I'm thinking about more vertical specific use cases up until now, there are very specific things generally that we want to remember about our customers (for example, for advertising, age range, location, etc.) However, as the use of LLMs in chatbots increases, we may want to also remember less structured details.

So the killer app here would be something that can remember and synthesize both structured and unstructured information about the user in a way that's natural for a developer.

I think the graph integration is a step in this direction but still more on the unstructured side for now. Look forward to seeing how it develops.
yding
·2 năm trước·discuss
The short answer is he works at Cohere. But longer answer is that the model probably doesn’t matter that much.
yding
·2 năm trước·discuss
Looks great! thanks for sharing your architecture choices here.
yding
·2 năm trước·discuss
Congrats on the launch!
yding
·2 năm trước·discuss
Very cool!