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tifa2up

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Gemini 2 Is the Top Model for Embeddings

agentset.ai
5 points·by tifa2up·4 miesiące temu·0 comments

The Next Coding Interface Is a Canvas

blog.abdellatif.io
2 points·by tifa2up·4 miesiące temu·0 comments

Hackable Software

blog.abdellatif.io
1 points·by tifa2up·5 miesięcy temu·0 comments

Do things like Oh My OpenCode work?

github.com
1 points·by tifa2up·5 miesięcy temu·0 comments

Show HN: EasyClaw – Seamless Installation for OpenClaw

easyclaw.com
3 points·by tifa2up·5 miesięcy temu·3 comments

Semantic Thesaurus

thesaurus.abdellatif.io
2 points·by tifa2up·7 miesięcy temu·0 comments

Vector DB Comparison

agentset.ai
1 points·by tifa2up·7 miesięcy temu·0 comments

Always Do a Work Trial

blog.abdellatif.io
2 points·by tifa2up·7 miesięcy temu·0 comments

Opus 4.5 is the best model for RAG

agentset.ai
2 points·by tifa2up·8 miesięcy temu·0 comments

Gemini 3 vs. GPT 5.1 for RAG

agentset.ai
4 points·by tifa2up·8 miesięcy temu·0 comments

Embedding Model Leaderboard

agentset.ai
1 points·by tifa2up·8 miesięcy temu·0 comments

Best Reranker for RAG: We tested the top models

agentset.ai
1 points·by tifa2up·8 miesięcy temu·0 comments

Reranker Leaderboard

agentset.ai
1 points·by tifa2up·8 miesięcy temu·0 comments

Hacker News Front Page: what 26 hours of traffic got us

blog.abdellatif.io
7 points·by tifa2up·9 miesięcy temu·2 comments

Production RAG: what I learned from processing 5M+ documents

blog.abdellatif.io
551 points·by tifa2up·9 miesięcy temu·114 comments

Show HN: Agentset – Open-source RAG with vector DB, embeddings, and API built-in

github.com
6 points·by tifa2up·9 miesięcy temu·0 comments

comments

tifa2up
·4 miesiące temu·discuss
Interesting project. Curious why Electrobun over Tauri here? Tauri has a much larger ecosystem and rust based for improved performance.
tifa2up
·5 miesięcy temu·discuss
https://agentset.ai/

Open-source RAG infrastructure.Every team I talk to has the same experience: RAG works in the demo, breaks in production.

We handle ingestion through retrieval with optimizations baked in. 97.9% on HotpotQA vs 88.8% for standard RAG. Model-agnostic, 22+ file types, built-in citations, MCP server. MIT licensed.

https://github.com/agentset-ai/agentset
tifa2up
·6 miesięcy temu·discuss
https://abdellatif.io
tifa2up
·7 miesięcy temu·discuss
https://agentset.ai/leaderboard/embeddings good rundown of other open-source embedding models
tifa2up
·8 miesięcy temu·discuss
Right now it's single shot, we're looking into building an "Agentic Retrieval" based on Claude ADK. tbd how it'll work
tifa2up
·8 miesięcy temu·discuss
I'm building https://github.com/agentset-ai/agentset, RAG as a service that works quite well out of the box.

We achieve this performance by baking in the best practices before any tweaking
tifa2up
·8 miesięcy temu·discuss
Think it varies by use case. It didn't do well with long context
tifa2up
·8 miesięcy temu·discuss
For large context (up to 100K tokens in some cases). We found that GPT-5: a) has worse instruction following; doesn't follow the system prompt b) produces very long answers which resulted in a bad ux c) has 125K context window so extreme cases resulted in an error
tifa2up
·8 miesięcy temu·discuss
We tried GPT-5 for a RAG use case, and found that it performs worse than 4.1. We reverted and didn't look back.
tifa2up
·9 miesięcy temu·discuss
Don't solve it on the STT level. Get the raw transcription from Gemini then pass the output to an LLM to fix company names and other modifications.

Happy to share more details if helpful.
tifa2up
·9 miesięcy temu·discuss
Yes, we got 187 self-serve users (all on the free plan). And are in talks with an enterprise now.
tifa2up
·9 miesięcy temu·discuss
You typically add a lot of metadata with each chunk text to be able to filter it, and do to include in the citations. Injecting metadata means that you see what metadata adds helpful context to the LLM, and when you pass the results to the LLM you pass them in a format like this:

Title: ... Author: ... Text: ...

for each chunk, instead of just passing the text
tifa2up
·9 miesięcy temu·discuss
Quite a decent hit. Local models don't perform very well in long contexts. We're planning to support a local-only offline set-up for people to host w/o additional dependencies
tifa2up
·9 miesięcy temu·discuss
OP. The way you improve it is move away from single shot semantic/keyword search and have an agentic system that can evaluate results and do follow-up queries.
tifa2up
·9 miesięcy temu·discuss
OP. We migrated to GPT-5 when it came out but found that it performs worse than 4.1 when you pass lots of context (up to 100K tokens in some cases). We found that it:

a) has worse instruction following; doesn't follow the system prompt b) produces very long answers which resulted in a bad ux c) has 125K context window so extreme cases resulted in an error

Again, these were only observed in RAG when you pass lots of chunks, GPT-5 is probably a better model for other taks.
tifa2up
·9 miesięcy temu·discuss
text similarity finds items that closely match. Reranking my select items that are less semantically "similar" but are more relevant to the query.
tifa2up
·9 miesięcy temu·discuss
OP. Reranking is a specialized LLM that takes the user query, and a list of candidate results, then re-sets the order based on which ones are more relevant to the query.

Here's sample code: https://docs.cohere.com/reference/rerank
tifa2up
·9 miesięcy temu·discuss
OP here. We've been working on agentset.ai full-time for 2 months. The product now gets you something working quite well out of the box. Better than most people with no experience in RAG (I'd say so with confidence).

Ingestion + Agentic Search are two areas that we're focused on in the short term.
tifa2up
·9 miesięcy temu·discuss
OP here. rerankers are finetuned small models, they're cheap and very fast compared to an additional GPT-5 call.
tifa2up
·9 miesięcy temu·discuss
Searched for 'hi' and it took 166s to return a response using this model: https://pasteboard.co/oB4VqVC5FGkl.png

Claude Code took 0.1s, Cursor CLI 19s