ZeroEntropy (YC W25)
32 posts

ZeroEntropy (YC W25)
@ZeroEntropy_AI
Better, Faster Models for Search. -We're hiring!
شامل ہوئے Aralık 2024
3 فالونگ566 فالوورز
@ghita__ha @ZeroEntropy_AI @OpenAI @GeminiApp @Alibaba_Qwen @huggingface @awscloud Excited for this model, and for you @ghita__ha and Nicholas!
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ZeroEntropy (YC W25) ری ٹویٹ کیا

zembed-1 is finally here!
🔥 The world's best embedding model, by @ZeroEntropy_AI
It outperforms @OpenAI , @GeminiApp , @Alibaba_Qwen , and Voyage's latest embeddings on 100+ languages, and across verticals.
Available now via our API/SDK, @huggingface, and @awscloud Marketplace.
Full launch post in the thread for benchmarks and more about our secret sauce 👀
We're building the entire retrieval stack... and we're just getting started.
🤫 PS: We're giving out free credits to try it, just comment on the post or DM me!

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ZeroEntropy (YC W25) ری ٹویٹ کیا

live from @MIT where @ZeroEntropy_AI 's CTO is presenting our latest zElo paper and reranker model!
@npip99

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ZeroEntropy (YC W25) ری ٹویٹ کیا

shout out to @ghita__ha and the @ZeroEntropy_AI team for organizing!
San Francisco, CA 🇺🇸 English
ZeroEntropy (YC W25) ری ٹویٹ کیا

We just built a free tool to ask questions over the 2025 @NeurIPSConf research papers.
Try it out at neurips dot zeroentropy dot dev
No signup, no credit card, just the best way to learn more about this year's papers!
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ZeroEntropy (YC W25) ری ٹویٹ کیا

It’s always amazing to see small teams outperform companies with $100M+ in funding, and even more amazing when you get to be a part of it. 😅
Stoked that we were able to support @ZeroEntropy_AI on training their state of the art reranker model family!
Read here about the zerank family: tensorpool.dev/blog/zeroentro…
@ghita__ha @npip99

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@ghita__ha zerank-2 will improve any search or retrieval system!
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ZeroEntropy (YC W25) ری ٹویٹ کیا

We are very excited to release zerank-2, @ZeroEntropy_AI 's newest reranker model. 🔥
It shows major improvement on the 5 most common RAG failure modes below.
Existing rerankers consistently fail on seemingly “simple” tasks:
🔢 Comparing numbers and date: “Biggest deals closed after 04/2024.”
🗄️ Aggregation: “Top 10 objections of customer X?”
🌍 Multilingual: Major pain point, especially non-English to non-English.
🙏 Instruction-Following: “Find the *counterargument* of the claim in the transcript”
🥇 Calibrated scores: You ask "what should I cook for dinner?", and "I am allergic to nuts" scores too low for your threshold.
Many rerankers overfit public benchmarks, and don’t generalize to these real issues. zerank-2 outperforms existing rerankers considerably on all of these failure modes, in real production environments.
With zerank-2, you get:
* 15% improvement vs Cohere rerank 3.5 on Arabic/Hindi (Miraql dataset)
* +12% NDCG@10 on sorting tasks (new open-sourced eval set)
* +7% vs Gemini Flash on instruction-following (MAIR dataset)
* $0.025/1M tokens, 150ms p90 latency at 100KB
🤗 We are open-sourcing the model weights, along with new challenging eval sets on @huggingface. Our Elo-inspired training methodology is already open-source!
We're starting a series of technical deep dives to explain various failure modes zerank-2 fixes, with concrete prod examples, methodologies, and benchmarks.
First technical deep dive in the comments.
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ZeroEntropy (YC W25) ری ٹویٹ کیا

@ZeroEntropy_AI (Nicholas Pipitone, @ghita__ha) will talk about how they used RLAIF to train their SOTA rerank model:

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ZeroEntropy (YC W25) ری ٹویٹ کیا

come chat about smarter search and smarter AI
Philipp Krenn@xeraa
next week will be extra @elastic-packed in SF monday meetup: luma.com/smart-search * @ghita__ha, @ZeroEntropy_AI: search tools for efficient AI agents * jesse, @fintool: LLMs and the next generation of financial search * @joshnkeezy, @reductoai: building a vision-first RAG pipeline with reducto and elasticsearch
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ZeroEntropy (YC W25) ری ٹویٹ کیا

next week will be extra @elastic-packed in SF
monday meetup: luma.com/smart-search
* @ghita__ha, @ZeroEntropy_AI: search tools for efficient AI agents
* jesse, @fintool: LLMs and the next generation of financial search
* @joshnkeezy, @reductoai: building a vision-first RAG pipeline with reducto and elasticsearch

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ZeroEntropy (YC W25) ری ٹویٹ کیا

The #1 bottleneck for software gen going forward is search / retrieval. Whether that’s open data sources (good web search) / personal data sources, it’s the layer that will become the biggest prereq to capturing value
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ZeroEntropy (YC W25) ری ٹویٹ کیا
ZeroEntropy (YC W25) ری ٹویٹ کیا

over 200 people have already RSVPd to join us along with the teams at @mastra and @mem0ai to talk about engineering context for Agents.
RSVP: luma.com/rehr5jl2
@ZeroEntropy_AI

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Join us with @mastra (TypeScript framework for Agents), @mem0ai (the long-term Agent memory layer), and @zeroentropy_ai(fastest and most accurate rerankers) on Oct 17th for our first Context Engineering Webinar!
luma.com/rehr5jl2
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ZeroEntropy (YC W25) ری ٹویٹ کیا

most agents burn $$ reading 100 docs just to answer one question.
a set up that works is @turbopuffer (fast, cheap, high recall hybrid search) with @zeroentropy_ai (fast, cheap, high precision reranker)
tutorial + open benchmarks from the ZeroEntropy team zeroentropy.dev/articles/imple…
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ZeroEntropy (YC W25) ری ٹویٹ کیا

waking up to a team literally creating memes to show that @ZeroEntropy_AI is a "no-brainer"
we want more memes please

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