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andriym

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投稿

Real-time open-domain image classification on your MacBook with Nomic Embed

huggingface.co
1 ポイント·投稿者 andriym·2 年前·0 コメント

Locally run a ChatGPT-style LLM Trained from 800k GPT-3.5-Turbo Generations

twitter.com
31 ポイント·投稿者 andriym·3 年前·8 コメント

Building a Semantic Search Powered App in Ten Minutes

github.com
2 ポイント·投稿者 andriym·3 年前·1 コメント

Anthropic's AI Safety Dataset Contains Racism and Political Bias

andriymulyar.com
2 ポイント·投稿者 andriym·3 年前·1 コメント

Contextually Explore and Search over 6M AI Generated Images

twitter.com
1 ポイント·投稿者 andriym·4 年前·0 コメント

コメント

andriym
·昨年·議論
Hey Elliot,

Andriy, co-founder at Nomic here! Congrats on Embed v4 - the more embeddings the merrier!

Embed v1.5 is a 1.5 year old model!

You should check out our latest comparable open-weights, multimodal embedding model that's designed for text, PDFs and images! I can't directly say anything about relative performance to Embed v4 as you guys didn't publish evals on the Vidore-V2 open benchmark!

https://www.nomic.ai/blog/posts/nomic-embed-multimodal
andriym
·2 年前·議論
keep 'em coming!
andriym
·2 年前·議論
Nomic | Onsite NYC | Fulltime

https://nomic.ai/careers

- VP Sales & Partnerships

- Customer Success Engineer

- Developer Advocate

- Front End Engineer

Join us and help build the future of how people work with massive amounts of unstructured information.

What do you get to do?

- Help ship billions of embeddings daily to web browsers around the world

- Work closely with a small team of ex-PhD's; professors; world experts in design, web and distributed systems engineering.

- Listen as H100s go brrr training foundational embedding models

- Solve data problems faced by real customers building AI systems
andriym
·2 年前·議論
here is a data map of the descriptions, pretty cool: https://atlas.nomic.ai/data/andriy/openai-custom-gpt-data-ma...
andriym
·3 年前·議論
rip
andriym
·3 年前·議論
yeah, gonna need a few more M's of data work for that unfortunately.
andriym
·3 年前·議論
Walkthrough on how to build a semantic search powered