@nickscamara_: New discoveries are gonna come from models that can reason over the latest science The rate of scientific progress beco…

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Summary

Firecrawl released a state-of-the-art research index for AI/ML papers, claiming 18% better recall on arXivQA than competitors, designed for autonomous research agents.

New discoveries are gonna come from models that can reason over the latest science The rate of scientific progress becomes a function of how well agents can find the right research Yesterday we made Firecrawl free again and today, we are releasing SOTA research index
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New discoveries are gonna come from models that can reason over the latest science

The rate of scientific progress becomes a function of how well agents can find the right research

Yesterday we made Firecrawl free again and today, we are releasing SOTA research index

Firecrawl (@firecrawl): Introducing Firecrawl Research Index, a specialized index for agents pushing the frontier of AI/ML research.

State-of-the-art recall on arXivQA, beating the next best provider by 18% at similar cost.

Now powering autonomous R&D at @Aemon_ai, a record-breaking YC research lab.

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@dair_ai: https://x.com/dair_ai/status/2058537927823556668

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