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