🚀Excited to share 𝗦𝗔𝗚𝗔!
Most AI for science asks: “How do we optimize better?”
We asked a different question: “How do we know we're optimizing for the right thing?”
Scientists don't arrive at perfect objectives — they discover them. SAGA automates exactly that: the messy, iterative process of figuring out what to optimize before how.
The design philosophy: a bi-level architecture that mirrors how scientists actually work:
🔁Outer loop: LLM agents analyze results, question current objectives, and evolve better ones
⚙️Inner loop: search hard under the objectives the outer loop proposes
SAGA is a generalist scientific discovery framework — the same system, applied across design of antibiotics, nanobodies, DNA sequences, inorganic materials, and chemical processes, with wet-lab validation🔬⚗️.
Check this out ⬇️
❓How can we build AI agents that do what scientists actually do? Is scientific discovery merely a search problem?
🚀 Meet SAGA: Scientific Autonomous Goal-evolving Agents. Five discovery tasks across chemistry, biology & materials science, with wet-lab validation.