In this talk @BuzzRobot guest Anil Palepu explores @Google's AI co-scientist - a multi-agent system powered by Gemini 2.0 to accelerate scientific discovery through the generation and evolution of novel research hypotheses.
Inspired by the scientific method, the system follows a “generate, debate, and evolve” approach, significantly accelerated by an asynchronous task execution framework that allows for efficient test-time compute scaling.
Although the system has broad applications, early development and testing have focused on key biomedical areas like drug repurposing, novel target discovery, and uncovering mechanisms behind bacterial evolution and antimicrobial resistance.
Timestamps:
0:00 Introduction
1:32 AI co-scientist system design
3:08 Three biomedical domains: drug repurposing for AML, epigenetic targets for liver fibrosis, and gene transfer mechanisms in antimicrobial resistance
5:05 Natural language interface of the AI co-scientist system
8:47 Asynchronous task framework
10:22 Specialized agents: generation, reflection, ranking, proximity, meta-review, and evolution agents
14:37 Context memory
16:59 Applications: drug repurposing
19:26 Novel target discovery
20:07 Antimicrobial resistance
20:52 Conclusion and key takeaways
#ai #googleai #gemini #aicoscientist #googleaicoscientist #biomedicalai #drugdiscovery #scientificresearch #aiinmedicine #airesearch #googledeepmind #generativeai #aiandscience #artificialintelligence #ai #largelanguagemodels #llms #aireasoning #machinelearning #reinforcementlearning #airesearch #techtalk #techtalks #aitalks #aitalk #science #superintelligence
Social Links:
Newsletter: https://buzzrobot.substack.com/
X: https://x.com/sopharicks
Slack: https://join.slack.com/t/buzzrobot/shared_invite/zt-2s067rv7n-guPIMGe62rbp9ncxdnOUfQ