Interdisciplinary StudiesarXiv
SciAGENTS: Automating Scientific Discovery Through Multi-Agent Intelligent Graph Reasoning
A. Ghafarollahi and M. J. Buehler
Discover how SciAgents, developed by Alireza Ghafarollahi and Markus J. Buehler at MIT, harnesses the power of large-scale ontological knowledge graphs and large language models to redefine scientific discovery. This innovative system not only uncovers hidden interdisciplinary relationships but also accelerates materials development by leveraging nature's design principles.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Interdisciplinary Studies
ACCELERATING SCIENTIFIC DISCOVERY WITH GENERATIVE KNOWLEDGE EXTRACTION, GRAPH-BASED REPRESENTATION, AND MULTIMODAL INTELLIGENT GRAPH REASONING
M. J. Buehler
Computer Science
A Comprehensive Survey of Scientific Large Language Models and Their Applications in Scientific Discovery
Y. Zhang, X. Chen, et al.
Education
Impacting life expectancies of incarcerated people through dialogic scientific gatherings and dialogic scientific workshops in prisons
M. Novo-molinero, T. Morla-folch, et al.
Psychology
Automating psychological hypothesis generation with AI: when large language models meet causal graph
S. Tong, K. Mao, et al.

