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Hauptverfasser: Grosskopf, Michael, Debardeleben, Nathan, Bent, Russell, Somasundaram, Rahul, Michaud, Isaac, Lui, Arthur, Wadell, Alexius, Graham, Warren D., Wimmer, Golo A, Shivakumar, Sachin, Gallart, Joan Vendrell, Nagarajan, Harsha, Lawrence, Earl
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2506.22653
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author Grosskopf, Michael
Debardeleben, Nathan
Bent, Russell
Somasundaram, Rahul
Michaud, Isaac
Lui, Arthur
Wadell, Alexius
Graham, Warren D.
Wimmer, Golo A
Shivakumar, Sachin
Gallart, Joan Vendrell
Nagarajan, Harsha
Lawrence, Earl
author_facet Grosskopf, Michael
Debardeleben, Nathan
Bent, Russell
Somasundaram, Rahul
Michaud, Isaac
Lui, Arthur
Wadell, Alexius
Graham, Warren D.
Wimmer, Golo A
Shivakumar, Sachin
Gallart, Joan Vendrell
Nagarajan, Harsha
Lawrence, Earl
contents Large language models (LLMs) have moved far beyond their initial form as simple chatbots, now carrying out complex reasoning, planning, writing, coding, and research tasks. These skills overlap significantly with those that human scientists use day-to-day to solve complex problems that drive the cutting edge of research. Using LLMs in \quotes{agentic} AI has the potential to revolutionize modern science and remove bottlenecks to progress. In this work, we present URSA, a scientific agent ecosystem for accelerating research tasks. URSA consists of a set of modular agents and tools, including coupling to advanced physics simulation codes, that can be combined to address scientific problems of varied complexity and impact. This work highlights the architecture of URSA, as well as examples that highlight the potential of the system.
format Preprint
id arxiv_https___arxiv_org_abs_2506_22653
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle URSA: The Universal Research and Scientific Agent
Grosskopf, Michael
Debardeleben, Nathan
Bent, Russell
Somasundaram, Rahul
Michaud, Isaac
Lui, Arthur
Wadell, Alexius
Graham, Warren D.
Wimmer, Golo A
Shivakumar, Sachin
Gallart, Joan Vendrell
Nagarajan, Harsha
Lawrence, Earl
Artificial Intelligence
Large language models (LLMs) have moved far beyond their initial form as simple chatbots, now carrying out complex reasoning, planning, writing, coding, and research tasks. These skills overlap significantly with those that human scientists use day-to-day to solve complex problems that drive the cutting edge of research. Using LLMs in \quotes{agentic} AI has the potential to revolutionize modern science and remove bottlenecks to progress. In this work, we present URSA, a scientific agent ecosystem for accelerating research tasks. URSA consists of a set of modular agents and tools, including coupling to advanced physics simulation codes, that can be combined to address scientific problems of varied complexity and impact. This work highlights the architecture of URSA, as well as examples that highlight the potential of the system.
title URSA: The Universal Research and Scientific Agent
topic Artificial Intelligence
url https://arxiv.org/abs/2506.22653