Towards AI-Supported Research: a Vision of the TIB AIssistant
S\"oren Auer, Allard Oelen, Mohamad Yaser Jaradeh, Mutahira Khalid, Farhana Keya, Sasi Kiran Gaddipati, Jennifer D'Souza, Lorenz Schl\"uter, Amirreza Alasti, Gollam Rabby, Azanzi Jiomekong, Oliver Karras

TL;DR
The paper envisions the TIB AIssistant, a versatile AI-supported platform designed to enhance research workflows across disciplines by integrating modular AI tools and collaborative features.
Contribution
It introduces a novel, domain-agnostic platform with modular components to support various research tasks, demonstrating its feasibility through an early prototype.
Findings
Prototype shows potential for supporting diverse research activities
Modular design enables flexible integration of AI tools
Platform facilitates collaboration across research stages
Abstract
The rapid advancements in Generative AI and Large Language Models promise to transform the way research is conducted, potentially offering unprecedented opportunities to augment scholarly workflows. However, effectively integrating AI into research remains a challenge due to varying domain requirements, limited AI literacy, the complexity of coordinating tools and agents, and the unclear accuracy of Generative AI in research. We present the vision of the TIB AIssistant, a domain-agnostic human-machine collaborative platform designed to support researchers across disciplines in scientific discovery, with AI assistants supporting tasks across the research life cycle. The platform offers modular components - including prompt and tool libraries, a shared data store, and a flexible orchestration framework - that collectively facilitate ideation, literature analysis, methodology development,…
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Taxonomy
TopicsScientific Computing and Data Management · Machine Learning in Materials Science · Artificial Intelligence in Healthcare and Education
