TIB AIssistant: a Platform for AI-Supported Research Across Research Life Cycles
- URL: http://arxiv.org/abs/2512.16442v1
- Date: Thu, 18 Dec 2025 11:54:38 GMT
- Title: TIB AIssistant: a Platform for AI-Supported Research Across Research Life Cycles
- Authors: Allard Oelen, Sören Auer,
- Abstract summary: We demonstrate the TIB AIssistant, an AI-supported research platform providing support throughout the research life cycle.<n>The AIssistant consists of a collection of assistants, each responsible for a specific research task.<n>We demonstrate the AIssistant's main functionalities by means of a sequential walk-through of assistants, interacting with each other to generate sections for a draft research paper.
- Score: 5.022062933654906
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The rapidly growing popularity of adopting Artificial Intelligence (AI), and specifically Large Language Models (LLMs), is having a widespread impact throughout society, including the academic domain. AI-supported research has the potential to support researchers with tasks across the entire research life cycle. In this work, we demonstrate the TIB AIssistant, an AI-supported research platform providing support throughout the research life cycle. The AIssistant consists of a collection of assistants, each responsible for a specific research task. In addition, tools are provided to give access to external scholarly services. Generated data is stored in the assets and can be exported as an RO-Crate bundle to provide transparency and enhance reproducibility of the research project. We demonstrate the AIssistant's main functionalities by means of a sequential walk-through of assistants, interacting with each other to generate sections for a draft research paper. In the end, with the AIssistant, we lay the foundation for a larger agenda of providing a community-maintained platform for AI-supported research.
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