JavaScript is required to use this site. Please enable JavaScript in your browser settings.

HAI: Interaction between HPC, AI, and Research Data

Title: HAI: Interaction between HPC, AI, and Research Data

Project duration: 24 months, start: Q4-2024

Research Area: Architectures / Scalability / Security

Logo. NHR. Nationales Hochleistungsrechnen.

Supported by the strategy fund of the NHR-Verein e.V.

This project aims to contribute strategies and tools for efficient and collaborative development as well as high computational efficiency with three focus points:

  1. data processing pipelines with LLM-automated data engineering for rapid development;
  2. efficient use of HPC resources for scalable model training; and
  3. collaborative code development and execution, paired with FAIR data management practices.

Learn more about HAI on the official project website.

Problem

Data analytics and AI pipelines place high demands on software development and computational resources.

Outlook

HAI will align to use cases of NHR users and increase their productivity and competences. It will contribute strategies for increased efficiency and usability of HPC resources by providing tools, tutorials, and documentation. Software will be provided open source and can also be used by other computing centers.

Team

Lead

  • Dr.  Matthias Lieber

Team Members

  • Prof. C.B. (TUDa)
  • Dr. Charlotte Debus (NHR@KIT)
  • Dr. Siavash Ghiasvand (ScaDS.AI Dresden/Leipzig)
  • Prof. Harald Koestler NHR@FAU
  • Jaison Lewis (NHR@Göttingen)
  • Prof. Sarah Neuwirth (NHR@SW)
  • Lincoln Sherpa (NHR@TUD)
  • Dr. Christian Terboven (NHR4CES@RWTH)

Partners

funded by:
Gefördert vom Bundesministerium für Bildung und Forschung.
Gefördert vom Freistaat Sachsen.