Training Seminar
GenAI on the HPCC
Michigan State University’s Institute for Cyber-Enabled Research (ICER), in partnership with the Institute for Biodiversity, Ecology, Evolution and Macrosystems (IBEEM), are excited to announce the Spring-2026 GenAI on the High-Performance Computing Center (HPCC) seminar. This non-credit, two-part series is designed to provide researchers from a wide variety of disciplines with a hands-on introduction to tools for integrating GenAI into research computing pipelines on ICER’s HPCC.* This is a hybrid seminar with both an in-person and virtual, synchronous option.
Spring 2026 GenAI on the HPCC Seminar Schedule
REGISTER HERE
*Participants need an active HPCC account to access the HPCC. If you do not have an existing account, please see our documentation on Obtaining an HPCC Account.
The prerequisites for meaningful participation in the hands-on exercises are listed below.
Active ICER HPCC account
Basic understanding of the HPCC resource environment and the SLURM scheduler (HPCC Foundations Webinar Series)
Basic competency with Python and GNU/Linux Operating Systems (necessary code will be provided)
Basic understanding of fundamental machine learning concepts e.g., regression, classification, training, testing/inference, supervised vs unsupervised learning
Part 1: GenAI overview and getting started with Ollama
- Wednesday, March 11th, 2:00 pm - 5:00 pm
Learning objectives:
Understand core concepts of Generative AI (GenAI) and Large Language Models (LLMs)
Understand differences between cloud-hosted and locally run LLM workflows
Understand basics of running and managing LLMs with Ollama
Use Ollama with a Python environment for simple programmatic inference
Recognize resource considerations (memory, CPU, GPU, etc.) when running LLMs locally
Identify common use-cases and how to integrate local GenAI models into workflows (e.g., domain specific documentation chatbot, literature review, entity-relation extraction)
Part 2: Fine-tuning and RAG systems
Wednesday, March 18th, 2:00 pm - 5:00 pm
Learning objectives:
Construct a minimal RAG system with use-case data
Understand concepts for assessing model performance with quantitative and qualitative criteria
Understand resource requirements for fine-tuning and RAG workflows
Manage model artifacts, embeddings, and checkpoints
Understand fundamental concepts of agentic GenAI systems
Questions?
For questions on seminar format and/or content, please contact ICER Research Specialist Julian Venegas at venegas5@msu.edu
For registration and/or HPCC account issues, please contact ICER Training and Education Coordinator Mahmoud Parvizi at parvizim@msu.edu
