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  1. Get Involved
  2. Upcoming Events
  3. Scientific Modeling out of Distribution ML Challenge Hackathon

Event - Workshop

Scientific Modeling out of Distribution ML Challenge Hackathon

Jan 27 2026 | 8:30am - 5:00pm MST

Hosted By:

NEON, ESIIL, Imageomics Institute, CyVerse, iHARP

Join us for an in-person hackathon at the University of Colorado Boulder on Tuesday, Jan 27, to learn how to use AI/ML tools on the CyVerse platform to predict biological, ecological, and environmental data. The event will provide an introduction to the NSF Harnessing the Data Revolution (HDR) Machine Learning Challenge, including a venue to form a team and get started with a submission to the challenge.

The event will include presentations on each of the three benchmarks used for this year's challenge, an overview of the Codabench platform, an overview of CyVerse compute resources that will be available to participants, and a code-along session to demonstrate how to create a submission for the challenge. All the remaining time will be dedicated to team formation and trying out the challenge, all with organizers available to answer questions.

Note on experience: The hackathon event is intended to bring together participants with varied areas of expertise (e.g., computer science, environmental science, biology, etc.) for an interdisciplinary problem solving challenge. Some coding experience (e.g., Python, R, etc.) is recommended, but this event is open to participants from any career stage (e.g., students, postdocs, researchers, faculty, private sector scientists and developers, etc.) and background. 

Location: University of Colorado Boulder, SEEC Building, VizStudio Room S372, 4001 Discovery Dr., Boulder, CO 80303

Seats are limited so Register now!

There are no registration costs for this event

About the Harnessing the Data Revolution ML Challenge
Challenge goal: To predict out-of-domain biological, ecological, and environmental data.

Challenge timeline: Challenge runs through January 31st, 2026.

Challenge prizes (there may be additional prizes yet to be determined):

  • Total cash prizes $4000
  • Cloud credits from AWS and NVIDIA for the winners
  • NVIDIA is also providing $400 in cloud credits to teams for training on their model
  • Prize from AMD TBD
  • Special jury prizes include funded invitations to present their solution at award ceremony

 

This event is being organized by:

The National Ecological Observatory Network (NEON), Battelle
The Environmental Data Science Innovation & Impact Lab (ESIIL), CU Boulder
The Imageomics Institute
CyVerse, University of Arizona
iHARP

Location:

University of Colorado Boulder
SEEC Building, VizStudio Room S372
4001 Discovery Dr.
Boulder, CO 80303
United States

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The National Ecological Observatory Network is a major facility fully funded by the U.S. National Science Foundation.

Any opinions, findings and conclusions or recommendations expressed in this material do not necessarily reflect the views of the U.S. National Science Foundation.