Name | Region | Skills | Interests |
---|---|---|---|
Kevin Brandt | Campus Champions, Great Plains, CCMNet | ||
Chris Reidy | Campus Champions, CCMNet | ||
Daniel Morales | Campus Champions | ||
Elizabeth Kwon | Campus Champions, CCMNet | ||
Fan Chen | ACCESS CSSN | ||
Feseha Abebe-Akele | CCMNet | ||
Jacob Fosso Tande | ACCESS CSSN, Campus Champions, CCMNet | ||
Juanjo Garcia Mesa | Campus Champions, CCMNet, ACCESS CSSN | ||
Jonathan Komperda | Campus Champions | ||
Od Odbadrakh | ACCESS CSSN | ||
Nandan Tandon | CCMNet, Campus Champions | ||
Rebecca Belshe | Campus Champions, CCMNet | ||
Widodo Samyono | Campus Champions, CCMNet | ||
Timothy Middelkoop | ACCESS CSSN, Campus Champions, CCMNet, Great Plains |
Logo | Name | Description | Tags | Join |
---|---|---|---|---|
ACCESS Allocations | The ACCESS Allocations affinity group is available to chat and answer your questions about allocations policies and procedures. We are also always happy to receive feedback and suggestions from the… | Login to join |
Title | Date |
---|---|
Introducing the ACCESS Variable Marketplace | 03/27/25 |
Nominations Now Open for ACCESS Researcher Advisory Board | 03/06/25 |
ACCESS On-Ramps is Easy for Institutions to Deploy | 02/27/25 |
Title | Date |
---|---|
Maximize Allocations Proposal Window Open | 6/15/25 |
Title | Category | Tags | Skill Level |
---|---|---|---|
How-To Video: ACCESS Allocations | Video | ACCESS-account, ACCESS-allocations, allocation-management, allocations-proposal | Beginner |
I aim to run a Bayesian Nonparametric Ensemble (BNE) machine learning model implemented in MATLAB. Previously, I successfully tested the model on Columbia's HPC GPU cluster using SLURM. I have since enabled MATLAB parallel computing and enhanced my script with additional lines of code for optimized execution.
I want to leverage ACCESS Accelerate allocations to run this model at scale.
The BNE framework is an innovative ensemble modeling approach designed for high-resolution air pollution exposure prediction and spatiotemporal uncertainty characterization. This work requires significant computational resources due to the complexity and scale of the task. Specifically, the model predicts daily air pollutant concentrations (PM2.5 and NO2 at a 1 km grid resolution across the United States, spanning the years 2010–2018. Each daily prediction dataset is approximately 6 GB in size, resulting in substantial storage and processing demands.
To ensure efficient training, validation, and execution of the ensemble models at a national scale, I need access to GPU clusters with the following resources:
In addition to MATLAB, I also require Python and R installed on the system. I use Python notebooks to analyze output data and run R packages through a conda environment in Jupyter Notebook. These tools are essential for post-processing and visualization of model predictions, as well as for running complementary statistical analyses.
To finalize the GPU system configuration based on my requirements and initial runs, I would appreciate guidance from an expert. Since I already have approval for the ACCESS Accelerate allocation, this support will help ensure a smooth setup and efficient utilization of the allocated resources.
Arizona State University
Campus Champions, CCMNet, ACCESS CSSN
mentor, CampusChampionsAdmin, research computing facilitator, research software engineer, cssn, Affinity Group Leader, CCMNet
Columbia University in the City of New York
Campus Champions, CCMNet
CampusChampionsAdmin, research computing facilitator, Affinity Group Leader, CCMNet
Florida International University
Campus Champions
research computing facilitator, student champion
Internet2
ACCESS CSSN, Campus Champions, CCMNet, Great Plains
mentor, regional facilitator, researcher/educator, research computing facilitator, CCMNet