*********************************
There is now a CONTENT FREEZE for Mercury while we switch to a new platform. It began on Friday, March 10 at 6pm and will end on Wednesday, March 15 at noon. No new content can be created during this time, but all material in the system as of the beginning of the freeze will be migrated to the new platform, including users and groups. Functionally the new site is identical to the old one. webteam@gatech.edu
*********************************
Atlanta, GA | Posted: April 23, 2021
Energy consumption is a major factor to plan for when implementing a long-term project or service that uses large-scale machine learning algorithms.
Now, a team of researchers from Georgia Tech have created an interactive tool called EnergyVis that allows users to compare energy consumption across locations and against other models.
EnergyVis helps users answer three critical questions:
“Sometimes, training machine learning models from end-to-end takes the same amount of energy as a transatlantic flight. Is every organization using machine learning able to budget for such an expense? What if the grid in which a business runs is running on coal versus green energy?” said Omar Shaikh, a computer science undergraduate student.
Shaikh is helping lead the research for this interactive dashboard along with M.S. student Jon Saad-Falcon, Ph.D students Austin P. Wright, Nilaksh Das, Scott Freitas, and faculty advisors School of Public Policy Assistant Professor Omar Asensio and School of Computational Science and Engineering (CSE) Associate Professor Polo Chau.
According to Shaikh, prior research that aims to track energy consumption is already available. However, EnergyVis distinguishes itself by offering a more visually appealing dashboard and easier user experience to enable energy tracking and energy usage comparisons across models and across scenarios.
“A common counter argument for why we should track model energy consumption is that models don’t use as much energy as many other things comparatively – so, what’s the point?” he said. “The point of EnergyVis is that it not only tracks their energy usage, but it also keeps people accountable for how much energy they are using.”
Another utility of the new dashboard is that it allows for better reproducibility for researchers working in different locations. With the ability to budget and better determine energy usage, teams are better able to plan where a deployment may or may not be cost effective or environmentally friendly.
“If you’re training your model in a state that largely uses coal-burning energy sources, your CO2 output for the electricity your model is using is going to be much higher than if you were to train or use your model in an area using green energy,” said Shaikh.
While this new visualization tool is in its initial phases, Shaikh says that the research team would like to consider plans to expand and generalize EnergyVis for any computing-intensive task.
The initial findings of this work will be presented at the 2021 ACM CHI Conference on Human Factors in Computing Systems on May 13 and 14.