2000 character limit reached
Carbon-Aware End-to-End Data Movement (2406.09650v1)
Published 14 Jun 2024 in cs.NI
Abstract: The latest trends in the adoption of cloud, edge, and distributed computing, as well as a rise in applying AI/ML workloads, have created a need to measure, monitor, and reduce the carbon emissions of these compute-intensive workloads and the associated communication costs. The data movement over networks has considerable carbon emission that has been neglected due to the difficulty in measuring the carbon footprint of a given end-to-end network path. We present a novel network carbon footprint measuring mechanism and propose three ways in which users can optimize scheduling network-intensive tasks to enable carbon savings through shifting tasks in time, space, and overlay networks based on the geographic carbon intensity.
- Jacob Goldverg (5 papers)
- Hasibul Jamil (6 papers)
- Elvis Rodriguez (1 paper)
- Tevfik Kosar (32 papers)