oai:cds.cern.ch:3025566

Sustainability-Aware Workload Shifting Beyond Carbon Intensity

APA

(2026). Sustainability-Aware Workload Shifting Beyond Carbon Intensity. SciVideos. https://videos.cern.ch/record/3025566

MLA

Sustainability-Aware Workload Shifting Beyond Carbon Intensity. SciVideos, May. 05, 2026, https://videos.cern.ch/record/3025566

BibTex

          @misc{ scivideos_oai:cds.cern.ch:3025566,
            doi = {},
            url = {https://videos.cern.ch/record/3025566},
            author = {},
            keywords = {},
            language = {en},
            title = {Sustainability-Aware Workload Shifting Beyond Carbon Intensity},
            publisher = {},
            year = {2026},
            month = {may},
            note = {oai:cds.cern.ch:3025566 see, \url{https://scivideos.org/cern-cds/3025566}}
          }
          
Hoffmann, Geerd-Dietger
Talk numberoai:cds.cern.ch:3025566
Subject

Abstract

Time- and location-shifting of computational workloads is widely proposed to reduce data-centre emissions by exploiting variation in electricity carbon intensity. However, CO$_2$-only optimization can shift burdens to places where impacts are experienced locally, such as water withdrawals in stressed basins, worsened air-pollution exposure, and increased stress on constrained grids. We present Orca, a sustainability-aware workload shifting framework that jointly considers global climate impacts and heterogeneous local criteria. Orca integrates region- and time-dependent signals for carbon, water-stress--weighted water use, air-pollution exposure proxies, and grid-stress indicators, and formulates scheduling as a multi-objective optimization problem. Using Pareto analysis, preference weighting, and optional impact caps, Orca exposes and mitigates trade-offs between emissions reduction and local burdens. A three-region case study shows that CO$_2$-optimal shifting can worsen local outcomes, while Orca produces context-sensitive schedules that better balance global and local sustainability objectives.

00:00:00 Slide 1
00:00:32 Slide 2
00:01:02 Slide 3
00:01:19 Slide 4
00:01:43 Slide 5
00:01:58 Slide 6
00:02:26 Slide 7
00:02:44 Slide 8
00:03:06 Slide 9
00:03:19 Slide 10
00:04:28 Slide 11
00:05:11 Slide 12
00:06:30 Slide 13
00:08:04 Slide 14
00:09:20 Slide 15
00:09:31 Slide 16
00:10:07 Slide 17
00:10:22 Slide 18
00:11:06 Slide 19
00:12:53 Slide 20
00:13:49 Slide 21
00:14:34 Slide 22
00:15:49 Slide 23
00:17:52 Slide 24
00:18:45 Slide 25