Quantifying the Benefits of Carbon-Aware Temporal and Spatial Workload Shifting in the Cloud

06/10/2023
by   Thanathorn Sukprasert, et al.
0

To mitigate climate change, there has been a recent focus on reducing computing's carbon emissions by shifting its time and location to when and where lower-carbon energy is available. However, despite the prominence of carbon-aware spatiotemporal workload shifting, prior work has only quantified its benefits in narrow settings, i.e., for specific workloads in select regions. As a result, the potential benefits of spatiotemporal workload scheduling, which are a function of both workload and energy characteristics, are unclear. To address the problem, this paper quantifies the upper bound on the benefits of carbon-aware spatiotemporal workload shifting for a wide range of workloads with different characteristics, e.g., job duration, deadlines, SLOs, memory footprint, etc., based on hourly variations in energy's carbon-intensity across 123 distinct regions, including cloud regions, over a year. Notably, while we find that some workloads can benefit from carbon-aware spatiotemporal workload shifting in some regions, the approach yields limited benefits for many workloads and cloud regions. In addition, we also show that simple scheduling policies often yield most of the benefits. Thus, contrary to conventional wisdom, i) carbon-aware spatiotemporal workload shifting is likely not a panacea for significantly reducing cloud platforms' carbon emissions, and ii) pursuing further research on sophisticated policies is likely to yield little marginal benefits.

READ FULL TEXT
research
10/25/2021

Let's Wait Awhile: How Temporal Workload Shifting Can Reduce Carbon Emissions in the Cloud

Depending on energy sources and demand, the carbon intensity of the publ...
research
05/30/2019

Reducing Tail Latency via Safe and Simple Duplication

Duplication can be a powerful strategy for overcoming stragglers in clou...
research
02/17/2023

CarbonScaler: Leveraging Cloud Workload Elasticity for Optimizing Carbon-Efficiency

Cloud platforms are increasingly emphasizing sustainable operations in o...
research
01/21/2023

LWS: A Framework for Log-based Workload Simulation in Session-based SUT

Microservice-based applications and cloud-native systems have been widel...
research
08/14/2020

Consideration for effectively handling parallel workloads on public cloud system

We retrieved and analyzed parallel storage workloads of the FUJITSU K5 c...
research
03/06/2020

Serverless in the Wild: Characterizing and Optimizing the Serverless Workload at a Large Cloud Provider

Function as a Service (FaaS) has been gaining popularity as a way to dep...
research
12/16/2017

StackInsights: Cognitive Learning for Hybrid Cloud Readiness

Hybrid cloud is an integrated cloud computing environment utilizing a mi...

Please sign up or login with your details

Forgot password? Click here to reset