Chasing Low-Carbon Electricity for Practical and Sustainable DNN Training

03/04/2023
by   Zhenning Yang, et al.
0

Deep learning has experienced significant growth in recent years, resulting in increased energy consumption and carbon emission from the use of GPUs for training deep neural networks (DNNs). Answering the call for sustainability, conventional solutions have attempted to move training jobs to locations or time frames with lower carbon intensity. However, moving jobs to other locations may not always be feasible due to large dataset sizes or data regulations. Moreover, postponing training can negatively impact application service quality because the DNNs backing the service are not updated in a timely fashion. In this work, we present a practical solution that reduces the carbon footprint of DNN training without migrating or postponing jobs. Specifically, our solution observes real-time carbon intensity shifts during training and controls the energy consumption of GPUs, thereby reducing carbon footprint while maintaining training performance. Furthermore, in order to proactively adapt to shifting carbon intensity, we propose a lightweight machine learning algorithm that predicts the carbon intensity of the upcoming time frame. Our solution, Chase, reduces the total carbon footprint of training ResNet-50 on ImageNet by 13.6

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/13/2023

Energy-Efficient GPU Clusters Scheduling for Deep Learning

Training deep neural networks (DNNs) is a major workload in datacenters ...
research
08/12/2022

Zeus: Understanding and Optimizing GPU Energy Consumption of DNN Training

Training deep neural networks (DNNs) is becoming increasingly more resou...
research
07/06/2020

Carbontracker: Tracking and Predicting the Carbon Footprint of Training Deep Learning Models

Deep learning (DL) can achieve impressive results across a wide variety ...
research
05/27/2019

The Impact of GPU DVFS on the Energy and Performance of Deep Learning: an Empirical Study

Over the past years, great progress has been made in improving the compu...
research
04/05/2020

Reducing Data Motion to Accelerate the Training of Deep Neural Networks

This paper reduces the cost of DNNs training by decreasing the amount of...
research
11/20/2021

Doing More by Doing Less: How Structured Partial Backpropagation Improves Deep Learning Clusters

Many organizations employ compute clusters equipped with accelerators su...
research
08/19/2023

Minimizing Carbon Footprint for Timely E-Truck Transportation: Hardness and Approximation Algorithm

Carbon footprint optimization (CFO) is important for sustainable heavy-d...

Please sign up or login with your details

Forgot password? Click here to reset