A Survey on Green Deep Learning
- URL: http://arxiv.org/abs/2111.05193v2
- Date: Wed, 10 Nov 2021 02:28:08 GMT
- Title: A Survey on Green Deep Learning
- Authors: Jingjing Xu, Wangchunshu Zhou, Zhiyi Fu, Hao Zhou, Lei Li
- Abstract summary: This paper focuses on presenting a systematic review of the development of Green deep learning technologies.
We classify these approaches into four categories: (1) compact networks, (2) energy-efficient training strategies, (3) energy-efficient inference approaches, and (4) efficient data usage.
- Score: 25.71572024291251
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In recent years, larger and deeper models are springing up and continuously
pushing state-of-the-art (SOTA) results across various fields like natural
language processing (NLP) and computer vision (CV). However, despite promising
results, it needs to be noted that the computations required by SOTA models
have been increased at an exponential rate. Massive computations not only have
a surprisingly large carbon footprint but also have negative effects on
research inclusiveness and deployment on real-world applications.
Green deep learning is an increasingly hot research field that appeals to
researchers to pay attention to energy usage and carbon emission during model
training and inference. The target is to yield novel results with lightweight
and efficient technologies. Many technologies can be used to achieve this goal,
like model compression and knowledge distillation. This paper focuses on
presenting a systematic review of the development of Green deep learning
technologies. We classify these approaches into four categories: (1) compact
networks, (2) energy-efficient training strategies, (3) energy-efficient
inference approaches, and (4) efficient data usage. For each category, we
discuss the progress that has been achieved and the unresolved challenges.
Related papers
- On the Opportunities of Green Computing: A Survey [80.21955522431168]
Artificial Intelligence (AI) has achieved significant advancements in technology and research with the development over several decades.
The needs for high computing power brings higher carbon emission and undermines research fairness.
To tackle the challenges of computing resources and environmental impact of AI, Green Computing has become a hot research topic.
arXiv Detail & Related papers (2023-11-01T11:16:41Z) - Computation-efficient Deep Learning for Computer Vision: A Survey [121.84121397440337]
Deep learning models have reached or even exceeded human-level performance in a range of visual perception tasks.
Deep learning models usually demand significant computational resources, leading to impractical power consumption, latency, or carbon emissions in real-world scenarios.
New research focus is computationally efficient deep learning, which strives to achieve satisfactory performance while minimizing the computational cost during inference.
arXiv Detail & Related papers (2023-08-27T03:55:28Z) - A Comparative Study of Machine Learning Algorithms for Anomaly Detection
in Industrial Environments: Performance and Environmental Impact [62.997667081978825]
This study seeks to address the demands of high-performance machine learning models with environmental sustainability.
Traditional machine learning algorithms, such as Decision Trees and Random Forests, demonstrate robust efficiency and performance.
However, superior outcomes were obtained with optimised configurations, albeit with a commensurate increase in resource consumption.
arXiv Detail & Related papers (2023-07-01T15:18:00Z) - Uncovering Energy-Efficient Practices in Deep Learning Training:
Preliminary Steps Towards Green AI [8.025202812165412]
We consider energy consumption as a metric of equal importance to accuracy and to reduce any irrelevant tasks or energy usage.
We examine the training stage of the deep learning pipeline from a sustainability perspective.
We highlight innovative and promising energy-efficient practices for training deep learning models.
arXiv Detail & Related papers (2023-03-24T12:48:21Z) - Energy Efficiency of Training Neural Network Architectures: An Empirical
Study [11.325530936177493]
The evaluation of Deep Learning models has traditionally focused on criteria such as accuracy, F1 score, and related measures.
The computations needed to train such models entail a large carbon footprint.
We study the relations between DL model architectures and their environmental impact in terms of energy consumed and CO$$ emissions produced during training.
arXiv Detail & Related papers (2023-02-02T09:20:54Z) - Eco2AI: carbon emissions tracking of machine learning models as the
first step towards sustainable AI [47.130004596434816]
In eco2AI we put emphasis on accuracy of energy consumption tracking and correct regional CO2 emissions accounting.
The motivation also comes from the concept of AI-based green house gases sequestrating cycle with both Sustainable AI and Green AI pathways.
arXiv Detail & Related papers (2022-07-31T09:34:53Z) - Full-Cycle Energy Consumption Benchmark for Low-Carbon Computer Vision [31.781943982148025]
We present the first large-scale energy consumption benchmark for efficient computer vision models.
A new metric is proposed to explicitly evaluate the full-cycle energy consumption under different model usage intensity.
arXiv Detail & Related papers (2021-08-30T18:22:36Z) - Knowledge Distillation: A Survey [87.51063304509067]
Deep neural networks have been successful in both industry and academia, especially for computer vision tasks.
It is a challenge to deploy these cumbersome deep models on devices with limited resources.
Knowledge distillation effectively learns a small student model from a large teacher model.
arXiv Detail & Related papers (2020-06-09T21:47:17Z) - Towards the Systematic Reporting of the Energy and Carbon Footprints of
Machine Learning [68.37641996188133]
We introduce a framework for tracking realtime energy consumption and carbon emissions.
We create a leaderboard for energy efficient reinforcement learning algorithms.
We propose strategies for mitigation of carbon emissions and reduction of energy consumption.
arXiv Detail & Related papers (2020-01-31T05:12:59Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.