The paper "Unveiling Energy Efficiency in Deep Learning: Measurement, Prediction, and Scoring across Edge Devices" addresses the often neglected issue of energy efficiency in deep learning, particularly within the context of edge devices. The research comprises a comprehensive three-part paper focusing on energy measurement, prediction, and efficiency scoring to enhance transparency in energy consumption of on-device deep learning.
Key Contributions:
- Energy Measurement Study:
- The authors conducted a pioneering measurement paper to explore the energy consumption characteristics of deep learning on edge devices.
- This effort resulted in the creation of three extensive energy datasets, which include a variety of kernels, contemporary deep neural network (DNN) models, and popular AI applications.
- The datasets provide critical insights into how different models and applications impact the energy consumption across various edge devices.
- Energy Prediction:
- The paper introduces the first kernel-level energy predictors for edge devices, built upon the kernel-level energy dataset they constructed.
- These predictors are designed to offer consistent and accurate energy estimations for unseen DNN models, enhancing the ability to forecast the energy needs of forthcoming applications and models effectively.
- Efficiency Scoring Metrics:
- Two scoring metrics, PCS (Power Consumption Score) and IECS (Integrated Energy Consumption Score), are proposed to simplify the complex data surrounding power and energy usage into an easily interpretable format for end-users.
- These metrics aim to aid users in understanding and managing energy consumption, ultimately promoting a culture of sustainability in the use of edge computing resources.
The paper advocates for a shift in the deep learning community toward embracing sustainability, emphasizing that fostering transparency in energy use is crucial for environmentally conscious computing practices. The paper not only provides tools and datasets but also serves as a call to action for researchers and practitioners to consider energy efficiency as a fundamental component of their work.