Document detail
ID

oai:arXiv.org:2410.11233

Topic
Computer Science - Computer Vision... Computer Science - Distributed, Pa... 68M14 C.2.4 I.4.0 I.4.9
Author
Cao, Bryan Bo Sharma, Abhinav Singh, Manavjeet Gandhi, Anshul Das, Samir Jain, Shubham
Category

Computer Science

Year

2024

listing date

10/23/2024

Keywords
ground truth computing shared similarity computer merged model layers
Metrics

Abstract

Edge computing has emerged as an alternative to reduce transmission and processing delay and preserve privacy of the video streams.

However, the ever-increasing complexity of Deep Neural Networks (DNNs) used in video-based applications (e.g. object detection) exerts pressure on memory-constrained edge devices.

Model merging is proposed to reduce the DNNs' memory footprint by keeping only one copy of merged layers' weights in memory.

In existing model merging techniques, (i) only architecturally identical layers can be shared; (ii) requires computationally expensive retraining in the cloud; (iii) assumes the availability of ground truth for retraining.

The re-evaluation of a merged model's performance, however, requires a validation dataset with ground truth, typically runs at the cloud.

Common metrics to guide the selection of shared layers include the size or computational cost of shared layers or representation size.

We propose a new model merging scheme by sharing representations (i.e., outputs of layers) at the edge, guided by representation similarity S.

We show that S is extremely highly correlated with merged model's accuracy with Pearson Correlation Coefficient |r| > 0.94 than other metrics, demonstrating that representation similarity can serve as a strong validation accuracy indicator without ground truth.

We present our preliminary results of the newly proposed model merging scheme with identified challenges, demonstrating a promising research future direction.

;Comment: 3 pages, 4 figures, ACM MobiCom '24, November 18-22, 2024, Washington D.C., DC, USA

Cao, Bryan Bo,Sharma, Abhinav,Singh, Manavjeet,Gandhi, Anshul,Das, Samir,Jain, Shubham, 2024, Representation Similarity: A Better Guidance of DNN Layer Sharing for Edge Computing without Training

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