DONNAv2 -- Lightweight Neural Architecture Search for Vision tasks
Sweta Priyadarshi, Tianyu Jiang, Hsin-Pai Cheng, Sendil Krishna,, Viswanath Ganapathy, Chirag Patel

TL;DR
DONNAv2 introduces a computationally efficient neural architecture search method for vision tasks that eliminates the need for accuracy predictors, reducing costs and optimizing architectures for edge devices.
Contribution
It proposes a novel NAS approach that uses block loss metrics as performance surrogates, enhancing efficiency and applicability to diverse vision tasks.
Findings
Reduces computational cost of NAS by 10x on large datasets
Validates effectiveness across multiple vision tasks
Achieves hardware-friendly architectures suitable for mobile devices
Abstract
With the growing demand for vision applications and deployment across edge devices, the development of hardware-friendly architectures that maintain performance during device deployment becomes crucial. Neural architecture search (NAS) techniques explore various approaches to discover efficient architectures for diverse learning tasks in a computationally efficient manner. In this paper, we present the next-generation neural architecture design for computationally efficient neural architecture distillation - DONNAv2 . Conventional NAS algorithms rely on a computationally extensive stage where an accuracy predictor is learned to estimate model performance within search space. This building of accuracy predictors helps them predict the performance of models that are not being finetuned. Here, we have developed an elegant approach to eliminate building the accuracy predictor and extend…
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Taxonomy
TopicsImage Processing Techniques and Applications · CCD and CMOS Imaging Sensors · Advanced Neural Network Applications
MethodsKnowledge Distillation
