Authors
Md Hasibul Amin, Mohammadreza Mohammadi, Ramtin Zand
Publication date
2024/6
Journal
arXiv e-prints
Pages
arXiv: 2406.06746
Description
In this work, we employ neural architecture search (NAS) to enhance the efficiency of deploying diverse machine learning (ML) tasks on in-memory computing (IMC) architectures. Initially, we design three fundamental components inspired by the convolutional layers found in VGG and ResNet models. Subsequently, we utilize Bayesian optimization to construct a convolutional neural network (CNN) model with adaptable depths, employing these components. Through the Bayesian search algorithm, we explore a vast search space comprising over 640 million network configurations to identify the optimal solution, considering various multi-objective cost functions like accuracy/latency and accuracy/energy. Our evaluation of this NAS approach for IMC architecture deployment spans three distinct image classification datasets, demonstrating the effectiveness of our method in achieving a balanced solution characterized …
Scholar articles
M Hasibul Amin, M Mohammadi, R Zand - arXiv e-prints, 2024