DEEPSICHA – DEEP Neural Network and SVM based intelligent classification for Workload Characterization on Heterogeneous Architecture

  • R.Sivaramakrishnan, Dr.G.Senthilkumar
Keywords: DNN, SVM, Accuracy, Heterogeneous architecture, Machine learning, Workload Characterization, Throughput

Abstract

Nowadays Heterogeneous system on-chip (HSoC) become highly essential.  IoT, Industry 4.0, intelligent vehicles, embedded devices, and cyber-physical framework applications are broadly utilizing such equipment models for workload processing. These continuous applications include a miscellaneous set of workloads with various attributes which highly influences the computational cycles. Moreover, asset organization become a basic issue in HSoC. In this paper Deep Neural Network based SVM classifier is proposed for HSoC stages to predict ideal computational asset for every responsibility at runtime. Deep Neural Networks (DNN), with deep layers and extremely high element of boundaries, have exhibited get through learning capacity in Machine learning region. Nowadays DNN with Big Data input are driving another heading in enormous scope object acknowledgment. The proposed classifier analysed the execution of a few HSoC stages to comprehend the functioning guideline of ongoing responsibilities at runtime. The noticed attributes are outlined as continuous data set and the equivalent is used to train and test the DNN based SVM classifier. The proposed classifier is assessed on raspberry-pi HSoC and re-enacted on the python with ML library. Precision, throughput, affectability, selectivity measurements are distinguished to break down the exhibition of the proposed calculations. The proposed DEEPSICHA framework accomplished the precision up to 96% contrasted and outrageous ML predictor for and furthermore saved the execution energy up to 30% for real-time embedded benchmark workloads like MiBench, IoMT.

Published
2021-06-30
How to Cite
Dr.G.Senthilkumar, R. (2021). DEEPSICHA – DEEP Neural Network and SVM based intelligent classification for Workload Characterization on Heterogeneous Architecture. Design Engineering, 1001- 1018. Retrieved from http://www.thedesignengineering.com/index.php/DE/article/view/2352
Section
Articles