Back to Search
Start Over
An Efficient FPGA-Based Hardware Accelerator for Convex Optimization-Based SVM Classifier for Machine Learning on Embedded Platforms
- Source :
- Electronics, Volume 10, Issue 11, Electronics, Vol 10, Iss 1323, p 1323 (2021)
- Publication Year :
- 2021
- Publisher :
- MDPI AG, 2021.
-
Abstract
- Machine learning is becoming the cornerstones of smart and autonomous systems. Machine learning algorithms can be categorized into supervised learning (classification) and unsupervised learning (clustering). Among many classification algorithms, the Support Vector Machine (SVM) classifier is one of the most commonly used machine learning algorithms. By incorporating convex optimization techniques into the SVM classifier, we can further enhance the accuracy and classification process of the SVM by finding the optimal solution. Many machine learning algorithms, including SVM classification, are compute-intensive and data-intensive, requiring significant processing power. Furthermore, many machine learning algorithms have found their way into portable and embedded devices, which have stringent requirements. In this research work, we introduce a novel, unique, and efficient Field Programmable Gate Array (FPGA)-based hardware accelerator for a convex optimization-based SVM classifier for embedded platforms, considering the constraints associated with these platforms and the requirements of the applications running on these devices. We incorporate suitable mathematical kernels and decomposition methods to systematically solve the convex optimization for machine learning applications with a large volume of data. Our proposed architectures are generic, parameterized, and scalable<br />hence, without changing internal architectures, our designs can be used to process different datasets with varying sizes, can be executed on different platforms, and can be utilized for various machine learning applications. We also introduce system-level architectures and techniques to facilitate real-time processing. Experiments are performed using two different benchmark datasets to evaluate the feasibility and efficiency of our hardware architecture, in terms of timing, speedup, area, and accuracy. Our embedded hardware design achieves up to 79 times speedup compared to its embedded software counterpart, and can also achieve up to 100% classification accuracy.
- Subjects :
- Computer Science::Machine Learning
convex optimization
Speedup
TK7800-8360
Computer Networks and Communications
Computer science
FPGAs
02 engineering and technology
embedded architectures
Machine learning
computer.software_genre
Support Vector Machines
0202 electrical engineering, electronic engineering, information engineering
Electrical and Electronic Engineering
Cluster analysis
Hardware architecture
business.industry
Supervised learning
hardware accelerators
020202 computer hardware & architecture
Support vector machine
Statistical classification
ComputingMethodologies_PATTERNRECOGNITION
machine learning
Hardware and Architecture
Control and Systems Engineering
Signal Processing
Hardware acceleration
Unsupervised learning
020201 artificial intelligence & image processing
Artificial intelligence
Electronics
business
computer
Subjects
Details
- ISSN :
- 20799292
- Volume :
- 10
- Database :
- OpenAIRE
- Journal :
- Electronics
- Accession number :
- edsair.doi.dedup.....a88133a2a6b1466fe955254b24eaa4cb
- Full Text :
- https://doi.org/10.3390/electronics10111323