عنوان المقالة: Comparative Study on Behavior-Based Dynamic Branch Prediction using Machine Learning
شادي إبراهيم أبوضلفة | Shadi Abudalfa | 5632
Publication Type
Journal
Arabic Authors
English Authors
Shadi Abudalfa, Mayez Al-Mouhamed, Moataz Ahmed
Abstract
Modern processors fetch and execute instructions speculatively based on the outcome of branch prediction for decreasing effect of control hazards. Many branch predictors are proposed in literature to increase accuracy of the branch prediction. Some ones use machine learning technique for improving accuracy of predicting conditional branches. In this paper, we investigate this issue by evaluating different branch predictors through using a well-designed set of correlation patterns. We built a framework for testing performance of different branch predictors. Our framework demonstrates efficiency of using machine learning in predicting conditional branches. This framework is designed for mimicking various behaviors of branch predictions and can be used easily by scholars to check performance of more branch predictors. Experimental results shown in this work illustrate performance of applying different approaches proposed for predicting conditional branches in comparison with employing machine learning technique. Our findings illustrate that using machine learning provides competitive results. However, employing machine learning does not help in predicting all behaviors of conditional branches.
Publication Date
1/1/2019
Publisher
International Journal of Computing and Digital Systems
Volume No
8
Issue No
1
DOI
http://dx.doi.org/10.12785/ijcds/080104
Pages
33-41
File Link
تحميل (161 مرات التحميل)
External Link
https://journal.uob.edu.bh/bitstream/handle/123456789/3393/paper%25204.pdf?sequence=4&isAllowed=y
Keywords
Conditional Branch, Behavior-Based, Correlation Patterns, Dynamic Branch Predictor, Machine Learning
رجوع