Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli

In recent years, processing large data set to produce result in a timely manner poses a lot of challenges to ICT researchers. Currently most organization has an elaborate local network system whose computers are underutilized. These network form cluster of computing resources that simulates supercom...

Full description

Saved in:
Bibliographic Details
Main Author: Rosli, Muhammad Helmi
Format: Thesis
Language:English
Published: 2015
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/15723/1/TM_MUHAMMAD%20HELMI%20ROSLI%20CS%2015_5.PDF
https://ir.uitm.edu.my/id/eprint/15723/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.uitm.ir.15723
record_format eprints
spelling my.uitm.ir.157232022-03-10T00:24:45Z https://ir.uitm.edu.my/id/eprint/15723/ Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli Rosli, Muhammad Helmi Supercomputers. High performance computing In recent years, processing large data set to produce result in a timely manner poses a lot of challenges to ICT researchers. Currently most organization has an elaborate local network system whose computers are underutilized. These network form cluster of computing resources that simulates supercomputer. Processing images are computationally complex due to its data and task intensive nature. This can be solved by parallelizing the process in cluster environment. Most cluster environment have a variety of computer hardware specification namely heterogeneous environment.Optimizing the resources in heterogeneous environment during parallel processing is not a simple task. These involves partitioning and allocating task to each cluster node.The aim of these research is to investigate various method of partitioning and allocating task in cluster environment and produce a dynamic partitioning and allocating method. Initial stage of the research consist of exploring the heuristic performance of cluster and multi-threading involving five experiments; homogeneous architecture with node partitioning; heterogeneous architecture with node partitioning; heterogeneous architecture with node partitioning including multi-threading; heterogeneous architecture with node and core partitioning; heterogeneous architecture with node and core partitioning including multi-threading.The performances use sequential processing speed as a benchmark. Each experiment highlight the advantages and disadvantages of the experimental architecture.The disadvantages from each experiment prompts the design of dynamic parallel partitioning and allocating framework. The case study use for this experiment is Sobel edge detection algorithm. The test data set focuses on processing images of three different sizes; (IK x IK), (2K x 2K) and (3K x 3K). The performance evaluation is based on the processing speed in second, speedup, and efficiency. In conclusion, it is found that in idle situation heterogeneous architecture with node and core partitioning including multi-threading perform better from other experiment. However, in real working condition where some computer are serving users processes, the dynamic algorithm provides a potential alternative. 2015 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/15723/1/TM_MUHAMMAD%20HELMI%20ROSLI%20CS%2015_5.PDF ID15723 Rosli, Muhammad Helmi (2015) Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli. Masters thesis, thesis, Universiti Teknologi MARA.
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Supercomputers. High performance computing
spellingShingle Supercomputers. High performance computing
Rosli, Muhammad Helmi
Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli
description In recent years, processing large data set to produce result in a timely manner poses a lot of challenges to ICT researchers. Currently most organization has an elaborate local network system whose computers are underutilized. These network form cluster of computing resources that simulates supercomputer. Processing images are computationally complex due to its data and task intensive nature. This can be solved by parallelizing the process in cluster environment. Most cluster environment have a variety of computer hardware specification namely heterogeneous environment.Optimizing the resources in heterogeneous environment during parallel processing is not a simple task. These involves partitioning and allocating task to each cluster node.The aim of these research is to investigate various method of partitioning and allocating task in cluster environment and produce a dynamic partitioning and allocating method. Initial stage of the research consist of exploring the heuristic performance of cluster and multi-threading involving five experiments; homogeneous architecture with node partitioning; heterogeneous architecture with node partitioning; heterogeneous architecture with node partitioning including multi-threading; heterogeneous architecture with node and core partitioning; heterogeneous architecture with node and core partitioning including multi-threading.The performances use sequential processing speed as a benchmark. Each experiment highlight the advantages and disadvantages of the experimental architecture.The disadvantages from each experiment prompts the design of dynamic parallel partitioning and allocating framework. The case study use for this experiment is Sobel edge detection algorithm. The test data set focuses on processing images of three different sizes; (IK x IK), (2K x 2K) and (3K x 3K). The performance evaluation is based on the processing speed in second, speedup, and efficiency. In conclusion, it is found that in idle situation heterogeneous architecture with node and core partitioning including multi-threading perform better from other experiment. However, in real working condition where some computer are serving users processes, the dynamic algorithm provides a potential alternative.
format Thesis
author Rosli, Muhammad Helmi
author_facet Rosli, Muhammad Helmi
author_sort Rosli, Muhammad Helmi
title Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli
title_short Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli
title_full Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli
title_fullStr Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli
title_full_unstemmed Dynamic partitioning and data allocation method on heterogeneous architecture / Muhammad Helmi Rosli
title_sort dynamic partitioning and data allocation method on heterogeneous architecture / muhammad helmi rosli
publishDate 2015
url https://ir.uitm.edu.my/id/eprint/15723/1/TM_MUHAMMAD%20HELMI%20ROSLI%20CS%2015_5.PDF
https://ir.uitm.edu.my/id/eprint/15723/
_version_ 1728054718255595520
score 13.160551