Communities & Collections
Researchers & Labs
Titles
DGIST
LIBRARY
DGIST R&D
Detail View
Department of Electrical Engineering and Computer Science
Theses
Master
Near Data Processing for Clustering Enhanced by Automatic Memory Disaggregation
Sanghoon Lee
Department of Electrical Engineering and Computer Science
Theses
Master
Citations
WEB OF SCIENCE
Citations
SCOPUS
Metadata Downloads
XML
Excel
Title
Near Data Processing for Clustering Enhanced by Automatic Memory Disaggregation
DGIST Authors
Sanghoon Lee
;
Yeseong Kim
;
Sungjin Lee
Advisor
김예성
Co-Advisor(s)
Sungjin Lee
Issued Date
2023
Awarded Date
2023-02-01
Citation
Sanghoon Lee. (2023). Near Data Processing for Clustering Enhanced by Automatic Memory Disaggregation. doi: 10.22677/THESIS.200000656260
Type
Thesis
Description
Clustering Algorithms, Near Data Processing, Disaggregated Memory, CXL, Genetic Algorithms
Table Of Contents
Ⅰ. INTRODUCTION 1
II. RELATED WORK 6
III. OVERVIEW OF SIDEKICK 8
3.1 Architectural Overview: Memory Disaggregation with CXL 10
3.2 Core Software: Automated Migration Technique 12
IV. AUTOMATED PROGRAM CONTEXT EXTRACTION 13
4.1 Program Context Extraction 13
4.2 Managing computation and memory allocation 15
4.3 Implementation 16
V. MIGRATION POLICY DECISION 17
5.1 Initialization of Genetic Algorithm 18
5.2 Identifying the best migration policy using genetic algorithm 19
VI. EXPERIMENTAL RESULTS 21
6.1 Experimental Setup 21
6.2 Migration Decision Evaluation 26
6.2.1 Effectiveness and Scalability 26
6.2.2 Migration Quality Evaluation 27
6.3 Memory Activity Evaluation 29
6.4 In-Depth Analysis of Sidekick Optimization Procedure 30
6.5 Impact of Bootstrapping 31
VII. CONCLUSION 33
URI
http://hdl.handle.net/20.500.11750/45760
http://dgist.dcollection.net/common/orgView/200000656260
DOI
10.22677/THESIS.200000656260
Degree
Master
Department
Department of Electrical Engineering and Computer Science
Publisher
DGIST
Show Full Item Record
File Downloads
There are no files associated with this item.
공유
공유하기
Total Views & Downloads