| Energy efficiency and fairness tradeoffs in multi-resource, multi-tasking embedded systems |
| Full text |
Pdf
(821 KB)
|
| Source
|
International Symposium on Low Power Electronics and Design
archive
Proceedings of the 2003 international symposium on Low power electronics and design
table of contents
Seoul, Korea
SESSION: Sensor networks and communication systems
table of contents
Pages: 469 - 474
Year of Publication: 2003
ISBN:1-58113-682-X
|
|
Authors
|
|
| Sponsors |
|
| Publisher |
|
| Bibliometrics |
Downloads (6 Weeks): 2, Downloads (12 Months): 31, Citation Count: 3
|
|
|
ABSTRACT
This paper presents techniques for optimizing the energy efficiency of multi-resource, multi-tasking embedded systems. Low power design of individual system resources, such as embedded processors, has been extensively studied in the past. However, system-level techniques, such as those presented in this paper, which exploit the synergy between various system resources, achieve levels of energy efficiency that cannot be obtained by considering individual resources independently. We demonstrate that, in multi-resource embedded systems that concurrently execute multiple applications, there exists a tradeoff between resource management efficiency and resource allocation fairness. By solving the multi-resource energy optimization problem in the context of an embedded sensor system, we show that our techniques enable the system designer to traverse this efficiency-fairness tradeoff space.
REFERENCES
Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
| |
1
|
B. Moyer, "Low power design for embedded processors", Proc. IEEE, vol. 89, no. 11, pp. 1576--1587, March 2001.
|
 |
2
|
|
| |
3
|
|
| |
4
|
|
| |
5
|
|
| |
6
|
|
 |
7
|
|
 |
8
|
|
| |
9
|
|
| |
10
|
|
| |
11
|
|
CITED BY 3
|
|
Vladimir Shestak , Edwin K. P. Chong , Howard Jay Siegel , Anthony A. Maciejewski , Lotfi Benmohamed , I-Jeng Wang , Rose Daley, A hybrid Branch-and-Bound and evolutionary approach for allocating strings of applications to heterogeneous distributed computing systems, Journal of Parallel and Distributed Computing, v.68 n.4, p.410-426, April, 2008
|
|
|
|
|
|
|
|