Sciweavers
Explore
Publications
Books
Software
Tutorials
Presentations
Lectures Notes
Datasets
Labs
Conferences
Community
Upcoming
Conferences
Top Ranked Papers
Most Viewed Conferences
Conferences by Acronym
Conferences by Subject
Conferences by Year
Tools
Sci2ools
International Keyboard
Graphical Social Symbols
CSS3 Style Generator
OCR
Web Page to Image
Web Page to PDF
Merge PDF
Split PDF
Latex Equation Editor
Extract Images from PDF
Convert JPEG to PS
Convert Latex to Word
Convert Word to PDF
Image Converter
PDF Converter
Community
Sciweavers
About
Terms of Use
Privacy Policy
Cookies
Free Online Productivity Tools
i2Speak
i2Symbol
i2OCR
iTex2Img
iWeb2Print
iWeb2Shot
i2Type
iPdf2Split
iPdf2Merge
i2Bopomofo
i2Arabic
i2Style
i2Image
i2PDF
iLatex2Rtf
Sci2ools
28
click to vote
CODES
2005
IEEE
favorite
Email
discuss
report
84
views
Software Engineering
»
more
CODES 2005
»
Efficient behavior-driven runtime dynamic voltage scaling policies
14 years 4 months ago
Download
www.cecs.uci.edu
Fen Xie, Margaret Martonosi, Sharad Malik
Real-time Traffic
CODES 2005
|
Hardware-Software Codesign
|
claim paper
Related Content
»
Dynamic Voltage Scaling of Supply and Body Bias Exploiting Software Runtime Distribution
»
On the interplay of dynamic voltage scaling and dynamic power management in realtime embed...
»
Runtime voltage hopping for lowpower realtime systems
»
Incremental runtime application mapping for homogeneous NoCs with multiple voltage levels
»
Dynamic Voltage Scaling and Power Management for Portable Systems
»
Dynamic Voltage Scaling with Links for Power Optimization of Interconnection Networks
»
Energy efficient coscheduling in dynamically reconfigurable systems
»
Integrated CPU and l2 cache voltage scaling using machine learning
»
Drowsy instruction caches leakage power reduction using dynamic voltage scaling and cache ...
more »
Post Info
More Details (n/a)
Added
24 Jun 2010
Updated
24 Jun 2010
Type
Conference
Year
2005
Where
CODES
Authors
Fen Xie, Margaret Martonosi, Sharad Malik
Comments
(0)
Researcher Info
Software Engineering Study Group
Computer Vision