paper

An Energy-aware Online Learning Framework for Resource Management in Heterogeneous Platforms

Volume Number:
25
Issue Number:
3
Pages:
Starting page
1
Ending page
26
Publication Date:
Publication Date
13 May 2020

paper Menu

Abstract

Mobile platforms must satisfy the contradictory requirements of fast response time and minimum energy consumption as a function of dynamically changing applications. To address this need, systems-on-chip (SoC) that are at the heart of these devices provide a variety of control knobs, such as the number of active cores and their voltage/frequency levels. Controlling these knobs optimally at runtime is challenging for two reasons. First, the large configuration space prohibits exhaustive solutions. Second, control policies designed offline are at best sub-optimal, since many potential new applications are unknown at design-time. We address these challenges by proposing an online imitation learning approach. Our key idea is to construct an offline policy and adapt it online to new applications to optimize a given metric (e.g., energy). The proposed methodology leverages the supervision enabled by power-performance models learned at runtime. We demonstrate its effectiveness on a commercial mobile platform with 16 diverse benchmarks. Our approach successfully adapts the control policy to an unknown application after executing less than 25% of its instructions.

Country
IND
Affiliation
Department of Computer Science and Automation, Indian Institute of Science
IEEE Region
Region 10 (Asia and Pacific)
Email
Country
USA
Affiliation
Washington State University Pullman
IEEE Region
Region 06 (Western U.S.)
Email
Country
USA
Affiliation
University of Wisconsin-Madison
Email