We present and study a new model for energy-aware and profit-oriented scheduling on a single processor. The processor features dynamic speed scaling as well as suspension to a sleep mode. Jobs arrive over time, are preemptable, and have different sizes, values, and deadlines. On the arrival of a new job, the scheduler may either accept or reject the job. Accepted jobs need a certain energy investment to be finished in time, while rejected jobs cause costs equal to their values. Here, power consumption at speed $s$ is given by $P(s)=s^{\alpha}+\beta$ and the energy investment is power integrated over time. Additionally, the scheduler may decide to suspend the processor to a sleep mode in which no energy is consumed, though awaking entails fixed transition costs $\gamma$. The objective is to minimize the total value of rejected jobs plus the total energy.
Our model combines aspects from advanced energy conservation techniques (namely speed scaling and sleep states) and profit-oriented scheduling models. We show that \emph{rejection-oblivious} schedulers (whose rejection decisions are not based on former decisions) have -- in contrast to the model without sleep states -- an unbounded competitive ratio w.r.t\text{.} the processor parameters $\alpha$ and $\beta$. It turns out that the worst-case performance of such schedulers depends linearly on the jobs' value densities (the ratio between a job's value and its work). We give an algorithm whose competitiveness nearly matches this lower bound. If the maximum value density is not too large, the competitiveness becomes $\alpha^{\alpha}+2e\alpha$. Also, we show that it suffices to restrict the value density of low-value jobs only. Using a technique from \cite{Chan:2010} we transfer our results to processors with a fixed maximum speed.
[1]
Prudence W. H. Wong,et al.
Energy efficient online deadline scheduling
,
2007,
SODA '07.
[2]
Sanjoy K. Baruah,et al.
On-line scheduling in the presence of overload
,
1991,
[1991] Proceedings 32nd Annual Symposium of Foundations of Computer Science.
[3]
Tak Wah Lam,et al.
Tradeoff between Energy and Throughput for Online Deadline Scheduling
,
2010,
WAOA.
[4]
Prudence W. H. Wong,et al.
Deadline scheduling and power management for speed bounded processors
,
2010,
Theor. Comput. Sci..
[5]
Kirk Pruhs,et al.
Speed scaling to manage energy and temperature
,
2007,
JACM.
[6]
Nikhil Bansal,et al.
Scheduling for Speed Bounded Processors
,
2008,
ICALP.
[7]
Marek Chrobak,et al.
Polynomial-time algorithms for minimum energy scheduling
,
2009,
TALG.
[8]
Susanne Albers,et al.
Energy-efficient algorithms
,
2010,
Commun. ACM.
[9]
Philippe Baptiste.
Scheduling unit tasks to minimize the number of idle periods: a polynomial time algorithm for offline dynamic power management
,
2006,
SODA '06.
[10]
Susanne Albers,et al.
Race to idle: New algorithms for speed scaling with a sleep state
,
2012,
TALG.
[11]
Leon Atkins,et al.
Algorithms for power savings
,
2014
.
[12]
Susanne Albers,et al.
Algorithms for Dynamic Speed Scaling
,
2011,
STACS.
[13]
F. Frances Yao,et al.
A scheduling model for reduced CPU energy
,
1995,
Proceedings of IEEE 36th Annual Foundations of Computer Science.
[14]
Kirk Pruhs,et al.
How to Schedule When You Have to Buy Your Energy
,
2010,
APPROX-RANDOM.
[15]
Luiz André Barroso,et al.
The Case for Energy-Proportional Computing
,
2007,
Computer.
[16]
Kirk Pruhs,et al.
Improved Bounds for Speed Scaling in Devices Obeying the Cube-Root Rule
,
2009,
ICALP.