This article initiates a theoretical investigation into online scheduling problems with speed scaling where the allowable speeds may be discrete, and the power function may be arbitrary, and develops algorithmic analysis techniques for this setting. We show that a natural algorithm, which uses Shortest Remaining Processing Time for scheduling and sets the power to be one more than the number of unfinished jobs, is 3-competitive for the objective of total flow time plus energy. We also show that another natural algorithm, which uses Highest Density First for scheduling and sets the power to be the fractional weight of the unfinished jobs, is a 2-competitive algorithm for the objective of fractional weighted flow time plus energy
In this paper we investigate algorithmic instruments leading to low power consumption in computing d...
This paper is concerned with online scheduling algorithms that aim at minimizing the total flow time...
Efficient job scheduling reduces energy consumption and enhances the performance of machines in data...
This article initiates a theoretical investigation into online scheduling problems with speed scalin...
We consider online scheduling algorithms in the dynamic speed scaling model, where a processor can s...
We consider the problem of online scheduling of jobs on unrelated machines with dynamic speed scalin...
This paper investigates the performance of online dynamic speed scaling algorithms for the objectiv...
LNCS v. 6346 has title: Algorithms - ESA 2010: 18th Annual European Symposium, Liverpool, UK, Septem...
Lecture Notes in Computer Science, vol. 6534 entitled: Approximation and Online Algorithms: 8th inte...
We present theoretical algorithmic research of processor scheduling in an energy aware environment u...
In this paper we consider non-preemptive online scheduling of jobs with release times and deadlines ...
Abstract—We show that a natural nonclairvoyant online algorithm for scheduling jobs on a power-heter...
We consider the problem of online scheduling of jobs on unrelated machines with dynamic speed scalin...
Abstract: We consider the online scheduling problem of minimizing total weighted flow time plus ener...
We consider online job scheduling together with power management on multiple machines. In this model...
In this paper we investigate algorithmic instruments leading to low power consumption in computing d...
This paper is concerned with online scheduling algorithms that aim at minimizing the total flow time...
Efficient job scheduling reduces energy consumption and enhances the performance of machines in data...
This article initiates a theoretical investigation into online scheduling problems with speed scalin...
We consider online scheduling algorithms in the dynamic speed scaling model, where a processor can s...
We consider the problem of online scheduling of jobs on unrelated machines with dynamic speed scalin...
This paper investigates the performance of online dynamic speed scaling algorithms for the objectiv...
LNCS v. 6346 has title: Algorithms - ESA 2010: 18th Annual European Symposium, Liverpool, UK, Septem...
Lecture Notes in Computer Science, vol. 6534 entitled: Approximation and Online Algorithms: 8th inte...
We present theoretical algorithmic research of processor scheduling in an energy aware environment u...
In this paper we consider non-preemptive online scheduling of jobs with release times and deadlines ...
Abstract—We show that a natural nonclairvoyant online algorithm for scheduling jobs on a power-heter...
We consider the problem of online scheduling of jobs on unrelated machines with dynamic speed scalin...
Abstract: We consider the online scheduling problem of minimizing total weighted flow time plus ener...
We consider online job scheduling together with power management on multiple machines. In this model...
In this paper we investigate algorithmic instruments leading to low power consumption in computing d...
This paper is concerned with online scheduling algorithms that aim at minimizing the total flow time...
Efficient job scheduling reduces energy consumption and enhances the performance of machines in data...