Nowadays, parallel and distributed based environments are used extensively; hence, for using these environments effectively, scheduling techniques are employed. The scheduling algorithm aims to minimize the makespan (i.e., completion time) of a parallel program. Due to the NP-hardness of the scheduling problem, in the literature, several genetic algorithms have been proposed to solve this problem, which are effective but are not efficient enough. An effective scheduling algorithm attempts to minimize the makespan and an efficient algorithm, in addition to that, tries to reduce the complexity of the optimization process. The majority of the existing scheduling algorithms utilize the effective scheduling algorithm, to search the solution spac...
Task Scheduling is one of the most challenging problems in parallel and distributed computing. For s...
The common problem of multiprocessor scheduling can be defined as allocating a task graph in a multi...
The paper proposes using genetic algorithms-based learning classifier system (CS) to solve multiproc...
Given a parallel program represented by a task graph, the objective of a scheduling algorithm is to ...
In this paper, we present a task-scheduling heuristic, based on parallel genetic algorithm (PGA). Th...
Task Scheduling problem for heterogeneous systems is concerned with arranging the various tasks to b...
. Computing the schedule on a configurable parallel system adds one dimension to the traditional sch...
Abstract- Tasks scheduling problem is a key factor for a distributed system in order to achieve bett...
A genetic algorithm for scheduling computational task graphs is presented. The problem of assigning ...
This paper investigates parallel machine scheduling problems where the objectives are to minimize to...
Efficient multiprocessor task scheduling is a long-studied and difficult problem that continues to b...
Abstract- A parallel genetic algorithm has been developed to dynamically schedule heterogeneous task...
Static scheduling of a program represented by a directed task graph on a multiprocessor system to mi...
Parallel Processing refers to the concept of speeding-up the execution of a task by dividing the tas...
Static scheduling of a program represented by a directed task graph on a multiprocessor system to mi...
Task Scheduling is one of the most challenging problems in parallel and distributed computing. For s...
The common problem of multiprocessor scheduling can be defined as allocating a task graph in a multi...
The paper proposes using genetic algorithms-based learning classifier system (CS) to solve multiproc...
Given a parallel program represented by a task graph, the objective of a scheduling algorithm is to ...
In this paper, we present a task-scheduling heuristic, based on parallel genetic algorithm (PGA). Th...
Task Scheduling problem for heterogeneous systems is concerned with arranging the various tasks to b...
. Computing the schedule on a configurable parallel system adds one dimension to the traditional sch...
Abstract- Tasks scheduling problem is a key factor for a distributed system in order to achieve bett...
A genetic algorithm for scheduling computational task graphs is presented. The problem of assigning ...
This paper investigates parallel machine scheduling problems where the objectives are to minimize to...
Efficient multiprocessor task scheduling is a long-studied and difficult problem that continues to b...
Abstract- A parallel genetic algorithm has been developed to dynamically schedule heterogeneous task...
Static scheduling of a program represented by a directed task graph on a multiprocessor system to mi...
Parallel Processing refers to the concept of speeding-up the execution of a task by dividing the tas...
Static scheduling of a program represented by a directed task graph on a multiprocessor system to mi...
Task Scheduling is one of the most challenging problems in parallel and distributed computing. For s...
The common problem of multiprocessor scheduling can be defined as allocating a task graph in a multi...
The paper proposes using genetic algorithms-based learning classifier system (CS) to solve multiproc...