Deep Reinforcement Learning for Multi-Resource Multi-Machine Job Scheduling

11/20/2017
by   Weijia Chen, et al.
0

Minimizing job scheduling time is a fundamental issue in data center networks that has been extensively studied in recent years. The incoming jobs require different CPU and memory units, and span different number of time slots. The traditional solution is to design efficient heuristic algorithms with performance guarantee under certain assumptions. In this paper, we improve a recently proposed job scheduling algorithm using deep reinforcement learning and extend it to multiple server clusters. Our study reveals that deep reinforcement learning method has the potential to outperform traditional resource allocation algorithms in a variety of complicated environments.

READ FULL TEXT

page 1

page 2

research
06/21/2018

A New Approach for Resource Scheduling with Deep Reinforcement Learning

With the rapid development of deep learning, deep reinforcement learning...
research
03/05/2021

Learning to Schedule DAG Tasks

Scheduling computational tasks represented by directed acyclic graphs (D...
research
11/10/2022

Job Scheduling in Datacenters using Constraint Controlled RL

This paper studies a model for online job scheduling in green datacenter...
research
08/10/2020

Bilevel Learning Model Towards Industrial Scheduling

Automatic industrial scheduling, aiming at optimizing the sequence of jo...
research
09/16/2019

Data Centers Job Scheduling with Deep Reinforcement Learning

Efficient job scheduling on data centers under heterogeneous complexity ...
research
07/30/2019

DeepPlace: Learning to Place Applications in Multi-Tenant Clusters

Large multi-tenant production clusters often have to handle a variety of...
research
05/15/2020

DeepSoCS: A Neural Scheduler for Heterogeneous System-on-Chip (SoC) Resource Scheduling

In this paper, we present a novel scheduling solution for a class of Sys...

Please sign up or login with your details

Forgot password? Click here to reset