Large-scale Machine Learning Cluster Scheduling via Multi-agent Graph Reinforcement Learning

12/26/2021
by   XiaoYang Zhao, et al.
0

Efficient scheduling of distributed deep learning (DL) jobs in large GPU clusters is crucial for resource efficiency and job performance. While server sharing among jobs improves resource utilization, interference among co-located DL jobs occurs due to resource contention. Interference-aware job placement has been studied, with white-box approaches based on explicit interference modeling and black-box schedulers with reinforcement learning. In today's clusters containing thousands of GPU servers, running a single scheduler to manage all arrival jobs in a timely and effective manner is challenging, due to the large workload scale. We adopt multiple schedulers in a large-scale cluster/data center, and propose a multi-agent reinforcement learning (MARL) scheduling framework to cooperatively learn fine-grained job placement policies, towards the objective of minimizing job completion time (JCT). To achieve topology-aware placements, our proposed framework uses hierarchical graph neural networks to encode the data center topology and server architecture. In view of a common lack of precise reward samples corresponding to different placements, a job interference model is further devised to predict interference levels in face of various co-locations, for training of the MARL schedulers. Testbed and trace-driven evaluations show that our scheduler framework outperforms representative scheduling schemes by more than 20 average JCT, and is adaptive to various machine learning cluster topologies.

READ FULL TEXT

page 1

page 3

page 9

page 10

research
09/13/2019

DL2: A Deep Learning-driven Scheduler for Deep Learning Clusters

More and more companies have deployed machine learning (ML) clusters, wh...
research
09/11/2016

A centralized reinforcement learning method for multi-agent job scheduling in Grid

One of the main challenges in Grid systems is designing an adaptive, sca...
research
01/31/2023

Partitioning Distributed Compute Jobs with Reinforcement Learning and Graph Neural Networks

From natural language processing to genome sequencing, large-scale machi...
research
02/06/2023

Optimization of Topology-Aware Job Allocation on a High-Performance Computing Cluster by Neural Simulated Annealing

Jobs on high-performance computing (HPC) clusters can suffer significant...
research
01/03/2018

Online Job Scheduling in Distributed Machine Learning Clusters

Nowadays large-scale distributed machine learning systems have been depl...
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
06/25/2023

Mirage: Towards Low-interruption Services on Batch GPU Clusters with Reinforcement Learning

Accommodating long-running deep learning (DL) training and inference job...

Please sign up or login with your details

Forgot password? Click here to reset