Saved in:
Bibliographic Details
Main Authors: Chen, Chang-Lin, Chen, Jiayu, Lan, Tian, Zhao, Zhaoxia, Dong, Hongbo, Aggarwal, Vaneet
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.00277
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915221067530240
author Chen, Chang-Lin
Chen, Jiayu
Lan, Tian
Zhao, Zhaoxia
Dong, Hongbo
Aggarwal, Vaneet
author_facet Chen, Chang-Lin
Chen, Jiayu
Lan, Tian
Zhao, Zhaoxia
Dong, Hongbo
Aggarwal, Vaneet
contents As rapidly growing AI computational demands accelerate the need for new hardware installation and maintenance, this work explores optimal data center resource management by balancing operational efficiency with fault tolerance through strategic rack positioning considering diverse resources and locations. Traditional mixed-integer programming (MIP) approaches often struggle with scalability, while heuristic methods may result in significant sub-optimality. To address these issues, this paper presents a novel two-tier optimization framework using a high-level deep reinforcement learning (DRL) model to guide a low-level gradient-based heuristic for local search. The high-level DRL agent employs Leader Reward for optimal rack type ordering, and the low-level heuristic efficiently maps racks to positions, minimizing movement counts and ensuring fault-tolerant resource distribution. This approach allows scalability to over 100,000 positions and 100 rack types. Our method outperformed the gradient-based heuristic by 7\% on average and the MIP solver by over 30\% in objective value. It achieved a 100\% success rate versus MIP's 97.5\% (within a 20-minute limit), completing in just 2 minutes compared to MIP's 1630 minutes (i.e., almost 4 orders of magnitude improvement). Unlike the MIP solver, which showed performance variability under time constraints and high penalties, our algorithm consistently delivered stable, efficient results - an essential feature for large-scale data center management.
format Preprint
id arxiv_https___arxiv_org_abs_2504_00277
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rack Position Optimization in Large-Scale Heterogeneous Data Centers
Chen, Chang-Lin
Chen, Jiayu
Lan, Tian
Zhao, Zhaoxia
Dong, Hongbo
Aggarwal, Vaneet
Artificial Intelligence
Distributed, Parallel, and Cluster Computing
Machine Learning
Networking and Internet Architecture
Optimization and Control
As rapidly growing AI computational demands accelerate the need for new hardware installation and maintenance, this work explores optimal data center resource management by balancing operational efficiency with fault tolerance through strategic rack positioning considering diverse resources and locations. Traditional mixed-integer programming (MIP) approaches often struggle with scalability, while heuristic methods may result in significant sub-optimality. To address these issues, this paper presents a novel two-tier optimization framework using a high-level deep reinforcement learning (DRL) model to guide a low-level gradient-based heuristic for local search. The high-level DRL agent employs Leader Reward for optimal rack type ordering, and the low-level heuristic efficiently maps racks to positions, minimizing movement counts and ensuring fault-tolerant resource distribution. This approach allows scalability to over 100,000 positions and 100 rack types. Our method outperformed the gradient-based heuristic by 7\% on average and the MIP solver by over 30\% in objective value. It achieved a 100\% success rate versus MIP's 97.5\% (within a 20-minute limit), completing in just 2 minutes compared to MIP's 1630 minutes (i.e., almost 4 orders of magnitude improvement). Unlike the MIP solver, which showed performance variability under time constraints and high penalties, our algorithm consistently delivered stable, efficient results - an essential feature for large-scale data center management.
title Rack Position Optimization in Large-Scale Heterogeneous Data Centers
topic Artificial Intelligence
Distributed, Parallel, and Cluster Computing
Machine Learning
Networking and Internet Architecture
Optimization and Control
url https://arxiv.org/abs/2504.00277