HUNTER: AI based Holistic Resource Management for Sustainable Cloud Computing
Shreshth Tuli, Sukhpal Singh Gill, Minxian Xu, Peter Garraghan, Rami, Bahsoon, Schahram Dustdar, Rizos Sakellariou, Omer Rana, Rajkumar Buyya,, Giuliano Casale, Nicholas R. Jennings

TL;DR
HUNTER is an AI-based resource management system for cloud data centers that optimizes energy efficiency by considering thermal, cooling, and energy factors, outperforming existing methods in multiple metrics.
Contribution
It introduces a holistic AI-driven approach using Gated Graph Convolution Networks for multi-objective scheduling in sustainable cloud computing.
Findings
Reduces energy consumption by up to 12%
Decreases SLA violations by up to 35%
Lowers temperature and cost significantly
Abstract
The worldwide adoption of cloud data centers (CDCs) has given rise to the ubiquitous demand for hosting application services on the cloud. Further, contemporary data-intensive industries have seen a sharp upsurge in the resource requirements of modern applications. This has led to the provisioning of an increased number of cloud servers, giving rise to higher energy consumption and, consequently, sustainability concerns. Traditional heuristics and reinforcement learning based algorithms for energy-efficient cloud resource management address the scalability and adaptability related challenges to a limited extent. Existing work often fails to capture dependencies across thermal characteristics of hosts, resource consumption of tasks and the corresponding scheduling decisions. This leads to poor scalability and an increase in the compute resource requirements, particularly in environments…
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Taxonomy
Methodstravel james · Convolution
