AI-Enabled VM Migration Strategies in Cloud Infrastructure
Keywords:
live migration, virtual machines, reinforcement learning, predictive analytics, cloud orchestration, energy-aware consolidation, SLA/SLO, datacenter optimizationAbstract
Live migration of virtual machines (VMs) is a foundational mechanism for elasticity, high availability, and energy-aware consolidation in cloud datacenters. Yet, traditional threshold-based or rule-driven policies struggle with nonstationary workloads, heterogeneous hosts, and multi-objective trade-offs among service-level objectives (SLOs), energy, and migration overhead. This manuscript proposes and evaluates AI-enabled migration strategies that combine (i) predictive analytics for host-overload/underload detection and migration cost estimation, and (ii) decision-making via reinforcement learning (RL) to schedule and route migrations under uncertainty. We present a modular pipeline: feature engineering from per-host/per-VM telemetry; supervised forecasting of near-future resource pressure; a learned migration-cost model; and an RL policy that selects migration actions using a reward shaping that balances SLO violations, energy consumption, and migration time.
A simulation study with realistic bursty traces and heterogenous hosts compares a baseline heuristic, a supervised-learning policy, and a Proximal Policy Optimization (PPO) RL agent. Results indicate that the AI-enabled strategies reduce SLO violation rate by 31–54% and energy consumption by 12–23% relative to the baseline, while maintaining low downtime and bounded network overhead. A statistical analysis (one-way ANOVA with post-hoc tests) confirms improvements are significant at α=0.05 for primary outcomes. We discuss design choices (e.g., reward coefficients, safe-action filters), operational safeguards (e.g., blacklisting hot pages, rate-limiting), and limitations (trace bias, simulator fidelity). The study demonstrates that AI-driven migration unifies prediction and control to adapt to workload dynamics, providing a principled path to greener, more reliable cloud infrastructure.
Downloads
Downloads
Additional Files
Published
Issue
Section
License
Copyright (c) 2025 The journal retains copyright of all published articles, ensuring that authors have control over their work while allowing wide dissenmination.

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Articles are published under the Creative Commons Attribution NonCommercial 4.0 License (CC BY NC 4.0), allowing others to distribute, remix, adapt, and build upon the work for non-commercial purposes while crediting the original author.
