Next-Generation Cloud Infrastructure Management - Integrating TCNs and Ensemble Policies for Improved Performance
Keywords:
Cloud performance, cold-start, temporal temporal convolutional networks, resource allocation, code optimization
Abstract
Managing cold-start challenges in the server-less cloud environment is crucial for ensuring optimal performance and resource efficiency This paper presents a comprehensive approach to address these challenges by integrating Temporal Convolutional Networks TCNs and Ensemble Policies aiming to revolutionize the management of serverless cloud environments The proposed framework leverages predictive models to anticipate infrastructure demands and function instance arrivals enabling proactive resource provisioning and code optimization A critical analysis literature review and methodological evaluation highlight the robustness and adaptability of the integrated approach The ensemble policy s parallel paths provide a versatile and scalable mechanism for addressing both infrastructure-level and function-level cold start issues resulting in improved resource allocation and minimized delays This research significantly contributes to the advance-ment of cloud infrastructure management offering valuable insights into optimizing serverless computing performance under varying workload conditions Further-more the implementation analysis emphasizes the practical applicability of the proposed approach demonstrating its potential to enhance overall system efficiency and responsiveness in dynamic and resource-constrained cloud environments
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2024-01-09
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