An Infrastructure Cost Optimised Algorithm for Partitioning of Microservices
Kalyani V N S Pendyala, Rajkumar Buyya

TL;DR
This paper introduces a new predictive algorithm designed to optimize infrastructure costs when partitioning monolithic applications into microservices, addressing a key gap in existing approaches.
Contribution
It proposes an infrastructure cost-optimized algorithm for microservices partitioning and highlights future research directions in this area.
Findings
Identifies lack of infrastructure cost consideration in existing methods
Proposes a novel predictive algorithm for cost-efficient microservices partitioning
Summarizes future research opportunities in microservices architecture
Abstract
The evolution and advances made in the field of Cloud engineering influence the constant changes in software application development cycle and practices. Software architecture has evolved along with other domains and capabilities of software engineering. As migrating applications into the cloud is universally adopted by the software industry, microservices have proven to be the most suitable and widely accepted architecture pattern for applications deployed on distributed cloud. Their efficacy is enabled by both technical benefits like reliability, fault isolation, scalability and productivity benefits like ease of asset maintenance and clear ownership boundaries which in turn lead to fewer interdependencies and shorter development cycles thereby resulting in faster time to market. Though microservices have been established as an architecture pattern over the last decade, many…
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Taxonomy
TopicsCloud Computing and Resource Management · Software System Performance and Reliability · Mobile Agent-Based Network Management
