Sarcouncil Journal of Engineering and Computer Sciences
Sarcouncil Journal of Engineering and Computer Sciences
An Open access peer reviewed international Journal
Publication Frequency- Monthly
Publisher Name-SARC Publisher
ISSN Online- 2945-3585
Country of origin-PHILIPPINES
Impact Factor- 3.7
Language- English
Keywords
- Engineering and Technologies like- Civil Engineering, Construction Engineering, Structural Engineering, Electrical Engineering, Mechanical Engineering, Computer Engineering, Software Engineering, Electromechanical Engineering, Telecommunication Engineering, Communication Engineering, Chemical Engineering
Editors

Dr Hazim Abdul-Rahman
Associate Editor
Sarcouncil Journal of Applied Sciences

Entessar Al Jbawi
Associate Editor
Sarcouncil Journal of Multidisciplinary

Rishabh Rajesh Shanbhag
Associate Editor
Sarcouncil Journal of Engineering and Computer Sciences

Dr Md. Rezowan ur Rahman
Associate Editor
Sarcouncil Journal of Biomedical Sciences

Dr Ifeoma Christy
Associate Editor
Sarcouncil Journal of Entrepreneurship And Business Management
AI-Driven Performance Optimization in Enterprise Applications: A Systematic Analysis of Techniques and Implementation Strategies
Keywords: Performance optimization, artificial intelligence, enterprise applications, machine learning, reinforcement learning.
Abstract: Performance optimization driven by artificial intelligence is set to revolutionize enterprise applications, moving to intelligent, data-driven processes and away from static, reactive approaches. While workloads still vary widely, through machine learning algorithms, staff can better anticipate bottlenecks, react quickly to bottlenecks, and allocate resources or change workloads in-flight. Predictive analytics and autonomous decision-making offer compelling advantages for organizations in the financial services, e-commerce, telecommunications, and healthcare industries, usually in the form of less latency, reduced infrastructure costs, or improved user experience. Implementing practices that support end-to-end observability infrastructure, continually trained AI/ML model pipelines, perpetual feedback loops, and coordination for multi-level optimizations enables systems to respond to changes in application behavior as they occur. Although there are ongoing issues in data quality, computational overhead, and integration complexity, the path points towards the evolution of such systems into fully autonomous performance management systems that not only optimize known architectures but also suggest improvements based on observed behavior and forecasted requirements.
Author
- Raghavendra Reddy Kapu
- Akshaya Inc USA