Realizing the Potential of Cloud Computing: Economical Performance Enhancement, ROI Evaluation, and Anomaly
Keywords:
Cloud computing, cost-effective optimization, performance engineering, anomaly detectionAbstract
Development of robust performance engineering frameworks in the dynamic area of cloud computing depends on the quest of correct ROI assessment, inexpensive performance optimization, and effective anomaly detection techniques. This project involves investigating the complexity of cloud potential to ensure that companies grow by using the great opportunities of cloud settings while keeping financial discipline. It is about striking the ideal balance between cost & the performances so that every dollar spent guarantees investments in reaching great scalabilities & the efficiency. By means of a deep analysis of the innovative optimization strategies, comprehensive ROI evaluation methods & the advanced anomaly detection mechanisms, this session presents a framework for building stable, high-performance & the cost-effective cloud systems. This story provides the direction for companies navigating the complex cloud environment in an attempt to clarify the strategies that improves performance while preserving economy of the cost. This shows how well modern technology & the strategic planning maximize the possibilities of cloud computing, turning challenges into opportunities for innovation and progress.
Downloads
References
Laszewski, T., Arora, K., Farr, E., & Zonooz, P. (2018). Cloud Native Architectures: Design high-availability and cost-effective applications for the cloud. Packt Publishing Ltd.
Surianarayanan, C., & Chelliah, P. R. (2019). Essentials of Cloud Computing. Cham: Springer International Publishing.
Sabella, A., Irons-Mclean, R., & Yannuzzi, M. (2018). Orchestrating and automating security for the internet of things: Delivering advanced security capabilities from edge to cloud for IoT. Cisco Press.
Balasubramanian, S. (2016). Mitigation Strategies for Challenges in Adoption of Data Science in Industry 4.0. Global journal of Business and Integral Security.
MURTHY, P., & BOBBA, S. (2021). AI-Powered Predictive Scaling in Cloud Computing: Enhancing Efficiency through Real-Time Workload Forecasting.
Upadhyay, N. (2018). CABology: Value of Cloud, Analytics and Big Data Trio Wave (pp. 1-151). Singapore: Springer.
Sanders, N. R. (2014). Big data driven supply chain management: A framework for implementing analytics and turning information into intelligence. Pearson Education.
Mohanty, S., Jagadeesh, M., & Srivatsa, H. (2013). Big data imperatives: Enterprise ‘Big Data’warehouse,‘BI’implementations and analytics. Apress.
Weinman, J. (2015). Digital disciplines: Attaining market leadership via the cloud, big data, social, mobile, and the Internet of things. John Wiley & Sons.
Nirmala, M. B. (2014). A Survey of Big Data Analytics Systems: Appliances, Platforms, and Frameworks. In Handbook of Research on Cloud Infrastructures for Big Data Analytics (pp. 392-418). IGI Global.
Loshin, D. (2012). Business intelligence: the savvy manager's guide. Newnes.
Ebbers, M., Archibald, M., da Fonseca, C. F. F., Griffel, M., Para, V., & Searcy, M. (2011). Smarter Data Centers: Achieving Greater Efficiency. IBM Redbooks.
Guo, Y. (2013). A Cloud Computing Based Platform for Geographically Distributed Health Data Mining (Doctoral dissertation).
Bland, A. S., Hack, J. J., Baker, A. E., Barker, A. D., Boudwin, K. J., Kendall, R. A., ... & White, J. C. (2010). High performance computing facility operational assessment, fy 2010 oak ridge leadership computing facility (No. ORNL/TM-2010/149). Oak Ridge National Lab.(ORNL), Oak Ridge, TN (United States). National Center for Computational Sciences (NCCS).
Hillestad, R., Bigelow, J., Bower, A., Girosi, F., Meili, R., Scoville, R., & Taylor, R. (2005). Can electronic medical record systems transform health care? Potential health benefits, savings, and costs. Health affairs, 24(5), 1103-1117.
Katari, A., Ankam, M., & Shankar, R. Data Versioning and Time Travel In Delta Lake for Financial Services: Use Cases and Implementation.
Katari, A. (2022). Performance Optimization in Delta Lake for Financial Data: Techniques and Best Practices. MZ Computing Journal, 3(2).
Boda, V. V. R., & Immaneni, J. (2022). Optimizing CI/CD in Healthcare: Tried and True Techniques. Innovative Computer Sciences Journal, 8(1).
Immaneni, J. (2022). End-to-End MLOps in Financial Services: Resilient Machine Learning with Kubernetes. Journal of Computational Innovation, 2(1).
Gade, K. R. (2022). Data Catalogs: The Central Hub for Data Discovery and Governance. Innovative Computer Sciences Journal, 8(1).
Gade, K. R. (2022). Data Lakehouses: Combining the Best of Data Lakes and Data Warehouses. Journal of Computational Innovation, 2(1).
Thumburu, S. K. R. (2022). A Framework for Seamless EDI Migrations to the Cloud: Best Practices and Challenges. Innovative Engineering Sciences Journal, 2(1).
Thumburu, S. K. R. (2022). The Impact of Cloud Migration on EDI Costs and Performance. Innovative Engineering Sciences Journal, 2(1).
Komandla, V. Enhancing Product Development through Continuous Feedback Integration “Vineela Komandla”.
Komandla, V. Enhancing Security and Growth: Evaluating Password Vault Solutions for Fintech Companies.
Nookala, G., Gade, K. R., Dulam, N., & Thumburu, S. K. R. (2022). The Shift Towards Distributed Data Architectures in Cloud Environments. Innovative Computer Sciences Journal, 8(1).
Nookala, G. (2022). Improving Business Intelligence through Agile Data Modeling: A Case Study. Journal of Computational Innovation, 2(1).
Nookala, G. (2021). Automated Data Warehouse Optimization Using Machine Learning Algorithms. Journal of Computational Innovation, 1(1).
Thumburu, S. K. R. (2021). The Future of EDI Standards in an API-Driven World. MZ Computing Journal, 2(2).
Immaneni, J. (2021). Using Swarm Intelligence and Graph Databases for Real-Time Fraud Detection. Journal of Computational Innovation, 1(1).
Sarbaree Mishra. “A Reinforcement Learning Approach for Training Complex Decision Making Models”. Journal of AI-Assisted Scientific Discovery, vol. 2, no. 2, July 2022, pp. 329-52
Sarbaree Mishra, et al. “Leveraging in-Memory Computing for Speeding up Apache Spark and Hadoop Distributed Data Processing”. Journal of AI-Assisted Scientific Discovery, vol. 2, no. 2, Sept. 2022, pp. 304-28
Sarbaree Mishra. “Comparing Apache Iceberg and Databricks in Building Data Lakes and Mesh Architectures”. Journal of AI-Assisted Scientific Discovery, vol. 2, no. 2, Nov. 2022, pp. 278-03
Sarbaree Mishra. “Reducing Points of Failure - a Hybrid and Multi-Cloud Deployment Strategy With Snowflake”. Journal of AI-Assisted Scientific Discovery, vol. 2, no. 1, Jan. 2022, pp. 568-95
Naresh Dulam, et al. “The AI Cloud Race: How AWS, Google, and Azure Are Competing for AI Dominance ”. Journal of AI-Assisted Scientific Discovery, vol. 1, no. 2, Dec. 2021, pp. 304-28
Naresh Dulam, et al. “Kubernetes Operators for AI ML: Simplifying Machine Learning Workflows”. African Journal of Artificial Intelligence and Sustainable Development, vol. 1, no. 1, June 2021, pp. 265-8
Naresh Dulam, et al. “Data Mesh in Action: Case Studies from Leading Enterprises”. Journal of Artificial Intelligence Research and Applications, vol. 1, no. 2, Dec. 2021, pp. 488-09
Naresh Dulam, et al. “Real-Time Analytics on Snowflake: Unleashing the Power of Data Streams”. Journal of Bioinformatics and Artificial Intelligence, vol. 1, no. 2, July 2021, pp. 91-114
Naresh Dulam, et al. “Serverless AI: Building Scalable AI Applications Without Infrastructure Overhead ”. Journal of AI-Assisted Scientific Discovery, vol. 2, no. 1, May 2021, pp. 519-42
Muneer Ahmed Salamkar. Batch Vs. Stream Processing: In-Depth Comparison of Technologies, With Insights on Selecting the Right Approach for Specific Use Cases. Distributed Learning and Broad Applications in Scientific Research, vol. 6, Feb. 2020
Muneer Ahmed Salamkar, and Karthik Allam. Data Integration Techniques: Exploring Tools and Methodologies for Harmonizing Data across Diverse Systems and Sources. Distributed Learning and Broad Applications in Scientific Research, vol. 6, June 2020
Muneer Ahmed Salamkar, et al. The Big Data Ecosystem: An Overview of Critical Technologies Like Hadoop, Spark, and Their Roles in Data Processing Landscapes. Journal of AI-Assisted Scientific Discovery, vol. 1, no. 2, Sept. 2021, pp. 355-77
Muneer Ahmed Salamkar. Scalable Data Architectures: Key Principles for Building Systems That Efficiently Manage Growing Data Volumes and Complexity. Journal of AI-Assisted Scientific Discovery, vol. 1, no. 1, Jan. 2021, pp. 251-70
Muneer Ahmed Salamkar, and Jayaram Immaneni. Automated Data Pipeline Creation: Leveraging ML Algorithms to Design and Optimize Data Pipelines. Journal of AI-Assisted Scientific Discovery, vol. 1, no. 1, June 2021, pp. 230-5
Babulal Shaik. Automating Compliance in Amazon EKS Clusters With Custom Policies . Journal of Artificial Intelligence Research and Applications, vol. 1, no. 1, Jan. 2021, pp. 587-10
Babulal Shaik. Developing Predictive Autoscaling Algorithms for Variable Traffic Patterns . Journal of Bioinformatics and Artificial Intelligence, vol. 1, no. 2, July 2021, pp. 71-90
Babulal Shaik, et al. Automating Zero-Downtime Deployments in Kubernetes on Amazon EKS . Journal of AI-Assisted Scientific Discovery, vol. 1, no. 2, Oct. 2021, pp. 355-77