Performance Economics: A Comparative Analysis of Code-Level Optimization and Cloud Computing Infrastructure Strategies for Enhanced ROI and Effectiveness

Authors

  • Mounika Gaddam Performance Engineer at Sparksoft Corporation, USA Author
  • Sunny Mulukuntla Site Reliability and Systems Architect Lead at State of Maine, USA Author

Keywords:

Performance economics, code-level optimization, cloud infrastructure strategies, ROI

Abstract

In a software development & the deployment, striking the ideal balance between the performances & the cost-efficiency is like negotiating a tightropes. Emphasizing the link between strategic usages of cloud infrastructure & the improvements at the code level, the article investigates the challenging topic of Performance Economics. This is a comparison study meant to find better benchmarks in the modern digital economy including return on investment (ROI) and productivity. A careful analysis showing that little code modifications may significantly save costs and improve performance shows the adage, "attend to the pennies, and the pounds will manage themselves" in action. It also looks at the wide ranges of the cloud infrastructure technologies, stressing scalability, adaptability & the possible efficiency gains. The study shows how companies may combine the two fundamental components—software optimization & the cloud strategies—using their interdependent relationship to save costs and improve operational efficiency.

Downloads

Download data is not yet available.

References

Mistrík, I., Bahsoon, R., Kazman, R., & Zhang, Y. (Eds.). (2014). Economics-driven software architecture. Elsevier.

Ahmaro, I., Abualkishik, A. M., & Yusoff, M. Z. M. (2014). Taxonomy, definition, approaches, benefits, reusability levels, factors and adaption of software reusability: a review of the research literature. Journal of Applied Sciences, 14(20), 2396.

Sarna, D. E. (2010). Implementing and developing cloud computing applications. CRC press.

Baumgartner, T., Hatami, H., & De Uster, M. V. (2016). Sales growth: five proven strategies from the world's sales leaders. John Wiley & Sons.

Ampatzoglou, A., Ampatzoglou, A., Chatzigeorgiou, A., & Avgeriou, P. (2015). The financial aspect of managing technical debt: A systematic literature review. Information and Software Technology, 64, 52-73.

Jayakar, K., Schejter, A., & Taylor, R. (2010). Small businesses and broadband: Key drivers for economic recovery. Unpublished manuscript, University Park, PA.

Erl, T., Chou, D., deVadoss, J., Gandhi, N., Kommalapati, H., Loesgen, B., ... & Seely, S. (2010). SOA with. NET and Windows Azure: Realizing Service-Orientation with the Microsoft Platform. Pearson Education.

Jelugbo, B. (2014). Research Of A Financially Viable Process Variability Model In Software As A Service Solutions.

Jakonen, M. (2011). When to utilize software as a service (Master's thesis).

Mikalsen, C. (2009). Moving into the Cloud (Master's thesis).

Alzaghoul, E. F. A. (2015). Value-and debt-aware selection and composition in cloud-based service-oriented architectures using real options (Doctoral dissertation, University of Birmingham).

Wedel, M., & Kannan, P. K. (2016). Marketing analytics for data-rich environments. Journal of marketing, 80(6), 97-121.

Potena, P., Fernandez-Sanz, L., Pages, C., & Diez, T. (2014). Creating a Framework for Quality Decisions in Software Projects. In Computational Science and Its Applications–ICCSA 2014: 14th International Conference, Guimarães, Portugal, June 30–July 3, 2014, Proceedings, Part V 14 (pp. 434-448). Springer International Publishing.

Kitchen, C. A., & Guest, M. F. (2009). The UK HPC Integration Market: Commodity‐Based Clusters. Advances in Computers, 75, 1-111.

Mistrik, I., Bahsoon, R., Eeles, P., Roshandel, R., & Stal, M. (Eds.). (2014). Relating system quality and software architecture. Morgan Kaufmann.

Naresh Dulam. Apache Spark: The Future Beyond MapReduce. Distributed Learning and Broad Applications in Scientific Research, vol. 1, Dec. 2015, pp. 136-5

Naresh Dulam. NoSQL Vs SQL: Which Database Type Is Right for Big Data?. Distributed Learning and Broad Applications in Scientific Research, vol. 1, May 2015, pp. 115-3

Naresh Dulam. Data Lakes: Building Flexible Architectures for Big Data Storage. Distributed Learning and Broad Applications in Scientific Research, vol. 1, Oct. 2015, pp. 95-114

Naresh Dulam. The Rise of Kubernetes: Managing Containers in Distributed Systems. Distributed Learning and Broad Applications in Scientific Research, vol. 1, July 2015, pp. 73-94

Naresh Dulam. Snowflake: A New Era of Cloud Data Warehousing. Distributed Learning and Broad Applications in Scientific Research, vol. 1, Apr. 2015, pp. 49-72

Downloads

Published

31-01-2023

How to Cite

[1]
Mounika Gaddam and Sunny Mulukuntla, “Performance Economics: A Comparative Analysis of Code-Level Optimization and Cloud Computing Infrastructure Strategies for Enhanced ROI and Effectiveness”, Essex Journal of AI Ethics and Responsible Innovation, vol. 3, pp. 13–36, Jan. 2023, Accessed: Apr. 16, 2025. [Online]. Available: https://ejaeai.org/index.php/publication/article/view/11