Abstract
Scalable database management systems (DBMS)—both for update intensive application workloads as well as decision support systems for descriptive and deep analytics—are a critical part of the cloud infrastructure and play an important role in ensuring the smooth transition of applications from the traditional enterprise infrastructures to next generation cloud infrastructures. Though scalable data management has been a vision for more than three decades and much research has focussed on large scale data management in traditional enterprise setting, cloud computing brings its own set of novel challenges that must be addressed to ensure the success of data management solutions in the cloud environment. This paper presents an organized picture of the challenges faced by application developers and DBMS designers in developing and deploying internet scale applications. Our background study encompasses both classes of systems: (i) for supporting update heavy applications, and (it) for ad-hoc analytics and decision support. We then focus on providing an in-depth analysis of systems for supporting update intensive web-applications and provide a survey of the state-of-the-art in this domain. We crystallize the design choices made by some successful systems large scale database management systems, analyze the application Demands and access patterns, and enumerate the desiderata for a cloud-bound DBMS.
Downloads
Most read articles by the same author(s)
- P. M. Kokila, P. Saravanan, Dr. B. Jagadhesan, R. Sharmila, Big Data and Cloud Computing Service Models and Nosql Deployment , International Journal of Science and Engineering Invention: Vol. 2 No. 07 (2016)
Similar Articles
- Sai krishna Chaitanya Tulli, Evaluating the Effectiveness of Supply Chain Analytics in Inventory Management , International Journal of Science and Engineering Invention: Vol. 10 No. 07 (2024)
- Milos Ivanovic, MSc, Dr Sveta Mirkovic, Support to IS/IT in Auxiliary Machinery Exploitation Mangement at the Open-Pit Coal Mine , International Journal of Science and Engineering Invention: Vol. 5 No. 03 (2019)
- Vishwanadham Mandala, Data Engineering with Azure: Modern Steps , International Journal of Science and Engineering Invention: Vol. 5 No. 10 (2019)
- Nur Laily, Triyonowati ,, Wahidahwati ,, E-commerce as Innovative Behavior for Female Entrepreneurs of Jonegoroan Batik , International Journal of Science and Engineering Invention: Vol. 4 No. 11 (2018)
- Vladimir Simeunuvic, Radivoje Mitrovic, Prof. Dr, Improvement of Business Operation by Application of ICT in the Open-Pit Coal Mine , International Journal of Science and Engineering Invention: Vol. 4 No. 09 (2018)
- P. M. Kokila, P. Saravanan, Dr. B. Jagadhesan, R. Sharmila, Big Data and Cloud Computing Service Models and Nosql Deployment , International Journal of Science and Engineering Invention: Vol. 2 No. 07 (2016)
- Chaitanya, Enhancing Operational Efficiency and Financial Reporting through Oracle NetSuite: A Logistics Case Study , International Journal of Science and Engineering Invention: Vol. 9 No. 03 (2023)
- Vidson Vishal Dsouza, Prof. Dr Mohammed Nazeh Alimam, Prof. Dr Rand Kouatly, Role of Block Chain in Ensuring Network Security of EHR , International Journal of Science and Engineering Invention: Vol. 10 No. 07 (2024)
- Giuliana Vinci, Mattia Rapa, Federico Roscioli, Sustainable Development in Rural Areas of Mexico through Beekeeping , International Journal of Science and Engineering Invention: Vol. 4 No. 06 (2018)
- Mohammad Anwar Zainudini, Analysis of River Damen Rate of flow and Rainfall Data for Flood Management from Makoran Iranshahr in the South East Iran , International Journal of Science and Engineering Invention: Vol. 2 No. 03 (2016)
You may also start an advanced similarity search for this article.
Copyrights & License

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.