Journal of Computers 1 (2019)
AbstractThe oil and gas industry is a complex data-driven industry with compute-intensive, data-intensive and business-intensive features. Cloud computing and big data have a broad application prospect in the oil and gas industry. This research aims to highlight the cloud computing and big data issues and challenges from the informatization in oil and gas industry. In this paper, the distributed cloud storage architecture and its applications for seismic data of oil and gas industry are focused on first. Then,cloud desktop for oil and gas industry applications are also introduced in terms of efficiency, security and usability. Finally, big data architecture and security issues of oil and gas industry are analyzed. Cloud computing and big data architectures have advantages in many aspects, such as system scalability, reliability, and serviceability. This paper also provides a brief description for the future development of Cloud computing and big data in oil and gas industry. Cloud computing and big data can provide convenient information sharing and high quality service for oil and gas industry.
Similar books and articles
Lockbox: mobility, privacy and values in cloud storage. [REVIEW]Luke Stark & Matt Tierney - 2014 - Ethics and Information Technology 16 (1):1-13.
Cloud Computing and its ethical issues.J. Jeniffer - 2012 - Eubios Journal of Asian and International Bioethics 22 (4):155-157.
The Ethics of Cloud Computing.Boudewijn de Bruin & Luciano Floridi - 2017 - Science and Engineering Ethics 23 (1):21-39.
A Study on Tools And Techniques Used For Network Forensic In A Cloud Environment: An Investigation Perspective.Rajeshwar Rao & Siby Samuel - 2014 - Journal of Basic and Applied Engineering Research 1 (8):21-26.
ITS for cloud computing.Hasan Abu Hasanen & Monnes Hanjory - 2017 - International Journal of Academic Research and Development 2 (1):76-80.
An Intelligent Tutoring System for Cloud Computing.Hasan Abdulla Abu Hasanein & Samy S. Abu Naser - 2017 - International Journal of Academic Research and Development 2 (1):76-80.
Privacy-Preserving and Scalable Service Recommendation Based on SimHash in a Distributed Cloud Environment.Yanwei Xu, Lianyong Qi, Wanchun Dou & Jiguo Yu - 2017 - Complexity:1-9.
Privacy in the cloud: applying Nissenbaum's theory of contextual integrity.F. S. Grodzinsky & H. T. Tavani - 2011 - Acm Sigcas Computers and Society 41 (1):38-47.
Lightweight Virtualization Cluster How to Overcome Cloud Vendor Lock-In.Nane Kratzke - 2014 - JCC 2:1-7.
Identity management in GRID computing and Service Oriented Architectures: research and practice. [REVIEW]Theodora Varvarigou & Vassiliki Andronikou - 2009 - Identity in the Information Society 2 (2):95-98.
Personal data in cloud computing: Organizational informationrisk perception.Samir Husić - 2015 - Inquiry: Sarajevo Journal of Social Sciences 1.
Optimization of overlay distributed computing systems for multiple classifier system—heuristic approach.Tomasz Kacprzak, Krzysztof Walkowiak & Michal Wozniak - 2012 - Logic Journal of the IGPL 20 (4):677-688.
Secure Mobile Cloud Computing for Sensitive Data: Teacher Services for Palestinian Higher Education Institutions.Ssa Naser, Ma Ghosh & Rr Atallah - forthcoming - International Journal of Advanced Science and Technology.
A Response to Responsibility of and Trust in ISPs by Raphael Cohen-Almagor.Michael R. Nelson - 2010 - Knowledge, Technology & Policy 23 (3):403-407.
Added to PP
Historical graph of downloads