CLOUDDB 2010 - Second International Workshop on Cloud Data Management
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Website http://www.clouddb.org/CloudDB10/ |
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Category CLOUDDB 2010
Deadline: June 30, 2010 | Date: October 30, 2010
Venue/Country: Toronto, Canada
Updated: 2010-06-20 15:31:49 (GMT+9)
Call For Papers - CFP
Technology advances in communications, computation, and storage result in huge collections of data, capturing information of value to business, science, government, and society. Data volumes are currently growing faster than Moore’s law. Looking forward, the exponential growth is not likely to stop. The huge size of data is imposing big challenges on infrastructure for data storagewhich can achieve economical scaling to even more than Petabyte, massively parallel query execution, and facilities for analytical processing. Meanwhile, the rise of large data centers and cluster computers has created a new business model, cloud-based computing, where businesses and individuals can rent storage and computing capacity, rather than making the large capitalinvestments needed to construct and provision large-scale computer installations. Cloud-based data storage and management is a rapidly expanding business. Whilst these emerging services have reduced the cost of data storage and delivery by several orders of magnitude, there is significant complexity involved in ensuring large data service can scale when needed to ensure consistent and reliable operation under peak loads. Cloud-based environment has the technical requirement to manage data center virtualization, lowers cost and boosts reliability by consolidating systems on the cloud. In addition, in an ideal world, the cloud systems should begeographically dispersed to reduce their vulnerability due to earthquakes and other catastrophes, which increase technical challenge on a great level of distributed data interoperability and mobility.[Top]2. Scope and novelty of the workshopThis is the second workshop in CIKM conference that addresses the challenge of large data management based on cloud computing infrastructure. This workshop will bring together researchers and practitioners in cloud computing and data-intensive system design, programming, parallel algorithms, data management, scientific applications, and information-based applications to maximize performance, minimize cost and improve the scale of their endeavors.This workshop welcomes papers that address fundamental research issues in this challenging area, with emphasis on personal and social applications of cloud-based data management. We also encourage papers to report on system level research related to cloud computing and data-intensive computing. A number of invited papers will also be solicited.Topics of interest include, but are not limited to* cloud computing infrastructure for big data storage and computing;* Cloud privacy and security;* Cloud-based system designs including architecture, scalability, economy, consistence-availability-partition (CAP), and security;* Services discovery and content distribution in cloud computing infrastructures;* cross-platform interoperability;* Query processing and indexing in cloud computing systems;* Access control in cloud computing systems;* Service-level agreements, business models, and pricing policies;* novel data-intensive computing applications;* language for massively parallel query execution;* data intensive scalable computing;* content distribution systems for big data;* data management within and across data centers;* large scale analytical methodology and algorithm
Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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