Volume-Based Data Representation of Big Data Analysis

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Abstract:

Over the past decade, Big Data has been becoming a great research hotspot because of continuous implementation of advanced techniques, burgeoning interdisciplinary cooperation and varying user requirements. Because of its well-known four V-characters, the associated applications always suffer from low efficiency and hard to manage. Our research summarized the common issues of Big Data-based applications, and set improving data formatting and representation performances as the research objectives. In this paper, a novel data presentation strategy was built via devising volume-based representation to facilitate complicated processing work and overcome limitations of data manipulation tasks. For improving information processing efficiency, this design served as a data carrier which enables flexible implementations of data processing algorithms. Besides, its inherent spatial information not only supports direct operations, but shows the feasibility of information integration in the future work.

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Periodical:

Advanced Materials Research (Volumes 798-799)

Pages:

680-684

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Online since:

September 2013

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