Date of Publication :9th March 2018
Abstract: Enormous information has infiltrated into different enterprises and business works, and become significant components of generation in the worldwide economy. In the huge information innovation framework, huge information assortment is the premise. The capacity, examination, combination and representation of unstructured information and semi structured information will turn into a significant focal point of the huge information development. Conventional organized information will never again be the center of huge information. In light of the existence cycle hypothesis, utilizing new advanced innovation, for example, procurement, handling, stockpiling, association and copyright security, bunches of high simultaneousness recovery and dynamic planning, keen advanced presentation , coal mineshaft industry data information can be gathered and incorporated, to acknowledge unified administration, bound together recovery and joint presentation of data assets, to give specialized methods and reference to the computerized development of heterogeneous coal mineshaft data information by methods for large information thinking
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