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A Framework for Analysing Unstructured Data in Computing Devices
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In recent years all the real-world digital equipment are generating enormous amount of data because of technological development. Those data are unstructured and hard to analyse. This framework tool is developed to view the data on different formats depending on the business needs by the customers or end users. Data forms are difficult to interpret manually. Structuring data is needed for the today business world. This system deals with files alone, as there are many problems in unstructured data. Manual listing and maintaining is hard as mistakenly the files are deleted and sometimes lost by the users. A tool was framed for analyzing file properties and showing our analysed report to the user which means they can make decisions based on their own business standards to improve the performance of hard drives. This framework will render different unstructured data analyses and provide some visual representation.
Keywords
Unstructured Data, Files, Analysis.
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