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Mining of Massive Datasets by Anand Rajaraman, Jeffrey D. Ullman

Small book cover: Mining of Massive Datasets

Mining of Massive Datasets
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Publisher: Stanford University
Number of pages: 340

Description:
At the highest level of description, this book is about data mining. However, it focuses on data mining of very large amounts of data, that is, data so large it does not fit in main memory. Because of the emphasis on size, many of our examples are about the Web or data derived from the Web.

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