【摘 要】
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Effective and efficient treatment of massive data sets has become increasing important in this age of information explosion.Most machine learning and data a
【机 构】
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Univ.of California Berkeley
论文部分内容阅读
Effective and efficient treatment of massive data sets has become increasing important in this age of information explosion.Most machine learning and data analysis algorithms for massive data sets require huge amounts of computational time.
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