Machine Learning and Statistical Methods for Data Mining
Machine learning is a part of data science which majorly focuses on writing algorithms in a way such that machines (Computers) are able to learn on their own and use the learning’s to tell about new dataset whenever it comes in. Machine learning uses the power of statistics and learns from the training dataset. It is the interesting data-driven disciplines that help organizations make better decisions and positively affect the growth of any business.
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Machine Learning and Statistical Methods for Data Mining Conference Speakers
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