Machine Learning : Survey
DOI:
https://doi.org/10.26438/ijcse/v7i2.453457Keywords:
Machine Learning, Big Data, Data Mining, Knowledge DiscoveryAbstract
In this era, Machine Learning (ML) is persistently releasing its power in extensive variety of applications. It has been observed in previous years partly owing from advert of massive data. Huge information empowers machine learning calculations to reveal all the designs and make more precise predictions than ever before. In another way, machine learning presents challenges in field of data mining and big data. In this paper, we discussed what machine learning is and how it is related with big data. Here, we have introduced some phases of ML and the tools used to perform accurate prediction and how it is helpful in future tasks. This paper also has been discussed the opportunities and challenges associated with ML.
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