Integrating Machine Learning Techniques for Big Data Analytics
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Abstract
The accumulation rate of data is growing tremendously than ever before. These datasets often described as Big Data as they are quite large and complex and unable to process by traditional applications. Analyzing Big Data computationally reveals many useful and interesting patterns, trends or associations. Extraction of meaningful information from massive amount of data is very much useful in many sectors. In the field of Artificial Intelligence, Machine learning is a prominent area used to uncover the hidden patterns from complex and huge datasets. This paper discussed the role of machine learning techniques in Big Data analytics and how the machine learning algorithms helps to explore massive datasets that leads towards better decision making process and prediction. It also discussed the challenges and technologies available for integrating machine learning with Big Data.
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