17Unsupervised Learning in Accordance With New Aspects of Artificial Intelligence

Riya Sharma, Komal Saxena and Ajay Rana*

Amity Institute of Information Technology, Amity University U.P., Noida, India

Abstract

Artificial Intelligence (AI) has evolved and there are many new generations that are taking place for the management of data and intelligence learning. In this chapter, we will discuss the various methods that keep evolving as a major concern in the place of unsupervised learning for the AI. Being an underlying model or the hidden structure for the distribution in the data of unsupervised learning is that any one can only have input data formed up with no corresponding output variables. Being a machine learning task, this type of learning has numerous types of hidden patterns or the underlying structures which combats to give input data in order to learn about the data more rigorously. Later knowing about the applications, you will be going to see how the edge cutting open source AI technologies are evolving that can be used to take out the machine learning projects to the next level. This involves a number of lists of the different open source machine learning platforms which have the ability to use the unsupervised data as a framework for the machine learning. Some of them are as listed which you will have more brief view later on, these are TensorFlow, Keras, Scikit-learn, Microsoft Cognitive Toolkit, etc. Since unsupervised learning is also used to draw inferences ...

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