A Comprehensive Analysis Of The Tools And Techniques Of Deep Learning And Natural Language Processing Developing Intelligence Machines
Tejas Thakral
Vol. 8, Issue 1, Jan-Dec 2022
Page Number: 214 - 226
Abstract:
Throughout the industry, intelligent machines are executing a wide range of tasks that decrease human labor, lower the rate of error, and boost productivity and accuracy. Deep learning and natural language processing are essential components of artificial intelligence, which serves as the foundation for the creation of intelligent machines. This study introduces a novel viewpoint on intelligent machines in daily life, emphasizing the significance of comprehending natural language and producing machine-level natural language for intelligent machines. We also provide a summary of the recurrent and concurrent neural network models for deep learning.
We also go over the importance of sentiment analysis with natural language processing and the decision-making and problem-solving capabilities of robots.
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