Machine Learning: Algorithms, Models, and Applications
- URL: http://arxiv.org/abs/2201.01943v1
- Date: Thu, 6 Jan 2022 07:14:02 GMT
- Title: Machine Learning: Algorithms, Models, and Applications
- Authors: Jaydip Sen, Sidra Mehtab, Rajdeep Sen, Abhishek Dutta, Pooja Kherwa,
Saheel Ahmed, Pranay Berry, Sahil Khurana, Sonali Singh, David W. W Cadotte,
David W. Anderson, Kalum J. Ost, Racheal S. Akinbo, Oladunni A. Daramola, and
Bongs Lainjo
- Abstract summary: Current volume presents a few innovative research works and their applications in real world.
The chapters in the book illustrate how machine learning and deep learning algorithms and models are designed, optimized, and deployed.
The volume will be useful for advanced graduate and doctoral students, researchers, faculty members of universities, practicing data scientists and data engineers, professionals, and consultants working on the broad areas of machine learning, deep learning, and artificial intelligence.
- Score: 0.8503607507358351
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Recent times are witnessing rapid development in machine learning algorithm
systems, especially in reinforcement learning, natural language processing,
computer and robot vision, image processing, speech, and emotional processing
and understanding. In tune with the increasing importance and relevance of
machine learning models, algorithms, and their applications, and with the
emergence of more innovative uses cases of deep learning and artificial
intelligence, the current volume presents a few innovative research works and
their applications in real world, such as stock trading, medical and healthcare
systems, and software automation. The chapters in the book illustrate how
machine learning and deep learning algorithms and models are designed,
optimized, and deployed. The volume will be useful for advanced graduate and
doctoral students, researchers, faculty members of universities, practicing
data scientists and data engineers, professionals, and consultants working on
the broad areas of machine learning, deep learning, and artificial
intelligence.
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