15 results on 'LN cat08778a'
Search Results
2. Empowering artificial intelligence through machine learning : new advances and applications.
- Author
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Raju, Nedunchezhian, Rajalakshmi, M., Goyal, Dinesh, Balamurugan, S., Prof, Elngar, Ahmed A., and Keswani, Bright
- Subjects
Machine learning ,Artificial intelligence -- Industrial applications - Abstract
Summary: "This new volume, Empowering Artificial Intelligence Through Machine Learning: New Advances and Applications, discusses various new applications of machine learning, a subset of the field of artificial intelligence. Artificial intelligence is considered to be the next big-game changer in research and technology. The volume looks at how computing has enabled machines to learn, making machines and tools become smarter in many sectors, including science and engineering, healthcare, finance, education, gaming, security, and even agriculture, plus many more areas. Topics include techniques and methods in artificial intelligence for making machines intelligent, machine learning in healthcare, using machine learning for credit card fraud detection, using artificial intelligence in education using gaming and automatization with courses and outcomes mapping, and much more. The book will be valuable for professionals, faculty, and students in electronics and communication engineering, telecommunication engineering, network engineering, computer science and information technology"-- Provided by publisher.
- Published
- 2022
3. Agriculture 5.0 : artificial intelligence, IOT and machine learning.
- Author
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Ahmad, Latief and Nabi, Firasath
- Subjects
Artificial intelligence--Agriculture applications ,Technology agriculture ,Machine learning - Abstract
Summary: "Agriculture 5.0: Artificial Intelligence, IoT & Machine Learning provides an interdisciplinary, integrative overview of latest development in the domain of smart farming. It shows how the traditional farming practices are being enhanced and modified by automation and introduction of modern scalable technological solutions that cut down on risks, enhance sustainability, and deliver predictive decisions to the grower, in order to make agriculture more productive. An elaborative approach has been used to highlight the applicability and adoption of key technologies and techniques such WSN, IoT, AI and ML in agronomic activities ranging from collection of information, analysing and drawing meaningful insights from the information which is more accurate, timely and reliable.It synthesizes interdisciplinary theory, concepts, definitions, models and findings involved in complex global sustainability problem-solving, making it an essential guide and reference. It includes real-world examples and applications making the book accessible to a broader interdisciplinary readership. This book clarifies hoe the birth of smart and intelligent agriculture is being nurtured and driven by the deployment of tiny sensors or AI/ML enabled UAV's or low powered Internet of Things setups for the sensing, monitoring, collection, processing and storing of the information over the cloud platforms. This book is ideal for researchers, academics, post-graduate students and practitioners of agricultural universities, who want to embrace new agricultural technologies for Determination of site-specific crop requirements, future farming strategies related to controlling of chemical sprays, yield, price assessments with the help of AI/ML driven intelligent decision support systems and use of agri-robots for sowing and harvesting. The book will be covering and exploring the applications and some case studies of each technology, that have heavily made impact as grand successes. The main aim of the book is to give the readers immense insights into the impact and scope of WSN, IoT, AI and ML in the growth of intelligent digital farming and Agriculture revolution 5.0.The book also focuses on feasibility of precision farming and the problems faced during adoption of precision farming techniques, its potential in India and various policy measures taken all over the world. The reader can find a description of different decision support tools like crop simulation models, their types, and application in PA. Features: Detailed description of the latest tools and technologies available for the Agriculture 5.0. Elaborative information for different type of hardware, platforms and machine learning techniques for use in smart farming. Elucidates various types of predictive modeling techniques available for intelligent and accurate agricultural decision making from real time collected information for site specific precision farming. Information about different type of regulations and policies made by all over the world for the motivation farmers and innovators to invest and adopt the AI and ML enabled tools and farming systems for sustainable production"-- Provided by publisher.
- Published
- 2021
4. Machine learning for healthcare : handling and managing data.
- Author
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Agrawal, Rashmi, Chatterjee, Jyotir Moy, Kumar, Abhishek, Rathore, Pramod Singh, and Le, Dac-Nhuong
- Subjects
Machine Learning ,Bio informatics ,Computers--Machine theory - Abstract
Summary: "This book will provide in depth information about handling and managing healthcare data by Machine Learning methods. It will express the long-standing challenges in healthcare informatics and provide rational orientations on how to deal with them"-- Provided by publisher.
- Published
- 2020
5. Text mining with machine learning : principles and techniques.
- Author
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Zizka, Jan, Darena, Frantisek, and Svoboda, Arnost
- Subjects
Machine learning ,Computational linguistics ,Semantics -- Data processing - Abstract
Summary: "This book provides a perspective on the application of machine learning-based methods in knowledge discovery from natural languages texts. By analysing various data sets, conclusions, which are not normally evident, emerge and can be used for various purposes and applications. The book provides explanations of principles of time-proven machine learning algorithms applied in text mining together with step-by-step demonstrations of how to reveal the semantic contents in real-world datasets using the popular R-language with its implemented machine learning algorithms. The book is not only aimed at IT specialists, but is meant for a wider audience that needs to process big sets of text documents and has basic knowledge of the subject, e.g. e-mail service providers, online shoppers, librarians, etc"-- Provided by publisher.
- Published
- 2019
6. Artificial Intelligence : Fundamentals and Applications.
- Author
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Bhargava, Cherry and Sharma, Pradeep Kumar
- Subjects
Artificial intelligence ,Machine learning ,Applications of artificial intelligence - Abstract
Summary: This comprehensive reference text discusses the fundamental concepts of artificial intelligence and its applications in a single volume. Artificial Intelligence: Fundamentals and Applications presents a detailed discussion of basic aspects and ethics in the field of artificial intelligence and its applications in areas, including electronic devices and systems, consumer electronics, automobile engineering, manufacturing, robotics and automation, agriculture, banking, and predictive analysis. Aimed at senior undergraduate and graduate students in the field of electrical engineering, electronics engineering, manufacturing engineering, pharmacy, and healthcare, this text: Discusses advances in artificial intelligence and its applications. Presents the predictive analysis and data analysis using artificial intelligence. Covers the algorithms and pseudo-codes for different domains. Discusses the latest development of artificial intelligence in the field of practical speech recognition, machine translation, autonomous vehicles, and household robotics. Covers the applications of artificial intelligence in fields, including pharmacy and healthcare, electronic devices and systems, manufacturing, consumer electronics, and robotics.
- Published
- 2018
7. Numerical Algorithms: Methods for Computer Vision, Machine Learning and Graphic.
- Author
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Solomon, Justin
- Subjects
Machine learning ,Computer algorithms ,Computer vision ,Image processing - Abstract
Summary: Numerical Algorithms: Methods for Computer Vision, Machine Learning, and Graphics presents a new approach to numerical analysis for modern computer scientists. Using examples from a broad base of computational tasks, including data processing, computational photography, and animation, the textbook introduces numerical modeling and algorithmic desig
- Published
- 2015
8. Machine learning : an algorithmic perspective.
- Author
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Marsland, Stephen
- Subjects
Machine learning ,Algorithms - Published
- 2015
9. Computational trust models and machine learning.
- Author
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Liu, Xin, Datta, Anwitaman, and Lim, Ee-Peng
- Subjects
Computational intelligence ,Machine learning ,Truthfulness and falsehood -- Mathematical models ,COMPUTERS -- General ,Electronic books - Abstract
Summary: "This book provides an introduction to computational trust models from a machine learning perspective. After reviewing traditional computational trust models, it discusses a new trend of applying formerly unused machine learning methodologies, such as supervised learning. The application of various learning algorithms, such as linear regression, matrix decomposition, and decision trees, illustrates how to translate the trust modeling problem into a (supervised) learning problem. The book also shows how novel machine learning techniques can improve the accuracy of trust assessment compared to traditional approaches"-- Provided by publisher.
- Published
- 2015
10. AI Meets BI : Artificial Intelligence and Business Intelligence.
- Author
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Lakshman, Bulusu and Abellera, Rosendo
- Subjects
Artificial Intelligence ,Business Intelligence ,Machine learning ,Deep learning - Abstract
Summary: With the emergence of Artificial Intelligence (AI) in the business world, a new era of Business Intelligence (BI) has been ushered in to create real-world business solutions using analytics. BI developers and practitioners now have tools and technologies to create systems and solutions to guide effective decision making. Decisions can be made on the basis of more reliable and accurate information and intelligence, which can lead to valuable, actionable insights for business. Previously, BI professionals were stymied by bad or incomplete data, poorly architected solutions, or even just outright incapable systems or resources. With the advent of AI, BI has new possibilities for effectiveness. This is a long-awaited phase for practitioners and developers and, moreover, for executives and leaders relying on knowledgeable and intelligent decision making for their organizations. Beginning with an outline of the traditional methods for implementing BI in the enterprise and how BI has evolved into using self-service analytics, data discovery, and most recently AI, AI Meets BI first lays out the three typical architectures of the first, second, and third generations of BI. It then takes an in-depth look at various types of analytics and highlights how each of these can be implemented using AI-enabled algorithms and deep learning models. The crux of the book is four industry use cases. They describe how an enterprise can access, assess, and perform analytics on data by way of discovering data, defining key metrics that enable the same, defining governance rules, and activating metadata for AI/ML recommendations. Explaining the implementation specifics of each of these four use cases by way of using various AI-enabled machine learning and deep learning algorithms, this book provides complete code for each of the implementations, along with the output of the code, supplemented by visuals that aid in BI-enabled decision making. Concluding with a brief discussion of the cognitive computing aspects of AI, the book looks at future trends, including augmented analytics, automated and autonomous BI, and security and governance of AI-powered BI.
- Published
- 2013
11. Machine learning and knowledge discovery for engineering systems health management.
- Author
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Srivastava, Ashok N. and Han, Jiawei
- Subjects
System failures (Engineering) -- Prevention -- Data processing ,Machine learning ,COMPUTERS / Database Management / Data Mining ,TECHNOLOGY & ENGINEERING / Electrical ,TECHNOLOGY & ENGINEERING / Engineering (General) - Abstract
Summary: "Systems health is a broad multidisciplinary field of study that generates huge amounts of data and thus is an extremely appropriate forum in which to utilize machine learning and knowledge discovery techniques. This book explores the use of machine learning and knowledge discovery in systems health research. It covers data mining and text mining algorithms, anomaly detection, diagnostic and prognostic systems, and applications to engineering systems. Featuring contributions from leading experts, the book is the first to explore this emerging research area"-- Provided by publisher.
- Published
- 2012
12. A first course in machine learning.
- Author
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Rogers, Simon and Girolami, Mark
- Subjects
Machine learning ,BUSINESS & ECONOMICS / Statistics ,COMPUTERS / General ,COMPUTERS / Database Management / Data Mining - Abstract
Summary: "Machine Learning is rapidly becoming one of the most important areas of general practice, research and development activity within Computing Sci- ence. This is re ected in the scale of the academic research area devoted to the subject and the active recruitment of Machine Learning specialists by major international banks and nancial institutions as well as companies such as Microsoft, Google, Yahoo and Amazon. This growth can be partly explained by the increase in the quantity and diversity of measurements we are able to make of the world. A particularly fascinating example arises from the wave of new biological measurement technologies that have preceded the sequencing of the first genomes. It is now possible to measure the detailed molecular state of an organism in manners that would have been hard to imagine only a short time ago. Such measurements go far beyond our understanding of these organisms and Machine Learning techniques have been heavily involved in the distillation of useful structure from them. This book is based on material taught on a Machine Learning course in the School of Computing Science at the University of Glasgow, UK. The course, presented to nal year undergraduates and taught postgraduates, is made up of 20 hour-long lectures and 10 hour-long laboratory sessions. In such a short teaching period, it is impossible to cover more than a small fraction of the material that now comes under the banner of Machine Learning. Our inten- tion when teaching this course therefore, is to present the core mathematical and statistical techniques required to understand some of the most popular Machine Learning algorithms and then present a few of these algorithms that span the main problem areas within Machine Learning: classi cation, clus- tering"-- Provided by publisher.
- Published
- 2012
13. Machine learning forensics for law enforcement, security, and intelligence.
- Author
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Mena, Jesus
- Subjects
Forensic sciences -- Data processing ,Computer crimes -- Investigation ,Computer security ,Machine learning ,LAW -- Forensic Science - Abstract
Summary: Increasingly, crimes and fraud are digital in nature, occurring at breakneck speed and encompassing large volumes of data. To combat this unlawful activity, knowledge about the use of machine learning technology and software is critical. Machine Learning Forensics for Law Enforcement, Security, and Intelligence integrates an assortment of deductive and instructive tools, techniques, and technologies to arm professionals with the tools they need to be prepared and stay ahead of the game. -- Provided by publisher
- Published
- 2011
14. Applied genetic programming and machine learning.
- Author
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Iba, Hitoshi, Paul, Topon Kumar, and Hasegawa, Yoshihiko
- Subjects
Genetic programming (Computer science) ,Machine learning - Abstract
Summary: What do financial data prediction, day-trading rule development, and bio-marker selection have in common? They are just a few of the tasks that could potentially be resolved with genetic programming and machine learning techniques. Written by leaders in this field, Applied Genetic Programming and Machine Learning delineates the extension of Genetic Programming (GP) for practical applications. Reflecting rapidly developing concepts and emerging paradigms, this book outlines how to use machine learning techniques, make learning operators that efficiently sample a search space, navigate the searc.
- Published
- 2010
15. Introduction to machine learning and bioinformatics.
- Author
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Datta, Sujay, Perkins, Theodore, and Michailidis, George
- Subjects
Bioinformatics ,Machine learning - Abstract
Summary: Shedding light on aspects of both machine learning and bioinformatics, this text shows how the innovative tools and techniques of machine learning help extract knowledge from the deluge of information produced by today's biological experiments.
- Published
- 2008
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