Skip to content
You are not logged in |Login  
     
Limit search to available items
Record:   Prev Next
Resources
More Information
Bestseller
BestsellerE-book
Author Addo, Archie, author.

Title Artificial intelligence design and solution for risk and security / Archie Addo, Srini Centhala, and Muthu Shanmugam.

Publication Info. New York, New York (222 East 46th Street, New York, NY 10017) : Business Expert Press, 2020.

Item Status

Edition First edition.
Description 1 online resource (110 pages) : illustrations (some color).
Physical Medium polychrome
Description text file
Series Business law and corporate risk management collection, 2333-6730
Business law and corporate risk management collection,. 2333-6730
Bibliography Includes bibliographical references (pages 101-104) and index.
Contents Chapter 1. Introduction -- Chapter 2. Artificial intelligence/machine learning project architecture and design -- Chapter 3. Knowledge base -- Chapter 4. Root cause analytics and analysis -- Chapter 5. Recommendation engine -- Chapter 6. Functional domain -- Chapter 7. Futuristic artificial intelligence -- Chapter 8. Conclusion.
Access Access restricted to authorized users and institutions.
Summary As we head into the ever-more globalized world of the 2020's, the critical role that logistics planning and operations plays in assuring a firm's financial well-being escalates in importance almost daily. Furthermore, the role of analytics in guiding both logistics planning and operational activities has dramatically spiked in the last decade, and this exponential growth shows no sign of slackening. As the phenomenon of Big Data has taken hold in the private sector, firms which as recently as ten years ago devoted minimal resources to large scale data mining and analytics have reversed course, and invested heavily in data analytics. In this environment, logistics professionals must have at their disposal, and must understand how to utilize a broad array of analytic techniques and approaches to logistics decision-making. Effective use of analytics requires a strong understanding of both fundamental and advanced logistics decision-making techniques and methodologies. Further, logistics professionals must organize and view these analytics-based decision support tools through well-structured planning frameworks. In this book, based on twenty-five plus years of logistics industry practice, we illustrate and explain a wide range of practical logistics strategies and analytic techniques to facilitate decision-making across functions such as manufacturing, warehousing, transportation and inventory management. Further we also describe how to organize these analytics-based tools and strategies through logistics frameworks that span strategic, tactical and operational planning and scheduling decisions. This book is intended for logistics professionals to use as a reference document that offers ideas and guidance for addressing specific logistics management decisions and challenges. In particular, this book provides explanatory and "how to implement" guidance on foundational analytics that logistics professionals can employ to generate practical insights to facilitate their daily and longer-term logistics management activities. This book can also serve as a valuable resource or secondary text for graduate and advanced undergraduate students. Students will develop an understanding of leading edge, real world approaches for logistics planning and scheduling, decision support, performance measurement and other key logistics activities.
Form Also available in print.
System Details Mode of access: World Wide Web.
System requirements: Adobe Acrobat reader.
Provenance Purchased with the Phippen Library Fund.
Subject Artificial intelligence.
Artificial intelligence.
Risk management.
Risk management.
Business logistics.
Business logistics.
Management information systems.
Management information systems.
Indexed Term Project management.
Construction management.
Program management.
Skills development.
Risk, security.
Artificial intelligence.
Analytics.
Machine learning.
Mitigation.
Performance review.
Data science, and business intelligence.
Genre/Form Electronic books.
Added Author Centhala, Srini, author.
Shanmugam, Muthu, author.
Other Form: Print version: 9781951527488
ISBN 9781951527495 e-book
9781951527488 print