Overview
- Highlights the current limitations of AI by comparing AI with human-oriented cognitive capabilities
- Provides actionable guidance and best practices on how to successfully deploy sustainable AI solutions
- Is holistic and unbiased; covers technical capabilities and opportunities, but also challenges, risks, and limits
Access this book
Tax calculation will be finalised at checkout
Other ways to access
Table of contents (15 chapters)
-
Getting Started
-
AI in Context
-
AI Limitations and Future Challenges
Keywords
- AI
- AI and Blockchain
- AI and Quantum Programming
- Artificial Intelligence in IT
- Artificial Intelligence (AI) challenges and opportunities
- Machine Learning
- Deep Learning
- AI information architecture
- Scoring of AI/ML
- AI limitations
- AI architecture
- AI DevOps
- AI for master data
- AI research
- Governance and AI solutions
- Eberhard Hechler
- Martin Oberhofer
- Thomas Schaeck
About this book
Deploying AI in the Enterprise provides guidance and methods to effectively deploy and operationalize sustainable AI solutions. You will learn about deployment challenges, such as AI operationalization issues and roadblocks when it comes to turning insight into actionable predictions. You also will learn how to recognize the key components of AI information architecture, and its role in enabling successful and sustainable AI deployments.And you will come away with an understanding of how to effectively leverage AI to augment usage of core information in Master Data Management (MDM) solutions.
What You Will Learn
- Understand the most important AI concepts, including machine learning and deep learning
- Follow best practices and methods to successfully deploy and operationalize AI solutions
- Identify critical components of AI information architecture and the importance of having a plan
- Integrate AI into existing initiatives within an organization
- Recognize current limitations of AI, and how this could impact your business
- Build awareness about important and timely AI research
- Adjust your mindset to consider AI from a holistic standpoint
- Get acquainted with AI opportunities that exist in various industries
Who This Book Is For
IT pros, data scientists, and architects who need to address deployment and operational challenges related to AI and need a comprehensive overview on how AI impacts other business critical areas. It is not an introduction, but is for the reader who is looking for examples on how to leverage data to derive actionable insight and predictions, and needs to understand and factor in the current risks and limitations of AI and what it means in an industry-relevant context.
Authors and Affiliations
About the authors
Martin Oberhofer is an IBM Distinguished Engineer and Executive Architect. He is a technologist and engineering leader with deep expertise in master data management, data governance, data integration, metadata and reference data management, artificial intelligence, and machine learning. He is accomplished at translating customer needs into software solutions, and works collaboratively with globally distributed development, design, and management teams. He guides development teams using Agile and DevOps software development methods. He is an elected member of the IBM Academy of Technology and the TEC CR. He is a certified IBM Master Inventor with over 100 granted patents and numerous publications, including four books.
Thomas Schaeck is an IBM Distinguished Engineer at IBM Data and AI, leading Watson Studio on IBM Cloud (Cloud Pak for Data) Desktop and integration with other IBM offerings. Previously, he led architecture and technical strategy for IBM Connections, WebSphere Portal, and IBM OpenPages. He also led architecture and technical direction for WebSphere Portal Platform and development of the WebSphere Portal Foundation, initiated and led the portal standards Java Portlet API and OASIS WSRP and Apache open source reference implementations, and initiated and led the Web 2.0 initiative for WebSphere Portal.
​
Bibliographic Information
Book Title: Deploying AI in the Enterprise
Book Subtitle: IT Approaches for Design, DevOps, Governance, Change Management, Blockchain, and Quantum Computing
Authors: Eberhard Hechler, Martin Oberhofer, Thomas Schaeck
DOI: https://doi.org/10.1007/978-1-4842-6206-1
Publisher: Apress Berkeley, CA
eBook Packages: Professional and Applied Computing, Apress Access Books, Professional and Applied Computing (R0)
Copyright Information: Eberhard Hechler, Martin Oberhofer, Thomas Schaeck 2020
Softcover ISBN: 978-1-4842-6205-4Published: 26 September 2020
eBook ISBN: 978-1-4842-6206-1Published: 25 September 2020
Edition Number: 1
Number of Pages: XXVI, 331
Number of Illustrations: 87 b/w illustrations
Topics: Artificial Intelligence, Machine Learning, Professional Computing, Quantum Computing