Book description
Delivering AI projects and building an AI organization are two big challenges for enterprises. They determine whether companies succeed or fail in establishing AI and integrating AI into their digital transformation. This book addresses both challenges by bringing together organizational and service design concepts, project management, and testing and quality assurance. It covers crucial, often-overlooked topics such as MLOps, IT risk, security and compliance, and AI ethics. In particular, the book shows how to shape AI projects and the capabilities of an AI line organization in an enterprise. It elaborates critical deliverables and milestones, helping you turn your vision into a corporate reality by efficiently managing and setting goals for data scientists, data engineers, and other IT specialists.
For those new to AI or AI in an enterprise setting you will find this book a systematic introduction to the field. You will get the necessary know-how to collaborate with and lead AI specialists and guide them to success. Time-pressured readers will benefit from self-contained sections explaining key topics and providing illustrations for fostering discussions in their next team, project, or management meeting. Reading this book helps you to better sell the business benefits from your AI initiatives and build your skills around scoping and delivering AI projects. You will be better able to work through critical aspects such as quality assurance, security, and ethics when building AI solutions in your organization.
- Clarify the benefits of your AI initiatives and sell them to senior managers
- Scope and manage AI projects in your organization
- Set up quality assurance and testing for AI models and their integration in complex software solutions
- Shape and manage an AI delivery organization, thereby mastering ML Ops
- Understand and formulate requirements for the underlying data management infrastructure
- Handle AI-related IT security, compliance, and risk topics and understand relevant AI ethics aspects
Experienced IT managers managing data scientists or who want to get involved in managing AI projects, data scientists and other tech professionals who want to progress toward taking on leadership roles in their organization’s AI initiatives and who aim to structure AI projects and AI organizations, any line manager and project manager involved in AI projects or in collaborating with AI teams
Table of contents
- Cover
- Front Matter
- 1. Why Organizations Invest in AI
- 2. Structuring and Delivering AI Projects
- 3. Quality Assurance in and for AI
- 4. Ethics, Regulations, and Explainability
- 5. Building an AI Delivery Organization
- 6. AI and Data Management Architectures
- 7. Securing and Protecting AI Environments
- 8. Looking Forward
- Back Matter
Product information
- Title: Managing AI in the Enterprise: Succeeding with AI Projects and MLOps to Build Sustainable AI Organizations
- Author(s):
- Release date: January 2022
- Publisher(s): Apress
- ISBN: 9781484278246
You might also like
book
Artificial Intelligence Business: How you can profit from AI
The concise guide to artificial intelligence for business people and commercially oriented data scientists Key Features …
book
Product Management for AI
The increasing push to develop products that integrate AI puts the intersection of AI and product …
book
The AI Product Manager's Handbook
Master the skills required to become an AI product manager and drive the successful development and …
book
Designing Autonomous AI
Early rules-based artificial intelligence demonstrated intriguing decision-making capabilities but lacked perception and didn't learn. AI today, …