Optimizing Data-to-Learning-to-Action

The Modern Approach to Continuous Performance Improvement for Businesses

  • Steven Flinn

Table of contents

  1. Front Matter
    Pages i-xix
  2. Steven Flinn
    Pages 1-15
  3. Steven Flinn
    Pages 17-28
  4. Steven Flinn
    Pages 29-47
  5. Steven Flinn
    Pages 49-60
  6. Steven Flinn
    Pages 61-77
  7. Steven Flinn
    Pages 79-106
  8. Steven Flinn
    Pages 107-120
  9. Steven Flinn
    Pages 121-134
  10. Steven Flinn
    Pages 177-185
  11. Back Matter
    Pages 187-191

About this book

Introduction

Apply a powerful new approach and method that ensures continuous performance improvement for your business. You will learn how to determine and value the people, process, and technology-based solutions that will optimize your organization’s data-to-learning-to-action processes.

This book describes in detail how to holistically optimize the chain of activities that span from data to learning to decisions to actions, an imperative for achieving outstanding performance in today’s business environment. Adapting and integrating insights from decision science, constraint theory, and process improvement, the book provides a method that is clear, effective, and can be applied to nearly every business function and sector.

You will learn how to systematically work backwards from decisions to data, estimate the flow of value along the chain, and identify the inevitable value bottlenecks. And, importantly, you will learn techniques for quantifying the value that can be attained by successfully addressing the bottlenecks, providing the credible support needed to make the right level of investments at the right place and at just the right time.

In today’s dynamic environment, with its never-ending stream of new, disruptive technologies that executives must consider (e.g., cloud computing, Internet of Things, AI/machine learning, business intelligence, enterprise social, etc., along with the associated big data generated), author Steven Flinn provides the comprehensive approach that is needed for making effective decisions about these technologies, underpinned by credibly quantified value.

What You’ll Learn:

  • Understand data-to-learning-to-action processes and their fundamental elements
  • Discover the highest leverage data-to-learning-to-action processes in your organization
  • Identify the key decisions that are associated with a data-to-learning-to-action process
  • Know why it’s NOT all about data, but it IS all about decisions and learning
  • Determine the value upside of enhanced learning that can improve decisions
  • Work backwards from the decisions to determine the value constraints in data-to-learning-to-action processes
  • Evaluate people, process, and technology-based solution options to address the constraints
  • Quantify the expected value of each of the solution options and prioritize accordingly
  • Implement, measure, and continuously improve by addressing the next constraints on value


Keywords

Business Performance Improvement Process Improvement BPR Enterprise Software Enterprise IT Architecture IT Investment Decision Science Quantifying Learning Value Value of Learning Value Drivers Data to Action Business and IT Alignment Data Science Machine Learning

Authors and affiliations

  • Steven Flinn
    • 1
  1. 1.Brenham, TXBrenhamUSA

Bibliographic information

  • DOI https://doi.org/10.1007/978-1-4842-3531-7
  • Copyright Information Steven Flinn 2018
  • Publisher Name Apress, Berkeley, CA
  • eBook Packages Professional and Applied Computing
  • Print ISBN 978-1-4842-3530-0
  • Online ISBN 978-1-4842-3531-7
  • About this book
Industry Sectors
Pharma
Automotive
Chemical Manufacturing
Biotechnology
Electronics
Telecommunications
Aerospace