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title, tags, authors
title
tags
authors
How to Measure Anything in Project Management
authorship/other
type/media/book
Douglas W. Hubbard
Dr. Alexander Budzier
Andreas Bang Leed
How to Measure Anything in Project Management
Foreword
Preface
Acknowledgments
About the Authors
Chapter 1 --- A World-scale Risk and a World-scale Opportunity
The Size of Projects
The Size of Project Problems
Efforts to Fix Projects: The Emergence of Project Management
A Path Forward: The Meta-Project
Notes
Chapter 2 --- A Measurement Primer for Project Management
The Concept of Measurement
A Definition of Measurement
Definition
Measurement and Probabilities for Practical Decision-making
Are Scales Really Measurements?
The Object of Measurement
What Do You See When You See More of It?
Why Do You Care?
The Methods of Measurement
Statistical Significance: What's the Significance?
Small Samples Tell You More Than You Think
The Rule of Five
Other Sources of Measurement Aversion
The Cost Objection
Measurements Change What Is Being Measured
Statistics Can Prove Anything
Ethical Objections to Measurement
Notes
Chapter 3 --- How We Know What Works
Skepticism for Project Managers
The Analysis Placebo
The Problem of Feedback and Learning
How to Test Methods
Controlled Experiments and Component Testing
Evaluating Sources
The Performance of Quantitative Methods
Experts Versus Algorithms
The
Exsupero Ursus
Fallacy: Algorithm Aversion
Potential Reasons for
Exsupero Ursus
Improving the Human Expert
Calibrating the Expert
The Expert Consistency Component
Collaboration on Estimates
The Decomposition Component
A Summary of Research on Other Project Planning and Management Methods
Reference Class Forecasting
Various Project Management Methods
The Performance of Monte Carlo Simulations
Notes
Chapter 4 --- The Project Decision Model: The Reason for Measurements
Two Types of Project Measurements
Proto-purpose Discovery Measurements
Decision-driven Measurements
Unproductive Incentives vs. Measurements
Decisions Before: Thinking Slow
Exploration vs. Exploitation
Tracking the Outside World
Choosing How to Run the Project
How Models Indicate What to Measure
The Expected Value of Information: A Simple Introduction
The Measurement Inversion: Measuring the Wrong Things
The Value of Imperfect Measurements
An Aspirational Model
The Rise of Digital Twins
Digital Twins in Project Management
A Practical Path Forward
Notes
Chapter 5 --- Project Uncertainty and Risk: A Primer
Basic Concepts and Definitions
Uncertainty as a Probability Distribution
Risk: A Special Case of Uncertainty
Definitions for Uncertainty, Risk, and Their Measurements
The Problem with Current Methods
Why Risk "Scores" Don't Work
How the Risk Matrix Makes Scores Worse
A Quantitative Risk Model: Starting
Very
Simple
The One-for-One Substitution
Monte Carlo Mechanics: A Brief Introduction
Supporting Decisions
A Return on Mitigation
How Much Risk Do You Tolerate?
Risk Versus Return: The Powerful Theory of Utility
Simple Tools for Measuring Uncertainty and Risk
A First Estimate of a Discrete Probability
A First Estimate of a Continuous Probability
Final Clarifications
Case Examples for What Probability Means
Uncertainty Versus Risk Versus Opportunity
Epistemic Versus Aleatory Uncertainty
Even More Ordinal Scales
Risk as Governance or Compliance
The Problem of "Black Swans"
Some Items That Aren't Really Risks
More Improvements to Come
Notes
Chapter 6 --- Calibrated Subjective Probability Estimates
Introduction to Subjective Probability
Two Extremes of Subjective Confidence
Calibration Exercise
The Calibration Exercises
Evaluating Performance and Typical Results
Improving Calibration
The Equivalent Bet
More Techniques
More Advanced Calibration Topics to Come
The Effects of Calibration
Conceptual Obstacles to Calibration
Conflating Uncertainty with Knowing Nothing
Hypotheses That Contradict the Data
Objections Based on the Philosophical Debate in Statistics
Notes
Chapter 7 --- Cost and Schedule Measurements
The Big Plan Versus Iteration: Meta-measurements of Common Estimation Methods
Top-down Estimations: Reference Class Forecasting
Bottom-up Forecasting with Monte Carlo
A Deterministic View of Tasks
Probability Distributions for Project Tasks
Correlations
Multiple Prerequisites and Stochastic Critical Paths
Parade of Trades
Comparing Top-Down and Bottom-Up: Case Examples
The Swedish Nuclear Waste Program
High-speed Rail
How to Improve the Models
The Granularity of the Monte Carlo Model
Distributions and Biases
Correlations
Improving the RCF with Monte Carlo
Notes
Chapter 8 --- Betting on Benefits
Meta-Measurements of Benefits
How Much Should Benefits Be to Justify a Project?
Why This May Be Optimistic
Why Measuring Benefits Is Rare
Fermi Decompositions for Benefits
Introduction to Fermi
Some Example Decompositions
Monetizing Benefits
Forecasts of Monetary Impacts
Preferences
Quantifying Preferences
The Use of Scores and Multiple Objectives
An Example of Challenging Benefit Measurement: Biodiversity
Measuring What Matters in Projects
A (Slightly) More Realistic Information Value Calculation
The High Information Values for Projects
Getting Started on Measuring What Matters
Considering Risk and Return
A Risk Neutral Decision-maker for Projects
Adding Utility Theory to Projects
Some Alternatives Within Utility Math
Are Executives Too Risk Averse for Projects?
The (Apparent) Utility Paradox
A Framework and Its Consequences
Findings from Quantitative Analysis of Past Projects
How and When, Not Just Whether
Benefits Are Not Just for Project Approval Decisions
Notes
Chapter 9 --- Measuring Progress
The Progress Problem
Simple Progress, Simple Interventions
Earned Value Management
EVM Basics
The XRL Example
Recovery vs. Performance
Forecasting with EVM
Progress in Information Projects
Waterfall
Agile and Measurement in Other Software Development Methods
Summarizing Software Metric Difficulties
Four Stories and Lessons
Interfaces in a Global Bank Transformation
An Energy Project Front End
Construction Constraints
Testing as Software Checkpoints
Lessons
The Remaining Project Simulation
Conditional Reference Class Forecasting (CRCF)
The Bottom-Up Simulation for the Remaining Project
Further Considerations for the RPA
Notes
Chapter 10 --- More Measurement Methods Made Easy
Intuition for the Habitually Scientific
A Jelly Bean Example
A Little Probability Theory
Consequences of Probability Theory
Myths Exposed by Probability Theory
Significant Points About Statistical Significance
Basic Sampling Methods
The "Mathless" Table for Medians
Estimating a Population Proportion
Project Cancellation Rates as a Function of Duration
Measuring Population Size
Measuring Some Things by Knowing Other Things
Controlled Experiments
Regression
More Advanced Methods of Regression and Classification
Estimating the Whole Distribution
Summarizing Methods
Brainstorming a Measurement Approach
Data Gathering Methods
A Review of Methods in This Chapter
Notes on Surveys
Notes
Chapter 11 --- The Meta-Project: Implementing Better Project Measurements
Start with the End in Mind: The Continuous Improvement Process
Measure What Matters
(Real) Skepticism and Meta-measurements
Measuring and Forecasting the Outside World
AI: The Most Important Project Ecosystem Measurement?
More Thinking, Fewer Projects, Bigger Wins
Start Your Meta-Project
Examples of Meta-Projects Deliverables: Continuous Improvement
Develop an Initial Team
Assess the Current State of the Project Portfolio
Considerations for the Meta-Project Plan
The Pilot Project
Scaling to the Final Deliverable
Organizational Challenges
Resistance to Change
Addressing Organizational Objections to Measurement
The Politics of Measurement
Notes
Chapter 12 --- A Call to Action for the Industry
Call to Action for Project Software Vendors
Put Decisions at the Center
Deal in Uncertainties
Build the User-buyer-builder Federation
Be the Vendor That Measures Its Performance
Be Forward-Looking
Call to Action for the Standard-Setting Bodies
Call to Action for Consultants, Researchers, and Advisory Firms
Big Future Projects
A Mars Mission
Stopping Hurricanes
The Meta-Project
Notes
Appendix 1 --- Analysis of Survey Responses on Project Management Practices
Introduction and Data Overview
Success Metrics: Cost and Schedule Overrun Ratios
Overview of Project Management Practices Reported in the Survey
Project Management Methodologies
Cost and Schedule Estimation Methods
Uncertainty and Risk Assessment Tools
Certifications
Results
Project Management Methodologies
Cost and Schedule Estimation Methods
Uncertainty and Risk Assessment Tools
Certifications
Interpreting the (Mostly) Statistically Insignificant Results
Appendix 2 --- Reference Class Data on Project Cost, Schedule, and Benefit Overruns
Relevance of the Data and Reference Class Forecasting
Using Historical Data to Improve Estimates -- An Example
Notes
Appendix 3 --- Selected Distributions
Uniform
Beta
Beta PERT
Triangular
Binary
Normal
Lognormal
Power Law
Truncated Power Law
Quantile-parameterized
Gamma Poisson
Stochastic Information Packet
Appendix 4 --- Chapter 6 Calibration Question Answers
Appendix Answers to Confidence Interval Questions
Answers to True/False Questions
Appendix 5 --- Measuring Biodiversity
The Benefits of Biodiversity
Variables to Measure for Biodiversity
Notes
Reference in New Issue
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