How to Measure Anything in Project Management

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How to Measure Anything in Project Management

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  • 製本 Hardcover:ハードカバー版/ページ数 416 p.
  • 言語 ENG
  • 商品コード 9781394239818
  • DDC分類 658.404

Full Description

Uncover common project management myths to improve project success

How to Measure Anything in Project Management explains why popular methods for measurement in project management are flawed and describes how to conduct measurements that better inform decisions, reduce project risks, and improve the chance of project success. The authors argue that anything that matters to project management at all is measurable and that these measurements address many of the problems in project management. The authors leverage an exclusive survey on the state-of-the-art of measuring projects, new case studies of things that are seemingly hard to measure and a database, collected by Oxford Global Projects, of thousands of projects in software development, construction, energy, and many other fields, including some of the biggest projects in history. The book is accompanied by a set of useful spreadsheet-based "power tools" that support the more technical aspects of quantifying project risk, forecasting outcomes, and conducting seemingly difficult measurements. In this book, readers will learn:



Why many of the methods they have been taught to use are little more than a type of "analysis placebo"
Why many popular methods lead to extreme overconfidence in estimates
How some of the most important measurements a project could conduct are currently rarely used

How to Measure Anything in Project Management earns a well-deserved spot on the bookshelves of managers, executives, auditors, controllers, and consultants seeking to improve project performance through superior measurement methodology.

Contents

Foreword xv

Preface xix

Acknowledgments xxi

About the Authors xxiii

Chapter 1 A World-scale Risk and a World-scale Opportunity 1

The Size of Projects 2

The Size of Project Problems 4

Efforts to Fix Projects: The Emergence of Project Management 5

A Path Forward: The Meta Project 8

Notes 10

Chapter 2 A Measurement Primer for Project Management 13

The Concept of Measurement 14

A Definition of Measurement 15

Measurement and Probabilities for Practical Decision-making 16

Are Scales Really Measurements? 18

The Object of Measurement 21

What Do You See When You See More of It? 21

Why Do You Care? 23

The Methods of Measurement 25

Statistical Significance: What's the Significance? 26

Small Samples Tell You More Than You Think 28

Other Sources of Measurement Aversion 30

The Cost Objection 30

Measurements Change What Is Being Measured 31

Statistics Can Prove Anything 32

Ethical Objections to Measurement 33

Notes 34

Chapter 3 How We Know What Works 35

Skepticism for Project Managers 36

The Analysis Placebo 36

The Problem of Feedback and Learning 38

How to Test Methods 40

Controlled Experiments and Component Testing 40

Evaluating Sources 41

The Performance of Quantitative Methods 43

Experts Versus Algorithms 43

The Exsupero Ursus Fallacy: Algorithm Aversion 44

Potential Reasons for Exsupero Ursus 45

Improving the Human Expert 47

Calibrating the Expert 48

The Expert Consistency Component 49

Collaboration on Estimates 50

The Decomposition Component 52

A Summary of Research on Other Project Planning and Management Methods 54

Reference Class Forecasting 54

Various Project Management Methods 55

The Performance of Monte Carlo Simulations 58

Notes 60

Chapter 4 The Project Decision Model: The Reason for Measurements 63

Two Types of Project Measurements 64

Proto-purpose Discovery Measurements 64

Decision-driven Measurements 66

Unproductive Incentives vs. Measurements 69

Decisions Before: Thinking Slow 70

Exploration vs. Exploitation 71

Tracking the Outside World 73

Choosing How to Run the Project 74

How Models Indicate What to Measure 77

The Expected Value of Information: A Simple Introduction 77

The Measurement Inversion: Measuring the Wrong Things 79

The Value of Imperfect Measurements 80

An Aspirational Model 82

The Rise of Digital Twins 83

Digital Twins in Project Management 84

A Practical Path Forward 87

Notes 88

Chapter 5 Project Uncertainty and Risk: A Primer 91

Basic Concepts and Definitions 92

Uncertainty as a Probability Distribution 93

Risk: A Special Case of Uncertainty 96

The Problem with Current Methods 98

Why Risk "Scores" Don't Work 99

How the Risk Matrix Makes Scores Worse 101

A Quantitative Risk Model: Starting Very Simple 105

The One-for-One Substitution 106

Monte Carlo Mechanics: A Brief Introduction 108

Supporting Decisions 111

A Return on Mitigation 112

How Much Risk Do You Tolerate? 113

Risk Versus Return: The Powerful Theory of Utility 115

Simple Tools for Measuring Uncertainty and Risk 117

A First Estimate of a Discrete Probability 118

A First Estimate of a Continuous Probability 119

Final Clarifications 120

Case Examples for What Probability Means 121

Uncertainty Versus Risk Versus Opportunity 123

Epistemic Versus Aleatory Uncertainty 124

Even More Ordinal Scales 125

Risk as Governance or Compliance 125

The Problem of "Black Swans" 126

Some Items That Aren't Really Risks 127

More Improvements to Come 128

Notes 129

Chapter 6 Calibrated Subjective Probability Estimates 131

Introduction to Subjective Probability 132

Calibration Exercise 135

The Calibration Exercises 136

Evaluating Performance and Typical Results 137

Improving Calibration 140

The Equivalent Bet 141

More Techniques 142

More Advanced Calibration Topics to Come 144

The Effects of Calibration 146

Conceptual Obstacles to Calibration 149

Conflating Uncertainty with Knowing Nothing 149

Hypotheses That Contradict the Data 152

Objections Based on the Philosophical Debate in Statistics 153

Notes 155

Chapter 7 Cost and Schedule Measurements 157

The Big Plan Versus Iteration: Meta-measurements of Common Estimation Methods 158

Top-down Estimations: Reference Class Forecasting 162

Bottom-up Forecasting with Monte Carlo 165

A Deterministic View of Tasks 165

Probability Distributions for Project Tasks 167

Correlations 168

Multiple Prerequisites and Stochastic Critical Paths 170

Parade of Trades 171

Comparing Top Down and Bottom Up: Case Examples 174

The Swedish Nuclear Waste Program 175

High-speed Rail 176

How to Improve the Models 181

The Granularity of the Monte Carlo Model 182

Distributions and Biases 182

Correlations 183

Improving the RCF with Monte Carlo 184

Notes 185

Chapter 8 Betting on Benefits 187

Meta-measurements of Benefits 189

How Much Should Benefits Be to Justify a Project? 190

Why This May Be Optimistic 192

Why Measuring Benefits Is Rare 195

Fermi Decompositions for Benefits 196

Introduction to Fermi 197

Some Example Decompositions 199

Monetizing Benefits 201

Forecasts of Monetary Impacts 201

Preferences 202

Quantifying Preferences 203

The Use of Scores and Multiple Objectives 205

An Example of Challenging Benefit Measurement: Biodiversity 206

Measuring What Matters in Projects 206

A (Slightly) More Realistic Information Value Calculation 207

The High Information Values for Projects 209

Getting Started on Measuring What Matters 211

Considering Risk and Return 213

A Risk Neutral Decision-maker for Projects 214

Adding Utility Theory to Projects 215

Some Alternatives within Utility Math 217

Are Executives Too Risk Averse for Projects? 219

A Framework and Its Consequences 221

Findings from Quantitative Analysis of Past Projects 223

How and When, Not Just Whether 223

Benefits Are Not Just for Project Approval Decisions 224

Notes 225

Chapter 9 Measuring Progress 227

The Progress Problem 227

Simple Progress, Simple Interventions 228

Earned Value Management 229

EVM Basics 230

The XRL Example 231

Recovery vs. Performance 233

Forecasting with EVM 235

Progress in Information Projects 237

Waterfall 237

Agile and Measurement in Other Software Development Methods 237

Summarizing Software Metric Difficulties 239

Four Stories and Lessons 240

Interfaces in a Global Bank Transformation 240

An Energy Project Front End 241

Construction Constraints 243

Testing as Software Checkpoints 245

Lessons 246

The Remaining Project Simulation 247

Conditional Reference Class Forecasting (CRCF) 247

The Bottom-up Simulation for the Remaining Project 251

Further Considerations for the RPA 252

Notes 254

Chapter 10 More Measurement Methods Made Easy 257

Intuition for the Habitually Scientific 258

A Jelly Bean Example 258

A Little Probability Theory 260

Consequences of Probability Theory 262

Myths Exposed by Probability Theory 262

Significant Points About Statistical Significance 265

Basic Sampling Methods 266

The "Mathless" Table for Medians 269

Estimating a Population Proportion 270

Project Cancellation Rates as a Function of Duration 274

Measuring Population Size 274

Measuring Some Things by Knowing Other Things 276

Controlled Experiments 277

Regression 277

More Advanced Methods of Regression and Classification 283

Estimating the Whole Distribution 285

Summarizing Methods 289

Brainstorming a Measurement Approach 289

Data Gathering Methods 291

A Review of Methods in This Chapter 292

Notes on Surveys 293

Notes 296

Chapter 11 The Meta-project: Implementing Better Project Measurements 297

Start with the End in Mind: The Continuous Improvement Process 299

Measure What Matters 299

(Real) Skepticism and Meta-measurements 301

Measuring and Forecasting the Outside World 302

AI: The Most Important Project Ecosystem Measurement? 304

More Thinking, Fewer Projects, Bigger Wins 307

Start Your Meta-project 307

Examples of Meta-projects Deliverables: Continuous Improvement 308

Develop an Initial Team 309

Assess the Current State of the Project Portfolio 310

Considerations for the Meta-project Plan 312

The Pilot Project 312

Scaling to the Final Deliverable 314

Organizational Challenges 315

Resistance to Change 315

Addressing Organizational Objections to Measurement 316

The Politics of Measurement 318

Notes 319

Chapter 12 A Call to Action for the Industry 321

Call for Action for Project Software Vendors 321

Put Decisions at the Center 322

Deal in Uncertainties 324

Build the User-buyer-builder Federation 325

Be the Vendor That Measures Its Performance 325

Be Forward-looking 326

Call for Action for the Standard-setting Bodies 327

Call to Action for Consultants, Researchers, and Advisory Firms 329

Big Future Projects 331

A Mars Mission 331

Stopping Hurricanes 332

The Meta-Project 333

Notes 333

Appendix 1 Analysis of Survey Responses on Project Management Practices 335

Introduction and data overview 335

Success Metrics: Cost and Schedule Overrun Ratios 337

Overview of Project Management Practices Reported in the Survey 339

Project Management Methodologies 339

Cost and Schedule Estimation Methods 339

Uncertainty and Risk Assessment Tools 340

Certifications 341

Results 341

Project Management Methodologies 341

Cost and Schedule Estimation Methods 343

Uncertainty and Risk Assessment Tools 343

Certifications 343

Interpreting the (Mostly) Statistically Insignificant Results 344

Appendix 2 Reference Class Data on Project Cost, Schedule, and Benefit Overruns 345

Relevance of the Data and Reference Class Forecasting 346

Using Historical Data to Improve Estimates - An Example 347

Notes 351

Appendix 3 Selected Distributions 353

Uniform 354

Beta 355

Beta PERT 356

Triangular 357

Binary 358

Normal 359

Lognormal 360

Power Law 361

Truncated Power Law 362

Quantile-parameterized 363

Gamma Poisson 365

Stochastic Information Packet 366

Appendix 4 Chapter 6 Calibration Question Answers 369

Answers to Confidence Interval Questions 369

Answers to True/False Questions 371

Appendix 5 Measuring Biodiversity 373

The Benefits of Biodiversity 373

Measuring Biodiversity 375

Notes 376

Index 377

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