well understood, there are many unknowns, and problems often do not have a singular right answer. As a result, there is the risk of causing unintended harm. In short, the nineteenth‐century management model is a mismatch for today's leaders navigating complex systems. Many of us know it.
In the early stages of the COVID pandemic, as we realized that the impact was not measured in weeks, but months, I compared strategies with highly experienced, successful leaders. Out of the public spotlight, they were anxious and flummoxed, and they finally admitted, with grief and exhaustion, “I don't know what to do. I don't know what to say. I don't have the right answer.” The fissures that opened this decade are a vivid wake‐up call that the “new normal” is complex, and we need new mindsets, processes, and practices to match.
Move to the Edge, Declare It Center is a framework to help leaders of organizations and teams navigate through complex problems when they don't know the “right” answer and there's no predetermined plan, playbook, or procedure. Move to the Edge is a set of practices, processes, and infrastructure to address complex problems, and Declare It Center is a set of methods to systematize, scale, share, and sustain the best approaches throughout an organization.
This book emerges from two distinct sources. First, from my experience as CEO and co‐founder of my company, Truss. Since 2011, we have developed human‐centered software to help our clients navigate complex, global, consequential problems, from helping to fix Healthcare.gov to modernizing supply chain and delivery logistics systems for some of the largest organizations in the world. We built a company that's been remote‐first for over a decade, exceeds our industry in diversity and inclusion, and is anchored by a values‐driven culture that helped us stay connected through the pandemic.
The second source is a lifetime of being on the edge, navigating the pursuit of excellence from the distinct vantage point of being an outsider. While I have a history of firsts – first in my family to college, first NCAA National Champion in any sport for Duke University – as a Black man in the United States, those firsts do not protect me from being a target of racial violence and discrimination. Every “routine” traffic stop has the potential for a deadly outcome, and despite being the keynote speaker at the TechStars startup conference, I was singled out by an armed security guard at the entrance, “Do you belong here?”
For me and other outsiders, navigating uncertainty is first a survival skill, then an expertise, and finally a gift. But it comes at a cost – the pressure and weight can deplete one's energy and lead to burnout. To avoid this, I've centered on different Interior Practices to prepare me for making high‐stakes decisions under stress. In uncertain times with complex problems, leaders need Interior Practices as a companion for their Exterior (organizational) Practices. Move to the Edge, Declare It Center is a framework that integrates both, and I will share these practices in depth throughout this book.
We're living in a new normal. We have urgent, complex challenges to address, and twentieth‐century tools don't work for twenty‐first‐century problems. Leaders need to approach today's complex systems with a different mindset – led by curiosity and experimentation – while building systems to scale, share, and sustain their best solutions. Move to the Edge, Declare It Center is a framework of exterior and interior practices that will enable you to make better decisions under uncertainty and complexity.
Two Kinds of Problems: Complicated and Complex
One of the key contributions to our understanding of complex systems comes from the Santa Fe Institute, a nonprofit research institute, using direct observation and mathematical modeling to explain important phenomena. In particular, categorizing problems as complex versus complicated helps to explain why some of our approaches to problem solving can make things worse.
Complicated Problems
Complicated problems consist of elements whose behaviors and interactions are more well‐understood, often linear, and therefore predictable. For example, let's say you want to build a passenger jet. If you have a plan, hire expert designers, gather builders, and have enough money, you'll probably succeed in building a jet. Even though building a jet is neither simple nor cheap, the relationships between all the parts and labor are well understood. When there is a complicated problem to solve, such as how to reduce the cost of making a jet, the best approach is to optimize those predictable relationships. Sourcing the same rotor from a cheaper supplier, standardizing quality measurements, or negotiating for lower labor wages are logical approaches to solving the complicated problem of reducing costs. Great operational leaders focus on building with efficient, measurable, repeatable execution.
This is an advanced version of a model that emerged out of Fredrick Taylor's scientific management in the late nineteenth century.1 Taylor did “time and motion” studies of workers in factories, creating scientific models that included workers as part of the equation. The promise was that one could develop a scientific equation with a right answer, enabling managers and owners to operate factories in predictable, measurable ways. Eventually known as Taylorism, this approach to measuring production ushered in the assembly‐line system used to manufacture goods in the early twentieth century. Over the next hundred years, it influenced all sorts of work, from retail to software production. As this became more widespread, military leaders, business schools, and management consultants developed operational and leadership models of productivity to accompany Taylor's approach. The command‐control, optimize and execute, hierarchical organizational models derived from the understanding of problems as complicated. There was a right answer, and the most admired leaders had it.
Taylorism produced some obvious fallacies, especially with the rise of professions where people were paid primarily to think, as opposed to assemble. The shift to knowledge work made using complicated methods like time‐and‐motion equations to judge productivity less useful. For example, it's hard to imagine that the effectiveness of the famous 1959 “Think Small” Volkswagen Beetle advertising campaign2 could have been calculated with a linear productivity equation that measured words per copywriter. Other fields, from management consulting, to design, computer science, and software development, defied previously valid assessments of productivity, quality, or value, based on Taylor's time‐and‐motion models.
Source: Bill Bernbach’s iconic ‘Think Small’ Volkswagen Beetle ad. Martin Schilder Groep/Flickr, CC BY‐NC‐SA
Early in my career, I was advised to come early to the office and stay late, not because it would produce better work but because I would be regarded as a highly productive, committed, hard worker. I watched colleagues walk the halls, wearing their “I'm working hard” face, coincidentally timed for their manager to see them as they arrived at the office. Today, part of the debate about working from home versus returning to the office is framed as, “How do I know my employees are working?” This leads to misplaced choices like measuring how long employees are at their computers or in virtual meetings, instead of measuring the outcomes of their work. This is a manifestation of the complicated model of productivity, where there is a linear relationship between time in office and “This is good” work. In contrast, what is now being considered as “the future of work” is that global, hybrid, knowledge work doesn't assume a building – it enables us to think in new ways about defining work with purpose and impact.
Complex Problems
Complex problems consist of elements that are distinct from complicated problems. Samuel Arbesman, a complexity scientist, declares, “Complex is a large number of moving parts interacting in multifaceted ways.”3