Social Physics Today
An ongoing series exploring how the laws of social physics shape data systems, organizations, and the way decisions get made. Written for leaders who work with data, and want to understand why it behaves the way it does.
Social Physics
"A quantitative social science that describes reliable, mathematical connections between information and idea flow on one hand and people's behavior on the other."
Alex Pentland, MIT
Essays
No. 001 · June 2026
Most organizations treat data failures as technical problems. Social physics tells us they're almost always social ones.
No. 002 · June 2026
Social physics reveals that the value of data is not in its quality, it's in how it moves. Most organizations are building dams, not rivers.
No. 003 · June 2026
Organizations adopting AI are making the same mistake as social networks optimizing for engagement. The metric looks right. The outcome isn't.
Social Physics Today · No. 001 · June 2026
8 min read · Data Strategy
In the last decade, I have sat in more data strategy meetings than I can count, across finance, EdTech, media, advertising, and enterprise technology. And in nearly every one of them, the same assumption sits quietly in the room, unexamined: that data problems are technical problems.
They are not. They are almost always social ones.
The organization that has the best data infrastructure but the worst information-sharing culture will consistently be outperformed by the organization with average infrastructure and excellent flow.
Social physics, the field pioneered by MIT's Alex Pentland, is built on a deceptively simple observation: human behavior follows reliable, mathematical patterns based on how information flows through social networks. It is not about physics applied to people. It is about finding the underlying laws that govern how ideas spread, how decisions get made, and how behavior changes in groups.
When I first encountered this framework, I was a data architect trying to understand why a technically sound system kept failing in practice. The pipelines were clean. The data was accurate. The dashboards were beautiful. And nobody was using any of it to make decisions.
Social physics gave me the language for what I was seeing. The problem was not the data. The problem was the social environment the data was trying to move through.
Social physics research identifies specific patterns in how information flows through organizations. Here are the three I see most consistently in data strategy failures:
Echo chambers masquerading as alignment. When data teams operate in isolation from the business teams they serve, both groups develop self-reinforcing beliefs. Data teams believe the business doesn't value data. Business teams believe data teams don't understand the business. Both are partially right. Neither changes. The data strategy stalls not because of a technical gap but because of a social one.
Engagement without exposure. Pentland's research shows that high-performing teams have members who regularly engage with people outside their immediate group, what he calls "exploration." Most data organizations are structurally designed for the opposite. They are optimized for deep internal expertise with minimal external exposure. The result is data systems that are technically sophisticated but organizationally irrelevant.
Status hierarchies that override signal. In most organizations, data loses to opinion when opinion comes from someone senior enough. This is not an irrationality problem. It is a social network problem. The data never had a path to the decision that mattered because the decision was already being made through a different social channel entirely.
If you are building or rebuilding a data strategy, the technical questions matter. But the first questions are social: How does information actually flow here? Where does it pool and where does it move freely? Who are the connectors, the people whose position in the network means information passes through them. Are they advocates for data-driven decisions or obstacles to them?
These are not soft questions. Social physics gives us tools to measure them quantitatively. Pentland's group at MIT has demonstrated repeatedly that you can map the information flow of an organization with the same precision you map a data pipeline, and that the map reveals failure points long before they become visible in outcomes.
The organizations I've worked with that have the most effective data cultures share one thing: they treat data adoption as a social design problem, not a technical one. They think about where data needs to flow, who needs to carry it, and what social conditions make that possible.
The organizations that struggle treat it as a tooling problem. They buy better software. They build better dashboards. They hire more engineers. And they wonder why nothing changes.
Fix the social architecture first. The technical architecture will follow.
That is the first principle of applying social physics to data strategy. It is also the hardest one for technically-minded people to accept, which is exactly why most data strategies fail.
By Candi Coe, PhD · candicoe.com
Get in touchSocial Physics Today · No. 002 · June 2026
10 min read · Data Systems
There is a pattern I have seen in every industry I have worked in, finance, streaming, EdTech, advertising, enterprise technology. An organization invests significantly in its data infrastructure. The quality improves. The coverage expands. The systems become more sophisticated. And the data still does not move.
It sits in dashboards nobody opens. It lives in reports that get downloaded and not read. It fuels analyses that produce recommendations that disappear into email threads and are never acted on.
Social physics has a name for this: an idea flow problem. And it is far more common than the data quality problems organizations spend most of their time trying to solve.
The value of data is not intrinsic. It is relational. Data is only worth what it changes. It can only change things it can reach.
In social physics, idea flow refers to the movement of information, behaviors, and decisions through a social network. Pentland's research demonstrates that the productivity and creativity of a group is more reliably predicted by its idea flow patterns than by the intelligence or expertise of its individual members.
This finding is striking when you apply it to data organizations. It means that a team with average data and excellent flow will consistently outperform a team with excellent data and average flow. The data is not the scarce resource. The movement is.
Most data infrastructure is designed to solve a storage and retrieval problem. Where does the data live, and how do we get to it? Social physics asks a different question: once we have it, how does it travel to the people and decisions that need it? These are not the same question, and the tools that answer the first do almost nothing to answer the second.
The Last Mile Problem. Data organizations invest heavily in the first ninety percent of the data journey: collection, cleaning, modeling, storage, visualization. The last ten percent gets the least attention: moving the insight from dashboard to decision-maker to action. This is where most data value disappears.
The Bottleneck Connector. Social physics research consistently identifies "broker" positions in organizational networks, individuals whose connections span different groups and through whom most cross-functional information flows. In data organizations, this is often a single analyst or data lead. When that person is overloaded, goes on leave, or leaves the organization, the entire flow system breaks. Organizations rarely know they have this fragility until it breaks.
The Engagement Illusion. Dashboard views, report downloads, and meeting attendance are often used as proxies for data engagement. Social physics research suggests these are unreliable proxies. What matters is not whether someone encountered the data, it is whether the encounter changed their behavior. Most data engagement metrics measure the former while organizations assume they are measuring the latter.
The organizations that solve the idea flow problem do not do it by accident. They design for it deliberately. A few principles I apply in practice:
Map the social network before the data network. Before designing a new data system, understand how information actually moves through your organization. Who talks to whom? Where do decisions actually get made? The data system needs to be designed to intersect those flows, not run parallel to them.
Create redundant carriers. In robust social networks, important information travels through multiple paths simultaneously. Design your data communication strategy the same way. The same insight should reach decision-makers through their dashboard, their weekly briefing, their team lead, and their peer network. Redundancy is not inefficiency, it is resilience.
Measure behavior change, not engagement. Replace dashboard view counts with decision tracking. If a data product is working, you should be able to point to decisions that were made differently because of it. If you cannot, the data may be reaching people but it is not moving them, which is the only movement that counts.
Good data that goes nowhere is not a data problem. It is a flow problem. And flow problems are solved with social design, not better tooling.
By Candi Coe, PhD · candicoe.com
Get in touchSocial Physics Today · No. 003 · June 2026
9 min read · AI Strategy
When social networks were being built into the dominant infrastructure of human communication, they optimized relentlessly for a single metric: engagement. Time on platform. Clicks. Shares. The metric was elegant, measurable, and completely wrong as a proxy for the thing that actually mattered, which was whether the platform was making people's lives better.
Organizations adopting AI right now are making the same mistake. They are optimizing for the wrong metric. And social physics tells us exactly why this happens, and what to do instead.
The question is not whether your organization is using AI. It is whether AI is changing the quality of your decisions. These are not the same question.
Most AI adoption programs are measured by some version of engagement: how many employees have used the tools, how many prompts have been submitted, how many hours have been saved in reported productivity surveys. These metrics are not meaningless. But they are proxies, and like all proxies, they can be maximized without achieving the underlying goal.
Social physics research helps us understand why this happens with particular reliability. When new technologies enter social networks, early adoption patterns are driven heavily by social influence rather than utility. People use tools because people around them are using them. They report positive experiences because their group has normalized positive experiences. The social signal overwhelms the utility signal, at least in the early period.
This means that high AI engagement metrics in the first twelve months of an adoption program tell you almost nothing about whether AI is actually improving decision quality. They tell you that social adoption dynamics are working as expected. That is not nothing. But it is not what the organization needs to know.
Measure exploration, not just engagement. Pentland's research identifies "exploration", meaning the degree to which individuals actively seek out new information and ideas from outside their immediate network, as one of the strongest predictors of adaptive behavior. AI adoption programs that work tend to be ones where employees are using AI to access genuinely new perspectives, not just to do familiar tasks faster. Measure whether AI is expanding the information diet of your teams, not just accelerating their existing habits.
Watch for social herding. Social physics identifies herding as one of the most reliable failure modes: groups converging on shared behaviors regardless of individual signal. In the most reliable failure modes of information-rich environments. In AI-enabled organizations, herding looks like everyone using the same prompts, getting the same outputs, and making the same recommendations, at much greater speed. The AI has not improved the quality of thinking. It has accelerated the homogeneity of it. Design adoption programs that actively create friction against herding by encouraging diverse approaches and rewarding outputs that surface genuinely novel perspectives.
Build feedback loops that close at the decision level. The most important feedback loop in any AI adoption program is the one that connects AI output to decision outcome. Did the decision that was informed by AI turn out to be a better decision? Most organizations do not have the infrastructure to answer this question, which means they are flying blind on the most important measurement in their adoption program.
Social physics research suggests that the organizations most at risk from AI adoption are not the ones moving too slowly. They are the ones moving fast in the wrong direction, optimizing for adoption metrics while their actual decision quality stagnates or declines, because the social dynamics of AI adoption are producing confident homogeneity rather than genuine insight.
The organizations that get this right share a common approach. They treat AI adoption as a social system design problem, asking not just "how do we get people to use AI" but "how do we design the social conditions in which AI makes our collective intelligence genuinely better?"
That is a harder question. It requires understanding how information flows through your organization, where social dynamics are helping and where they are hurting, and how to design feedback loops that measure the right things.
It is also the only question worth asking.
By Candi Coe, PhD · candicoe.com
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