Psychology, Workplace
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Algorithmic Monocultures: AI’s Overlooked Diversity Problem

An aerial view of two contrasting fields—one green and one freshly plowed—separated by a narrow line of trees running diagonally across the landscape.

Until recent­ly, com­pa­nies at least had to make the same mis­takes inde­pen­dent­ly. One orga­ni­za­tion might over­val­ue pres­ti­gious uni­ver­si­ties. Anoth­er might mis­take con­fi­dence for com­pe­tence. A third might qui­et­ly screen out uncon­ven­tion­al careers. Their judg­ments were often flawed. But they were flawed in dif­fer­ent ways.

Now we are build­ing sys­tems that allow orga­ni­za­tions to make the same mis­take together.

Much of the debate around AI asks whether machines can make bet­ter deci­sions than humans. Rea­son­able ques­tion. Pos­si­bly the wrong one. A more con­se­quen­tial ques­tion is what hap­pens when large num­bers of orga­ni­za­tions begin rely­ing on the same sys­tems to decide on their behalf.

A recent study of more than four mil­lion job appli­ca­tions across 156 employ­ers points toward an answer. The researchers describe the emer­gence of an »algo­rith­mic mono­cul­ture«: a sit­u­a­tion in which orga­ni­za­tions increas­ing­ly depend on the same ven­dors, the same mod­els, and ulti­mate­ly the same log­ic for eval­u­at­ing candidates.

The term shifts the focus. Sud­den­ly the issue is not only whether a sys­tem is biased, but what hap­pens when every­one uses it.

From Bias to Monoculture

The usu­al con­cern is bias. This study points some­where else. Even if a sys­tem per­forms rea­son­ably well, what hap­pens when hun­dreds of orga­ni­za­tions use it at once?

For most of mod­ern eco­nom­ic his­to­ry, orga­ni­za­tions devel­oped their own ways of iden­ti­fy­ing tal­ent. They hired dif­fer­ent peo­ple. Reward­ed dif­fer­ent qual­i­ties. Inter­pret­ed poten­tial through dif­fer­ent lens­es. Some approach­es were bet­ter than oth­ers. That is almost beside the point. The vari­a­tion served a purpose.

A can­di­date reject­ed by one employ­er could still suc­ceed else­where because some­body else val­ued dif­fer­ent sig­nals. Dif­fer­ent expe­ri­ences. Dif­fer­ent forms of promise. Mono­cul­tures work differently.

In agri­cul­ture, mono­cul­tures are effi­cient until they are not. They sim­pli­fy pro­duc­tion, cre­ate con­sis­ten­cy, and scale extra­or­di­nar­i­ly well. They also reduce a system’s abil­i­ty to absorb sur­pris­es. Diver­si­ty dis­ap­pears long before the con­se­quences become vis­i­ble. The same pat­tern may be emerg­ing in orga­ni­za­tion­al decision-making.

The Cost of Convergence

As com­pa­nies adopt the same mod­els, they begin shar­ing the same assump­tions about com­pe­tence, poten­tial, and fit. Can­di­dates out­side those assump­tions encounter the same bar­ri­ers repeat­ed­ly. Not because dozens of orga­ni­za­tions arrived at the same con­clu­sion inde­pen­dent­ly. Because they adopt­ed the same way of reach­ing con­clu­sions. Those are not the same thing.

The most inter­est­ing ques­tion raised by AI is not whether a par­tic­u­lar mod­el is fair. It is whether we are grad­u­al­ly stan­dard­iz­ing judg­ment itself. Hir­ing is only the clear­est example.

Orga­ni­za­tions have been mov­ing in this direc­tion for years. They attend the same con­fer­ences, hire the same con­sul­tants, bench­mark against the same suc­cess sto­ries, and increas­ing­ly exper­i­ment with the same AI tools. No sin­gle deci­sion changes much. Tak­en togeth­er, they can pro­duce orga­ni­za­tions that appear dif­fer­ent on the sur­face while becom­ing sur­pris­ing­ly sim­i­lar under­neath. We tend to treat con­sis­ten­cy as a virtue. Some­times it is.

But dis­agree­ment keeps sys­tems flex­i­ble. Vari­a­tion cre­ates alter­na­tives. Inde­pen­dent judg­ment opens paths that stan­dard­ized process­es rarely con­sid­er. These are not inef­fi­cien­cies wait­ing to be opti­mized away. They are part of how com­plex sys­tems learn, adapt, and dis­cov­er pos­si­bil­i­ties that more uni­form sys­tems often miss.

The great­est risk of AI may not be that it makes bad deci­sions. Orga­ni­za­tions have always made bad deci­sions. The greater risk is that thou­sands of orga­ni­za­tions begin mak­ing the same deci­sion, guid­ed by the same assump­tions, at the same time.

We tend to dis­cuss diver­si­ty in terms of peo­ple. The hard­er ques­tion is whether our sys­tems are becom­ing less diverse than the peo­ple inside them. Once orga­ni­za­tions start see­ing the world through the same mod­els, sur­face dif­fer­ences become less inter­est­ing. The real ques­tion is whether any­one is still notic­ing what every­body else overlooked.

Filed under: Psychology, Workplace

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Hello — I’m Florian. I’m a runner and an ambassador for Spot the Dot, helping raise awareness of melanoma and other forms of skin cancer. I’m also drawn to the small things that make life feel rich: the diversity of specialty coffee, the stubborn silence of long bike rides, and those flashes of creativity you find in fashion and design. Professionally, I’ve spent the past two decades leading teams, shaping communication, and helping organizations navigate change. I’m currently in a period of professional transition — using it deliberately to deepen my thinking around organizational psychology, AI adoption, and the human side of transformation. It has become an opportunity to question assumptions, connect ideas across disciplines, and develop perspectives I hope to bring into my next leadership role. Every now and then, you’ll also find me behind the bar at Benson Coffee in Cologne. It’s a different kind of work, but one that reminds me every week that precision, curiosity and genuine human interaction matter just as much as strategy.

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