After I was an engineer at Stripe circa 2017, I pitched a machine studying system that may lower our help headcount in half. I believed I used to be fixing the largest value to the corporate: folks. In spite of everything, isn’t that the purpose of automation?
The pinnacle of help’s response caught me off guard: “Congratulations. You’ve automated the simple half.”
I spotted the actual drawback was the workflow. Brokers have been toggling between 10 totally different instruments. Institutional data was caught in silos. Work was being routed manually, with none visibility into patterns or bottlenecks. The largest value wasn’t folks. It was the damaged course of.
Chopping labor prices within the title of AI has typically confirmed to be a dropping proposition. Take Klarna, for instance: in early 2024, their OpenAI‑powered assistant took on the workload of practically 700 help brokers, however that wager didn’t stick. By mid‑2025, the company began rehiring human agents, acknowledging that clients nonetheless need empathy, and that AI wants human oversight to ship high quality service.
The businesses truly shifting the ball ahead on AI aren’t worry mongering about its potential or shedding total groups. They’re rethinking how work will get finished. They’re investing in packages and buildings to speed up studying and experimentation, serving to workers evolve and drive effectivity alongside the know-how. It’s the mixture of people and AI that unlocks AI’s full potential—not AI-only in any respect prices, which solely serves to sow reticence among the many very folks we have to transfer it ahead. Right here’s how they consider using AI to unlock actual positive aspects.
Design for orchestration
When firms view AI by means of the lens of headcount discount, they find yourself chasing automation for its personal sake. However automating with out connecting methods, roles, and suggestions loops simply accelerates the mess. It’s like constructing an meeting line the place the sections don’t match collectively.
The simplest groups don’t deal with AI as a stand-alone repair. They deal with it as one half of a bigger machine: human judgment, inside instruments, information flows, and real-time determination loops. The objective isn’t fewer folks. It’s higher circulation.
At Stripe, I as soon as constructed a mannequin to auto-answer easy help queries. Automation wasn’t essentially the most worthwhile half. Essentially the most helpful final result turned out to be refreshing the categorization of help points and documentation, which had gotten outdated and too broad. For instance, we recognized that chargeback payment questions needs to be handled in another way from chargeback proof questions, which had beforehand been grouped collectively. This freed folks as much as develop coaching, construct the suitable inside instruments, and manage product suggestions.
Construct on high of unpolluted documentation
Worry of job loss typically drives leaders to chase AI fast wins: “Can we automate solutions tomorrow?” However AI can’t reply questions nobody has documented correctly. Information often lives in chat threads, outdated docs, or in a single particular person’s head. And that’s the place adoption efforts stall.
Excessive-functioning, AI-forward groups deal with inside data as a product. They doc how selections are made. They construct methods the place people feed classes again in. They usually make it simple for AI (or anybody) to entry and apply that context reliably.
One firm in Latin America’s on-line food-delivery sector gives a helpful instance. When AI chat help went sideways, the group first centralized their commonplace working procedures and mapped gaps with product managers. Based on their product supervisor, many insurance policies didn’t exist or have been outdated, with no overarching course of to maintain documentation contemporary after product modifications. That unlocked readability and consistency earlier than any AI was concerned, and enabled sooner automation as soon as the AI effort obtained underway.
My most continuously given recommendation for firms to speed up their AI initiatives is to put in writing issues down, hold them updated, then use AI to floor patterns and pace up selections.
AI isn’t magic: It’s infrastructure
When leaders body AI as a shortcut to job cuts, they set themselves up for disappointment. The groups seeing actual influence take a really totally different method: they deal with it like plumbing. They join it to their methods for scheduling, analytics, forecasting, and decision-making, they usually typically measure outcomes, not vibes.
Additionally they don’t overcommit. They take a look at. Modify. Roll again. The neatest operators don’t ask, “What can we automate?” They ask, “What’s breaking proper now, and will AI assist?”
One payroll supplier with over 5 million customers illustrates the purpose effectively. As an alternative of ripping out their name heart, they constructed a dial to A/B take a look at between an AI voice agent and the traditional “press 2 for billing” interactive voice response. They measured decision charges, sampled calls, and examined repeatedly. By plugging AI into current methods for phone and high quality administration, they have been in a position to goal particular workflows for automation, comparable to troubleshooting frequent causes for delayed funds.
AI isn’t going to remodel your workforce in a single day. The very best leaders know tips on how to measure success, construct methods round these learnings, and roll out modifications rigorously. Completed proper, AI might help you construct a workforce that’s extra resilient and fewer depending on heroics, not by chasing headcount cuts, however by integrating AI thoughtfully into the messy actuality of operations. On this means, organizations can deliver workers alongside for the journey, making certain AI turns into a device folks need to use and finally undertake.
The dialog we needs to be having isn’t about which jobs vanish, however about how we redesign methods so people and AI can work collectively at their greatest. That’s the place actual innovation occurs and the place the positive aspects compound.

