{"id":1261,"date":"2026-03-10T09:00:00","date_gmt":"2026-03-10T09:00:00","guid":{"rendered":"https:\/\/rjbarrett.redirectme.net\/?p=1261"},"modified":"2026-03-10T09:00:00","modified_gmt":"2026-03-10T09:00:00","slug":"the-laid-off-lawyers-and-phds-training-ai-to-steal-their-careers","status":"publish","type":"post","link":"https:\/\/rjbarrett.redirectme.net\/?p=1261","title":{"rendered":"The laid-off lawyers and PhDs training AI to steal their careers"},"content":{"rendered":"<p><br \/>\n<\/p>\n<div id=\"zephr-anchor\">\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span aria-hidden=\"true\"><span class=\"z1fbk01 title-font\"\/>he<\/span><span class=\"sr-only\">The<\/span><span> LinkedIn post seemed like yet another scam job offer, but Katya was desperate enough to click. After college, she\u2019d struggled to make a living as a freelance journalist, gone to grad school, then pivoted to what she hoped would be a more stable career in content marketing \u2014 only to find AI had automated much of the work. This company was called Crossing Hurdles, and it promised copywriting jobs starting at $45 per hour.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Katya clicked and was taken to a page for another company, called Mercor, where she was instructed to interview on-camera with an AI named Melvin. \u201cIt just seemed like the sketchiest thing in the world,\u201d Katya says. She closed the tab. But a few weeks later, still unemployed, she got a message inviting her to apply to Mercor. This time, she looked up the company. Mercor, it seemed, sold data to train AI, and she was being recruited to create that data. \u201cMy job is gone because of ChatGPT, and I was being invited to train the model to do the worst version of it imaginable,\u201d she says. The idea depressed her. But her financial situation was increasingly dire, and she had to find a new place to live in a hurry, so she turned on her webcam and said \u201chello\u201d to Melvin.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>It was a strange, if largely pleasant, experience. Manifesting on Katya\u2019s laptop as a disembodied male voice, Melvin seemed to have actually read her r\u00e9sum\u00e9 and asked specific questions about it. A few weeks later, Katya, who like most workers in this story asked to use a pseudonym out of fear of retaliation, received an email from Mercor offering her a job. If she accepted, she should sign the contract, submit to a background check, and install monitoring software onto her computer. She signed immediately.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>She was added to a Slack channel, where it was clear she was entering a project already underway. Hundreds of people were busy writing examples of prompts someone might ask a chatbot, writing the chatbot\u2019s ideal response to those prompts, then creating a detailed checklist of criteria that defined that ideal response. Each task took several hours to complete before the data was sent to workers stationed somewhere down the digital assembly line for further review. Katya wasn\u2019t told whose AI she was training \u2014 managers referred to it only as \u201cthe client\u201d \u2014 or what purpose the project served. But she enjoyed the work. She was having fun playing with the models, and the pay was very good. \u201cIt was like having a real job,\u201d she says.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Two days after Katya started, the project was abruptly paused. A few days after that, a supervisor popped into the room to let everyone know it had been canceled. \u201cI\u2019m working assuming that I can plan around this. I\u2019m saving up for first and last month\u2019s rent for an apartment,\u201d Katya says, \u201cand then I\u2019m back on my ass. No warning, no security, nothing.\u201d Several days later, she got an email from Mercor with another offer, this one for a job evaluating what seemed to be conversations between chatbots and real users \u2014 many appeared to be from people in Malaysia and Vietnam practicing English \u2014 according to various criteria, like how well the chatbot followed instructions and the appropriateness of its tone. Sign the contract, the email said, and you\u2019ll have a Zoom onboarding call in 45 minutes. It was 6:30PM on a Sunday night. Scarred from the abrupt disappearance of the previous gig, she accepted the offer and worked until she couldn\u2019t stay awake.<\/span><\/p>\n<figure class=\"_1nqd5v80\"\/>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Machine-learning systems learn by finding patterns in enormous quantities of data, but first that data has to be sorted, labeled, and produced by people. ChatGPT got its startling fluency from thousands of humans hired by companies such as Scale AI and Surge AI to write examples of things a helpful chatbot assistant would say and to grade its best responses. A little over a year ago, concerns began to mount in the industry about a plateau in the technology\u2019s progress. Training models based on this type of grading yielded chatbots that were very good at sounding smart but still too unreliable to be useful. The exception was software engineering, where the ability of models to automatically check whether bits of code worked \u2014 did the code compile, did it print HELLO WORLD \u2014 allowed them to trial-and-error their way to genuine competence.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>The problem was that few other human activities offer such unambiguous feedback. There are no objective tests for whether financial analysis or advertising copy is \u201cgood.\u201d Undeterred, AI companies set out to make such tests, collectively paying billions of dollars to professionals of all types to write exacting and comprehensive criteria for a job well done. Mercor, the company Katya stumbled upon, was founded in 2023 by three then-19-year-olds from the Bay Area, Brendan Foody, Adarsh Hiremath, and Surya Midha, as a jobs platform that used AI interviews to match overseas engineers with tech companies. The company received so many inquiries from AI developers seeking professionals to produce training data that it decided to adapt. Last year, Mercor was valued at $10 billion, making its trio of founders the world\u2019s youngest self-made billionaires. OpenAI has been a client; so has Anthropic.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Each of these data companies touts its stable of pedigreed experts. Mercor says around 30,000 professionals work on its platform each week, while Scale AI claims to have more than 700,000 \u201cM.A.\u2019s, Ph.D.\u2019s, and college graduates.\u201d Surge AI advertises its Supreme Court litigators, McKinsey principals, and platinum recording artists. These companies are hiring people with experience in law, finance, and coding, all areas where AI is making rapid inroads. But they\u2019re also hiring people to produce data for practically any job you can imagine. Job listings seek chefs, management consultants, wildlife-conservation scientists, archivists, private investigators, police sergeants, reporters, teachers, and rental-counter clerks. One recent job ad called for experts in \u201cNorth American early to mid-teen humor\u201d who can, among other requirements, \u201cexplain humor using clear, logical language, including references to North American slang, trends, and social norms.\u201d It is, as one industry veteran put it, the largest harvesting of human expertise ever attempted.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>These companies have found rich recruiting ground among the growing ranks of the highly educated and underemployed. Aside from the 2008 financial crash and the pandemic, hiring is at its lowest point in decades. This past August, the early-career job-search platform Handshake found that job postings on the site had declined more than 16 percent compared with the year before and that listings were receiving 26 percent more applications. Meanwhile, Handshake launched an initiative last year connecting job seekers with roles producing AI training data. \u201cAs AI reshapes the future of work,\u201d the company wrote, announcing the program, \u201cwe have the responsibility to rethink, educate, and prepare our network to navigate careers and participate in the AI economy.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>There is an underlying tension between the predictions of generally intelligent systems that can replace much of human cognitive labor and the money AI labs are actually spending on data to automate one task at a time. It is the difference between a future of abrupt mass unemployment and something more subtle but potentially just as disruptive: a future in which a growing number of people find work teaching AI to do the work they once did. The first wave of these workers consists of software engineers, graphic designers, writers, and other professionals in fields where the new training techniques are proving effective. They find themselves in a surreal situation, competing for precarious gigs pantomiming the careers they\u2019d hoped to have.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span aria-hidden=\"true\"><span class=\"z1fbk01 title-font\"\/>ach<\/span><span class=\"sr-only\">Each<\/span><span> of the more than 30 workers I spoke with occupied a position along a vast and growing data-supply chain. There are people crafting checklists that define a good chatbot response, typically called \u201crubrics,\u201d and other people grading those rubrics. Others grade chatbot answers <em>according<\/em> to those rubrics, and still others take the rubrics and write out what\u2019s often described as a \u201cgolden output,\u201d or the ideal chatbot answer. Others are asked to explain every step they took to arrive at this golden output in the voice of a chatbot thinking to itself, producing what\u2019s called a \u201creasoning trace\u201d for AI to follow later when it encounters a similar task out in the real world.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Sometimes the labs want only rubrics for prompts their AI can\u2019t already do, which means companies like Mercor ask workers to produce \u201cstumpers,\u201d or requests that will make the model fail. \u201cIt sounds easy, but it\u2019s really hard,\u201d says a worker who was trying to stump models by asking them to make inventory-management dashboards. Models fail in counterintuitive ways. They may be able to solve advanced-physics exam questions, but ask them for transit directions and they\u2019ll recommend transferring on nonconnecting train lines. Finding these weak spots takes time and creativity.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>One type of project gathers groups of lawyers, human-resources managers, teachers, consultants, or bankers for something Mercor calls world-building. \u201cYou and your team will role-play a real-life team within your profession,\u201d the training materials read. The teams are given dedicated emails, calendars, and chat apps and asked to create a hundred or more documents that would be associated with some corporate undertaking, like a fictional mining company analyzing whether to enter the data-center business.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>After several 16-hour days of fantasy document production, one worker recounts, the resulting slide decks, meeting notes, and financial forecasts are sent to another team, which uses them as grist in their attempts to stump a model operating in this simulated corporate environment. Then, having stumped the model, that team writes new, more nuanced rubrics, golden answers, and so on. Workers can only guess who the customer is or how many others are working on the project \u2014 based on references to teams like Management Consulting World No. 133, there could be hundreds, maybe thousands.<\/span><\/p>\n<figure class=\"_1nqd5v80\"\/>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>There are people hired to evaluate the ability of image models to follow their prompts and others who summarize video clips in extraordinary detail, presumably to train video models. Efforts to improve AI\u2019s ability to have spoken conversations have resulted in a surging demand for voice actors, who might find themselves recording \u201cauthentic, emotionally resonant\u201d speeches, according to one listing. \u201cI just tell people I\u2019m an AI trainer, then it sounds more professional than what I\u2019m doing,\u201d says an aspiring screenwriter who was instructed to record himself pretending to ask a chatbot for a fitness plan while pots and pans clanged in the kitchen. Another time, he was told to record himself dispensing financial advice over the phone to a parade of people he assumed were other workers.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>This audio might then be broken down and sent to someone like Ernest, who used to make a living as an online tutor until the company he worked for replaced him with a chatbot. When we spoke, he was listening to minutelong clips of random dialogue slowed to 0.1x speed and marking when someone started and stopped speaking down to the millisecond. Many of the clips included a person talking with a chatbot and interjecting \u201chuh\u201d or \u201cI see,\u201d so he assumes he was improving AI\u2019s ability to have naturally flowing conversation, but he has no actual idea.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>As is standard practice in the field, the project was referred to by a codename and the client only ever as \u201cthe client.\u201d The entire system is designed so that workers have minimal insight into the supply chain they are part of. If they find out who the customer is, they are contractually forbidden from telling anyone, even their own colleagues. Nor are they allowed to describe the details of their work beyond broad generalities like \u201cproviding expertise in XYZ domain to improve models for a top AI lab,\u201d according to one Mercor agreement. So afraid are workers of inadvertently violating their confidentiality agreements and getting fired that when they discuss their work in public forums, they mask their already codenamed projects with additional codenames, for example by referring to a project called \u201cRaven\u201d as \u201cPoe.\u201d<\/span><\/p>\n<blockquote class=\"mal5830\">\n<div class=\"mal5831\">\n<p>\u201cI\u2019m being handed a shovel and told to dig my own grave.\u201d<\/p>\n<\/div>\n<\/blockquote>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span aria-hidden=\"true\"><span class=\"z1fbk01 title-font\"\/>atya\u2019s<\/span><span class=\"sr-only\">Katya\u2019s<\/span><span> second project with Mercor was far more stressful. There was less work to go around, and it came in fits and starts. Managers would drop a message in the Slack channel saying new tasks were incoming in half an hour, and, she says, \u201ceveryone in Slack would drop what they were doing and jump on them like piranhas,\u201d working as fast as they could while the bar showing how many tasks remained slid toward zero. Then they were back in Slack again, politely begging supervisors for more work and more hours, talking about their kids\u2019 birthdays or their need to pay rent, or telling anyone who might be listening that their availability was wide open in case there was more work to be done. Soon, Katya was dropping everything at the sound of a Slack ding too. \u201cSometimes I\u2019m on the toilet or at dinner and I get the Slack notification. I\u2019m like, \u2018Oh, sorry, I gotta work now.\u2019\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>That project soon ended and then came another. It was nearly identical to the first, which she had enjoyed, but now, on top of writing rubrics, she had to stump the model and complete the more difficult task in the same amount of time. She was also getting paid $8 an hour less. This is common at Mercor. Nearly every worker I spoke with reported that demands increased, time requirements shrank, and pay decreased as projects continued. Those who couldn\u2019t meet the new demands got \u201coffboarded\u201d and replaced by new recruits.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Chris joined Mercor last year, after a difficult few months struggling to find film work. Unlike many people who suspect they\u2019re casualties of automation, he knew for certain that this was the case. He\u2019d had a recurring job drafting episodes for an unscripted television show \u2014 doing preinterviews, sketching scenes, writing the reality TV equivalent of a screenplay. But in late 2024, he was told the show would be running on a \u201cskeleton crew\u201d and his work was no longer needed. He found out later the company was using ChatGPT to draft new episodes. So that October, when Chris received an offer to write an entire sci-fi screenplay for a major AI company, he said \u201cyes,\u201d grim as the prospect was. Since then, he has gone from gig to gig. \u201cThis is my only source of income right now,\u201d he says. \u201cI know people who are award-winning producers and directors, and they\u2019re not advertising that they\u2019re doing this work, but that\u2019s how they\u2019re putting food on the table.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>His first jobs with Mercor were, like Katya\u2019s, relatively pleasant and well paid, but soon came the 6PM fist-bump-emoji Slack exhortations to \u201ccome on team, let\u2019s push through this,\u201d followed by sudden halts and months of silence. \u201cYou were just constantly waiting for the crack of the starting gun at any hour of the day,\u201d Chris says. Then it was crunch time again and managers, increasingly panicked as deadlines neared, started threatening workers with offboarding if they didn\u2019t complete tasks quickly enough.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>The time he spent working was tracked to the second by software called Insightful, which monitored everything he did on his computer. Time that the software deems \u201cunproductive\u201d could be deducted from his pay, and if a few minutes passed without him typing, the system pinged him to ask whether he had been working. Sometimes Chris saw people post in Slack that they\u2019d gone over the target time on a particularly tricky task and that they hoped it would be okay; the next day, they would be gone.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Increasingly worried he would be offboarded too, he started working off the clock, deactivating Insightful while reading instructions so he could move faster. If he went over the target time, he turned the clock off and kept working for free.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Companies say this software is necessary to accurately track hours and prevent workers from cheating, which, in this case, means using AI, something all data companies strictly forbid. The ground truth of verified human expertise is what they\u2019re selling, and when AI trains on AI-generated data, it gradually degrades, a phenomenon researchers call \u201cmodel collapse.\u201d Employees of data companies say it is a constant battle to screen out AI slop. For workers, AI is a particular temptation as pressure increases. When the retail expert trying to stump models with analytics dashboards had her target time dropped from eight hours per task to five to three and a half, she turned off Insightful and sought outside help. \u201cTo be honest, I went into Copilot and ChatGPT and put my prompt in there and said, \u2018How can I work this so you guys can\u2019t answer it?\u2019\u201d Then she went to another chatbot and asked if the prompt sounded AI generated and, if so, to make it sound more human.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cIt\u2019s just so horrible, the mental effect of it,\u201d says Mimi, a screenwriter who has worked on multiple streaming shows and has been training AI for Mercor for several months. She found out about Mercor from a fellow screenwriter who dropped one of its job links in a Writers Guild of America Facebook group.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Like a lot of people in this line of work, Mimi is conflicted. \u201cOne documentary-maker who\u2019s won Emmys, he messaged me and he was like, \u2018I\u2019m being handed a shovel and told to dig my own grave,\u2019 and that\u2019s exactly how everyone thinks about it,\u201d she says. Still, as a single mom, she needed the money. She was thankful for the work at first, then the project was paused, unpaused, and paused again. For five weeks, she was told a project would be starting imminently. When it finally did, requirements were added, while the expected time shortened, and she raced to keep up under the watchful eye of Insightful. She felt that someone put it well on Slack when they said it was like they were living in a fishbowl waiting for their human masters to drop in food, and only the ones who were fast enough to swim to the top could eat.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cLast night, I got so fucking stressed because my kid came home and it was 7PM, and I get this message, \u2018The tasks are out!\u2019 and I\u2019m just working, just trying to get as many hours in before I can go to bed,\u201d Mimi says, choking up. \u201cI spend no time with my kid, and at one point, he can\u2019t find something for school and I just start screaming at him. This work is turning me into a fucking demon.\u201d She\u2019s especially disturbed by the surveillance: \u201cThe idea that somebody can measure your time and that all the little bits that go into being a human are taken away because they\u2019re not profitable, that you can\u2019t charge for going to the toilet because that\u2019s not time you\u2019re working, you can\u2019t charge for making a cup of coffee because that\u2019s not time you\u2019re working, you can\u2019t charge for having a stretch because your back hurts. This is why unions were formed, so people could have guaranteed hours and guaranteed lunch breaks and guaranteed holidays and sick pay. This is the gig economy to the very extreme.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>This is what concerns her more than the AI itself: that it\u2019s bringing to knowledge work the sort of precarious platform labor that has transformed taxi driving and food delivery. Meanwhile, she watches in horror the desperate gratitude of her colleagues as they rejoice at the 7PM announcement of incoming work.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cHow long are these tasks expected to last?\u201d one worker asked in Slack.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cI\u2019m wondering too, I\u2019d like to know whether I can sleep or not.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>With no answer forthcoming, they swapped tips on how to stave off sleep.<\/span><\/p>\n<blockquote class=\"mal5830\">\n<div class=\"mal5831\">\n<p>\u201cNobody knows what\u2019s going on. Everybody\u2019s really confused.\u201d<\/p>\n<\/div>\n<\/blockquote>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span aria-hidden=\"true\"><span class=\"z1fbk01 title-font\"\/>hen<\/span><span class=\"sr-only\">When<\/span><span> Mercor began recruiting aggressively last year, it framed itself as a more worker-friendly version of the platforms that had come before it. Criticizing his rival Scale AI on a podcast, Foody, Mercor\u2019s CEO, said, \u201cHaving phenomenal people that you treat incredibly well is the most important thing in this market.\u201d Workers who joined during this time do report being treated well; the pay was better than elsewhere, and instead of being managed by opaque algorithms, as is common, there were actual human supervisors they could go to with questions.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>But people who have worked in management at data companies say they often start out this way, wooing workers off incumbent platforms with promises of better treatment, only for conditions to degrade as they compete to win eight-figure contracts doled out by the half-dozen AI companies who are interested in buying this data in bulk. At Mercor, there was the additional complication of management largely consisting of people in their 20s with minimal work experience who had been given hundreds of millions of investor dollars to pursue rapid growth.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cI don\u2019t care if somebody\u2019s 21 and they\u2019re my manager,\u201d says Chris, the reality TV producer. \u201cBut they\u2019ve never worked at this scale. When you try to find some kind of guidance in Slack, very maturely and clearly explaining what the situation is, you get a meme back with a corgi rolling its eyes and it says, \u2018Use your judgment.\u2019 But it\u2019s like, \u2018Use your judgment and fuck it up, and you get fired.\u2019 You went to Harvard, you graduated last year, and your guidance for a group of people, many of whom are experienced professionals, is a meme?\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Lawyers, designers, producers, writers, scientists \u2014 all complained of inexperienced managers giving contradictory instructions, demanding long hours or mandatory Zoom meetings for ostensibly flexible work, and threatening people with offboarding for moving too slowly, threats that were particularly galling for mid-career professionals who felt their 20-year-old bosses barely understood the fields they were trying to automate.<\/span><\/p>\n<figure class=\"_1nqd5v80\"\/>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cThe founders pride themselves on \u20189-9-6,\u2019\u201d says a lawyer, referring to a term that originated in China to describe 72-hour workweeks associated with burnout and suicide but has been appropriated by Silicon Valley as aspirational. \u201cYou need to be accessible at all hours, and they\u2019re going to pump out messages at 6AM, and you better jump because the perception is you will be offboarded and another person will replace you.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cIt\u2019s not just that team leads are young, project managers are young, senior project managers are young. It\u2019s that the senior-senior project managers, the ones responsible for the project in its entirety, are young. I guess that comes from the top because <em>they\u2019re<\/em> young, right?\u201d says Lindsay, a graphic designer and illustrator in her 50s who came to Mercor after 85 percent of her work evaporated over the past year, owing, she believes, to improvements in generative AI.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Increasingly desperate for work, she scoured job boards; it seemed the only listings matching her expertise were offers to help build the technology she blamed for demolishing her career. \u201cI swallowed my hatred and signed up,\u201d she says. After some initial work producing graphic-design data, she was invited to join a job for Meta grabbing videos from Instagram Reels and tagging whatever was in them. It was boring, and at $21 per hour, the pay was middling, but Lindsay needed the money. So, she discovered when she was brought into the project\u2019s Slack, did approximately 5,000 others.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>In early November, a Mercor representative announced that Lindsay\u2019s project would be ending owing to \u201cscope changes,\u201d though workers had previously been told the project would run through the end of the year. Lindsay and thousands of others found themselves removed from the company\u2019s Slack.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Soon, an email arrived in their inbox, inviting them to a new project called Nova paying $16 per hour.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Thousands of workers poured into the new Slack only to discover it was the exact same job, now paying 24 percent less. All but two of the Slack channels had been deleted, including the watercooler, support, and help rooms. The ability to direct-message one another had also been cut off. There were no team leads to be found. With no one to ask for assistance, workers flooded the main rooms with pleas and indignation.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cNobody knows what\u2019s going on. Everybody\u2019s really confused,\u201d says Lindsay. \u201cThe messages are coming so fast in that channel. It\u2019s just absolute chaos. \u2018Help, please. What do I do? What am I supposed to do? Where do I go? Can I get started tasking? Am I supposed to redo all the assessments that I\u2019ve done before?\u2019\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Someone emailed support asking for help, and for some reason that email was sent to every one of the thousand-some people on the project, who seized on it and began to reply-all with their bafflement and outrage. \u201cIt was absolute carnage,\u201d says Lindsay. \u201cThere\u2019s no other word for it.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Workers began posting complaints on Mercor\u2019s subreddit, only to have their posts quickly deleted by the Mercor representatives who moderate it. In response, two unsanctioned Mercor subreddits were created, where workers could freely express such sentiments as \u201cCHILDREN RUN THIS COMPANY, THEY WILL SOON HAVE THEIR DAY OF RECKONING.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cIt\u2019s just really sad,\u201d says Lindsay. \u201cThere are some people in there where it\u2019s genuinely the difference between them being able to feed their families and not feed their families.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>\u201cI hate gen AI,\u201d she adds. \u201cI think AI should be used for curing cancer. I think it should be used for space exploration, not in the creative industries. But I need to be able to pay my rent. And then when people like Mercor pull this stuff where they treat you like nothing more than a lab rat \u2014 I\u2019ve been working for a very long time. I have never, ever been treated as badly as this.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span aria-hidden=\"true\"><span class=\"z1fbk01 title-font\"\/>ntermittent<\/span><span class=\"sr-only\">Intermittent<\/span><span> work, extreme secrecy, and abrupt firings are the norm across the data industry. On Surge AI\u2019s work platform, called Data Annotation Tech, workers are not only regularly terminated without explanation; they are often not even told they\u2019ve been fired. They just log in one day and find the dashboard empty of tasks. The phenomenon is so ubiquitous they call it simply \u201cthe dash of death.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Last year, a Texan with a master\u2019s degree in divinity who was teaching voice models to respond to queries with appropriate levels of feeling \u2014 different tones for a user telling them their dog died versus asking for a trip itinerary \u2014 logged in to work one morning and found his dashboard empty. Scrolling to the bottom of the page for the support button, he discovered it no longer worked. That\u2019s when he knew he had been terminated. His mind raced through possible reasons: Had he worked too much? Had his quality slipped? He knew he would never find out. \u201cI felt cut adrift,\u201d he says. Anxious about how he would pay his bills and care for his ailing dog, he grew depressed, then horrified. He thought about his teacher friends who couldn\u2019t get their students to write and all the people graduating with now-worthless computer-science degrees. \u201cThe technology makes us see everything as a utility, something to be used,\u201d he says, a category that he feels includes discarded data workers like himself. He resolved to become a chaplain, figuring that no matter what the AI future holds, people will need a fellow human to be there for them.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>The on-again, off-again nature of the work is not just the result of company culture; it stems from the cadence of AI development itself. People across the industry described the pattern. A model builder, like OpenAI or Anthropic, discovers that its model is weak on chemistry, so it pays a data vendor like Mercor or Scale AI to find chemists to make data. The chemists do tasks until there is a sufficient quantity for a batch to go back to the lab, and the job is paused until the lab sees how the data affects the model. Maybe the lab moves forward, but this time, it\u2019s asking for a slightly different type of data. When the job resumes, the vendor discovers the new instructions make the tasks take longer, which means the cost estimate the vendor gave the lab is now wrong, which means the vendor cuts pay or tries to get workers to move faster. The new batch of data is delivered, and the job is paused once more. Maybe the lab changes its data requirements again, discovers it has enough data, and ends the project or decides to go with another vendor entirely. Maybe now the lab wants only organic chemists and everyone without the relevant background gets taken off the project. Next, it\u2019s biology data that\u2019s in demand, or architectural sketches, or K\u201312 syllabus design.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>To compete, data companies arrange things so that they will always have workers on call while preserving their freedom to drop them at a moment\u2019s notice. \u201cEvery vendor is going to have some kind of setup whereby they don\u2019t really make promises to people,\u201d says a senior employee of a major data company. The companies rarely have much notice of these shifts themselves, sometimes because the AI developers aren\u2019t sure exactly what data they need in the first place, other times because they are shopping around for the best deal. \u201cThey want to keep us in the dark,\u201d the employee continues, \u201cso we inevitably keep the contributors in the dark, then a purchase falls through and you have a thousand people you\u2019ve trained and formed a relationship with just saying, like, \u2018What the fuck? Why isn\u2019t there work?\u2019 It\u2019s a horrible feeling from an operator\u2019s perspective, too, but obviously it\u2019s way worse for them.\u201d<\/span><\/p>\n<figure class=\"_1nqd5v80\"\/>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>The workers at the bottom of this supply chain exist in a state of extreme precarity and maximum competitive frenzy \u2014 especially because their strict confidentiality agreements make it impossible for them to establish any kind of seniority or relationship that might outlast a particular project. \u201cThe power is all on one side because they can\u2019t talk about it,\u201d says Matthew McMullen, a strategy and operations executive who has worked in the industry since the self-driving-car boom in the mid-2010s. \u201cThe labs benefit from you not being able to leverage your experience in the market, and this silence is like their pricing power. The silence is their ability to extract mass information from people without giving them the power to object or to unionize or to make companies themselves. As long as they can\u2019t prove what they\u2019ve done, these raters can\u2019t demand what they\u2019re worth. The only way that people can demand things is by showing their ability to step up, to take on more work. The only power that they have is to keep going, to get back in line.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Which is what they do. When a project for Mercor ends, managers often post a link to other projects on the platform and encourage people to apply. \u201cBut again, there are thousands of people applying, so you throw your application into a hole and hope to hear back at some undefined point,\u201d says Katya. While they wait, workers sign up for Handshake, Micro1, Alignerr, or another of the ever-growing number of data providers.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>These companies are always recruiting. Like Mercor, many use AI interviewers and automated evaluations, meaning they have no incentive to limit the number of interviews they do. Mercor offers referral bonuses of several hundred dollars, leading some to promote the company so aggressively that mentions of it have been banned from several subreddits. Katya has applied for dozens of jobs and gotten three, not an unusual ratio.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Nor do companies bear any cost for overhiring. Because workers are ostensibly independent contractors, they are not owed paid time off, breaks, healthcare, overtime pay, or unemployment benefits. It\u2019s free to keep them hanging around, and a surplus of vetted workers ensures they will jump quickly to finish tasks before someone else does. It all combines to create an arrangement in which employers can turn labor on and off like a tap. (Reached for comment, Mercor spokesperson Heidi Hagberg said that \u201cthe nature of this is project based contract work, meaning it can extend, pause, or end at any time, especially as the client\u2019s scopes and needs evolve,\u201d and that many of the worker complaints \u201cwere centered around the misalignment of expectations of a full-time job versus -project-based work.\u201d)<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>If you move fast and get lucky and have the right combination of expertise and stay on the right side of each platform\u2019s unique and mysterious recipe of productivity metrics, you can make decent money. I spoke to a playwright making $10,000 a month, a multitalented chemist who at various points found gigs demonstrating poker and singing for AI. But even then, there is an inescapable awareness of ephemerality because producing training data means working toward your own obsolescence. While the number of people doing data work may continue to rise, any particular gig will last only as long as it takes for the machines to successfully mimic it. It takes years for a human to develop expertise, and sooner or later, they\u2019re going to run out of skills to sell.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>A worker with a master\u2019s in linguistics had found steady rubric work for a year, but late in 2025, he noticed it was becoming more difficult to stump the models. Any obscure theory or Indigenous language he asked about, the model would find the correct papers. Instead of submitting three or four rubrics per week, he was lucky to get one. Everyone else on the project was following the same trajectory, so he wasn\u2019t surprised when it came to an end. Their know-how had been extracted. In the past, he\u2019d always been able to find a new gig, but now when he looked around, he saw only requests for medical experts, human-resources managers, and teachers. He has now been without work for five months and isn\u2019t sure what to do next.<\/span><\/p>\n<blockquote class=\"mal5830\">\n<div class=\"mal5831\">\n<p>These platforms are reminiscent of Uber and Lyft a decade ago. Yet in some ways these workers are in a worse position, more replaceable despite their advanced degrees<\/p>\n<\/div>\n<\/blockquote>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span aria-hidden=\"true\"><span class=\"z1fbk01 title-font\"\/>o<\/span><span class=\"sr-only\">To<\/span><span> the extent that policy responses to AI automation are discussed at all, they mostly concern what to do when AI renders large categories of workers obsolete. Maybe this will happen, but another possibility is that particular tasks will get automated and humans redistributed to other parts of the production process, some revising so-so AI output, others crafting rubrics to improve it. Much of this work will be inherently intermittent, which means it will be done by independent contractors, workers whom current regulations leave almost wholly unprotected. Daron Acemoglu, a professor of economics at MIT who studies automation, compares the situation to that of weavers, who before the industrial revolution were \u201clike the labor aristocracy,\u201d self-employed artisans in control of their own time. Then came weaving machines, and in order to survive, they were forced to take new jobs in factories, where they worked longer hours for less money under the close supervision of management. The problem wasn\u2019t simply that technology took their jobs; it enabled a new organization of work that gave all power to the owners of capital, who made work a nightmare until labor organizing and regulation set limits.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Early labor skirmishes are already happening, mostly in California, which has some of the most aggressive rules around classifying platform workers. Three class-action lawsuits have been filed against Mercor in the past six months. (Similar suits were previously filed against Surge AI and Scale AI, which is settling.) The lawsuits all accuse the companies of misclassifying workers as independent contractors given the \u201cextraordinary control\u201d they exert over them. This is \u201can entirely new kind of work,\u201d one that the company trains people to do and that cannot be done except on the company\u2019s platform. Workers have so little visibility into what they\u2019re working on that one person, alleges a suit filed in December, accepted a Mercor project only to be tasked with recording himself reading sexually explicit scripts. Once he discovered this, the worker risked deactivation if he abandoned the project, forcing him to \u201cchoose between being paid and being humiliated.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>These companies are reminiscent of Uber and Lyft a decade ago, says Glenn Danas, a partner at the law firm Clarkson, which is suing Mercor and several other data platforms. Yet in some ways these workers are in a worse position, more replaceable despite their advanced degrees. Uber drivers have to be physically present in a city to work, and they can organize and push for regulation there. If the same were to happen with data workers, companies could just recruit from somewhere else where people will work for less. When Mercor cut pay for its Meta project to $16 per hour, it dropped below the minimum wage in California and other states, yet people there kept working because they needed the money. This was something at least one supervisor acknowledged, writing in Slack, \u201cWhile we won\u2019t actively hire from any states where the minimum wage is above the project\u2019s rate, if you are already active on the project and would like to work at the $16\/hr rate, we want to enable you to do so.\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Entire professions risk a similar race to the bottom, says Acemoglu, if companies are able to pit workers against one another, each selling their data before someone else can underbid them. \u201cWe may also need unionlike organizations that exercise some sort of collective ownership and prevent any kind of simple divide-and-rule strategies by large companies to drive down data prices,\u201d he says. \u201cIf there isn\u2019t the legal infrastructure for a data economy of this sort, many of the people who produce the data will be underpaid or, to use a more loaded term, <em>exploited.<\/em>\u201d<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>Katya was among the thousands of people invited to join the $16-an-hour Project Nova and was appalled by the low pay. \u201cI think that was Mercor\u2019s experiment in how close to the bottom they can scrape without jeopardizing the data that they\u2019re getting,\u201d she says. Her main project had been paused for weeks and might resume the next day or never.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>In the end, she decided the money wasn\u2019t worth it. She applied to work at a local coffee shop. It wasn\u2019t the career pivot she\u2019d imagined when she went to grad school; she just hoped working as a barista would be more stable. \u201cAt least when you work at a coffee shop for minimum wage, you have some friends to talk to and a boss who pretends to care about you. You have some kind of security; you know what your hours are going to be week to week,\u201d she says.<\/span><\/p>\n<p class=\"duet--article--article-body-component z1fbk00 body-text\"><span>But then she heard her phone ding. One of her projects was back <\/span><span class=\"z1fbk02\">on.<span class=\"z1fbk03\"\/><\/span><\/p>\n<\/div>\n\n","protected":false},"excerpt":{"rendered":"<p>heThe LinkedIn post seemed like yet another scam job offer, but Katya was desperate enough to click. After college, she\u2019d struggled to make a living as&#46;&#46;&#46;<\/p>\n","protected":false},"author":1,"featured_media":1262,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"fifu_image_url":"https:\/\/platform.theverge.com\/wp-content\/uploads\/sites\/2\/2026\/03\/01_mobile.png?quality=90&strip=all&crop=0,23.821989528796,100,52.356020942408","fifu_image_alt":"","footnotes":""},"categories":[1],"tags":[64,202],"class_list":["post-1261","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-rj","tag-ai","tag-features"],"_links":{"self":[{"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=\/wp\/v2\/posts\/1261","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=%2Fwp%2Fv2%2Fcomments&post=1261"}],"version-history":[{"count":0,"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=\/wp\/v2\/posts\/1261\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=\/wp\/v2\/media\/1262"}],"wp:attachment":[{"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=%2Fwp%2Fv2%2Fmedia&parent=1261"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=%2Fwp%2Fv2%2Fcategories&post=1261"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/rjbarrett.redirectme.net\/index.php?rest_route=%2Fwp%2Fv2%2Ftags&post=1261"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}