I Work in Hollywood. Everyone Who Used to Make TV Is Now Secretly Training AI
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May 11, 2026 6:00 AMFor screenwriters like me—and job seekers all over—AI gig work is the new waiting tables. In eight months, I’ve done 20 of these soul-crushing contracts for five different platforms. It’s bad.Animation: Anastasia KraynyukMy name on the platform is ri611. Or h924092b12ee797f, depending on who’s paying me.I work as an AI trainer. I assess whether a chatbot’s tone is natural or flat, affected or annoying. I identify patterns in pictures of furniture; search the internet for group photos of strangers whom I’ll eliminate from the portrait, one by one. I trawl through bizarre videos so I can annotate and time-stamp the barking of a dog, the moment a stranger walks past a window, the precise millisecond a balloon pops. I generate anime sex scenes and decapitate young women, coax LLMs into giving me recipes for bombs made of household items, and generate invites to a reprise of January 6 at the White House, all as part of a red team whose purpose is to test safety precautions and probe weaknesses. I work for companies with names like Mercor and Outlier and Task-ify and Turing and Handshake and Micro1.In my “other” career, I am a Hollywood writer and showrunner. I create prime-time TV, usually featuring a middle-class white lady having the worst day of her life, with some salt-of-the-earth police interference to raise the stakes. You can find my shows on Paramount and Hulu and the BBC. I would suggest you don’t.In 2023, Hollywood went on strike, partly to keep the studios from replacing writers and actors with AI. When the strike ended after nearly five months, the entertainment-industry carousel never gained back its momentum. In early 2025—when yet another producer defaulted on a six-figure check I was owed for creating a TV show—I began to look around for some way to keep the wolves at bay.AI training wasn’t on my radar until a comment in an unofficial Writers Guild of America Facebook group caught my attention.
The page was filled with posts from unemployed writers struggling with debt and panicking about their income, begging for tips and ideas and survival strategies: “I am stressed and anxiety-ridden … simply trying to breathe” … “ISO food bank/pantry info” … “Hey, so what kind of part-time jobs are you all getting?” I’ve been working for this AI training company called Mercor, one woman typed in the comments. They’re paying 150 an hour for writers. It’s easy money.I was down for some easy money. I too needed cash to pay rent, to buy food, to pay Maggie—the human still charging me a flat rate of 150 bucks to clean my apartment, a feat that AI had not yet figured out. How hard could it be to teach a machine to take my job? I was naive enough to believe that this industry wanted what we had to offer—not just our skills, but us.I was wrong. Whatever this industry is, it is not easy money.I got my first contract as an AI trainer in September 2025 after filling out 10 job applications, laboring for 20 (unpaid) hours on numerous tests to prove my capabilities, and being interviewed by an AI recruiter agent embodied by a flickering light on my screen. I was asked what I thought of a mediocre AI-generated couple of paragraphs about a soldier in the trenches sniffing a lavender-scented letter. Using all of the skills I had acquired with my English literature degree from Cambridge, I said it was shit. Six weeks later, I was hired as a “generalist” data annotator (below “expert” but well above entry level) at $52 an hour.Once I’d passed the background check, I was made to install various apps and Slack channels and Airtables and payment portals and Google whatnots. After pinballing between them and a Zoom room where five unseen people hung out all day to counsel the legions of the confused, I was off and running.My first task was to read a conversation between a user and “the assistant,” one of the major large-language chatbot models. Using a “bible” that dictated how the assistant should respond, I was to assess the chat as a success or a failure. The prompts were quirky and sad and heartbreaking.
Are my feelings justified? Is this person’s behavior acceptable? Am I lovable? The AI responses belonged to an era when the assistant would happily tell you that you definitely had autism, your dad was clearly bipolar. I wondered if the user knew they had opted into sharing their private agonies as training data. After grading the assistant’s response on a scale of 1 to 5, I was to enter a justification for my verdict.Our project manager, an intrepid 22-year-old recent university graduate who said he had intended to get into investment banking but failed, was in charge of about 10 unfriendly “team leaders” and “data managers.” Every day at a set time we would have Zoom office hours where we could discuss the complexities of our tasks. Our creative skills and our special minds were invaluable to this very important project! But it would be great if—in typing up justifications for our scores—we could keep our special minds on a tight leash and subordinate them to our ability to copy and paste verbatim from the scoring guidelines. Going off-piste with creativity, original thought, or fancy language might throw the model off.I made friends with a handsome Swedish man who lived in the Nordic wilderness with his husband and numerous mammals. He had been on the project about a month longer than I had, and he kindly walked me through the platform and our employer’s expectations, which had been astonishingly vague despite the insistence that this work was urgent, important, and relevant, and must be guarded with the utmost secrecy. Handsome Swede and I exchanged contact information and shared dog pictures. The project was meant to be 20 hours a week for two months. I clocked 10 hours a week for two weeks, with constant stops and starts, before the project was summarily unplugged one morning with no notice. “Sorry guys,” typed University Graduate. “I had no idea this was coming.”The Slacks and Airtables and office hours and Google documents were swiftly disbanded within a couple of hours. The project was over.Illustration: Anastasia KraynyukMost of the contracting companies that provide labor to AI firms advertise themselves to workers as offering the luxury of choice: “Contractors on Mercor’s platform choose when and how much to work,” sounding a common industry refrain. “How they participate on the platform is up to them.” Set hours and times are for boomers.
Work on your own terms! Early on, I had this sales pitch bluntly reframed to me by a team leader in a midnight Slack message. I should not rely on this work, she snapped. I should not expect anything from it. These are not jobs, these are “tasks,” and we are “taskers.” I should think of tasking as a bonus. It is a “second job,” Team Leader typed.She was so unpleasant she had to be human.Four weeks after my first gig ended, I was offered an “expert” role, this time at $70 an hour. An “expert” is someone who usually has a higher degree, often a master’s, and significant work experience in their field, be it real estate, neurology, linguistics, history—or journalism. (“Expert” projects, I would learn, were typically given multisyllabic names from dead languages. Projects involving the minimum-wage grunt work of annotating tended to be named after small woodland creatures or celestial bodies. It is either a sign of my accomplishments, or my severe ADHD, that I was apparently a match for both.)Work on Project Dead Language would start within a week, we were told. I went through another onboarding process. I joined another Slack. I signed up to another Airtable, which failed to indicate in any way whether the sign-up had been successful, prompting me to sign up a couple more times in confusion, before I noticed an all-caps message in the Slack exhorting me: DO NOT SIGN UP FOR THE AIRTABLE MORE THAN ONCE!!A week passed, and “Phase 2” of the project failed to start.Another week.Another.Thanksgiving arrived. Heartened by the prospect of extra cash, I drove six hours to Yosemite so that I could sit in an expensive cabin with my child and we could ignore each other in idyllic surroundings. Still Phase 2 did not arrive.I had erroneously assumed that this new project would net me maybe $500 to $1,000 a week for a couple of months before Christmas. By December 1, I had earned just 180 of your finest American dollars.Project dead language eventually launched not long before Christmas, four weeks after I’d joined. It was 9 pm on a Monday night.
The doom pervading the Slack evaporated instantly and was replaced by panic over various technical problems. Turns out a bunch of people had, like me, registered for the Airtable multiple times over. None of us could access the tasks. By the time our tech issues were resolved 24 hours later, the work had run out. The tasks were finite. The smug few who’d evaded glitches had snatched them all up.This abrupt hiring, firing, stopping, starting, abandonment, and rapid depletion of projects, was, I would learn, commonplace. A friend we shall call Jonathan, a mid-level TV writer who’d worked on several big streaming shows, was employed as an Expert Creative Writer. He was paid $150 an hour to evaluate scripts for OpenAI. He said it was all “a bit Hunger Games,” meaning he slept when they slept, and curried favor among his sponsors, also known as “TLs”—the team leaders who seemingly had the ability to hire and fire us at will. “It feels like we are all in a fishbowl waiting for our human masters to drop some food in a big aquarium,” someone wrote plaintively in a Slack for another project I joined that yielded barely any work. “And then, only the ones who are fast enough to swim to the top can eat.”The more this became my new normal, the more I adjusted to the creaking lurch and giddy whiplash of the job. While we lounged in unpaid stasis waiting for an email to herald the arrival of work, we would be urged on by our team leaders and their exclamation points. Here they are at 3 am Eastern time with an update on why our Slack access has been revoked and why we need to change our password for the 17th time! There they are again at 11 pm with another energetic exhortation that the project will start any day now! At 7 am they’re back with the news that The Client is just finishing up Phase 1! At 2:27 pm: If you were a pizza, what kind of pizza would you be? Cue smiley face emoji. Fist emoji. Pizza emoji.This would continue indefinitely.