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Gig apps trap reverse centaurs in Skinner boxes
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Enshittification is the process by which digital platforms devour themselves: first they dangle goodies in front of end users. Once users are locked in, the goodies are taken away and dangled before business customers who supply goods to the users. Once those business customers are stuck on the platform, the goodies are clawed away and showered on the platform’s shareholders:
https://pluralistic.net/2023/01/21/potemkin-ai/#hey-guys
If you’d like an essay-formatted version of this post to read or share, here’s a link to it on pluralistic.net, my surveillance-free, ad-free, tracker-free blog:
https://pluralistic.net/2023/04/12/algorithmic-wage-discrimination/#fishers-of-men
Enshittification isn’t just another way of saying “fraud” or “price gouging” or “wage theft.” Enshittification is intrinsically digital, because moving all those goodies around requires the flexibility that only comes with a digital businesses. Jeff Bezos, grocer, can’t rapidly change the price of eggs at Whole Foods without an army of kids with pricing guns on roller-skates. Jeff Bezos, grocer, can change the price of eggs on Amazon Fresh just by twiddling a knob on the service’s back-end.
Twiddling is the key to enshittification: rapidly adjusting prices, conditions and offers. As with any shell game, the quickness of the hand deceives the eye. Tech monopolists aren’t smarter than the Gilded Age sociopaths who monopolized rail or coal — they use the same tricks as those monsters of history, but they do them faster and with computers:
https://doctorow.medium.com/twiddler-1b5c9690cce6
If Rockefeller wanted to crush a freight company, he couldn’t just click a mouse and lay down a pipeline that ran on the same route, and then click another mouse to make it go away when he was done. When Bezos wants to bankrupt Diapers.com — a company that refused to sell itself to Amazon — he just moved a slider so that diapers on Amazon were being sold below cost. Amazon lost $100m over three months, diapers.com went bankrupt, and every investor learned that competing with Amazon was a losing bet:
https://slate.com/technology/2013/10/amazon-book-how-jeff-bezos-went-thermonuclear-on-diapers-com.html
That’s the power of twiddling — but twiddling cuts both ways. The same flexibility that digital businesses enjoy is hypothetically available to workers and users. The airlines pioneered twiddling ticket prices, and that naturally gave rise to countertwiddling, in the form of comparison shopping sites that scraped the airlines’ sites to predict when tickets would be cheapest:
https://pluralistic.net/2023/02/27/knob-jockeys/#bros-be-twiddlin
The airlines — like all abusive businesses — refused to tolerate this. They were allowed to touch their knobs as much as they wanted — indeed, they couldn’t stop touching those knobs — but when we tried to twiddle back, that was “felony contempt of business model,” and the airlines sued:
https://www.cnbc.com/2014/12/30/airline-sues-man-for-founding-a-cheap-flights-website.html
And sued:
https://www.nytimes.com/2018/01/06/business/southwest-airlines-lawsuit-prices.html
Platforms don’t just hate it when end-users twiddle back — if anything they are even more aggressive when their business-users dare to twiddle. Take Para, an app that Doordash drivers used to get a peek at the wages offered for jobs before they accepted them — something that Doordash hid from its workers. Doordash ruthlessly attacked Para, saying that by letting drivers know how much they’d earn before they did the work, Para was violating the law:
https://www.eff.org/deeplinks/2021/08/tech-rights-are-workers-rights-doordash-edition
Which law? Well, take your pick. The modern meaning of “IP” is “any law that lets me use the law to control my competitors, competition or customers.” Platforms use a mix of anticircumvention law, patent, copyright, contract, cybersecurity and other legal systems to weave together a thicket of rules that allow them to shut down rivals for their Felony Contempt of Business Model:
https://locusmag.com/2020/09/cory-doctorow-ip/
Enshittification relies on unlimited twiddling (by platforms), and a general prohibition on countertwiddling (by platform users). Enshittification is a form of fishing, in which bait is dangled before different groups of users and then nimbly withdrawn when they lunge for it. Twiddling puts the suppleness into the enshittifier’s fishing-rod, and a ban on countertwiddling weighs down platform users so they’re always a bit too slow to catch the bait.
Nowhere do we see twiddling’s impact more than in the “gig economy,” where workers are misclassified as independent contractors and put to work for an app that scripts their every move to the finest degree. When an app is your boss, you work for an employer who docks your pay for violating rules that you aren’t allowed to know — and where your attempts to learn those rules are constantly frustrated by the endless back-end twiddling that changes the rules faster than you can learn them.
As with every question of technology, the issue isn’t twiddling per se — it’s who does the twiddling and who gets twiddled. A worker armed with digital tools can play gig work employers off each other and force them to bid up the price of their labor; they can form co-ops with other workers that auto-refuse jobs that don’t pay enough, and use digital tools to organize to shift power from bosses to workers:
https://pluralistic.net/2022/12/02/not-what-it-does/#who-it-does-it-to
Take “reverse centaurs.” In AI research, a “centaur” is a human assisted by a machine that does more than either could do on their own. For example, a chess master and a chess program can play a better game together than either could play separately. A reverse centaur is a machine assisted by a human, where the machine is in charge and the human is a meat-puppet.
Think of Amazon warehouse workers wearing haptic location-aware wristbands that buzz at them continuously dictating where their hands must be; or Amazon drivers whose eye-movements are continuously tracked in order to penalize drivers who look in the “wrong” direction:
https://pluralistic.net/2021/02/17/reverse-centaur/#reverse-centaur
The difference between a centaur and a reverse centaur is the difference between a machine that makes your life better and a machine that makes your life worse so that your boss gets richer. Reverse centaurism is the 21st Century’s answer to Taylorism, the pseudoscience that saw white-coated “experts” subject workers to humiliating choreography down to the smallest movement of your fingertip:
https://pluralistic.net/2022/08/21/great-taylors-ghost/#solidarity-or-bust
While reverse centaurism was born in warehouses and other company-owned facilities, gig work let it make the leap into workers’ homes and cars. The 21st century has seen a return to the cottage industry — a form of production that once saw workers labor far from their bosses and thus beyond their control — but shriven of the autonomy and dignity that working from home once afforded:
https://doctorow.medium.com/gig-work-is-the-opposite-of-steampunk-463e2730ef0d
The rise and rise of bossware — which allows for remote surveillance of workers in their homes and cars — has turned “work from home” into “live at work.” Reverse centaurs can now be chickenized — a term from labor economics that describes how poultry farmers, who sell their birds to one of three vast poultry processors who have divided up the country like the Pope dividing up the “New World,” are uniquely exploited:
https://onezero.medium.com/revenge-of-the-chickenized-reverse-centaurs-b2e8d5cda826
A chickenized reverse centaur has it rough: they must pay for the machines they use to make money for their bosses, they must obey the orders of the app that controls their work, and they are denied any of the protections that a traditional worker might enjoy, even as they are prohibited from deploying digital self-help measures that let them twiddle back to bargain for a better wage.
All of this sets the stage for a phenomenon called algorithmic wage discrimination, in which two workers doing the same job under the same conditions will see radically different payouts for that work. These payouts are continuously tweaked in the background by an algorithm that tries to predict the minimum sum a worker will accept to remain available without payment, to ensure sufficient workers to pick up jobs as they arise.
This phenomenon — and proposed policy and labor solutions to it — is expertly analyzed in “On Algorithmic Wage Discrimination,” a superb paper by UC Law San Franciscos Veena Dubal:
https://papers.ssrn.com/sol3/papers.cfm?abstract_id=4331080
Dubal uses empirical data and enthnographic accounts from Uber drivers and other gig workers to explain how endless, self-directed twiddling allows gig companies pay workers less and pay themselves more. As @[email protected] explains in his LA Times article on Dubal’s research, the goal of the payment algorithm is to guess how often a given driver needs to receive fair compensation in order to keep them driving when the payments are unfair:
https://www.latimes.com/business/technology/story/2023-04-11/algorithmic-wage-discrimination
The algorithm combines nonconsensual dossiers compiled on individual drivers with population-scale data to seek an equilibrium between keeping drivers waiting, unpaid, for a job; and how much a driver needs to be paid for an individual job, in order to keep that driver from clocking out and doing something else. @ Here’s how that works. Sergio Avedian, a writer for The Rideshare Guy, ran an experiment with two brothers who both drove for Uber; one drove a Tesla and drove intermittently, the other brother rented a hybrid sedan and drove frequently. Sitting side-by-side with the brothers, Avedian showed how the brother with the Tesla was offered more for every trip:
https://www.youtube.com/watch?v=UADTiL3S67I
Uber wants to lure intermittent drivers into becoming frequent drivers. Uber doesn’t pay for an oversupply of drivers, because it only pays drivers when they have a passenger in the car. Having drivers on call — but idle — is a way for Uber to shift the cost of maintaining a capacity cushion to its workers.
What’s more, what Uber charges customers is not based on how much it pays its workers. As Uber’s head of product explained: Uber uses “machine-learning techniques to estimate how much groups of customers are willing to shell out for a ride. Uber calculates riders’ propensity for paying a higher price for a particular route at a certain time of day. For instance, someone traveling from a wealthy neighborhood to another tony spot might be asked to pay more than another person heading to a poorer part of town, even if demand, traffic and distance are the same.”
https://qz.com/990131/uber-is-practicing-price-discrimination-economists-say-that-might-not-be-a-bad-thing/
Uber has historically described its business a pure supply-and-demand matching system, where a rush of demand for rides triggers surge pricing, which lures out drivers, which takes care of the demand. That’s not how it works today, and it’s unclear if it ever worked that way. Today, a driver who consults the rider version of the Uber app before accepting a job — to compare how much the rider is paying to how much they stand to earn — is booted off the app and denied further journeys.
Surging, instead, has become just another way to twiddle drivers. One of Dubal’s subjects, Derrick, describes how Uber uses fake surges to lure drivers to airports: “You go to the airport, once the lot get kind of full, then the surge go away.” Other drivers describe how they use groupchats to call out fake surges: “I’m in the Marina. It’s dead. Fake surge.”
That’s pure twiddling. Twiddling turns gamification into gamblification, where your labor buys you a spin on a roulette wheel in a rigged casino. As a driver called Melissa, who had doubled down on her availability to earn a $100 bonus awarded for clocking a certain number of rides, told Dubal, “When you get close to the bonus, the rides start trickling in more slowly…. And it makes sense. It’s really the type of shit that they can do when it’s okay to have a surplus labor force that is just sitting there that they don’t have to pay for.”
Wherever you find reverse-centaurs, you get this kind of gamblification, where the rules are twiddled continuously to make sure that the house always wins. As a contract driver Amazon reverse centaur told Lauren Gurley for Motherboard, “Amazon uses these cameras allegedly to make sure they have a safer driving workforce, but they’re actually using them not to pay delivery companies”:
https://www.vice.com/en/article/88npjv/amazons-ai-cameras-are-punishing-drivers-for-mistakes-they-didnt-make
Algorithmic wage discrimination is the robot overlord of our nightmares: its job is to relentlessly quest for vulnerabilities and exploit them. Drivers divide themselves into “ants” (drivers who take every job) and “pickers” (drivers who cherry-pick high-paying jobs). The algorithm’s job is ensuring that pickers get the plum assignments, not the ants, in the hopes of converting those pickers to app-dependent ants.
In my work on enshittification, I call this the “giant teddy bear” gambit. At every county fair, you’ll always spot some poor jerk carrying around a giant teddy-bear they “won” on the midway. But they didn’t win it — not by getting three balls in the peach-basket. Rather, the carny running the rigged game either chose not to operate the “scissor” that kicks balls out of the basket. Or, if the game is “honest” (that is, merely impossible to win, rather than gimmicked), the operator will make a too-good-to-refuse offer: “Get one ball in and I’ll give you this keychain. Win two keychains and I’ll let you trade them for this giant teddy bear.”
Carnies aren’t in the business of giving away giant teddy bears — rather, the gambit is an investment. Giving a mark a giant teddy bear to carry around the midway all day acts as a convincer, luring other marks to try to land three balls in the basket and win their own teddy bear.
In the same way, platforms like Uber distribute giant teddy bears to pickers, as a way of keeping the ants scurrying from job to job, and as a way of convincing the pickers to give up whatever work allows them to discriminate among Uber’s offers and hold out for the plum deals, whereupon then can be transmogrified into ants themselves.
Dubal describes the experience of Adil, a Syrian refugee who drives for Uber in the Bay Area. His colleagues are pickers, and showed him screenshots of how much they earned. Determined to get a share of that money, Adil became a model ant, driving two hours to San Francisco, driving three days straight, napping in his car, spending only one day per week with his family. The algorithm noticed that Adil needed the work, so it paid him less.
Adil responded the way the system predicted he would, by driving even more: “My friends they make it, so I keep going, maybe I can figure it out. It’s unsecure, and I don’t know how people they do it. I don’t know how I am doing it, but I have to. I mean, I don’t find another option. In a minute, if I find something else, oh man, I will be out immediately. I am a very patient person, that’s why I can continue.”
Another driver, Diego, told Dubal about how the winners of the giant teddy bears fell into the trap of thinking that they were “good at the app”: “Any time there’s some big shot getting high pay outs, they always shame everyone else and say you don’t know how to use the app. I think there’s secret PR campaigns going on that gives targeted payouts to select workers, and they just think it’s all them.”
That’s the power of twiddling: by hoarding all the flexibility offered by digital tools, the management at platforms can become centaurs, able to string along thousands of workers, while the workers are reverse-centaurs, puppeteered by the apps.
As the example of Adil shows, the algorithm doesn’t need to be very sophisticated in order to figure out which workers it can underpay. The system automates the kind of racial and gender discrimination that is formally illegal, but which is masked by the smokescreen of digitization. An employer who systematically paid women less than men, or Black people less than white people, would be liable to criminal and civil sanctions. But if an algorithm simply notices that people who have fewer job prospects drive more and will thus accept lower wages, that’s just “optimization,” not racism or sexism.
This is the key to understanding the AI hype bubble: when ghouls from multinational banks predict 13 trillion dollar markets for “AI,” what they mean is that digital tools will speed up the twiddling and other wage-suppression techniques to transfer $13T in value from workers and consumers to shareholders.
The American business lobby is relentlessly focused on the goal of reducing wages. That’s the force behind “free trade,” “right to work,” and other codewords for “paying workers less,” including “gig work.” Tech workers long saw themselves as above this fray, immune to labor exploitation because they worked for a noble profession that took care of its own.
But the epidemic of mass tech-worker layoffs, following on the heels of massive stock buybacks, has demonstrated that tech bosses are just like any other boss: willing to pay as little as they can get away with, and no more. Tech bosses are so comfortable with their market dominance and the lock-in of their customers that they are happy to turn out hundreds of thousands of skilled workers, convinced that the twiddling systems they’ve built are the kinds of self-licking ice-cream cones that are so simple even a manager can use them — no morlocks required.
The tech worker layoffs are best understood as an all-out war on tech worker morale, because that morale is the source of tech workers’ confidence and thus their demands for a larger share of the value generated by their labor. The current tech layoff template is very different from previous tech layoffs: today’s layoffs are taking place over a period of months, long after they are announced, and laid off tech worker is likely to be offered a months of paid post-layoff work, rather than severance. This means that tech workplaces are now haunted by the walking dead, workers who have been laid off but need to come into the office for months, even as the threat of layoffs looms over the heads of the workers who remain. As an old friend, recently laid off from Microsoft after decades of service, wrote to me, this is “a new arrow in the quiver of bringing tech workers to heel and ensuring that we’re properly thankful for the jobs we have (had?).”
Dubal is interested in more than analysis, she’s interested in action. She looks at the tactics already deployed by gig workers, who have not taken all this abuse lying down. Workers in the UK and EU organized through Worker Info Exchange and the App Drivers and Couriers Union have used the GDPR (the EU’s privacy law) to demand “algorithmic transparency,” as well as access to their data. In California, drivers hope to use similar provisions in the CCPA (a state privacy law) to do the same.
These efforts have borne fruit. When Cornell economists, led by Louis Hyman, published research (paid for by Uber) claiming that Uber drivers earned an average of $23/hour, it was data from these efforts that revealed the true average Uber driver’s wage was $9.74. Subsequent research in California found that Uber drivers’ wage fell to $6.22/hour after the passage of Prop 22, a worker misclassification law that gig companies spent $225m to pass, only to have the law struck down because of a careless drafting error:
https://www.latimes.com/california/newsletter/2021-08-23/proposition-22-lyft-uber-decision-essential-california
But Dubal is skeptical that data-coops and transparency will achieve transformative change and build real worker power. Knowing how the algorithm works is useful, but it doesn’t mean you can do anything about it, not least because the platform owners can keep touching their knobs, twiddling the payout schedule on their rigged slot-machines.
Data co-ops start from the proposition that “data extraction is an inevitable form of labor for which workers should be remunerated.” It makes on-the-job surveillance acceptable, provided that workers are compensated for the spying. But co-ops aren’t unions, and they don’t have the power to bargain for a fair price for that data, and coops themselves lack the vast resources — “to store, clean, and understand” — data.
Co-ops are also badly situated to understand the true value of the data that is extracted from their members: “Workers cannot know whether the data collected will, at the population level, violate the civil rights of others or amplifies their own social oppression.”
Instead, Dubal wants an outright, nonwaivable prohibition on algorithmic wage discrimination. Just make it illegal. If firms cannot use gambling mechanisms to control worker behavior through variable pay systems, they will have to find ways to maintain flexible workforces while paying their workforce predictable wages under an employment model. If a firm cannot manage wages through digitally-determined variable pay systems, then the firm is less likely to employ algorithmic management.”
In other words, rather than using market mechanisms too constrain platform twiddling, Dubal just wants to make certain kinds of twiddling illegal. This is a growing trend in legal scholarship. For example, the economist Ramsi Woodcock has proposed a ban on surge pricing as a per se violation of Section 1 of the Sherman Act:
https://ilr.law.uiowa.edu/print/volume-105-issue-4/the-efficient-queue-and-the-case-against-dynamic-pricing
Similarly, Dubal proposes that algorithmic wage discrimination violates another antitrust law: the Robinson-Patman Act, which “bans sellers from charging competing buyers different prices for the same commodity. Robinson-Patman enforcement was effectively halted under Reagan, kicking off a host of pathologies, like the rise of Walmart:
https://pluralistic.net/2023/03/27/walmarts-jackals/#cheater-sizes
I really liked Dubal’s legal reasoning and argument, and to it I would add a call to reinvigorate countertwiddling: reforming laws that get in the way of workers who want to reverse-engineer, spoof, and control the apps that currently control them. Adversarial interoperability (AKA competitive compatibility or comcom) is key tool for building worker power in an era of digital Taylorism:
https://www.eff.org/deeplinks/2019/10/adversarial-interoperability
To see how that works, look to other jursidictions where workers have leapfrogged their European and American cousins, such as Indonesia, where gig workers and toolsmiths collaborate to make a whole suite of “tuyul apps,” which let them override the apps that gig companies expect them to use.
https://pluralistic.net/2021/07/08/tuyul-apps/#gojek
For example, ride-hailing companies won’t assign a train-station pickup to a driver unless they’re circling the station — which is incredibly dangerous during the congested moments after a train arrives. A tuyul app lets a driver park nearby and then spoof their phone’s GPS fix to the ridehailing company so that they appear to be right out front of the station.
In an ideal world, those workers would have a union, and be able to dictate the app’s functionality to their bosses. But workers shouldn’t have to wait for an ideal world: they don’t just need jam tomorrow — they need jam today. Tuyul apps, and apps like Para, which allow workers to extract more money under better working conditions, are a prelude to unionization and employer regulation, not a substitute for it.
Employers will not give workers one iota more power than they have to. Just look at the asymmetry between the regulation of union employees versus union busters. Under US law, employees of a union need to account for every single hour they work, every mile they drive, every location they visit, in public filings. Meanwhile, the union-busting industry — far larger and richer than unions — operate under a cloak of total secrecy, Workers aren’t even told which union busters their employers have hired — let alone get an accounting of how those union busters spend money, or how many of them are working undercover, pretending to be workers in order to sabotage the union.
Twiddling will only get an employer so far. Twiddling — like all “AI” — is based on analyzing the past to predict the future. The heuristics an algorithm creates to lure workers into their cars can’t account for rapid changes in the wider world, which is why companies who relied on “AI” scheduling apps (for example, to prevent their employees from logging enough hours to be entitled to benefits) were caught flatfooted by the Great Resignation.
Workers suddenly found themselves with bargaining power thanks to the departure of millions of workers — a mix of early retirees and workers who were killed or permanently disabled by covid — and they used that shortage to demand a larger share of the fruits of their labor. The outraged howls of the capital class at this development were telling: these companies are operated by the kinds of “capitalists” that MLK once identified, who want “socialism for the rich and rugged individualism for the poor.”
https://twitter.com/KaseyKlimes/status/821836823022354432/
There's only 5 days left in the Kickstarter campaign for the audiobook of my next novel, a post-cyberpunk anti-finance finance thriller about Silicon Valley scams called Red Team Blues. Amazon's Audible refuses to carry my audiobooks because they're DRM free, but crowdfunding makes them possible.
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bokchoybussy · 2 years
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Those 7-figure salarypeople seriously want your slave labor. (No I'm not miscounting.)
Edith Cooper does not give a SHIT about your safety, wellbeing, or sanity at work.
Do not be fooled.
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thegenxpointofview · 1 year
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Wisdom from a 50 year old (Me) - Coworkers are not your friend
Normally on Wednesdays, I do an anxiety piece but today I am going to give you some wisdom and a short story to back it up. The wisdom? You’re Co-Workers are not your friends. Now you probably knew that but it’s a broad statement that encompasses everything. You see any piece of information you give to a coworker can be told to someone else and potentially used against you. Now maybe you know…
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troyal-blood · 2 years
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Beyonce releasing "Break my Soul" is literally just this 2013 meme come to life.
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dancinjanssen · 2 years
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Life update. Haven’t done this in a while, if ever.
I am happiest to report that I got out of slinging coffee (which I’d been doing since 2014 across two different places) and found an office job. Without doxxing myself, essentially I calculate/reconcile real estate agents’ commission checks and make sure that each person involved in the transaction is getting paid the right amount. Monday through Friday, all the holidays off, no more dealing with customers. It’s been pretty great. (The only thing I’m still adjusting to is working 8 to 5 as a natural night owl who would always prefer to be up until 2 am and sleep until 10.) I’m that weirdo who’s always loved math too, so I feel completely in my element. My boss is essentially the 2.0 version of my favorite math teacher from middle school, which has been hilarious and great too. They literally even have the same first name and look alike.
My barista years will always hold a place in my heart. I worked with some amazing coworkers, got to do barista competitions, and now I have knowledge and appreciation of good coffee that I’ll enjoy on the customer end for the rest of my life. That being said…..
Why after eight years in the industry and four of them at this last place did I leave? I’ll tell you exactly why. MANAGEMENT. Really specifically one manager, but the rest of management defended and protected her behavior, so I really left all of them. In a nutshell:
Year one: Different supervisor. Call him M. M wasn’t great, but he eventually got fired. This supervisor- H- got promoted in his place.
Years two and three: For reasons I still don’t comprehend, H took an immediate abnormally strong liking to me. It went beyond just thinking I was a good worker and appreciating me on a professional level. H would tell me to come hang out with her in the office and just talk to her about life for 1-2 hours a night. She told me to always have her grab my money for the register and that if any other manager offered, to tell them she was doing it. And when Covid hit in 2020 and a big part of our staff got furloughed, she moved me from a station that got shut down to one that didn’t just so I wouldn’t get furloughed because she said she would cry if I did. One of the sketchiest straws for me was the night she told me to close the coffee shop for my lunch (like always) but then to stay closed for an extra half hour to come hang out with her.
Year four: Complaints about H favoring me naturally mounted, and finally after enough of them, the boss above her talked to her and told her it needed to stop. I agreed with that. That alone was perfectly fine and needed to happen. But this was where H just went unhinged and made my final year at this place hell. She blamed me almost entirely for our relationship getting out of hand. She told me I got too carried away and didn’t manage my time well enough and that’s why it got noticed that we were together in the office a lot. When I asked her why she never once told me it was time to leave and get back to work (you know, her job as MY BOSS), she told me she thought all my work was done. Oh yeah. Telling me to come hang out with you at 7:30 when the coffee shop closed at 11 was me clearly having all my work done. [Sarcasm]
And from then on, H was not nice to me. She avoided eye contact with me, said the absolute bare minimum to me, and made big shows of saying hi and talking to everyone else while completely ignoring me. Once we got some new hires, they became her new favorites and did all the stuff she and I used to do. It was like she learned NOTHING from what happened with me. These people hung out with her in the office just like we did, but all the while she still iced me out and acted like I was gum on her shoe for getting her in trouble the first time. It put me in a horrendous place mentally. I blamed myself for somehow not being good enough for her or for being “too much” for her. What did these new employees have that I didn’t?
January this year: I along with 5-6 other employees all went to upper management about H. About her favoritism. About her treating us like garbage while her new chosen ones sat in the office and did zero work. About H giving them Christmas gifts right in front of everyone else. All upper management told me was to get over it, back off, and stop letting it bother me. That all H owed me was to be professional and not to be my friend. I told them she wasn’t even being professional with me and they didn’t care. The single only thing they agreed to tell her was that she needed to look at me when she was talking to me. They agreed the lack of eye contact was rude. (I know some autistic people prefer that, but I don’t. Mileage may vary. And it was her being rude, not uncomfortable with eye contact. She made it with everyone else.)
February to May this year: I went day to day never knowing which version of H I was going to get. Some days she randomly warmed up to me again, others she kept icing me out. Some days she made eye contact, others she didn’t. One day she walked with me into the building and made conversation the whole way, the next she’d avert her eyes and walk on without me.
May 2022: I finally drew the line for my mental health, said enough of this bullshit, and found a new job. Gave H my two weeks on May 23rd (sooo satisfying!) and my last day was June 2nd. I didn’t even have to do that. I could have told her to go get f**ked and walked out right on the 23rd. But I cared about my other coworkers enough to work my two weeks, plus the new place didn’t start me until June 6th anyway.
June 2nd (my last day): Probably the single weirdest day I ever had with H. Each month this year, she planned to bring cake one night and celebrate all the birthdays of that month. She saw that through in January, February, and March only, and then had abandoned it. Back in January, she accidentally announced me with the names even though I’m a May baby. Sometime later when the vibe was right, I let her know that, and she felt bad and said I could pick one of the cake flavors for May. (She always got two cakes.) After no cake happened in April, I thought it was a lost cause anyway, but when I asked a couple of times almost just to be snarky, she kept insisting it was happening.
Finally on my last day, she told me she had my cake. That it was MY cake and she didn’t get cake for anyone else, and it was combination birthday and going away/new job. She said all of this very stoically and mechanically. When I went to her office later to get the cake, it was goodbye for us and I didn’t really know what to say. I thanked her and told her I was sorry that things got rough with us, and she said “It is what it is. I’m glad you can grow in your new career now.” So that told me she was ecstatic for me to leave.
The whole thing was just WEIRD. I never really knew where I stood with her. Getting out was the absolute best thing for me. I wish everyone else luck in their navigations with her.
I still keep in touch with coworkers. I am happy to say that one month later, my job has not been filled yet and they’re now offering $1,000 sign on bonuses for some of the positions. That place can drown in its shitty management. I did my part to try to change it and nobody cared. Sayonara.
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What's often missed about the Great Resignation is that plenty of people want to work, and work hard. They just want to work for an individual purpose or reward.
Of course it makes sense that the owner of a start-up business needs to work crazy hours to be successful, but it doesn't make sense for their minimum wage employee to kill themselves too.
Of course it makes sense for someone to work 80 hours a week if their goal is to be the best of the best of the best, but it doesn't make sense for someone who just cares about the paycheck.
No one (or very few) wants to work so hard their physical and mental health suffers for someone else's accomplishments or goals. There's no reward there.
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emergentexpression · 2 years
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Almost half of the world’s workforce wants to quit. Is this a not-so-silent revolution?
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textbro · 2 years
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staying in a decently paying job with great benefits where I'm about to get a promotion:
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quitting with no solid plan or means to support myself:
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quotesfrommyreading · 2 years
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Molly Phelps, an emergency doctor of 18 years, considered herself a lifer. Her medical career had cost her time with her family, wrecked her circadian rhythms, and taxed her mental health, but it offered so much meaning that “I was willing to stay and be miserable,” she told me. But after the horrific winter surge, Phelps was shocked that her hospital’s administrators “never acknowledged what we went through,” while many of her patients “seemed to forget their humanity.” Medicine’s personal cost seemed greater than ever, but the fulfillment that had previously tempered it was missing. On July 21, during an uneventful evening spent scrolling through news of the Delta surge, Phelps had a sudden epiphany. “Oh my God, I think I’m done,” she realized. “And I think it’s okay to walk away and be happy.”
America’s medical exodus is especially tragic because of how little it might have taken to stop it. Phelps told me that if her workplace “had thrown a little more of a bone, that would have been enough to keep me miserable for 13 more years.” Some health systems are starting to offer retention bonuses, long-overdue raises, or hazard pay. And the next generation of health-care workers doesn’t seem to be deterred. Applications to medical and nursing schools have risen during the pandemic. “That workforce is apparently seeing the best of us, and maybe their vision and energy is what we need to make us whole again,” Esther Choo told me.
But today’s students will take years to graduate, and the onus is on the current establishment to reshape an environment that won’t immediately break them, Choo said. “We need to say, ‘We got this wrong, and despite that, you’re willing to invest your lives in this career? What an incredible gift. We can’t look at that and change nothing.’”
 —   Why Health-Care Workers Are Quitting in Droves
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gwydionmisha · 10 months
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thegenxpointofview · 2 years
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How to make more money and perks at work
How to make more money and perks at work
So it’s been a while since I have done a “working” piece. Quick recap, at prior roles I have been a manager who hired and fired staff. Now it’s been a minute since then but not that long ago. So take my advice here with a grain of salt. Now what I am about to reveal isn’t rocket science, you could probably come to the same conclusion. BUT as a former manager I can tell you the people who had…
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mikeptaylor · 1 year
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exitpro · 1 year
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Wait, is my boss gaslighting me?
I teach leadership & organizational development, conduct industrial and organizational psychology research, and occasionally pick up consulting work. When consulting, I typically conduct qualitative research and some sort of organizational audit. In most instances, I am attempting to gain insights into organizational culture, while exploring familiar cultural dynamics like communication, work…
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uboat53 · 1 year
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"When Rahkeem Morris started the company HourWork several years ago, his goal was to help fast-food companies and other businesses hire more efficiently. But last year, the company pivoted to a new focus: retention. A fast-food worker typically takes six months to reach full productivity, Morris said, but at many companies, the typical employee in the industry leaves after just 75 days. HourWork now offers a service to help store owners keep in touch with staff members by text message and to analyze their responses to identify issues that could be causing employees to quit — an approach the company says can reduce turnover, particularly among new hires. Morris, who worked in fast food as a teenager before getting degrees from Cornell and Harvard Business School, said companies had long tried to deal with staffing shortages by focusing on recruitment. He likened that approach to trying to fill a leaky bucket — if companies do not also try to keep their workers, no amount of recruiting will solve their problem. The Great Resignation, however, may finally have led companies to rethink that approach. “We’re starting to see the tide shift and the sentiment around that change,” Morris said. “Fixing the leaky-bucket problem will get these restaurants to full productivity.”"
Well, there's good news, I think it's likely that we're going to continue to see wage growth among the lower-paid sectors of our economy. There's no way companies can reach their retention goals without it.
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