


Survey shows that AI is beginning to take away human jobs, with nearly 4,000 people in the United States losing their jobs in May
According to data from Challenger, Gray & Christmas, a US talent mobility consulting firm, artificial intelligence led to the disappearance of nearly 4,000 jobs in the United States in May, involving creative, administrative and clerical fields.
Challenger, Gray & Christmas reported Thursday that U.S. employers laid off more than 80,000 people in May, a 20% increase from last month and a 20% increase from last year. It increased nearly fourfold during the same period. Among them, artificial intelligence caused 3,900 job losses, accounting for about 5% of all job losses, making it the seventh largest reason for layoffs cited by employers in May.
The layoffs come as companies go to great lengths to adopt advanced artificial intelligence technology to automate a range of tasks, including creative work such as writing, as well as administrative and clerical work. The artificial intelligence industry is expected to grow to more than $1 trillion, driven by major technological advancements that became evident with the launch of OpenAI’s ChatGPT last fall, according to a report from analysts at Bloomberg Intelligence.
The Washington Post reported this week that two copywriters lost their livelihoods because their employers (or clients) thought ChatGPT could get the job done cheaper. Some outlets, like CNET, have laid off reporters while using artificial intelligence to write articles and later had to correct plagiarism issues. An eating disorder helpline used a chatbot to replace unionized human staff earlier this year, but it recently had to take the bot offline after it gave people questionable dieting advice.
IT House previously reported that in March, investment bank Goldman Sachs predicted in a report that artificial intelligence may eventually replace 300 million full-time jobs worldwide and affect nearly one-fifth of employment, especially for White-collar jobs typically thought to be immune to automation, such as administrative and legal professions, have been hit harder.
But analysts note that, like previous technologies that have replaced human workers, generative AI will also create new jobs, and the nascent industry is just getting started.
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