This week, OpenAI launched its Deep Research feature which can synthesize content from across the web into one detailed report in minutes leveraging a version of the company’s latest model, o3. 

This feature is a powerful tool for workers, as it can save them hours by completing research autonomously. But can the technology’s underlying model replace workers? Yes, suggests Deep Research. 

Min Choi, an X user whose account is dedicated to sharing informational AI content, asked Deep Research to “List 20 jobs that OpenAI o3 reasoning model will replace human with into a table format ordered by probability. Columns are Rank, Job, Why Better Than Human, Probability.” Choi then shared the results of the chat via an X post, which has since garnered 984,000 views:

After deep diving into 24 sources in seven minutes, the X post shows that Deep Research produced a table that included job titles, explanations as to why an AI is better than a human at the role, and the probability that the job will be replaced. Choi shared a link to the entirety of its interaction, which you find here to see the table in detail. 

Right in time with tax return season, leading the table was the role of “tax preparer” with a probability of 98% replacement, which ChatGPT deemed as “near-certain automation”. 

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Source : https://www.zdnet.com/article/chatgpts-deep-research-just-identified-20-jobs-it-will-replace-is-yours-on-the-list/

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