
Alphabet CEO Sundar Pichai dismisses AI job fears, emphasizes expansion plans
In a Bloomberg interview tonight, Alphabet CEO Sundar Pichai pushed back against concerns that AI could eventually make half the company's 180,000-person workforce redundant. Instead, Pichai stressed the company's commitment to growth through at least next year.
'I expect we will grow from our current engineering phase even into next year, because it allows us to do more,' Pichai said, adding that AI is making engineers more productive by eliminating tedious tasks and enabling them to focus on more impactful work. Rather than replacing workers, he referred to AI as 'an accelerator' that will drive new product development, thereby creating demand for more employees.
Alphabet has staged numerous layoffs in recent years, though so far, cuts in 2025 appear to be more targeted than in previous years. It reportedly parted ways with less than 100 people in Google's cloud division earlier this year and, more recently, hundreds more in its platforms and devices unit. In 2024 and 2023, the cuts were far more severe, with 12,000 people dropped from the company in 2023 and at least another 1,000 employees laid off last year.
Looking forward, Pichai pointed to Alphabet's expanding ventures like Waymo autonomous vehicles, quantum computing initiatives, and YouTube's explosive growth as evidence of innovation opportunities that continually bubble up. He noted YouTube's scale in India alone, with 100 million channels and 15,000 channels boasting over one million subscribers.
At one point, Pichai said trying to think too far ahead is 'pointless.' But he also acknowledged the legitimacy of fears about job displacement, saying when asked about Anthropic CEO Dario Amodei's recent comments that AI could erode half of entry-level white collar jobs within five years, 'I respect that . . .I think it's important to voice those concerns and debate them.'
As the interview wrapped up, Pichai was asked about the limits of AI, and whether it's possible that the world might never achieve artificial general intelligence, meaning AI that's as smart as humans at everything. He quickly paused before answering. 'There's a lot of forward progress ahead with the paths we are on, not only the set of ideas we are working on today, [but] some of the newer ideas we are experimenting with,' he said.
'I'm very optimistic on seeing a lot of progress. But you know,' he added, 'you've always had these technology curves where you may hit a temporary plateau. So are we currently on an absolute path to AGI? I don't think anyone can say for sure.'

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