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Tech and energy giants pour billions to turn Pennsylvania into an AI hub as part of Trump’s tech push

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CNN
 — 

President Donald Trump on Tuesday announced an investment of more than $90 billion from private companies across tech, energy and finance to turn Pennsylvania into a hub for artificial intelligence — a technology that’s expected to upend everything from the economy to health care and education.

The announcement was made during the Pennsylvania Energy and Innovation Summit in Pittsburgh, hosted by Sen. Dave McCormick of Pennsylvania, and is part of a push by the Trump administration to ensure the United States stays ahead of China in the AI race. A key part of that will be to make sure the United States has the energy necessary to power it all, which was the central focus of Tuesday’s event and the billions in funding.

The event emphasized a key part of Trump’s vision for the American economy: making as much as possible within US borders, at every stage of a product’s life cycle.

“With that historic announcement and the new commitments being made today, we’re building a future where American workers will forge the steel, produce the energy, build the factories and really run a country like, I believe, like this country has never been run before,” Trump said at the event.

A swath of high-profile companies, including Anthropic, Blackstone, Brookfield, CoreWeave, Google, Constellation Energy and Meta, are among those making investments as part of the initiative. The push comes as China has been ramping up its energy efforts, particularly in renewable energy sources and coal.

Tech giants are grappling with the demanding energy needs required to power AI applications. Electricity demand from data centers globally is expected to double to around 945 terawatt-hours by 2030, slightly more than the entire electricity consumption of Japan.

That’s according to an April report from the International Energy Agency, a body that works with governments and industries to provide data and policy recommendations. Energy provider Dominion Energy has also increased its estimated power needs for the next decade because of surging data center demand, according to a 2024 research note from JPMorgan.

Blackstone is investing $25 billion in data center and energy infrastructure in northeast Pennsylvania, while Google inked a 20-year deal with Brookfield to support two hydropower facilities to support the state. Meta is committing $2.5 million toward a partnership program with Carnegie Mellon to support rural Pennsylvania startups.

Anthropic is providing $1 million over three years to support a cybersecurity education program for middle and high school students, as well as an additional $1 million for energy research at Carnegie Mellon.

During the summit, tech, policy and business leaders raised concerns about what could happen if the United States were to fall behind in AI. Anthropic CEO Dario Amodei, who made headlines in May for his stark warning that AI could cause a spike in unemployment, said AI could have a major impact on the future of national security, adding that it’s crucial that the US “lock down every piece of the supply chain, from…the chips to the companies building the AI to especially energy.”

He said that in a few years, AI models will be like having a “country of geniuses in a data center.”

Trump has made AI and investment in American technology a cornerstone of his presidency thus far. He declared a national energy emergency during his first day in office and shortly after announced a $500 billion AI infrastructure project called Stargate, which involves a collaboration between OpenAI CEO Sam Altman, SoftBank CEO Masayoshi Son and Oracle Chairman Larry Ellison. He also said he would roll back Biden-era AI export restrictions on AI chips.

The AI race between the United States and China ratcheted up earlier this year with the arrival of Chinese startup DeepSeek, which made waves with its supposedly cheap-to-train yet powerful R1 AI model.

“We’re here today because we believe that America’s destiny is to dominate every industry and be the first in every technology, and that includes being the world’s number one superpower in artificial intelligence,” Trump said. “And we are way ahead of China. I have to say we’re way ahead of China.”



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Nvidia unveils AI chips for video, software generation

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FILE PHOTO: Nvidia said it would launch a new AI chip by the end of next year, designed to handle complex functions like creating videos and software.
| Photo Credit: Reuters

Nvidia said on Tuesday it would launch a new artificial intelligence chip by the end of next year, designed to handle complex functions such as creating videos and software.

The chips, dubbed “Rubin CPX”, will be built on Nvidia’s next-generation Rubin architecture — the successor to its latest “Blackwell” technology that marked the company’s foray into providing larger processing systems.

As AI systems grow more sophisticated, tackling data-heavy tasks such as “vibe coding” or AI-assisted code generation and video generation, the industry’s processing needs are intensifying.

AI models can take up to 1 million tokens to process an hour of video content — a challenging feat for traditional GPUs, the company said. Tokens refer to the units of data processed by an AI model.

To remedy this, Nvidia will integrate various steps of the drawn-out processing sequence such as video decoding, encoding, and inference — when AI models produce an output — together into its new chip.

Investing $100 million in these new systems could help generate $5 billion in token revenue, the company said, as Wall Street increasingly focuses on the return from pouring hundreds of billions of dollars into AI hardware.

The race to develop the most sophisticated AI systems has made Nvidia the world’s most valuable company, commanding a dominant share of the AI chip market with its pricey, top-of-the-line processors.



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Top Japan start-up Sakana AI touts nature-inspired tech – personcountylife.com

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Top Japan start-up Sakana AI touts nature-inspired tech  personcountylife.com



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The challenge goes beyond merely understanding how AI works

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As AI evolves from simple automation to sophisticated autonomous agents, HR executives face one of the most significant workforce transformations in modern history. The challenge isn’t just understanding the technology — it’s navigating culture change, skills development and workforce planning when AI capabilities double every six months.

Simon Brown, EY’s global learning and development leader, has spent nearly 2 years helping the firm’s 400,000 employees prepare for an AI-driven future. With his past experience as chief learning officer at Novartis and his work with Microsoft, Brown offers critical insights on positioning organizations for success in an autonomous AI world.

What are the top questions C-suite executives need to ask their teams about agentic AI initiatives?

Are people aware of what’s possible with agents? Are we experimenting to find ways agents can help us? Do we have the skills and knowledge to do that properly?

But the most critical question is: Is the culture there to support this? Most organizations are feeling their way through which tools work, what the use cases are, what drives value. There’s a lot of ambiguity. Some organizations manage well through uncertainty; others need clear answers and can’t fail — that’s hard when there’s no clear path and people need to experiment.

How can leaders assess whether their organization has the right culture for agentic AI?

Look at how AI tools like Microsoft Copilot are being embraced. Are people experimenting and finding productivity value, or are they threatened and not using it? If leaders are role modeling use and encouraging their people, that comes through in adoption metrics. Culture shows through communication, leadership role modeling, skill building and time to learn.

What are common blind spots when executives evaluate AI readiness?

Two major issues. First, executives often aren’t aware of what’s possible with the latest AI systems due to security constraints and procurement processes that create 6-to-12-month lags.

Second, the speed of improvement. If I tried an AI tool a month ago versus today, I may get a completely different experience because the underlying model improved. Copilot now has GPT-5 access, giving it a significant overnight boost. Leaders need to shift from thinking about AI as static systems upgraded annually to something constantly improving and doubling in power every six months.

How should leaders approach change management with AI agents?

Change management is essential. When OpenAI releases new capabilities, everyone has access to the technology. Whether organizations get the benefit depends entirely on change management — culture, experimentation ability, skills and whether people feel encouraged rather than fearful. We’re addressing this through AI badges, curricula, enterprise-wide learning — all signaling the organization values building AI skills.

What’s your framework for evaluating whether AI investment will drive real business value?

I think about three loops. First, can I use this to do current tasks cheaper, faster, better? Second, can I realize new value — serving more customers, new products and services? Third, if everyone’s using AI, how do we reinvent ourselves to create new value? It’s moving beyond just doing the same things better to what AI helps us do differently.

How should HR leaders rethink workforce planning given AI’s potential to automate job functions?

Understand which skills AI will impact, which remain uniquely human and what new roles get created. The World Economic Forum predicts significant reduction in certain roles but net increase overall. We’re seeing new, more sophisticated roles created that move people higher up the value chain.

From HR’s perspective, are our processes still fit for AI speed? How are we incentivizing reskilling? Are we ensuring learning access and time? How are we signaling which skills are in demand versus at risk of automation?

How should HR measure success after implementing agentic AI?

Tie back to why it was implemented — business value. Use similar metrics as before but look at what changed. Maybe same output but cheaper, faster, better. Or new capabilities — our third-party risk team uses agents to provide much more extensive supplier analysis than before. Same team size, more client value.

What’s your timeline perspective on when agentic AI becomes competitive necessity versus advantage?

That’s the ultimate question. I’m amazed daily by what I achieve using AI and agents. ChatGPT-5’s recent capabilities are mind-blowing, suggesting dramatic impact quickly. But when deep AI experts have vastly different views — from AGI around the corner to decades away — it’s understandable why leaders struggle to navigate this landscape.



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