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OpenAI on Tuesday announced its biggest product launch since its enterprise rollout. It’s called ChatGPT Gov and was built specifically for U.S. government use.

The Microsoft-backed company bills the new platform as a step beyond ChatGPT Enterprise as far as security. It allows government agencies, as customers, to feed “non-public, sensitive information” into OpenAI’s models while operating within their own secure hosting environments, OpenAI CPO Kevin Weil told reporters during a briefing Monday.

Since the beginning of 2024, OpenAI said that more than 90,000 employees of federal, state and local governments have generated more than 18 million prompts within ChatGPT, using the tech to translate and summarize documents, write and draft policy memos, generate code, and build applications.

The user interface for ChatGPT Gov looks like ChatGPT Enterprise. The main difference is that government agencies will use ChatGPT Gov in their own Microsoft Azure commercial cloud, or Azure Government community cloud, so they can “manage their own security, privacy and compliance requirements,” Felipe Millon, who leads federal sales and go-to-market for OpenAI, said on the call with reporters.

For as long as artificial intelligence has been used by government agencies, it’s faced significant scrutiny due to its potentially harmful ripple effects, especially for vulnerable and minority populations, and data privacy concerns. Police use of AI has led to a number of wrongful arrests and, in California, voters rejected a plan to replace the state’s bail system with an algorithm due to concerns it would increase bias.

An OpenAI spokesperson told CNBC that the company acknowledges there are special considerations for government use of AI, and OpenAI wrote in a blog post Tuesday that the product is subject to its usage policies.

Aaron Wilkowitz, a solutions engineer at OpenAI, showed reporters a demo of a day in the life of a new Trump administration employee, allowing the person to sign into ChatGPT Gov and create a five-week plan for some of their job duties, then analyze an uploaded photo of the same printed-out plan with notes and markings all over it. Wilkowitz also demonstrated how ChatGPT Gov could draft a memo to the legal and compliance department summarizing its own AI-generated job plan and then translate the memo into different languages.

ChatGPT Enterprise, which underpins ChatGPT Gov, is currently going through the Federal Risk and Authorization Management Program, or FedRAMP, and has not yet been accredited for use on nonpublic data. Weil told CNBC it’s a “long process,” adding that he couldn’t provide a timeline.

“I know President Trump is also looking at how we can potentially streamline that, because it’s one way of getting more modern software tooling into the government and helping the government run more efficiently,” Weil said. “So we’re very excited about that.”

But OpenAI’s Millon said ChatGPT Gov will be available in the “near future,” with customers potentially testing and using the product live “within a month.” He said he foresees agencies with sensitive data, such as defense, law enforcement and health care, benefiting most from the product.

When asked if the Trump administration played a role in ChatGPT Gov, Weil said he was in Washington, D.C., for the inauguration and “got to spend a lot of time with folks coming into the new administration.” He added that “the focus is on ensuring that the U.S. wins in AI” and that “our interests are very aligned.”

OpenAI CEO Sam Altman attended the inauguration alongside other tech CEOs and has recently joined the growing tide of industry leaders publicly pronouncing their admiration for President Donald Trump or donating to his inauguration fund. Altman wrote on X that watching Trump “more carefully recently has really changed my perspective on him,” adding that “he will be incredible for the country in many ways.”

A few days before the inauguration, Altman received a letter from U.S. senators expressing concern that he is attempting to “cozy up to the incoming Trump administration” with the aim of avoiding regulation and limiting scrutiny.

Regarding China’s DeepSeek, Weil told reporters the new developments don’t change how OpenAI thinks about its product road map but instead “underscores how important it is that the U.S. wins this race.”

“It’s a super competitive industry, and this is showing that it’s competitive globally, not just within the U.S.,” Weil said. “We’re committed to moving really quickly here. We want to stay ahead.”

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OpenAI partners with U.S. National Laboratories on scientific research, nuclear weapons security

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OpenAI launches ChatGPT Gov for U.S. government agencies

OpenAI CEO Sam Altman speaks next to SoftBank CEO Masayoshi Son after U.S. President Donald Trump delivered remarks on AI infrastructure at the Roosevelt room at White House in Washington, U.S., January 21, 2025. 

Carlos Barria | Reuters

OpenAI on Thursday said the U.S. National Laboratories will be using its latest artificial intelligence models for scientific research and nuclear weapons security.

Under the agreement, up to 15,000 scientists working at the National Laboratories may be able to access OpenAI’s reasoning-focused o1 series. OpenAI will also work with Microsoft, its lead investor, to deploy one of its models on Venado, the supercomputer at Los Alamos National Laboratory, according to a release. Venado is powered by technology from Nvidia and Hewlett-Packard Enterprise.

OpenAI CEO Sam Altman announced the partnership at a company event called “Building to Win: AI Economics,” in Washington, D.C.

According to OpenAI, the new partnership will involve scientists using OpenAI’s technology to enhance cybersecurity to protect the U.S. power grid, identify new approaches to treating and preventing diseases and deepen understanding of fundamental mathematics and physics.

It will also involve work on nuclear weapons, “focused on reducing the risk of nuclear war and securing nuclear materials and weapons worldwide,” the company wrote. Some OpenAI researchers with security clearances will consult on the project.

Read more CNBC reporting on AI

Earlier this week, OpenAI released ChatGPT Gov, an AI platform built specifically for U.S. government use. OpenAI billed the new platform as a step beyond ChatGPT Enterprise as far as security. It will allow government agencies to feed “non-public, sensitive information” into OpenAI’s models while operating within their own secure hosting environments, the company said.

OpenAI said that since the beginning of 2024, more than 90,000 employees of federal, state and local governments have generated over 18 million prompts within ChatGPT, using the technology to translate and summarize documents, write and draft policy memos, generate code and build applications.

The government partnership follows a series of moves by Altman and OpenAI that appear to be targeted at appeasing President Donald Trump. Altman contributed $1 million to the inauguration, attended the event last week alongside other tech CEOs and recently signaled his admiration for the president.

Altman wrote on X that watching Trump “more carefully recently has really changed my perspective on him,” adding that “he will be incredible for the country in many ways.” OpenAI is also part of the recently announced Stargate project that involves billions of dollars in investment into U.S. AI infrastructure.

As OpenAI steps up its ties to the government, a Chinese rival is blowing up in the U.S. DeepSeek, an AI startup lab out of China, saw its app soar to the top of Apple’s App Store rankings this week and roiled U.S. markets on reports that its powerful model was trained at a fraction of the cost of U.S. competitors.

Altman described DeepSeek’s R1 model as “impressive,” and wrote on X that “we will obviously deliver much better models and also it’s legit invigorating to have a new competitor!”

WATCH: OpenAI highly overvalued

OpenAI is highly overvalued and DeepSeek just blew up their business model, says NYU's Gary Marcus

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Extreme demand took down LA’s water system during the Palisades Fire. Here’s how other U.S. cities can prepare

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Extreme demand took down LA's water system during the Palisades Fire. Here's how other U.S. cities can prepare

As thousands of homes started to burn across Los Angeles on Jan. 7, fire hydrants stopped working. The rapid spread of flames in winds up to 100 miles per hour was happening too quickly for water pumps to keep up. It shocked the system and those fleeing the flames.

“This area is known for having fire issues, so you would think that they would be prepared for this,” said Joan Zoloth, 70, who said she first moved to the area when she was 6 years old.

Zoloth’s childhood home burned down in the Palisades Fire. Her own home around the corner and her son’s home nearby were also lost. 

“My mother was a teacher,” Zoloth said. “What people don’t realize is how much Malibu is filled with those types of people — not just movie stars.”

The remains of Joan Zoloth’s childhood home in Malibu, California, shown on Jan. 21, 2025, after it burned down in the Palisades Fire.

Andrew Evers

CNBC went to the wreckage of the Palisades Fire to ask officials what happened to the water system in LA, and what other cities can do to be better prepared. As many as 1 in 6 Americans now live in areas with significant wildfire risk. 

“A firefight at this size, such an urban conflagration, any system is going to have its challenges in maintaining water pressure,” said State Fire Marshall Daniel Berlant, of the California Department of Forestry and Fire Protection, known as Cal Fire.

Water pressure was the primary problem, rather than a lack of supply, fire officials and water experts told CNBC. 

Much of the water in the Palisades is provided by three 1 million gallon tanks that sit up in the hills, using gravity to maintain water pressure in the hydrants and homes they supply below.

Pumps forcibly move water from main lines and surrounding reservoirs to those tanks. The tanks were full when the fires started, but the pumps couldn’t replenish water in the tanks as quickly as firefighters were using it below. As the tanks depleted, so did the water pressure, until some 20% of hydrants ran dry.

“The hydrants would have run dry anywhere in the world with a fire event like this in the topography where this occurred,” said Greg Pierce, director of the UCLA Human Right to Water Lab.

Joan Zoloth lost three family homes in Malibu during the Palisades fire. She’s shown here at a family friend’s house where she’s staying in Venice, California, on January 21, 2025.

Andrew Evers

The closure of a 117 million gallon reservoir nearby complicated matters. Earlier this month, California Gov. Gavin Newsom and LA city council members called for investigations into why the Santa Ynez Reservoir hadn’t yet reopened after being drained almost a year ago to repair a tear in its cover.

“That would have made a difference,” Pierce said. “But even, by all accounts, if that reservoir was full, it wouldn’t have stopped the fire.”

Typically, fires are also fought by aircraft dropping water and fire retardant from above, but high winds kept them grounded for several hours on the first night of the fire.

Firefighters adapted with three tactics. They shuttled water through multiple engines connected to functional hydrants, drove it to locations in large water tenders, and pumped water directly from backyard swimming pools.

The LA Department of Water and Power said it quadrupled the water flow to the area and summoned 15 water tankers to directly refill fire trucks. It wasn’t enough.

The blame game

As immediate danger calmed, misinformation ran wild. The Federal Emergency Management Agency, or FEMA, reactivated its rumor response site, and the LA Fire Department directly responded to inaccurate social media posts.

President Donald Trump, for instance, claimed that water ran out in LA because of policies meant to protect a small endangered fish called the Delta smelt.

“It’s just simply false. It’s nonsense,” said Peter Gleick, co-founder of the Pacific Institute, a global water think tank. Gleick has been researching water issues for four decades.

On his first day back in office, Trump signed an executive order titled “Putting People Over Fish: Stopping Radical Environmentalism to Provide Water to Southern California.” After visiting with Newsom in LA, Trump signed another executive order directing federal officials to find ways to override “disastrous” California water policies. 

“There’s lots of conversations about California water policy and how we allocate water to protect fish or ecosystems versus deliver water to different kinds of users, but that had no role whatsoever to play in water availability for firefighting,” Gleick said.

Southern California reservoirs are at above-average levels for this time of year because of two plentiful rainy seasons, he added.

“Misinformation about how if we just had more water from Northern California in Southern California, that would have made the difference, that’s not true,” UCLA’s Pierce said. “Even if you have water stored fairly close by in the region, you can’t just move it quickly up to an area like the Palisades.”

That’s why billionaires Lynda and Stewart Resnick are also not to blame for the Palisades Fire, the water experts who spoke with CNBC said. 

The Resnicks own the Wonderful Company, which includes brands such as Pom and Fiji Water, and have sprawling farmlands in the San Joaquin Valley that grow pistachios, oranges and pomegranates. They’ve been the subject of attacks on social media, some of which are antisemitic, that blame them for the water pressure problems in LA because of their investment in a public-private water bank that’s 100 miles north of LA and that has no ability to impact water pressure in the Palisades.

“There’s absolutely no connection between the two. This is a localized problem,” said Felicia Marcus, former chair of the California State Water Resources Control Board.

The fires also resurfaced criticism around state and local water decisions, from taking down dams to not building enough reservoirs.

The real culprit is extremely dry conditions, experts told CNBC. Before the fires, LA saw close to zero rain since May, and 2024 was the hottest year on record for the planet, Gleick said.

“Higher temperatures means more demand for water by soils and vegetation and people and agriculture,” he said. “Climate change is in many ways a water problem. It’s being manifested by drought and floods and wildfires.”

More resilient water systems

This is not the first time hydrants ran dry in a major firefight. They’re designed to handle one or two structure fires, not hundreds burning at the same time.

Similar water pressure problems plagued the 1991 Oakland Hills Fire, which destroyed more than 3,000 homes, and two Ventura County fires that each burned more than 1,000 homes in 2017 and 2018

The problem extends beyond California. Texas saw the largest fire in its history last February. As population booms, more people are moving to areas at high risk of fires between dense developments and wildland. 

California is home to the top six cities at highest wildfire risk in the U.S., but Texas, Colorado and Oregon also have cities in the top 15.

A firefighting helicopter draws water from the first-ever installed Heli-Hydrant to quickly stop the Blue Ridge Fire in Yorba Linda, California, on October 28, 2020.

Yorba Linda Water District

There are three key components to making water systems more resilient, Pierce said: increasing water supply, improving local infrastructure, and bolstering power.

After a 2008 fire that destroyed 280 homes, Yorba Linda Water District in California addressed all three. It added backup generators at water pump stations that had failed during the fire, added a long-planned underground reservoir, and installed a first-of-its-kind water tank called a Heli-Hydrant.

That $70,000 tank can automatically refill itself and is reserved for helicopters to dip from, reducing the length of flight times between water pickups and drops. It was used to quickly stop the Blue Ridge Fire in 2020.

“Cal Fire was able to jump on it and use our Heli-Hydrant, trigger it and keep the fire to five acres,” said John DeCriscio, who was operations manager at the Yorba Linda Water District at the time. “That was a huge success.”

San Francisco implemented a comprehensive solution after the city was almost completely destroyed in the 1906 earthquake and resulting fire, which also caused most hydrants to run dry. 

In 1913, the city developed a unique fire-suppression water system separate from the rest of the city’s water. Seawater enters the system from 52 suction connections along the waterfront, and it’s pumped in from fireboats and two high-pressure pumping stations. There are more than 200 underground cisterns to store backup water. A high-elevation reservoir and two large-capacity tanks use gravity, not pumps, to feed special high-pressure emergency hydrants that can be seen around the city with black, red and blue tops.

There are other solutions that cities can implement.

A company called Rain is working on autonomous, unmanned aircraft for dropping water on fires. In Japan, an autonomous system of water cannons protects a cultural heritage site with 200-year-old thatched roof houses.

Cost is the main reason these solutions haven’t been implemented widely. 

“There’s always this delicate balance of being afraid to go to your customers and raise their rates, but if you don’t raise their rates, you can’t do these extra things,” said Marcus, the former state water board chair. “It’s the kind of thing that keeps you up at night when you manage one of these agencies.”

How firefighting planes and helicopters are battling the LA Fires

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DeepSeek’s AI claims have shaken the world — but not everyone’s convinced

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DeepSeek's AI claims have shaken the world — but not everyone's convinced

Dado Ruvic | Reuters

Chinese artificial intelligence firm DeepSeek rocked markets this week with claims its new AI model outperforms OpenAI’s and cost a fraction of the price to build.

The assertions — specifically that DeepSeek’s large language model cost just $5.6 million to train — have sparked concerns over the eyewatering sums that tech giants are currently spending on computing infrastructure required to train and run advanced AI workloads.

But not everyone is convinced by DeepSeek’s claims.

CNBC asked industry experts for their views on DeepSeek, and how it actually compares to OpenAI, creator of viral chatbot ChatGPT which sparked the AI revolution.

What is DeepSeek?

Last week, DeepSeek released R1, its new reasoning model that rivals OpenAI’s o1. A reasoning model is a large language model that breaks prompts down into smaller pieces and considers multiple approaches before generating a response. It is designed to process complex problems in a similar way to humans.

DeepSeek was founded in 2023 by Liang Wenfeng, co-founder of AI-focused quantitative hedge fund High-Flyer, to focus on large language models and reaching artificial general intelligence, or AGI.

AGI as a concept loosely refers to the idea of an AI that equals or surpasses human intellect on a wide range of tasks.

Much of the technology behind R1 isn’t new. What is notable, however, is that DeepSeek is the first to deploy it in a high-performing AI model with — according to the company — considerable reductions in power requirements.

“The takeaway is that there are many possibilities to develop this industry. The high-end chip/capital intensive way is one technological approach,” said Xiaomeng Lu, director of Eurasia Group’s geo-technology practice.

“But DeepSeek proves we are still in the nascent stage of AI development and the path established by OpenAI may not be the only route to highly capable AI.” 

How is it different from OpenAI?

Read more DeepSeek coverage

In a technical report, the company said its V3 model had a training cost of only $5.6 million — a fraction of the billions of dollars that notable Western AI labs such as OpenAI and Anthropic have spent to train and run their foundational AI models. It isn’t yet clear how much DeepSeek costs to run, however.

If the training costs are accurate, though, it means the model was developed at a fraction of the cost of rival models by OpenAI, Anthropic, Google and others.

Daniel Newman, CEO of tech insight firm The Futurum Group, said these developments suggest “a massive breakthrough,” although he shed some doubt on the exact figures.

“I believe the breakthroughs of DeepSeek indicate a meaningful inflection for scaling laws and are a real necessity,” he said. “Having said that, there are still a lot of questions and uncertainties around the full picture of costs as it pertains to the development of DeepSeek.”

Meanwhile, Paul Triolio, senior VP for China and technology policy lead at advisory firm DGA Group, noted it was difficult to draw a direct comparison between DeepSeek’s model cost and that of major U.S. developers.

“The 5.6 million figure for DeepSeek V3 was just for one training run, and the company stressed that this did not represent the overall cost of R&D to develop the model,” he said. “The overall cost then was likely significantly higher, but still lower than the amount spent by major US AI companies.” 

DeepSeek wasn’t immediately available for comment when contacted by CNBC.

Comparing DeepSeek, OpenAI on price

DeepSeek and OpenAI both disclose pricing for their models’ computations on their websites.

DeepSeek says R1 costs 55 cents per 1 million tokens of inputs — “tokens” referring to each individual unit of text processed by the model — and $2.19 per 1 million tokens of output.

In comparison, OpenAI’s pricing page for o1 shows the firm charges $15 per 1 million input tokens and $60 per 1 million output tokens. For GPT-4o mini, OpenAI’s smaller, low-cost language model, the firm charges 15 cents per 1 million input tokens.

Skepticism over chips

LinkedIn co-founder Reid Hoffman: DeepSeek AI proves this is now a 'game-on competition' with China

Nvidia has since come out and said that the GPUs that DeepSeek used were fully export-compliant.

The real deal or not?

Industry experts seem to broadly agree that what DeepSeek has achieved is impressive, although some have urged skepticism over some of the Chinese company’s claims.

“DeepSeek is legitimately impressive, but the level of hysteria is an indictment of so many,” U.S. entrepreneur Palmer Luckey, who founded Oculus and Anduril wrote on X.

“The $5M number is bogus. It is pushed by a Chinese hedge fund to slow investment in American AI startups, service their own shorts against American titans like Nvidia, and hide sanction evasion.”

Seena Rejal, chief commercial officer of NetMind, a London-headquartered startup that offers access to DeepSeek’s AI models via a distributed GPU network, said he saw no reason not to believe DeepSeek.

“Even if it’s off by a certain factor, it still is coming in as greatly efficient,” Rejal told CNBC in a phone interview earlier this week. “The logic of what they’ve explained is very sensible.”

However, some have claimed DeepSeek’s technology might not have been built from scratch.

“DeepSeek makes the same mistakes O1 makes, a strong indication the technology was ripped off,” billionaire investor Vinod Khosla said on X, without giving more details.

It’s a claim that OpenAI itself has alluded to, telling CNBC in a statement Wednesday that it is reviewing reports DeepSeek may have “inappropriately” used output data from its models to develop their AI model, a method referred to as “distillation.”

“We take aggressive, proactive countermeasures to protect our technology and will continue working closely with the U.S. government to protect the most capable models being built here,” an OpenAI spokesperson told CNBC.

Commoditization of AI

However the scrutiny surrounding DeepSeek shakes out, AI scientists broadly agree it marks a positive step for the industry.

Yann LeCun, chief AI scientist at Meta, said that DeepSeek’s success represented a victory for open-source AI models, not necessarily a win for China over the U.S. Meta is behind a popular open-source AI model called Llama.

“To people who see the performance of DeepSeek and think: ‘China is surpassing the US in AI.’ You are reading this wrong. The correct reading is: ‘Open source models are surpassing proprietary ones’,” he said in a post on LinkedIn.

“DeepSeek has profited from open research and open source (e.g. PyTorch and Llama from Meta). They came up with new ideas and built them on top of other people’s work. Because their work is published and open source, everyone can profit from it. That is the power of open research and open source.”

WATCH: Why DeepSeek is putting America’s AI lead in jeopardy

Why China's DeepSeek is putting America's AI lead in jeopardy

– CNBC’s Katrina Bishop and Hayden Field contributed to this report

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