
Google DeepMind
Founded Year
2010Stage
Angel - II | AliveRevenue
$0000About Google DeepMind
Google DeepMind operates as an artificial intelligence (AI) research company focused on AI across various sectors. The company develops generative AI models for creating images, music, and videos, and conducts research in health, climate, and quantum computing. Google DeepMind was formerly known as DeepMind. It was founded in 2010 and is based in London, United Kingdom. In January 2014, Google DeepMind was acquired by Google at a valuation between $500M and $650M.
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ESPs containing Google DeepMind
The ESP matrix leverages data and analyst insight to identify and rank leading companies in a given technology landscape.
The world model AI developers market refers to the segment of the artificial intelligence industry focused on building models that simulate and predict how environments change over time. These models enable AI systems to understand spatial relationships, physical interactions, and cause-and-effect, allowing them to plan ahead, and anticipate outcomes. This market is driven by the growing need for …
Google DeepMind named as Outperformer among 15 other companies, including Microsoft, Meta, and NVIDIA.
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Research containing Google DeepMind
Get data-driven expert analysis from the CB Insights Intelligence Unit.
CB Insights Intelligence Analysts have mentioned Google DeepMind in 10 CB Insights research briefs, most recently on Oct 30, 2025.

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The state of LLM developers in 6 chartsExpert Collections containing Google DeepMind
Expert Collections are analyst-curated lists that highlight the companies you need to know in the most important technology spaces.
Google DeepMind is included in 6 Expert Collections, including Grid and Utility.
Grid and Utility
2,383 items
Companies that are developing and implementing new technologies to optimize the grid and utility sector. This includes, but is not limited to, distributed energy resources, infrastructure security, utility asset management, grid inspection, energy efficiency, grid storage, etc.
Artificial Intelligence (AI)
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Companies developing artificial intelligence solutions, including cross-industry applications, industry-specific products, and AI infrastructure solutions.
Advanced Manufacturing
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Generative AI
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Companies working on generative AI applications and infrastructure.
AI Agents & Copilots Market Map (August 2024)
322 items
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AI agents & copilots
1,771 items
Companies developing AI agents, assistants/copilots, and agentic infrastructure. Includes pure-play emerging agent startups as well as companies building agent offerings with varying levels of autonomy.
Google DeepMind Patents
Google DeepMind has filed 515 patents.
The 3 most popular patent topics include:
- artificial neural networks
- machine learning
- artificial intelligence

Application Date | Grant Date | Title | Related Topics | Status |
|---|---|---|---|---|
3/8/2023 | 4/8/2025 | Mathematical optimization, Artificial neural networks, Numerical differential equations, Optimization algorithms and methods, Artificial intelligence | Grant |
Application Date | 3/8/2023 |
|---|---|
Grant Date | 4/8/2025 |
Title | |
Related Topics | Mathematical optimization, Artificial neural networks, Numerical differential equations, Optimization algorithms and methods, Artificial intelligence |
Status | Grant |
Latest Google DeepMind News
Nov 13, 2025
The storm had ripped through parts of the Caribbean and the Yucatán Peninsula before reaching the U.S. Gulf Coast 2 hours southwest of Houston. This was the first hurricane, as well as the first Category 5 hurricane, of the extremely active 2024 Atlantic hurricane season and it broke several meteorological records --primarily for formation and intensity. Described as the fiercest and earliest Atlantic storm ever recorded, Beryl caused 69 deaths, at least 40 of them in the Houston area, while estimates of the U.S. economic loss ranged from $28 billion to $32 billion. And yet as destructive as Hurricane Beryl was, artificial intelligence played an important role in helping to avert deaths. When Beryl was rushing across the Atlantic basin, GraphCast, the weather forecasting tool produced by Google DeepMind, the tech company's AI unit, saw something other models missed, Bloomberg reported Houston Chronicle/Hearst Newspapers via Getty Images/Getty Images AI requires human oversight GraphCast correctly forecast the storm would take a sharp turn away from southern Mexico to southern Texas nearly a week earlier than conventional forecasts did. Another model, the proprietary Horizon AI Global from Climavision of Louisville, Ky., also predicted the Texas landfall with a lead time of roughly nine days, far exceeding traditional models. More Tech Stocks: "The introduction of AI for hurricane tracking has given scientists a new tool that is more accessible," according to an Oct. 1 blog post on the Florida Museum of Natural History's website. "Unlike traditional models, the AI used to track hurricanes can be run on laptops instead of supercomputers and consumes less energy." "This technology may help scientists predict the strength of fast-moving hurricanes more quickly and accurately." Google DeepMind has been trained with 40 years of weather descriptions and is learning to forecast the intensity and strength of hurricanes, However, the post noted, this does not mean AI will be taking over weather prediction. "Google DeepMind, as well as other AI models, still [makes] mistakes, and humans are needed to monitor them and analyze their data," the post said. In addition to hurricanes, AI is being trained to predict and manage such natural disasters as earthquakes, floods and forest fires. Natural disasters take a heavy economic toll. The average number of billion-dollar disasters per year has grown to 19 events annually during the past 10 years from about three events annually during the 1980s. The total cost of U.S. billion-dollar disasters from 2020 through 2024 totaled $746.7 billion, with a five-year annual cost average of $149.3 billion, according to Climate.gov Predicting earthquakes is Holy Grail "Fire agencies are exploring a suite of AI innovations to combat blazes such as machine-learning algorithms that analyze satellite data to forecast fire paths," IBM staff writer Sascha Brodsky recently said. At the same time, networks of smart sensors scan for heat signatures and filter out false alarms, potentially giving firefighters crucial early warnings, he wrote. Brodsky said agencies were using AI in the field, including Austin Energy, which has deployed an AI-powered network of cameras across central Texas that automatically scans for signs of wildfire, aiming to spot blazes before they spread. Related: Prediction markets coming on strong, analysts say Floods account for as much as 40% of weather-related disasters worldwide, and a team of researchers at Penn State has developed a hydrological model that can forecast flooding impacts and manage water resources on a global scale. "This model is a game changer for global hydrology," said Chaopeng Shen, Penn State professor of civil and environmental engineering. In 2023, a team of researchers at the University of Texas at Austin released the results of a seven-month trial conducted in China after using artificial intelligence to correctly predict 70% of earthquakes one week before they happened. The team from the Jackson School of Geosciences trained its AI algorithm on five years of seismic recordings in the region, then asked it to locate upcoming quakes based on current seismic activity. The algorithm successfully forecast 14 earthquakes, each within about 200 miles of its epicenter. It also missed one quake and predicted eight that never happened. Many scientists have long considered earthquake forecasting to be impossible, the university said, but given recent advancements in AI, "some researchers started considering whether that could change, and the UT Austin trial has bolstered hopes within the field." "Predicting earthquakes is the holy grail," said Sergey Fomel, a geoscientist at UT Austin and a member of the research team. "We're not yet close to making predictions for anywhere in the world, but what we achieved tells us that what we thought was an impossible problem is solvable in principle." Related: Amazon's Rufus, other AI shopping assistants gain strong adoption, face consumer concerns The Arena Media Brands, LLC THESTREET is a registered trademark of TheStreet, Inc. This story was originally published November 12, 2025 at 7:32 PM.
Google DeepMind Frequently Asked Questions (FAQ)
When was Google DeepMind founded?
Google DeepMind was founded in 2010.
Where is Google DeepMind's headquarters?
Google DeepMind's headquarters is located at Kings Cross, London.
What is Google DeepMind's latest funding round?
Google DeepMind's latest funding round is Angel - II.
Who are the investors of Google DeepMind?
Investors of Google DeepMind include Elon Musk, Google, Horizons Ventures, Founders Fund, Metaplanet and 5 more.
Who are Google DeepMind's competitors?
Competitors of Google DeepMind include OpenAI, Mistral AI, xAI, Nnaisense, Anthropic and 7 more.
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Compare Google DeepMind to Competitors

Anthropic focuses on artificial intelligence (AI) safety and research within the AI sector. It offers AI models, including Opus, Sonnet, and Haiku, for various applications such as coding, customer support, and education. The company primarily serves sectors that require AI solutions, including technology, education, and customer service industries. It was founded in 2021 and is based in San Francisco, California.

AI.Tech is a startup studio and holding company involved in the artificial intelligence and machine learning sectors. The company offers services including customer acquisition, media buying, and ad-tech platform licensing, as well as supply-side advertising platforms utilizing natural language processing and machine learning. AI.Tech also provides infrastructure platforms for enterprise applications, mobile apps, and analytics with fraud detection solutions for web publishers. It was founded in 2022 and is based in Dubai, United Arab Emirates.

Letta specializes in developing AI agents within the technology sector. The company offers a platform that enables the creation, deployment, and management of AI agents with memory and reasoning capabilities, supported by a visual interface and APIs. Letta serves the artificial intelligence and machine learning industry. It was founded in 2024 and is based in San Francisco, California.
Sherlund Partners provides strategic advisory services to software companies navigating the transition to artificial intelligence (AI) native architectures. It specializes in research-driven insights and capital markets across the enterprise software and software as a service (SaaS) sectors. Sherlund Partners primarily targets public and private technology companies, investors, and acquirers seeking to reposition for AI-driven productivity and innovation. The firm was founded in 2024 and is based in Nantucket, Massachusetts.

Mistral AI focuses on the development of open-source artificial intelligence models in the technology sector. Its main offerings include efficient, adaptable artificial intelligence (AI) models that allow for full customization by users without requiring their data. Its models are primarily used in the technology industry. It was founded in 2023 and is based in Paris, France.

Lila Sciences focuses on scientific discovery through its scientific superintelligence platform within the life, chemical, and materials sciences domains. The company offers a platform that integrates AI with autonomous laboratories to design, conduct, observe, and redesign experiments, aiming to produce new scientific knowledge at a significant scale and accuracy. Lila Sciences primarily serves sectors that require scientific research and development capabilities. It was founded in 2022 and is based in Cambridge, Massachusetts.
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