LLMs

This startup thinks robotics is about to have its ChatGPT moment

Published byAIDaily Editorial Team
4 min read
Original source author: Rebecca Bellan

General Intuition is betting millions of hours of video game data can train the foundation models for physical AI, making it easier to build smarter robots with minimal real-world data.

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Before OpenAI’s GPT-3 ushered in the era of foundation models, companies built specialized natural language processing models from scratch, training each on large amounts of task-specific data. Today, most organizations start with a general-purpose model like OpenAI’s GPT series, Claude, or Llama and then fine-tune or prompt it to solve their specific needs.

Pim de Witte, CEO of General Intuition , thinks embodied AI will follow a similar pattern. Rather than collecting huge real-world datasets to build specialized robot models, he argues the industry should focus on better quality datasets that can produce foundation models capable of transferring intuition about movement and interaction across many environments.

“A lot of companies right now are doing lots of specialized work focused on individual embodiments, individual environments, and individual robots,” de Witte told TechCrunch on a recent episode of Equity .

Much of that work will become redundant soon, he argues, with the emergence of general models like the one General Intuition has been developing and deploying.

“The generalization of the model itself is the product,” he said. “The fact that it has a base level of reasoning about space and time is going to be the reason why people stop collecting hundreds of thousands or millions of hours of real-world data. Because the reality is, you only need a few minutes.”

General Intuition built its own such foundation model after training on millions of hours of video game data, including information like what buttons on a controller a human pushed and when. Both de Witte and General Intuition’s lead investor, Vinod Khosla, argue the action data is the key to developing a human-like intuition for spatial-temporal reasoning.

The startup last month raised $320 million at a $2.3 billion valuation on the back of that thesis. The company has demonstrated that its current model is capable of both playing a video game for hours and powering a quadrupedal robot — the latter after fine-tuning it on just eight minutes of real-world robotics data.

“The fact that [the robot] was actually able to zero-shot on just the front camera, with no other sensors, in the office with dynamic objects being introduced and people walking by was a very big surprise to us,” de Witte says. “I think it’s a sign of what’s to come.”

The end game for General Intuition isn’t to build robots itself, but to become the foundation model of physical AI, a base model for other robotics companies to build upon for their own machines. Or, as de Witte put it: “We’re not gonna build a self-driving car company. We’re gonna make it 10 times easier for the next person to build a self-driving car company.”

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Rebecca Bellan is a senior reporter at TechCrunch where she covers the business, policy, and emerging trends shaping artificial intelligence. Her work has also appeared in Forbes, Bloomberg, The Atlantic, The Daily Beast, and other publications.

You can contact or verify outreach from Rebecca by emailing rebecca.bellan@techcrunch.com or via encrypted message at rebeccabellan.491 on Signal.

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Key takeaways

  • General Intuition proposes a new approach for training robots using gaming data instead of real-world data.
  • Data quality may be more important than quantity, which could benefit Brazilian startups facing challenges in data collection.
  • The significant investment in General Intuition may stimulate the growth of Brazilian startups in the robotics and AI sector.

Editorial analysis

General Intuition's proposal to use gaming data to train physical AI models represents a paradigm shift that could significantly impact the technology sector in Brazil. With the increasing adoption of robotics across various industries, from manufacturing to healthcare, the ability to develop more robust and generalizable AI models could accelerate local innovation. Brazil, which already has an expanding startup ecosystem, could benefit from adopting these technologies, especially in areas where real-world data collection is challenging or limited.

Moreover, the idea that data quality can outweigh quantity is crucial. Many Brazilian startups face difficulties in collecting data to train their AI solutions. General Intuition's approach could serve as a model for local companies to explore new data sources, such as simulations and virtual environments, to develop their own AI solutions, thereby reducing costs and development time.

The $320 million investment and the $2.3 billion valuation indicate strong market interest in solutions that can transform robotics. This could stimulate an increase in investment in Brazilian startups looking to develop similar technologies, creating a virtuous cycle of innovation and attracting talent to the sector. What to watch for next is how General Intuition and other companies following this line of thought will translate their innovations into practical applications and how this will impact the adoption of robots in everyday environments.

Finally, the possibility that AI models could be trained with gaming data suggests an interesting intersection between entertainment and technology. Brazil has a vibrant game development scene, and this connection could open new opportunities for collaboration between game developers and robotics companies, enhancing the creation of innovative solutions that utilize gamification to train robots in real-world situations.

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  • Editorial framing about relevance, impact, and likely next developments.
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