Robotics Startup Raises $105M to Build AI Model for Robots

AI Business
Jul 3, 2025 12:41
Chuck Martin
1 views
aibusinessenterpriseapplications

Summary

Genesis AI has raised $105 million to develop an AI model specifically designed for robots, leveraging its proprietary simulation stack to generate large-scale synthetic data. This approach aims to advance multimodal generative modeling, potentially accelerating the integration of AI into robotics and enhancing robots' ability to learn and adapt in diverse environments.

Genesis AI has built its own simulation stack to generate synthetic data at scale to unify multimodal generative modeling

Related Articles

Unity promises strong AI copyright 'guardrails' after employee conjures Mickey

Hacker News - AIJul 4

Unity has pledged to implement stronger AI copyright safeguards after an employee generated an image of Mickey Mouse using its Muse AI tool during a live stream, raising concerns about potential copyright infringement. This incident highlights the ongoing challenges AI developers face in preventing the unauthorized creation of copyrighted content, underscoring the need for robust guardrails as generative AI tools become more widely used.

XRP Surges 4%, AVAX Shows Mixed Signals, While Web3 ai Eyes 1,747% ROI: Could This Be the Best Long Term Crypto?

Analytics InsightJul 4

The article reports that while XRP has surged 4% and AVAX is displaying mixed market signals, the Web3 ai project is drawing attention with a projected 1,747% return on investment. This highlights growing investor interest in AI-driven blockchain projects, suggesting that AI integration could play a significant role in shaping the future of the crypto market.

Visualize how AI-generated images emerge from a complex mathematical space

Hacker News - AIJul 4

The article explores "ReverseDiffusion.xyz," an interactive tool that visualizes how AI-generated images are formed by navigating complex mathematical spaces during the diffusion process. By offering a reversed perspective on generative AI, the tool helps demystify how models like Stable Diffusion create images, enhancing transparency and understanding of AI image synthesis. This approach could improve interpretability and trust in generative AI systems.