- Developed with Broadcom and manufactured by TSMC
- Designed to reduce reliance on Nvidia’s hardware
- Mass production expected by 2026
Tech giants are increasingly moving away from Nvidia’s dominance in AI chip manufacturing. OpenAI, as part of the ambitious $500 billion Stargate initiative, is finalizing its first AI GPU. This custom silicon is heading to TSMC for tape-out, a crucial step before mass production.
The $500 Million Investment in AI Hardware
According to Reuters, OpenAI has spent over $500 million designing this proprietary AI chip. The company aims to establish independence from Nvidia’s expensive hardware while optimizing performance for training and inference tasks. If development stays on schedule, OpenAI could begin limited deployments later this year, with large-scale production set for 2026.
A Small Yet Highly Skilled Development Team
- Led by Richard Ho, former Google AI processor expert
- Team consists of only 40 engineers
- Designed for running AI models with efficiency
OpenAI’s dedicated hardware division remains compact but highly specialized. Richard Ho, a key figure behind Google’s AI processors, has been spearheading this effort for over a year. The company plans to initially deploy the chip on a limited scale to evaluate its potential before full-scale integration.
Leveraging TSMC’s Cutting-Edge Technology
- Manufactured using TSMC’s 3nm process
- Utilizes systolic array architecture
- Includes high-bandwidth memory (HBM) and advanced networking
This AI processor will be fabricated on TSMC’s advanced 3-nanometer node, ensuring high efficiency and performance. With HBM and systolic array architecture, it is designed to handle complex AI workloads, making it a strong contender against existing Nvidia solutions.
Strategic Advantage: A Bargaining Tool Against Nvidia
Although OpenAI plans to use this chip internally, industry experts suggest it may also serve as a negotiation tool with existing hardware suppliers like Nvidia. By demonstrating self-sufficiency, OpenAI could secure better pricing and supply agreements for its growing AI infrastructure needs.

Future Implications for AI Hardware
- OpenAI could disrupt Nvidia’s dominance in AI chips
- Potential collaboration with Microsoft, Meta, or Google
- Greater efficiency and cost control in AI model training
While OpenAI and TSMC have declined to comment, the tech world is closely watching. If successful, this move could significantly reshape the AI hardware landscape, offering new alternatives to Nvidia’s GPUs.
Stay tuned for further updates as OpenAI prepares for mass production of its first in-house AI chip.