0G Private Computer Makes AI Privacy the Default Runtime
0G Private Computer Makes AI Privacy the Default Runtime
馃敀 AI privacy just changed

0G has launched Private Computer, a system that runs every AI inference request inside a Trusted Execution Environment (TEE).
Key features:
- Hardware-verified privacy for all AI operations
- No third parties can access data鈥攏ot even the service provider
- Privacy built into the runtime, not just a cloud feature checkbox
The platform aims to eliminate trust requirements when using AI services. Users can experience the system at pc.0g.ai.
This represents a shift from privacy as an optional feature to privacy as fundamental infrastructure for AI applications.
When we shipped 0G Private Computer, the point was simple: AI privacy should not be a checkbox in someone else's cloud. It should be the runtime. Now look at the model surface.
Introducing 0G Private Computer. Using AI does not have to be a trust exercise. Every inference request runs inside a TEE. Hardware proves what happened. No one in the supply chain can peek, not even the provider. Experience true AI privacy: pc.0g.ai
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