How does Inference Labs reduce the cost of AI model errors?
Airports, finance, healthcare, DeFi; these fields share only one common point: once an error occurs, the cost is extremely high!
In such scenarios, the issue with AI is no longer whether it can run correctly or accurately, but whether it can be audited. Regulation, responsibility, and compliance have never accepted models based solely on their initial design. What they need is a clear audit trail:
“Who made this prediction? What model was used? Under what conditions was it executed? Has it been tampered with?”
Inference Labs’ DSperse and JSTprove are precisely designed to solve this core problem. Through distributed proof and efficient zkML inference, every prediction and action can be traced and verified without exposing private data or proprietary model weights.
This means the system can operate in real-world environments and also undergo independent audits afterward; it satisfies privacy and IP protection while maintaining transparency and accountability.
In high-risk fields, trust is not an added value but a prerequisite. Verifiability is becoming the passport for AI to enter the real world!
#KaitoYap @KaitoAI #Yap @inference_labs
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How does Inference Labs reduce the cost of AI model errors?
Airports, finance, healthcare, DeFi; these fields share only one common point: once an error occurs, the cost is extremely high!
In such scenarios, the issue with AI is no longer whether it can run correctly or accurately, but whether it can be audited. Regulation, responsibility, and compliance have never accepted models based solely on their initial design. What they need is a clear audit trail:
“Who made this prediction? What model was used? Under what conditions was it executed? Has it been tampered with?”
Inference Labs’ DSperse and JSTprove are precisely designed to solve this core problem. Through distributed proof and efficient zkML inference, every prediction and action can be traced and verified without exposing private data or proprietary model weights.
This means the system can operate in real-world environments and also undergo independent audits afterward; it satisfies privacy and IP protection while maintaining transparency and accountability.
In high-risk fields, trust is not an added value but a prerequisite. Verifiability is becoming the passport for AI to enter the real world!
#KaitoYap @KaitoAI #Yap @inference_labs