PRISM: Privacy-Preserving Real-World Intelligence Subnet
PRISM enables AI systems to learn from real-world human behavior without collecting or exposing personal data by coordinating distributed data providers that compute locally and return verifiable sign
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技术栈
描述
PRISM (Privacy-Preserving Real-World Intelligence Subnet) is a Bittensor subnet designed to produce a new machine-learning commodity: verifiable behavioral intelligence derived from distributed private environments without transferring raw user data.
Modern AI systems are trained primarily on public internet text, yet most economically valuable information exists in private behavioral contexts such as purchasing, consumption, and interaction patterns. These environments cannot be centralized due to privacy laws and platform restrictions. As a result, artificial intelligence lacks real-world grounding.
PRISM solves this by coordinating a decentralized network of applications and services (“miners”) that locally compute statistical signals and learning updates while retaining data on-device. Validators evaluate usefulness and consistency of outputs and reward contributors proportionally to measurable model improvement.
The protocol evolves through three stages:
Verified dataset bootstrapping
Behavioral cohort intelligence
Privacy-preserving federated model training
The subnet therefore enables AI systems to learn from human activity while preserving individual privacy.
本次黑客松进展
ideation completed, development started
融资状态
na