Traditional blockchain addresses “value transfer,” but does not solve “trust transfer.” The goal of Intuition (TRUST) is to make trust relationships recognizable and referable by machines on the chain, allowing any Web3 application to interact based on a unified credibility standard.
It is not just a record of identity, but a structured expression of trust itself.
In the Intuition network, each verification, recommendation, or interaction forms an Encrypted Attestation record. These records constitute a queryable and computable trust network, allowing different protocols, wallets, or applications to validate the source and credibility of information in real-time.
For example, in DeFi lending scenarios, users’ on-chain reputation can replace part of the collateral; in Web3 social interactions, it can reduce the risks of fake identities and scams.
The Intuition ecosystem currently covers major Layer 2 networks such as Base and Arbitrum, and plans to interconnect with more multi-chain infrastructure. By interacting with the smart contracts of these ecosystems, developers can easily call the trust verification API and embed trust logic into various decentralized products.
The TRUST token is not only a governance tool but also a value carrier of trust:
This mechanism ensures the circulation of tokens throughout the ecosystem, balancing security and economic incentives.
As the integration of AI and Web3 accelerates, machines require “verifiable trust data” for decision-making, while human users need a more secure identity system. Intuition is positioned right at the intersection of both. Its vision is to become a trust protocol layer shared by Web3 and AI, enabling agents and humans to interact on-chain in a safer and more transparent manner.
Intuition (TRUST) is not just a simple token project, but an exploration of “standardizing trust.” It redefines data, identity, and reputation through blockchain, and is building a verifiable, incentivized, and sustainable language of trust for a decentralized internet.
Share
Content