LazAI Testnet Officially Launched: Building an On-chain Verifiable AI Economy Protocol
BlockBeats News, August 19th, according to official sources, Web3-native AI infrastructure protocol LazAI announced that its testnet is now fully open. The testnet, through programmable data anchoring tokens (DAT), on-chain traceability, and transparent value flow technology, aims to address the AI field's three core issues: data monopolization, lack of quality validation, and unfair revenue distribution.
The LazAI testnet aims to create, own, and benefit from AI intelligent agents and data assets. By breaking the closed data barriers of AI, ensuring that every output is trustworthy, it allows creators to achieve full ownership and revenue realization in the open-chain AI economy.
Key features of the testnet include: the Alith development framework, Data Anchoring Token (DAT), and out-of-the-box scalability; developers can now join the testnet to build verifiable AI applications.
Users can complete whitelist registration before August 20th to be eligible to mint the first batch of AI Companion DAT assets — Lazbubu and receive exclusive rewards.
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