Pundi AI launches Data Pump to enable data contributors to share AI ecosystem value
Odaily News According to official news, Pundi AI has launched the Data Pump function, which converts data sets into on-chain assets through Web3 technology to help data contributors realize fair monetization. Users can tokenize data sets and trade them freely through decentralized exchanges, while using AI agents to verify the value of data and ensure the transparency and reliability of data sets.
Data Pump uses a binding curve model to manage token prices, ensuring fair pricing and continuous liquidity, while ensuring transaction security through dual contract design and MEV protection mechanism. Dataset creators can set fundraising goals, attract community supporters, and enjoy long-term benefits after token issuance. This mechanism not only gives data contributors more rights and interests, but also provides developers with high-quality and transparent AI training data, jointly promoting the construction of a fairer and more inclusive AI ecosystem.
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