GMGN Agent API opens internal testing, supporting AI Agent access to on-chain transactions
The GMGN Agent API, designed specifically for large model and AI developers, is now officially open for internal testing. This API allows developers to perform on-chain trading operations through natural language instructions.
In terms of data and functionality, this API provides real-time K-line data and research indicators covering multiple chains such as SOL, BSC, and Base, and has the capability to identify on-chain risk information such as snipers, insider trading, and high-control bundled wallets. In terms of security mechanisms, the system uses Ed25519 asymmetric encryption authentication, with private keys stored locally, and is equipped with an IP whitelist and anti-clipping protection based on a custodial wallet architecture.
Currently, developers can access it through tools like OpenClaw and Claude Code (the query function only requires an API Key, while the trading function requires additional configuration of a private key). This API currently employs a whitelist application mechanism, with the official team reviewing and importing UIDs daily.
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