BlockBeats News, on January 7th, according to GMGN data, the market capitalization of AI multi-agent collaboration protocol Token SWARMS has exceeded $600 million, reaching a new historical high of $595 million, with a 24-hour increase of 74.1%. BlockBeats Note: The core function of Swarms is to allow multiple AI agents to collaborate like a team, using collective intelligence to solve complex problems. It not only supports seamless integration with external AI services and APIs to expand functionality, but also provides agents with almost unlimited long-term memory to enhance contextual understanding, while allowing customized workflows. Swarms has high reliability and scalability, and ensures optimal performance by automatically optimizing language model parameters. In this way, Swarms can leverage the collective intelligence of agents to better deal with complex challenges than individual agents.
The content is for reference only, not a solicitation or offer. No investment, tax, or legal advice provided. See Disclaimer for more risks disclosure.
SWARMSMarket Cap broke through 600 million US dollars to reach a record high, with a 24-hour increase of 74.1%
BlockBeats News, on January 7th, according to GMGN data, the market capitalization of AI multi-agent collaboration protocol Token SWARMS has exceeded $600 million, reaching a new historical high of $595 million, with a 24-hour increase of 74.1%. BlockBeats Note: The core function of Swarms is to allow multiple AI agents to collaborate like a team, using collective intelligence to solve complex problems. It not only supports seamless integration with external AI services and APIs to expand functionality, but also provides agents with almost unlimited long-term memory to enhance contextual understanding, while allowing customized workflows. Swarms has high reliability and scalability, and ensures optimal performance by automatically optimizing language model parameters. In this way, Swarms can leverage the collective intelligence of agents to better deal with complex challenges than individual agents.