BSC Trading Bot Volumes Plunges 90% From Last Week Peak

TheCryptoTimesPublicado em 2025-10-18Última atualização em 2025-10-18

BSC-based trading bots have seen their transaction volumes collapse by 90% since last week’s peak, according to on-chain analyst Adam (@Adam_Tehc). 

“That was fast,” he wrote on X, noting that activity across leading platforms like GMGN and Photon has sharply declined. 

He also mentioned that just a week earlier, GMGN processed $500 million in daily volume, matching Photon’s performance during the TRUMP token launch.

The drop follows an intense surge in retail participation and automated trading around newly launched meme tokens and political-themed assets. 

Analysts suggest the cooldown reflects short-term market fatigue rather than a broader decline in interest. Still, it underscores how volatile and cyclical bot-driven trading can be on BNB Chain.

AI bots face similar growing pains

While BSC bots face volume slumps, AI-powered bots across other networks are grappling with platform restrictions. 

Bankr, an autonomous trading assistant that executes crypto trades via social platforms, recently returned to X after being banned from Telegram for allegedly breaching its terms of service. 

The episode sparked the #FreeBankr campaign and renewed discussion over how centralized platforms handle AI-integrated financial tools.

The link between Bankr’s suspension and BSC’s trading slump shows how crypto automation is hitting friction. Regulation, liquidity, and hype fatigue are exposing the limits of unchecked innovation.

Also read: Crypto-Stealing Open Source AI Bot Exposed


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