Sonic Labs Freezes Wallets Due to Detection of Suspicious Activity

TheCryptoTimes2025-11-03 tarihinde yayınlandı2025-11-03 tarihinde güncellendi

Sonic Labs has frozen user wallets after detecting “suspicious activity” potentially linked to an exploit on the Beets protocol. The incident was flagged at 3:45 AM EST on November 3, 2025.

The move is intended to safeguard the ecosystem and user funds. The announcement was made via Sonic Labs’ official account on X.

The company also stated that it will work in “close coordination with the Beets team moving forward.” The specific nature of the suspicious activity has not been disclosed yet.

Wallet freezing 

Sonic provided links to the frozen addresses, which can be verified via the SonicScan blockchain explorer. The wallets currently frozen are:

`0xf19fd5c683a958ce9210948858b80d433f6bfae2`

`0x045371528a01071d6e5c934d42d641fd3cbe941c`

Wallet freezing is a security measure generally employed by blockchain projects to prevent the further movement of funds suspected to be associated with exploits, fraud, or other malicious activities. Users with funds in the affected wallets will be unable to make transactions until the freeze is lifted.

Users of both Sonic and Beets await further updates from the platforms.

Also Read: Tether Freezes 22 Wallets Across Ethereum and Tron


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