「Previously Borrowed Coins to Short 66,000 ETH」 Whale Once Again Increases Position by 22,720 ETH

By: theblockbeats.news|2025/11/14 21:15:54
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BlockBeats News, November 14th, according to EmberCN monitoring, the whale address that "once borrowed coins to short 66,000 ETH" continued to withdraw 22,720 ETH (worth $71.14 million) from Binance in the past half hour.

Since 11/5, they have transferred a total of $1.169 billion to Binance and then withdrew 444,800 ETH (worth $1.51 billion), with an average price of $3,398. They are currently at a floating loss of $133 million.

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