CoinDCX Suffers Rs. 368 Crore Hack: Internal Breach Exposes Liquidity Account, User Funds Remain Safe

Analytics Insight
Jul 21, 2025 04:30
Somatirtha
1 views
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Summary

CoinDCX, a major Indian crypto exchange, suffered a Rs. 368 crore hack due to an internal security breach that exposed its liquidity account. While user funds remain unaffected, the incident highlights the growing need for advanced AI-driven security measures in financial platforms to detect and prevent such breaches. This underscores the critical role of AI in enhancing cybersecurity within the digital asset industry.

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