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Threat investigation
Manual investigations overwhelmed a lean security team. Now, AI generates and tests threat hypotheses without human intervention.
- Up to 9x faster incident investigation vs humans
Across 109 branches, rule-based alerts buried security in false positives. Now, AI triages events and contains attacks in seconds.
A premier co-operative bank operating 109 branches across five Indian states, managing a decentralized environment built over a century in financial services.
The security team relied on legacy rule-based tools that generated excessive false positives from benign network activities. This created immense...
“Our perimeter defense had been essential in the beginning, but it was no longer sufficient in the face of new, subtle threats. We needed a technology that would allow us to focus on managing cyber risks, rather than triaging and documentation.”
Multi-state scheduled cooperative bank providing retail and corporate financial services.
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