agentic AI.
We've curated 10000 cybersecurity statistics about Agentic AI to help you understand how autonomous AI systems are revolutionizing threat detection and response in 2025, enhancing security practices while also introducing new risks to navigate.
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54% of organizations prioritize fine-grained authorization when evaluating identity infrastructure.
32% of organizations prioritize tenant isolation when evaluating identity infrastructure.
11% of organizations rank total cost of ownership last among identity infrastructure evaluation criteria.
17% of organizations that rate themselves "not so confident" in their AI security posture have experienced a confirmed AI identity incident.
96% of companies running AI in production, using AI broadly, and operating on multi-tenant SaaS identity infrastructure face shadow AI challenges.
25.6% of identity crime victims managed two or more concurrent incidents, up from 23.5% the previous year.
62.1% of attempted misuse cases involved new account applications, and 37.9 percent involved attempted account takeovers.
By account type, credit cards accounted for 41% of all attempted misuse, checking accounts account for 17.7%, and personal loans account for 8.5%.
Unauthorized access to computers and mobile devices accounted for 27.2% of identity compromises, a 78% increase from 15.3% the previous year.
Scams involving the sharing of personal information accounted for 36.1% of identity compromises, down from 43.1% the previous year.
AI security and risk management capability gaps affect 61% of organizations globally.
One in five phishing links clicked by users went completely undetected by legacy URL filtering.
84% of adults aged 18+ in the United States, UK, Austria, Germany, and Switzerland say convincing video evidence no longer feels like proof.
68% of developers say it is extremely important to have a clear, automated system for tracking AI-generated code and measuring its impact for debugging, security, and accountability.
51% of development teams experience bottlenecks in security testing related to AI-generated code.
43% of internal authentication traffic still relies on NTLM, a legacy protocol frequently abused for credential replay and privilege escalation attacks.
12% of organizations maintain direct user-to-server administrative pathways, meaning a single compromised employee device can provide immediate access to high-value systems.
Roughly 80% of enterprises have deployed internal AI agents while two-thirds lack governance policies for those agents.
53% of development teams have grown total code volume by over 25%.
78% of organizations report more incidents after deploying AI-generated code in the past 12 months.