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Automated document fraud detection powered by AI offers a proactive solution, letting businesses to verify documents in real-time, detect anomalies, and prevent fraud before it occurs. Here is where AI-powered intelligent document processing (IDP) is changing the game. AI can compare submissions and flag inconsistencies.
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is the VP of Security Engineering and AI Strategy at Aryaka. Dr. Sood is interested in Artificial Intelligence (AI), cloud security, malware automation and analysis, application security, and secure software design. Can you tell us more about your journey in cybersecurity and AI and how it led you to your current role at Aryaka?
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Because Log4Shell can hide deep in dependency chains, security teams may supplement automated scans with more hands-on methods, like penetration tests. With QRadar EDR, analysts can make quick, informed decisions and use automated alert management to focus on the threats that matter most. Threat hunting.
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Sync your AD users and groups and memberships to AWS Identity Center: If you’re using an identity provider (IdP) that supports SCIM, use the SCIM API integration with IAM Identity Center. We provide the following sample Lambda function that you can copy and modify to meet your needs for automating the creation of the Studio user profile.
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