Insurance
Security programs for underwriting, claims, broker workflows, document-heavy AI systems, and privacy-sensitive customer operations.
Document workflows enabling data leakage or unauthorized access.
Claim manipulation and approval abuse through broken authorization.
AI summarization or retrieval exposing sensitive customer details.
Built For
Insurers handling claims, underwriting, and partner portals.
Organizations adopting AI for document triage and customer support.
Teams managing sensitive customer and incident data across multiple channels.
Use Cases
Assess claim lifecycle APIs, broker portals, and upload-driven workflows.
Test AI-assisted claim review or customer-service retrieval systems.
Validate identity and access boundaries across internal and partner roles.
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Frequently Asked Questions
Can partner portals be included?
Yes. Insurance environments often require testing internal, broker, and customer-facing surfaces together to capture real abuse paths.
Do you test document-heavy AI systems?
Yes. Retrieval, classification, summarization, and workflow-triggering AI features can all be included.
Need help validating this attack surface?
Talk with Eresus Security about scoped testing, threat modeling, and remediation priorities for this workflow.
Talk to Eresus