Incognia Introduces New Location Spoofing Report — Dating Edition | Read the news >>
Validate trusted users through their devices. Incognia offers a device intelligence solution that recognizes trusted devices in real time. Incognia leverages device level information and device behavior to add trust to onboarding, login and transactions.
Incognia make it easier for good users to onboard, login and transact on your mobile app.
Using network signals and on-device sensors, Incognia analyzes current behavior to confirm if a user is using a trusted device.
The Mobile App automatically reads the device information, including model, brand, hardware and software configuration.
Incognia checks the association of the user's device, location and account status, scanning for anomalies to verify if the device can be trusted.
Incognia continuously re-verifies the device and account information to detect if the trust of the device has been compromised or if the device became part of a watchlist.
We make it easy to access Incognia's risk assessment and supporting evidence. Incognia supports API integration to your risk engine, provides an export feature for in-depth reporting, and summary and detailed view dashboards for easy viewing of supporting evidence.
Read the Incognia Trusted Device intelligence Solution Brief.
We provide a lightweight mobile SDK and intuitive APIs to make it easy for you to add location and device intelligence to risk assessments throughout the user journey.
Integrate in minutes using our integration wizard
Work with well-structured and easy to understand API responses
Advanced technical support via:
Read more about how Incognia provides a superior defense to financial services, banking and insurance application accounts through its unique Zero-Factor...
Learn how Incognia enables faster onboarding and prevents application fraud by enhancing identity verification process using a frictionless solution.
Read more about how Incognia provides superior defense against account takeover and delivers a frictionless user experience during login with risk-based...