real-time sensitive data classification
Automatically identifies and classifies sensitive data elements (PII, financial records, health data) across large datasets using AI-driven pattern recognition. Applies appropriate privacy tags without manual intervention.
granular privacy control application
Applies fine-grained privacy controls (masking, tokenization, aggregation, differential privacy) to sensitive data elements while preserving analytical utility. Enables analysis on protected data without destroying dataset value.
privacy impact assessment generation
Automatically generates privacy impact assessments (PIAs) and data protection impact assessments (DPIAs) by analyzing data flows, processing activities, and applied privacy controls.
consent and preference management
Manages customer consent records and privacy preferences across channels. Ensures data processing respects customer choices (opt-in/opt-out, purpose limitations, channel preferences).
anomaly detection in data access patterns
Uses AI to detect unusual data access patterns that may indicate unauthorized access, data exfiltration, or insider threats. Alerts security teams to suspicious behavior in real-time.
privacy-compliant data sharing with third parties
Enables secure data sharing with external parties (vendors, partners, regulators) while maintaining privacy controls. Applies appropriate privacy transformations and tracks data usage by recipients.
real-time regulatory compliance monitoring
Continuously monitors data access, transformations, and analytics queries against regulatory requirements (GDPR, CCPA, financial regulations). Flags violations and generates compliance reports in real-time.
privacy-preserving analytics query execution
Executes analytics queries on sensitive data with privacy controls automatically applied. Returns analytical results (aggregations, trends, patterns) without exposing underlying sensitive records.
+6 more capabilities