automated-sensitive-data-discovery
Automatically scans and identifies sensitive information (PII, PHI, financial data, credentials) across multi-cloud storage environments without requiring manual tagging or configuration. Uses AI-powered pattern recognition to detect regulated data types across AWS, Azure, and GCP.
data-lineage-mapping
Tracks and visualizes data flows across systems to show where data originates, how it transforms, and where it's consumed. Provides real-time lineage graphs for compliance audits and regulatory reporting.
intelligent-data-optimization
Analyzes data storage patterns to identify redundant, duplicate, or stale datasets and recommends optimization actions. Provides cost-reduction insights by highlighting data that can be archived, deduplicated, or deleted.
multi-cloud-data-inventory
Creates a unified inventory of all data assets across AWS, Azure, and GCP environments, cataloging metadata, ownership, and classification status. Provides centralized visibility into distributed data estates.
compliance-workflow-automation
Automates compliance-related tasks such as data subject access requests (DSARs), data deletion workflows, and regulatory reporting. Reduces manual effort in handling compliance obligations.
data-risk-scoring
Assigns risk scores to datasets based on sensitivity level, access patterns, and security posture. Prioritizes remediation efforts by highlighting highest-risk data assets.
access-control-analysis
Analyzes who has access to sensitive data and identifies over-privileged users or excessive permissions. Detects access anomalies and recommends principle-of-least-privilege improvements.
data-retention-policy-enforcement
Enforces data retention policies by identifying data that has exceeded retention periods and automating archival or deletion workflows. Ensures compliance with regulatory retention requirements.