Platform Overview
DATA LOSS PREVENTION
Data Detection & Response
Data Exfiltration Prevention
Data Security Posture Management
DATA PROTECTION
Data Encryption
Data Discovery & Classification
DATA PRIVACY FOR AI
Firewall for AI Developers
Firewall for AI Copilots
Key Features
Human Firewall
AI-Native Detection
Extensible Workflows
Use Cases
Prevent Secrets Sprawl
Prevent Data Exfiltration
Safeguard Personal Information
Secure AI Usage
Encrypt Sensitive Data Automatically
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Firewall for AI
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