AI Assets
Manage AI models, infrastructure, and agents with comprehensive security monitoring, version control, and governance.
AI Asset Categoriesβ
AI Modelsβ
Machine learning models:
- Classification models
- Regression models
- NLP models
- Computer vision models
- Generative AI models
AI Infrastructureβ
Compute and storage for AI:
- GPU clusters
- Training infrastructure
- Inference endpoints
- Model storage
- Feature stores
AI Agentsβ
Autonomous AI systems:
- Security agents
- Automation agents
- Analysis agents
- Custom agents
AI Dataβ
Training and operational data:
- Training datasets
- Validation datasets
- Production data
- Feature data
AI Dashboardβ
Overviewβ
- Total AI assets
- Model count
- Infrastructure health
- Agent status
AI Securityβ
- Model security status
- Vulnerability findings
- Anomaly alerts
- Compliance status
Managing AI Modelsβ
Registering Modelsβ
- Navigate to Asset Management β AI Assets
- Click Add AI Model
- Enter model details:
- Name and version
- Model type
- Purpose/use case
- Owner
- Configure security settings
- Save model
Model Detailsβ
For each model:
- Basic information
- Version history
- Security assessment
- Performance metrics
- Access controls
- Deployment status
Model Versioningβ
- Version tracking
- Change history
- Rollback capability
- A/B testing support
Model Securityβ
- Vulnerability scanning
- Backdoor detection
- Input validation
- Output monitoring
AI Infrastructure Managementβ
Infrastructure Typesβ
- Cloud GPU instances
- On-premise clusters
- Serverless inference
- Edge deployment
Infrastructure Monitoringβ
- Resource utilization
- Performance metrics
- Cost tracking
- Availability
Security Monitoringβ
- Access controls
- Network security
- Data protection
- Compliance
AI Agent Managementβ
Agent Registryβ
Track all AI agents:
- Active agents
- Agent purposes
- Performance metrics
- Security status
Agent Configurationβ
For each agent:
- Behavior settings
- Access permissions
- Monitoring rules
- Alert thresholds
Agent Governanceβ
- Approval workflows
- Change management
- Audit logging
- Compliance tracking
AI Security Featuresβ
Model Security Scanningβ
- Malware detection
- Backdoor scanning
- Weight analysis
- Dependency checking
Runtime Protectionβ
- Input validation
- Output monitoring
- Anomaly detection
- Attack prevention
Access Controlβ
- Model access permissions
- Data access controls
- API security
- Audit logging
Complianceβ
- AI regulations
- Industry standards
- Ethical guidelines
- Documentation
AI Lifecycle Managementβ
Development Phaseβ
- Model development tracking
- Experiment logging
- Testing documentation
- Approval workflows
Deployment Phaseβ
- Deployment approvals
- Environment management
- Rollout strategies
- Monitoring setup
Production Phaseβ
- Performance monitoring
- Security monitoring
- Drift detection
- Incident response
Retirement Phaseβ
- Deprecation process
- Migration support
- Archive procedures
- Documentation
Reportingβ
AI Reportsβ
- Model inventory
- Security status
- Performance reports
- Compliance reports
Governance Reportsβ
- Model usage
- Access audit
- Change history
- Risk assessment
Best Practicesβ
- Register all AI assets - Complete inventory
- Version everything - Track all changes
- Scan for security - Before deployment
- Monitor continuously - Watch for issues
- Control access - Least privilege
- Document thoroughly - Purpose, data, decisions
- Plan for lifecycle - From development to retirement
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