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MLOps

Continuous Learning

Keep AI models accurate over time with trigger-based retraining, drift detection, model registry, approval gates, and fast rollback mechanisms.

Trigger-Based Retraining

  • Performance degradation detection triggers
  • Environmental drift detection (lighting, scene changes)
  • Scheduled & event-driven retraining pipelines
  • Data volume threshold triggers
  • Manual trigger with one-click retraining

Model Registry

  • Centralized model artifact storage & versioning
  • Model metadata (architecture, dataset, metrics)
  • Lineage tracking from data to deployment
  • Secure model artifact signing & verification
  • Model comparison & promotion workflows

Staging → Production Workflow

  • Multi-stage deployment pipeline (dev → staging → prod)
  • Canary deployments with gradual traffic shifting
  • A/B testing between model versions
  • Approval gates with stakeholder sign-off
  • Automated smoke tests at each stage

Fast Rollback Mechanism

  • One-click rollback to any previous model version
  • Automatic rollback on performance threshold breach
  • Zero-downtime model swapping
  • Rollback audit trail & notifications
  • Fallback model configuration per deployment