Get in Touch

Course Outline

Foundations of AI-Enhanced Release Control

  • Understanding feature flags and progressive delivery.
  • Core concepts of canary testing and staged exposure.
  • Identifying where AI adds value in release workflows.

Machine Learning Techniques for Rollout Decisions

  • Establishing baseline models for system and user behavior.
  • Applying anomaly detection methods for early warnings.
  • Considering training data requirements and feedback loops.

Designing AI-Driven Feature Flag Strategies

  • Implementing dynamic flag rules informed by AI signals.
  • Setting exposure thresholds and automated score gates.
  • Applying adaptive logic for increasing, pausing, or rolling back features.

AI-Assisted Canary Analysis

  • Evaluating canary performance against the baseline.
  • Weighting metrics and generating AI-based risk scores.
  • Triggering automated decision pathways.

Integrating AI Models into Release Pipelines

  • Embedding AI checks within CI/CD stages.
  • Connecting feature flag systems to machine learning engines.
  • Managing pipelines for hybrid automated and manual workflows.

Monitoring and Observability for AI Decision-Making

  • Identifying signals necessary for reliable AI inference.
  • Collecting telemetry data on performance, crashes, and behavior.
  • Closing the loop with continuous learning mechanisms.

Risk Management and Operational Governance

  • Ensuring responsible automation in release decisions.
  • Defining conditions for human review and override points.
  • Auditing AI-driven rollout actions.

Scaling AI-Based Rollout Strategies Across Products

  • Establishing multi-team governance frameworks.
  • Standardizing reusable ML components and models.
  • Normalizing cross-product telemetry.

Summary and Next Steps

Requirements

  • Familiarity with CI/CD workflows.
  • Experience using feature flags or managing deployment pipelines.
  • Understanding of basic statistical methods or performance monitoring concepts.

Target Audience

  • Product engineers.
  • DevOps professionals.
  • Release engineers and technical leads.
 14 Hours

Number of participants


Price per participant

Upcoming Courses

Related Categories