MLOps: Operationalising Machine Learning Models Online Course
Join our virtual, live instructor-led session and master MLOps: Operationalising Machine Learning Models Training from anywhere in the world.
Upcoming Virtual Training Schedules
Join from anywhere in the world with our live instructor-led sessions
| Code | Start Date | End Date | Duration | Fee | |
|---|---|---|---|---|---|
| MLO-01 | Mon - Fri (5 Days) | USD 850 | Reserve my seat → Register my team → | ||
| MLO-01 | Mon - Fri (5 Days) | USD 850 | Reserve my seat → Register my team → | ||
| MLO-01 | Mon - Fri (5 Days) | USD 850 | Reserve my seat → Register my team → | ||
| MLO-01 | Mon - Fri (5 Days) | USD 850 | Reserve my seat → Register my team → | ||
| MLO-01 | Mon - Fri (5 Days) | USD 850 | Reserve my seat → Register my team → | ||
| MLO-01 | Mon - Fri (5 Days) | USD 850 | Reserve my seat → Register my team → |
Here's What You'll Learn
Each module tackles real challenges you face in your role
MLOps Foundations and Lifecycle
Version Control and Experiment Tracking
Data Pipelines and Feature Governance
Containerization and Workflow Automation
Kubernetes Deployment Patterns
Monitoring and Drift Detection
Governance, Reporting, and Roadmaps
Market-specific guidance for Australia
A country-aware view of the pressures, proof points, and practical tools that shape how this course applies locally.
Tools and platforms relevant to this field
6Field-relevant examples that may be featured in training where they support the confirmed scope. Exact coverage depends on participant needs and delivery format.
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MLflow DatabricksUsed for experiment tracking, model versioning, and model registry workflows in production ML pipelines.
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Docker Docker, Inc.Used to package ML applications and dependencies so training and serving environments stay reproducible across teams and deployments.
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Kubernetes The Linux FoundationUsed to orchestrate containerised model services and support scalable deployment patterns for ML workloads.
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GitHub Actions GitHubUsed to automate CI/CD checks, testing, and deployment steps for ML code and pipeline changes.
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Prometheus Prometheus AuthorsUsed to collect metrics for model and service monitoring so teams can detect drift, failures, or performance degradation.
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Grafana Grafana LabsUsed to visualise monitoring data and build dashboards for operational oversight of ML systems.
Where this course runs
MLOps: Operationalising Machine Learning Models Training is delivered in the cities below — pick the one that fits your schedule.























