About the Course
Organizations invest in machine learning to create outcomes they can prove, but production value only appears when the model lifecycle is controlled end to end. In MLOps, you need to demonstrate reproducible training, versioned data and code, tested releases, monitored inference, and retraining triggers, all of which align closely with CI/CD discipline and the operating logic behind tools such as MLflow, GitHub Actions, and Docker. This course is for professionals who must show that a model is not only accurate in a notebook but also operationally stable in a real environment.
This MLOps training turns scattered experience into a structured operating system for ML delivery. You will practice designing a repeatable pipeline, setting up experiment tracking in MLflow, packaging models in Docker, defining deployment patterns with Kubernetes, and mapping monitoring signals such as drift, latency, and data quality to operational actions. You will also be introduced to supporting concepts like feature stores, model registries, and automated retraining logic at a practical level, with emphasis on what you can implement immediately versus what you should scope for later maturity. This course teaches how to operationalize machine learning models through version control, pipeline automation, testing, and post-deployment monitoring so you can move from ad hoc releases to controlled production workflows.
Real delivery constraints matter in this field: model owners often face limited data engineering capacity, fragmented tooling, governance demands, and pressure to deliver quickly without weakening controls. The course is built for those conditions, so you learn how to make credible MLOps decisions when data quality is uneven, release cycles are short, and multiple teams need the same model artifacts in a repeatable form.
Target Audience
This course is designed for professionals who already work with machine learning and now need to operationalize models in production with traceability and control.
- Data Scientists responsible for releasing trained models into production workflows
- Machine Learning Engineers building repeatable training and inference pipelines
- DevOps Engineers supporting CI/CD for model deployment and rollback
- MLOps Engineers managing model registry, monitoring, and retraining logic
- Analytics Engineers preparing governed feature and training data sets
- Platform Engineers maintaining Docker and Kubernetes runtime environments
- AI Product Managers coordinating model release requirements and stakeholders
- Data Engineering Leads integrating upstream data quality checks into ML pipelines
- Technical Team Leads reporting model reliability to engineering leadership
- Model Risk or Governance Specialists reviewing monitoring evidence and controls
Course Objectives
This course equips you to plan, execute, and measure MLOps initiatives that improve deployment reliability, strengthen model governance, and support scalable ML operations.
- Assess an existing ML workflow using the MLOps lifecycle and CI/CD readiness criteria.
- Apply MLflow experiment tracking to compare model runs and training parameters.
- Design a reproducible training and inference pipeline using Git, Docker, and GitHub Actions.
- Build a model registry and release workflow that supports versioned promotion decisions.
- Calculate monitoring signals such as drift, latency, and inference failure rates from production logs.
- Evaluate deployment readiness against testing, packaging, and rollback controls in a Kubernetes context.
- Navigate operational handoffs between data science, DevOps, and governance teams using documented artifacts.
- Implement a reporting pack with pipeline status, monitoring metrics, and retraining triggers for leadership.
Requirements & Prerequisites
Prerequisites required: working knowledge of machine learning model development, basic Python, and familiarity with Git concepts. You should be comfortable training or evaluating a supervised model, reading logs, and working with command-line or notebook-based workflows. Programming is required for hands-on labs, but the course stays focused on operational application rather than software engineering depth.
Professional and Organizational Impact
When you lead MLOps with credible data and practical strategies, you become a trusted driver of deployment reliability and operational control.
- Build confidence in release decisions using tracked experiments and versioned artifacts.
- Gain practical fluency in MLflow, Docker, GitHub Actions, and Kubernetes workflows.
- Strengthen your ability to diagnose drift, latency, and data quality issues.
- Enhance your credibility with engineering and governance teams through reproducible pipelines.
- Develop a clearer approach to balancing speed, testing, and production stability.
- Position yourself for roles that require model operations and platform coordination.
- Expand your capability to translate model metrics into operational actions.
- Improve your ability to document model releases for audit-ready production support.
Organizations that embed MLOps excellence into model delivery reduce costs, mitigate risks, and build lasting competitive advantage.
- Reduce manual release effort through automated ML pipeline execution.
- Lower production incident risk with tested deployment and rollback workflows.
- Improve model reuse through versioned data, code, and artifacts.
- Increase time-to-value for ML initiatives through repeatable operational patterns.
- Strengthen auditability with traceable experiment and deployment records.
- Improve model performance stability through drift monitoring and retraining triggers.
- Support better cross-functional alignment between data science and operations teams.
- Create a more scalable foundation for enterprise AI adoption.
Training Methodology
This is a practical, outcome-driven course designed to turn MLOps aspiration into measurable action and credible reporting.
Methodology includes:
- Hands-on calculation using a drift and latency metric set from production-style model logs.
- Scenario simulation for a failed model deployment requiring rollback, retraining, and release approval.
- Diagnostic exercise using an MLOps maturity checklist aligned to CI/CD, versioning, and monitoring controls.
- Stakeholder mapping for data science, platform engineering, and governance reporting chains.
- Case study analysis across fintech, healthcare, manufacturing, and retail ML operations patterns.
- Workshop to produce a deployable pipeline design under time and tooling constraints.
- Reflection exercise comparing current practice against reproducibility, monitoring, and automation benchmarks.
Upcoming Sessions
Next available dates worldwide
Certification
Recognized credentials that advance your career
Participants who complete the MLOps: Operationalising Machine Learning Models Training Program earn a Trainingcred Certificate of Achievement, demonstrating professional competence and alignment with global standards in learning and development.
NITA Accredited
Accredited by the National Industrial Training Authority, ensuring programs meet nationally recognized standards of quality and relevance.
CPD Certified
Recognized by the CPD Certification Service, ensuring every program meets internationally benchmarked standards of professional excellence.
Why this course earns its place on your CV
Accredited training, practitioner trainers, and peers on the same career track — the three things real expertise is built on.
Effective Learning & Skill Development
- Build expertise with structured, outcome-driven learning.
- Equip individuals and teams with skills that grow with industry needs.
- Reinforce learning through real-world scenarios, case studies and practical exercises.
Career Growth & Professional Advancement
- Apply what you learn with a proven methodology that ensures lasting impact.
- Develop immediately usable skills that translate directly into workplace success.
- Gain the expertise needed for career advancement and leadership roles.
Training Optimization & Learning Excellence
- Tailor training to industry-specific challenges and organizational goals.
- Use data-driven insights and automation to enhance training effectiveness.
- Evaluate progress and ensure long-term learning success.
Industry Tools and Platforms Featured in this Training
The platforms and vendors Cambodia teams are running today — taught against real configurations, not generic vendor demos.
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MLflow DatabricksUsed for experiment tracking, model registry, and reproducible model lifecycle management in MLOps workflows.
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Docker Docker, Inc.Used to package model code and dependencies into consistent containers for repeatable training and deployment.
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Kubernetes Cloud Native Computing FoundationUsed to orchestrate model-serving services and scale deployments reliably across environments.
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GitHub Actions GitHubUsed to automate testing, build, and deployment steps in CI/CD pipelines for machine learning systems.























