Coursera

ML Production Systems Specialization

Coursera

ML Production Systems Specialization

Build Production-Ready ML Systems.

Deploy, optimize, and scale machine learning models for real-world production environments.

Hurix Digital
ansrsource instructors

Instructors: Hurix Digital

Access provided by SDNB College

Get in-depth knowledge of a subject
Intermediate level

Recommended experience

4 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace
Get in-depth knowledge of a subject
Intermediate level

Recommended experience

4 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Containerize, deploy, and orchestrate ML models using Docker and Kubernetes for scalable production environments.

  • Build automated ML pipelines with CI/CD integration, systematic hyperparameter tuning, and test-driven development practices.

  • Optimize inference performance and manage ML codebases using Git workflows, resource scaling, and monitoring strategies.

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Taught in English
Recently updated!

February 2026

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Specialization - 7 course series

Deploy, Manage, and Orchestrate Your Models

Deploy, Manage, and Orchestrate Your Models

Course 1, 1 hour

What you'll learn

Skills you'll gain

Category: Devops Tools
Category: Application Deployment
Category: Docker (Software)
Category: Kubernetes
Category: Containerization
Deploy & Optimize ML Services Confidently

Deploy & Optimize ML Services Confidently

Course 2, 2 hours

What you'll learn

Skills you'll gain

Category: Continuous Integration
Category: Performance Analysis
Category: Service Level Agreement
Category: MLOps (Machine Learning Operations)
Category: Performance Measurement
Category: Artificial Intelligence and Machine Learning (AI/ML)
Category: API Design
Category: DevOps
Choose Cost-Effective ML Algorithms Fast

Choose Cost-Effective ML Algorithms Fast

Course 3, 2 hours

What you'll learn

Skills you'll gain

Category: Benchmarking
Category: Resource Consumption Accounting
Category: Cost Estimation
Category: Analysis
Category: Cost Management
Category: Resource Utilization
Automate ML Pipelines for Peak Performance

Automate ML Pipelines for Peak Performance

Course 4, 2 hours

What you'll learn

Skills you'll gain

Category: Scalability
Category: Performance Tuning
Category: Predictive Modeling
Category: Feature Engineering
Category: Workflow Management
Category: MLOps (Machine Learning Operations)
Apply Test-Driven ML Code

Apply Test-Driven ML Code

Course 5, 1 hour

What you'll learn

  • Test-driven development creates a safety net that enables confident refactoring and continuous improvement of ML codebases for reliable systems.

  • Modular design principles applied to ML components (data loaders, training loops) dramatically improve code reusability and team collaboration.

  • Production-quality ML code requires the same software engineering rigor as traditional development, including comprehensive testing and CI/CD.

  • Investing in code quality upfront prevents technical debt that can derail ML projects during scaling and deployment phases of development.

Skills you'll gain

Category: Test Driven Development (TDD)
Category: CI/CD
Category: Tensorflow
Category: MLOps (Machine Learning Operations)
Category: Testability
Category: Software Engineering
Category: Software Testing
Category: Model Deployment
Category: Maintainability
Category: Python Programming
Category: Machine Learning Methods
Category: Unit Testing
Scale Kubernetes: Optimize Your Systems

Scale Kubernetes: Optimize Your Systems

Course 6, 2 hours

What you'll learn

  • Effective K8s resource management needs continuous monitoring and proactive scaling threshold adjustments based on usage patterns.

  • Optimal utilization balances performance and cost, targeting 70-80% usage to handle spikes without waste.

  • Automated scaling must consider app startup times and traffic patterns to prevent over-provisioning and performance issues.

  • Resource requests/limits ensure predictable performance while preventing resource starvation across workloads.

Skills you'll gain

Category: Kubernetes
Category: Scalability
Category: YAML
Category: Dashboard
Category: Analysis
Category: Continuous Monitoring
Category: Prometheus (Software)
Category: MLOps (Machine Learning Operations)
Category: Capacity Management
Category: Performance Tuning
Category: System Monitoring
Category: Grafana
Optimize and Manage Your ML Codebase

Optimize and Manage Your ML Codebase

Course 7, 1 hour

What you'll learn

  • Performance optimization needs systematic profiling and targeted fixes across pipeline stages, from data prep to model execution.

  • Effective ML workflows depend on branching strategies and CI/CD practices aligned with team size, release pace, and deployment needs.

  • Production ML systems balance model accuracy with inference speed through techniques like quantization and pruning.

  • Sustainable ML codebases integrate version control with automated testing and deployment pipelines for quality and velocity.

Skills you'll gain

Category: Git (Version Control System)
Category: CI/CD
Category: Version Control
Category: Continuous Deployment
Category: Software Testing
Category: Continuous Delivery
Category: Software Development Methodologies
Category: Performance Improvement
Category: Model Deployment
Category: MLOps (Machine Learning Operations)
Category: Performance Tuning
Category: Continuous Integration
Category: Release Management
Category: Software Versioning
Category: PyTorch (Machine Learning Library)

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Instructors

Hurix Digital
Coursera
406 Courses34,235 learners
ansrsource instructors
Coursera
200 Courses7,917 learners

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