Coursera

Machine Learning Made Easy for Software Engineers Specialization

Coursera

Machine Learning Made Easy for Software Engineers Specialization

Build and Deploy Production ML Systems.

Learn to build, optimize, deploy, and monitor machine learning systems as a software engineer.

Access provided by Henkel

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

  • Build, train, and evaluate machine learning models using industry-standard ML libraries

  • Design automated ML pipelines and reproducible development workflows

  • Implement model evaluation, monitoring, and validation techniques for production systems

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Taught in English
Recently updated!

March 2026

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Specialization - 4 course series

What you'll learn

  • Build and train machine learning models by mapping real-world problems to appropriate ML tasks

  • Optimize and validate models using hyperparameter tuning, cross-validation, and feature analysis

  • Create automated ML pipelines that streamline feature engineering, training, and experimentation

Skills you'll gain

Category: Scikit Learn (Machine Learning Library)
Category: Statistical Machine Learning
Category: Machine Learning
Category: Machine Learning Algorithms
Category: Verification And Validation
Category: Predictive Modeling
Category: MLOps (Machine Learning Operations)
Category: Resource Utilization
Category: Feature Engineering
Category: Applied Machine Learning
Category: Statistical Modeling
Category: Random Forest Algorithm
Category: Workflow Management
Category: Cost Management
Category: Performance Tuning
Category: Benchmarking
Category: Model Evaluation
Category: Performance Analysis
Category: Supervised Learning
Category: Business Logic

What you'll learn

  • Train machine learning models and analyze training dynamics using logs and loss curves

  • Evaluate model performance using metrics, confusion matrices, and statistical analysis

  • Design monitoring strategies to detect model drift and maintain model reliability

Skills you'll gain

Category: System Monitoring
Category: Anomaly Detection
Category: Predictive Modeling
Category: Benchmarking
Category: Statistical Methods
Category: Debugging
Category: Failure Analysis
Category: Model Evaluation
Category: MLOps (Machine Learning Operations)
Category: A/B Testing
Category: Verification And Validation
Category: Data Validation
Category: Applied Machine Learning
Category: Continuous Monitoring
Category: Statistical Analysis
Category: Performance Metric
Category: Scikit Learn (Machine Learning Library)

What you'll learn

  • Transform and validate data for machine learning using encoding, cleansing, and data quality techniques

  • Design and orchestrate ML data pipelines that ensure reliability, freshness, and pipeline performance

  • Manage reproducible ML development using version control and environment management tools

Skills you'll gain

Category: Data Pipelines
Category: Dataflow
Category: Quality Assurance
Category: Git (Version Control System)
Category: Virtual Environment
Category: Cost Management
Category: Feature Engineering
Category: Data Transformation
Category: Resource Utilization
Category: Data Integrity
Category: Data Quality
Category: Version Control
Category: Data Cleansing
Category: Extract, Transform, Load
Category: Package and Software Management
Category: MLOps (Machine Learning Operations)
Category: Data Validation
Category: Exploratory Data Analysis
Category: Apache Airflow
Category: Data Preprocessing
Deploying and Debugging ML Microservices

Deploying and Debugging ML Microservices

Course 4, 9 hours

What you'll learn

  • Deploy machine learning models using containerization and orchestration tools such as Docker and Kubernetes

  • Design scalable ML inference services using microservice architecture principles

  • Monitor and debug ML systems using logs, testing techniques, and performance analysis

Skills you'll gain

Category: Model Deployment
Category: Docker (Software)
Category: Systems Architecture
Category: Microservices
Category: Application Deployment
Category: Restful API
Category: Application Performance Management
Category: Unit Testing
Category: Software Testing
Category: Debugging
Category: Continuous Monitoring
Category: Software Architecture
Category: MLOps (Machine Learning Operations)
Category: Service Level
Category: Cloud Computing Architecture
Category: CI/CD
Category: System Monitoring
Category: Containerization
Category: Kubernetes
Category: Scalability

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Instructor

Professionals from the Industry
356 Courses49,365 learners

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