EduXchange.EU

Machine learning operations

02476
Computer Science and ICT, Data, AI

About this course

Introduce the student to several tools and software development practices that will help them organize, scale, deploy and monitor machine learning models either in a research or production setting. To provide hands-on experience with a number of frameworks, both local and in the cloud, for working with large scale machine learning pipelines.

Learning outcomes

Organize code in an efficient way for easy maintainability and shareability ; Capable of using version control systems to efficiently collaborate on code development and handle large amounts of data ; Being able to create reproduceable software environments and reproduceable containerized applications and experiments ; Being able to debug, profile, visualize and monitor multiple experiments to assess model performance ; Implement basic testing of software and apply continuous integration (CI) for automating code development ; Capable of using cloud based computing services to scale experiments and automate processes ; Able to deploy machine learning models, both locally and in the cloud and monitor the lifecycle of the model after deployment ; Demonstrate how to scale data loading, training and inference of the machine learning pipeline using distributed frameworks and optimization strategies ; Conduct a research project in collaboration with follow students using the frameworks taught in the course.

Examination

Evaluation of assignment(s)/report(s)

Course requirements

General understanding of machine learning (datasets, probability, classifiers, overfitting etc.) and basic knowledge about deep learning (backpropagation, convolutional neural networks, auto-encoders etc.). Familiar with coding in Pytorch.

Resources

  • https://skaftenicki.github.io/dtu_mlops/

Activities

The course includes lectures, exercises and project work. Approximately 30% of the course is spent on project work in groups of 3-5 persons, where tools throughout the course should be applied on a self-chosen machine learning problem.

Additional information

course
5 ECTS
  • Level
    Master
  • Contact hours per week
    5
  • Instructors
    Nicki Skafte Detlefsen, Søren Hauberg
  • Mode of delivery
    Online - at a specific time
If anything remains unclear, please check the FAQ of DTU (Denmark).

Starting dates

These offerings are valid for students of Technion (Israel)