Pipelines
Part of the "Machine Learning in Production" course.
Master the orchestration and management of ML pipelines using tools like Kubeflow, AirFlow, and Dagster.
How to use this course
FREE PREVIEWSetup
Project examples
Before we begin ...
Agenda
FREE PREVIEWWhy: Motivation
Orchestration idea
Kubeflow
AirFlow
Practice
Practice submission
Practice implementation example
Takeaways
Feedback
Agenda
FREE PREVIEWWhy: Motivation
ML project journey
Dagster
Practice
Practice submission
Practice implementation example
Takeaways
Feedback
Congrats! Here's what's next...
Before you go...
This mini-course, "Pipelines," is the fourth module of the comprehensive "Machine Learning in Production" course. While the full course covers all aspects of deploying and managing ML projects end-to-end, this mini-course focuses specifically on pipeline orchestration and management. Mastering pipelines is crucial for automating, scaling, and maintaining robust ML workflows, making it an essential component for anyone aiming to manage complex ML projects efficiently.
This mini-course is ideal for software engineers, ML professionals, tech switchers, and tech entrepreneurs interested in mastering the orchestration and management of ML pipelines.
By the end of this course, you'll have a solid foundation in building and managing ML pipelines using tools like Kubeflow, AirFlow, and Dagster. You'll also gain an understanding of the ML project journey, enabling you to streamline and automate your ML workflows effectively.
A basic understanding of programming concepts and familiarity with machine learning principles are recommended to get the most out of this course.
The course is designed to be completed in approximately 1.5 weeks. However, you can pace yourself according to your schedule and learning preferences.
No, you have access to the course materials indefinitely.
The course can be completed in about 8 hours total. You can choose to spread this out over a week or complete it in a single session, depending on your availability and learning style.
Don't worry! Our course comes with a supportive Discord community channel dedicated to homework help. Here, you can ask questions, seek guidance, and collaborate with fellow learners and the instructor. Additionally, for each practice task, we provide an example implementation to guide you through the process.
Yes, upon completing this course, you will receive a 70$ discount on the full "Machine Learning in Production" course. Use your email address as the promo code at checkout.