MLOps (Machine Learning Operations) is a rapidly growing field that combines the best practices of software development and machine learning to enable organizations to build, deploy, and manage machine learning models at scale. With the increasing demand for machine learning models in various industries, MLOps has become a crucial skill for data scientists, machine learning engineers, and software engineers.
In this article, we will discuss MLOps and the importance of learning it. We will also highlight some of the best online MLOps courses that are currently available.
What is MLOps?
MLOps is the practice of applying agile and DevOps principles to machine learning. It aims to automate and streamline the entire machine learning workflow, from model development to deployment and maintenance. This involves managing the infrastructure, data, and code that goes into building and deploying machine learning models.
Why learn MLOps?
As machine learning becomes more mainstream, it is increasingly important for organizations to be able to develop, deploy, and maintain machine learning models quickly and efficiently. MLOps enables organizations to do this by automating and streamlining the machine learning workflow. It also helps to ensure that models are accurate, robust, and maintainable.
Additionally, the field of MLOps is growing rapidly, and there is a high demand for professionals with these skills. According to the LinkedIn Workforce Report, the demand for MLOps professionals has increased by more than 300% in the past year.
Best MLOps Courses Online
MLOps with Azure Machine Learning on igmGuru
This MLOps course online covers the fundamentals of MLOps using Azure Machine Learning. It covers topics such as how to create and manage machine learning workspaces, how to deploy and manage machine learning models, and how to monitor and troubleshoot machine learning models.
Applied Data Science with Python on Coursera
This course, offered by the University of Michigan, covers the basics of MLOps using Python. It covers topics such as how to create and manage machine learning pipelines, how to deploy and manage machine learning models, and how to monitor and troubleshoot machine learning models.
MLOps: Continuous Delivery and Automation on Pluralsight
This course covers the basics of MLOps and how to automate the machine learning workflow. It covers topics such as how to create and manage machine learning pipelines, how to deploy and manage machine learning models, and how to monitor and troubleshoot machine learning models.
MLOps: Managing Machine Learning Workflows on DataCamp
This course, offered by DataCamp, covers the basics of MLOps and how to manage machine learning workflows. It covers topics such as how to create and manage machine learning pipelines, how to deploy and manage machine learning models, and how to monitor and troubleshoot machine learning models.
Conclusion
In conclusion, MLOps is a rapidly growing field that combines the best practices of software development and machine learning to enable organizations to build, deploy, and manage machine learning models at scale. Learning MLOps is crucial for data scientists, machine learning engineers, and software engineers to be able to develop, deploy, and maintain machine learning models quickly and efficiently. You can check out the MLOps tutorial for beginner today for more.