Machine Learning Operations (MLOps) lies at the core of the AI Engineering function. In Statistics.com’s MLOps with Azure program you will learn to combine data engineering and data science skills to deploy machine learning models.
Most of the work in deploying AI models does not lie in developing models. Rather, it lies in developing, monitoring and maintaining an automated, self-monitoring data pipeline through a model and into actions. The common practice of tossing a project back and forth between pure data scientists and pure data engineers leads to delay and errors. This has created a need for AI engineers who have knowledge of each function. Mastering machine learning deployment skills on the Microsoft Azure platform is a sure path to career success.
In this course, you will learn how to work with data scientists to deploy machine learning models that can learn from data, and generate predictions, recommendations or decisions. This process usually is automated and that is where MLOps and AI engineering skills are needed.
You will focus on developing the skills needed to create a Microsoft Azure pipeline that:
- Ingests data to train a predictive model
- Feeds the model as it operates
- Scores the data on an ongoing basis
- Outputs an action
- Integrates into business applications
Additionally, you will learn to develop the pipeline so that it will continuously monitor several points of operation, including the incoming data (for data drift) and the decision outputs (for anomalies). Statistics.com is the training platform of Elder Research (elderresearch.com), an internationally recognized data analytics consulting firm that, since 1995, has consulted for hundreds of leading businesses in data strategy, data science, and data engineering. Elder Research leverages the wisdom gained by solving a wide variety of real-world problems to infuse their education programs on the Statistics.com platform with the most cutting-edge training that can be applied day one.