This course will help anyone, at any level, to build a machine learning model and create a docker container in Python that can be deployed anywhere. Even if you are a complete beginner, you will have success. But if you have already built machine learning models countless times, you can still learn from this course, because your speed will increase if you want to create a baseline model very quickly. This course helps you implement machine learning prototyping as quickly as possible.
This course will help anyone, at any level, to build a machine learning model and create a docker container in Python that can be deployed anywhere. Even if you are a complete beginner, you will have success. But if you have already built machine learning models countless times, you can still learn from this course, because your speed will increase if you want to create a baseline model very quickly. This course helps you implement machine learning prototyping as quickly as possible.
Learn how to preprocess data much faster than usual in Python
Learn how to train even more than 10 different machine learning models together and compare them in Python
Learn how to optimize your machine learning models with the help of different optimization packages from PyCaret with one line of code
Learn how to track your machine learning model-building experiments. Save the results and artifacts (models, environment settings, etc.) of each experiment.
Learn how to deploy your machine learning model with one line of code. You will be able to create REST API and Docker containers for your machine-learning model. So your machine-learning model will be able to communicate with any programming language. So your model will get the inference (never seen data) and provide the predictions for them. And your application can be installed anywhere (cloud or on-premise).