AutoML – H2O for Beginners – A Guide to build an image classification model in Python using MNIST Data
In this Learn by Coding tutorial, you will learn how to do AutoML – H2O for Beginners – A Guide to build an image classification model in Python using MNIST Data. This is a simple python program for beginners who want to kick start their Python programming journey. This end-to-end example will give a hands on introduction in Python for beginners to professionals.
Python Example for Beginners
Two Machine Learning Fields
There are two sides to machine learning:
- Practical Machine Learning:This is about querying databases, cleaning data, writing scripts to transform data and gluing algorithm and libraries together and writing custom code to squeeze reliable answers from data to satisfy difficult and ill defined questions. It’s the mess of reality.
- Theoretical Machine Learning: This is about math and abstraction and idealized scenarios and limits and beauty and informing what is possible. It is a whole lot neater and cleaner and removed from the mess of reality.
Data Science Resources: Data Science Recipes and Applied Machine Learning Recipes
Introduction to Applied Machine Learning & Data Science for Beginners, Business Analysts, Students, Researchers and Freelancers with Python & R Codes @ Western Australian Center for Applied Machine Learning & Data Science (WACAMLDS) !!!
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