Taught by: Snehan Kekre, Machine Learning Instructor, Machine Learning
In this project, I learned to use Azure Machine Learning Studio to build a predictive model without writing a single line of code. I predict flight delays using weather data provided by the US Bureau of Transportation Statistics and the National Oceanic and Atmospheric Association (NOAA).
- Build a predictive model using Azure ML Studio.
 - Demonstrate a working knowledge of setting up experiments on Azure ML Studio.
 - Operationalise machine learning work flows with Azure's drag-and-drop modules.
 
- Importing the Data Sets
 - Scrubbing Missing Values
 - Eliminating Target Leaks
 - Conversion to Categorical Features
 - Preparing Features to be Joined with Weather Data
 - Preprocessing the Weather Dataset
 - Joining Both Datasets
 - Training and Evaluating the Model
 
Accuracy: 76.9%
- Figure: ROC Curve
 
- Summary of the model
 
- Applied Two-class logistic Regression to predict the model
 - Able to train and evaluate a predictive model on Azure Machine Learning Studio, all without writing a single line of code!
 - Able to predict flight delays using weather data provided by the US Bureau of Transportation Statistics and the National Oceanic and Atmospheric Association (NOAA).
 

