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Microsoft Azure Notebooks UMass Amherst

This repository contains end-to-end machine learning notebooks made by students in the 696DS course that showcase different functionalities with Microsoft Azure Machine Learning Services.

  • Task: Classifying commericial blocks on telvision News Channels
  • Methods: Comparing standard Scikit Learn models with Azure Automated Machine Learning
  • Azure Functionalities: Running an Experiment, Automated Machine Learning, and Logging Metrics
  • Results: Increased testing accuracy by 3.25%!
  • Task: Image Classification on the CIFAR 10 dataset
  • Methods: Fully connected neural network model
  • Azure Functionalities: Hyperdrive run, Metric logging
  • Results: Increased model classification accuracy by ~16%!
  • Task: Classifying customers for customer retention problem.
  • Methods: Model with highest accuracy- RandomForest
  • Azure Functionalities: Model explanation
  • Results: Understood the features responsible for someone's churn.
  • Task: Translating sentences from German to English
  • Methods: Using pre-trained BERT representations in Transformer Model
  • Azure Functionalities: Register DataStore, AML Compute, Submitting and Cancelling Experiment Runs
  • Results: 26.3
  • Note: Implementation closely follows this tutorial
  • Task: Predicting popularity of online news articles based on number of shares
  • Methods: Classification
  • Azure Functionalities: Auto Machine Learning (AML), AutoMLExplainer, Register Model
  • Results: Iterated over 10 models using AML module. Achieved 67% accuracy over 5 different classes of labels (much higher than random!).