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A standalone desktop app for automating the machine learning workflow - no experience required

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autoMLfast_logo_small

Developed by Peter Skelsey, James Hutton Institute, Dundee

Basic overview

A standalone desktop app that automates the machine learning workflow to generate the best predictive model for your data.

  • Upload your own data or use our example data (ionosphere.csv) to get started.
  • autoMLfast automatically cleans and preprocesses your data so it is ready for learning.
  • Choose how many models you want to produce.
  • autoMLfast tries an appropriate subset (depending on your data) of the following models for regression tasks:
    • Gaussian process regression models, Kernel regression models, Linear regression models, Neural network regression models, Support vector machine regression models, Binary decision regression trees, and various Ensemble regression models.
  • autoMLfast tries an appropriate subset of the following models for classification tasks:
    • Discriminant analysis classifiers, Kernel classification models, k-nearest neighbor models, Linear classification models, Naive Bayes classifiers, Neural network classifiers, Support vector machine classifiers, Binary decision classification trees, and various Ensemble classification models.
  • These are simultaneously trained and tuned using a k-fold cross-validation procedure with either random search or ASHA optimization.
  • The most successful model is automatically selected.
  • The process is repeated until you have the number of models you requested.
  • Use the overall best model to make predictions on new data.
  • Save your results.
  • autoMLfast runs computations in parallel on your computer's processors and is fast and user-friendly.

Rationale

The app is intended for users with no or limited modelling or machine learning experience, and provides a simple and fast front-end to some state-of-the-art machine learning algorithms and techniques.

Installation and loading

The app is freely available to download and install on any dekstop PC. To download the app click the green "Code" button and select 'download ZIP' from the dropdown menu. The executable file 'autoMLfast.exe' is a web-based installer (you will need an internet connection) that will install the app and download 'MATLAB Runtime' to your computer. MATLAB Runtime is a completely free execution engine that enables you to run MATLAB applications on computers that do not have a MATLAB license. You will require around 800 MB of space to install the app together with MATLAB Runtime. Once installed you will also be able to access thousands of other MATLAB applications free-of-charge. Note that when the app is loading the splash screen may disappear for a brief interval before the app opens - there is no need to try and load it again, just give it a few seconds. The GUI is 'responsive' and can be scaled to any size, however this will change the layout of the controls.

Documentation

A guide on how to use the app is provided in the Documentation. This also contains some methodological detail for the purposes of reporting results.

New features

Additional features will be added progessively to the app, so to check for a new release click on the 'release' button near the top of the page.

License

The MIT License (MIT) 2022 - Peter Skelsey. For more details, please have a look at the LICENSE.

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A standalone desktop app for automating the machine learning workflow - no experience required

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