Skip to content

290384/myIris

Repository files navigation

Serve a Machine Learning Model as a Webservice

Serving a simple machine learning model as a webservice using flask and docker.

Getting Started

  • 1.) Use Model_training.ipynb to train a model on the iris dataset and generate a pickled model file (iris_trained_model.pkl)
  • 3.) Use app.py to wrap the inference logic in a flask server to serve the model as a REST webservice:
  • 4.) Execute the command python app.py to run the flask app.
  • 5.) Go to the browser and hit the url 0.0.0.0:5000 to get a website displayed to enter our observations.
  • 6.) To deploy the machine learning model on Heroku, create first a heroku account.
  • 7.) Login to Heroku
  • 8.) Create a heroku app and connect to the GIT repository
  • 9.) Once successfuly build and deployed start the Heroku app and use it for creating predictions

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published