NOTE: We are archiving this repository, as it's not been maintained and updated recently. We will keep it read-only for anyone interested in forking and evolving it independently
This workshop contains the sample application and machine learning code used for the Continuous Delivery for Machine Learning (CD4ML) and Continuous Intelligence workshop. This material has been developed and is continuously evolved by ThoughtWorks and has been presented in conferences such as: Yottabyte 2018, World AI Summit 2018, Strata London 2019, and others.
In order to run this workshop, you will need:
- A valid Github account
- A working Docker setup (if running on Windows, make sure to use Linux containers)
The workshop is divided into several steps, which build on top of each other.
Instructions for each exercise can be found under the
instructions
folder.
WARNING: the exercises build on top of each other, so you will not be able to skip steps ahead without executing them.
WARNING 2: the workshop requires infrastructure that we only provision when needed, therefore you won't be able to execute the exercises on your own that require that shared infrastructure. We are working on a setup that allows running the workshop locally, but that is work in progress.
We built a simplified solution to a Kaggle problem posted by Corporación Favorita, a large Ecuadorian-based grocery retailer interested in improving their Sales Forecasting using data. For the purposes of this workshop, we have combined and simplified their data sets, as our goal is not to find the best predictions, but to demonstrate how to implement CD4ML.
The material, ideas, and content developed for this workshop were contributions from (in alphabetical order):