Understanding Creating Reproducible Data Science Workflows Using Docker Containers
Welcome to our comprehensive guide on Creating Reproducible Data Science Workflows Using Docker Containers. Aly Sivji http://pyohio.org/schedule/presentation/303/ Jupyter notebooks
Key Takeaways about Creating Reproducible Data Science Workflows Using Docker Containers
- Containerization technologies such as
- Want to eliminate the hassle of inconsistent programming environments
- Being able to explain your own code a few months after you wrote it is hard. Imagine having to explain the decisions of some AI ...
- Resources: https://drive.google.com/drive/folders/1iOPQPOGvrvDD4SZYNTTpeALUWzMJVObV?usp=sharing Additional ...
- Speaker: We're holding a DataLearn on how to
Detailed Analysis of Creating Reproducible Data Science Workflows Using Docker Containers
Container PyData 2018 How fragile is your Richard Ackon https://2018.za.pycon.org/talks/48-
Using Docker containers
In summary, understanding Creating Reproducible Data Science Workflows Using Docker Containers gives us a better perspective.