Don't put data science notebooks into production

We've come across many clients who are interested in taking the computational notebooks developed by their data scientists, and putting them directly into the codebase of production applications. My colleague David Johnston points out that while data science ideas do need to move out of notebooks and into production, trying to deploy that notebooks as a code artifact breaks a multitude of good software practices. Predictably, that results in a number of observed pain points. This behavior is a symptom of a deeper problem: a lack of collaboration between data scientists and software developers. more… https://martinfowler.com/articles/productize-data-sci-notebooks.html

Établi 4y | 18 nov. 2020 à 16:21:50


Connectez-vous pour ajouter un commentaire

Autres messages de ce groupe

How is GenAI different from other code generators?

How is code generation with GenAI different from more "traditional" code generators? The newest memo in Birgitta Böckeler's explorations of GenAI talks abou

18 oct. 2023 à 20:10:05 | Martin Fowler
How is GenAI different from other code generators?

How is code generation with GenAI different from more "traditional" code generators? The newest memo in Birgitta Böckeler's explorations of GenAI talks abou

19 sept. 2023 à 10:10:06 | Martin Fowler
TDD with GitHub Copilot

At Thoughtworks, we are strong practitioners of Test Driven Development (TDD). Naturally this leads to the question of how generative AI can

17 août 2023 à 20:30:07 | Martin Fowler