Building and Maintaining Internal Tools for DS/ML teams: Lessons Learned
Lessons learned on how to build and maintain inner-source tools, with a focus on data science and machine learning use-cases
Lessons learned on how to build and maintain inner-source tools, with a focus on data science and machine learning use-cases
In this post we list practices to substantially reduce the risk of failure in real-time machine learning projects.
A short guide explaining how to avoid and mitigate the impacts of train-serve skew in realtime ML models.
Here are some of the lessons we learned along the way.
In this post we’ll go over some of the lessons we learned over the last years retraining models in an automatic fashion at Nubank.
In this article we analyze lessons learned and best practices assembled from years of applying Machine Learning to real-life problems at Nubank.
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