
#99 Post-Deployment Data Science
DataFramed
00:00
Navigating Post-Deployment Challenges in Data Science
This chapter explores the complexities of monitoring machine learning models after deployment, focusing on silent failures, data drift, and concept drift. It highlights the critical need for advanced skills in managing deployed models and discusses the ethical implications of predictive models in real-world applications. Through case studies and the introduction of NanyML, the chapter emphasizes the importance of effective monitoring to avoid significant financial repercussions.
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