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cours

Developing Machine Learning Models for Production

Intermédiaire
Actualisé 01/2025
Shift to an MLOps mindset, enabling you to train, document, maintain, and scale your machine learning models to their fullest potential.
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TheoryMachine Learning4 heures13 vidéos44 exercices2,850 XP4,989Déclaration de réalisation

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Essayer DataCamp for Business

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Description du cours

Much of today’s machine learning-related content focuses on model training and parameter tuning, but 90% of experimental models never make it to production, mainly because they were not built to last. In this course, you will see how shifting your mindset from a machine learning engineering mindset to an MLOps (Machine Learning Operations) mindset will allow you to train, document, maintain, and scale your models to their fullest potential.

Experiment and Document with Ease

Experimenting with ML models is often enjoyable but can be time-consuming. Here, you will learn how to design reproducible experiments to expedite this process while writing documentation for yourself and your teammates, making future work on the pipeline a breeze.

Build MLOps Models For Production

You will learn best practices for packaging and serializing both models and environments for production to ensure that models will last as long as possible.

Scale Up and Automate your ML Pipelines

By considering model and data complexity and continuous automation, you can ensure that your models will be scaled for production use and can be monitored and deployed in the blink of an eye.

Once you complete this course, you will be able to design and develop machine learning models that are ready for production and continuously improve them over time.

Conditions préalables

MLOps ConceptsSupervised Learning with scikit-learn
1

Moving from Research to Production

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2

Ensuring Reproducibility

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3

ML in Production Environments

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4

Testing ML Pipelines

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Developing Machine Learning Models for Production
Cours
terminé

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En continuant, vous acceptez nos Conditions d'utilisation, notre Politique de confidentialité et le fait que vos données sont stockées aux États-Unis.