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Opiniones y comentarios de aprendices correspondientes a Deploying Machine Learning Models in Production por parte de

213 calificaciones

Acerca del Curso

In the fourth course of Machine Learning Engineering for Production Specialization, you will learn how to deploy ML models and make them available to end-users. You will build scalable and reliable hardware infrastructure to deliver inference requests both in real-time and batch depending on the use case. You will also implement workflow automation and progressive delivery that complies with current MLOps practices to keep your production system running. Additionally, you will continuously monitor your system to detect model decay, remediate performance drops, and avoid system failures so it can continuously operate at all times. Understanding machine learning and deep learning concepts is essential, but if you’re looking to build an effective AI career, you need production engineering capabilities as well. Machine learning engineering for production combines the foundational concepts of machine learning with the functional expertise of modern software development and engineering roles to help you develop production-ready skills. Week 1: Model Serving Introduction Week 2: Model Serving Patterns and Infrastructures Week 3: Model Management and Delivery Week 4: Model Monitoring and Logging...

Principales reseñas


21 de abr. de 2022

This course is essential for data scientist if they want to embark on the journey of data scientist in industry. I learned a lot of useful techniques. Thank you team!


10 de sep. de 2021

The most practical course for junior MLOPs engineers looking for the best productionization methodologie, and the tools that implement them.

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por EMO S L

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por Saurabh A

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por Prasanna M R

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por Afif A

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por Sagar D

27 de jun. de 2022