Master MLOps: Deploy ML Models on Kubernetes with KServe, MLServer & MLFlow!
Автор: MLWorks
Загружено: 2024-10-19
Просмотров: 4102
Описание:
Welcome to our comprehensive tutorial on deploying machine learning models in a Kubernetes environment!
In this video, we'll guide you through the entire MLOps process, focusing on powerful tools like KServe, MLServer, and MLFlow.
🚀 What You'll Learn:
Introduction to MLOps and its importance (Watch Previous Videos)
Setting up your Kubernetes cluster for ML deployment (Watch Previous Videos)
Step-by-step deployment of ML models using KServe and MLServer
Managing model versions and experiments with MLFlow
Best practices for scaling and monitoring your ML applications
Whether you’re a data scientist looking to streamline your model deployment or a DevOps engineer wanting to integrate ML into your workflows, this video is packed with valuable insights and practical demonstrations.
👉 Don’t forget to subscribe for more MLOps tutorials and hit the bell icon for updates!
📚 Resources:
KServe Documentation: [https://kserve.github.io/website/late...]
MLServer Documentation: [https://github.com/SeldonIO/MLServer]
MLFlow Documentation: [https://mlflow.org/docs/latest/deploy...]
🔗 Join our community! Follow us on Linkedin@mayur-mle, X@pythonynm and share your thoughts in the comments below!
#MLOps #Kubernetes #KServe #MLServer #MLFlow #MachineLearning #DataScience #TechTutorial
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