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1
Intro
2
Machine Learning is Hard!
3
Storage and Analytics for Machine Learning
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Amazon EKS: run Kubernetes in cloud
5
Getting started with Amazon EKS
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Set up K8s for ML: Option 1
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Scaling the cluster
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Kubeflow Requirements
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Kubeflow on Desktop
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Kubeflow on Cloud
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Jupyter Notebook
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Kubeflow Fairing
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Hyperparameter Tuning using Katib
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Katib System Architecture
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Pluggable Interface
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Distributed Training using Horovod
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Kubeflow Pipelines
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Creating Kubeflow Pipeline Components
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Consumer Loan Acceptance Scoring
20
Machine Learning pipeline for kubernetes on AWS
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore machine learning workflows on Kubernetes using Kubeflow in this 51-minute Devoxx conference talk. Learn why Kubernetes is well-suited for single- and multi-node distributed training, model training, and production inference deployment. Discover how to leverage KubeFlow and TensorFlow for machine learning needs, set up ML pipelines, and utilize visualization tools like TensorBoard for monitoring. Gain insights into distributed training with Horovod and understand Kubeflow's components, including Jupyter notebooks, TensorFlow training and inference, and hyperparameter tuning with Katib. Dive into topics such as Amazon EKS for running Kubernetes in the cloud, scaling clusters, Kubeflow requirements and deployment options, Kubeflow Fairing, and creating Kubeflow Pipeline components. Explore practical applications like consumer loan acceptance scoring and machine learning pipelines for Kubernetes on AWS.

Machine Learning Using Kubeflow and Kubernetes

Devoxx
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