资源算法kubeflow-for-poets

kubeflow-for-poets

2020-04-10 | |  56 |   0 |   0

Kubeflow for Poets: A Guide to Containerization of the Machine Learning Production Pipeline

图片.png

This repository provides a systematic approach to productionalizing machine learning pipelines with Kubeflow on Kubernetes. Building machine learning models is just one piece of a more extensive system of tasks and processes that come together to deliver a Machine Learning product. Kubeflow makes it possible to leverage the microservices paradigm of containerization to separate modular components of an application orchestrated on Kubernetes. While Kubernetes is platform agnostic, this tutorial will focus on deploying a Machine Learning product on Google Cloud Platform leveraging Google Cloud BigQuery, Google Cloud Dataflow and Google Cloud Machine Learning Engine orchestrated on Google Kubernetes Engine.

Contents:

The content is arranged as follows:

Links:

Contribution:

Contributions and corrections are welcomed as pull requests.


上一篇: bundle-kubeflow

下一篇:blog_kubeflow_materials

用户评价
全部评价

热门资源

  • Keras-ResNeXt

    Keras ResNeXt Implementation of ResNeXt models...

  • seetafaceJNI

    项目介绍 基于中科院seetaface2进行封装的JAVA...

  • spark-corenlp

    This package wraps Stanford CoreNLP annotators ...

  • capsnet-with-caps...

    CapsNet with capsule-wise convolution Project ...

  • inferno-boilerplate

    This is a very basic boilerplate example for pe...