Jump to content

Kubeflow

From Wikipedia, the free encyclopedia

This is an old revision of this page, as edited by MichaelHausenblas (talk | contribs) at 17:23, 29 December 2019 (updates status). The present address (URL) is a permanent link to this revision, which may differ significantly from the current revision.

Kubeflow
Developer(s)Google
Initial releaseMarch 28, 2018; 6 years ago (2018-03-28)
Stable release
0.7[1] / May 7, 2019; 5 years ago (2019-05-07)
Repositorygithub.com/kubeflow/kubeflow
PlatformLinux, Windows, MacOS
LicenseApache License 2.0
Websitewww.kubeflow.org

Kubeflow is a free and open-source machine learning platform co-founded by David Aronchick, Jeremy Lewi and Vishnu Kannan, built by developers at Google, Cisco, RedHat, CoreOS and CaiCloud, and first released at Kubecon North America in 2017[2]. Kubeflow is designed to enable using machine learning pipelines to orchestrate complicated workflows running on Kubernetes (e.g. doing data processing then using TensorFlow or PyTorch to train a model, and deploying to TensorFlow Serving). Kubeflow was based on Google's internal method to deploy TensorFlow models to Kubernetes called TensorFlow Extended.[3]

References

  1. ^ GitHub - kubeflow/kubeflow: Machine Learning Toolkit for Kubernetes., Kubeflow, 2019-06-18, retrieved 2019-06-18
  2. ^ Hot Dogs or Not" - At Scale with Kubernetes [I] - Vish Kannan & David Aronchick, Google, retrieved 2019-12-20
  3. ^ "Kubeflow". Kubeflow. Retrieved 2019-06-18.