Ansible script to provision a machine on the Google Cloud Platform with a Jupyter Notebook
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Updated
Mar 27, 2017 - Shell
Google Cloud Platform, offered by Google, is a suite of cloud computing services. It provides Infrastructure as a Service, Platform as a Service, and serverless computing environments. Alongside a set of management tools, it provides a series of modular cloud services including computing, data storage, data analytics and machine learning.
Ansible script to provision a machine on the Google Cloud Platform with a Jupyter Notebook
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Released April 7, 2008