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1.0.0
1.0.0
  • About Paperspace Gradient
  • Get Started
    • Quick Start
    • Core Concepts
    • Install the Gradient CLI
    • Common Errors
  • Tutorials
    • Tutorials List
      • Getting Started with Notebooks
      • Train a Model with the Web UI
      • Train a Model with the CLI
      • Advanced: Distributed training sample project
      • Registering Models in Gradient
      • Using Gradient Deployments
      • Using Custom Containers
  • Notebooks
    • Overview
    • Using Notebooks
      • The Notebook interface
      • Notebook metrics
      • Share a Notebook
      • Fork a Notebook
      • Notebook Directories
      • Notebook Containers
        • Building a Custom Container
      • Notebook Workspace Include Files
      • Community (Public) Notebooks
    • ML Showcase
    • Run on Gradient (GitHub badge)
  • Projects
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    • Distributed Training
      • Distributed Machine Learning with Tensorflow
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        • Distributed Training using Horovod
        • Distributed Training Using ChainerMN
  • Jobs
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  • Models
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    • Managing Models
      • Example: Prepare a TensorFlow Model for Deployments
      • Model Path, Parameters, & Metadata
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    • Managing Deployments
      • Deployment Containers
        • Custom Deployment Containers
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      • A Deployed Model's API Endpoint
        • Gradient + TensorFlow Serving
      • Deployment Autoscaling
      • Optimize Models for Inference
  • Data
    • Types of Storage
      • Managing Data in Gradient
        • Managing Persistent Storage with VMs
    • Storage Providers
    • Versioned Datasets
    • Public Datasets Repository
  • TensorBoards
    • Overview
    • Using Tensorboards
      • TensorBoards getting started with Tensorflow
  • Metrics
    • Metrics Overview
    • View and Query Metrics
    • Push Metrics
  • Secrets
    • Overview
    • Using Secrets
  • Gradient SDK
    • Gradient SDK Overview
      • Projects Client
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    • End to end tutorial
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  • Instances
    • Instance Types
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  • Gradient Cluster
    • Overview
    • Setup
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        • Pre-installation steps
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        • Terraform
          • Pre-installation steps
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        • Let's Encrypt DNS Providers
        • Updating your cluster
    • Usage
  • Tags
    • Overview
    • Using Tags
  • Machines (Paperspace CORE)
    • Overview
    • Using Machines
      • Start a Machine
      • Stop a Machine
      • Restart a Machine
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      • Destroy a Machine
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      • Wait For a Machine
      • Check a Machine's utilization
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      • Creating a Team
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  • Release Notes
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On this page
  • What is a Notebook?
  • File Storage
  • Containers
  • Environment Variables
  1. Notebooks

Overview

PreviousUsing Custom ContainersNextUsing Notebooks

Last updated 3 years ago

This section of the documentation covers our previous generation of Gradient. For the current version go to .

What is a Notebook?

Gradient notebooks are an interactive environment (based on or ) for developing and running code. You can run Jupyter notebooks on a GPU, CPU, or even a TPU.

A Gradient **Notebook gives you access to a full Jupyter Notebook environment. Within the Notebook, you can store an unlimited number of documents and other files. You can think of a Gradient Notebook as your persistent, on-demand workspace in the cloud.

File Storage

Containers

Because everything is running in a Docker container behind the scenes, we support any kernel you would like. We have a handful of pre-built containers and you can easily add a custom container or build one from a base template, such as the Jupyter R stack.

Environment Variables

There are a number of environment variables loaded into a notebook's environment, which you can access and use. Probably most common is is PS_API_KEY , which will contain your most recently created API key (if you've created one). In combination with the Gradient SDK, this allows you to programmatically interact with Gradient.

NEW! Visit the new for a list of sample projects you can fork into your own account.

Any data stored in /storage will be preserved for you across restarts. Persistent storage is backed by a filesystem and is ideal for storing data like images, datasets, model checkpoints etc. Learn more about persistent storage .

View the list of pre-built containers .

ML Showcase
here
Gradient Next
Jupyter Notebook
Jupyter Lab
here