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v3.6.1
v3.6.1
  • Deep Lake Docs
  • Vector Store Quickstart
  • Deep Learning Quickstart
  • Storage & Credentials
    • Storage Options
    • User Authentication
    • Storing Deep Lake Data in Your Own Cloud
      • Microsoft Azure
        • Provisioning Federated Credentials
      • Amazon Web Services
        • Provisioning Role-Based Access
        • Enabling CORS
  • List of ML Datasets
  • API Reference
  • 🏢Enterprise Features
    • Compute Engine
      • Tensor Query Language (TQL)
        • TQL Syntax
        • Sampling Datasets
      • Performant Dataloader
    • Tensor Database
      • REST API
      • Migrating Datasets to the Tensor Database
  • 📚EXAMPLE CODE
  • Getting Started
    • Vector Store
      • Step 1: Hello World
      • Step 2: Creating Deep Lake Vector Stores
      • Step 3: Performing Search in the Vector Store
      • Step 4: Customizing Vector Stores
    • Deep Learning
      • Step 1: Hello World
      • Step 2: Creating Deep Lake Datasets
      • Step 3: Understanding Compression
      • Step 4: Accessing and Updating Data
      • Step 5: Visualizing Datasets
      • Step 6: Using Activeloop Storage
      • Step 7: Connecting Deep Lake Datasets to ML Frameworks
      • Step 8: Parallel Computing
      • Step 9: Dataset Version Control
      • Step 10: Dataset Filtering
  • Tutorials (w Colab)
    • Vector Store Tutorials
      • Vector Search Options
        • Deep Lake Vector Store API
        • REST API
        • LangChain API
      • Deep Lake Vector Store in LangChain
    • Creating Datasets
      • Creating Complex Datasets
      • Creating Object Detection Datasets
      • Creating Time-Series Datasets
      • Creating Datasets with Sequences
      • Creating Video Datasets
    • Training Models
      • Training an Image Classification Model in PyTorch
      • Training Models Using MMDetection
      • Training Models Using PyTorch Lightning
      • Training on AWS SageMaker
      • Training an Object Detection and Segmentation Model in PyTorch
    • Updating Datasets
    • Data Processing Using Parallel Computing
  • Playbooks
    • Querying, Training and Editing Datasets with Data Lineage
    • Evaluating Model Performance
    • Training Reproducibility Using Deep Lake and Weights & Biases
    • Working with Videos
  • API Summary
  • 🔬Technical Details
    • Best Practices
      • Creating Datasets at Scale
      • Training Models at Scale
      • Storage Synchronization and "with" Context
      • Restoring Corrupted Datasets
    • Data Layout
    • Version Control and Querying
    • Dataset Visualization
    • Tensor Relationships
    • Visualizer Integration
    • Shuffling in dataloaders
    • How to Contribute
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On this page
  • How to Register and Authenticate in Deep Lake
  • Registration
  • Authentication in Programmatic Interfaces

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  1. Storage & Credentials

User Authentication

Registration and authentication in Deep Lake.

How to Register and Authenticate in Deep Lake

In order to use Deep Lake features that require authentication (Activeloop storage, connecting your cloud dataset to the Deep Lake UI, etc.) you should register and login with Deep Lake.

Registration

You can register in the Deep Lake App, or in the CLI using:

activeloop register -e <email> -u <username> -p <password>

Authentication in Programmatic Interfaces

After registering, you can create an API token in the Deep Lake UI (top-right corner, user settings) and authenticate in programatic interfaces using 3 options:

Environmental Variable

Set the environmental variable ACTIVELOOP_TOKEN to your API token. In Python, this can be done using:

os.environ['ACTIVELOOP_TOKEN'] = <your_token>

CLI Login

Login in the CLI using two options:

  • activeloop login -u <username> -p <password>

  • activeloop login -t <your_token>

Credentials created using the CLI login !activeloop login expire after 1000 hrs. Credentials created using API tokens in the Deep Lake App expire after the time specified for the individual token. Therefore, long-term workflows should be run using API tokens in order to avoid expiration of credentials mid-workflow.

Pass the Token to Individual Methods

You can pass your API token to individual methods that require authentication such as:

ds = deeplake.load('hub://org_name/dataset_name', token = <your_token>)

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Last updated 2 years ago

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