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v3.4.0
v3.4.0
  • Deep Lake Docs
  • List of ML Datasets
  • Quickstart
  • Dataset Visualization
  • Storage & Credentials
    • Storage Options
    • User Authentication
    • Managed Credentials
      • Enabling CORS
      • Provisioning Role-Based Access
  • API Reference
  • Enterprise Features
    • Querying Datasets
      • Sampling Datasets
    • Performant Dataloader
  • EXAMPLE CODE
  • Getting Started
    • 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)
    • 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
    • Tensor Relationships
    • Visualizer Integration
    • Shuffling in dataloaders
    • How to Contribute
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  • How to restore a corrupted Deep Lake dataset
  • How to Use Version Control to Retrieve Data

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  1. Technical Details
  2. Best Practices

Restoring Corrupted Datasets

Restoring Deep Lake datasets that may be corrupted.

How to restore a corrupted Deep Lake dataset

Deliberate of accidental interruption of code may make a Deep Lake dataset or some of its tensors unreadable. At scale, code interruption is more likely to occur, and Deep Lake's version control is the primary tool for recovery.

How to Use Version Control to Retrieve Data

When manipulating Deep Lake datasets, it is recommended to commit periodically in order to create snapshots of the dataset that can be accessed later. This can be done automatically when creating datasets with deeplake.compute, or manually using our version control API.

If a dataset becomes corrupted, when loading the dataset, you may see an error like:

DatasetCorruptError: Exception occured (see Traceback). The dataset maybe corrupted. Try using `reset=True` to reset HEAD changes and load the previous commit. This will delete all uncommitted changes on the branch you are trying to load.

To reset the uncommitted corrupted changes, load the dataset with the reset = True flag:

ds = deeplake.load(<dataset_path>, reset = True)

Note: this operation deletes all uncommitted changes.

PreviousStorage Synchronization and "with" ContextNextData Layout

Last updated 2 years ago

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