
Label Studio
Label Studio: open-source tool for labeling data in various models.
data labelingcomputer visionnatural language processing
Introduction
Label Studio is an open-source data labeling tool designed to prepare training data for computer vision, natural language processing, speech, voice, and video models. It offers flexibility for labeling all types of data.
Key Features
Flexible data labeling for all data types
Support for computer vision, natural language processing, speech, voice, and video models
Customizable tags and labeling templates
Integration with ML/AI pipelines via webhooks, Python SDK, and API
ML-assisted labeling with backend integration
Connectivity to cloud object storage (S3 and GCP)
Advanced data management with the Data Manager
Support for multiple projects and users
Trusted by a large community of Data Scientists
Frequently Asked Questions
What is Label Studio?
How to use Label Studio?
Can Label Studio handle different types of data?
Can I integrate Label Studio with my ML/AI pipeline?
Does Label Studio support ML-assisted labeling?
Can I connect Label Studio to cloud object storage?
Is Label Studio suitable for multi-project and multi-user environments?
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Use Cases
- Preparing training data for computer vision models
- Preparing training data for natural language processing models
- Preparing training data for speech and voice models
- Preparing training data for video models
- Classification of images, audio, text, and time series data
- Object detection and tracking in images and videos
- Semantic segmentation of images
- Speaker diarization and emotion recognition in audio
- Audio transcription
- Document classification and named entity extraction
- Question answering and sentiment analysis
- Time series analysis and event recognition
- Dialogue processing and optical character recognition
- Multi-domain applications requiring various types of data labeling
How to Use
To use Label Studio, you can follow these steps: 1. Install the Label Studio package through pip, brew, or clone the repository from GitHub. 2. Launch Label Studio using the installed package or Docker. 3. Import your data into Label Studio. 4. Choose the data type (images, audio, text, time series, multi-domain, or video) and select the specific labeling task (e.g., image classification, object detection, audio transcription). 5. Start labeling your data using customizable tags and templates. 6. Connect to your ML/AI pipeline and use webhooks, Python SDK, or API for authentication, project management, and model predictions. 7. Explore and manage your dataset in the Data Manager with advanced filters. 8. Support multiple projects, use cases, and users within the Label Studio platform.