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Datasaur

Datasaur is the leading NLP data-labeling platform, driving 10X quicker project times and improving model performance by 2X.

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Listed November 21, 2022
Datasaur

Datasaur is an advanced Natural Language Processing (NLP) data-labeling platform designed to streamline the data labeling process, improving project times by 10X and enhancing model performance by 2X. It offers a range of robust features for complex NLP requirements and is suitable for various sectors including Legal, Healthcare, Financial, Media, and e-Commerce.

Key Features

  • Customizable Annotation: Datasaur allows users to customize their labeling setup, enabling the creation of specific data needed to elevate models.
  • Quality Control: Datasaur offers high-level and granular reviews of labels and labelers to ensure data quality.
  • Automation: Datasaur can automate up to 80% of the labeling process, reducing repeatable cleaning and labeling tasks.
  • Customizable Workflows: Users can build scalable data labeling flows that are simple and effective.
  • Advanced Workforce Management: Datasaur provides dashboards for a high-level project view and individual labeler progress tracking.
  • Robust NLP Labeling: Datasaur can handle complex labeling needs, from mixed label sets to entity linking to multiple layer labeling.
  • Comprehensive Audio Labeling: Datasaur can transcribe audio, conversations, and calls while labeling, offering features like timestamps, editing transcriptions, multi-language support, and more.

Security and Integrations

Datasaur offers military-grade security with end-to-end encryption, SOC2/HIPAA certification, and options for VPC and on-premise deployment. The platform also integrates seamlessly with object storage (AWS, GCP, etc.), user management platforms (SAML, Google SSO, etc.), and offers automatic project creation and export.

Use Cases

Datasaur has been successfully used by various organizations, including LegalTech and Financial Institutions. It has helped these organizations reduce their labeling tasks by up to 80%, allowing them to optimize their workflow and focus on other priority areas.