Software Alternatives & Reviews

V7 Darwin

Pixel perfect image labeling for industrial, medical, and large scale dataset creation. Create ground truth 10 times faster.

V7 Darwin Alternatives

The best V7 Darwin alternatives based on verified products, community votes, reviews and other factors.
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  1. Build computer vision products for the real world

    freemium

  2. Human-powered Data Processing for AI and Automation

  3. Seamless project management and collaboration for your team.

    $12.0 / Monthly (Per user)

  4. The World's AI

    freemium

  5. Playment is a fully-managed solution offering training data for AI, transcription, data collection and enrichment services at scale.

  6. The fastest annotation platform and services for training AI.

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  8. Innotescus: verb, 1. We make known. Enabling better data, faster annotation, and deeper insights through innovative computer vision solutions.

    freemium

  9. BasicAI combines the best of human and machine intelligence to provide high-quality annotated training data that powers the most innovative machine learning.

    freemium

  10. The platform for computer vision engineers and labeling teams to iterate between data labeling, model training and failure case discovery.

    freemium

  11. Supervisely helps people with and without machine learning expertise to create state-of-the-art...

  12. Powerful and efficient Computer Vision Annotation Tool (CVAT) - opencv/cvat

  13. Build highly accurate training datasets using machine learning and reduce data labeling costs by up to 70%.

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This list was published on | Author: | Publisher: SaaSHub
Categories: Data Labeling, Productivity, Machine Learning