Software Alternatives, Accelerators & Startups

Label Studio VS Supervisely

Compare Label Studio VS Supervisely and see what are their differences

Label Studio logo Label Studio

Open Source Data Labeling Platform for AI Model Tuning

Supervisely logo Supervisely

Supervisely helps people with and without machine learning expertise to create state-of-the-art...
  • Label Studio Landing page
    Landing page //
    2023-10-15
  • Supervisely Landing page
    Landing page //
    2023-08-06

Label Studio features and specs

  • Open Source
    Label Studio is open source, allowing users to modify, customize, and improve the tool according to their needs. This fosters community collaboration and transparency.
  • Versatile Annotation Support
    Supports a wide range of annotation types including text, image, audio, video, and time-series data, making it adaptable for different types of machine learning projects.
  • Flexible Integration
    Offers API and SDKs for easy integration with existing machine learning pipelines, making it suitable for a variety of workflows.
  • User-Friendly Interface
    The interface is designed to be intuitive, which helps reduce the learning curve for new users who want to start annotating data quickly.
  • Active Community and Support
    Has a vibrant community and good documentation, providing easily accessible support and resources for new users and developers.

Possible disadvantages of Label Studio

  • Performance Issues
    Some users have reported performance lags, especially when dealing with larger datasets, which can affect efficiency.
  • Limited Scalability
    May face challenges in handling extremely large projects or enterprise-level datasets compared to some commercial solutions.
  • Setup Complexity
    Initial setup might be complex and require technical knowledge, which could be a barrier for non-technical users.
  • Feature Limitations
    While it supports various data types, it may lack some advanced features and customization options found in proprietary tools.
  • Resource Intensive
    Can be resource-intensive, requiring robust hardware to run smoothly, potentially increasing costs for larger implementations.

Supervisely features and specs

  • Comprehensive Toolset
    Supervisely offers a wide range of tools for image annotation, data management, and deep learning model training, providing a one-stop solution for computer vision projects.
  • Collaborative Platform
    It supports team collaboration with features for sharing projects, annotating data, and reviewing work, making it easier for teams to work together.
  • High Customizability
    Supervisely allows users to create custom plugins and automation scripts, offering flexibility to tailor the platform according to specific project needs.
  • Extensive Dataset Support
    The platform supports a wide variety of data formats and types, including images, videos, and 3D data, making it versatile for different applications.
  • Integrated Machine Learning
    Supervisely integrates machine learning capabilities, enabling users to train models directly on the platform and test them using their own annotated data.

Possible disadvantages of Supervisely

  • Cost
    Supervisely can be expensive, particularly for small teams or individual users, as it primarily targets enterprise customers.
  • Complexity
    Due to the breadth of features and tools, there may be a steep learning curve for new users, making it more challenging to get started quickly without adequate training.
  • Performance Issues
    Some users may experience performance issues, particularly when handling very large datasets or running multiple simultaneous tasks.
  • Cloud Dependency
    While a cloud-based platform offers accessibility advantages, it also means that users are dependent on internet connectivity and may face latency or downtime problems.
  • Limited Offline Features
    Supervisely's offline functionality is limited, which can be a drawback for users who need to work in environments with restricted or unreliable internet access.

Analysis of Supervisely

Overall verdict

  • Overall, Supervisely is a good platform for computer vision projects due to its versatility and ease of use. It offers a complete ecosystem that caters to various stages of the machine learning pipeline, making it an efficient choice for both beginners and experienced practitioners.

Why this product is good

  • Supervisely is considered a robust platform for its comprehensive suite of tools designed for computer vision tasks. It provides capabilities for data labeling, neural network training, and deployment. Its user-friendly interface, collaborative features, and support for a wide range of formats and integrations make it appealing to both individual developers and enterprise teams.

Recommended for

  • Data scientists looking for a comprehensive tool for computer vision.
  • Companies needing a collaborative environment for AI projects.
  • Researchers who require a platform with extensive format support and integrations.
  • Developers wanting an easy-to-use interface for data annotation and model training.

Label Studio videos

Installing Label Studio Plus Overview of Basic Features

More videos:

  • Review - White Label Studio Review & Coupon
  • Review - Label Studio: Natural Language Annotation & Cloud Storage Integration

Supervisely videos

🛠️Basic annotation overview - Supervisely

More videos:

  • Review - Cars annotation in Supervisely: Polygons vs. AI powered tool
  • Tutorial - Yolo v3 Tutorial #2 - Object Detection Training Part 1 - Create a Supervisely Cluster

Category Popularity

0-100% (relative to Label Studio and Supervisely)
AI
27 27%
73% 73
Image Annotation
0 0%
100% 100
Data Labeling
14 14%
86% 86
Developer Tools
100 100%
0% 0

User comments

Share your experience with using Label Studio and Supervisely. For example, how are they different and which one is better?
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Social recommendations and mentions

Based on our record, Supervisely should be more popular than Label Studio. It has been mentiond 6 times since March 2021. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.

Label Studio mentions (1)

  • Annotation is dead
    If instead you have a cohort on hand — -i.e., you do not want to send your data to a third party for any reason, or perhaps you have energetic undergrads — -then you could alternatively consider local, open-source annotation such as CVAT and Label Studio. Finally, nowadays, you might instead work with Large Multimodal Models to have them annotate your data; more on this awkward angle later. - Source: dev.to / about 1 year ago

Supervisely mentions (6)

  • Way to label yolov7 images fast
    Another annotation tool that integrates prediction and training within the application is supervisely supervisely.com., unfortunately it's pretty expensive unless you are satisfied with the community version. I saw that they have an integration for owl-vit, which might be helpful for annotation of animals. https://ecosystem.supervisely.com/apps/serve-owl-vit. Source: about 2 years ago
  • 65 Blog Posts to Learn Data Science
    Hello world. This tutorial is a gentle introduction to building modern text recognition system using deep learning in 15 minutes. It will teach you the main ideas of how to use Keras and Supervisely for this problem. This guide is for anyone who is interested in using Deep Learning for text recognition in images but has no idea where to start. - Source: dev.to / over 2 years ago
  • Bounding Box for Text Annotation
    If they were videos, I would have suggested trying supervise.ly as it has a very good tracking functionality. Source: almost 3 years ago
  • CVAT alternatives for video frame annotation
    Hi, I'm exactly in the same boat like you are. I looked around for a while and the better solutions I found was supervise.ly and CVAT for video annotation. The pricetag on supervisely is pretty high, so I analyzed CVAT for a couple days and was positively surprised. Source: almost 3 years ago
  • Accessing 2022 Machine Learning Imagery from WPI's Photo Album
    Under the WPI Photo Ambum section of the page for FRC field photos (https://www.firstinspires.org/robotics/frc/playing-field#WPIPhotos), they have a section of machine learning imagery. However, this link goes to supervise.ly, the website they use for machine learning. I created an account to attempt to download the images, however, whenever I try to 'clone' the project, it stalls at 0% and gives me an error... Source: almost 3 years ago
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What are some alternatives?

When comparing Label Studio and Supervisely, you can also consider the following products

Google.dev - Google Developer Profiles

Labelbox - Build computer vision products for the real world

KopiKat - Generative image data augmentation tool preserving annotations. Enhance the precision of AI models without modifying the network structure.

CrowdFlower - Enterprise crowdsourcing for micro-tasks

GAUSS AI - Fast, reliable, and affordable data labeling

Universal Data Tool - Machine learning, data labeling tool, computer vision, annotate-images, classification, dataset