Draft:Encord
Submission declined on 14 February 2024 by Johannes Maximilian (talk).
Where to get help
How to improve a draft
You can also browse Wikipedia:Featured articles and Wikipedia:Good articles to find examples of Wikipedia's best writing on topics similar to your proposed article. Improving your odds of a speedy review To improve your odds of a faster review, tag your draft with relevant WikiProject tags using the button below. This will let reviewers know a new draft has been submitted in their area of interest. For instance, if you wrote about a female astronomer, you would want to add the Biography, Astronomy, and Women scientists tags. Editor resources
|
Submission declined on 25 January 2024 by DoubleGrazing (talk). This draft's references do not show that the subject qualifies for a Wikipedia article. In summary, the draft needs multiple published sources that are: Declined by DoubleGrazing 9 months ago.
|
This article may have been created or edited in return for undisclosed payments, a violation of Wikipedia's terms of use. It may require cleanup to comply with Wikipedia's content policies, particularly neutral point of view. (January 2024) |
Encord is a software company that specialises in developing tools and infrastructure for artificial intelligence and deep learning applications, focused on computer vision.
History
[edit]Encord was co-founded as Cord in 2020 by Ulrik Stig Hansen and Eric Landau and went through the Y Combinator accelerator programme in winter 2021.[2]
In June 2021, Encord announced its $4.5M Seed financing led by CRV and Y Combinator.[3] In October the same year, Encord announced its $12.5M Series A financing led by CRV and Y Combinator.[4]
The company launched its first product focused on automating labeled data creation for computer vision applications in April 2022[5] and a data quality assessment tool soon after in June 2022.[6]
In January of 2023 Encord launched Encord Active, a tool to improve AI models in production through improved model observability and data quality analytics[7]
Encord is an automated annotation platform for AI-assisted image annotation, video annotation, and dataset management.
- Data Management: Compile your raw data into curated datasets, organize datasets into folders, and send datasets for labeling.
AI-assisted Labeling: Automate 97% of your annotations with 99% accuracy using auto-annotation features powered by Meta's Segment Anything Model or GPT-4’s LLaVA.
Collaboration: Integrate human-in-the-loop seamlessly with customized Workflows - create workflows with the no-code drag and drop builder to fit your data ops & ML pipelines.
- Quality Assurance: Robust annotator management & QA workflows to track annotator performance and increase label quality.
Integrated Data Labeling Services for all Industries: outsource your labeling tasks to an expert workforce of vetted, trained and specialized annotators to help you scale.
- Video Labeling Tool: provides the same support for video annotation. One of the leading video annotation tools with positive customer reviews, providing automated video annotations without frame rate errors.
Robust Security Functionality: label audit trails, encryption, FDA, CE Compliance, and HIPAA compliance. - Integrations: Advanced Python SDK and API access (+ easy export into JSON and COCO formats).
References
[edit]- ^ "Best Image Annotation Tools for Computer Vision [Updated 2024]".
- ^ "Encord: All the tools you need to build better vision models, faster". Y Combinator. Retrieved 2024-01-25.
- ^ Wiggers, Kyle (2021-06-15). "Cord raises $4.5M to automate computer vision annotation processes". VentureBeat. Retrieved 2024-01-25.
- ^ "Cord Continues Record Growth With Its New Micro-model Approach, Automating an Archaic Annotation Process With $12.5M in New Funding". BusinessWire. 2021-10-13. Retrieved 2024-01-25.
- ^ Betuel, Emma (2022-04-08). "Encord launched an AI-assisted labeling program". TechCrunch. Retrieved 2024-01-25.
- ^ Plumb, Taryn (2022-06-01). "Encord tackles growing problem of unlabeled data". VentureBeat. Retrieved 2024-01-25.
- ^ "Encord offers ML toolkit for computer vision apps". Computer Weekly. Retrieved 2024-01-25.
- in-depth (not just brief mentions about the subject or routine announcements)
- reliable
- secondary
- strictly independent of the subject
Make sure you add references that meet all four of these criteria before resubmitting. Learn about mistakes to avoid when addressing this issue. If no additional references exist, the subject is not suitable for Wikipedia.