Datasets:
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README.md
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- [Dataset Summary](#dataset-summary)
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- [Supported Tasks and Leaderboards](#supported-tasks-and-leaderboards)
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- [How to use it](#how-to-use-it)
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- [Dataset Structure](#dataset-structure)
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- [Data Instances](#data-instances)
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- [Data Fields](#data-fields)
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|v0.1| Release of the Fondant-cc-25m dataset
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### Dataset Summary
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Fondant-cc-25m contains 25 million image URLs
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The dataset was created using [Fondant](https://fondant.ai), an open source framework that aims to simplify and speed up
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large-scale data processing by making self-contained pipeline components reusable across pipelines, infrastructures and shareable within the community.
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### How to use it
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We have prepared a sample
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To execute the pipeline locally, you must have [docker compose](https://docs.docker.com/compose/),
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[Python](https://python.org) >=3.8 and [Git](https://git-scm.com/) installed on your system.
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To download the full dataset, TODO XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
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## Dataset Structure
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### Data Instances
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Each data instance corresponds to one image. The URL of the image is in the `image_url` feature, and other features (`alt_text`, `webpage_url`, etc) provide some
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Permissive licenses have minimal restrictions on how the image can be copied, modified, and redistributed.
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The full list of licenses can be found [here](https://creativecommons.org/about/cclicenses/).
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We examined HTML tags of the webpages for the presence of Creative Commons license URLs. A webpage was marked permissive only when a license URL was found in
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its footer, aside or sidebar. This was the case in around 0.164% of images
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Subsequently, all the image URLs present on the web page were collected together with the license information.
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A manual test of 1032 randomly sampled images showed an accuracy of 96.32% in which case the image was actually released under a Creative Commons license.
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False positives could be due to parsing errors but also incorrect attributions: images indicated by the publisher to be CC which are not.
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### Dataset Curators
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1. Sharon Grundmann, ML6, sharon.grundmann@ml6.eu
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### Licensing Information
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Fondant-cc-25m is a collection of images with various Creative Commons and other public licenses. Any use of all or part of the images gathered in Fondant-cc-25m
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- [Dataset Summary](#dataset-summary)
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- [Supported Tasks and Leaderboards](#supported-tasks-and-leaderboards)
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- [How to use it](#how-to-use-it)
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- [How to contribute](#how-to-contribute)
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- [Dataset Structure](#dataset-structure)
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- [Data Instances](#data-instances)
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- [Data Fields](#data-fields)
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|v0.1| Release of the Fondant-cc-25m dataset
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### Dataset Summary
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Fondant-cc-25m contains 25 million image URLs with their respective [Creative Commons](https://creativecommons.org/)
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license information collected from the [Common Crawl web corpus](https://commoncrawl.org/).
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The dataset was created using [Fondant](https://fondant.ai), an open source framework that aims to simplify and speed up
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large-scale data processing by making self-contained pipeline components reusable across pipelines, infrastructures and shareable within the community.
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### How to use it
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We have prepared a sample Fondant pipeline for downloading the dataset or part of it.
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To execute the pipeline locally, you must have [docker compose](https://docs.docker.com/compose/),
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[Python](https://python.org) >=3.8 and [Git](https://git-scm.com/) installed on your system.
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To download the full dataset, TODO XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
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### How to contribute
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If you want to contribute to the dataset, the best way is to help us develop pipeline components for further processing. Components
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we are currently looking to add are the following ([GitHub issues](https://github.com/ml6team/fondant/issues?q=is%3Aissue+is%3Aopen+label%3A%22Component+Contribution%22)):
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- Image-based deduplication
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- Visual quality / aesthetic quality estimation
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- Automatic captioning
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- Not safe for work (NSFW) content detection
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- Watermark detection
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- Face detection
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- Personal Identifiable Information (PII) detection
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- Text detection
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- AI generated image detection
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- CLIP embedding generation
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- Image-text CLIP similarity
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- ...
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We are also looking for core framework contributors and users who are willing to give feedback on usability and suggest potential improvements
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## Dataset Structure
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### Data Instances
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Each data instance corresponds to one image. The URL of the image is in the `image_url` feature, and other features (`alt_text`, `webpage_url`, etc) provide some
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Permissive licenses have minimal restrictions on how the image can be copied, modified, and redistributed.
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The full list of licenses can be found [here](https://creativecommons.org/about/cclicenses/).
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We examined HTML tags of the webpages for the presence of Creative Commons license URLs. A webpage was marked permissive only when a license URL was found in
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its footer, aside or sidebar. This was the case only in around 0.164% of images which suggests that image generation models trained on a random sample from
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the public internet may be trained on up to 99.836% images that may be copyrighted.
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Subsequently, all the image URLs present on the web page were collected together with the license information.
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A manual test of 1032 randomly sampled images showed an accuracy of 96.32% in which case the image was actually released under a Creative Commons license.
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False positives could be due to parsing errors but also incorrect attributions: images indicated by the publisher to be CC which are not.
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### Dataset Curators
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1. Sharon Grundmann, ML6, sharon.grundmann@ml6.eu
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2. Matthias Richter, ML6, matthias.richter@ml6.eu
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3. Robbe Sneyders, ML6, robbe.sneyders@ml6.eu
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### Licensing Information
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Fondant-cc-25m is a collection of images with various Creative Commons and other public licenses. Any use of all or part of the images gathered in Fondant-cc-25m
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