The Dataset Convening: A community workshop on open AI datasets
On June 11, on the eve of MozFest House in Amsterdam, Mozilla and EleutherAI convened an exclusive group of 30 leading scholars and practitioners from prominent open-source AI startups, nonprofit AI labs and civil society organizations to discuss emerging practices for a new focus within the open LLM community: creating open-access and openly licensed LLM training datasets.
This work is timely. Although sharing training datasets was once common practice among many AI actors, increased competitive pressures and legal risks have made it almost unheard of nowadays for pre-training datasets to be shared or even described by their developers. However, just as open-source software has made the internet safer and more robust, we at Mozilla and EleutherAI believe open-access data is a public good that can empower developers worldwide to build upon each other's work. It fosters competition, innovation and transparency, providing clarity around legal standing and an ability to stand up to scrutiny.
Leading AI companies want us to believe that training performant LLMs without copyrighted material is impossible. We refuse to believe this. An emerging ecosystem of open LLM developers have created LLM training datasets -such as Common Corpus, YouTube-Commons, Fine Web, Dolma, Aya, Red Pajama and many more-that could provide blueprints for more transparent and responsible AI progress. We were excited to invite many of them to join us in Amsterdam for a series of discussions about the challenges and opportunities of building an alternative to the current status quo that is open, legally compliant and just.
During the event, we drew on the learnings from assembling Common Pile" (the soon-to-be-released dataset by EleutherAI composed only of openly licensed and public domain data) which incorporates many learnings from its hugely successful predecessor, The Pile." At the event, EleutherAI released a technical briefing and an invitation to public consultation on Common Pile.
Our goal with the convening was to bring in the experiences of open dataset builders to develop normative and technical recommendations and best practices around openly licensed and open-access datasets. Below are some highlights of our discussion:
- Openness alone does not guarantee legal compliance or ethical outcomes, we asked which decision points can contribute to datasets being more just and sustainable in terms of public good and data rights.
- We discussed what good" looks like, what we want to avoid, what is realistic and what is already being implemented in the realm of sourcing, curating, governing and releasing open training datasets.
- Issues such as the cumbersome nature of sourcing public domain and openly licensed data (e.g. extracting text from PDFs), manual verification of metadata, legal status of data across jurisdictions, retractability of consent, preference signaling, reproducibility and data curation and filtering were recurring themes in almost every discussion.
- To enable more builders to develop open datasets and unblock the ecosystem, we need financial sustainability and smart infrastructural investments that can unblock the ecosystem.
- The challenges faced by open datasets today bear a resemblance to those encountered in the early days of open source software (data quality, standardization and sustainability). Back then, it was the common artifacts that united the community and provided some shared understanding and language. We saw the Dataset Convening as an opportunity to start exactly there and create shared reference points that, even if not perfect, will guide us in a common direction.
- The final insight round underscored that we have much to learn from each other: we are still in the early days of solving this immense challenge, and this nascent community needs to collaborate and think in radical and bold ways.
We are immensely grateful to the participants in the Dataset Convening (including some remote contributors):
- Stefan Baack - Researcher and Data Analyst, Insights, Mozilla
- Mitchell Baker - Chairwoman, Mozilla Foundation
- Ayah Bdeir - Senior Advisor, Mozilla
- Julie Beliao - Senior Director of Product Innovation, Mozilla.ai
- Jillian Bommarito - Chief Risk Officer, 273 Ventures
- Kasia Chmielinski - Project Lead, Data Nutrition Project
- Jennifer Ding - Senior Researcher, Alan Turing Institute
- Alix Dunn - CEO, Computer Says Maybe
- Marzieh Fadaee - Senior Research Scientist, Cohere For AI
- Maximilian Gahntz - AI Policy Lead, Mozilla
- Paul Keller - Director of Policy and Co-Founder, Open Future
- Hynek Kydliek - Machine Learning Engineer, HuggingFace
- Pierre-Carl Langlais - Co-Founder, Pleias
- Greg Leppert - Director of Product and Research, the Library Innovation Lab, Harvard
- EM Lewis-Jong - Director, Common Voice, Mozilla
- Shayne Longpre - Project Lead, Data Provenance Initiative
- Angela Lungati - Executive Director, Ushahidi
- Sebastian Majstorovic - Open Data Specialist, EleutherAI
- Cullen Miller - Vice President of Policy, Spawning
- Victor Miller - Senior Product Manager, LLM360
- Kasia Odrozek - Director, Insights, Mozilla
- Guilherme Penedo - Machine Learning Research Engineer, HuggingFace
- Neha Ravella - Research Project Manager, Insights Mozilla
- Michael Running Wolf - Co-Founder and Lead Architect, First Languages AI Reality, Mila
- Max Ryabinin - Distinguished Research Scientist, Together AI
- Kat Siminyu - Researcher, The Distributed AI Research Institute
- Aviya Skowron - Head of Policy and Ethics, EleutherAI
- Andrew Strait - Associate Director, Ada Lovelace Institute
- Mark Surman - President, Mozilla Foundation
- Anna Tumadottir - CEO, Creative Commons
- Marteen Van Segbroeck - Head of Applied Science, Gretel
- Leandro von Werra - Chief Loss Officer, HuggingFace
- Maurice Weber - AI Researcher, Together AI
- Lee White - Senior Full Stack Developer, Ushahidi
- Thomas Wolf - Chief Science Officer and Co-Founder, HuggingFace
In the coming weeks, we will be working with the participants to develop common artifacts that will be released to the community, along with an accompanying paper. These resources will help researchers and practitioners navigate the definitional and executional complexities of advancing open-access and openly licensed datasets and strengthen the sense of community.
The event was part of the Mozilla Convening Series, where we bring together leading innovators in open source AI to tackle thorny issues and help move the community and movement forward. Our first convening was the Columbia Convening where we invited 40 leading scholars and practitioners to develop a framework for defining what openness means in AI. We are committed to continuing the efforts to support communities invested in openness around AI and look forward to helping grow and strengthen this movement.
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