argilla-io/distilabel
Distilabel is a framework for synthetic data and AI feedback for engineers who need fast, reliable and scalable pipelines based on verified research papers.
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Argilla is a collaboration tool for AI engineers and domain experts to build high-quality datasets
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Latest capture 2026-07-15 03:04
5 captures since 2026-05-25
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Frameworks, package managers, ecosystems, and dependency manifests found during catalog scans.
Scanned 2026-07-15 03:04
argilla-frontend/package.json
javascript ecosystem,
54 dependencies
argilla-server/pyproject.toml
python ecosystem,
33 dependencies
argilla-v1/pyproject.toml
python ecosystem,
44 dependencies
argilla-v1/setup.py
python ecosystem,
0 dependencies
argilla/pyproject.toml
python ecosystem,
9 dependencies
argilla-frontend/package-lock.json
javascript ecosystem,
0 dependencies
argilla-server/pdm.lock
python ecosystem,
112 dependencies
argilla/pdm.lock
python ecosystem,
151 dependencies
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Distilabel is a framework for synthetic data and AI feedback for engineers who need fast, reliable and scalable pipelines based on verified research papers.
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