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Merge branch 'main' of https://huggingface.co/datasets/hoskinson-center/proof-pile into main

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  - language-modeling
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  ---
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- Note: this repo is a WIP and does not yet implement all features described below. It is certainly not ready to be used to train a model.
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- # Dataset Card for Proof-pile
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-
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  # Dataset Description
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- The `proof-pile` is a 45GB pre-training dataset of mathematical text. The dataset is composed of diverse sources of both informal and formal mathematics, namely
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- - ArXiv.math (40GB)
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  - Open-source math textbooks (50MB)
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  - Formal mathematics libraries (500MB)
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  - Lean mathlib and other Lean repositories
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  # Languages
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  All informal mathematics in the `proof-pile` is written in English and LaTeX (arXiv articles in other languages are filtered out using [languagedetect](https://github.com/shuyo/language-detection/blob/wiki/ProjectHome.md)). Formal theorem proving languages represented in this dataset are Lean 3, Isabelle, Coq, HOL Light, Metamath, and Mizar.
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- # Splits
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  The data is sorted into `"arxiv", "books", "formal", "stack-exchange", "wiki",` and `"math-dataset"` configurations. This is so that it is easy to upsample particular configurations during pre-training with the `datasets.interleave_datasets()` function.
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- Note that in the `"stack-exchange"`, `"wiki"`, and `"stack-exchange"` configurations, multiple documents are included in them same instance separated by the string `"<|endoftext|>"`.
 
 
 
 
 
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  ## Contributions
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  Authors: Zhangir Azerbayev, Edward Ayers, Bartosz Piotrowski.
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- We would like to thank Jeremy Avigad for his invaluable perspective and guidance, and the Hoskinson Center for Formal Mathematics for its support.
 
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  - language-modeling
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  ---
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  # Dataset Description
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+ The `proof-pile` is a 40GB pre-training dataset of mathematical text. The dataset is composed of diverse sources of both informal and formal mathematics, namely
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+ - ArXiv.math (37GB)
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  - Open-source math textbooks (50MB)
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  - Formal mathematics libraries (500MB)
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  - Lean mathlib and other Lean repositories
 
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  # Languages
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  All informal mathematics in the `proof-pile` is written in English and LaTeX (arXiv articles in other languages are filtered out using [languagedetect](https://github.com/shuyo/language-detection/blob/wiki/ProjectHome.md)). Formal theorem proving languages represented in this dataset are Lean 3, Isabelle, Coq, HOL Light, Metamath, and Mizar.
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+ # Configurations
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  The data is sorted into `"arxiv", "books", "formal", "stack-exchange", "wiki",` and `"math-dataset"` configurations. This is so that it is easy to upsample particular configurations during pre-training with the `datasets.interleave_datasets()` function.
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+ # Evaluation
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+ The version of `set.mm` in this dataset has 10% of proofs replaced with the `?` character in order to preserve a validation and test set for Metamath provers pre-trained on the `proof-pile`. The precise split can be found here: [validation](https://github.com/zhangir-azerbayev/mm-extract/blob/main/valid_decls.json) and [test](https://github.com/zhangir-azerbayev/mm-extract/blob/main/test_decls.json).
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+
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+ The Lean mathlib commit used in this dataset is `6313863`. Theorems created in subsequent commits can be used for evaluating Lean theorem provers.
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+
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+ This dataset contains only the training set of the [MATH dataset](https://github.com/hendrycks/math). However, because this dataset contains ProofWiki, the Stacks Project, Trench's Analysis, and Stein's Number Theory, models trained on it cannot be evaluated on the [NaturalProofs dataset](https://github.com/wellecks/naturalproofs).
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  ## Contributions
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  Authors: Zhangir Azerbayev, Edward Ayers, Bartosz Piotrowski.
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+ We would like to thank Jeremy Avigad, Albert Jiang, and Wenda Li for their invaluable guidance, and the Hoskinson Center for Formal Mathematics for its support.