--- license: cdla-permissive-2.0 task_categories: - text-generation - text2text-generation - "other" tags: - code - fstar - popai pretty_name: PoPAI-FStarDataSet size_categories: - 10K, "name": , "original_source_type": , "source_type": , "source_definition": , "source": , "source_range": , "file_context": , "dependencies": , "opens_and_abbrevs": , "vconfig": , "interleaved": , "verbose_type": , "effect": , "effect_flags": , "mutual_with": , "ideal_premises": , "proof_features": , "is_simple_lemma": , "is_div": , "is_proof": , "is_simply_typed": , "is_type": , "partial_definition": , "completed_definiton": , "isa_cross_project_example": } ``` # Usage To use this dataset with [`datasets`](https://pypi.org/project/datasets/), ```python from datasets import load_dataset data = load_dataset("microsoft/FStarDataSet") train_data = data["train"] eval_data = data["validation"] test_data = data["test"] intra_project_test = test_data.filter(lambda x: x["isa_cross_project_example"] == False) cross_project_test = test_data.filter(lambda x: x["isa_cross_project_example"] == True) ``` ## Input The primary input for generating F* definition is **`source_type`**. All other information in an example may be used directly or to derive an input except **`source_definition`**, **`ideal_premises`**, and **`completed_definiton`**. ## Output The primary output is **`source_definition`**, which is the ground truth definition, that can be evaluated with the [proof checker](#evaluation-on-this-dataset). The **`completed_definiton`** may be used as ground truth when a model is used as a text completion setting (though the evaluator does not support evaluation in this setting). In addition, **`ideal_premises`** may be used for evaluating premise selection models. # Evaluation on this dataset Generated F* definitions should be evaluated the proof checker tool from [https://github.com/FStarLang/fstar_dataset/releases/tag/eval-v1.0](https://github.com/FStarLang/fstar_dataset/releases/tag/eval-v1.0). Download the source code and the `helpers.zip` file from the release. ## Troubleshooting The attached binaries in the evaluator (i.e., `fstar.exe` and `z3`) are built on **`Ubuntu 20.04.6 LTS (GNU/Linux 5.4.0-189-generic x86_64)`** **`gcc (Ubuntu 9.4.0-1ubuntu1~20.04.2)`**, **`OCaml 4.12.0`**. If any of the binaries do not work properly, build F* from [this commit (f3b4db2ebce90020acbbbe1b4ea0d05d3e69ad6c)](https://github.com/FStarLang/FStar/commit/f3b4db2ebce90020acbbbe1b4ea0d05d3e69ad6c) from the [F* repository](https://github.com/FStarLang/FStar), using their [installation guide](https://github.com/FStarLang/FStar/blob/master/INSTALL.md). # Data Source The raw data in this project are collected from eight open-source F* reposiroties in GitHib 1. [FStar](https://github.com/FStarLang/FStar): The F⋆ compiler itself, including its standard libraries and examples. 2. [Karamel](https://github.com/FStarLang/karamel): A transpiler from a subset of F⋆ called Low* to C, including libraries to work with a model of C types and control structures, e.g., for- and while-loops. 3. [EverParse](https://github.com/project-everest/everparse): A parser generator for binary formats, used in various large scale systems, e.g., the Windows kernel. 4. [HACL*](https://github.com/hacl-star/hacl-star): A library of verified cryptographic algorithms, including ValeCrypt, a library of verified assembly code, as well as EverCrypt, a cryptographic provider, including code deployed in Linux, Firefox, and Python. 5. [Merkle-tree](https://github.com/hacl-star/merkle-tree): A verified, incremental Merkle tree, designed for use in Azure CCF, a confidential computing system. 6. [Steel](https://github.com/FStarLang/steel): A concurrent separation logic library, with proofs of data structures and concurrency primitives. 7. [miTLS-F*](https://github.com/project-everest/mitls-fstar): A partially verified reference implementation of the TLS protocol. 8. [EverQuic-Crypto](https://github.com/project-everest/everquic-crypto): A verified implementation of header and packet protection for the QUIC protocol. # Limitations **TDB** # Citation ``` @inproceedings{chakraborty2024towards, title={Towards Neural Synthesis for SMT-Assisted Proof-Oriented Programming}, author={Chakraborty, Saikat and Ebner, Gabriel and Bhat, Siddharth and Fakhoury, Sarah and Fatima, Sakina and Lahiri, Shuvendu and Swamy, Nikhil}, booktitle={Proceedings of the IEEE/ACM 47th International Conference on Software Engineering (To Appear)}, pages={1--12}, year={2025} } ``` # Contributors 1. [Saikat Chakraborty](https://huggingface.co/saikatc) 2. [Gabriel Ebner]() 3. [Nikhil Swamy]() 4. [Siddharth Bhat]()