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[Artifact Respository] Quantum Program Linting with LLMs: Emerging Results from a Comparative Study

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Figshare2025-07-23 更新2026-04-08 收录
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https://figshare.com/articles/dataset/_Artifact_Respository_Quantum_Program_Linting_with_LLMs_Emerging_Results_from_a_Comparative_Study/28636028/1
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This page contains the artifacts of our paper, entitled "Quantum Program Linting with LLMs: Emerging Results from a Comparative Study". In particular, this pape provides the experiment package to increase the reproducibility of our experiments.<b>Datasets</b>In our experiments, we used real-world Qiskit source code files and the annotated dataset from the LintQ repository, which is available at https://github.com/sola-st/LintQ.<b>Files</b>LintQ-LLM.py: A Python script that generates prompts and executes them.results.txt: The results produced by LintQ-LLM in the experiments presented in our paper.<b>LintQ-LLM Usage Instruction</b>Update line 18 in LintQ-LLM.py with a valid OpenAI API key.Create a ./files_selected directory and place Qiskit source code files in it.Run "python LintQ-LLM.py", which will output results.txt<b>License</b>This software is licensed under the Apache License 2.0, which permits use, modification, and distribution under open source terms. However, please be aware of the following: Access to and use of the OpenAI API is governed by OpenAI’s Terms of Use and Usage Policies, which include but are not limited to:Requirements for account registration and a valid API key.Restrictions on prohibited use cases (e.g., illegal, harmful, or misleading content generation).Usage limits, pricing, and billing terms defined by OpenAI.By running this software with OpenAI API integration, you (the user) are responsible for complying with OpenAI’s terms and policies. This project does not provide, include, or distribute access to OpenAI’s services, nor does it accept liability for how those services are used.
提供机构:
Pastore, Fabrizio; Bianculli, Domenico; Shin, Seung Yeob
创建时间:
2025-07-23
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