Detecting Flow of Sensitive Data in Mini-Programs with Static Taint Analysis
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Updated
Mar 19, 2024 - Python
Detecting Flow of Sensitive Data in Mini-Programs with Static Taint Analysis
An Empirical Study of Date and Time Bugs in Open-Source Python Software.
This repository contains the LaTeX source code and additional resources for a research paper that was accepted for publication at the 2021 Mining Software Repositories Conference.
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This repository is for the IC-377 research
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