NICHE: A Curated Dataset of Engineered Machine Learning Projects in Python

March 11, 2023 Β· Declared Dead Β· πŸ› IEEE Working Conference on Mining Software Repositories

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Authors Ratnadira Widyasari, Zhou Yang, Ferdian Thung, Sheng Qin Sim, Fiona Wee, Camellia Lok, Jack Phan, Haodi Qi, Constance Tan, Qijin Tay, David Lo arXiv ID 2303.06286 Category cs.SE: Software Engineering Citations 12 Venue IEEE Working Conference on Mining Software Repositories Last Checked 4 months ago
Abstract
Machine learning (ML) has gained much attention and been incorporated into our daily lives. While there are numerous publicly available ML projects on open source platforms such as GitHub, there have been limited attempts in filtering those projects to curate ML projects of high quality. The limited availability of such a high-quality dataset poses an obstacle in understanding ML projects. To help clear this obstacle, we present NICHE, a manually labelled dataset consisting of 572 ML projects. Based on evidences of good software engineering practices, we label 441 of these projects as engineered and 131 as non-engineered. This dataset can help researchers understand the practices that are followed in high-quality ML projects. It can also be used as a benchmark for classifiers designed to identify engineered ML projects.
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