Sumon Biswas
Sumon Biswas
Home
Publication
Service
Projects
Teaching
News
Blogs
Contact
Light
Dark
Automatic
maintenance
23 Shades of Self-Admitted Technical Debt: An Empirical Study on Machine Learning Software
We provided a comprehensive taxonomy of machine learning SATDs. Our study analyzes ML SATD type organizations, their frequencies within stages of ML software, the differences between ML SATDs in applications and tools, and the effort of ML SATD removals. The findings discovered suggest implications for ML developers and researchers to create maintainable ML systems.
David OBrien
,
Sumon Biswas
,
Sayem Imtiaz
,
Rabe Abdalkareem
,
Emad Shihab
,
Hridesh Rajan
Cite
Code
DOI
PDF
Cite
×