Search Results for author: Diego Elias Costa

Found 4 papers, 0 papers with code

An Empirical Study on Bugs Inside PyTorch: A Replication Study

no code implementations25 Jul 2023 Sharon Chee Yin Ho, Vahid Majdinasab, Mohayeminul Islam, Diego Elias Costa, Emad Shihab, Foutse khomh, Sarah Nadi, Muhammad Raza

Software systems are increasingly relying on deep learning components, due to their remarkable capability of identifying complex data patterns and powering intelligent behaviour.

Can Ensembling Pre-processing Algorithms Lead to Better Machine Learning Fairness?

no code implementations5 Dec 2022 Khaled Badran, Pierre-Olivier Côté, Amanda Kolopanis, Rached Bouchoucha, Antonio Collante, Diego Elias Costa, Emad Shihab, Foutse khomh

As machine learning (ML) systems get adopted in more critical areas, it has become increasingly crucial to address the bias that could occur in these systems.

Fairness

Breaking Type Safety in Go: An Empirical Study on the Usage of the unsafe Package

no code implementations17 Jun 2020 Diego Elias Costa, Suhaib Mujahid, Rabe Abdalkareem, Emad Shihab

Our findings can be used to understand how and why developers break type-safety in Go, and help motivate further tools and language development that could make the usage of unsafe in Go even safer.

C++ code Vocal Bursts Type Prediction

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