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How Do Deep-Learning Framework Versions Affect the Reproducibility of Neural Network Models?
by
Shahriari, Mostafa
, Fischer, Lukas
, Ramler, Rudolf
in
Analysis
/ Approximation
/ Boolean
/ Cardiovascular disease
/ Complexity
/ Datasets
/ Deep learning
/ deep neural networks
/ Heart
/ Machine learning
/ Neural networks
/ Normal distribution
/ Optimization
/ pytorch
/ Reproducibility
/ Researchers
/ Software development
/ Software engineering
/ Software packages
/ Software upgrading
/ Source code
/ tensorflow
/ Virtual environments
2022
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How Do Deep-Learning Framework Versions Affect the Reproducibility of Neural Network Models?
by
Shahriari, Mostafa
, Fischer, Lukas
, Ramler, Rudolf
in
Analysis
/ Approximation
/ Boolean
/ Cardiovascular disease
/ Complexity
/ Datasets
/ Deep learning
/ deep neural networks
/ Heart
/ Machine learning
/ Neural networks
/ Normal distribution
/ Optimization
/ pytorch
/ Reproducibility
/ Researchers
/ Software development
/ Software engineering
/ Software packages
/ Software upgrading
/ Source code
/ tensorflow
/ Virtual environments
2022
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Do you wish to request the book?
How Do Deep-Learning Framework Versions Affect the Reproducibility of Neural Network Models?
by
Shahriari, Mostafa
, Fischer, Lukas
, Ramler, Rudolf
in
Analysis
/ Approximation
/ Boolean
/ Cardiovascular disease
/ Complexity
/ Datasets
/ Deep learning
/ deep neural networks
/ Heart
/ Machine learning
/ Neural networks
/ Normal distribution
/ Optimization
/ pytorch
/ Reproducibility
/ Researchers
/ Software development
/ Software engineering
/ Software packages
/ Software upgrading
/ Source code
/ tensorflow
/ Virtual environments
2022
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How Do Deep-Learning Framework Versions Affect the Reproducibility of Neural Network Models?
Journal Article
How Do Deep-Learning Framework Versions Affect the Reproducibility of Neural Network Models?
2022
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Overview
In the last decade, industry’s demand for deep learning (DL) has increased due to its high performance in complex scenarios. Due to the DL method’s complexity, experts and non-experts rely on blackbox software packages such as Tensorflow and Pytorch. The frameworks are constantly improving, and new versions are released frequently. As a natural process in software development, the released versions contain improvements/changes in the methods and their implementation. Moreover, versions may be bug-polluted, leading to the model performance decreasing or stopping the model from working. The aforementioned changes in implementation can lead to variance in obtained results. This work investigates the effect of implementation changes in different major releases of these frameworks on the model performance. We perform our study using a variety of standard datasets. Our study shows that users should consider that changing the framework version can affect the model performance. Moreover, they should consider the possibility of a bug-polluted version before starting to debug source code that had an excellent performance before a version change. This also shows the importance of using virtual environments, such as Docker, when delivering a software product to clients.
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