期刊
IEEE ACCESS
卷 11, 期 -, 页码 86727-86738出版社
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3301575
关键词
Libraries; DSL; Deep learning; Syntactics; Codes; Reactive power; Biological neural networks; Neural networks; Domain specific languages; domain-specific language; deep learning
RADENN is a domain-specific language aimed at rapidly developing fully connected neural networks for classification and regression problems. It is built on top of Keras API with Tensorflow as its backend and incorporates specific data types and built-in functions to facilitate network creation, training, and evaluation. RADENN is an ideal tool for various professionals who need a fast and efficient way to create prototypes and models without extensive programming or deep learning knowledge. This work provides a detailed overview of RADENN's features and compares it with widely used libraries such as Keras and PyTorch.
RADENN is a domain-specific language designed to rapidly develop fully connected neural networks for classification and regression problems. The primary objective of this language is to make neural network algorithms more accessible to a broader audience. RADENN is built on top of Keras API with Tensorflow as its back-end. This language follows the imperative paradigm; it uses dynamic scoping, is weakly typed, and utilizes type inference. The contribution of RADENN is to incorporate specific data types and built-in functions to facilitate the creation, training, and evaluation of neural networks. All these features make RADENN an ideal tool for Data Scientists, Data Analysts, Big Data Engineers, Software Enginers, and anyone who needs a fast and efficient way to create prototypes and models without extensive programming or deep learning knowledge. This work provides a detailed overview of the features of RADENN and compares it to Keras and PyTorch, which are currently among the most widely used libraries in industry and research.
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