Traditional software engineering programming paradigms are mostly object or procedure oriented, driven by deterministic algorithms. With the advent of deep learning and cognitive sciences there is an emerging trend for data-driven programming, creating a shift in the programming paradigm among the software engineering communities. Visualizing and interpreting the execution of a current large scale data-driven software development is challenging. Further, for deep learning development there are many libraries in multiple programming languages such as TensorFlow (Python), CAFFE (C++), Theano (Python), Torch (Lua), and Deeplearning4j (Java), driving a huge need for interoperability across libraries.
翻译:传统软件工程编程范式大多以目标或程序为导向,由确定性算法驱动;随着深层次学习和认知科学的出现,数据驱动编程的趋势正在形成,使软件工程界的编程范式发生转变;当前大规模数据驱动软件开发的可视化和解释具有挑战性;此外,为了深层次学习发展,有许多图书馆使用多种编程语言,如TensorFlow(Python)、CAFFE(C++)、Theano(Python)、Toch(Lua)和Deepleclening4j(Java),因此迫切需要各图书馆的互操作性。