Deep-SDM: A Unified Computational Framework for Sequential Data Modeling Using Deep Learning Models

Software Pub Date : 2024-02-28 DOI:10.3390/software3010003
Nawa Raj Pokhrel, K. Dahal, R. Rimal, H. Bhandari, Binod Rimal
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Abstract

Deep-SDM is a unified layer framework built on TensorFlow/Keras and written in ingPython 3.12. The framework aligns with the modular engineering principles for the design and development strategy. Transparency, reproducibility, and recombinability are the framework’s primary design criteria. The platform can extract valuable insights from numerical and text data and utilize them to predict future values by implementing long short-term memory (LSTM), gated recurrent unit (GRU), and convolution neural network (CNN). Its end-to-end machine learning pipeline involves a sequence of tasks, including data exploration, input preparation, model construction, hyperparameter tuning, performance evaluations, visualization of results, and statistical analysis. The complete process is systematic and carefully organized, from data import to model selection, encapsulating it into a unified whole. The multiple subroutines work together to provide a user-friendly and conducive pipeline that is easy to use. We utilized the Deep-SDM framework to predict the Nepal Stock Exchange (NEPSE) index to validate its reproducibility and robustness and observed impressive results.
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Deep-SDM:使用深度学习模型进行序列数据建模的统一计算框架
Deep-SDM 是一个基于 TensorFlow/Keras 的统一层框架,由 ingPython 3.12 编写。该框架的设计和开发策略符合模块化工程原则。透明度、可重现性和可重组性是该框架的主要设计标准。该平台可从数值和文本数据中提取有价值的见解,并通过实施长短期记忆(LSTM)、门控递归单元(GRU)和卷积神经网络(CNN)来预测未来值。它的端到端机器学习管道涉及一系列任务,包括数据探索、输入准备、模型构建、超参数调整、性能评估、结果可视化和统计分析。从数据导入到模型选择,整个过程都经过了系统化的精心组织,将其封装成一个统一的整体。多个子程序协同工作,提供了一个用户友好、易于使用的管道。我们利用 Deep-SDM 框架预测了尼泊尔证券交易所(NEPSE)指数,验证了其可重复性和稳健性,并观察到了令人印象深刻的结果。
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