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A Data-Centric Framework for Composable NLP Workflows

Authors :
Liu, Zhengzhong
Ding, Guanxiong
Bukkittu, Avinash
Gupta, Mansi
Gao, Pengzhi
Ahmed, Atif
Zhang, Shikun
Gao, Xin
Singhavi, Swapnil
Li, Linwei
Wei, Wei
Hu, Zecong
Shi, Haoran
Zhang, Haoying
Liang, Xiaodan
Mitamura, Teruko
Xing, Eric P.
Hu, Zhiting
Publication Year :
2021

Abstract

Empirical natural language processing (NLP) systems in application domains (e.g., healthcare, finance, education) involve interoperation among multiple components, ranging from data ingestion, human annotation, to text retrieval, analysis, generation, and visualization. We establish a unified open-source framework to support fast development of such sophisticated NLP workflows in a composable manner. The framework introduces a uniform data representation to encode heterogeneous results by a wide range of NLP tasks. It offers a large repository of processors for NLP tasks, visualization, and annotation, which can be easily assembled with full interoperability under the unified representation. The highly extensible framework allows plugging in custom processors from external off-the-shelf NLP and deep learning libraries. The whole framework is delivered through two modularized yet integratable open-source projects, namely Forte (for workflow infrastructure and NLP function processors) and Stave (for user interaction, visualization, and annotation).<br />Comment: 8 pages, 4 figures, EMNLP 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2103.01834
Document Type :
Working Paper