CLAINov 16, 2021

STAMP 4 NLP -- An Agile Framework for Rapid Quality-Driven NLP Applications Development

arXiv:2111.08408v14 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem for enterprises struggling to integrate NLP projects into production due to technical complexities, though it appears incremental as it builds on existing principles.

The authors tackled the challenge of developing NLP applications by introducing STAMP 4 NLP, an agile framework that merges software engineering with data science practices, resulting in efficient prototype creation and early deployment to maximize business value.

The progress in natural language processing (NLP) research over the last years, offers novel business opportunities for companies, as automated user interaction or improved data analysis. Building sophisticated NLP applications requires dealing with modern machine learning (ML) technologies, which impedes enterprises from establishing successful NLP projects. Our experience in applied NLP research projects shows that the continuous integration of research prototypes in production-like environments with quality assurance builds trust in the software and shows convenience and usefulness regarding the business goal. We introduce STAMP 4 NLP as an iterative and incremental process model for developing NLP applications. With STAMP 4 NLP, we merge software engineering principles with best practices from data science. Instantiating our process model allows efficiently creating prototypes by utilizing templates, conventions, and implementations, enabling developers and data scientists to focus on the business goals. Due to our iterative-incremental approach, businesses can deploy an enhanced version of the prototype to their software environment after every iteration, maximizing potential business value and trust early and avoiding the cost of successful yet never deployed experiments.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes