International Journal of Computer Techniques Volume 12 Issue 5 | ChatGPT and NLP as Tools for Unstructured Data Analysis

ChatGPT and NLP for Unstructured Data Analysis | IJCT Journal Volume 12 Issue 5

ChatGPT and NLP as Tools for Unstructured Data Analysis

Author: Rakesh Rohan Budige
Department of Computer Science, University of Illinois Springfield, IL, USA
Email: rakeshrohanbudige@outlook.com

Journal: International Journal of Computer Techniques (IJCT)

Volume: 12 | Issue: 5 | Publication Date: September – October 2025

ISSN: 2394-2231 | Journal URL: https://ijctjournal.org/

Abstract

This paper examines the role of ChatGPT and Natural Language Processing (NLP) in extracting actionable insights from unstructured data. It highlights transformer-based models’ ability to scale across domains such as business intelligence, healthcare, engineering, and cybersecurity. The study discusses strengths like contextual precision and flexibility, alongside challenges including hallucination, bias, and domain adaptation.

Keywords

ChatGPT, Natural Language Processing (NLP), Unstructured Data Analysis, Transformer Models, Artificial Intelligence Applications

Conclusion

ChatGPT and NLP offer transformative capabilities for unstructured data analysis. While not replacements for human expertise, they serve as powerful tools for scalable, context-aware decision-making. Future directions include integration with knowledge graphs, explainable AI, and multimodal systems to enhance reliability and interpretability.

References

Includes 11+ references from IEEE, Smart Learning Environments, J Big Data, and AI & Ethics covering ChatGPT, transformer models, and domain-specific NLP applications.