Automatic Question Answer Generation Using DeepSeek R1 AI: A No-Fine-Tuning Approach for Multi-Input and Bloom’s Taxonomy Based Questioning

Paper Details
Manuscript ID: 2125-0724-2663
Vol.: 1 Issue: 3 Pages: 94-98 Jul - 2025 Subject: Computer Science Language: English
ISSN: 3068-1995 Online ISSN: 3068-109X
Abstract

An advanced Automatic Question Answer (QA) Generation system that leverages DeepSeek R1 AI to address the limitations of traditional fine-tuning-based Natural Language Processing (NLP) models. Our approach eliminated the need for time-consuming fine-tuning and costly GPU infrastructure while supporting multiple input types, diverse QA pairs, and Bloom’s Taxonomy-based cognitive levels. We have evaluated the versatility of the model on a vast number of instructional materials and established its capability of generating great questions and answers in a variety of formats. To achieve this, we present a scalable and easily navigable framework for QA generation in educational and assessment technologies. Overall, our system exhibited emergent reasoning behaviors, utilizing the capability of reinforcement learning through DeepSeek R1, even in the absence of any supervised pre-training. The model is aligned with the educational goals and can be adjusted to accommodate different question types, including multiple-choice questions, short-answer questions, and descriptive questions. Besides, we further simplified reasoning strategies into smaller models for light deployments on non-GPU systems. Results of the experiments demonstrated that our method is resource-efficient and competes, performance-wise, with some of the most recent systems for real-world educational purposes.

Keywords
Automatic QA Generation DeepSeek R1 Bloom’s Taxonomy Natural Language Processing (NLP) Large Language Models (LLMs)
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Cite this Article

Budidha Samuel Ashish Kumar, Aluri Suguna Ratna Priya (2025). Automatic Question Answer Generation Using DeepSeek R1 AI: A No-Fine-Tuning Approach for Multi-Input and Bloom’s Taxonomy Based Questioning. International Journal of Technology & Emerging Research (IJTER), 1(3), 94-98

BibTeX
@article{ijter2025212507242663,
  author = {Budidha Samuel Ashish Kumar and Aluri Suguna Ratna Priya},
  title = {Automatic Question Answer Generation Using DeepSeek R1 AI: A No-Fine-Tuning Approach for Multi-Input and Bloom’s Taxonomy Based Questioning},
  journal = {International Journal of Technology &  Emerging Research },
  year = {2025},
  volume = {1},
  number = {3},
  pages = {94-98},
  issn = {3068-109X},
  url = {https://www.ijter.org/article/212507242663/automatic-question-answer-generation-using-deepseek-r1-ai-a-no-fine-tuning-approach-for-multi-input-and-bloom-s-taxonomy-based-questioning},
  abstract = {An advanced Automatic Question Answer (QA) Generation system that leverages DeepSeek R1 AI to address the limitations of traditional fine-tuning-based Natural Language Processing (NLP) models. Our approach eliminated the need for time-consuming fine-tuning and costly GPU infrastructure while supporting multiple input types, diverse QA pairs, and Bloom’s Taxonomy-based cognitive levels. We have evaluated the versatility of the model on a vast number of instructional materials and established its capability of generating great questions and answers in a variety of formats. To achieve this, we present a scalable and easily navigable framework for QA generation in educational and assessment technologies. Overall, our system exhibited emergent reasoning behaviors, utilizing the capability of reinforcement learning through DeepSeek R1, even in the absence of any supervised pre-training. The model is aligned with the educational goals and can be adjusted to accommodate different question types, including multiple-choice questions, short-answer questions, and descriptive questions. Besides, we further simplified reasoning strategies into smaller models for light deployments on non-GPU systems. Results of the experiments demonstrated that our method is resource-efficient and competes, performance-wise, with some of the most recent systems for real-world educational purposes.},
  keywords = {Automatic QA Generation, DeepSeek R1, Bloom’s Taxonomy,Natural Language Processing (NLP), Large Language Models (LLMs)},
  month = {Jul},
}
Copyright & License

Copyright © 2025 Authors retain the copyright of this article. This article is an open access article distributed under the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.