Author
Listed:
- Charles Kinyua Gitonga
(Chuka University, Kenya)
- Lydia Gakii Mugao
(Tharaka University, Kenya)
Abstract
This research was to investigate the effect of utilizing high-performance computing (HPC) resources to enhance the adaptability and performance of transformer-based language models. The research was done through intensive domain-specific pretraining in the medical domain. The study aimed to answer the question: Can domain-adaptive pretraining on medical texts significantly improve language model performance metrics such as perplexity while maintaining computational efficiency and addressing ethical considerations? The research utilized a corpus of medical texts. These were carefully split into training and evaluation datasets. Initial model training on NVIDIA A30 GPUs, with 96% GPU utilization, calculated an average perplexity of 73.54. Following iterative refinements—including domain-specific tokenizer optimization, data preprocessing, mixed-precision training, and adjusted learning parameters—the final model achieved an average perplexity of 3.39. The evaluation run processed 7103 samples in 98.02 seconds, with a training loss of 2.405 and an evaluation loss of 2.045, indicating strong generalization and the absence of overfitting. The final model and results were saved for reproducibility and future use. This study was justified by the pressing need for accurate and efficient medical natural language processing (NLP) applications. The application areas are in clinical decision support, patient record summarization, and medical research analysis. The research findings highlight that investing in HPC-driven domain-adaptive pretraining delivers substantial improvements in performance. It also equips medical NLP models with abilities to handle the complexities of domain-specific language effectively. The Ethical considerations of this research were based on optimizing GPU utilization to reduce energy consumption and ensure transparency through reproducible methodologies. We recommend future research to explore larger medical datasets, broader clinical specializations, and diverse transformer architectures while also investigating the transferability of learned representations across related medical subdomains. The advancements could further enhance the applicability of specialized language models in medical research and practice.
Suggested Citation
Handle:
RePEc:epw:comput:v:5:y:2025:i:2:id:10149
DOI: 10.24018/compute.2025.5.2.149
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