Pivot-Assisted Consensus for Enhancing LLMs in Low Resource Languages
• Developed Pivot-Assisted Consensus (PAC), an innovative method improving Large Language Models (LLMs) for Low Resource Languages (LRLs), addressing linguistic data scarcity and enhancing task accuracy.
• Conducted pivotal research integrating cultural and linguistic insights, significantly advancing NLP capabilities and model inclusivity.
• Engineered Efficient prompts and Adhered to a zero-shot learning framework, ensuring the model's adaptability and effectiveness without requiring language-specific training.
• Executed comprehensive experiments utilizing an array of datasets like MGSM, XQUAD, & XNLI focusing on improvements in translation accuracy, sentiment analysis, and reasoning tasks evidencing the success of the our approach in elevating LLM efficiency.
(Paper Currently Under-Review)
Tech Stack: Python, TensorFlow, Hugging Face Transformers, Pandas, NumPy, NLTK, Git, Jupyter Notebooks.
더보기