Data-driven fine-tuning has emerged as a transformative approach in the field of machine learning, enabling notable improvements in the performance of pre-trained language models. SD FQ, a prominent technique within this realm, leverages massive datasets to optimize the parameters of existing models, resulting in tailored solutions for diverse task