Foundation models encompass an extensive knowledge base and offer remarkable transferability. However, this knowledge becomes outdated or insufficient over time. The challenge lies in updating foundation models to accommodate novel information while retaining their original ability. In this paper, we present a novel approach to achieving continual model updates by effecting localized modifications to a small subset of parameters. Guided by insights gleaned from prior analyses of foundational models, we first localize a specific layer for model refinement and then introduce an importance scoring mechanism designed to update only the most crucial weights. Our method is exhaustively evaluated on foundational vision-language models, measuring its efficacy in both learning new information and preserving pre-established knowledge across a diverse spectrum of continual learning tasks, including Aircraft, Birdsnap CIFAR-100, CUB, Cars, and GTSRB. The results show that our method improves the existing continual learning methods by 0.5\% - 10\% on average, and reduces the loss of pre-trained knowledge from around 5\% to 0.97\%. Comprehensive ablation studies substantiate our method design, shedding light on the contributions of each component to controllably learning new knowledge and mitigating the forgetting of pre-trained knowledge.