The field of large language models (LLMs) has witnessed a paradigm shift with the advent of model merging, a novel approach that combines multiple LLMs into a unified architecture without additional training, offering a cost-effective strategy for new model development. This technique has sparked a surge in experimentation due to its potential to democratize the development of foundational models. However, the reliance on human intuition and domain knowledge in model merging has been a limiting factor, calling for a more systematic method to explore new model combinations. …