ComfySearch: Autonomous Exploration and Reasoning for ComfyUI Workflows
By: Jinwei Su , Qizhen Lan , Zeyu Wang and more
Potential Business Impact:
Builds better AI art tools automatically.
AI-generated content has progressed from monolithic models to modular workflows, especially on platforms like ComfyUI, allowing users to customize complex creative pipelines. However, the large number of components in ComfyUI and the difficulty of maintaining long-horizon structural consistency under strict graph constraints frequently lead to low pass rates and workflows of limited quality. To tackle these limitations, we present ComfySearch, an agentic framework that can effectively explore the component space and generate functional ComfyUI pipelines via validation-guided workflow construction. Experiments demonstrate that ComfySearch substantially outperforms existing methods on complex and creative tasks, achieving higher executability (pass) rates, higher solution rates, and stronger generalization.
Similar Papers
ComfyUI-R1: Exploring Reasoning Models for Workflow Generation
Computation and Language
Builds AI art tools automatically.
ComfyUI-Copilot: An Intelligent Assistant for Automated Workflow Development
Computation and Language
Helps make AI art faster and easier.
ComfyMind: Toward General-Purpose Generation via Tree-Based Planning and Reactive Feedback
Artificial Intelligence
AI makes creating complex pictures easier and more reliable.