OpenMic: A Multi-Agent-Based Stand-Up Comedy Generation System
By: Yuyang Wu , Hanzhong Cao , Jianhao Chen and more
Chinese stand-up comedy generation goes beyond plain text generation, requiring culturally grounded humor, precise timing, stage-performance cues, and implicit multi-step reasoning. Moreover, commonly used Chinese humor datasets are often better suited for humor understanding and evaluation than for long-form stand-up generation, making direct supervision misaligned with the target task. To address these challenges, we present OpenMic, an end-to-end multi-agent system built on AutoGen that transforms a user-provided life topic into a 3-5 minute Chinese stand-up performance and further produces a narrated comedy video. OpenMic orchestrates multiple specialized agents in a multi-round iterative loop-planning to jointly optimize humor, timing, and performability. To mitigate the dataset-task mismatch, we augment generation with retrieval-augmented generation (RAG) for material grounding and idea expansion, and we fine-tune a dedicated JokeWriter to better internalize stand-up-specific setup-punchline structures and long-range callbacks.
Similar Papers
StandUp4AI: A New Multilingual Dataset for Humor Detection in Stand-up Comedy Videos
Computation and Language
Teaches computers to understand jokes better.
The Theater Stage as Laboratory: Review of Real-Time Comedy LLM Systems for Live Performance
Computation and Language
AI learns to tell jokes live with people.
Laugh, Relate, Engage: Stylized Comment Generation for Short Videos
Machine Learning (CS)
Makes funny comments for videos in different styles.