AdaCluster: Adaptive Query-Key Clustering for Sparse Attention in Video Generation
Abstract
Video diffusion transformers (DiTs) suffer from prohibitive inference latency due to quadratic attention complexity. Existing sparse attention methods either overlook semantic similarity, or fail to adapt to heterogeneous token distributions across layers, leading to model performance degradation. We propose AdaCluster, a training‑free adaptive clustering framework that accelerates the generation of DiTs while preserving accuracy. AdaCluster applies an angle-similarity preserving clustering method to query vectors for higher compression, and designs a euclidean-similarity preserving clustering method for keys, covering cluster number assignment, threshold-wise adaptive clustering, and efficient critical cluster selection. Experiments on CogVideoX‑2B, HunyuanVideo, and Wan‑2.1 via one A40 GPU demonstrate up to 1.67x-4.31x speedup with negligible quality degradation.