Flash-GMM: A Memory-Efficient Kernel for Scalable Soft Clustering

· HF Daily Papers ·

Flash-GMM introduces a fused Triton kernel that makes large-scale Gaussian mixture clustering far more memory efficient.

Categories: Research

Excerpt

Gal Bloch, Ariel Gera, Matan Orbach, Ohad Eytan, Assaf Toledo — We present Flash-GMM, a fused Triton kernel for efficient computation of Gaussian Mixture Models (GMMs) over large-scale data in a single GPU pass. By eliminating the need to materialize the full responsibility matrix in GPU memory, Flash-GMM achieves a 20times speedup over existing implementations and enables training on datasets more than 100times larger than previously feasible on one device. To demonstrate its impact, we integrate Flash-GMM into the IVF coarse quantizer for approximate nearest-neighbor (ANN) search. We show that soft GMM clustering is now a viable drop-in replacement for k-means, and that GMM responsibilities can be leveraged to assign border vectors to multiple clusters. Our approach reaches fixed recall targets with up to 1.7times fewer distance computations, or equivalently, yields +2--12 recall@10 at matched computational cost. We release the kernel as an open-source project.