Efficient sparse collective communication and its application to accelerate distributed deep learning
Jiawei Fei, Chen-Yu Ho, Atal Narayan Sahu, Marco Canini, Amedeo Sapio
Abstract
Efficient collective communication is crucial to parallel-computing applications such as distributed training of large-scale recommendation systems and natural language processing models. Existing collective communication libraries focus on optimizing operations for dense inputs, resulting in transmissions of many zeros when inputs are sparse. This counters current trends that see increasing data sparsity in large models.
Topics & Concepts
Computer scienceFocus (optics)Distributed computingScale (ratio)Artificial intelligencePhysicsQuantum mechanicsOpticsStochastic Gradient Optimization TechniquesFerroelectric and Negative Capacitance DevicesAdvanced Memory and Neural Computing