#Adaptive Parallel Reasoning03/05/2025
UC Berkeley and UCSF Unveil Adaptive Parallel Reasoning to Boost LLM Efficiency Within Context Limits
Researchers at UC Berkeley and UCSF have developed Adaptive Parallel Reasoning, a novel method that allows large language models to dynamically distribute inference tasks across parallel threads, enhancing reasoning performance without exceeding context window limits.