GQA: Training Generalized Multi-Query Transformer Models from Multi-Head Checkpoints

Ainslie, Joshua, Lee-Thorp, James, de Jong, Michiel, Zemlyanskiy, Yury, Lebrón, Federico, Sanghai, Sumit

arXiv.org Artificial Intelligence 

Multi-query attention (MQA), which only uses a single key-value head, drastically speeds up decoder inference. However, MQA can lead to quality degradation, and moreover it may not be desirable to train a separate model just for faster inference. We (1) propose a recipe for uptraining existing multi-head language model checkpoints into models with MQA using 5% of original pre-training compute, and (2) introduce grouped-query attention (GQA), a generalization of multi-query attention which uses an intermediate (more than one, less than number of query heads) number of key-value heads. We show that uptrained GQA achieves quality close to multi-head attention with comparable speed to MQA.