Llama-Mimi: Speech Language Models with Interleaved Semantic and Acoustic Tokens
Abstract
Llama-Mimi, a unified speech language model using a single Transformer decoder, achieves top performance in acoustic consistency and speaker identity while balancing acoustic fidelity and linguistic coherence.
We propose Llama-Mimi, a speech language model that uses a unified tokenizer and a single Transformer decoder to jointly model sequences of interleaved semantic and acoustic tokens. Comprehensive evaluation shows that Llama-Mimi achieves state-of-the-art performance in acoustic consistency and possesses the ability to preserve speaker identity. Our analysis further demonstrates that increasing the number of quantizers improves acoustic fidelity but degrades linguistic performance, highlighting the inherent challenge of maintaining long-term coherence. We additionally introduce an LLM-as-a-Judge-based evaluation to assess the spoken content quality of generated outputs. Our models, code, and speech samples are publicly available.
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