We introduce Llamba, a family of efficient recurrent language models distilled from Llama-3.x into the Mamba architecture. The series includes Llamba-1B, Llamba-3B, and Llamba-8B, which achieve higher inference throughput and handle significantly larger batch sizes than Transformer-based models while maintaining comparable benchmark performance. Furthermore, Llamba demonstrates the effectiveness of cross-architecture distillation using MOHAWK (Bick et al., 2024), achieving these results with less than 0.1% of the training data typically used for models of similar size. To take full advantage of their efficiency, we provide an optimized implementation of Llamba for resource-constrained devices such as smartphones and edge platforms, offering a practical and memory-efficient alternative to Transformers. Overall, Llamba improves the tradeoff between speed, memory efficiency, and performance, making high-quality language models more accessible.
Llamba: Scaling Distilled Recurrent Models for Efficient Language Processing
Llamba, a family of efficient recurrent language models distilled from Llama-3.x into the Mamba architecture, offers higher inference throughput and handles larger batch sizes than Transformer-based models while maintaining performance and requiring less training data.
- Year
- 2025
- Venue
- arXiv 2025
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- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2502.14458ARXIV-DEFAULT
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