LGAICLMar 17, 2025

xLSTM 7B: A Recurrent LLM for Fast and Efficient Inference

arXiv:2503.13427v115 citationsh-index: 58Has CodeICML
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This work addresses the need for efficient and fast LLMs for tasks requiring heavy inference, offering a solution with improved speed and efficiency.

The paper tackles the problem of slow inference in large language models by introducing xLSTM 7B, a 7-billion-parameter model that achieves performance comparable to similar-sized LLMs while providing significantly faster inference speeds and greater efficiency compared to Llama- and Mamba-based models.

Recent breakthroughs in solving reasoning, math and coding problems with Large Language Models (LLMs) have been enabled by investing substantial computation budgets at inference time. Therefore, inference speed is one of the most critical properties of LLM architectures, and there is a growing need for LLMs that are efficient and fast at inference. Recently, LLMs built on the xLSTM architecture have emerged as a powerful alternative to Transformers, offering linear compute scaling with sequence length and constant memory usage, both highly desirable properties for efficient inference. However, such xLSTM-based LLMs have yet to be scaled to larger models and assessed and compared with respect to inference speed and efficiency. In this work, we introduce xLSTM 7B, a 7-billion-parameter LLM that combines xLSTM's architectural benefits with targeted optimizations for fast and efficient inference. Our experiments demonstrate that xLSTM 7B achieves performance on downstream tasks comparable to other similar-sized LLMs, while providing significantly faster inference speeds and greater efficiency compared to Llama- and Mamba-based LLMs. These results establish xLSTM 7B as the fastest and most efficient 7B LLM, offering a solution for tasks that require large amounts of test-time computation. Our work highlights xLSTM's potential as a foundational architecture for methods building on heavy use of LLM inference. Our model weights, model code and training code are open-source.

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