LGOct 1, 2025

Composer: A Search Framework for Hybrid Neural Architecture Design

arXiv:2510.00379v15 citationsh-index: 18
Originality Highly original
AI Analysis

This addresses the problem of inefficient manual exploration in hybrid model design for researchers and practitioners, offering an incremental improvement through automated search.

The paper tackles the challenge of designing hybrid neural architectures by introducing Composer, a search framework that discovers new hybrid LLM architectures outperforming Llama 3.2, reducing validation loss and improving downstream task accuracy by up to 2.8-8.3% with enhanced efficiency.

Hybrid model architectures that combine computational primitives (e.g., Attention, MLP) in different ratios have shown promising performance beyond Transformers. Some studies have shown that different interleavings of primitives can affect model quality as well. However, prior works explore the hybrid model architecture design space manually. Due to the large design space and training costs, discovering hybrid models that combine key computational primitives for pre-training is challenging. In this work, we take a principled approach in designing a modular hybrid model architecture search framework -- Composer. Composer explores model architectures at a small scale and extrapolates the top-performing model architectures to a larger scale using our proposed scaling strategies. Using Composer, we discover new hybrid LLM architectures that outperform Llama 3.2. Compared to Llama 3.2 and previous state-of-the-art baselines, the new model architectures consistently reduce validation loss at parameter scales of 350M-3B and improve evaluation accuracy on the downstream tasks by up to 2.8-8.3% (1.1-3.1% on average) while improving both training and inference efficiency.

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