Papers
arxiv:2604.27351

Heterogeneous Scientific Foundation Model Collaboration

Published on Apr 30
Β· Submitted by
Zihao Li
on May 1
#1 Paper of the day
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Abstract

Eywa is a heterogeneous agentic framework that extends language-centric systems to scientific foundation models by integrating domain-specific models with language-based reasoning interfaces for improved performance across diverse scientific domains.

AI-generated summary

Agentic large language model systems have demonstrated strong capabilities. However, their reliance on language as the universal interface fundamentally limits their applicability to many real-world problems, especially in scientific domains where domain-specific foundation models have been developed to address specialized tasks beyond natural language. In this work, we introduce Eywa, a heterogeneous agentic framework designed to extend language-centric systems to a broader class of scientific foundation models. The key idea of Eywa is to augment domain-specific foundation models with a language-model-based reasoning interface, enabling language models to guide inference over non-linguistic data modalities. This design allows predictive foundation models, which are typically optimized for specialized data and tasks, to participate in higher-level reasoning and decision-making processes within agentic systems. Eywa can serve as a drop-in replacement for a single-agent pipeline (EywaAgent) or be integrated into existing multi-agent systems by replacing traditional agents with specialized agents (EywaMAS). We further investigate a planning-based orchestration framework in which a planner dynamically coordinates traditional agents and Eywa agents to solve complex tasks across heterogeneous data modalities (EywaOrchestra). We evaluate Eywa across a diverse set of scientific domains spanning physical, life, and social sciences. Experimental results demonstrate that Eywa improves performance on tasks involving structured and domain-specific data, while reducing reliance on language-based reasoning through effective collaboration with specialized foundation models.

Community

Paper submitter

We are bringing Eywa from fiction to digital reality: a heterogeneous agentic framework that enables language models and domain-specific foundation models to collaborate together.

If you find the idea interesting, we would really appreciate your support and upvote! πŸŒΏπŸš€

Eywa is open-sourced at https://github.com/Violet24K/Eywa.
Project page: https://www.zihao.website/eywa.github.io/

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