TL;DR
Eywa is a framework that extends language models to collaborate with domain-specific scientific foundation models, enabling reasoning over diverse data types for complex scientific tasks.
Contribution
Introduces Eywa, a heterogeneous agentic system integrating language models with scientific foundation models for broader scientific reasoning.
Findings
Eywa improves task performance across physical, life, and social sciences.
The framework reduces reliance on language-only reasoning.
Eywa can be integrated into existing multi-agent systems seamlessly.
Abstract
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…
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