Sophia: A Persistent Agent Framework of Artificial Life
Mingyang Sun, Feng Hong, Weinan Zhang

TL;DR
This paper introduces Sophia, a persistent agent framework that enhances LLM-based AI agents with long-term identity, self-improvement, and adaptive reasoning, bridging the gap between reactive systems and artificial life.
Contribution
It proposes a novel three-layer architecture including a new System 3 for identity and long-term adaptation, implemented in a prototype that improves reasoning efficiency and task success.
Findings
80% reduction in reasoning steps for recurring tasks
40% improvement in success for complex tasks
Coherent narrative identity demonstrated by System 3
Abstract
The development of LLMs has elevated AI agents from task-specific tools to long-lived, decision-making entities. Yet, most architectures remain static and reactive, tethered to manually defined, narrow scenarios. These systems excel at perception (System 1) and deliberation (System 2) but lack a persistent meta-layer to maintain identity, verify reasoning, and align short-term actions with long-term survival. We first propose a third stratum, System 3, that presides over the agent's narrative identity and long-horizon adaptation. The framework maps selected psychological constructs to concrete computational modules, thereby translating abstract notions of artificial life into implementable design requirements. The ideas coalesce in Sophia, a "Persistent Agent" wrapper that grafts a continuous self-improvement loop onto any LLM-centric System 1/2 stack. Sophia is driven by four…
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Taxonomy
TopicsEmbodied and Extended Cognition · Ethics and Social Impacts of AI · AI-based Problem Solving and Planning
