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arxiv:2605.06230

Safactory: A Scalable Agentic Infrastructure for Training Trustworthy Autonomous Intelligence

Published on May 8
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Abstract

Safactory presents a unified framework for developing trustworthy autonomous intelligence through integrated simulation, data management, and evolutionary platforms.

AI-generated summary

As large models evolve from conversational assistants into autonomous agents, challenges increasingly arise from long-horizon decision making, tool use, and real environment interaction. Existing agenticinfrastructure remain fragmented across evaluation, data management, and agent evolution, making it difficult to discover risks systematically and improve models in a continuous closed loop. In this report, we present Safactory, a scalable agent factory for trustworthy autonomous intelligence. Safactory integrates three tightly coupled platforms: a Parallel Simulation Platform for trajectory generation, a Trustworthy Data Platform for trajectory storage and experience extraction, and an Autonomous Evolution Platform for asynchronous reinforcement learning and on-policy distillation. As far as we know, Safactory is the first framework to propose a unified evolutionary pipeline for next-generation trustworthy autonomous intelligence.

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