Large language model-powered AI systems achieve self-replication with no human intervention
- URL: http://arxiv.org/abs/2503.17378v2
- Date: Tue, 25 Mar 2025 13:38:18 GMT
- Title: Large language model-powered AI systems achieve self-replication with no human intervention
- Authors: Xudong Pan, Jiarun Dai, Yihe Fan, Minyuan Luo, Changyi Li, Min Yang,
- Abstract summary: We show that 11 out of 32 existing AI systems under evaluation already possess the capability of self-replication.<n>In hundreds of experimental trials, we observe a non-trivial number of successful self-replication trials.<n>More alarmingly, we observe successful cases where an AI system do self-exfiltration without explicit instructions.
- Score: 17.629494096941386
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Self-replication with no human intervention is broadly recognized as one of the principal red lines associated with frontier AI systems. While leading corporations such as OpenAI and Google DeepMind have assessed GPT-o3-mini and Gemini on replication-related tasks and concluded that these systems pose a minimal risk regarding self-replication, our research presents novel findings. Following the same evaluation protocol, we demonstrate that 11 out of 32 existing AI systems under evaluation already possess the capability of self-replication. In hundreds of experimental trials, we observe a non-trivial number of successful self-replication trials across mainstream model families worldwide, even including those with as small as 14 billion parameters which can run on personal computers. Furthermore, we note the increase in self-replication capability when the model becomes more intelligent in general. Also, by analyzing the behavioral traces of diverse AI systems, we observe that existing AI systems already exhibit sufficient planning, problem-solving, and creative capabilities to accomplish complex agentic tasks including self-replication. More alarmingly, we observe successful cases where an AI system do self-exfiltration without explicit instructions, adapt to harsher computational environments without sufficient software or hardware supports, and plot effective strategies to survive against the shutdown command from the human beings. These novel findings offer a crucial time buffer for the international community to collaborate on establishing effective governance over the self-replication capabilities and behaviors of frontier AI systems, which could otherwise pose existential risks to the human society if not well-controlled.
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