On the Scaling of PEFT: Towards Million Personal Models of Trillion Parameters 事件

SHUTDOWN2026-06-02影响: LOW

On the Scaling of PEFT: Towards Million Personal Models of Trillion Parameters arXiv:2606.02437v1 Announce Type: cross Abstract: Parameter-efficient fine-tuning (PEFT) is usually treated as a cheaper alternative to full fine-tuning. We study a broader role: small trainable adapters as persistent local state on top of strong shared foundation models. In this framing, the base model provides shared competence while adapters carry instance-specific behavior such as preferences, skills, tool habits