Learning GenAI via SOTA Papers - Explainer
Title: Scaling Self-Evolving Agents via Parametric Memory Source: http://arxiv.org/abs/2606.04536v1 Summary: This paper introduces a foundational framework for self-evolving agents that moves beyond static prompts by using online LoRA updates to adapt the model's parametric memory within a single episode. It establishes a new architectural paradigm where agents can genuinely learn and evolve their policy from experience, overcoming the limitations of frozen-weight architectures.
80 episodios
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