...The project explores techniques that make it harder for external models to learn from outputs, thereby preserving intellectual property and model uniqueness. It likely introduces methods such as output perturbation, watermarking, or response shaping to prevent accurate imitation. The system is particularly relevant in contexts where models are exposed via APIs and risk being reverse-engineered through repeated querying. Its design reflects growing concerns around model security and competitive advantage in AI systems. It may also include experimental benchmarks to evaluate how resistant a model is to distillation attempts. ...