Ajuste Fino Eficiente em Parâmetros (PEFT) é uma técnica no campo da Inteligência Artificial (AI) that focuses on optimizing the performance of pre-trained models while minimizing the number of parameters that need to be adjusted during the fine-tuning process. This approach is particularly valuable in scenarios where recursos computacionais are limited or when the goal is to deploy models on devices with restricted memory and processing power.
Normalmente, o ajuste fino tradicional envolve modificar todos os parâmetros de uma rede neural, which can be resource-intensive and time-consuming. In contrast, PEFT strategically selects a subset of parameters or introduces additional lightweight modules that interact with the pre-trained model. This allows the model to retain the knowledge it has gained during initial training while still adapting to the specific requirements of a new task.
PEFT methods can include techniques such as adapter layers, which are small neural networks added to existing layers, or low-rank adaptations that modify weight matrices efficiently. These methods not only reduce the computational burden but also help in maintaining desempenho do modelo, often leading to faster training times and lower resource consumption.
By employing PEFT, researchers and developers can achieve effective model customization without the overhead associated with full model retraining, making it a key strategy in modern AI deployments, especially for applications requiring rapid adaptation to novos dados ou tarefas.