How does the parameter shift differentiator facilitate the training of quantum machine learning models in TensorFlow Quantum?
Tuesday, 11 June 2024 by EITCA Academy
The parameter shift differentiator is a technique used to facilitate the training of quantum machine learning models, particularly within the TensorFlow Quantum (TFQ) framework. This method is important for enabling gradient-based optimization, which is a cornerstone of training processes in machine learning, including quantum machine learning models. Understanding Parameter Shift Differentiator The parameter shift rule