Quantum Neural Networks (QNNs) are not deep learning models. They are parameterized quantum circuits that process information via quantum state superposition and entanglement, not layered nonlinear transformations on floating-point vectors. This architectural difference makes them incapable of generalizing from large datasets like a PyTorch or TensorFlow model.














