01Seamless integration with PyTorch, TensorFlow, and JAX for hybrid quantum-classical ML.
02Automatic differentiation of quantum circuits with backpropagation and parameter-shift rules.
03Built-in optimizers and templates for variational quantum circuits and quantum neural networks.
04Hardware-agnostic execution on IBM Quantum, Amazon Braket, Google Cirq, and IonQ.
051 GitHub stars
06Specialized modules for quantum chemistry, including molecular Hamiltonian generation and VQE.