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Builds and trains quantum circuits for computing, machine learning (QNNs, variational classifiers), chemistry (VQE), and algorithms (QAOA). Integrates PyTorch/JAX/TensorFlow; runs on simulators/hardware.
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PennyLane is a quantum computing library that enables training quantum computers like neural networks. It provides automatic differentiation of quantum circuits, device-independent programming, and seamless integration with classical machine learning frameworks.
Builds and trains quantum circuits for computing, machine learning (QNNs, variational classifiers), chemistry (VQE), and algorithms (QAOA). Integrates PyTorch/JAX/TensorFlow; runs on simulators/hardware.
Guides PennyLane usage for quantum ML: training circuits via gradients, hybrid quantum-classical models, VQE/QAOA algorithms, device portability, PyTorch/JAX integration.
Builds quantum circuits with Qiskit, optimizes for hardware, executes on simulators or real quantum computers (IBM Quantum, IonQ, Amazon Braket), and analyzes results.
Share bugs, ideas, or general feedback.
PennyLane is a quantum computing library that enables training quantum computers like neural networks. It provides automatic differentiation of quantum circuits, device-independent programming, and seamless integration with classical machine learning frameworks.
Install using uv:
uv pip install pennylane
For quantum hardware access, install device plugins:
# IBM Quantum
uv pip install pennylane-qiskit
# Amazon Braket
uv pip install amazon-braket-pennylane-plugin
# Google Cirq
uv pip install pennylane-cirq
# Rigetti Forest
uv pip install pennylane-rigetti
# IonQ
uv pip install pennylane-ionq
Build a quantum circuit and optimize its parameters:
import pennylane as qml
from pennylane import numpy as np
# Create device
dev = qml.device('default.qubit', wires=2)
# Define quantum circuit
@qml.qnode(dev)
def circuit(params):
qml.RX(params[0], wires=0)
qml.RY(params[1], wires=1)
qml.CNOT(wires=[0, 1])
return qml.expval(qml.PauliZ(0))
# Optimize parameters
opt = qml.GradientDescentOptimizer(stepsize=0.1)
params = np.array([0.1, 0.2], requires_grad=True)
for i in range(100):
params = opt.step(circuit, params)
Build circuits with gates, measurements, and state preparation. See references/quantum_circuits.md for:
Create hybrid quantum-classical models. See references/quantum_ml.md for:
Simulate molecules and compute ground state energies. See references/quantum_chemistry.md for:
Execute on simulators or quantum hardware. See references/devices_backends.md for:
Train quantum circuits with various optimizers. See references/optimization.md for:
Leverage templates, transforms, and compilation. See references/advanced_features.md for:
# 1. Define ansatz
@qml.qnode(dev)
def classifier(x, weights):
# Encode data
qml.AngleEmbedding(x, wires=range(4))
# Variational layers
qml.StronglyEntanglingLayers(weights, wires=range(4))
return qml.expval(qml.PauliZ(0))
# 2. Train
opt = qml.AdamOptimizer(stepsize=0.01)
weights = np.random.random((3, 4, 3)) # 3 layers, 4 wires
for epoch in range(100):
for x, y in zip(X_train, y_train):
weights = opt.step(lambda w: (classifier(x, w) - y)**2, weights)
from pennylane import qchem
# 1. Build Hamiltonian
symbols = ['H', 'H']
coords = np.array([0.0, 0.0, 0.0, 0.0, 0.0, 0.74])
H, n_qubits = qchem.molecular_hamiltonian(symbols, coords)
# 2. Define ansatz
@qml.qnode(dev)
def vqe_circuit(params):
qml.BasisState(qchem.hf_state(2, n_qubits), wires=range(n_qubits))
qml.UCCSD(params, wires=range(n_qubits))
return qml.expval(H)
# 3. Optimize
opt = qml.AdamOptimizer(stepsize=0.1)
params = np.zeros(10, requires_grad=True)
for i in range(100):
params, energy = opt.step_and_cost(vqe_circuit, params)
print(f"Step {i}: Energy = {energy:.6f} Ha")
# Same circuit, different backends
circuit_def = lambda dev: qml.qnode(dev)(circuit_function)
# Test on simulator
dev_sim = qml.device('default.qubit', wires=4)
result_sim = circuit_def(dev_sim)(params)
# Run on quantum hardware
dev_hw = qml.device('qiskit.ibmq', wires=4, backend='ibmq_manila')
result_hw = circuit_def(dev_hw)(params)
For comprehensive coverage of specific topics, consult the reference files:
references/getting_started.md - Installation, basic concepts, first stepsreferences/quantum_circuits.md - Gates, measurements, circuit patternsreferences/quantum_ml.md - Hybrid models, framework integration, QNNsreferences/quantum_chemistry.md - VQE, molecular Hamiltonians, chemistry workflowsreferences/devices_backends.md - Simulators, hardware plugins, device configurationreferences/optimization.md - Optimizers, gradients, variational algorithmsreferences/advanced_features.md - Templates, transforms, JIT compilation, noisedefault.qubit before deploying to hardwareqml.specs() to analyze circuit complexity