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pyquilforazurequantum 0.0.3
pyquil-for-azure-quantum
This library allows you to use pyQuil to run programs on Azure Quantum against Rigetti targets. Internally, it leverages the azure-quantum package.
Usage
Generally, you use pyQuil normally, with a few differences:
Instead of pyquil.get_qc(), you will use either pyquil_azure_quantum.get_qvm() or pyquil_azure_quantum.get_qpu().
You do not need to have qvm or quilc running in order to run programs through pyquil_azure_quantum. You may still run them if you wish to run QVM locally instead of passing through Azure or if you wish to precompile your programs (e.g., to inspect the exact Quil that will run).
You do not need a QCS account or credentials unless you wish to manually inspect the details of the QPU (e.g., list all qubits).
You must have these environment variables set:
AZURE_QUANTUM_SUBSCRIPTION_ID: The Azure subscription ID where the Quantum Workspace is located.
AZURE_QUANTUM_WORKSPACE_RG: The Azure resource group where the Quantum Workspace is located.
AZURE_QUANTUM_WORKSPACE_NAME: The name of the Quantum Workspace.
AZURE_QUANTUM_WORKSPACE_LOCATION: The region where the Quantum Workspace is located.
You may set environment variables to authenticate with Azure. If you do not, a browser will open to the Azure portal to authenticate.
Whenever possible, you should prefer using AzureQuantumComputer.run_batch() over Program.write_memory(); AzureQuantumComputer.run() to run programs which have multiple parameters. Calling write_memory() followed by run() will still work but will be much slower than running a batch of parameters all at once.
Examples
1. Leveraging Hosted QVM and quilc
With this program, you do not need to run qvm nor quilc locally in order to leverage them, as they can run through Azure Quantum.
from pyquil_for_azure_quantum import get_qpu, get_qvm
from pyquil.gates import CNOT, MEASURE, H
from pyquil.quil import Program
from pyquil.quilbase import Declare
program = Program(
Declare("ro", "BIT", 2),
H(0),
CNOT(0, 1),
MEASURE(0, ("ro", 0)),
MEASURE(1, ("ro", 1)),
).wrap_in_numshots_loop(1000)
qpu = get_qpu("Aspen-11")
qvm = get_qvm()
exe = qpu.compile(program) # This does not run quilc yet.
results = qpu.run(exe) # Quilc will run in the cloud before executing the program.
qvm_results = qvm.run(exe) # This runs the program on QVM in the cloud, not locally.
2. Running quilc Locally
You can optionally run quilc yourself and disable the use of quilc in the cloud.
from pyquil_for_azure_quantum import get_qpu
from pyquil.gates import CNOT, MEASURE, H
from pyquil.quil import Program
from pyquil.quilbase import Declare
program = Program(
Declare("ro", "BIT", 2),
H(0),
CNOT(0, 1),
MEASURE(0, ("ro", 0)),
MEASURE(1, ("ro", 1)),
).wrap_in_numshots_loop(1000)
qpu = get_qpu("Aspen-11")
native_quil = qpu.compiler.quil_to_native_quil(program) # quilc must be running locally to compile
exe = qpu.compile(native_quil, to_native_gates=False) # Skip quilc in the cloud
results = qpu.run(exe)
3. Running Parametrized Circuits in a Batch
When you have a program which should be run across multiple parameters, you can submit all the parameters at once to significantly improve performance.
import numpy as np
from pyquil_for_azure_quantum import get_qpu
from pyquil.gates import MEASURE, RX
from pyquil.quil import Program
from pyquil.quilbase import Declare
from pyquil.quilatom import MemoryReference
program = Program(
Declare("ro", "BIT", 1),
Declare("theta", "REAL", 1),
RX(MemoryReference("theta"), 0),
MEASURE(0, ("ro", 0)),
).wrap_in_numshots_loop(1000)
qpu = get_qpu("Aspen-11")
compiled = qpu.compile(program)
memory_map = {"theta": [[0.0], [np.pi], [2 * np.pi]]}
results = qpu.run_batch(compiled, memory_map) # This is a list of results, one for each parameter set.
results_0 = results[0].get_register_map().get("ro")
results_pi = results[1].get_register_map().get("ro")
results_2pi = results[2].get_register_map().get("ro")
Microsoft, Microsoft Azure, and Azure Quantum are trademarks of the Microsoft group of companies.
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