Quantum Computer Library for Everyone
Project description
blueqat
A Quantum Computing SDK
Version
Tutorial
https://github.com/Blueqat/Blueqat-tutorials
Notice
The backend of blueqat will be changed to tensor network in the near future. Now try specifying the back end as "quimb".
install required
pip install --no-deps -U git+https://github.com/jcmgray/quimb.git@develop autoray
from blueqat import Circuit
Circuit(50).h[:].run(backend="quimb")
Get the single amplitude
Circuit(4).h[:].run(backend="quimb", amplitude="0101")
Get the sample
Circuit(4).h[:].run(backend="quimb", shots=100)
Get the expectation value of hamiltonian
from blueqat.pauli import Z
hamiltonian = 1*Z[0]+1*Z[1]
Circuit(4).x[:].run(backend="quimb", hamiltonian=hamiltonian)
Install
git clone https://github.com/Blueqat/Blueqat
cd Blueqat
pip3 install -e .
or
pip3 install blueqat
Circuit
from blueqat import Circuit
import math
#number of qubit is not specified
c = Circuit()
#if you want to specified the number of qubit
c = Circuit(3) #3qubits
Method Chain
# write as chain
Circuit().h[0].x[0].z[0]
# write in separately
c = Circuit().h[0]
c.x[0].z[0]
Slice
Circuit().z[1:3] # Zgate on 1,2
Circuit().x[:3] # Xgate on (0, 1, 2)
Circuit().h[:] # Hgate on all qubits
Circuit().x[1, 2] # 1qubit gate with comma
Rotation Gate
Circuit().rz(math.pi / 4)[0]
Measurement
Circuit().m[0]
Run() to get state vector
Circuit().h[0].cx[0,1].run()
# => array([0.70710678+0.j, 0.+0.j, 0.+0.j, 0.70710678+0.j])
Run(shots=n)
c = Circuit().h[0].cx[0,1].m[:]
c.run(shots=100)
# => Counter({'00': 48, '11': 52})
State Vector Initialization
Circuit(2).m[:].run(shots=100, initial=np.array([0, 1, 1, 0])/np.sqrt(2))
# => Counter({'10': 51, '01': 49})
Blueqat to QASM
Circuit().h[0].to_qasm()
#OPENQASM 2.0;
#include "qelib1.inc";
#qreg q[1];
#creg c[1];
#h q[0];
Hamiltonian
from blueqat.pauli import *
hamiltonian1 = (1.23 * Z[0] + 4.56 * X[1] * Z[2]) ** 2
hamiltonian2 = (2.46 * Y[0] + 5.55 * Z[1] * X[2] * X[1]) ** 2
hamiltonian = hamiltonian1 + hamiltonian2
print(hamiltonian)
# => 7.5645*I + 5.6088*Z[0]*X[1]*Z[2] + 5.6088*X[1]*Z[2]*Z[0] + 20.793599999999998*X[1]*Z[2]*X[1]*Z[2] + 13.652999999999999*Y[0]*Z[1]*X[2]*X[1] + 13.652999999999999*Z[1]*X[2]*X[1]*Y[0] + 30.8025*Z[1]*X[2]*X[1]*Z[1]*X[2]*X[1]
Simplify the Hamiltonian
hamiltonian = hamiltonian.simplify()
print(hamiltonian)
#=>-2.4444000000000017*I + 27.305999999999997j*Y[0]*Y[1]*X[2] + 11.2176*Z[0]*X[1]*Z[2]
QUBO Hamiltonian
from blueqat.pauli import qubo_bit as q
hamiltonian = -3*q(0)-3*q(1)-3*q(2)-3*q(3)-3*q(4)+2*q(0)*q(1)+2*q(0)*q(2)+2*q(0)*q(3)+2*q(0)*q(4)
print(hamiltonian)
# => -5.5*I + 1.0*Z[1] + 1.0*Z[2] + 1.0*Z[3] + 1.0*Z[4] + 0.5*Z[0]*Z[1] + 0.5*Z[0]*Z[2] + 0.5*Z[0]*Z[3] - 0.5*Z[0] + 0.5*Z[0]*Z[4]
VQE
from blueqat import Circuit
from blueqat.pauli import X, Y, Z, I
from blueqat.vqe import AnsatzBase, Vqe
class OneQubitAnsatz(AnsatzBase):
def __init__(self, hamiltonian):
super().__init__(hamiltonian.to_expr(), 2)
self.step = 1
def get_circuit(self, params):
a, b = params
return Circuit().rx(a)[0].rz(b)[0]
# hamiltonian
h = 1.23 * I - 4.56 * X(0) + 2.45 * Y(0) + 2.34 * Z(0)
result = Vqe(OneQubitAnsatz(h)).run()
print(runner.ansatz.get_energy_sparse(result.circuit))
# => -4.450804074762511
Time Evolution
hamiltonian = [1.0*Z(0), 1.0*X[0]]
a = [term.get_time_evolution() for term in hamiltonian]
time_evolution = Circuit().h[0]
for evo in a:
evo(time_evolution, np.random.rand())
print(time_evolution)
# => Circuit(1).h[0].rz(-1.4543063361067243)[0].h[0].rz(-1.8400416676737137)[0].h[0]
QAOA
from blueqat import vqe
from blueqat.pauli import *
from blueqat.pauli import qubo_bit as q
hamiltonian = q(0)-3*q(1)+2*q(0)*q(1)
#hamiltonian = -0.5*I - Z[0] + 1.0*Z[1] + 0.5*Z[0]*Z[1]
step = 2
result = vqe.Vqe(vqe.QaoaAnsatz(hamiltonian, step)).run()
print(result.most_common(4))
# => (((0, 1), 0.9874053861648978), ((1, 0), 0.00967786055983366), ((0, 0), 0.0014583766376339746), ((1, 1), 0.0014583766376339703))
QAOA Mixer
hamiltonian = q(0)-3*q(1)+2*q(0)*q(1)
step = 2
init = Circuit().h[0].cx[0,1].x[1]
mixer = (X[0]*X[1] + Y[0]*Y[1])*0.5
result = vqe.Vqe(vqe.QaoaAnsatz(hamiltonian, step, init, mixer)).run()
print(result.most_common(4))
# => (((0, 1), 0.9999886003516928), ((1, 0), 1.1399648305716677e-05), ((0, 0), 1.5176327961771419e-31), ((1, 1), 4.006785342235446e-32))
Select Scipy Minimizer
minimizer = vqe.get_scipy_minimizer(method="COBYLA")
result = vqe.Vqe(vqe.QaoaAnsatz(hamiltonian, step), minimizer=minimizer).run()
Circuit Drawing Backend
from blueqat import vqe
from blueqat.pauli import *
from blueqat.pauli import qubo_bit as q
#hamiltonian = q(0)-3*q(1)+2*q(0)*q(1)+3*q(2)*q(3)+q(4)*q(7)
hamiltonian = Z[0]-3*Z[1]+2*Z[0]*Z[1]+3*Z[2]*Z[3]+Z[4]
step = 8
result = vqe.Vqe(vqe.QaoaAnsatz(hamiltonian, step)).run()
result.circuit.run(backend='draw')
Cloud System Connection (API Key is required)
from bqcloud import register_api
api = register_api("Your API Key")
from bqcloud import load_api
api = load_api()
from blueqat import Circuit
from bqcloud import Device
task = api.execute(Circuit().h[0].cx[0, 1], Device.IonQDevice, 10)
#task = api.execute(Circuit().h[0].cx[0, 1], Device.AspenM1, 10)
# Wait 10 sec. If complete, result is returned, otherwise, None is returned.
result = task.wait(timeout=10)
if result:
print(result.shots())
else:
print("timeout")
Photonic Continuous Variable Circuit
Fock basis
Circuit
from blueqat import photonqat as pq
import numpy as np
import matplotlib.pyplot as plt
# mode number = 2, cutoff dimension = 15
F = pq.Fock(2, cutoff = 15)
Applying gate
alpha = (1 + 1j)
r = -0.5
F.D(0, alpha) # Displacement to mode 0
F.S(1, r) # Squeezeng to mode 1
method chain is also available
F.D(0, alpha).S(1, r)
run
F.run()
Plot Wigner function
# Plot Wigner fucntion for mode 0 using matplotlib
(x, p, W) = F.Wigner(0, plot = 'y', xrange = 5.0, prange = 5.0)
Gaussian formula
Circuit
from blueqat import photonqat as pq
import numpy as np
import matplotlib.pyplot as plt
# mode number = 2
G = pq.Gaussian(2)
Applying gate, run the circuit, and plotting Wigner function are also available in same fasion as Fock basis. But there are differences in availavle getes and measurement methods.
Example1: GHZ
from blueqat import Circuit
Circuit().h[0].cx[0,1].cx[1,2].m[:].run(shots=100)
# => Counter({'000': 48, '111': 52})
Document
https://blueqat.readthedocs.io/en/latest/
Contributors
Disclaimer
Copyright 2022 The Blueqat Developers.
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