ProjectQSimulator¶
- class ProjectQSimulator(wires=1, shots=None, **kwargs)[source]¶
Bases:
_ProjectQDevice
A PennyLane
projectq.simulator
device for the ProjectQ Simulator backend.- Parameters
wires (int or Iterable[Number, str]]) – Number of subsystems represented by the device, or iterable that contains unique labels for the subsystems as numbers (i.e.,
[-1, 0, 2]
) or strings (['ancilla', 'q1', 'q2']
).shots (None, int) – How many times the circuit should be evaluated (or sampled) to estimate the expectation values. Defaults to
None
if not specified, which means that the device returns analytical results.
- Keyword Arguments
gate_fusion (bool) – If True, operations are cached and only executed once a certain number of operations has been reached (only has an effect for the c++ simulator).
rnd_seed (int) – Random seed (uses random.randint(0, 4294967295) by default).
verbose (bool) – If True, log messages are printed and exceptions are more verbose.
This device can, for example, be instantiated from PennyLane as follows:
import pennylane as qml dev = qml.device('projectq.simulator', wires=XXX)
- Supported PennyLane Operations:
pennylane.PauliX
,pennylane.PauliY
,pennylane.PauliZ
,pennylane.CNOT
,pennylane.CZ
,pennylane.SWAP
,pennylane.RX
,pennylane.RY
,pennylane.RZ
,pennylane.PhaseShift
,pennylane.Hadamard
,pennylane.Rot
,pennylane.QubitUnitary
,pennylane.BasisState
,pennylane_pq.S
,pennylane_pq.T
,- Supported PennyLane observables:
pennylane.PauliX
,pennylane.PauliY
,pennylane.PauliZ
,pennylane.Hadamard
,pennylane.Identity
- Extra Operations:
Attributes
Whether shots is None or not.
Number of times this device is executed by the evaluation of QNodes running on this device
The observables to be measured and returned.
Get the supported set of observables.
The operation queue to be applied.
Get the supported set of operations.
Mapping from free parameter index to the list of
Operations
in the device queue that depend on it.Returns the shot vector, a sparse representation of the shot sequence used by the device when evaluating QNodes.
Number of circuit evaluations/random samples used to estimate expectation values of observables
Returns the stopping condition for the device.
Ordered dictionary that defines the map from user-provided wire labels to the wire labels used on this device
All wires that can be addressed on this device
- analytic¶
Whether shots is None or not. Kept for backwards compatability.
- author = 'Christian Gogolin and Xanadu'¶
- name = 'ProjectQ PennyLane plugin'¶
- num_executions¶
Number of times this device is executed by the evaluation of QNodes running on this device
- Returns
number of executions
- Return type
int
- obs_queue¶
The observables to be measured and returned.
Note that this property can only be accessed within the execution context of
execute()
.- Raises
ValueError – if outside of the execution context
- Returns
list[~.operation.Observable]
- observables¶
Get the supported set of observables.
- Returns
the set of PennyLane observable names the device supports
- Return type
set[str]
- op_queue¶
The operation queue to be applied.
Note that this property can only be accessed within the execution context of
execute()
.- Raises
ValueError – if outside of the execution context
- Returns
list[~.operation.Operation]
- operations¶
Get the supported set of operations.
- Returns
the set of PennyLane operation names the device supports
- Return type
set[str]
- parameters¶
Mapping from free parameter index to the list of
Operations
in the device queue that depend on it.Note that this property can only be accessed within the execution context of
execute()
.- Raises
ValueError – if outside of the execution context
- Returns
the mapping
- Return type
dict[int->list[ParameterDependency]]
- pennylane_requires = '>=0.15.0'¶
- plugin_version = '0.34.0'¶
- short_name = 'projectq.simulator'¶
- shot_vector¶
Returns the shot vector, a sparse representation of the shot sequence used by the device when evaluating QNodes.
Example
>>> dev = qml.device("default.qubit.legacy", wires=2, shots=[3, 1, 2, 2, 2, 2, 6, 1, 1, 5, 12, 10, 10]) >>> dev.shots 57 >>> dev.shot_vector [ShotCopies(3 shots x 1), ShotCopies(1 shots x 1), ShotCopies(2 shots x 4), ShotCopies(6 shots x 1), ShotCopies(1 shots x 2), ShotCopies(5 shots x 1), ShotCopies(12 shots x 1), ShotCopies(10 shots x 2)]
The sparse representation of the shot sequence is returned, where tuples indicate the number of times a shot integer is repeated.
- Type
list[ShotCopies]
- shots¶
Number of circuit evaluations/random samples used to estimate expectation values of observables
- stopping_condition¶
Returns the stopping condition for the device. The returned function accepts a queuable object (including a PennyLane operation and observable) and returns
True
if supported by the device.- Type
.BooleanFn
- version = '0.4.2'¶
- wire_map¶
Ordered dictionary that defines the map from user-provided wire labels to the wire labels used on this device
- wires¶
All wires that can be addressed on this device
Methods
apply
(operation, wires, par)Apply a quantum operation.
batch_execute
(circuits)Execute a batch of quantum circuits on the device.
batch_transform
(circuit)Apply a differentiable batch transform for preprocessing a circuit prior to execution.
Get the capabilities of this device class.
check_validity
(queue, observables)Checks whether the operations and observables in queue are all supported by the device.
custom_expand
(fn)Register a custom expansion function for the device.
default_expand_fn
(circuit[, max_expansion])Method for expanding or decomposing an input circuit.
define_wire_map
(wires)Create the map from user-provided wire labels to the wire labels used by the device.
execute
(queue, observables[, parameters])Execute a queue of quantum operations on the device and then measure the given observables.
execute_and_gradients
(circuits[, method])Execute a batch of quantum circuits on the device, and return both the results and the gradients.
The device execution context used during calls to
execute()
.expand_fn
(circuit[, max_expansion])Method for expanding or decomposing an input circuit.
expval
(observable, wires, par)Retrieve the requested observable expectation value.
filter_kwargs_for_backend
(kwargs)Filter the given kwargs for those relevant for the respective device/backend.
gradients
(circuits[, method])Return the gradients of a batch of quantum circuits on the device.
map_wires
(wires)Map the wire labels of wires using this device's wire map.
order_wires
(subset_wires)Given some subset of device wires return a Wires object with the same wires; sorted according to the device wire map.
Called during
execute()
after the individual operations have been executed.Deallocate the qubits after expectation values have been retrieved.
Called during
execute()
before the individual operations are executed.Flush the device before retrieving observable measurements.
probability
([wires])Return the (marginal) probability of each computational basis state from the last run of the device.
reset
()Reset/initialize the device by initializing the backend and engine, and allocating qubits.
sample
(observable, wires, par)Return a sample of an observable.
supports_observable
(observable)Checks if an observable is supported by this device. Raises a ValueError,
supports_operation
(operation)Checks if an operation is supported by this device.
var
(observable, wires, par)Retrieve the requested observable variance.
- apply(operation, wires, par)¶
Apply a quantum operation.
For plugin developers: this function should apply the operation on the device.
- Parameters
operation (str) – name of the operation
wires (Sequence[int]) – subsystems the operation is applied on
par (tuple) – parameters for the operation
- batch_execute(circuits)¶
Execute a batch of quantum circuits on the device.
The circuits are represented by tapes, and they are executed one-by-one using the device’s
execute
method. The results are collected in a list.For plugin developers: This function should be overwritten if the device can efficiently run multiple circuits on a backend, for example using parallel and/or asynchronous executions.
- Parameters
circuits (list[.tape.QuantumTape]) – circuits to execute on the device
- Returns
list of measured value(s)
- Return type
list[array[float]]
- batch_transform(circuit: QuantumTape)¶
Apply a differentiable batch transform for preprocessing a circuit prior to execution. This method is called directly by the QNode, and should be overwritten if the device requires a transform that generates multiple circuits prior to execution.
By default, this method contains logic for generating multiple circuits, one per term, of a circuit that terminates in
expval(H)
, if the underlying device does not support Hamiltonian expectation values, or if the device requires finite shots.Warning
This method will be tracked by autodifferentiation libraries, such as Autograd, JAX, TensorFlow, and Torch. Please make sure to use
qml.math
for autodiff-agnostic tensor processing if required.- Parameters
circuit (.QuantumTape) – the circuit to preprocess
- Returns
Returns a tuple containing the sequence of circuits to be executed, and a post-processing function to be applied to the list of evaluated circuit results.
- Return type
tuple[Sequence[.QuantumTape], callable]
- classmethod capabilities()¶
Get the capabilities of this device class.
Inheriting classes that change or add capabilities must override this method, for example via
@classmethod def capabilities(cls): capabilities = super().capabilities().copy() capabilities.update( supports_a_new_capability=True, ) return capabilities
- Returns
results
- Return type
dict[str->*]
- check_validity(queue, observables)¶
Checks whether the operations and observables in queue are all supported by the device.
- Parameters
queue (Iterable[Operation]) – quantum operation objects which are intended to be applied on the device
observables (Iterable[Observable]) – observables which are intended to be evaluated on the device
- Raises
DeviceError – if there are operations in the queue or observables that the device does not support
- custom_expand(fn)¶
Register a custom expansion function for the device.
Example
dev = qml.device("default.qubit.legacy", wires=2) @dev.custom_expand def my_expansion_function(self, tape, max_expansion=10): ... # can optionally call the default device expansion tape = self.default_expand_fn(tape, max_expansion=max_expansion) return tape
The custom device expansion function must have arguments
self
(the device object),tape
(the input circuit to transform and execute), andmax_expansion
(the number of times the circuit should be expanded).The default
default_expand_fn()
method of the original device may be called. It is highly recommended to call this before returning, to ensure that the expanded circuit is supported on the device.
- default_expand_fn(circuit, max_expansion=10)¶
Method for expanding or decomposing an input circuit. This method should be overwritten if custom expansion logic is required.
By default, this method expands the tape if:
state preparation operations are called mid-circuit,
nested tapes are present,
any operations are not supported on the device, or
multiple observables are measured on the same wire.
- Parameters
circuit (.QuantumTape) – the circuit to expand.
max_expansion (int) – The number of times the circuit should be expanded. Expansion occurs when an operation or measurement is not supported, and results in a gate decomposition. If any operations in the decomposition remain unsupported by the device, another expansion occurs.
- Returns
The expanded/decomposed circuit, such that the device will natively support all operations.
- Return type
.QuantumTape
- define_wire_map(wires)¶
Create the map from user-provided wire labels to the wire labels used by the device.
The default wire map maps the user wire labels to wire labels that are consecutive integers.
However, by overwriting this function, devices can specify their preferred, non-consecutive and/or non-integer wire labels.
- Parameters
wires (Wires) – user-provided wires for this device
- Returns
dictionary specifying the wire map
- Return type
OrderedDict
Example
>>> dev = device('my.device', wires=['b', 'a']) >>> dev.wire_map() OrderedDict( [(<Wires = ['a']>, <Wires = [0]>), (<Wires = ['b']>, <Wires = [1]>)])
- execute(queue, observables, parameters=None, **kwargs)¶
Execute a queue of quantum operations on the device and then measure the given observables.
For plugin developers: Instead of overwriting this, consider implementing a suitable subset of
pre_apply()
,apply()
,post_apply()
,pre_measure()
,expval()
,var()
,sample()
,post_measure()
, andexecution_context()
.- Parameters
queue (Iterable[Operation]) – operations to execute on the device
observables (Iterable[Observable]) – observables to measure and return
parameters (dict[int, list[ParameterDependency]]) – Mapping from free parameter index to the list of
Operations
(in the queue) that depend on it.
- Keyword Arguments
return_native_type (bool) – If True, return the result in whatever type the device uses internally, otherwise convert it into array[float]. Default: False.
- Raises
QuantumFunctionError – if the value of
return_type
is not supported- Returns
measured value(s)
- Return type
array[float]
- execute_and_gradients(circuits, method='jacobian', **kwargs)¶
Execute a batch of quantum circuits on the device, and return both the results and the gradients.
The circuits are represented by tapes, and they are executed one-by-one using the device’s
execute
method. The results and the corresponding Jacobians are collected in a list.For plugin developers: This method should be overwritten if the device can efficiently run multiple circuits on a backend, for example using parallel and/or asynchronous executions, and return both the results and the Jacobians.
- Parameters
circuits (list[.tape.QuantumTape]) – circuits to execute on the device
method (str) – the device method to call to compute the Jacobian of a single circuit
**kwargs – keyword argument to pass when calling
method
- Returns
Tuple containing list of measured value(s) and list of Jacobians. Returned Jacobians should be of shape
(output_shape, num_params)
.- Return type
tuple[list[array[float]], list[array[float]]]
- execution_context()¶
The device execution context used during calls to
execute()
.You can overwrite this function to return a context manager in case your quantum library requires that; all operations and method calls (including
apply()
andexpval()
) are then evaluated within the context of this context manager (see the source ofexecute()
for more details).
- expand_fn(circuit, max_expansion=10)¶
Method for expanding or decomposing an input circuit. Can be the default or a custom expansion method, see
Device.default_expand_fn()
andDevice.custom_expand()
for more details.- Parameters
circuit (.QuantumTape) – the circuit to expand.
max_expansion (int) – The number of times the circuit should be expanded. Expansion occurs when an operation or measurement is not supported, and results in a gate decomposition. If any operations in the decomposition remain unsupported by the device, another expansion occurs.
- Returns
The expanded/decomposed circuit, such that the device will natively support all operations.
- Return type
.QuantumTape
- filter_kwargs_for_backend(kwargs)¶
Filter the given kwargs for those relevant for the respective device/backend.
- gradients(circuits, method='jacobian', **kwargs)¶
Return the gradients of a batch of quantum circuits on the device.
The gradient method
method
is called sequentially for each circuit, and the corresponding Jacobians are collected in a list.For plugin developers: This method should be overwritten if the device can efficiently compute the gradient of multiple circuits on a backend, for example using parallel and/or asynchronous executions.
- Parameters
circuits (list[.tape.QuantumTape]) – circuits to execute on the device
method (str) – the device method to call to compute the Jacobian of a single circuit
**kwargs – keyword argument to pass when calling
method
- Returns
List of Jacobians. Returned Jacobians should be of shape
(output_shape, num_params)
.- Return type
list[array[float]]
- map_wires(wires)¶
Map the wire labels of wires using this device’s wire map.
- Parameters
wires (Wires) – wires whose labels we want to map to the device’s internal labelling scheme
- Returns
wires with new labels
- Return type
Wires
- order_wires(subset_wires)¶
Given some subset of device wires return a Wires object with the same wires; sorted according to the device wire map.
- Parameters
subset_wires (Wires) – The subset of device wires (in any order).
- Raises
ValueError – Could not find some or all subset wires subset_wires in device wires device_wires.
- Returns
a new Wires object containing the re-ordered wires set
- Return type
ordered_wires (Wires)
- post_measure()¶
Deallocate the qubits after expectation values have been retrieved.
- probability(wires=None)¶
Return the (marginal) probability of each computational basis state from the last run of the device.
- Parameters
wires (Sequence[int]) – Sequence of wires to return marginal probabilities for. Wires not provided are traced out of the system.
- Returns
Dictionary mapping a tuple representing the state to the resulting probability. The dictionary should be sorted such that the state tuples are in lexicographical order.
- Return type
OrderedDict[tuple, float]
- reset()[source]¶
Reset/initialize the device by initializing the backend and engine, and allocating qubits.
- sample(observable, wires, par)¶
Return a sample of an observable.
The number of samples is determined by the value of
Device.shots
, which can be directly modified.Note: all arguments support _lists_, which indicate a tensor product of observables.
- Parameters
observable (str or list[str]) – name of the observable(s)
wires (Wires) – wires the observable(s) is to be measured on
par (tuple or list[tuple]]) – parameters for the observable(s)
- Raises
NotImplementedError – if the device does not support sampling
- Returns
samples in an array of dimension
(shots,)
- Return type
array[float]
- supports_observable(observable)¶
- Checks if an observable is supported by this device. Raises a ValueError,
if not a subclass or string of an Observable was passed.
- Parameters
observable (type or str) – observable to be checked
- Raises
ValueError – if observable is not a
Observable
class or string- Returns
True
iff supplied observable is supported- Return type
bool
- supports_operation(operation)¶
Checks if an operation is supported by this device.
- Parameters
operation (type or str) – operation to be checked
- Raises
ValueError – if operation is not a
Operation
class or string- Returns
True
if supplied operation is supported- Return type
bool