ParamGraphEmbed¶
- 
class 
ParamGraphEmbed(params, A, n_mean, wires)[source]¶ Bases:
pennylane.operation.CVOperationA parametrized embedding of a graph into GBS.
Any undirected graph can be encoded using its symmetric adjacency matrix. The adjacency matrix is first rescaled so that the corresponding GBS device has an initial mean number of photons. The adjacency matrix \(A\) may then be varied using parameters \(\mathbf{w}\) such that
\[A \rightarrow WAW\]with \(W\) a diagonal matrix set by the parameters \(\sqrt{\mathbf{w}}\). The initial choice for the parameters can be \(\mathbf{w} = 1\) so that \(W = \mathbb{I}\).
Note
This operation is only compatible with the
StrawberryFieldsGBSdevice.Details:
Number of wires: All
Number of parameters: 3
- Parameters
 params (array) – variable parameters
A (array) – initial adjacency matrix
n_mean (float) – initial mean number of photons
wires (Sequence[int] or int) – the wire(s) the operation acts on
Attributes
Arithmetic depth of the operator.
Holdover from when in-place inversion changed then name.
The basis of an operation, or for controlled gates, of the target operation.
Batch size of the operator if it is used with broadcasted parameters.
Control wires of the operator.
Gradient computation method.
Gradient recipe for the parameter-shift method.
Integer hash that uniquely represents the operator.
Dictionary of non-trainable variables that this operation depends on.
Custom string to label a specific operator instance.
This property determines if an operator is hermitian.
String for the name of the operator.
Number of dimensions per trainable parameter of the operator.
Returns the frequencies for each operator parameter with respect to an expectation value of the form \(\langle \psi | U(\mathbf{p})^\dagger \hat{O} U(\mathbf{p})|\psi\rangle\).
Trainable parameters that the operator depends on.
Wires that the operator acts on.
- 
arithmetic_depth¶ Arithmetic depth of the operator.
- 
base_name¶ Holdover from when in-place inversion changed then name. To be removed.
- 
basis= None¶ The basis of an operation, or for controlled gates, of the target operation. If not
None, should take a value of"X","Y", or"Z".For example,
XandCNOThavebasis = "X", whereasControlledPhaseShiftandRZhavebasis = "Z".- Type
 str or None
- 
batch_size¶ Batch size of the operator if it is used with broadcasted parameters.
The
batch_sizeis determined based onndim_paramsand the provided parameters for the operator. If (some of) the latter have an additional dimension, and this dimension has the same size for all parameters, its size is the batch size of the operator. If no parameter has an additional dimension, the batch size isNone.- Returns
 Size of the parameter broadcasting dimension if present, else
None.- Return type
 int or None
- 
control_wires¶ Control wires of the operator.
For operations that are not controlled, this is an empty
Wiresobject of length0.- Returns
 The control wires of the operation.
- Return type
 Wires
- 
do_check_domain= False¶ 
- 
grad_method¶ Gradient computation method.
'A': analytic differentiation using the parameter-shift method.'F': finite difference numerical differentiation.None: the operation may not be differentiated.
Default is
'F', orNoneif the Operation has zero parameters.
- 
grad_recipe= None¶ Gradient recipe for the parameter-shift method.
This is a tuple with one nested list per operation parameter. For parameter \(\phi_k\), the nested list contains elements of the form \([c_i, a_i, s_i]\) where \(i\) is the index of the term, resulting in a gradient recipe of
\[\frac{\partial}{\partial\phi_k}f = \sum_{i} c_i f(a_i \phi_k + s_i).\]If
None, the default gradient recipe containing the two terms \([c_0, a_0, s_0]=[1/2, 1, \pi/2]\) and \([c_1, a_1, s_1]=[-1/2, 1, -\pi/2]\) is assumed for every parameter.- Type
 tuple(Union(list[list[float]], None)) or None
- 
has_adjoint= False¶ 
- 
has_decomposition= False¶ 
- 
has_diagonalizing_gates= False¶ 
- 
has_matrix= False¶ 
- 
hash¶ Integer hash that uniquely represents the operator.
- Type
 int
- 
hyperparameters¶ Dictionary of non-trainable variables that this operation depends on.
- Type
 dict
- 
id¶ Custom string to label a specific operator instance.
- 
is_hermitian¶ This property determines if an operator is hermitian.
- 
name¶ String for the name of the operator.
- 
ndim_params¶ Number of dimensions per trainable parameter of the operator.
By default, this property returns the numbers of dimensions of the parameters used for the operator creation. If the parameter sizes for an operator subclass are fixed, this property can be overwritten to return the fixed value.
- Returns
 Number of dimensions for each trainable parameter.
- Return type
 tuple
- 
num_params= 3¶ 
- 
num_wires= 0¶ 
- 
par_domain= 'A'¶ 
- 
parameter_frequencies¶ Returns the frequencies for each operator parameter with respect to an expectation value of the form \(\langle \psi | U(\mathbf{p})^\dagger \hat{O} U(\mathbf{p})|\psi\rangle\).
These frequencies encode the behaviour of the operator \(U(\mathbf{p})\) on the value of the expectation value as the parameters are modified. For more details, please see the
pennylane.fouriermodule.- Returns
 Tuple of frequencies for each parameter. Note that only non-negative frequency values are returned.
- Return type
 list[tuple[int or float]]
Example
>>> op = qml.CRot(0.4, 0.1, 0.3, wires=[0, 1]) >>> op.parameter_frequencies [(0.5, 1), (0.5, 1), (0.5, 1)]
For operators that define a generator, the parameter frequencies are directly related to the eigenvalues of the generator:
>>> op = qml.ControlledPhaseShift(0.1, wires=[0, 1]) >>> op.parameter_frequencies [(1,)] >>> gen = qml.generator(op, format="observable") >>> gen_eigvals = qml.eigvals(gen) >>> qml.gradients.eigvals_to_frequencies(tuple(gen_eigvals)) (1.0,)
For more details on this relationship, see
eigvals_to_frequencies().
- 
parameters¶ Trainable parameters that the operator depends on.
- 
supports_heisenberg= False¶ 
- 
supports_parameter_shift= False¶ 
- 
wires¶ Wires that the operator acts on.
- Returns
 wires
- Return type
 Wires
Methods
adjoint()Create an operation that is the adjoint of this one.
compute_decomposition(*params[, wires])Representation of the operator as a product of other operators (static method).
compute_diagonalizing_gates(*params, wires, …)Sequence of gates that diagonalize the operator in the computational basis (static method).
compute_eigvals(*params, **hyperparams)Eigenvalues of the operator in the computational basis (static method).
compute_matrix(*params, **hyperparams)Representation of the operator as a canonical matrix in the computational basis (static method).
compute_sparse_matrix(*params, **hyperparams)Representation of the operator as a sparse matrix in the computational basis (static method).
Representation of the operator as a product of other operators.
Sequence of gates that diagonalize the operator in the computational basis.
eigvals()Eigenvalues of the operator in the computational basis.
expand()Returns a tape that has recorded the decomposition of the operator.
Generator of an operator that is in single-parameter-form.
heisenberg_expand(U, wire_order)Expand the given local Heisenberg-picture array into a full-system one.
heisenberg_pd(idx)Partial derivative of the Heisenberg picture transform matrix.
heisenberg_tr(wire_order[, inverse])Heisenberg picture representation of the linear transformation carried out by the gate at current parameter values.
label([decimals, base_label, cache])A customizable string representation of the operator.
map_wires(wire_map)Returns a copy of the current operator with its wires changed according to the given wire map.
matrix([wire_order])Representation of the operator as a matrix in the computational basis.
pow(z)A list of new operators equal to this one raised to the given power.
queue([context])Append the operator to the Operator queue.
simplify()Reduce the depth of nested operators to the minimum.
The parameters required to implement a single-qubit gate as an equivalent
Rotgate, up to a global phase.sparse_matrix([wire_order])Representation of the operator as a sparse matrix in the computational basis.
terms()Representation of the operator as a linear combination of other operators.
validate_subspace(subspace)Validate the subspace for qutrit operations.
- 
adjoint() → pennylane.operation.Operator¶ Create an operation that is the adjoint of this one.
Adjointed operations are the conjugated and transposed version of the original operation. Adjointed ops are equivalent to the inverted operation for unitary gates.
- Returns
 The adjointed operation.
- 
static 
compute_decomposition(*params, wires=None, **hyperparameters)¶ Representation of the operator as a product of other operators (static method).
\[O = O_1 O_2 \dots O_n.\]Note
Operations making up the decomposition should be queued within the
compute_decompositionmethod.See also
decomposition().- Parameters
 params (list) – trainable parameters of the operator, as stored in the
parametersattributewires (Iterable[Any], Wires) – wires that the operator acts on
hyperparams (dict) – non-trainable hyperparameters of the operator, as stored in the
hyperparametersattribute
- Returns
 decomposition of the operator
- Return type
 list[Operator]
- 
static 
compute_diagonalizing_gates(*params, wires, **hyperparams)¶ Sequence of gates that diagonalize the operator in the computational basis (static method).
Given the eigendecomposition \(O = U \Sigma U^{\dagger}\) where \(\Sigma\) is a diagonal matrix containing the eigenvalues, the sequence of diagonalizing gates implements the unitary \(U^{\dagger}\).
The diagonalizing gates rotate the state into the eigenbasis of the operator.
See also
diagonalizing_gates().- Parameters
 params (list) – trainable parameters of the operator, as stored in the
parametersattributewires (Iterable[Any], Wires) – wires that the operator acts on
hyperparams (dict) – non-trainable hyperparameters of the operator, as stored in the
hyperparametersattribute
- Returns
 list of diagonalizing gates
- Return type
 list[Operator]
- 
static 
compute_eigvals(*params, **hyperparams)¶ Eigenvalues of the operator in the computational basis (static method).
If
diagonalizing_gatesare specified and implement a unitary \(U^{\dagger}\), the operator can be reconstructed as\[O = U \Sigma U^{\dagger},\]where \(\Sigma\) is the diagonal matrix containing the eigenvalues.
Otherwise, no particular order for the eigenvalues is guaranteed.
See also
eigvals()andeigvals()- Parameters
 params (list) – trainable parameters of the operator, as stored in the
parametersattributehyperparams (dict) – non-trainable hyperparameters of the operator, as stored in the
hyperparametersattribute
- Returns
 eigenvalues
- Return type
 tensor_like
- 
static 
compute_matrix(*params, **hyperparams)¶ Representation of the operator as a canonical matrix in the computational basis (static method).
The canonical matrix is the textbook matrix representation that does not consider wires. Implicitly, this assumes that the wires of the operator correspond to the global wire order.
See also
matrix()andmatrix()- Parameters
 params (list) – trainable parameters of the operator, as stored in the
parametersattributehyperparams (dict) – non-trainable hyperparameters of the operator, as stored in the
hyperparametersattribute
- Returns
 matrix representation
- Return type
 tensor_like
- 
static 
compute_sparse_matrix(*params, **hyperparams)¶ Representation of the operator as a sparse matrix in the computational basis (static method).
The canonical matrix is the textbook matrix representation that does not consider wires. Implicitly, this assumes that the wires of the operator correspond to the global wire order.
See also
sparse_matrix()- Parameters
 params (list) – trainable parameters of the operator, as stored in the
parametersattributehyperparams (dict) – non-trainable hyperparameters of the operator, as stored in the
hyperparametersattribute
- Returns
 sparse matrix representation
- Return type
 scipy.sparse._csr.csr_matrix
- 
decomposition()¶ Representation of the operator as a product of other operators.
\[O = O_1 O_2 \dots O_n\]A
DecompositionUndefinedErroris raised if no representation by decomposition is defined.See also
compute_decomposition().- Returns
 decomposition of the operator
- Return type
 list[Operator]
- 
diagonalizing_gates()¶ Sequence of gates that diagonalize the operator in the computational basis.
Given the eigendecomposition \(O = U \Sigma U^{\dagger}\) where \(\Sigma\) is a diagonal matrix containing the eigenvalues, the sequence of diagonalizing gates implements the unitary \(U^{\dagger}\).
The diagonalizing gates rotate the state into the eigenbasis of the operator.
A
DiagGatesUndefinedErroris raised if no representation by decomposition is defined.See also
compute_diagonalizing_gates().- Returns
 a list of operators
- Return type
 list[Operator] or None
- 
eigvals()¶ Eigenvalues of the operator in the computational basis.
If
diagonalizing_gatesare specified and implement a unitary \(U^{\dagger}\), the operator can be reconstructed as\[O = U \Sigma U^{\dagger},\]where \(\Sigma\) is the diagonal matrix containing the eigenvalues.
Otherwise, no particular order for the eigenvalues is guaranteed.
Note
When eigenvalues are not explicitly defined, they are computed automatically from the matrix representation. Currently, this computation is not differentiable.
A
EigvalsUndefinedErroris raised if the eigenvalues have not been defined and cannot be inferred from the matrix representation.See also
compute_eigvals()- Returns
 eigenvalues
- Return type
 tensor_like
- 
expand()¶ Returns a tape that has recorded the decomposition of the operator.
- Returns
 quantum tape
- Return type
 QuantumTape
- 
generator()¶ Generator of an operator that is in single-parameter-form.
For example, for operator
\[U(\phi) = e^{i\phi (0.5 Y + Z\otimes X)}\]we get the generator
>>> U.generator() (0.5) [Y0] + (1.0) [Z0 X1]
The generator may also be provided in the form of a dense or sparse Hamiltonian (using
HermitianandSparseHamiltonianrespectively).The default value to return is
None, indicating that the operation has no defined generator.
- 
heisenberg_expand(U, wire_order)¶ Expand the given local Heisenberg-picture array into a full-system one.
- Parameters
 U (array[float]) – array to expand (expected to be of the dimension
1+2*self.num_wires)wire_order (Wires) – global wire order defining which subspace the operator acts on
- Raises
 ValueError – if the size of the input matrix is invalid or num_wires is incorrect
- Returns
 expanded array, dimension
1+2*num_wires- Return type
 array[float]
- 
heisenberg_pd(idx)¶ Partial derivative of the Heisenberg picture transform matrix.
Computed using grad_recipe.
- Parameters
 idx (int) – index of the parameter with respect to which the partial derivative is computed.
- Returns
 partial derivative
- Return type
 array[float]
- 
heisenberg_tr(wire_order, inverse=False)¶ Heisenberg picture representation of the linear transformation carried out by the gate at current parameter values.
Given a unitary quantum gate \(U\), we may consider its linear transformation in the Heisenberg picture, \(U^\dagger(\cdot) U\).
If the gate is Gaussian, this linear transformation preserves the polynomial order of any observables that are polynomials in \(\mathbf{r} = (\I, \x_0, \p_0, \x_1, \p_1, \ldots)\). This also means it maps \(\text{span}(\mathbf{r})\) into itself:
\[U^\dagger \mathbf{r}_i U = \sum_j \tilde{U}_{ij} \mathbf{r}_j\]For Gaussian CV gates, this method returns the transformation matrix for the current parameter values of the Operation. The method is not defined for non-Gaussian (and non-CV) gates.
- Parameters
 wire_order (Wires) – global wire order defining which subspace the operator acts on
inverse (bool) – if True, return the inverse transformation instead
- Raises
 RuntimeError – if the specified operation is not Gaussian or is missing the _heisenberg_rep method
- Returns
 \(\tilde{U}\), the Heisenberg picture representation of the linear transformation
- Return type
 array[float]
- 
label(decimals=None, base_label=None, cache=None)¶ A customizable string representation of the operator.
- Parameters
 decimals=None (int) – If
None, no parameters are included. Else, specifies how to round the parameters.base_label=None (str) – overwrite the non-parameter component of the label
cache=None (dict) – dictionary that carries information between label calls in the same drawing
- Returns
 label to use in drawings
- Return type
 str
Example:
>>> op = qml.RX(1.23456, wires=0) >>> op.label() "RX" >>> op.label(decimals=2) "RX\n(1.23)" >>> op.label(base_label="my_label") "my_label" >>> op.label(decimals=2, base_label="my_label") "my_label\n(1.23)"
If the operation has a matrix-valued parameter and a cache dictionary is provided, unique matrices will be cached in the
'matrices'key list. The label will contain the index of the matrix in the'matrices'list.>>> op2 = qml.QubitUnitary(np.eye(2), wires=0) >>> cache = {'matrices': []} >>> op2.label(cache=cache) 'U(M0)' >>> cache['matrices'] [tensor([[1., 0.], [0., 1.]], requires_grad=True)] >>> op3 = qml.QubitUnitary(np.eye(4), wires=(0,1)) >>> op3.label(cache=cache) 'U(M1)' >>> cache['matrices'] [tensor([[1., 0.], [0., 1.]], requires_grad=True), tensor([[1., 0., 0., 0.], [0., 1., 0., 0.], [0., 0., 1., 0.], [0., 0., 0., 1.]], requires_grad=True)]
- 
map_wires(wire_map: dict)¶ Returns a copy of the current operator with its wires changed according to the given wire map.
- Parameters
 wire_map (dict) – dictionary containing the old wires as keys and the new wires as values
- Returns
 new operator
- Return type
 Operator
- 
matrix(wire_order=None)¶ Representation of the operator as a matrix in the computational basis.
If
wire_orderis provided, the numerical representation considers the position of the operator’s wires in the global wire order. Otherwise, the wire order defaults to the operator’s wires.If the matrix depends on trainable parameters, the result will be cast in the same autodifferentiation framework as the parameters.
A
MatrixUndefinedErroris raised if the matrix representation has not been defined.See also
compute_matrix()- Parameters
 wire_order (Iterable) – global wire order, must contain all wire labels from the operator’s wires
- Returns
 matrix representation
- Return type
 tensor_like
- 
pow(z) → List[pennylane.operation.Operator]¶ A list of new operators equal to this one raised to the given power.
- Parameters
 z (float) – exponent for the operator
- Returns
 list[
Operator]
- 
queue(context=<class 'pennylane.queuing.QueuingManager'>)¶ Append the operator to the Operator queue.
- 
simplify() → pennylane.operation.Operator¶ Reduce the depth of nested operators to the minimum.
- Returns
 simplified operator
- Return type
 Operator
- 
single_qubit_rot_angles()¶ The parameters required to implement a single-qubit gate as an equivalent
Rotgate, up to a global phase.- Returns
 A list of values \([\phi, \theta, \omega]\) such that \(RZ(\omega) RY(\theta) RZ(\phi)\) is equivalent to the original operation.
- Return type
 tuple[float, float, float]
- 
sparse_matrix(wire_order=None)¶ Representation of the operator as a sparse matrix in the computational basis.
If
wire_orderis provided, the numerical representation considers the position of the operator’s wires in the global wire order. Otherwise, the wire order defaults to the operator’s wires.A
SparseMatrixUndefinedErroris raised if the sparse matrix representation has not been defined.See also
compute_sparse_matrix()- Parameters
 wire_order (Iterable) – global wire order, must contain all wire labels from the operator’s wires
- Returns
 sparse matrix representation
- Return type
 scipy.sparse._csr.csr_matrix
- 
terms()¶ Representation of the operator as a linear combination of other operators.
\[O = \sum_i c_i O_i\]A
TermsUndefinedErroris raised if no representation by terms is defined.- Returns
 list of coefficients \(c_i\) and list of operations \(O_i\)
- Return type
 tuple[list[tensor_like or float], list[Operation]]
- 
static 
validate_subspace(subspace)¶ Validate the subspace for qutrit operations.
This method determines whether a given subspace for qutrit operations is defined correctly or not. If not, a ValueError is thrown.
- Parameters
 subspace (tuple[int]) – Subspace to check for correctness