LinearFunction
class qiskit.circuit.library.LinearFunction(linear, validate_input=False)
Bases: Gate
A linear reversible circuit on n qubits.
Internally, a linear function acting on n qubits is represented as a n x n matrix of 0s and 1s in numpy array format.
A linear function can be synthesized into CX and SWAP gates using the Patel–Markov–Hayes algorithm, as implemented in synth_cnot_count_full_pmh()
based on reference [1].
For efficiency, the internal n x n matrix is stored in the format expected by cnot_synth, which is the big-endian (and not the little-endian) bit-ordering convention.
Example: the circuit
q_0: ──■──
┌─┴─┐
q_1: ┤ X ├
└───┘
q_2: ─────
is represented by a 3x3 linear matrix
References:
[1] Ketan N. Patel, Igor L. Markov, and John P. Hayes, Optimal synthesis of linear reversible circuits, Quantum Inf. Comput. 8(3) (2008). Online at umich.edu.
Create a new linear function.
Parameters
- linear (list[list] | np.ndarray[bool] | QuantumCircuit |LinearFunction |PermutationGate |Clifford) – data from which a linear function can be constructed. It can be either a nxn matrix (describing the linear transformation), a permutation (which is a special case of a linear function), another linear function, a clifford (when it corresponds to a linear function), or a quantum circuit composed of linear gates (CX and SWAP) and other objects described above, including nested subcircuits.
- validate_input (bool) – if True, performs more expensive input validation checks, such as checking that a given n x n matrix is invertible.
Raises
CircuitError – if the input is invalid: either the input matrix is not square or not invertible, or the input quantum circuit contains non-linear objects (for example, a Hadamard gate, or a Clifford that does not correspond to a linear function).
Attributes
base_class
Get the base class of this instruction. This is guaranteed to be in the inheritance tree of self
.
The “base class” of an instruction is the lowest class in its inheritance tree that the object should be considered entirely compatible with for _all_ circuit applications. This typically means that the subclass is defined purely to offer some sort of programmer convenience over the base class, and the base class is the “true” class for a behavioural perspective. In particular, you should not override base_class
if you are defining a custom version of an instruction that will be implemented differently by hardware, such as an alternative measurement strategy, or a version of a parametrised gate with a particular set of parameters for the purposes of distinguishing it in a Target
from the full parametrised gate.
This is often exactly equivalent to type(obj)
, except in the case of singleton instances of standard-library instructions. These singleton instances are special subclasses of their base class, and this property will return that base. For example:
>>> isinstance(XGate(), XGate)
True
>>> type(XGate()) is XGate
False
>>> XGate().base_class is XGate
True
In general, you should not rely on the precise class of an instruction; within a given circuit, it is expected that Instruction.name
should be a more suitable discriminator in most situations.
condition
The classical condition on the instruction.
condition_bits
Get Clbits in condition.
decompositions
Get the decompositions of the instruction from the SessionEquivalenceLibrary.
definition
Return definition in terms of other basic gates.
duration
Get the duration.
label
Return instruction label
linear
Returns the n x n matrix representing this linear function.
mutable
Is this instance is a mutable unique instance or not.
If this attribute is False
the gate instance is a shared singleton and is not mutable.
name
Return the name.
num_clbits
Return the number of clbits.
num_qubits
Return the number of qubits.
original_circuit
Returns the original circuit used to construct this linear function (including None, when the linear function is not constructed from a circuit).
params
The parameters of this Instruction
. Ideally these will be gate angles.
unit
Get the time unit of duration.
Methods
extend_with_identity
extend_with_identity(num_qubits, positions)
Extend linear function to a linear function over nq qubits, with identities on other subsystems.
Parameters
- num_qubits (int) – number of qubits of the extended function.
- positions (list[int]) – describes the positions of original qubits in the extended function’s qubits.
Returns
extended linear function.
Return type
function_str
function_str()
Return string representation of the linear function viewed as a linear transformation.
is_permutation
is_permutation()
Returns whether this linear function is a permutation, that is whether every row and every column of the n x n matrix has exactly one 1.
Return type
mat_str
mat_str()
Return string representation of the linear function viewed as a matrix with 0/1 entries.
permutation_pattern
permutation_pattern()
This method first checks if a linear function is a permutation and raises a qiskit.circuit.exceptions.CircuitError if not. In the case that this linear function is a permutation, returns the permutation pattern.
synthesize
synthesize()
Synthesizes the linear function into a quantum circuit.
Returns
A circuit implementing the evolution.
Return type