CrosstalkAdaptiveSchedule
class CrosstalkAdaptiveSchedule(*args, **kwargs)
Bases: qiskit.transpiler.basepasses.TransformationPass
Crosstalk mitigation through adaptive instruction scheduling.
CrosstalkAdaptiveSchedule initializer.
Parameters
-
backend_prop (BackendProperties) – backend properties object
-
crosstalk_prop (dict) –
crosstalk properties object crosstalk_prop[g1][g2] specifies the conditional error rate of g1 when g1 and g2 are executed simultaneously. g1 should be a two-qubit tuple of the form (x,y) where x and y are physical qubit ids. g2 can be either two-qubit tuple (x,y) or single-qubit tuple (x). We currently ignore crosstalk between pairs of single-qubit gates. Gate pairs which are not specified are assumed to be crosstalk free.
Example:
crosstalk_prop = {(0, 1) : {(2, 3) : 0.2, (2) : 0.15}, (4, 5) : {(2, 3) : 0.1}, (2, 3) : {(0, 1) : 0.05, (4, 5): 0.05}}
The keys of the crosstalk_prop are tuples for ordered tuples for CX gates e.g., (0, 1) corresponding to CX 0, 1 in the hardware. Each key has an associated value dict which specifies the conditional error rates with nearby gates e.g.,
(0, 1) : {(2, 3) : 0.2, (2) : 0.15}
means that CNOT 0, 1 has an error rate of 0.2 when it is executed in parallel with CNOT 2,3 and an error rate of 0.15 when it is executed in parallel with a single qubit gate on qubit 2. -
weight_factor (float) – weight of gate error/crosstalk terms in the objective . Weight can be varied from 0 to 1, with 0 meaning that only decoherence errors are optimized and 1 meaning that only crosstalk errors are optimized. weight_factor should be tuned per application to get the best results.
-
measured_qubits (list) – a list of qubits that will be measured in a particular circuit. This arg need not be specified for circuits which already include measure gates. The arg is useful when a subsequent module such as state_tomography_circuits inserts the measure gates. If CrosstalkAdaptiveSchedule is made aware of those measurements, it is included in the optimization.
Raises
ImportError – if unable to import z3 solver
Methods
assign_gate_id
CrosstalkAdaptiveSchedule.assign_gate_id(dag)
ID for each gate
basic_bounds
CrosstalkAdaptiveSchedule.basic_bounds()
Basic variable bounds for optimization
check_dag_dependency
CrosstalkAdaptiveSchedule.check_dag_dependency(gate1, gate2)
gate2 is a DAG dependent of gate1 if it is a descendant of gate1
check_xtalk_dependency
CrosstalkAdaptiveSchedule.check_xtalk_dependency(t_1, t_2)
Check if two gates have a crosstalk dependency. We do not consider crosstalk between pairs of single qubit gates.
coherence_constraints
CrosstalkAdaptiveSchedule.coherence_constraints()
Set decoherence errors based on qubit lifetimes
create_updated_dag
CrosstalkAdaptiveSchedule.create_updated_dag(layers, barriers)
Given a set of layers and barriers, construct a new dag
create_z3_vars
CrosstalkAdaptiveSchedule.create_z3_vars()
Setup the variables required for Z3 optimization
cx_tuple
CrosstalkAdaptiveSchedule.cx_tuple(gate)
Representation for two-qubit gate Note: current implementation assumes that the CX error rates and crosstalk behavior are independent of gate direction
enforce_schedule_on_dag
CrosstalkAdaptiveSchedule.enforce_schedule_on_dag(input_gate_times)
Z3 outputs start times for each gate. Some gates need to be serialized to implement the Z3 schedule. This function inserts barriers to implement those serializations
extract_crosstalk_relevant_sets
CrosstalkAdaptiveSchedule.extract_crosstalk_relevant_sets()
Extract the set of program gates which potentially have crosstalk noise
extract_dag_overlap_sets
CrosstalkAdaptiveSchedule.extract_dag_overlap_sets(dag)
Gate A, B are overlapping if A is neither a descendant nor an ancestor of B. Currenty overlaps (A,B) are considered when A is a 2q gate and B is either 2q or 1q gate.
extract_solution
CrosstalkAdaptiveSchedule.extract_solution()
Extract gate start and finish times from Z3 solution
fidelity_constraints
CrosstalkAdaptiveSchedule.fidelity_constraints()
Set gate fidelity based on gate overlap conditions
filter_candidates
CrosstalkAdaptiveSchedule.filter_candidates(candidates, layer, layer_id, triplet)
For a gate G and layer L, L is a candidate layer for G if no gate in L has a DAG dependency with G, and if Z3 allows gates in L and G to overlap.
find_layer
CrosstalkAdaptiveSchedule.find_layer(layers, triplet)
Find the appropriate layer for a gate
gate_tuple
CrosstalkAdaptiveSchedule.gate_tuple(gate)
Representation for gate
generate_barriers
CrosstalkAdaptiveSchedule.generate_barriers(layers)
For each gate g, see if a barrier is required to serialize it with some previously processed gate
is_significant_xtalk
CrosstalkAdaptiveSchedule.is_significant_xtalk(gate1, gate2)
Given two conditional gate error rates check if there is high crosstalk by comparing with independent error rates.
name
CrosstalkAdaptiveSchedule.name()
Return the name of the pass.
objective_function
CrosstalkAdaptiveSchedule.objective_function()
Objective function is a weighted combination of gate errors and decoherence errors
parse_backend_properties
CrosstalkAdaptiveSchedule.parse_backend_properties()
This function assumes that gate durations and coherence times are in seconds in backend.properties() This function converts gate durations and coherence times to nanoseconds.
powerset
CrosstalkAdaptiveSchedule.powerset(iterable)
Finds the set of all subsets of the given iterable This function is used to generate constraints for the Z3 optimization
r2f
CrosstalkAdaptiveSchedule.r2f(val)
Convert Z3 Real to Python float
reset
CrosstalkAdaptiveSchedule.reset()
Reset variables
run
CrosstalkAdaptiveSchedule.run(dag)
Main scheduling function
scheduling_constraints
CrosstalkAdaptiveSchedule.scheduling_constraints()
DAG scheduling constraints optimization Sets overlap indicator variables
singleq_tuple
CrosstalkAdaptiveSchedule.singleq_tuple(gate)
Representation for single-qubit gate
solve_optimization
CrosstalkAdaptiveSchedule.solve_optimization()
Setup and solve a Z3 optimization for finding the best schedule
Attributes
is_analysis_pass
Check if the pass is an analysis pass.
If the pass is an AnalysisPass, that means that the pass can analyze the DAG and write the results of that analysis in the property set. Modifications on the DAG are not allowed by this kind of pass.
is_transformation_pass
Check if the pass is a transformation pass.
If the pass is a TransformationPass, that means that the pass can manipulate the DAG, but cannot modify the property set (but it can be read).