source_code
stringlengths
45
7.24k
function_name
stringlengths
1
111
messages
list
def x(control1, control2, target): qubits = [unpack_qubit(q) for q in (control1, control2, target)] return Gate(name='CCNOT', params=[], qubits=qubits)
CCNOT
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(control1, control2, target):\n qubits = [unpack_qubit(q) for q in (control1, control2, target)]\n return Gate(name='CCNOT', params=[], qubits=qubits)\n",...
def x(angle, control, target): qubits = [unpack_qubit(q) for q in (control, target)] return Gate(name='CPHASE00', params=[angle], qubits=qubits)
CPHASE00
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(angle, control, target):\n qubits = [unpack_qubit(q) for q in (control, target)]\n return Gate(name='CPHASE00', params=[angle], qubits=qubits)\n", "r...
def x(control, target_1, target_2): qubits = [unpack_qubit(q) for q in (control, target_1, target_2)] return Gate(name='CSWAP', params=[], qubits=qubits)
CSWAP
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(control, target_1, target_2):\n qubits = [unpack_qubit(q) for q in (control, target_1, target_2)]\n return Gate(name='CSWAP', params=[], qubits=qubits)\n...
def x(q1, q2): return Gate(name='ISWAP', params=[], qubits=[unpack_qubit(q) for q in ( q1, q2)])
ISWAP
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(q1, q2):\n return Gate(name='ISWAP', params=[], qubits=[unpack_qubit(q) for q in (\n q1, q2)])\n", "role": "user" }, { "content": "ISWAP"...
def x(angle, q1, q2): return Gate(name='PSWAP', params=[angle], qubits=[unpack_qubit(q) for q in (q1, q2)])
PSWAP
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(angle, q1, q2):\n return Gate(name='PSWAP', params=[angle], qubits=[unpack_qubit(q) for q in\n (q1, q2)])\n", "role": "user" }, { "conten...
def x(qubit, classical_reg): qubit = unpack_qubit(qubit) if classical_reg is None: address = None elif isinstance(classical_reg, int): warn('Indexing measurement addresses by integers is deprecated. ' + 'Replacing this with the MemoryReference ro[i] instead.') address = MemoryReference('ro', classical_reg) else: address = unpack_classical_reg(classical_reg) return Measurement(qubit, address)
MEASURE
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(qubit, classical_reg):\n qubit = unpack_qubit(qubit)\n if classical_reg is None:\n address = None\n elif isinstance(classical_reg, int):\n ...
def x(classical_reg): warn('`TRUE a` has been deprecated. Use `MOVE a 1` instead.') if isinstance(classical_reg, int): classical_reg = Addr(classical_reg) return MOVE(classical_reg, 1)
TRUE
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg):\n warn('`TRUE a` has been deprecated. Use `MOVE a 1` instead.')\n if isinstance(classical_reg, int):\n classical_reg = Addr(classi...
def x(classical_reg): warn('`FALSE a` has been deprecated. Use `MOVE a 0` instead.') if isinstance(classical_reg, int): classical_reg = Addr(classical_reg) return MOVE(classical_reg, 0)
FALSE
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg):\n warn('`FALSE a` has been deprecated. Use `MOVE a 0` instead.')\n if isinstance(classical_reg, int):\n classical_reg = Addr(class...
def x(classical_reg1, classical_reg2): left, right = unpack_reg_val_pair(classical_reg1, classical_reg2) return ClassicalAnd(left, right)
AND
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2):\n left, right = unpack_reg_val_pair(classical_reg1, classical_reg2)\n return ClassicalAnd(left, right)\n", "role": "...
def x(classical_reg1, classical_reg2): left, right = unpack_reg_val_pair(classical_reg1, classical_reg2) return ClassicalInclusiveOr(left, right)
IOR
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2):\n left, right = unpack_reg_val_pair(classical_reg1, classical_reg2)\n return ClassicalInclusiveOr(left, right)\n", "...
def x(classical_reg1, classical_reg2): left, right = unpack_reg_val_pair(classical_reg1, classical_reg2) return ClassicalExclusiveOr(left, right)
XOR
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2):\n left, right = unpack_reg_val_pair(classical_reg1, classical_reg2)\n return ClassicalExclusiveOr(left, right)\n", "...
def x(classical_reg1, classical_reg2): left, right = unpack_reg_val_pair(classical_reg1, classical_reg2) return ClassicalMove(left, right)
MOVE
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2):\n left, right = unpack_reg_val_pair(classical_reg1, classical_reg2)\n return ClassicalMove(left, right)\n", "role": ...
def x(classical_reg1, classical_reg2): left = unpack_classical_reg(classical_reg1) right = unpack_classical_reg(classical_reg2) return ClassicalExchange(left, right)
EXCHANGE
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2):\n left = unpack_classical_reg(classical_reg1)\n right = unpack_classical_reg(classical_reg2)\n return ClassicalExchan...
def x(target_reg, region_name, offset_reg): return ClassicalLoad(unpack_classical_reg(target_reg), region_name, unpack_classical_reg(offset_reg))
LOAD
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(target_reg, region_name, offset_reg):\n return ClassicalLoad(unpack_classical_reg(target_reg), region_name,\n unpack_classical_reg(offset_reg))\n", ...
def x(classical_reg, right): left, right = unpack_reg_val_pair(classical_reg, right) return ClassicalAdd(left, right)
ADD
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg, right):\n left, right = unpack_reg_val_pair(classical_reg, right)\n return ClassicalAdd(left, right)\n", "role": "user" }, { "...
def x(classical_reg, right): left, right = unpack_reg_val_pair(classical_reg, right) return ClassicalSub(left, right)
SUB
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg, right):\n left, right = unpack_reg_val_pair(classical_reg, right)\n return ClassicalSub(left, right)\n", "role": "user" }, { "...
def x(classical_reg, right): left, right = unpack_reg_val_pair(classical_reg, right) return ClassicalMul(left, right)
MUL
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg, right):\n left, right = unpack_reg_val_pair(classical_reg, right)\n return ClassicalMul(left, right)\n", "role": "user" }, { "...
def x(classical_reg, right): left, right = unpack_reg_val_pair(classical_reg, right) return ClassicalDiv(left, right)
DIV
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg, right):\n left, right = unpack_reg_val_pair(classical_reg, right)\n return ClassicalDiv(left, right)\n", "role": "user" }, { "...
def x(classical_reg1, classical_reg2, classical_reg3): classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands( classical_reg1, classical_reg2, classical_reg3) return ClassicalEqual(classical_reg1, classical_reg2, classical_reg3)
EQ
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2, classical_reg3):\n classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands(\n classical_reg1, class...
def x(classical_reg1, classical_reg2, classical_reg3): classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands( classical_reg1, classical_reg2, classical_reg3) return ClassicalLessThan(classical_reg1, classical_reg2, classical_reg3)
LT
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2, classical_reg3):\n classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands(\n classical_reg1, class...
def x(classical_reg1, classical_reg2, classical_reg3): classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands( classical_reg1, classical_reg2, classical_reg3) return ClassicalLessEqual(classical_reg1, classical_reg2, classical_reg3)
LE
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2, classical_reg3):\n classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands(\n classical_reg1, class...
def x(classical_reg1, classical_reg2, classical_reg3): classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands( classical_reg1, classical_reg2, classical_reg3) return ClassicalGreaterThan(classical_reg1, classical_reg2, classical_reg3)
GT
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2, classical_reg3):\n classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands(\n classical_reg1, class...
def x(classical_reg1, classical_reg2, classical_reg3): classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands( classical_reg1, classical_reg2, classical_reg3) return ClassicalGreaterEqual(classical_reg1, classical_reg2, classical_reg3 )
GE
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(classical_reg1, classical_reg2, classical_reg3):\n classical_reg1, classical_reg2, classical_reg3 = prepare_ternary_operands(\n classical_reg1, class...
def x(test, if_function, else_function) ->None: if isinstance(test, Addr): token = _program_context.set(Program()) if_function() if_program = _program_context.get() _program_context.reset(token) if else_function: token = _program_context.set(Program()) else_function() else_program = _program_context.get() _program_context.reset(token) else: else_program = None program = _program_context.get() program.if_then(test, if_program, else_program) elif test: if_function() elif else_function: else_function()
if_statement
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(test, if_function, else_function) ->None:\n if isinstance(test, Addr):\n token = _program_context.set(Program())\n if_function()\n if_p...
def x(f): source = inspect.getsource(f) tree = ast.parse(source) _IfTransformer().visit(tree) ast.fix_missing_locations(tree) tree.body[0].name = f.__name__ + '_patched' tree.body[0].decorator_list = [] compiled = compile(tree, filename='<ast>', mode='exec') prev_globals = inspect.currentframe().f_back.f_back.f_globals exec(compiled, {**prev_globals, **globals()}, locals()) return locals()[f.__name__ + '_patched']
rewrite_function
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(f):\n source = inspect.getsource(f)\n tree = ast.parse(source)\n _IfTransformer().visit(tree)\n ast.fix_missing_locations(tree)\n tree.body[0].n...
def x(f): rewritten_function = _rewrite_function(f) @functools.wraps(f) def x(*args, **kwargs): if _program_context.get(None) is not None: rewritten_function(*args, **kwargs) program = _program_context.get() else: token = _program_context.set(Program()) rewritten_function(*args, **kwargs) program = _program_context.get() _program_context.reset(token) return program return wrapper
magicquil
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(f):\n rewritten_function = _rewrite_function(f)\n\n @functools.wraps(f)\n def x(*args, **kwargs):\n if _program_context.get(None) is not None:\...
def x(program): has_placeholders = False has_real_qubits = False qubits = OrderedDict() for instr in program: if isinstance(instr, Gate): for q in instr.qubits: qubits[q] = 1 if isinstance(q, QubitPlaceholder): has_placeholders = True elif isinstance(q, Qubit): has_real_qubits = True else: raise ValueError('Unknown qubit type {}'.format(q)) elif isinstance(instr, Measurement): qubits[instr.qubit] = 1 if isinstance(instr.qubit, QubitPlaceholder): has_placeholders = True elif isinstance(instr.qubit, Qubit): has_real_qubits = True else: raise ValueError('Unknown qubit type {}'.format(instr.qubit)) elif isinstance(instr, Pragma): for arg in instr.args: if isinstance(arg, QubitPlaceholder): qubits[arg] = 1 has_placeholders = True elif isinstance(arg, Qubit): qubits[arg] = 1 has_real_qubits = True if not (has_placeholders or has_real_qubits): warnings.warn("Your program doesn't use any qubits") if has_placeholders and has_real_qubits: raise ValueError( 'Your program mixes instantiated qubits with placeholders') return has_placeholders, has_real_qubits, list(qubits.keys())
what_type_of_qubit_does_it_use
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program):\n has_placeholders = False\n has_real_qubits = False\n qubits = OrderedDict()\n for instr in program:\n if isinstance(instr, Gate)...
def x(program): fake_qubits, real_qubits, qubits = _what_type_of_qubit_does_it_use(program) if real_qubits: warnings.warn( "This program contains integer qubits, so getting a mapping doesn't make sense." ) return {q: q for q in qubits} return {qp: Qubit(i) for i, qp in enumerate(qubits)}
get_default_qubit_mapping
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program):\n fake_qubits, real_qubits, qubits = _what_type_of_qubit_does_it_use(program)\n if real_qubits:\n warnings.warn(\n \"This pro...
def x(program, qubit_mapping=None): fake_qubits, real_qubits, qubits = _what_type_of_qubit_does_it_use(program) if real_qubits: if qubit_mapping is not None: warnings.warn( 'A qubit mapping was provided but the program does not contain any placeholders to map!' ) return program if qubit_mapping is None: qubit_mapping = {qp: Qubit(i) for i, qp in enumerate(qubits)} elif all(isinstance(v, Qubit) for v in qubit_mapping.values()): pass elif all(isinstance(v, int) for v in qubit_mapping.values()): qubit_mapping = {k: Qubit(v) for k, v in qubit_mapping.items()} else: raise ValueError( 'Qubit mapping must map to type Qubit or int (but not both)') result = [] for instr in program: if isinstance(instr, Gate): remapped_qubits = [qubit_mapping[q] for q in instr.qubits] result.append(Gate(instr.name, instr.params, remapped_qubits)) elif isinstance(instr, Measurement): result.append(Measurement(qubit_mapping[instr.qubit], instr. classical_reg)) elif isinstance(instr, Pragma): new_args = [] for arg in instr.args: if isinstance(arg, QubitPlaceholder): new_args.append(qubit_mapping[arg]) else: new_args.append(arg) result.append(Pragma(instr.command, new_args, instr. freeform_string)) else: result.append(instr) new_program = program.copy() new_program._instructions = result return new_program
address_qubits
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program, qubit_mapping=None):\n fake_qubits, real_qubits, qubits = _what_type_of_qubit_does_it_use(program)\n if real_qubits:\n if qubit_mapping i...
def x(placeholder, label_mapping, label_i): if placeholder in label_mapping: return label_mapping[placeholder], label_mapping, label_i new_target = Label('{}{}'.format(placeholder.prefix, label_i)) label_i += 1 label_mapping[placeholder] = new_target return new_target, label_mapping, label_i
get_label
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(placeholder, label_mapping, label_i):\n if placeholder in label_mapping:\n return label_mapping[placeholder], label_mapping, label_i\n new_target ...
def x(instructions): label_i = 1 result = [] label_mapping = dict() for instr in instructions: if isinstance(instr, Jump) and isinstance(instr.target, LabelPlaceholder): new_target, label_mapping, label_i = _get_label(instr.target, label_mapping, label_i) result.append(Jump(new_target)) elif isinstance(instr, JumpConditional) and isinstance(instr.target, LabelPlaceholder): new_target, label_mapping, label_i = _get_label(instr.target, label_mapping, label_i) cls = instr.__class__ result.append(cls(new_target, instr.condition)) elif isinstance(instr, JumpTarget) and isinstance(instr.label, LabelPlaceholder): new_label, label_mapping, label_i = _get_label(instr.label, label_mapping, label_i) result.append(JumpTarget(new_label)) else: result.append(instr) return result
instantiate_labels
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(instructions):\n label_i = 1\n result = []\n label_mapping = dict()\n for instr in instructions:\n if isinstance(instr, Jump) and isinstance...
def x(instructions: List[AbstractInstruction]): ro_addrs: List[int] = [] for instr in instructions: if isinstance(instr, Declare): return instructions if isinstance(instr, Measurement): if instr.classical_reg is None: continue if instr.classical_reg.name == 'ro': ro_addrs += [instr.classical_reg.offset] else: return instructions if len(ro_addrs) == 0: return instructions warnings.warn( "Please DECLARE all memory. I'm adding a declaration for the `ro` register, but I won't do this for you in the future." ) new_instr = instructions.copy() new_instr.insert(0, Declare(name='ro', memory_type='BIT', memory_size= max(ro_addrs) + 1)) return new_instr
implicitly_declare_ro
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(instructions: List[AbstractInstruction]):\n ro_addrs: List[int] = []\n for instr in instructions:\n if isinstance(instr, Declare):\n re...
def x(prog_list: Iterable, probabilities: List, qubits: List): p = Program() p.defgate('pauli_noise', np.eye(2 ** len(qubits))) p.define_noisy_gate('pauli_noise', qubits, pauli_kraus_map(probabilities)) for elem in prog_list: p.inst(Program(elem)) if isinstance(elem, Measurement): continue p.inst(('pauli_noise', *qubits)) return p
merge_with_pauli_noise
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(prog_list: Iterable, probabilities: List, qubits: List):\n p = Program()\n p.defgate('pauli_noise', np.eye(2 ** len(qubits)))\n p.define_noisy_gate('p...
def x(prog_list): definitions = [gate for prog in prog_list for gate in Program(prog). defined_gates] seen = {} for definition in reversed(definitions): name = definition.name if name in seen.keys(): if definition not in seen[name]: seen[name].append(definition) else: seen[name] = [definition] new_definitions = [gate for key in seen.keys() for gate in reversed( seen[key])] p = sum([Program(prog).instructions for prog in prog_list], Program()) for definition in new_definitions: p.defgate(definition.name, definition.matrix, definition.parameters) return p
merge_programs
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(prog_list):\n definitions = [gate for prog in prog_list for gate in Program(prog).\n defined_gates]\n seen = {}\n for definition in reversed(de...
def x(program) ->Dict[str, List[int]]: addresses: Dict[str, List[int]] = defaultdict(list) flattened_addresses = {} for instr in program: if isinstance(instr, Measurement) and instr.classical_reg: addresses[instr.classical_reg.name].append(instr.classical_reg. offset) for k, v in addresses.items(): reduced_list = list(set(v)) reduced_list.sort() flattened_addresses[k] = reduced_list return flattened_addresses
get_classical_addresses_from_program
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program) ->Dict[str, List[int]]:\n addresses: Dict[str, List[int]] = defaultdict(list)\n flattened_addresses = {}\n for instr in program:\n if ...
def x(program: Program) ->Program: declare_program = Program() instrs_program = Program() for instr in program: if isinstance(instr, Declare): declare_program += instr else: instrs_program += instr p = declare_program + instrs_program p._defined_gates = program._defined_gates return p
percolate_declares
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program: Program) ->Program:\n declare_program = Program()\n instrs_program = Program()\n for instr in program:\n if isinstance(instr, Declare)...
def x(program: Program) ->None: valid_instruction_types = tuple([Pragma, Declare, Halt, Gate, Reset, ResetQubit, Measurement]) for instr in program.instructions: if not isinstance(instr, valid_instruction_types): raise ValueError( f'ProtoQuil validation failed: {instr} is not allowed.')
validate_protoquil
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program: Program) ->None:\n valid_instruction_types = tuple([Pragma, Declare, Halt, Gate, Reset,\n ResetQubit, Measurement])\n for instr in progra...
def x(program: Program) ->None: gates_seen = False measured_qubits: Set[int] = set() for i, instr in enumerate(program.instructions): if isinstance(instr, Pragma) or isinstance(instr, Declare): continue elif isinstance(instr, Halt): if i != len(program.instructions) - 1: raise ValueError(f'Cannot have instructions after HALT') elif isinstance(instr, Gate): gates_seen = True if any(q.index in measured_qubits for q in instr.qubits): raise ValueError( 'Cannot apply gates to qubits that were already measured.') elif isinstance(instr, Reset): if gates_seen: raise ValueError( 'RESET can only be applied before any gate applications.') elif isinstance(instr, ResetQubit): raise ValueError('Only global RESETs are currently supported.') elif isinstance(instr, Measurement): if instr.qubit.index in measured_qubits: raise ValueError( 'Multiple measurements per qubit is not supported.') measured_qubits.add(instr.qubit.index) else: raise ValueError( f'Unhandled instruction type in supported Quil validation: {instr}' )
validate_supported_quil
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program: Program) ->None:\n gates_seen = False\n measured_qubits: Set[int] = set()\n for i, instr in enumerate(program.instructions):\n if isin...
def x(self): new_prog = Program() new_prog._defined_gates = self._defined_gates.copy() if self.native_quil_metadata is not None: new_prog.native_quil_metadata = self.native_quil_metadata.copy() new_prog.num_shots = self.num_shots return new_prog
copy_everything_except_instructions
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n new_prog = Program()\n new_prog._defined_gates = self._defined_gates.copy()\n if self.native_quil_metadata is not None:\n new_prog.nat...
def x(self): new_prog = self.copy_everything_except_instructions() new_prog._instructions = self._instructions.copy() return new_prog
copy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n new_prog = self.copy_everything_except_instructions()\n new_prog._instructions = self._instructions.copy()\n return new_prog\n", "role": ...
def x(self, *instructions): for instruction in instructions: if isinstance(instruction, list): self.inst(*instruction) elif isinstance(instruction, types.GeneratorType): self.inst(*instruction) elif isinstance(instruction, tuple): if len(instruction) == 0: raise ValueError('tuple should have at least one element') elif len(instruction) == 1: self.inst(instruction[0]) else: op = instruction[0] if op == 'MEASURE': if len(instruction) == 2: self.measure(instruction[1], None) else: self.measure(instruction[1], instruction[2]) else: params = [] possible_params = instruction[1] rest = instruction[2:] if isinstance(possible_params, list): params = possible_params else: rest = [possible_params] + list(rest) self.gate(op, params, rest) elif isinstance(instruction, string_types): self.inst(run_parser(instruction.strip())) elif isinstance(instruction, Program): if id(self) == id(instruction): raise ValueError( 'Nesting a program inside itself is not supported') for defgate in instruction._defined_gates: self.inst(defgate) for instr in instruction._instructions: self.inst(instr) elif isinstance(instruction, DefGate): defined_gate_names = [gate.name for gate in self._defined_gates] if instruction.name in defined_gate_names: warnings.warn( 'Gate {} has already been defined in this program'. format(instruction.name)) self._defined_gates.append(instruction) elif isinstance(instruction, AbstractInstruction): self._instructions.append(instruction) self._synthesized_instructions = None else: raise TypeError('Invalid instruction: {}'.format(instruction)) return self
inst
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, *instructions):\n for instruction in instructions:\n if isinstance(instruction, list):\n self.inst(*instruction)\n elif isins...
def x(self, name, params, qubits): return self.inst(Gate(name, params, [unpack_qubit(q) for q in qubits]))
gate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, name, params, qubits):\n return self.inst(Gate(name, params, [unpack_qubit(q) for q in qubits]))\n", "role": "user" }, { "content": "gate"...
def x(self, name, matrix, parameters=None): return self.inst(DefGate(name, matrix, parameters))
defgate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, name, matrix, parameters=None):\n return self.inst(DefGate(name, matrix, parameters))\n", "role": "user" }, { "content": "defgate", "r...
def x(self, name, qubit_indices, kraus_ops): kraus_ops = [np.asarray(k, dtype=np.complex128) for k in kraus_ops] _check_kraus_ops(len(qubit_indices), kraus_ops) return self.inst(_create_kraus_pragmas(name, tuple(qubit_indices), kraus_ops))
define_noisy_gate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, name, qubit_indices, kraus_ops):\n kraus_ops = [np.asarray(k, dtype=np.complex128) for k in kraus_ops]\n _check_kraus_ops(len(qubit_indices), kraus...
def x(self, qubit, p00, p11): if not 0.0 <= p00 <= 1.0: raise ValueError('p00 must be in the interval [0,1].') if not 0.0 <= p11 <= 1.0: raise ValueError('p11 must be in the interval [0,1].') if not (isinstance(qubit, int) or isinstance(qubit, QubitPlaceholder)): raise TypeError( 'qubit must be a non-negative integer, or QubitPlaceholder.') if isinstance(qubit, int) and qubit < 0: raise ValueError('qubit cannot be negative.') p00 = float(p00) p11 = float(p11) aprobs = [p00, 1.0 - p11, 1.0 - p00, p11] aprobs_str = '({})'.format(' '.join(format_parameter(p) for p in aprobs)) pragma = Pragma('READOUT-POVM', [qubit], aprobs_str) return self.inst(pragma)
define_noisy_readout
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, qubit, p00, p11):\n if not 0.0 <= p00 <= 1.0:\n raise ValueError('p00 must be in the interval [0,1].')\n if not 0.0 <= p11 <= 1.0:\n ...
def x(self, *qubit_reg_pairs): if qubit_reg_pairs == (): qubit_inds = self.get_qubits(indices=True) if len(qubit_inds) == 0: return self ro = self.declare('ro', 'BIT', max(qubit_inds) + 1) for qi in qubit_inds: self.inst(MEASURE(qi, ro[qi])) else: for qubit_index, classical_reg in qubit_reg_pairs: self.inst(MEASURE(qubit_index, classical_reg)) return self
measure_all
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, *qubit_reg_pairs):\n if qubit_reg_pairs == ():\n qubit_inds = self.get_qubits(indices=True)\n if len(qubit_inds) == 0:\n retu...
def x(self, classical_reg, q_program): label_start = LabelPlaceholder('START') label_end = LabelPlaceholder('END') self.inst(JumpTarget(label_start)) self.inst(JumpUnless(target=label_end, condition=classical_reg)) self.inst(q_program) self.inst(Jump(label_start)) self.inst(JumpTarget(label_end)) return self
while_do
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, classical_reg, q_program):\n label_start = LabelPlaceholder('START')\n label_end = LabelPlaceholder('END')\n self.inst(JumpTarget(label_start))\...
def x(self, classical_reg, if_program, else_program=None): else_program = else_program if else_program is not None else Program() label_then = LabelPlaceholder('THEN') label_end = LabelPlaceholder('END') self.inst(JumpWhen(target=label_then, condition=unpack_classical_reg( classical_reg))) self.inst(else_program) self.inst(Jump(label_end)) self.inst(JumpTarget(label_then)) self.inst(if_program) self.inst(JumpTarget(label_end)) return self
if_then
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, classical_reg, if_program, else_program=None):\n else_program = else_program if else_program is not None else Program()\n label_then = LabelPlaceho...
def x(self, name, memory_type='BIT', memory_size=1, shared_region=None, offsets=None): self.inst(Declare(name=name, memory_type=memory_type, memory_size= memory_size, shared_region=shared_region, offsets=offsets)) return MemoryReference(name=name, declared_size=memory_size)
declare
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, name, memory_type='BIT', memory_size=1, shared_region=None,\n offsets=None):\n self.inst(Declare(name=name, memory_type=memory_type, memory_size=\n...
def x(self, allow_placeholders): return '\n'.join(itertools.chain((dg.out() for dg in self. _defined_gates), (instr.out(allow_placeholders=allow_placeholders) for instr in self.instructions), ['']))
out
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, allow_placeholders):\n return '\\n'.join(itertools.chain((dg.out() for dg in self.\n _defined_gates), (instr.out(allow_placeholders=allow_place...
def x(self, indices=True): qubits = set() for instr in self.instructions: if isinstance(instr, (Gate, Measurement)): qubits |= instr.get_qubits(indices=indices) return qubits
get_qubits
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, indices=True):\n qubits = set()\n for instr in self.instructions:\n if isinstance(instr, (Gate, Measurement)):\n qubits |= instr....
def x(self, inv_dict=None, suffix='-INV'): if not self.is_protoquil(): raise ValueError('Program must be valid Protoquil') daggered = Program() for gate in self._defined_gates: if inv_dict is None or gate.name not in inv_dict: if gate.parameters: raise TypeError( 'Cannot auto define daggered version of parameterized gates' ) daggered.defgate(gate.name + suffix, gate.matrix.T.conj()) for gate in reversed(self._instructions): if gate.name in QUANTUM_GATES: if gate.name == 'S': daggered.inst(QUANTUM_GATES['PHASE'](-pi / 2, *gate.qubits)) elif gate.name == 'T': daggered.inst(QUANTUM_GATES['RZ'](pi / 4, *gate.qubits)) elif gate.name == 'ISWAP': daggered.inst(QUANTUM_GATES['PSWAP'](pi / 2, *gate.qubits)) else: negated_params = list(map(lambda x: -1 * x, gate.params)) daggered.inst(QUANTUM_GATES[gate.name](*(negated_params + gate.qubits))) else: if inv_dict is None or gate.name not in inv_dict: gate_inv_name = gate.name + suffix else: gate_inv_name = inv_dict[gate.name] daggered.inst(Gate(gate_inv_name, gate.params, gate.qubits)) return daggered
dagger
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, inv_dict=None, suffix='-INV'):\n if not self.is_protoquil():\n raise ValueError('Program must be valid Protoquil')\n daggered = Program()\n ...
def x(self): self._synthesized_instructions = instantiate_labels(self._instructions) self._synthesized_instructions = implicitly_declare_ro(self. _synthesized_instructions) return self
synthesize
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n self._synthesized_instructions = instantiate_labels(self._instructions)\n self._synthesized_instructions = implicitly_declare_ro(self.\n ...
def x(func, log_filename='pyquil_error.log'): def x(*args, **kwargs): global global_error_context old_error_context = global_error_context global_error_context = ErrorContext() global_error_context.filename = log_filename try: val = func(*args, **kwargs) global_error_context = old_error_context return val except Exception as e: global_error_context.dump_error(e, inspect.trace()) global_error_context = old_error_context raise return pyquil_protect_wrapper
pyquil_protect
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(func, log_filename='pyquil_error.log'):\n\n def x(*args, **kwargs):\n global global_error_context\n old_error_context = global_error_context\n...
def x(func): @wraps(func) def x(*args, **kwargs): global global_error_context if global_error_context is not None: key = CallLogKey(name=func.__name__, args=[ serialize_object_for_logging(arg) for arg in args], kwargs= {k: serialize_object_for_logging(v) for k, v in kwargs.items()} ) pre_entry = CallLogValue(timestamp_in=datetime.utcnow(), timestamp_out=None, return_value=None) global_error_context.log[key] = pre_entry val = func(*args, **kwargs) if global_error_context is not None: post_entry = CallLogValue(timestamp_in=pre_entry.timestamp_in, timestamp_out=datetime.utcnow(), return_value= serialize_object_for_logging(val)) global_error_context.log[key] = post_entry return val return wrapper
record_call
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(func):\n\n @wraps(func)\n def x(*args, **kwargs):\n global global_error_context\n if global_error_context is not None:\n key = C...
def x(self, exception, trace): stack_trace = [StacktraceFrame(name=item.function, filename=item. filename, line_number=item.lineno, locals={k: serialize_object_for_logging(v) for k, v in item.frame.f_locals. items()}) for item in trace] system_info = generate_system_info() report = ErrorReport(stack_trace=stack_trace, timestamp=datetime.utcnow (), exception=exception, system_info=system_info, call_log= flatten_log(self.log)) return report
generate_report
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, exception, trace):\n stack_trace = [StacktraceFrame(name=item.function, filename=item.\n filename, line_number=item.lineno, locals={k:\n ...
def x(theta): generator = sX(0) * sY(1) initial_prog = Program().inst(X(1), X(0)) program = initial_prog + exponentiate(float(theta) * generator) return program
ucc_circuit
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(theta):\n generator = sX(0) * sY(1)\n initial_prog = Program().inst(X(1), X(0))\n program = initial_prog + exponentiate(float(theta) * generator)\n ...
def x(theta, hamiltonian=None, quantum_resource=QVMConnection(sync_endpoint ='http://localhost:5000')): if hamiltonian is None: return 1.0 if isinstance(hamiltonian, PauliSum): result = estimate_locally_commuting_operator(ucc_circuit(theta), hamiltonian, 1e-06, quantum_resource=quantum_resource) result = result[0][0].real elif isinstance(hamiltonian, np.ndarray) and isinstance(quantum_resource, QVMConnection): wf = quantum_resource.wavefunction(ucc_circuit(theta)) wf = wf.amplitudes.reshape((-1, 1)) result = np.conj(wf).T.dot(hamiltonian).dot(wf)[0, 0].real print(result) else: raise TypeError('type of hamiltonian or qvm is unrecognized') return result
objective_fun
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(theta, hamiltonian=None, quantum_resource=QVMConnection(sync_endpoint\n ='http://localhost:5000')):\n if hamiltonian is None:\n return 1.0\n if...
def x(program): new_prog = program.copy_everything_except_instructions() last_qubit_operation = {} times_qubit_measured = defaultdict(lambda : 0) ro_size = None qubit_to_ram = {} for instr in program: if isinstance(instr, Pragma): new_prog += instr elif isinstance(instr, Declare): if instr.name == 'ro': if instr.memory_type != 'BIT': raise NotRunAndMeasureProgramError( 'The readout register `ro` must be of type BIT') ro_size = instr.memory_size new_prog += instr elif isinstance(instr, Gate): for qubit in instr.qubits: last_qubit_operation[qubit.index] = 'gate' new_prog += instr elif isinstance(instr, Measurement): if instr.classical_reg is None: raise NotRunAndMeasureProgramError( 'No measure-for-effect allowed') if instr.classical_reg.name != 'ro': raise NotRunAndMeasureProgramError( 'The readout register must be named `ro`, not {}'. format(instr.classical_reg.name)) last_qubit_operation[instr.qubit.index] = 'measure' times_qubit_measured[instr.qubit.index] += 1 qubit_to_ram[instr.qubit.index] = instr.classical_reg.offset else: raise NotRunAndMeasureProgramError( f'Unsupported r_a_m instruction {instr}') for q, lqo in last_qubit_operation.items(): if lqo != 'measure': raise NotRunAndMeasureProgramError( f"Qubit {q}'s last operation is a gate") for q, tqm in times_qubit_measured.items(): if tqm > 1: raise NotRunAndMeasureProgramError( f'Qubit {q} is measured {tqm} times') if ro_size is None: raise NotRunAndMeasureProgramError('Please declare a readout register') return new_prog, qubit_to_ram, ro_size
make_ram_program
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program):\n new_prog = program.copy_everything_except_instructions()\n last_qubit_operation = {}\n times_qubit_measured = defaultdict(lambda : 0)\n ...
def x(self, program: Program) ->'AbstractQuantumSimulator': for gate in program: if not isinstance(gate, Gate): raise ValueError( 'Can only compute the simulate a program composed of `Gate`s') self.do_gate(gate) return self
do_program
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, program: Program) ->'AbstractQuantumSimulator':\n for gate in program:\n if not isinstance(gate, Gate):\n raise ValueError(\n ...
def x(self, label: Label): for index, action in enumerate(self.program): if isinstance(action, JumpTarget): if label == action.label: return index raise RuntimeError( 'Improper program - Jump Target not found in the input program!')
find_label
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, label: Label):\n for index, action in enumerate(self.program):\n if isinstance(action, JumpTarget):\n if label == action.label:\n ...
def x(self): instruction = self.program[self.program_counter] if isinstance(instruction, Gate): if instruction.name in self.defined_gates: self.wf_simulator.do_gate_matrix(matrix=self.defined_gates[ instruction.name], qubits=[q.index for q in instruction.qubits] ) else: self.wf_simulator.do_gate(gate=instruction) for noise_type, noise_prob in self.post_gate_noise_probabilities.items( ): self.wf_simulator.do_post_gate_noise(noise_type, noise_prob, qubits=[q.index for q in instruction.qubits]) self.program_counter += 1 elif isinstance(instruction, Measurement): measured_val = self.wf_simulator.do_measurement(qubit=instruction. qubit.index) x = instruction.classical_reg self.ram[x.name][x.offset] = measured_val self.program_counter += 1 elif isinstance(instruction, Declare): if instruction.shared_region is not None: raise NotImplementedError('SHARING is not (yet) implemented.') self.ram[instruction.name] = np.zeros(instruction.memory_size, dtype=QUIL_TO_NUMPY_DTYPE[instruction.memory_type]) self.program_counter += 1 elif isinstance(instruction, Pragma): self.program_counter += 1 elif isinstance(instruction, Jump): self.program_counter = self.find_label(instruction.target) elif isinstance(instruction, JumpTarget): self.program_counter += 1 elif isinstance(instruction, JumpConditional): x = instruction.condition cond = self.ram[x.name][x.offset] if not isinstance(cond, (bool, np.bool, np.int8)): raise ValueError('{} requires a data type of BIT; not {}'. format(instruction.op, type(cond))) dest_index = self.find_label(instruction.target) if isinstance(instruction, JumpWhen): jump_if_cond = True elif isinstance(instruction, JumpUnless): jump_if_cond = False else: raise TypeError('Invalid JumpConditional') if not cond ^ jump_if_cond: self.program_counter = dest_index else: self.program_counter += 1 elif isinstance(instruction, UnaryClassicalInstruction): target = instruction.target old = self.ram[target.name][target.offset] if isinstance(instruction, ClassicalNeg): if not isinstance(old, (int, float, np.int, np.float)): raise ValueError( 'NEG requires a data type of REAL or INTEGER; not {}'. format(type(old))) self.ram[target.name][target.offset] *= -1 elif isinstance(instruction, ClassicalNot): if not isinstance(old, (bool, np.bool)): raise ValueError('NOT requires a data type of BIT; not {}'. format(type(old))) self.ram[target.name][target.offset] = not old else: raise TypeError('Invalid UnaryClassicalInstruction') self.program_counter += 1 elif isinstance(instruction, (LogicalBinaryOp, ArithmeticBinaryOp, ClassicalMove)): left_ind = instruction.left left_val = self.ram[left_ind.name][left_ind.offset] if isinstance(instruction.right, MemoryReference): right_ind = instruction.right right_val = self.ram[right_ind.name][right_ind.offset] else: right_val = instruction.right if isinstance(instruction, ClassicalAnd): new_val = left_val & right_val elif isinstance(instruction, ClassicalInclusiveOr): new_val = left_val | right_val elif isinstance(instruction, ClassicalExclusiveOr): new_val = left_val ^ right_val elif isinstance(instruction, ClassicalAdd): new_val = left_val + right_val elif isinstance(instruction, ClassicalSub): new_val = left_val - right_val elif isinstance(instruction, ClassicalMul): new_val = left_val * right_val elif isinstance(instruction, ClassicalDiv): new_val = left_val / right_val elif isinstance(instruction, ClassicalMove): new_val = right_val else: raise ValueError('Unknown BinaryOp {}'.format(type(instruction))) self.ram[left_ind.name][left_ind.offset] = new_val self.program_counter += 1 elif isinstance(instruction, ClassicalExchange): left_ind = instruction.left right_ind = instruction.right tmp = self.ram[left_ind.name][left_ind.offset] self.ram[left_ind.name][left_ind.offset] = self.ram[right_ind.name][ right_ind.offset] self.ram[right_ind.name][right_ind.offset] = tmp self.program_counter += 1 elif isinstance(instruction, Reset): self.wf_simulator.reset() self.program_counter += 1 elif isinstance(instruction, ResetQubit): raise NotImplementedError('Need to implement in wf simulator') self.program_counter += 1 elif isinstance(instruction, Wait): warnings.warn('WAIT does nothing for a noiseless simulator') self.program_counter += 1 elif isinstance(instruction, Nop): self.program_counter += 1 elif isinstance(instruction, DefGate): if instruction.parameters is not None and len(instruction.parameters ) > 0: raise NotImplementedError( 'PyQVM does not support parameterized DEFGATEs') self.defined_gates[instruction.name] = instruction.name self.program_counter += 1 elif isinstance(instruction, RawInstr): raise NotImplementedError( 'PyQVM does not support raw instructions. Parse your program') elif isinstance(instruction, Halt): return True else: raise ValueError('Unsupported instruction type: {}'.format(instruction) ) return self.program_counter == len(self.program)
transition
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n instruction = self.program[self.program_counter]\n if isinstance(instruction, Gate):\n if instruction.name in self.defined_gates:\n ...
def x(self, program: Program): for dg in program.defined_gates: if dg.parameters is not None: raise NotImplementedError( 'PyQVM does not support parameterized DEFGATEs') self.defined_gates[dg.name] = dg.matrix self.program = program self.program_counter = 0 halted = len(program) == 0 while not halted: halted = self.transition() return self
execute
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, program: Program):\n for dg in program.defined_gates:\n if dg.parameters is not None:\n raise NotImplementedError(\n ...
def x(endpoint: str=None, timeout: float=10): if endpoint is None: config = PyquilConfig() endpoint = config.quilc_url return BenchmarkConnection(endpoint=endpoint, timeout=timeout)
get_benchmarker
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(endpoint: str=None, timeout: float=10):\n if endpoint is None:\n config = PyquilConfig()\n endpoint = config.quilc_url\n return BenchmarkCo...
def x(self, clifford, pauli_in): if is_identity(pauli_in): return pauli_in indices_and_terms = list(zip(*list(pauli_in.operations_as_set()))) payload = ConjugateByCliffordRequest(clifford=clifford.out(), pauli= rpcq.messages.PauliTerm(indices=list(indices_and_terms[0]), symbols =list(indices_and_terms[1]))) response: ConjugateByCliffordResponse = self.client.call( 'conjugate_pauli_by_clifford', payload) phase_factor, paulis = response.phase, response.pauli pauli_out = PauliTerm('I', 0, 1.0j ** phase_factor) clifford_qubits = clifford.get_qubits() pauli_qubits = pauli_in.get_qubits() all_qubits = sorted(set(pauli_qubits).union(set(clifford_qubits))) for i, pauli in enumerate(paulis): pauli_out *= PauliTerm(pauli, all_qubits[i]) return pauli_out * pauli_in.coefficient
apply_clifford_to_pauli
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, clifford, pauli_in):\n if is_identity(pauli_in):\n return pauli_in\n indices_and_terms = list(zip(*list(pauli_in.operations_as_set())))\n ...
def x(self, depth, gateset, seed=None, interleaver=None): gateset_as_program = address_qubits(sum(gateset, Program())) qubits = len(gateset_as_program.get_qubits()) gateset_for_api = gateset_as_program.out().splitlines() if interleaver: assert isinstance(interleaver, Program) interleaver = interleaver.out() depth = int(depth) payload = RandomizedBenchmarkingRequest(depth=depth, qubits=qubits, gateset=gateset_for_api, seed=seed, interleaver=interleaver) response = self.client.call('generate_rb_sequence', payload) programs = [] for clifford in response.sequence: clifford_program = Program() for index in reversed(clifford): clifford_program.inst(gateset[index]) programs.append(clifford_program) return list(reversed(programs))
generate_rb_sequence
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, depth, gateset, seed=None, interleaver=None):\n gateset_as_program = address_qubits(sum(gateset, Program()))\n qubits = len(gateset_as_program.get_...
def x(qubit): if isinstance(qubit, integer_types): return Qubit(qubit) elif isinstance(qubit, Qubit): return qubit elif isinstance(qubit, QubitPlaceholder): return qubit else: raise TypeError('qubit should be an int or Qubit instance')
unpack_qubit
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(qubit):\n if isinstance(qubit, integer_types):\n return Qubit(qubit)\n elif isinstance(qubit, Qubit):\n return qubit\n elif isinstance(q...
def x(c): if isinstance(c, list) or isinstance(c, tuple): if len(c) > 2 or len(c) == 0: raise ValueError( 'if c is a list/tuple, it should be of length <= 2') if len(c) == 1: c = c[0], 0 if not isinstance(c[0], str): raise ValueError( 'if c is a list/tuple, its first member should be a string') if not isinstance(c[1], int): raise ValueError( 'if c is a list/tuple, its second member should be an int') return MemoryReference(c[0], c[1]) if isinstance(c, MemoryReference): return c elif isinstance(c, str): return MemoryReference(c, 0) else: raise TypeError( 'c should be a list of length 2, a pair, a string, or a MemoryReference' )
unpack_classical_reg
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(c):\n if isinstance(c, list) or isinstance(c, tuple):\n if len(c) > 2 or len(c) == 0:\n raise ValueError(\n 'if c is a list...
def x(element): if isinstance(element, integer_types) or isinstance(element, np.int_): return repr(element) elif isinstance(element, float): return _check_for_pi(element) elif isinstance(element, complex): out = '' r = element.real i = element.imag if i == 0: return repr(r) if r != 0: out += repr(r) if i == 1: assert np.isclose(r, 0, atol=1e-14) out = 'i' elif i == -1: assert np.isclose(r, 0, atol=1e-14) out = '-i' elif i < 0: out += repr(i) + 'i' elif r != 0: out += '+' + repr(i) + 'i' else: out += repr(i) + 'i' return out elif isinstance(element, MemoryReference): return str(element) elif isinstance(element, Expression): return _expression_to_string(element) elif isinstance(element, MemoryReference): return element.out() assert False, 'Invalid parameter: %r' % element
format_parameter
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(element):\n if isinstance(element, integer_types) or isinstance(element, np.int_):\n return repr(element)\n elif isinstance(element, float):\n ...
def x(a, d): a = np.asarray(a, order='C') return np.array([substitute(v, d) for v in a.flat]).reshape(a.shape)
substitute_array
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(a, d):\n a = np.asarray(a, order='C')\n return np.array([substitute(v, d) for v in a.flat]).reshape(a.shape)\n", "role": "user" }, { "content...
def x(expression): if isinstance(expression, BinaryExp): left = _expression_to_string(expression.op1) if isinstance(expression.op1, BinaryExp) and not (expression.op1. precedence > expression.precedence or expression.op1.precedence == expression.precedence and expression.associates in ('left', 'both') ): left = '(' + left + ')' right = _expression_to_string(expression.op2) if isinstance(expression.op2, BinaryExp) and not (expression. precedence < expression.op2.precedence or expression.precedence == expression.op2.precedence and expression.associates in ('right', 'both')): right = '(' + right + ')' return left + expression.operator + right elif isinstance(expression, Function): return expression.name + '(' + _expression_to_string(expression. expression) + ')' elif isinstance(expression, Parameter): return str(expression) else: return format_parameter(expression)
expression_to_string
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(expression):\n if isinstance(expression, BinaryExp):\n left = _expression_to_string(expression.op1)\n if isinstance(expression.op1, BinaryExp)...
def x(expression): if isinstance(expression, BinaryExp): return _contained_parameters(expression.op1) | _contained_parameters( expression.op2) elif isinstance(expression, Function): return _contained_parameters(expression.expression) elif isinstance(expression, Parameter): return {expression} else: return set()
contained_parameters
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(expression):\n if isinstance(expression, BinaryExp):\n return _contained_parameters(expression.op1) | _contained_parameters(\n expression....
def x(element): frac = Fraction(element / np.pi).limit_denominator(8) num, den = frac.numerator, frac.denominator sign = '-' if num < 0 else '' if num / float(den) == element / np.pi: if num == 0: return '0' elif abs(num) == 1 and den == 1: return sign + 'pi' elif abs(num) == 1: return sign + 'pi/' + repr(den) elif den == 1: return repr(num) + '*pi' else: return repr(num) + '*pi/' + repr(den) else: return repr(element)
check_for_pi
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(element):\n frac = Fraction(element / np.pi).limit_denominator(8)\n num, den = frac.numerator, frac.denominator\n sign = '-' if num < 0 else ''\n i...
def x(prog, T1=3e-05, T2=3e-05, gate_time_1q=5e-08, gate_time_2q=1.5e-07, ro_fidelity=0.95): warnings.warn( 'pyquil.kraus.add_noise_to_program is deprecated, please use pyquil.noise.add_decoherence_noise instead.' , DeprecationWarning) return add_decoherence_noise(prog, T1=T1, T2=T2, gate_time_1q= gate_time_1q, gate_time_2q=gate_time_2q, ro_fidelity=ro_fidelity)
add_noise_to_program
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(prog, T1=3e-05, T2=3e-05, gate_time_1q=5e-08, gate_time_2q=1.5e-07,\n ro_fidelity=0.95):\n warnings.warn(\n 'pyquil.kraus.add_noise_to_program is ...
def x(n_bits): n_bitstrings = 2 ** n_bits out = np.zeros(shape=(n_bitstrings, n_bits), dtype=np.int8) tf = np.array([False, True]) for i in range(n_bits): j = n_bits - i - 1 out[np.tile(np.repeat(tf, 2 ** j), 2 ** i), i] = 1 return out
all_bitstrings
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(n_bits):\n n_bitstrings = 2 ** n_bits\n out = np.zeros(shape=(n_bitstrings, n_bits), dtype=np.int8)\n tf = np.array([False, True])\n for i in range...
def x(i, matrix, n_qubits): n_rows, n_cols = matrix.shape assert n_rows == n_cols, 'Matrix must be square' gate_size = np.log2(n_rows) assert gate_size == int(gate_size), 'Matrix must be 2^n by 2^n' gate_size = int(gate_size) bottom_matrix = np.eye(2 ** i, dtype=np.complex128) top_qubits = n_qubits - i - gate_size top_matrix = np.eye(2 ** top_qubits, dtype=np.complex128) return np.kron(top_matrix, np.kron(matrix, bottom_matrix))
qubit_adjacent_lifted_gate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(i, matrix, n_qubits):\n n_rows, n_cols = matrix.shape\n assert n_rows == n_cols, 'Matrix must be square'\n gate_size = np.log2(n_rows)\n assert gat...
def x(j, k, num_qubits, qubit_map): if not (0 <= j < num_qubits and 0 <= k < num_qubits): raise ValueError('Permutation SWAP index not valid') perm = np.eye(2 ** num_qubits, dtype=np.complex128) new_qubit_map = np.copy(qubit_map) if j == k: return perm, new_qubit_map elif j > k: for i in range(j, k, -1): perm = qubit_adjacent_lifted_gate(i - 1, SWAP, num_qubits).dot(perm ) new_qubit_map[i - 1], new_qubit_map[i] = new_qubit_map[i ], new_qubit_map[i - 1] elif j < k: for i in range(j, k, 1): perm = qubit_adjacent_lifted_gate(i, SWAP, num_qubits).dot(perm) new_qubit_map[i], new_qubit_map[i + 1] = new_qubit_map[i + 1 ], new_qubit_map[i] return perm, new_qubit_map
two_swap_helper
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(j, k, num_qubits, qubit_map):\n if not (0 <= j < num_qubits and 0 <= k < num_qubits):\n raise ValueError('Permutation SWAP index not valid')\n per...
def x(qubit_inds, n_qubits): perm = np.eye(2 ** n_qubits, dtype=np.complex128) sorted_inds = np.sort(qubit_inds) med_i = len(qubit_inds) // 2 med = sorted_inds[med_i] start = med - med_i final_map = np.arange(start, start + len(qubit_inds))[::-1] start_i = final_map[-1] qubit_arr = np.arange(n_qubits) made_it = False right = True while not made_it: array = range(len(qubit_inds)) if right else range(len(qubit_inds))[: :-1] for i in array: pmod, qubit_arr = two_swap_helper(np.where(qubit_arr == qubit_inds[i])[0][0], final_map[i], n_qubits, qubit_arr) perm = pmod.dot(perm) if np.allclose(qubit_arr[final_map[-1]:final_map[0] + 1][::-1], qubit_inds): made_it = True break right = not right assert np.allclose(qubit_arr[final_map[-1]:final_map[0] + 1][::-1], qubit_inds) return perm, qubit_arr[::-1], start_i
permutation_arbitrary
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(qubit_inds, n_qubits):\n perm = np.eye(2 ** n_qubits, dtype=np.complex128)\n sorted_inds = np.sort(qubit_inds)\n med_i = len(qubit_inds) // 2\n med...
def x(matrix: np.ndarray, qubit_inds: List[int], n_qubits: int): n_rows, n_cols = matrix.shape assert n_rows == n_cols, 'Matrix must be square' gate_size = np.log2(n_rows) assert gate_size == int(gate_size), 'Matrix must be 2^n by 2^n' gate_size = int(gate_size) pi_permutation_matrix, final_map, start_i = permutation_arbitrary( qubit_inds, n_qubits) if start_i > 0: check = final_map[-gate_size - start_i:-start_i] else: check = final_map[-gate_size - start_i:] np.testing.assert_allclose(check, qubit_inds) v_matrix = qubit_adjacent_lifted_gate(start_i, matrix, n_qubits) return np.dot(np.conj(pi_permutation_matrix.T), np.dot(v_matrix, pi_permutation_matrix))
lifted_gate_matrix
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(matrix: np.ndarray, qubit_inds: List[int], n_qubits: int):\n n_rows, n_cols = matrix.shape\n assert n_rows == n_cols, 'Matrix must be square'\n gate_s...
def x(gate: Gate, n_qubits: int): if len(gate.params) > 0: matrix = QUANTUM_GATES[gate.name](*gate.params) else: matrix = QUANTUM_GATES[gate.name] return lifted_gate_matrix(matrix=matrix, qubit_inds=[q.index for q in gate.qubits], n_qubits=n_qubits)
lifted_gate
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(gate: Gate, n_qubits: int):\n if len(gate.params) > 0:\n matrix = QUANTUM_GATES[gate.name](*gate.params)\n else:\n matrix = QUANTUM_GATES[g...
def x(program, n_qubits): umat = np.eye(2 ** n_qubits) for instruction in program: if isinstance(instruction, Gate): unitary = lifted_gate(gate=instruction, n_qubits=n_qubits) umat = unitary.dot(umat) else: raise ValueError( 'Can only compute program unitary for programs composed of `Gate`s' ) return umat
program_unitary
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program, n_qubits):\n umat = np.eye(2 ** n_qubits)\n for instruction in program:\n if isinstance(instruction, Gate):\n unitary = lifted...
def x(pauli_sum: Union[PauliSum, PauliTerm], qubits: List[int]): if isinstance(pauli_sum, PauliTerm): pauli_sum = PauliSum([pauli_sum]) n_qubits = len(qubits) result_hilbert = np.zeros((2 ** n_qubits, 2 ** n_qubits), dtype=np. complex128) for term in pauli_sum.terms: term_hilbert = np.array([1]) for qubit in qubits: term_hilbert = np.kron(QUANTUM_GATES[term[qubit]], term_hilbert) result_hilbert += term_hilbert * term.coefficient return result_hilbert
lifted_pauli
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(pauli_sum: Union[PauliSum, PauliTerm], qubits: List[int]):\n if isinstance(pauli_sum, PauliTerm):\n pauli_sum = PauliSum([pauli_sum])\n n_qubits =...
def x(pauli_sum: Union[PauliSum, PauliTerm], qubits: List[int]): return lifted_pauli(pauli_sum=pauli_sum, qubits=qubits)
tensor_up
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(pauli_sum: Union[PauliSum, PauliTerm], qubits: List[int]):\n return lifted_pauli(pauli_sum=pauli_sum, qubits=qubits)\n", "role": "user" }, { "co...
def x(state: TensorProductState, qubits: List[int]): mat = 1.0 for qubit in qubits: oneq_state = state[qubit] assert oneq_state.qubit == qubit state_vector = STATES[oneq_state.label][oneq_state.index][:, np.newaxis ] state_matrix = state_vector @ state_vector.conj().T mat = np.kron(state_matrix, mat) return mat
lifted_state_operator
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(state: TensorProductState, qubits: List[int]):\n mat = 1.0\n for qubit in qubits:\n oneq_state = state[qubit]\n assert oneq_state.qubit == ...
def x(program: Program, max_len=10): program_lines = program.out().splitlines() if max_len is not None and len(program_lines) > max_len: first_n = max_len // 2 last_n = max_len - first_n excluded = len(program_lines) - max_len program_lines = program_lines[:first_n] + [ f'... {excluded} instrs not shown ...'] + program_lines[-last_n:] return '; '.join(program_lines)
abbrev_program
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(program: Program, max_len=10):\n program_lines = program.out().splitlines()\n if max_len is not None and len(program_lines) > max_len:\n first_n =...
def x(fn, obj): with open(fn, 'w') as f: json.dump(obj, f, cls=OperatorEncoder, indent=2, ensure_ascii=False) return fn
to_json
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(fn, obj):\n with open(fn, 'w') as f:\n json.dump(obj, f, cls=OperatorEncoder, indent=2, ensure_ascii=False)\n return fn\n", "role": "user" }...
def x(fn): with open(fn) as f: return json.load(f, object_hook=_operator_object_hook)
read_json
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(fn):\n with open(fn) as f:\n return json.load(f, object_hook=_operator_object_hook)\n", "role": "user" }, { "content": "read_json", "...
def x(index, qubit): if index == 0: return Program() theta = 2 * np.arccos(1 / np.sqrt(3)) zx_plane_rotation = Program([RX(-pi / 2, qubit), RZ(theta - pi, qubit), RX(-pi / 2, qubit)]) if index == 1: return zx_plane_rotation elif index == 2: return zx_plane_rotation + RZ(-2 * pi / 3, qubit) elif index == 3: return zx_plane_rotation + RZ(2 * pi / 3, qubit) raise ValueError(f'Bad SIC index: {index}')
one_q_sic_prep
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(index, qubit):\n if index == 0:\n return Program()\n theta = 2 * np.arccos(1 / np.sqrt(3))\n zx_plane_rotation = Program([RX(-pi / 2, qubit), R...
def x(label, index, qubit): if index not in [0, 1]: raise ValueError(f'Bad Pauli index: {index}') if label == 'X': if index == 0: return Program(RY(pi / 2, qubit)) else: return Program(RY(-pi / 2, qubit)) elif label == 'Y': if index == 0: return Program(RX(-pi / 2, qubit)) else: return Program(RX(pi / 2, qubit)) elif label == 'Z': if index == 0: return Program() else: return Program(RX(pi, qubit)) raise ValueError(f'Bad Pauli label: {label}')
one_q_pauli_prep
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(label, index, qubit):\n if index not in [0, 1]:\n raise ValueError(f'Bad Pauli index: {index}')\n if label == 'X':\n if index == 0:\n ...
def x(oneq_state: _OneQState): label = oneq_state.label if label == 'SIC': return _one_q_sic_prep(oneq_state.index, oneq_state.qubit) elif label in ['X', 'Y', 'Z']: return _one_q_pauli_prep(label, oneq_state.index, oneq_state.qubit) else: raise ValueError(f'Bad state label: {label}')
one_q_state_prep
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(oneq_state: _OneQState):\n label = oneq_state.label\n if label == 'SIC':\n return _one_q_sic_prep(oneq_state.index, oneq_state.qubit)\n elif la...
def x(op, idx): if op == 'X': return Program(RY(-pi / 2, idx)) elif op == 'Y': return Program(RX(pi / 2, idx)) elif op == 'Z': return Program() raise ValueError(f'Unknown operation {op}')
local_pauli_eig_meas
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(op, idx):\n if op == 'X':\n return Program(RY(-pi / 2, idx))\n elif op == 'Y':\n return Program(RX(pi / 2, idx))\n elif op == 'Z':\n ...
def x(experiments: TomographyExperiment): g = nx.Graph() for expt in experiments: assert len(expt) == 1, 'already grouped?' expt = expt[0] if expt not in g: g.add_node(expt, count=1) else: g.nodes[expt]['count'] += 1 for expt1, expt2 in itertools.combinations(experiments, r=2): expt1 = expt1[0] expt2 = expt2[0] if expt1 == expt2: continue max_weight_in = _max_weight_state([expt1.in_state, expt2.in_state]) max_weight_out = _max_weight_operator([expt1.out_operator, expt2. out_operator]) if max_weight_in is not None and max_weight_out is not None: g.add_edge(expt1, expt2) return g
construct_tpb_graph
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(experiments: TomographyExperiment):\n g = nx.Graph()\n for expt in experiments:\n assert len(expt) == 1, 'already grouped?'\n expt = expt[0...
def x(experiments: TomographyExperiment) ->TomographyExperiment: g = construct_tpb_graph(experiments) _, cliqs = clique_removal(g) new_cliqs = [] for cliq in cliqs: new_cliq = [] for expt in cliq: new_cliq += [expt] * g.nodes[expt]['count'] new_cliqs += [new_cliq] return TomographyExperiment(new_cliqs, program=experiments.program)
group_experiments_clique_removal
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(experiments: TomographyExperiment) ->TomographyExperiment:\n g = construct_tpb_graph(experiments)\n _, cliqs = clique_removal(g)\n new_cliqs = []\n ...
def x(ops: Iterable[PauliTerm]) ->Union[None, PauliTerm]: mapping = dict() for op in ops: for idx, op_str in op: if idx in mapping: if mapping[idx] != op_str: return None else: mapping[idx] = op_str op = functools.reduce(mul, (PauliTerm(op, q) for q, op in mapping.items ()), sI()) return op
max_weight_operator
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(ops: Iterable[PauliTerm]) ->Union[None, PauliTerm]:\n mapping = dict()\n for op in ops:\n for idx, op_str in op:\n if idx in mapping:\n...
def x(states: Iterable[TensorProductState]) ->Union[None, TensorProductState]: mapping = dict() for state in states: for oneq_state in state.states: if oneq_state.qubit in mapping: if mapping[oneq_state.qubit] != oneq_state: return None else: mapping[oneq_state.qubit] = oneq_state return TensorProductState(list(mapping.values()))
max_weight_state
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(states: Iterable[TensorProductState]) ->Union[None, TensorProductState]:\n mapping = dict()\n for state in states:\n for oneq_state in state.state...
def x(tomo_expt: TomographyExperiment): diagonal_sets = {} for expt_setting in tomo_expt: assert len(expt_setting) == 1, 'already grouped?' expt_setting = expt_setting[0] found_tpb = False for es, es_list in diagonal_sets.items(): trial_es_list = es_list + [expt_setting] diag_in_term = _max_weight_state(expst.in_state for expst in trial_es_list) diag_out_term = _max_weight_operator(expst.out_operator for expst in trial_es_list) if diag_in_term is not None and diag_out_term is not None: found_tpb = True assert len(diag_in_term) >= len(es.in_state ), "Highest weight in-state can't be smaller than the given in-state" assert len(diag_out_term) >= len(es.out_operator ), "Highest weight out-PauliTerm can't be smaller than the given out-PauliTerm" if len(diag_in_term) > len(es.in_state) or len(diag_out_term ) > len(es.out_operator): del diagonal_sets[es] new_es = ExperimentSetting(diag_in_term, diag_out_term) diagonal_sets[new_es] = trial_es_list else: diagonal_sets[es] = trial_es_list break if not found_tpb: diagonal_sets[expt_setting] = [expt_setting] return diagonal_sets
max_tpb_overlap
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(tomo_expt: TomographyExperiment):\n diagonal_sets = {}\n for expt_setting in tomo_expt:\n assert len(expt_setting) == 1, 'already grouped?'\n ...
def x(tomo_expt: TomographyExperiment): diag_sets = _max_tpb_overlap(tomo_expt) grouped_expt_settings_list = list(diag_sets.values()) grouped_tomo_expt = TomographyExperiment(grouped_expt_settings_list, program=tomo_expt.program) return grouped_tomo_expt
group_experiments_greedy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(tomo_expt: TomographyExperiment):\n diag_sets = _max_tpb_overlap(tomo_expt)\n grouped_expt_settings_list = list(diag_sets.values())\n grouped_tomo_exp...
def x(experiments: TomographyExperiment, method: str='greedy' ) ->TomographyExperiment: allowed_methods = ['greedy', 'clique-removal'] assert method in allowed_methods, f"'method' should be one of {allowed_methods}." if method == 'greedy': return group_experiments_greedy(experiments) elif method == 'clique-removal': return group_experiments_clique_removal(experiments)
group_experiments
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(experiments: TomographyExperiment, method: str='greedy'\n ) ->TomographyExperiment:\n allowed_methods = ['greedy', 'clique-removal']\n assert method i...
def x(qc: QuantumComputer, tomo_experiment: TomographyExperiment, n_shots: int=10000, progress_callback=None, active_reset=False, symmetrize_readout: str='exhaustive', calibrate_readout: str='plus-eig'): if calibrate_readout is not None and symmetrize_readout is None: raise ValueError( 'Readout calibration only works with readout symmetrization turned on' ) for i, settings in enumerate(tomo_experiment): log.info( f'Collecting bitstrings for the {len(settings)} settings: {settings}' ) total_prog = Program() if active_reset: total_prog += RESET() max_weight_in_state = _max_weight_state(setting.in_state for setting in settings) for oneq_state in max_weight_in_state.states: total_prog += _one_q_state_prep(oneq_state) total_prog += tomo_experiment.program max_weight_out_op = _max_weight_operator(setting.out_operator for setting in settings) for qubit, op_str in max_weight_out_op: total_prog += _local_pauli_eig_meas(op_str, qubit) qubits = max_weight_out_op.get_qubits() if symmetrize_readout == 'exhaustive' and len(qubits) > 0: bitstrings, d_qub_idx = _exhaustive_symmetrization(qc, qubits, n_shots, total_prog) elif symmetrize_readout is None and len(qubits) > 0: total_prog_no_symm = total_prog.copy() ro = total_prog_no_symm.declare('ro', 'BIT', len(qubits)) d_qub_idx = {} for i, q in enumerate(qubits): total_prog_no_symm += MEASURE(q, ro[i]) d_qub_idx[q] = i total_prog_no_symm.wrap_in_numshots_loop(n_shots) total_prog_no_symm_native = qc.compiler.quil_to_native_quil( total_prog_no_symm) total_prog_no_symm_bin = qc.compiler.native_quil_to_executable( total_prog_no_symm_native) bitstrings = qc.run(total_prog_no_symm_bin) elif len(qubits) == 0: pass else: raise ValueError( "Readout symmetrization method must be either 'exhaustive' or None" ) if progress_callback is not None: progress_callback(i, len(tomo_experiment)) for setting in settings: coeff = complex(setting.out_operator.coefficient) if not np.isclose(coeff.imag, 0): raise ValueError( f"{setting}'s out_operator has a complex coefficient.") coeff = coeff.real if is_identity(setting.out_operator): yield ExperimentResult(setting=setting, expectation=coeff, std_err=0.0, total_counts=n_shots) continue obs_mean, obs_var = _stats_from_measurements(bitstrings, d_qub_idx, setting, n_shots, coeff) if calibrate_readout == 'plus-eig': calibr_prog = _calibration_program(qc, tomo_experiment, setting ) if symmetrize_readout == 'exhaustive': qubs_calibr = setting.out_operator.get_qubits() calibr_shots = n_shots calibr_results, d_calibr_qub_idx = ( _exhaustive_symmetrization(qc, qubs_calibr, calibr_shots, calibr_prog)) else: raise ValueError( "Readout symmetrization method must be either 'exhaustive' or None" ) obs_calibr_mean, obs_calibr_var = _stats_from_measurements( calibr_results, d_calibr_qub_idx, setting, calibr_shots) corrected_mean = obs_mean / obs_calibr_mean corrected_var = ratio_variance(obs_mean, obs_var, obs_calibr_mean, obs_calibr_var) yield ExperimentResult(setting=setting, expectation= corrected_mean.item(), std_err=np.sqrt(corrected_var). item(), total_counts=n_shots, raw_expectation=obs_mean. item(), raw_std_err=np.sqrt(obs_var).item(), calibration_expectation=obs_calibr_mean.item(), calibration_std_err=np.sqrt(obs_calibr_var).item(), calibration_counts=calibr_shots) elif calibrate_readout is None: yield ExperimentResult(setting=setting, expectation= obs_mean.item(), std_err=np.sqrt(obs_var).item(), total_counts=n_shots) else: raise ValueError( "Calibration readout method must be either 'plus-eig' or None" )
measure_observables
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(qc: QuantumComputer, tomo_experiment: TomographyExperiment, n_shots:\n int=10000, progress_callback=None, active_reset=False,\n symmetrize_readout: str='...
def x(ops_bool: Tuple[bool], qubits: List[int]) ->Program: assert len(ops_bool) == len(qubits), 'Mismatch of qubits and operations' prog = Program() for i, op_bool in enumerate(ops_bool): if op_bool == 0: continue elif op_bool == 1: prog += Program(X(qubits[i])) else: raise ValueError('ops_bool should only consist of 0s and/or 1s') return prog
ops_bool_to_prog
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(ops_bool: Tuple[bool], qubits: List[int]) ->Program:\n assert len(ops_bool) == len(qubits), 'Mismatch of qubits and operations'\n prog = Program()\n f...