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import sys
if sys.version_info[0] == 2: raise ImportError('Python 2.x is not supported for stormpy.')
from . import core from .core import * from . import storage from .storage import * from ._config import * from .logic import * from .exceptions import *
from pycarl import Variable # needed for building parametric models
__version__ = "unknown" try: from _version import __version__ except ImportError: # We're running in a tree that doesn't have a _version.py, so we don't know what our version is. pass
core._set_up("")
def build_model(symbolic_description, properties=None): """
Build a model from a symbolic description.
:param symbolic_description: Symbolic model description to translate into a model. :param List[Property] properties: List of properties that should be preserved during the translation. If None, then all properties are preserved. :return: Model in sparse representation. :rtype: SparseDtmc or SparseMdp """
if not symbolic_description.undefined_constants_are_graph_preserving: raise StormError("Program still contains undefined constants")
if properties: formulae = [prop.raw_formula for prop in properties] intermediate = core._build_sparse_model_from_prism_program(symbolic_description, formulae) else: intermediate = core._build_sparse_model_from_prism_program(symbolic_description) assert not intermediate.supports_parameters if intermediate.model_type == ModelType.DTMC: return intermediate._as_dtmc() elif intermediate.model_type == ModelType.MDP: return intermediate._as_mdp() elif intermediate.model_type == ModelType.CTMC: return intermediate._as_ctmc() elif intermediate.model_type == ModelType.MA: return intermediate._as_ma() else: raise StormError("Not supported non-parametric model constructed")
def build_parametric_model(symbolic_description, properties=None): """
Build a parametric model from a symbolic description. :param symbolic_description: Symbolic model description to translate into a model. :param List[Property] properties: List of properties that should be preserved during the translation. If None, then all properties are preserved. :return: Parametric model in sparse representation. :rtype: SparseParametricDtmc or SparseParametricMdp """
if not symbolic_description.undefined_constants_are_graph_preserving: raise StormError("Program still contains undefined constants")
if properties: formulae = [prop.raw_formula for prop in properties] else: formulae = [] intermediate = core._build_sparse_parametric_model_from_prism_program(symbolic_description, formulae) assert intermediate.supports_parameters if intermediate.model_type == ModelType.DTMC: return intermediate._as_pdtmc() elif intermediate.model_type == ModelType.MDP: return intermediate._as_pmdp() elif intermediate.model_type == ModelType.CTMC: return intermediate._as_pctmc() elif intermediate.model_type == ModelType.MA: return intermediate._as_pma() else: raise StormError("Not supported parametric model constructed")
def build_model_from_drn(file): """
Build a model from the explicit DRN representation.
:param String file: DRN file containing the model. :return: Model in sparse representation. :rtype: SparseDtmc or SparseMdp or SparseCTMC or SparseMA """
intermediate = core._build_sparse_model_from_drn(file) assert not intermediate.supports_parameters if intermediate.model_type == ModelType.DTMC: return intermediate._as_dtmc() elif intermediate.model_type == ModelType.MDP: return intermediate._as_mdp() elif intermediate.model_type == ModelType.CTMC: return intermediate._as_ctmc() elif intermediate.model_type == ModelType.MA: return intermediate._as_ma() else: raise StormError("Not supported non-parametric model constructed")
def build_parametric_model_from_drn(file): """
Build a parametric model from the explicit DRN representation.
:param String file: DRN file containing the model. :return: Parametric model in sparse representation. :rtype: SparseParametricDtmc or SparseParametricMdp or SparseParametricCTMC or SparseParametricMA """
intermediate = core._build_sparse_parametric_model_from_drn(file) assert intermediate.supports_parameters if intermediate.model_type == ModelType.DTMC: return intermediate._as_pdtmc() elif intermediate.model_type == ModelType.MDP: return intermediate._as_pmdp() elif intermediate.model_type == ModelType.CTMC: return intermediate._as_pctmc() elif intermediate.model_type == ModelType.MA: return intermediate._as_pma() else: raise StormError("Not supported parametric model constructed")
def perform_bisimulation(model, properties, bisimulation_type): """
Perform bisimulation on model. :param model: Model. :param properties: Properties to preserve during bisimulation. :param bisimulation_type: Type of bisimulation (weak or strong). :return: Model after bisimulation. """
formulae = [prop.raw_formula for prop in properties] if model.supports_parameters: return core._perform_parametric_bisimulation(model, formulae, bisimulation_type) else: return core._perform_bisimulation(model, formulae, bisimulation_type)
def model_checking(model, property, only_initial_states=False, extract_scheduler=False): """
Perform model checking on model for property. :param model: Model. :param property: Property to check for. :param only_initial_states: If True, only results for initial states are computed. If False, results for all states are computed. :param extract_scheduler: If True, try to extract a scheduler :return: Model checking result. :rtype: CheckResult """
if isinstance(property, Property): formula = property.raw_formula else: formula = property
if model.supports_parameters: task = core.ParametricCheckTask(formula, only_initial_states) task.set_produce_schedulers(extract_scheduler) return core._parametric_model_checking_sparse_engine(model, task) else: task = core.CheckTask(formula, only_initial_states) task.set_produce_schedulers(extract_scheduler) return core._model_checking_sparse_engine(model, task)
def prob01min_states(model, eventually_formula): assert type(eventually_formula) == logic.EventuallyFormula labelform = eventually_formula.subformula labelprop = core.Property("label-prop", labelform) phiStates = BitVector(model.nr_states, True) psiStates = model_checking(model, labelprop).get_truth_values() return compute_prob01min_states(model, phiStates, psiStates)
def prob01max_states(model, eventually_formula): assert type(eventually_formula) == logic.EventuallyFormula labelform = eventually_formula.subformula labelprop = core.Property("label-prop", labelform) phiStates = BitVector(model.nr_states, True) psiStates = model_checking(model, labelprop).get_truth_values() return compute_prob01min_states(model, phiStates, psiStates)
def compute_prob01_states(model, phi_states, psi_states): """
Compute prob01 states for properties of the form phi_states until psi_states
:param SparseDTMC model: :param BitVector phi_states: :param BitVector psi_states: Target states """
if model.model_type != ModelType.DTMC: raise StormError("Prob 01 is only defined for DTMCs -- model must be a DTMC")
if model.supports_parameters: return core._compute_prob01states_rationalfunc(model, phi_states, psi_states) else: return core._compute_prob01states_double(model, phi_states, psi_states)
def compute_prob01min_states(model, phi_states, psi_states): if model.model_type == ModelType.DTMC: return compute_prob01_states(model, phi_states, psi_states) if model.supports_parameters: return core._compute_prob01states_min_rationalfunc(model, phi_states, psi_states) else: return core._compute_prob01states_min_double(model, phi_states, psi_states)
def compute_prob01max_states(model, phi_states, psi_states): if model.model_type == ModelType.DTMC: return compute_prob01_states(model, phi_states, psi_states) if model.supports_parameters: return core._compute_prob01states_max_rationalfunc(model, phi_states, psi_states) else: return core._compute_prob01states_max_double(model, phi_states, psi_states)
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