"""Python STIX2 Environment API.""" import copy import logging import time from .core import parse as _parse from .datastore import CompositeDataSource, DataStoreMixin from .utils import STIXdatetime, parse_into_datetime logger = logging.getLogger(__name__) class ObjectFactory(object): """Easily create STIX objects with default values for certain properties. Args: created_by_ref (optional): Default created_by_ref value to apply to all objects created by this factory. created (optional): Default created value to apply to all objects created by this factory. external_references (optional): Default `external_references` value to apply to all objects created by this factory. object_marking_refs (optional): Default `object_marking_refs` value to apply to all objects created by this factory. list_append (bool, optional): When a default is set for a list property like `external_references` or `object_marking_refs` and a value for that property is passed into `create()`, if this is set to True, that value will be added to the list alongside the default. If this is set to False, the passed in value will replace the default. Defaults to True. """ def __init__( self, created_by_ref=None, created=None, external_references=None, object_marking_refs=None, list_append=True, ): self._defaults = {} if created_by_ref: self.set_default_creator(created_by_ref) if created: self.set_default_created(created) if external_references: self.set_default_external_refs(external_references) if object_marking_refs: self.set_default_object_marking_refs(object_marking_refs) self._list_append = list_append self._list_properties = ['external_references', 'object_marking_refs'] def set_default_creator(self, creator=None): """Set default value for the `created_by_ref` property. """ self._defaults['created_by_ref'] = creator def set_default_created(self, created=None): """Set default value for the `created` property. """ self._defaults['created'] = created # If the user provides a default "created" time, we also want to use # that as the modified time. self._defaults['modified'] = created def set_default_external_refs(self, external_references=None): """Set default external references. """ self._defaults['external_references'] = external_references def set_default_object_marking_refs(self, object_marking_refs=None): """Set default object markings. """ self._defaults['object_marking_refs'] = object_marking_refs def create(self, cls, **kwargs): """Create a STIX object using object factory defaults. Args: cls: the python-stix2 class of the object to be created (eg. Indicator) **kwargs: The property/value pairs of the STIX object to be created """ # Use self.defaults as the base, but update with any explicit args # provided by the user. properties = copy.deepcopy(self._defaults) if kwargs: if self._list_append: # Append provided items to list properties instead of replacing them for list_prop in set(self._list_properties).intersection(kwargs.keys(), properties.keys()): kwarg_prop = kwargs.pop(list_prop) if kwarg_prop is None: del properties[list_prop] continue if not isinstance(properties[list_prop], list): properties[list_prop] = [properties[list_prop]] if isinstance(kwarg_prop, list): properties[list_prop].extend(kwarg_prop) else: properties[list_prop].append(kwarg_prop) properties.update(**kwargs) return cls(**properties) class Environment(DataStoreMixin): """Abstract away some of the nasty details of working with STIX content. Args: factory (ObjectFactory, optional): Factory for creating objects with common defaults for certain properties. store (DataStore, optional): Data store providing the source and sink for the environment. source (DataSource, optional): Source for retrieving STIX objects. sink (DataSink, optional): Destination for saving STIX objects. Invalid if `store` is also provided. .. automethod:: get .. automethod:: all_versions .. automethod:: query .. automethod:: creator_of .. automethod:: relationships .. automethod:: related_to .. automethod:: add """ def __init__(self, factory=ObjectFactory(), store=None, source=None, sink=None): self.factory = factory self.source = CompositeDataSource() if store: self.source.add_data_source(store.source) self.sink = store.sink if source: self.source.add_data_source(source) if sink: if store: raise ValueError("Data store already provided! Environment may only have one data sink.") self.sink = sink def create(self, *args, **kwargs): return self.factory.create(*args, **kwargs) create.__doc__ = ObjectFactory.create.__doc__ def set_default_creator(self, *args, **kwargs): return self.factory.set_default_creator(*args, **kwargs) set_default_creator.__doc__ = ObjectFactory.set_default_creator.__doc__ def set_default_created(self, *args, **kwargs): return self.factory.set_default_created(*args, **kwargs) set_default_created.__doc__ = ObjectFactory.set_default_created.__doc__ def set_default_external_refs(self, *args, **kwargs): return self.factory.set_default_external_refs(*args, **kwargs) set_default_external_refs.__doc__ = ObjectFactory.set_default_external_refs.__doc__ def set_default_object_marking_refs(self, *args, **kwargs): return self.factory.set_default_object_marking_refs(*args, **kwargs) set_default_object_marking_refs.__doc__ = ObjectFactory.set_default_object_marking_refs.__doc__ def add_filters(self, *args, **kwargs): return self.source.filters.add(*args, **kwargs) def add_filter(self, *args, **kwargs): return self.source.filters.add(*args, **kwargs) def parse(self, *args, **kwargs): return _parse(*args, **kwargs) parse.__doc__ = _parse.__doc__ def creator_of(self, obj): """Retrieve the Identity refered to by the object's `created_by_ref`. Args: obj: The STIX object whose `created_by_ref` property will be looked up. Returns: str: The STIX object's creator, or None, if the object contains no `created_by_ref` property or the object's creator cannot be found. """ creator_id = obj.get('created_by_ref', '') if creator_id: return self.get(creator_id) else: return None @staticmethod def semantically_equivalent(obj1, obj2, prop_scores={}, **weight_dict): """This method is meant to verify if two objects of the same type are semantically equivalent. Args: obj1: A stix2 object instance obj2: A stix2 object instance weight_dict: A dictionary that can be used to override settings in the semantic equivalence process Returns: float: A number between 0.0 and 100.0 as a measurement of equivalence. Warning: Course of Action, Intrusion-Set, Observed-Data, Report are not supported by this implementation. Indicator pattern check is also limited. Note: Default weights_dict: .. include:: ../default_sem_eq_weights.rst Note: This implementation follows the Committee Note on semantic equivalence. see `the Committee Note `__. """ weights = WEIGHTS.copy() if weight_dict: weights.update(weight_dict) type1, type2 = obj1["type"], obj2["type"] ignore_spec_version = weights["_internal"]["ignore_spec_version"] if type1 != type2: raise ValueError('The objects to compare must be of the same type!') if ignore_spec_version is False and obj1.get("spec_version", "2.0") != obj2.get("spec_version", "2.0"): raise ValueError('The objects to compare must be of the same spec version!') try: weights[type1] except KeyError: logger.warning("'%s' type has no 'weights' dict specified & thus no semantic equivalence method to call!", type1) sum_weights = matching_score = 0 else: try: method = weights[type1]["method"] except KeyError: logger.debug("Starting semantic equivalence process between: '%s' and '%s'", obj1["id"], obj2["id"]) matching_score = 0.0 sum_weights = 0.0 for prop in weights[type1]: if check_property_present(prop, obj1, obj2) or prop == "longitude_latitude": w = weights[type1][prop][0] comp_funct = weights[type1][prop][1] if comp_funct == partial_timestamp_based: contributing_score = w * comp_funct(obj1[prop], obj2[prop], weights[type1]["tdelta"]) elif comp_funct == partial_location_distance: threshold = weights[type1]["threshold"] contributing_score = w * comp_funct(obj1["latitude"], obj1["longitude"], obj2["latitude"], obj2["longitude"], threshold) else: contributing_score = w * comp_funct(obj1[prop], obj2[prop]) sum_weights += w matching_score += contributing_score prop_scores[prop] = (w, contributing_score) logger.debug("'%s' check -- weight: %s, contributing score: %s", prop, w, contributing_score) prop_scores["matching_score"] = matching_score prop_scores["sum_weights"] = sum_weights logger.debug("Matching Score: %s, Sum of Weights: %s", matching_score, sum_weights) else: logger.debug("Starting semantic equivalence process between: '%s' and '%s'", obj1["id"], obj2["id"]) try: matching_score, sum_weights = method(obj1, obj2, prop_scores, **weights[type1]) except TypeError: # method doesn't support detailed output with prop_scores matching_score, sum_weights = method(obj1, obj2, **weights[type1]) logger.debug("Matching Score: %s, Sum of Weights: %s", matching_score, sum_weights) if sum_weights <= 0: return 0 equivalence_score = (matching_score / sum_weights) * 100.0 return equivalence_score def check_property_present(prop, obj1, obj2): """Helper method checks if a property is present on both objects.""" if prop in obj1 and prop in obj2: return True return False def partial_timestamp_based(t1, t2, tdelta): """Performs a timestamp-based matching via checking how close one timestamp is to another. Args: t1: A datetime string or STIXdatetime object. t2: A datetime string or STIXdatetime object. tdelta (float): A given time delta. This number is multiplied by 86400 (1 day) to extend or shrink your time change tolerance. Returns: float: Number between 0.0 and 1.0 depending on match criteria. """ if not isinstance(t1, STIXdatetime): t1 = parse_into_datetime(t1) if not isinstance(t2, STIXdatetime): t2 = parse_into_datetime(t2) t1, t2 = time.mktime(t1.timetuple()), time.mktime(t2.timetuple()) result = 1 - min(abs(t1 - t2) / (86400 * tdelta), 1) logger.debug("--\t\tpartial_timestamp_based '%s' '%s' tdelta: '%s'\tresult: '%s'", t1, t2, tdelta, result) return result def partial_list_based(l1, l2): """Performs a partial list matching via finding the intersection between common values. Args: l1: A list of values. l2: A list of values. Returns: float: 1.0 if the value matches exactly, 0.0 otherwise. """ l1_set, l2_set = set(l1), set(l2) result = len(l1_set.intersection(l2_set)) / max(len(l1), len(l2)) logger.debug("--\t\tpartial_list_based '%s' '%s'\tresult: '%s'", l1, l2, result) return result def exact_match(val1, val2): """Performs an exact value match based on two values Args: val1: A value suitable for an equality test. val2: A value suitable for an equality test. Returns: float: 1.0 if the value matches exactly, 0.0 otherwise. """ result = 0.0 if val1 == val2: result = 1.0 logger.debug("--\t\texact_match '%s' '%s'\tresult: '%s'", val1, val2, result) return result def partial_string_based(str1, str2): """Performs a partial string match using the Jaro-Winkler distance algorithm. Args: str1: A string value to check. str2: A string value to check. Returns: float: Number between 0.0 and 1.0 depending on match criteria. """ from pyjarowinkler import distance result = distance.get_jaro_distance(str1, str2) logger.debug("--\t\tpartial_string_based '%s' '%s'\tresult: '%s'", str1, str2, result) return result def custom_pattern_based(pattern1, pattern2): """Performs a matching on Indicator Patterns. Args: pattern1: An Indicator pattern pattern2: An Indicator pattern Returns: float: Number between 0.0 and 1.0 depending on match criteria. """ logger.warning("Indicator pattern equivalence is not fully defined; will default to zero if not completely identical") return exact_match(pattern1, pattern2) # TODO: Implement pattern based equivalence def partial_external_reference_based(refs1, refs2): """Performs a matching on External References. Args: refs1: A list of external references. refs2: A list of external references. Returns: float: Number between 0.0 and 1.0 depending on matches. """ allowed = set(("veris", "cve", "capec", "mitre-attack")) matches = 0 if len(refs1) >= len(refs2): l1 = refs1 l2 = refs2 else: l1 = refs2 l2 = refs1 for ext_ref1 in l1: for ext_ref2 in l2: sn_match = False ei_match = False url_match = False source_name = None if check_property_present("source_name", ext_ref1, ext_ref2): if ext_ref1["source_name"] == ext_ref2["source_name"]: source_name = ext_ref1["source_name"] sn_match = True if check_property_present("external_id", ext_ref1, ext_ref2): if ext_ref1["external_id"] == ext_ref2["external_id"]: ei_match = True if check_property_present("url", ext_ref1, ext_ref2): if ext_ref1["url"] == ext_ref2["url"]: url_match = True # Special case: if source_name is a STIX defined name and either # external_id or url match then its a perfect match and other entries # can be ignored. if sn_match and (ei_match or url_match) and source_name in allowed: result = 1.0 logger.debug( "--\t\tpartial_external_reference_based '%s' '%s'\tresult: '%s'", refs1, refs2, result, ) return result # Regular check. If the source_name (not STIX-defined) or external_id or # url matches then we consider the entry a match. if (sn_match or ei_match or url_match) and source_name not in allowed: matches += 1 result = matches / max(len(refs1), len(refs2)) logger.debug( "--\t\tpartial_external_reference_based '%s' '%s'\tresult: '%s'", refs1, refs2, result, ) return result def partial_location_distance(lat1, long1, lat2, long2, threshold): """Given two coordinates perform a matching based on its distance using the Haversine Formula. Args: lat1: Latitude value for first coordinate point. lat2: Latitude value for second coordinate point. long1: Longitude value for first coordinate point. long2: Longitude value for second coordinate point. threshold (float): A kilometer measurement for the threshold distance between these two points. Returns: float: Number between 0.0 and 1.0 depending on match. """ from haversine import haversine, Unit distance = haversine((lat1, long1), (lat2, long2), unit=Unit.KILOMETERS) result = 1 - (distance / threshold) logger.debug( "--\t\tpartial_location_distance '%s' '%s' threshold: '%s'\tresult: '%s'", (lat1, long1), (lat2, long2), threshold, result, ) return result # default weights used for the semantic equivalence process WEIGHTS = { "attack-pattern": { "name": (30, partial_string_based), "external_references": (70, partial_external_reference_based), }, "campaign": { "name": (60, partial_string_based), "aliases": (40, partial_list_based), }, "identity": { "name": (60, partial_string_based), "identity_class": (20, exact_match), "sectors": (20, partial_list_based), }, "indicator": { "indicator_types": (15, partial_list_based), "pattern": (80, custom_pattern_based), "valid_from": (5, partial_timestamp_based), "tdelta": 1, # One day interval }, "location": { "longitude_latitude": (34, partial_location_distance), "region": (33, exact_match), "country": (33, exact_match), "threshold": 1000.0, }, "malware": { "malware_types": (20, partial_list_based), "name": (80, partial_string_based), }, "threat-actor": { "name": (60, partial_string_based), "threat_actor_types": (20, partial_list_based), "aliases": (20, partial_list_based), }, "tool": { "tool_types": (20, partial_list_based), "name": (80, partial_string_based), }, "vulnerability": { "name": (30, partial_string_based), "external_references": (70, partial_external_reference_based), }, "_internal": { "ignore_spec_version": False, }, } #: :autodoc-skip: