text stringlengths 0 828 |
|---|
"""""" |
if isinstance(order_or_history, MarketOrderList): |
return orders.encode_to_json(order_or_history) |
elif isinstance(order_or_history, MarketHistoryList): |
return history.encode_to_json(order_or_history) |
else: |
raise Exception(""Must be one of MarketOrderList or MarketHistoryList."")" |
207,"def event_subscriber(event): |
"""""" |
Register a method, which gets called when this event triggers. |
:param event: the event to register the decorator method on. |
"""""" |
def wrapper(method): |
Registry.register_event(event.name, event, method) |
return wrapper" |
208,"def dispatch_event(event, subject='id'): |
"""""" |
Dispatch an event when the decorated method is called. |
:param event: the event class to instantiate and dispatch. |
:param subject_property: the property name to get the subject. |
"""""" |
def wrapper(method): |
def inner_wrapper(*args, **kwargs): |
resource = method(*args, **kwargs) |
if isinstance(resource, dict): |
subject_ = resource.get(subject) |
data = resource |
else: |
subject_ = getattr(resource, subject) |
data = resource.__dict__ |
event(subject_, data).dispatch() |
return resource |
return inner_wrapper |
return wrapper" |
209,"def add(self, classifier, threshold, begin=None, end=None): |
""""""Adds a new strong classifier with the given threshold to the cascade. |
**Parameters:** |
classifier : :py:class:`bob.learn.boosting.BoostedMachine` |
A strong classifier to add |
``threshold`` : float |
The classification threshold for this cascade step |
``begin``, ``end`` : int or ``None`` |
If specified, only the weak machines with the indices ``range(begin,end)`` will be added. |
"""""" |
boosted_machine = bob.learn.boosting.BoostedMachine() |
if begin is None: begin = 0 |
if end is None: end = len(classifier.weak_machines) |
for i in range(begin, end): |
boosted_machine.add_weak_machine(classifier.weak_machines[i], classifier.weights[i]) |
self.cascade.append(boosted_machine) |
self.thresholds.append(threshold) |
self._indices()" |
210,"def create_from_boosted_machine(self, boosted_machine, classifiers_per_round, classification_thresholds=-5.): |
""""""Creates this cascade from the given boosted machine, by simply splitting off strong classifiers that have classifiers_per_round weak classifiers. |
**Parameters:** |
``boosted_machine`` : :py:class:`bob.learn.boosting.BoostedMachine` |
The strong classifier to split into a regular cascade. |
``classifiers_per_round`` : int |
The number of classifiers that each cascade step should contain. |
``classification_threshold`` : float |
A single threshold that will be applied in all rounds of the cascade. |
"""""" |
indices = list(range(0, len(boosted_machine.weak_machines), classifiers_per_round)) |
if indices[-1] != len(boosted_machine.weak_machines): indices.append(len(boosted_machine.weak_machines)) |
self.cascade = [] |
self.indices = [] |
for i in range(len(indices)-1): |
machine = bob.learn.boosting.BoostedMachine() |
for index in range(indices[i], indices[i+1]): |
machine.add_weak_machine(boosted_machine.weak_machines[index], boosted_machine.weights[index, 0]) |
self.cascade.append(machine) |
if isinstance(classification_thresholds, (int, float)): |
self.thresholds = [classification_thresholds] * len(self.cascade) |
else: |
self.thresholds = classification_thresholds" |
211,"def generate_boosted_machine(self): |
""""""generate_boosted_machine() -> strong |
Creates a single strong classifier from this cascade by concatenating all strong classifiers. |
**Returns:** |
``strong`` : :py:class:`bob.learn.boosting.BoostedMachine` |
The strong classifier as a combination of all classifiers in this cascade. |
"""""" |
strong = bob.learn.boosting.BoostedMachine() |
for machine, index in zip(self.cascade, self.indices): |
weak = machine.weak_machines |
weights = machine.weights |
for i in range(len(weak)): |
strong.add_weak_machine(weak[i], weights[i]) |
Subsets and Splits
No community queries yet
The top public SQL queries from the community will appear here once available.