backoff-async 2.0.0

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Description:

backoffasync 2.0.0

backoff


Function decoration for backoff and retry
This module provides function decorators which can be used to wrap a
function such that it will be retried until some condition is met. It
is meant to be of use when accessing unreliable resources with the
potential for intermittent failures i.e. network resources and external
APIs. Somewhat more generally, it may also be of use for dynamically
polling resources for externally generated content.


Examples
Since Kenneth Reitz’s requests module
has become a defacto standard for HTTP clients in python, networking
examples below are written using it, but it is in no way required by
the backoff module.

@backoff.on_exception
The on_exception decorator is used to retry when a specified exception
is raised. Here’s an example using exponential backoff when any
requests exception is raised:
@backoff.on_exception(backoff.expo,
requests.exceptions.RequestException,
max_tries=8)
def get_url(url):
return requests.get(url)
The decorator will also accept a tuple of exceptions for cases where
you want the same backoff behavior for more than one exception type:
@backoff.on_exception(backoff.expo,
(requests.exceptions.Timeout,
requests.exceptions.ConnectionError),
max_tries=8)
def get_url(url):
return requests.get(url)
In some cases the raised exception instance itself may need to be
inspected in order to determine if it is a retryable condition. The
giveup keyword arg can be used to specify a function which accepts
the exception and returns a truthy value if the exception should not
be retried:
def fatal_code(e):
return 400 <= e.response.status_code < 500

@backoff.on_exception(backoff.expo,
requests.exceptions.RequestException,
max_tries=8,
giveup=fatal_code)
def get_url(url):
return requests.get(url)


@backoff.on_predicate
The on_predicate decorator is used to retry when a particular
condition is true of the return value of the target function. This may
be useful when polling a resource for externally generated content.
Here’s an example which uses a fibonacci sequence backoff when the
return value of the target function is the empty list:
@backoff.on_predicate(backoff.fibo, lambda x: x == [], max_value=13)
def poll_for_messages(queue):
return queue.get()
Extra keyword arguments are passed when initializing the
wait generator, so the max_value param above is passed as a keyword
arg when initializing the fibo generator.
When not specified, the predicate param defaults to the falsey test,
so the above can more concisely be written:
@backoff.on_predicate(backoff.fibo, max_value=13)
def poll_for_message(queue)
return queue.get()
More simply, a function which continues polling every second until it
gets a non-falsey result could be defined like like this:
@backoff.on_predicate(backoff.constant, interval=1)
def poll_for_message(queue)
return queue.get()


Jitter
A jitter algorithm can be supplied with the jitter keyword arg to
either of the backoff decorators. This argument should be a function
accepting the original unadulterated backoff value and returning it’s
jittered counterpart.
As of version 1.2, the default jitter function backoff.full_jitter
implements the ‘Full Jitter’ algorithm as defined in the AWS
Architecture Blog’s Exponential Backoff And Jitter post.
Previous versions of backoff defaulted to adding some random number of
milliseconds (up to 1s) to the raw sleep value. If desired, this
behavior is now available as backoff.random_jitter.


Using multiple decorators
The backoff decorators may also be combined to specify different
backoff behavior for different cases:
@backoff.on_predicate(backoff.fibo, max_value=13)
@backoff.on_exception(backoff.expo,
requests.exceptions.HTTPError,
max_tries=4)
@backoff.on_exception(backoff.expo,
requests.exceptions.TimeoutError,
max_tries=8)
def poll_for_message(queue):
return queue.get()


Runtime Configuration
The decorator functions on_exception and on_predicate are
generally evaluated at import time. This is fine when the keyword args
are passed as constant values, but suppose we want to consult a
dictionary with configuration options that only become available at
runtime. The relevant values are not available at import time. Instead,
decorator functions can be passed callables which are evaluated at
runtime to obtain the value:
def lookup_max_tries():
# pretend we have a global reference to 'app' here
# and that it has a dictionary-like 'config' property
return app.config["BACKOFF_MAX_TRIES"]

@backoff.on_exception(backoff.expo,
ValueError,
max_tries=lookup_max_tries)
More cleverly, you might define a function which returns a lookup
function for a specified variable:
def config(app, name):
return functools.partial(app.config.get, name)

@backoff.on_exception(backoff.expo,
ValueError,
max_value=config(app, "BACKOFF_MAX_VALUE")
max_tries=config(app, "BACKOFF_MAX_TRIES"))


Event handlers
Both backoff decorators optionally accept event handler functions
using the keyword arguments on_success, on_backoff, and on_giveup.
This may be useful in reporting statistics or performing other custom
logging.
Handlers must be callables with a unary signature accepting a dict
argument. This dict contains the details of the invocation. Valid keys
include:

target: reference to the function or method being invoked
args: positional arguments to func
kwargs: keyword arguments to func
tries: number of invocation tries so far
wait: seconds to wait (on_backoff handler only)
value: value triggering backoff (on_predicate decorator only)

A handler which prints the details of the backoff event could be
implemented like so:
def backoff_hdlr(details):
print ("Backing off {wait:0.1f} seconds afters {tries} tries "
"calling function {func} with args {args} and kwargs "
"{kwargs}".format(**details))

@backoff.on_exception(backoff.expo,
requests.exceptions.RequestException,
on_backoff=backoff_hdlr)
def get_url(url):
return requests.get(url)
Multiple handlers per event type
In all cases, iterables of handler functions are also accepted, which
are called in turn. For example, you might provide a simple list of
handler functions as the value of the on_backoff keyword arg:
@backoff.on_exception(backoff.expo,
requests.exceptions.RequestException,
on_backoff=[backoff_hdlr1, backoff_hdlr2])
def get_url(url):
return requests.get(url)
Getting exception info
In the case of the on_exception decorator, all on_backoff and
on_giveup handlers are called from within the except block for the
exception being handled. Therefore exception info is available to the
handler functions via the python standard library, specifically
sys.exc_info() or the traceback module.


Logging configuration
Errors and backoff and retry attempts are logged to the ‘backoff’
logger. By default, this logger is configured with a NullHandler, so
there will be nothing output unless you configure a handler.
Programmatically, this might be accomplished with something as simple
as:
logging.getLogger('backoff').addHandler(logging.StreamHandler())
The default logging level is ERROR, which corresponds to logging anytime
max_tries is exceeded as well as any time a retryable exception is
raised. If you would instead like to log any type of retry, you can
set the logger level to INFO:
logging.getLogger('backoff').setLevel(logging.INFO)

License:

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

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