Redo provides various means to add seamless ability to retry to any Python callable. Redo includes a plain function (redo.retry)
, a decorator (redo.retriable)
, and a context manager (redo.retrying)
to enable you to integrate it in the best possible way for your project. As a bonus, a standalone interface is also included ("retry")
.
For installing with pip, run following commands
pip install redo
Below is the list of functions available
- retrier
- retry
- retriable
- retrying (contextmanager)
A generator function that sleeps between retries, handles exponential back off and jitter. The action you are retrying is meant to run after retrier yields. At each iteration, we sleep for sleeptime + random.randint(-jitter, jitter)
. Afterwards sleeptime is multiplied by sleepscale for the next iteration.
Arguments Detail:
- attempts (int): maximum number of times to try; defaults to 5
- sleeptime (float): how many seconds to sleep between tries; defaults to 60s (one minute)
- max_sleeptime (float): the longest we'll sleep, in seconds; defaults to 300s (five minutes)
- sleepscale (float): how much to multiply the sleep time by each iteration; defaults to 1.5
- jitter (int): random jitter to introduce to sleep time each iteration. the amount is chosen at random between
[-jitter, +jitter]
defaults to 1
Output:
None, a maximum of attempts
number of times
Example:
>>> n = 0
>>> for _ in retrier(sleeptime=0, jitter=0):
... if n == 3:
... # We did the thing!
... break
... n += 1
>>> n
3
>>> n = 0
>>> for _ in retrier(sleeptime=0, jitter=0):
... if n == 6:
... # We did the thing!
... break
... n += 1
... else:
... print("max tries hit")
max tries hit
retry(action, attempts=5, sleeptime=60, max_sleeptime=5 * 60, sleepscale=1.5, jitter=1, retry_exceptions=(Exception,), cleanup=None, args=(), kwargs={})
Calls an action function until it succeeds, or we give up.
Arguments Detail:
- action (callable): the function to retry
- attempts (int): maximum number of times to try; defaults to 5
- sleeptime (float): how many seconds to sleep between tries; defaults to 60s (one minute)
- max_sleeptime (float): the longest we'll sleep, in seconds; defaults to 300s (five minutes)
- sleepscale (float): how much to multiply the sleep time by each iteration; defaults to 1.5
- jitter (int): random jitter to introduce to sleep time each iteration. The amount is chosen at random between
[-jitter, +jitter]
defaults to 1 - retry_exceptions (tuple): tuple of exceptions to be caught. If other exceptions are raised by
action()
, then these are immediately re-raised to the caller. - cleanup (callable): optional; called if one of
retry_exceptions
is caught. No arguments are passed to the cleanup function; if your cleanup requires arguments, consider usingfunctools.partial
or alambda
function. - args (tuple): positional arguments to call
action
with - kwargs (dict): keyword arguments to call
action
with
Output:
Whatever action(*args, **kwargs)
returns
Output:
Whatever action(*args, **kwargs) raises. retry_exceptions
are caught
up until the last attempt, in which case they are re-raised.
Example:
>>> count = 0
>>> def foo():
... global count
... count += 1
... print(count)
... if count < 3:
... raise ValueError("count is too small!")
... return "success!"
>>> retry(foo, sleeptime=0, jitter=0)
1
2
3
'success!'
A decorator factory for retry()
. Wrap your function in @retriable(...)
to give it retry powers!
Arguments Detail:
Same as for retry
, with the exception of action
, args
, and kwargs
,
which are left to the normal function definition.
Output: A function decorator
Example:
>>> count = 0
>>> @retriable(sleeptime=0, jitter=0)
... def foo():
... global count
... count += 1
... print(count)
... if count < 3:
... raise ValueError("count too small")
... return "success!"
>>> foo()
1
2
3
'success!'
A context manager for wrapping functions with retry functionality.
Arguments Detail:
- func (callable): the function to wrap
other arguments as per
retry
Output:
A context manager that returns retriable(func)
on __enter__
Example:
>>> count = 0
>>> def foo():
... global count
... count += 1
... print(count)
... if count < 3:
... raise ValueError("count too small")
... return "success!"
>>> with retrying(foo, sleeptime=0, jitter=0) as f:
... f()
1
2
3
'success!'