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Hook for managing any Random instance #1741

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9 changes: 9 additions & 0 deletions hypothesis-python/RELEASE.rst
Original file line number Diff line number Diff line change
@@ -0,0 +1,9 @@
RELEASE_TYPE: minor

This release adds :func:`~hypothesis.register_random`, which registers
``random.Random`` instances or compatible objects to be seeded and reset
by Hypothesis to ensure that test cases are deterministic.

We still recommend explicitly passing a ``random.Random`` instance from
:func:`~hypothesis.strategies.randoms` if possible, but registering a
framework-global state for Hypothesis to manage is better than flaky tests!
16 changes: 16 additions & 0 deletions hypothesis-python/docs/details.rst
Original file line number Diff line number Diff line change
Expand Up @@ -479,6 +479,22 @@ If the end user has also specified a custom executor using the
be applied to the *new* inner test assigned by the test runner.


--------------------------------
Making random code deterministic
--------------------------------

While Hypothesis' example generation can be used for nondeterministic tests,
debugging anything nondeterministic is usually a very frustrating excercise.
To make things worse, our example *shrinking* relies on the same input
causing the same failure each time - though we show the un-shrunk failure
and a decent error message if it doesn't.

By default, Hypothesis will handle the global ``random`` and ``numpy.random``
random number generators for you, and you can register others:

.. autofunction:: hypothesis.register_random


-------------------------------
Using Hypothesis to find values
-------------------------------
Expand Down
2 changes: 2 additions & 0 deletions hypothesis-python/src/hypothesis/__init__.py
Original file line number Diff line number Diff line change
Expand Up @@ -27,6 +27,7 @@
from hypothesis.version import __version_info__, __version__
from hypothesis.control import assume, note, reject, event
from hypothesis.core import given, find, example, seed, reproduce_failure, PrintSettings
from hypothesis.internal.entropy import register_random
from hypothesis.utils.conventions import infer


Expand All @@ -47,6 +48,7 @@
"note",
"event",
"infer",
"register_random",
"__version__",
"__version_info__",
]
16 changes: 7 additions & 9 deletions hypothesis-python/src/hypothesis/_strategies.py
Original file line number Diff line number Diff line change
Expand Up @@ -21,7 +21,6 @@
import enum
import math
import operator
import random
import string
import sys
from decimal import Context, Decimal, localcontext
Expand Down Expand Up @@ -55,6 +54,7 @@
check_sample,
integer_range,
)
from hypothesis.internal.entropy import get_seeder_and_restorer
from hypothesis.internal.floats import (
count_between_floats,
float_of,
Expand Down Expand Up @@ -132,6 +132,7 @@
numpy = None

if False:
import random # noqa
from types import ModuleType # noqa
from typing import Any, Dict, Union, Sequence, Callable, Pattern # noqa
from typing import TypeVar, Tuple, List, Set, FrozenSet, overload # noqa
Expand Down Expand Up @@ -1089,26 +1090,23 @@ def __init__(self, seed):
self.seed = seed

def __repr__(self):
return "random.seed(%r)" % (self.seed,)
return "RandomSeeder(%r)" % (self.seed,)


class RandomModule(SearchStrategy):
def do_draw(self, data):
data.can_reproduce_example_from_repr = False
seed = data.draw(integers(0, 2 ** 32 - 1))
state = random.getstate()
random.seed(seed)
cleanup(lambda: random.setstate(state))
if numpy is not None: # pragma: no cover
npstate = numpy.random.get_state()
numpy.random.seed(seed)
cleanup(lambda: numpy.random.set_state(npstate))
seed_all, restore_all = get_seeder_and_restorer(seed)
seed_all()
cleanup(restore_all)
return RandomSeeder(seed)


@cacheable
@defines_strategy
def random_module():
# type: () -> SearchStrategy[RandomSeeder]
"""The Hypothesis engine handles PRNG state for the stdlib and Numpy random
modules internally, always seeding them to zero and restoring the previous
state after the test.
Expand Down
77 changes: 67 additions & 10 deletions hypothesis-python/src/hypothesis/internal/entropy.py
Original file line number Diff line number Diff line change
Expand Up @@ -20,10 +20,73 @@
import contextlib
import random

from hypothesis.errors import InvalidArgument
from hypothesis.internal.compat import integer_types

RANDOMS_TO_MANAGE = [random] # type: list

try:
import numpy.random as npr
except ImportError:
npr = None
pass
else:

class NumpyRandomWrapper(object):
"""A shim to remove those darn underscores."""

seed = npr.seed
getstate = npr.get_state
setstate = npr.set_state

RANDOMS_TO_MANAGE.append(NumpyRandomWrapper)


def register_random(r):
# type: (random.Random) -> None
"""Register the given Random instance for management by Hypothesis.

You can pass ``random.Random`` instances (or other objects with seed,
getstate, and setstate methods) to ``register_random(r)`` to have their
states seeded and restored in the same way as the global PRNGs from the
``random`` and ``numpy.random`` modules.

All global PRNGs, from e.g. simulation or scheduling frameworks, should
be registered to prevent flaky tests. Hypothesis will ensure that the
PRNG state is consistent for all test runs, or reproducibly varied if you
choose to use the :func:`~hypothesis.strategies.random_module` strategy.
"""
if not (hasattr(r, "seed") and hasattr(r, "getstate") and hasattr(r, "setstate")):
raise InvalidArgument("r=%r does not have all the required methods" % (r,))
if r not in RANDOMS_TO_MANAGE:
RANDOMS_TO_MANAGE.append(r)


def get_seeder_and_restorer(seed=0):
"""Return a pair of functions which respectively seed all and restore
the state of all registered PRNGs.

This is used by the core engine via `deterministic_PRNG`, and by users
via `register_random`. We support registration of additional random.Random
instances (or other objects with seed, getstate, and setstate methods)
to force determinism on simulation or scheduling frameworks which avoid
using the global random state. See e.g. #1709.
"""
assert isinstance(seed, integer_types) and 0 <= seed < 2 ** 32
states = [] # type: list

def seed_all():
assert not states
for r in RANDOMS_TO_MANAGE:
states.append(r.getstate())
r.seed(seed)

def restore_all():
assert len(states) == len(RANDOMS_TO_MANAGE)
for r, state in zip(RANDOMS_TO_MANAGE, states):
r.setstate(state)
del states[:]

return seed_all, restore_all


@contextlib.contextmanager
Expand All @@ -35,15 +98,9 @@ def deterministic_PRNG():
bad idea in principle, and breaks all kinds of independence assumptions
in practice.
"""
_random_state = random.getstate()
random.seed(0)
# These branches are covered by tests/numpy/, not tests/cover/
if npr is not None: # pragma: no cover
_npr_state = npr.get_state()
npr.seed(0)
seed_all, restore_all = get_seeder_and_restorer()
seed_all()
try:
yield
finally:
random.setstate(_random_state)
if npr is not None: # pragma: no cover
npr.set_state(_npr_state)
restore_all()
60 changes: 58 additions & 2 deletions hypothesis-python/tests/cover/test_random_module.py
Original file line number Diff line number Diff line change
Expand Up @@ -22,7 +22,9 @@
import pytest

import hypothesis.strategies as st
from hypothesis import given, reporting
from hypothesis import given, register_random, reporting
from hypothesis.errors import InvalidArgument
from hypothesis.internal import entropy
from tests.common.utils import capture_out


Expand All @@ -36,7 +38,7 @@ def test(r):
assert False

test()
assert "random.seed(0)" in out.getvalue()
assert "RandomSeeder(0)" in out.getvalue()


@given(st.random_module(), st.random_module())
Expand All @@ -47,3 +49,57 @@ def test_seed_random_twice(r, r2):
@given(st.random_module())
def test_does_not_fail_health_check_if_randomness_is_used(r):
random.getrandbits(128)


def test_cannot_register_non_Random():
with pytest.raises(InvalidArgument):
register_random("not a Random instance")


def test_registering_a_Random_is_idempotent():
r = random.Random()
register_random(r)
register_random(r)
assert entropy.RANDOMS_TO_MANAGE.pop() is r
assert r not in entropy.RANDOMS_TO_MANAGE


def test_manages_registered_Random_instance():
r = random.Random()
register_random(r)
state = r.getstate()
result = []

@given(st.integers())
def inner(x):
v = r.random()
if result:
assert v == result[0]
else:
result.append(v)

inner()
assert state == r.getstate()

entropy.RANDOMS_TO_MANAGE.remove(r)
assert r not in entropy.RANDOMS_TO_MANAGE


def test_registered_Random_is_seeded_by_random_module_strategy():
r = random.Random()
register_random(r)
state = r.getstate()
results = set()
count = [0]

@given(st.integers())
def inner(x):
results.add(r.random())
count[0] += 1

inner()
assert count[0] > len(results) * 0.9, "too few unique random numbers"
assert state == r.getstate()

entropy.RANDOMS_TO_MANAGE.remove(r)
assert r not in entropy.RANDOMS_TO_MANAGE