SF bug #422121 Insecurities in dict comparison.

Fixed a half dozen ways in which general dict comparison could crash
Python (even cause Win98SE to reboot) in the presence of kay and/or
value comparison routines that mutate the dict during dict comparison.
Bugfix candidate.
This commit is contained in:
Tim Peters 2001-05-10 08:32:44 +00:00
parent 66aaaae54c
commit 95bf9390a4
4 changed files with 239 additions and 34 deletions

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@ -0,0 +1 @@
test_mutants

138
Lib/test/test_mutants.py Normal file
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@ -0,0 +1,138 @@
from test_support import verbose
import random
# From SF bug #422121: Insecurities in dict comparison.
# Safety of code doing comparisons has been an historical Python waak spot.
# The problem is that comparison of structures in written in C *naturally*
# wants to hold on to things like the size of the container, or "the
# biggest" containee so far, across a traversal of the container; but
# code to do containee comparisons can call back into Python and mutate
# the container in arbitrary ways while the C loop is in midstream. If the
# C code isn't extremely paranoid about digging things out of memory on
# each trip, and artificially boosting refcounts for the duration, anything
# from infinite loops to OS crashes can result (yes, I use Windows <wink>).
#
# The other problem is that code designed to provoke a weakness is usually
# white-box code, and so catches only the particular vulnerabilities the
# author knew to protect against. For example, Python's list.sort() code
# went thru many iterations as one "new" vulnerability after another was
# discovered.
#
# So the dict comparison test here uses a black-box approach instead,
# generating dicts of various sizes at random, and performing random
# mutations on them at random times. This proved very effective,
# triggering at least six distinct failure modes the first 20 times I
# ran it. Indeed, at the start, the driver never got beyond 6 iterations
# before the test died.
# The dicts are global to make it easy to mutate tham from within functions.
dict1 = {}
dict2 = {}
# The current set of keys in dict1 and dict2. These are materialized as
# lists to make it easy to pick a dict key at random.
dict1keys = []
dict2keys = []
# Global flag telling maybe_mutate() wether to *consider* mutating.
mutate = 0
# If global mutate is true, consider mutating a dict. May or may not
# mutate a dict even if mutate is true. If it does decide to mutate a
# dict, it picks one of {dict1, dict2} at random, and deletes a random
# entry from it.
def maybe_mutate():
if not mutate:
return
if random.random() < 0.5:
return
if random.random() < 0.5:
target, keys = dict1, dict1keys
else:
target, keys = dict2, dict2keys
if keys:
i = random.randrange(len(keys))
key = keys[i]
del target[key]
# CAUTION: don't use keys.remove(key) here. Or do <wink>. The
# point is that .remove() would trigger more comparisons, and so
# also more calls to this routine. We're mutating often enough
# without that.
del keys[i]
# A horrid class that triggers random mutations of dict1 and dict2 when
# instances are compared.
class Horrid:
def __init__(self, i):
# Comparison outcomes are determined by the value of i.
self.i = i
# An artificial hashcode is selected at random so that we don't
# have any systematic relationship between comparsion outcomes
# (based on self.i and other.i) and relative position within the
# hawh vector (based on hashcode).
self.hashcode = random.randrange(1000000000)
def __hash__(self):
return self.hashcode
def __cmp__(self, other):
maybe_mutate() # The point of the test.
return cmp(self.i, other.i)
def __repr__(self):
return "Horrid(%d)" % self.i
# Fill dict d with numentries (Horrid(i), Horrid(j)) key-value pairs,
# where i and j are selected at random from the candidates list.
# Return d.keys() after filling.
def fill_dict(d, candidates, numentries):
d.clear()
for i in xrange(numentries):
d[Horrid(random.choice(candidates))] = \
Horrid(random.choice(candidates))
return d.keys()
# Test one pair of randomly generated dicts, each with n entries.
# Note that dict comparison is trivial if they don't have the same number
# of entires (then the "shorter" dict is instantly considered to be the
# smaller one, without even looking at the entries).
def test_one(n):
global mutate, dict1, dict2, dict1keys, dict2keys
# Fill the dicts without mutating them.
mutate = 0
dict1keys = fill_dict(dict1, range(n), n)
dict2keys = fill_dict(dict2, range(n), n)
# Enable mutation, then compare the dicts so long as they have the
# same size.
mutate = 1
if verbose:
print "trying w/ lengths", len(dict1), len(dict2),
while dict1 and len(dict1) == len(dict2):
if verbose:
print ".",
c = cmp(dict1, dict2)
if verbose:
print
# Run test_one n times. At the start (before the bugs were fixed), 20
# consecutive runs of this test each blew up on or before the sixth time
# test_one was run. So n doesn't have to be large to get an interesting
# test.
# OTOH, calling with large n is also interesting, to ensure that the fixed
# code doesn't hold on to refcounts *too* long (in which case memory would
# leak).
def test(n):
for i in xrange(n):
test_one(random.randrange(1, 100))
# See last comment block for clues about good values for n.
test(100)

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@ -47,6 +47,11 @@ Core
- Comparing dictionary objects via == and != is faster, and now works even
if the keys and values don't support comparisons other than ==.
- Comparing dictionaries in ways other than == and != is slower: there were
insecurities in the dict comparison implementation that could cause Python
to crash if the element comparison routines for the dict keys and/or
values mutated the dicts. Making the code bulletproof slowed it down.
What's New in Python 2.1 (final)?
=================================

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@ -981,43 +981,83 @@ PyDict_Items(PyObject *mp)
/* Subroutine which returns the smallest key in a for which b's value
is different or absent. The value is returned too, through the
pval argument. No reference counts are incremented. */
pval argument. Both are NULL if no key in a is found for which b's status
differs. The refcounts on (and only on) non-NULL *pval and function return
values must be decremented by the caller (characterize() increments them
to ensure that mutating comparison and PyDict_GetItem calls can't delete
them before the caller is done looking at them). */
static PyObject *
characterize(dictobject *a, dictobject *b, PyObject **pval)
{
PyObject *diff = NULL;
PyObject *akey = NULL; /* smallest key in a s.t. a[akey] != b[akey] */
PyObject *aval = NULL; /* a[akey] */
int i, cmp;
*pval = NULL;
for (i = 0; i < a->ma_size; i++) {
if (a->ma_table[i].me_value != NULL) {
PyObject *key = a->ma_table[i].me_key;
PyObject *aval, *bval;
if (diff != NULL) {
cmp = PyObject_RichCompareBool(diff, key, Py_LT);
if (cmp < 0)
return NULL;
if (cmp > 0)
PyObject *thiskey, *thisaval, *thisbval;
if (a->ma_table[i].me_value == NULL)
continue;
thiskey = a->ma_table[i].me_key;
Py_INCREF(thiskey); /* keep alive across compares */
if (akey != NULL) {
cmp = PyObject_RichCompareBool(akey, thiskey, Py_LT);
if (cmp < 0) {
Py_DECREF(thiskey);
goto Fail;
}
if (cmp > 0 ||
i >= a->ma_size ||
a->ma_table[i].me_value == NULL)
{
/* Not the *smallest* a key; or maybe it is
* but the compare shrunk the dict so we can't
* find its associated value anymore; or
* maybe it is but the compare deleted the
* a[thiskey] entry.
*/
Py_DECREF(thiskey);
continue;
}
aval = a->ma_table[i].me_value;
bval = PyDict_GetItem((PyObject *)b, key);
if (bval == NULL)
}
/* Compare a[thiskey] to b[thiskey]; cmp <- true iff equal. */
thisaval = a->ma_table[i].me_value;
assert(thisaval);
Py_INCREF(thisaval); /* keep alive */
thisbval = PyDict_GetItem((PyObject *)b, thiskey);
if (thisbval == NULL)
cmp = 0;
else {
cmp = PyObject_RichCompareBool(aval, bval, Py_EQ);
if (cmp < 0)
return NULL;
/* both dicts have thiskey: same values? */
cmp = PyObject_RichCompareBool(
thisaval, thisbval, Py_EQ);
if (cmp < 0) {
Py_DECREF(thiskey);
Py_DECREF(thisaval);
goto Fail;
}
}
if (cmp == 0) {
/* New winner. */
Py_XDECREF(akey);
Py_XDECREF(aval);
akey = thiskey;
aval = thisaval;
}
else {
Py_DECREF(thiskey);
Py_DECREF(thisaval);
}
}
if (cmp == 0)
{
diff = key;
*pval = aval;
}
}
}
return diff;
return akey;
Fail:
Py_XDECREF(akey);
Py_XDECREF(aval);
*pval = NULL;
return NULL;
}
static int
@ -1031,19 +1071,40 @@ dict_compare(dictobject *a, dictobject *b)
return -1; /* a is shorter */
else if (a->ma_used > b->ma_used)
return 1; /* b is shorter */
/* Same length -- check all keys */
bdiff = bval = NULL;
adiff = characterize(a, b, &aval);
if (adiff == NULL && PyErr_Occurred())
return -1;
if (adiff == NULL)
return 0; /* a is a subset with the same length */
if (adiff == NULL) {
assert(!aval);
/* Either an error, or a is a subst with the same length so
* must be equal.
*/
res = PyErr_Occurred() ? -1 : 0;
goto Finished;
}
bdiff = characterize(b, a, &bval);
if (bdiff == NULL && PyErr_Occurred())
return -1;
/* bdiff == NULL would be impossible now */
if (bdiff == NULL && PyErr_Occurred()) {
assert(!bval);
res = -1;
goto Finished;
}
res = 0;
if (bdiff) {
/* bdiff == NULL "should be" impossible now, but perhaps
* the last comparison done by the characterize() on a had
* the side effect of making the dicts equal!
*/
res = PyObject_Compare(adiff, bdiff);
if (res == 0)
}
if (res == 0 && bval != NULL)
res = PyObject_Compare(aval, bval);
Finished:
Py_XDECREF(adiff);
Py_XDECREF(bdiff);
Py_XDECREF(aval);
Py_XDECREF(bval);
return res;
}