Skip to main content

Extend Mt19937 Predictor

Project description

Extend MT19937 Predictor

GitHub Workflow Status GitHub PyPI - Python Version PyPI PyPI - Status

Predict and Backtrack MT19937 PRNG by putting 32 * 624 bits generated numbers.

Python "random" standard library uses mt19937, so we can easily crack it.

Usage

Install

$ pip install extend_mt19937_predictor

Predict

After putting 32 * 624 bits numbers, the internal state is uniquely determined. And the random number can be predicted at will.

import random
from extend_mt19937_predictor import ExtendMT19937Predictor

predictor = ExtendMT19937Predictor()

for _ in range(624):
    predictor.setrandbits(random.getrandbits(32), 32)

for _ in range(1024):
    assert predictor.predict_getrandbits(32) == random.getrandbits(32)
    assert predictor.predict_getrandbits(64) == random.getrandbits(64)
    assert predictor.predict_getrandbits(128) == random.getrandbits(128)
    assert predictor.predict_getrandbits(256) == random.getrandbits(256)

Backtrack

Besides prediction, it can also backtrack the previous random numbers.

import random
from extend_mt19937_predictor import ExtendMT19937Predictor

numbers = [random.getrandbits(64) for _ in range(1024)]

predictor = ExtendMT19937Predictor()

for _ in range(78):
    predictor.setrandbits(random.getrandbits(256), 256)

_ = [predictor.backtrack_getrandbits(256) for _ in range(78)]

for x in numbers[::-1]:
    assert x == predictor.backtrack_getrandbits(64)

Advanced

check param is True by default. It is ok to put more than 32 * 624 bits numbers when initializing. It will automatically check whether the excess number is the same as the predicted number, and also change the internal state.

When setting check param to False, it will directly overwrite the state without checking.

import random
from extend_mt19937_predictor import ExtendMT19937Predictor

predictor = ExtendMT19937Predictor(check=True)

for _ in range(1024):
    predictor.setrandbits(random.getrandbits(32), 32)

for _ in range(1024):
    assert predictor.predict_getrandbits(32) == random.getrandbits(32)
import random
from extend_mt19937_predictor import ExtendMT19937Predictor

predictor = ExtendMT19937Predictor(check=True)

for _ in range(624):
    predictor.setrandbits(random.getrandbits(32), 32)

_ = predictor.setrandbits(0, 32)
# ValueError: this rand number is not correct: 0. should be: 2370104960

Besides "random" standard library function getrandbits, these functions can be predicted.

random
randrange
randint
uniform

But only these functions can be backtracked, because of cannot determine how many times the base functions are called by the others.

random
uniform

Reference

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

extend_mt19937_predictor-19937.0.3.tar.gz (16.6 kB view hashes)

Uploaded Source

Built Distribution

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page