Using macOS Mojave & Python 3.6.4 .

I tried to generate a huge number of uuid4s which I expect almost never to duplicate using multi processes and uuid4 in Python3. My code is below:

from multiprocessing import Pool
import pandas as pd
from uuid import uuid4

for m in range(5):
    def insert_uuid(n):
        df = pd.DataFrame()
        df['uuid'] = [uuid4() for _ in range(1000000)]
        df.to_csv('uuid_{}.csv'.format(m), mode='a', index=False)
        print(m, n)
    p = Pool(4)
    p.map(insert_uuid, range(100))

I inserted these data (500M records) to RDB (BigQuery), and counted them. The query and its result is below:

with all_data as (
  select uuid from `test_dataset.uuid_0` union all
  select uuid from `test_dataset.uuid_1` union all
  select uuid from `test_dataset.uuid_2` union all
  select uuid from `test_dataset.uuid_3` union all
  select uuid from `test_dataset.uuid_4`
select count(1) as count, count(distinct(all_data.uuid)) as uniq, count(1) - count(distinct(all_data.uuid)) as diff from all_data


|   count   |   uniq    |  diff |  
| 500000000 | 499979736 | 20264 |  

It is strange that as many as 0.0041% of the uuids duplicate. I know there is a very little chance that UUID4 duplicates.

Why is this happening ? I think this is related to genarating random numbers in the OS.

  • 1
  • Version 4 is supposed to be a random UUID. The collision rate is suspicious. You should consider filing a bug against Python3. It appears the existing machinery is not safe to use out of the box. That's an engineering failure (which precedes RTFM). – jww Mar 14 at 5:26
  • What is the value of the uuids' is_safe attribute? – snakecharmerb Mar 15 at 7:08

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