Skip to main content

A thread-safe disk based persistent queue in Python.

Project description

https://img.shields.io/circleci/project/github/peter-wangxu/persist-queue/master.svg?label=Linux%20%26%20Mac https://img.shields.io/appveyor/ci/peter-wangxu/persist-queue/master.svg?label=Windows https://img.shields.io/codecov/c/github/peter-wangxu/persist-queue/master.svg https://img.shields.io/pypi/v/persist-queue.svg

persist-queue implements a file-based queue and a serial of sqlite3-based queues. The goals is to achieve following requirements:

  • Disk-based: each queued item should be stored in disk in case of any crash.

  • Thread-safe: can be used by multi-threaded producers and multi-threaded consumers.

  • Recoverable: Items can be read after process restart.

  • Green-compatible: can be used in greenlet or eventlet environment.

While queuelib and python-pqueue cannot fulfil all of above. After some try, I found it’s hard to achieve based on their current implementation without huge code change. this is the motivation to start this project.

persist-queue use pickle object serialization module to support object instances. Most built-in type, like int, dict, list are able to be persisted by persist-queue directly, to support customized objects, please refer to Pickling and unpickling extension types(Python2) and Pickling Class Instances(Python3)

This project is based on the achievements of python-pqueue and queuelib

Requirements

  • Python 2.7 or Python 3.x.

  • Full support for Linux.

  • Windows support (with Caution if persistqueue.Queue is used).

Installation

from pypi

pip install persist-queue

from source code

git clone https://github.com/peter-wangxu/persist-queue
cd persist-queue
python setup.py install

Benchmark

Here is the result for writing/reading 10000 items to the disk comparing the sqlite3 and file queue.

Environment:
  • OS: Windows 10

  • Disk: SATA3 SSD

  • RAM: 16 GiB

Transaction write (s)

Bulk write (s)

Transaction write/read (s)

Bulk write/read (s)

SQLite3

64.98

0.19

142.82

63.82

File

89.68

85.78

101.37

85.76

  • Transaction refers to commit the change to disk on every write.

  • Bulk refers to only commit the change to disk on last write.

To see the real performance on your host, run the script under benchmark/run_benchmark.py:

python benchmark/run_benchmark.py <COUNT, default to 100>

Examples

Example usage with a SQLite3 based queue

>>> import persistqueue
>>> q = persistqueue.SQLiteQueue('mypath', auto_commit=True)
>>> q.put('str1')
>>> q.put('str2')
>>> q.put('str3')
>>> q.get()
'str1'
>>> del q

Close the console, and then recreate the queue:

>>> import persistqueue
>>> q = persistqueue.SQLiteQueue('mypath', auto_commit=True)
>>> q.get()
'str2'
>>>

Example usage with a file based queue

>>> from persistqueue import Queue
>>> q = Queue("mypath")
>>> q.put('a')
>>> q.put('b')
>>> q.put('c')
>>> q.get()
'a'
>>> q.task_done()

Close the python console, and then we restart the queue from the same path,

>>> from persistqueue import Queue
>>> q = Queue('mypath')
>>> q.get()
'b'
>>> q.task_done()

Example usage with a SQLite3 based dict

>>> from persisitqueue import PDict
>>> q = PDict("testpath", "testname")
>>> q['key1'] = 123
>>> q['key2'] = 321
>>> q['key1']
123
>>> len(q)
2
>>> del q['key1']
>>> q['key1']
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "persistqueue\pdict.py", line 58, in __getitem__
    raise KeyError('Key: {} not exists.'.format(item))
KeyError: 'Key: key1 not exists.'

Close the console and restart the PDict

>>> from persisitqueue import PDict
>>> q = PDict("testpath", "testname")
>>> q['key2']
321

Multi-thread usage for SQLite3 based queue

from persistqueue import FIFOSQLiteQueue

q = FIFOSQLiteQueue(path="./test", multithreading=True)

def worker():
    while True:
        item = q.get()
        do_work(item)

for i in range(num_worker_threads):
     t = Thread(target=worker)
     t.daemon = True
     t.start()

for item in source():
    q.put(item)

multi-thread usage for Queue

from persistqueue import Queue

q = Queue()

def worker():
    while True:
        item = q.get()
        do_work(item)
        q.task_done()

for i in range(num_worker_threads):
     t = Thread(target=worker)
     t.daemon = True
     t.start()

for item in source():
    q.put(item)

q.join()       # block until all tasks are done

Performance impact

WAL:

Starting on v0.3.2, the `persistqueue` is leveraging the sqlite3 buildin feature
`WAL <https://www.sqlite.org/wal.html>` which can improve the performance
significantly, a general testing indicates that `persistqueue` is 2-4 times
faster than previous version.

auto_commit=False:

Since persistqueue v0.3.0, a new parameter ``auto_commit`` is introduced to tweak
the performance for sqlite3 based queues as needed. When specify ``auto_commit=False``, user
needs to perform ``queue.task_done()`` to persist the changes made to the disk since
last ``task_done`` invocation.

Tests

persist-queue use tox to trigger tests.

to trigger tests based on python2.7/python3.x, use:

tox -e py27
tox -e py34
tox -e py35
tox -e py36

to trigger pep8 check, use:

tox -e pep8

pyenv is usually a helpful tool to manage multiple versions of Python.

Caution

Currently, the atomic operation is not supported on Windows due to the limitation of Python’s os.rename, That’s saying, the data in persistqueue.Queue could be in unreadable state when an incidental failure occurs during Queue.task_done.

DO NOT put any critical data on persistqueue.queue on Windows.

Contribution

Simply fork this repo and send PR for your code change(also tests to cover your change), remember to give a title and description of your PR. I am willing to enhance this project with you :).

License

BSD

FAQ

  • sqlite3.OperationalError: database is locked is raised.

persistqueue open 2 connections for the db if multithreading=True, the SQLite database is locked until that transaction is committed. The timeout parameter specifies how long the connection should wait for the lock to go away until raising an exception. Default time is 10, increase timeout when creating the queue if above error occurs.

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

persist-queue-0.3.2.tar.gz (16.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

persist_queue-0.3.2-py2.py3-none-any.whl (19.3 kB view details)

Uploaded Python 2Python 3

File details

Details for the file persist-queue-0.3.2.tar.gz.

File metadata

  • Download URL: persist-queue-0.3.2.tar.gz
  • Upload date:
  • Size: 16.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for persist-queue-0.3.2.tar.gz
Algorithm Hash digest
SHA256 781bbf9f5af4d0a914a53cf9ef3759979e2c6355f500ccf7b6e265d5edcc0ac6
MD5 a8955ef66a7de3265bfc1a05a1a31b8c
BLAKE2b-256 8e7d5f371260a13339bb4a46c0d499992fc8565e7ef5119c8ef7fbc8c230c30c

See more details on using hashes here.

File details

Details for the file persist_queue-0.3.2-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for persist_queue-0.3.2-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 4873f9e56915b5aae889357b4dbf2f76d3c81843569b9dd5a934b21945c3cb3c
MD5 3233c785549b635becbee5323ac9e198
BLAKE2b-256 15f35fc93f0bceb5eff48a239acb87b2e1e336ecde974176e60272ebe48f84d2

See more details on using hashes here.

Supported by

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