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Metadata-Version: 2.1 |
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Name: diskcache |
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Version: 5.6.3 |
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Summary: Disk Cache -- Disk and file backed persistent cache. |
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Home-page: http: |
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Author: Grant Jenks |
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Author-email: contact@grantjenks.com |
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License: Apache 2.0 |
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Project-URL: Documentation, http: |
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Project-URL: Funding, https: |
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Project-URL: Source, https: |
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Project-URL: Tracker, https: |
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Classifier: Development Status :: 5 - Production/Stable |
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Classifier: Intended Audience :: Developers |
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Classifier: License :: OSI Approved :: Apache Software License |
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Classifier: Natural Language :: English |
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Classifier: Programming Language :: Python |
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Classifier: Programming Language :: Python :: 3 |
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Classifier: Programming Language :: Python :: 3.5 |
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Classifier: Programming Language :: Python :: 3.6 |
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Classifier: Programming Language :: Python :: 3.7 |
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Classifier: Programming Language :: Python :: 3.8 |
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Classifier: Programming Language :: Python :: 3.9 |
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Classifier: Programming Language :: Python :: Implementation :: CPython |
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Requires-Python: >=3 |
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License-File: LICENSE |
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DiskCache: Disk Backed Cache |
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============================ |
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`DiskCache`_ is an Apache2 licensed disk and file backed cache library, written |
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in pure-Python, and compatible with Django. |
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The cloud-based computing of 2023 puts a premium on memory. Gigabytes of empty |
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space is left on disks as processes vie for memory. Among these processes is |
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Memcached (and sometimes Redis) which is used as a cache. Wouldn't it be nice |
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to leverage empty disk space for caching? |
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Django is Python's most popular web framework and ships with several caching |
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backends. Unfortunately the file-based cache in Django is essentially |
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broken. The culling method is random and large caches repeatedly scan a cache |
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directory which slows linearly with growth. Can you really allow it to take |
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sixty milliseconds to store a key in a cache with a thousand items? |
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In Python, we can do better. And we can do it in pure-Python! |
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:: |
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In [1]: import pylibmc |
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In [2]: client = pylibmc.Client(['127.0.0.1'], binary=True) |
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In [3]: client[b'key'] = b'value' |
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In [4]: %timeit client[b'key'] |
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10000 loops, best of 3: 25.4 µs per loop |
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In [5]: import diskcache as dc |
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In [6]: cache = dc.Cache('tmp') |
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In [7]: cache[b'key'] = b'value' |
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In [8]: %timeit cache[b'key'] |
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100000 loops, best of 3: 11.8 µs per loop |
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**Note:** Micro-benchmarks have their place but are not a substitute for real |
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measurements. DiskCache offers cache benchmarks to defend its performance |
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claims. Micro-optimizations are avoided but your mileage may vary. |
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DiskCache efficiently makes gigabytes of storage space available for |
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caching. By leveraging rock-solid database libraries and memory-mapped files, |
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cache performance can match and exceed industry-standard solutions. There's no |
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need for a C compiler or running another process. Performance is a feature and |
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testing has 100% coverage with unit tests and hours of stress. |
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Testimonials |
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------------ |
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`Daren Hasenkamp`_, Founder -- |
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"It's a useful, simple API, just like I love about Redis. It has reduced |
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the amount of queries hitting my Elasticsearch cluster by over 25% for a |
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website that gets over a million users/day (100+ hits/second)." |
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`Mathias Petermann`_, Senior Linux System Engineer -- |
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"I implemented it into a wrapper for our Ansible lookup modules and we were |
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able to speed up some Ansible runs by almost 3 times. DiskCache is saving |
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us a ton of time." |
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Does your company or website use `DiskCache`_? Send us a `message |
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<contact@grantjenks.com>`_ and let us know. |
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.. _`Daren Hasenkamp`: https: |
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.. _`Mathias Petermann`: https: |
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Features |
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-------- |
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- Pure-Python |
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- Fully Documented |
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- Benchmark comparisons (alternatives, Django cache backends) |
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- 100% test coverage |
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- Hours of stress testing |
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- Performance matters |
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- Django compatible API |
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- Thread-safe and process-safe |
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- Supports multiple eviction policies (LRU and LFU included) |
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- Keys support "tag" metadata and eviction |
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- Developed on Python 3.10 |
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- Tested on CPython 3.6, 3.7, 3.8, 3.9, 3.10 |
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- Tested on Linux, Mac OS X, and Windows |
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- Tested using GitHub Actions |
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.. image:: https: |
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:target: https: |
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.. image:: https: |
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:target: https: |
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Quickstart |
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---------- |
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Installing `DiskCache`_ is simple with `pip <http: |
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$ pip install diskcache |
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You can access documentation in the interpreter with Python's built-in help |
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function:: |
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>>> import diskcache |
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>>> help(diskcache) # doctest: +SKIP |
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The core of `DiskCache`_ is three data types intended for caching. `Cache`_ |
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objects manage a SQLite database and filesystem directory to store key and |
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value pairs. `FanoutCache`_ provides a sharding layer to utilize multiple |
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caches and `DjangoCache`_ integrates that with `Django`_:: |
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>>> from diskcache import Cache, FanoutCache, DjangoCache |
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>>> help(Cache) # doctest: +SKIP |
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>>> help(FanoutCache) # doctest: +SKIP |
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>>> help(DjangoCache) # doctest: +SKIP |
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Built atop the caching data types, are `Deque`_ and `Index`_ which work as a |
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cross-process, persistent replacements for Python's ``collections.deque`` and |
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``dict``. These implement the sequence and mapping container base classes:: |
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>>> from diskcache import Deque, Index |
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>>> help(Deque) # doctest: +SKIP |
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>>> help(Index) # doctest: +SKIP |
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Finally, a number of `recipes`_ for cross-process synchronization are provided |
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using an underlying cache. Features like memoization with cache stampede |
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prevention, cross-process locking, and cross-process throttling are available:: |
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>>> from diskcache import memoize_stampede, Lock, throttle |
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>>> help(memoize_stampede) # doctest: +SKIP |
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>>> help(Lock) # doctest: +SKIP |
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>>> help(throttle) # doctest: +SKIP |
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Python's docstrings are a quick way to get started but not intended as a |
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replacement for the `DiskCache Tutorial`_ and `DiskCache API Reference`_. |
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.. _`Cache`: http://www.grantjenks.com/docs/diskcache/tutorial.html#cache |
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.. _`FanoutCache`: http://www.grantjenks.com/docs/diskcache/tutorial.html#fanoutcache |
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.. _`DjangoCache`: http://www.grantjenks.com/docs/diskcache/tutorial.html#djangocache |
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.. _`Django`: https://www.djangoproject.com/ |
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.. _`Deque`: http://www.grantjenks.com/docs/diskcache/tutorial.html#deque |
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.. _`Index`: http://www.grantjenks.com/docs/diskcache/tutorial.html#index |
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.. _`recipes`: http://www.grantjenks.com/docs/diskcache/tutorial.html#recipes |
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User Guide |
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---------- |
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For those wanting more details, this part of the documentation describes |
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tutorial, benchmarks, API, and development. |
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* `DiskCache Tutorial`_ |
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* `DiskCache Cache Benchmarks`_ |
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* `DiskCache DjangoCache Benchmarks`_ |
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* `Case Study: Web Crawler`_ |
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* `Case Study: Landing Page Caching`_ |
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* `Talk: All Things Cached - SF Python 2017 Meetup`_ |
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* `DiskCache API Reference`_ |
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* `DiskCache Development`_ |
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.. _`DiskCache Tutorial`: http://www.grantjenks.com/docs/diskcache/tutorial.html |
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.. _`DiskCache Cache Benchmarks`: http://www.grantjenks.com/docs/diskcache/cache-benchmarks.html |
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.. _`DiskCache DjangoCache Benchmarks`: http://www.grantjenks.com/docs/diskcache/djangocache-benchmarks.html |
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.. _`Talk: All Things Cached - SF Python 2017 Meetup`: http://www.grantjenks.com/docs/diskcache/sf-python-2017-meetup-talk.html |
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.. _`Case Study: Web Crawler`: http://www.grantjenks.com/docs/diskcache/case-study-web-crawler.html |
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.. _`Case Study: Landing Page Caching`: http://www.grantjenks.com/docs/diskcache/case-study-landing-page-caching.html |
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.. _`DiskCache API Reference`: http://www.grantjenks.com/docs/diskcache/api.html |
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.. _`DiskCache Development`: http://www.grantjenks.com/docs/diskcache/development.html |
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Comparisons |
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----------- |
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Comparisons to popular projects related to `DiskCache`_. |
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Key-Value Stores |
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................ |
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`DiskCache`_ is mostly a simple key-value store. Feature comparisons with four |
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other projects are shown in the tables below. |
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* `dbm`_ is part of Python's standard library and implements a generic |
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interface to variants of the DBM database — dbm.gnu or dbm.ndbm. If none of |
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these modules is installed, the slow-but-simple dbm.dumb is used. |
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* `shelve`_ is part of Python's standard library and implements a “shelf” as a |
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persistent, dictionary-like object. The difference with “dbm” databases is |
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that the values can be anything that the pickle module can handle. |
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* `sqlitedict`_ is a lightweight wrapper around Python's sqlite3 database with |
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a simple, Pythonic dict-like interface and support for multi-thread |
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access. Keys are arbitrary strings, values arbitrary pickle-able objects. |
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* `pickleDB`_ is a lightweight and simple key-value store. It is built upon |
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Python's simplejson module and was inspired by Redis. It is licensed with the |
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BSD three-clause license. |
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.. _`dbm`: https://docs.python.org/3/library/dbm.html |
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.. _`shelve`: https://docs.python.org/3/library/shelve.html |
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.. _`sqlitedict`: https://github.com/RaRe-Technologies/sqlitedict |
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.. _`pickleDB`: https://pythonhosted.org/pickleDB/ |
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**Features** |
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================ ============= ========= ========= ============ ============ |
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Feature diskcache dbm shelve sqlitedict pickleDB |
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================ ============= ========= ========= ============ ============ |
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Atomic? Always Maybe Maybe Maybe No |
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Persistent? Yes Yes Yes Yes Yes |
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Thread-safe? Yes No No Yes No |
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Process-safe? Yes No No Maybe No |
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Backend? SQLite DBM DBM SQLite File |
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Serialization? Customizable None Pickle Customizable JSON |
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Data Types? Mapping/Deque Mapping Mapping Mapping Mapping |
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Ordering? Insert/Sorted None None None None |
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Eviction? LRU/LFU/more None None None None |
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Vacuum? Automatic Maybe Maybe Manual Automatic |
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Transactions? Yes No No Maybe No |
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Multiprocessing? Yes No No No No |
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Forkable? Yes No No No No |
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Metadata? Yes No No No No |
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================ ============= ========= ========= ============ ============ |
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**Quality** |
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================ ============= ========= ========= ============ ============ |
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Project diskcache dbm shelve sqlitedict pickleDB |
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================ ============= ========= ========= ============ ============ |
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Tests? Yes Yes Yes Yes Yes |
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Coverage? Yes Yes Yes Yes No |
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Stress? Yes No No No No |
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CI Tests? Linux/Windows Yes Yes Linux No |
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Python? 2/3/PyPy All All 2/3 2/3 |
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License? Apache2 Python Python Apache2 3-Clause BSD |
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Docs? Extensive Summary Summary Readme Summary |
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Benchmarks? Yes No No No No |
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Sources? GitHub GitHub GitHub GitHub GitHub |
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Pure-Python? Yes Yes Yes Yes Yes |
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Server? No No No No No |
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Integrations? Django None None None None |
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================ ============= ========= ========= ============ ============ |
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**Timings** |
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These are rough measurements. See `DiskCache Cache Benchmarks`_ for more |
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rigorous data. |
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================ ============= ========= ========= ============ ============ |
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Project diskcache dbm shelve sqlitedict pickleDB |
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================ ============= ========= ========= ============ ============ |
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get 25 µs 36 µs 41 µs 513 µs 92 µs |
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set 198 µs 900 µs 928 µs 697 µs 1,020 µs |
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delete 248 µs 740 µs 702 µs 1,717 µs 1,020 µs |
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================ ============= ========= ========= ============ ============ |
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Caching Libraries |
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................. |
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* `joblib.Memory`_ provides caching functions and works by explicitly saving |
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the inputs and outputs to files. It is designed to work with non-hashable and |
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potentially large input and output data types such as numpy arrays. |
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* `klepto`_ extends Python’s `lru_cache` to utilize different keymaps and |
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alternate caching algorithms, such as `lfu_cache` and `mru_cache`. Klepto |
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uses a simple dictionary-sytle interface for all caches and archives. |
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.. _`klepto`: https://pypi.org/project/klepto/ |
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.. _`joblib.Memory`: https://joblib.readthedocs.io/en/latest/memory.html |
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Data Structures |
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............... |
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* `dict`_ is a mapping object that maps hashable keys to arbitrary |
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values. Mappings are mutable objects. There is currently only one standard |
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Python mapping type, the dictionary. |
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* `pandas`_ is a Python package providing fast, flexible, and expressive data |
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structures designed to make working with “relational” or “labeled” data both |
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easy and intuitive. |
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* `Sorted Containers`_ is an Apache2 licensed sorted collections library, |
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written in pure-Python, and fast as C-extensions. Sorted Containers |
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implements sorted list, sorted dictionary, and sorted set data types. |
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.. _`dict`: https://docs.python.org/3/library/stdtypes.html#typesmapping |
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.. _`pandas`: https://pandas.pydata.org/ |
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.. _`Sorted Containers`: http://www.grantjenks.com/docs/sortedcontainers/ |
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Pure-Python Databases |
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..................... |
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* `ZODB`_ supports an isomorphic interface for database operations which means |
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there's little impact on your code to make objects persistent and there's no |
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database mapper that partially hides the datbase. |
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* `CodernityDB`_ is an open source, pure-Python, multi-platform, schema-less, |
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NoSQL database and includes an HTTP server version, and a Python client |
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library that aims to be 100% compatible with the embedded version. |
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* `TinyDB`_ is a tiny, document oriented database optimized for your |
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happiness. If you need a simple database with a clean API that just works |
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without lots of configuration, TinyDB might be the right choice for you. |
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.. _`ZODB`: http://www.zodb.org/ |
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.. _`CodernityDB`: https://pypi.org/project/CodernityDB/ |
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.. _`TinyDB`: https://tinydb.readthedocs.io/ |
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Object Relational Mappings (ORM) |
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................................ |
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* `Django ORM`_ provides models that are the single, definitive source of |
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information about data and contains the essential fields and behaviors of the |
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stored data. Generally, each model maps to a single SQL database table. |
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* `SQLAlchemy`_ is the Python SQL toolkit and Object Relational Mapper that |
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gives application developers the full power and flexibility of SQL. It |
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provides a full suite of well known enterprise-level persistence patterns. |
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* `Peewee`_ is a simple and small ORM. It has few (but expressive) concepts, |
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making it easy to learn and intuitive to use. Peewee supports Sqlite, MySQL, |
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and PostgreSQL with tons of extensions. |
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* `SQLObject`_ is a popular Object Relational Manager for providing an object |
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interface to your database, with tables as classes, rows as instances, and |
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columns as attributes. |
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* `Pony ORM`_ is a Python ORM with beautiful query syntax. Use Python syntax |
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for interacting with the database. Pony translates such queries into SQL and |
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executes them in the database in the most efficient way. |
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.. _`Django ORM`: https://docs.djangoproject.com/en/dev/topics/db/ |
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.. _`SQLAlchemy`: https://www.sqlalchemy.org/ |
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.. _`Peewee`: http://docs.peewee-orm.com/ |
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.. _`SQLObject`: http://sqlobject.org/ |
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.. _`Pony ORM`: https://ponyorm.com/ |
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SQL Databases |
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............. |
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* `SQLite`_ is part of Python's standard library and provides a lightweight |
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disk-based database that doesn’t require a separate server process and allows |
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accessing the database using a nonstandard variant of the SQL query language. |
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* `MySQL`_ is one of the world’s most popular open source databases and has |
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become a leading database choice for web-based applications. MySQL includes a |
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standardized database driver for Python platforms and development. |
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* `PostgreSQL`_ is a powerful, open source object-relational database system |
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with over 30 years of active development. Psycopg is the most popular |
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PostgreSQL adapter for the Python programming language. |
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* `Oracle DB`_ is a relational database management system (RDBMS) from the |
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Oracle Corporation. Originally developed in 1977, Oracle DB is one of the |
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most trusted and widely used enterprise relational database engines. |
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* `Microsoft SQL Server`_ is a relational database management system developed |
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by Microsoft. As a database server, it stores and retrieves data as requested |
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by other software applications. |
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.. _`SQLite`: https: |
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.. _`MySQL`: https: |
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.. _`PostgreSQL`: http: |
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.. _`Oracle DB`: https: |
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.. _`Microsoft SQL Server`: https: |
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Other Databases |
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............... |
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* `Memcached`_ is free and open source, high-performance, distributed memory |
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object caching system, generic in nature, but intended for use in speeding up |
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dynamic web applications by alleviating database load. |
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* `Redis`_ is an open source, in-memory data structure store, used as a |
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database, cache and message broker. It supports data structures such as |
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strings, hashes, lists, sets, sorted sets with range queries, and more. |
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* `MongoDB`_ is a cross-platform document-oriented database program. Classified |
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as a NoSQL database program, MongoDB uses JSON-like documents with |
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schema. PyMongo is the recommended way to work with MongoDB from Python. |
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* `LMDB`_ is a lightning-fast, memory-mapped database. With memory-mapped |
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files, it has the read performance of a pure in-memory database while |
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retaining the persistence of standard disk-based databases. |
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* `BerkeleyDB`_ is a software library intended to provide a high-performance |
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embedded database for key/value data. Berkeley DB is a programmatic toolkit |
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that provides built-in database support for desktop and server applications. |
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* `LevelDB`_ is a fast key-value storage library written at Google that |
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provides an ordered mapping from string keys to string values. Data is stored |
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sorted by key and users can provide a custom comparison function. |
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.. _`Memcached`: https: |
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.. _`MongoDB`: https: |
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.. _`Redis`: https: |
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.. _`LMDB`: https: |
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.. _`BerkeleyDB`: https: |
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.. _`LevelDB`: https: |
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Reference |
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--------- |
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* `DiskCache Documentation`_ |
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* `DiskCache at PyPI`_ |
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* `DiskCache at GitHub`_ |
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* `DiskCache Issue Tracker`_ |
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.. _`DiskCache Documentation`: http: |
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.. _`DiskCache at PyPI`: https: |
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.. _`DiskCache at GitHub`: https: |
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.. _`DiskCache Issue Tracker`: https: |
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License |
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------- |
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Copyright 2016-2023 Grant Jenks |
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Licensed under the Apache License, Version 2.0 (the "License"); you may not use |
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this file except in compliance with the License. You may obtain a copy of the |
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License at |
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http: |
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Unless required by applicable law or agreed to in writing, software distributed |
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under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR |
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CONDITIONS OF ANY KIND, either express or implied. See the License for the |
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specific language governing permissions and limitations under the License. |
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.. _`DiskCache`: http: |
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