Skip to main content

Easily dump python objects to files, and then load them back.

Project description

Pickle Warehouse makes it easy to save Python objects to files with meaningful identifiers.

How to use

Pickle Warehouse provides a dictionary-like object that is associated with a particular directory on your computer.

from pickle_warehouse import Warehouse
warehouse = Warehouse('/tmp/a-directory')

The keys correspond to files, and the values get pickled to the files.

warehouse['filename'] = range(100)

import pickle
range(100) == pickle.load(open('/tmp/a-directory/filename', 'rb'))

You can also read and delete things.

# Read
range(100) == warehouse['filename']

# Delete
del(warehouse['filename'])

The coolest part is that the key gets interpreted in a fancy way. Aside from strings and string-like objects, you can use iterables of strings; all of these indices refer to the file /tmp/a-directory/foo/bar/baz:

warehouse[('foo','bar','baz')]
warehouse[['foo','bar','baz']]

If you pass a relative path to a file, it will be broken up as you’d expect; that is, strings get split on slashes and backslashes.

warehouse['foo/bar/baz']
warehouse['foo\\bar\\baz']

Note well: Specifying an absolute path won’t save things outside the warehouse directory.

warehouse['/foo/bar/baz'] # -> foo, bar, baz
warehouse['C:\\foo\\bar\\baz'] # -> c, foo, bar, baz
                               # (lowercase "c")

If you pass a URL, it will also get broken up in a reasonable way.

# /tmp/a-directory/http/thomaslevine.com/!/?foo=bar#baz
warehouse['http://thomaslevine.com/!/?foo=bar#baz']

# /tmp/a-directory/thomaslevine.com/!?foo=bar#baz
warehouse['thomaslevine.com/!?foo=bar#baz']

Dates and datetimes get converted to YYYY-MM-DD format.

import datetime

# /tmp/a-directory/2014-02-26
warehouse[datetime.date(2014,2,26)]
warehouse[datetime.datetime(2014,2,26,13,6,42)]

And you can mix these formats!

# /tmp/a-directory/http/thomaslevine.com/open-data/2014-02-26
warehouse[('http://thomaslevine.com/open-data', datetime.date(2014,2,26))]

It also has typical dictionary methods like keys, values, items, and update.

When to use

pickle-warehouse is for when you want a persistant store of Python objects. If you want an in-memory pickle store, look at _pickleDB: https://pythonhosted.org/pickleDB/.

Pickle Warehouse is strictly better than Mongo, so you should use it anywhere where you were previously using Mongo. Pickle Warehouse is designed for write-heavy workloads that need scalability (easy sharding), traditional database reliability (ACID), flexible schemas, and highly configurable indexing.

Pickle Warehouse is acidic

Here’s how it accomplishes that.

Atomicity

Writes are made to a temporary file that gets renamed.

Consistency

I don’t get this one, but I’m pretty sure I have it.

Isolation

Simultaneous writes are handled quite cleanly. If reads occur during writes, an error gets thrown, and you can try again.

Durability

All data are saved to disk right away.

Mongo replacement feature checklist

  • Call fsync twice, just to make sure.

  • Schema validation on read and write (configurable), because who knows what you did yesterday or whether you change your mind later?

  • PID + random number (+ hash?) for random number generation

  • Inode exhaustion

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

pickle-warehouse-0.1.1.tar.gz (4.8 kB view details)

Uploaded Source

File details

Details for the file pickle-warehouse-0.1.1.tar.gz.

File metadata

File hashes

Hashes for pickle-warehouse-0.1.1.tar.gz
Algorithm Hash digest
SHA256 aa15f6140cbe8394a02cb7f56d9915b1bc5dcacf1da32fcba9294e0d405b775e
MD5 457fe200b8108a4596451afe9675dea0
BLAKE2b-256 f675571c3b0cf2f26b3940f81d14e42cd20ad82b999915d70e47192bd82744f7

See more details on using hashes here.

Provenance

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