Frequently Asked Questions ========================== .. contents:: Is PyMongo thread-safe? ----------------------- PyMongo is thread-safe and even provides built-in connection pooling for threaded applications. .. _connection-pooling: How does connection pooling work in PyMongo? -------------------------------------------- Every :class:`~pymongo.mongo_client.MongoClient` instance has a built-in connection pool. The pool begins with one open connection. Note that :attr:`~pymongo.mongo_client.MongoClient.max_pool_size` does not cap the number of connections; it only caps the number of idle connections kept open in the pool for future use. Thus, if 500 threads simultaneously launch long-running queries, PyMongo opens up to 500 connections to MongoDB, then closes all but ``max_pool_size`` of them as the queries complete. When :meth:`~pymongo.mongo_client.MongoClient.disconnect` is called by any thread, all sockets are closed. PyMongo will create new sockets as needed. :class:`~pymongo.mongo_replica_set_client.MongoReplicaSetClient` maintains one connection pool per server in your replica set. .. seealso:: :doc:`examples/requests` Does PyMongo support Python 3? ------------------------------ Starting with version 2.2 PyMongo supports Python 3.x where x >= 1. See the :doc:`python3` for details. Does PyMongo support asynchronous frameworks like Gevent, Tornado, or Twisted? ------------------------------------------------------------------------------ PyMongo fully supports :doc:`Gevent <examples/gevent>`. To use MongoDB with `Tornado <http://www.tornadoweb.org/>`_ see the `Motor <https://github.com/mongodb/motor>`_ project. For `Twisted <http://twistedmatrix.com/>`_, see `TxMongo <http://github.com/fiorix/mongo-async-python-driver>`_. Compared to PyMongo, TxMongo is less stable, lack features, and is less actively maintained. What does *OperationFailure* cursor id not valid at server mean? ---------------------------------------------------------------- Cursors in MongoDB can timeout on the server if they've been open for a long time without any operations being performed on them. This can lead to an :class:`~pymongo.errors.OperationFailure` exception being raised when attempting to iterate the cursor. How do I change the timeout value for cursors? ---------------------------------------------- MongoDB doesn't support custom timeouts for cursors, but cursor timeouts can be turned off entirely. Pass ``timeout=False`` to :meth:`~pymongo.collection.Collection.find`. How can I store :mod:`decimal.Decimal` instances? ------------------------------------------------- MongoDB only supports IEEE 754 floating points - the same as the Python float type. The only way PyMongo could store Decimal instances would be to convert them to this standard, so you'd really only be storing floats anyway - we force users to do this conversion explicitly so that they are aware that it is happening. I'm saving ``9.99`` but when I query my document contains ``9.9900000000000002`` - what's going on here? -------------------------------------------------------------------------------------------------------- The database representation is ``9.99`` as an IEEE floating point (which is common to MongoDB and Python as well as most other modern languages). The problem is that ``9.99`` cannot be represented exactly with a double precision floating point - this is true in some versions of Python as well: >>> 9.99 9.9900000000000002 The result that you get when you save ``9.99`` with PyMongo is exactly the same as the result you'd get saving it with the JavaScript shell or any of the other languages (and as the data you're working with when you type ``9.99`` into a Python program). Can you add attribute style access for documents? ------------------------------------------------- This request has come up a number of times but we've decided not to implement anything like this. The relevant `jira case <http://jira.mongodb.org/browse/PYTHON-35>`_ has some information about the decision, but here is a brief summary: 1. This will pollute the attribute namespace for documents, so could lead to subtle bugs / confusing errors when using a key with the same name as a dictionary method. 2. The only reason we even use SON objects instead of regular dictionaries is to maintain key ordering, since the server requires this for certain operations. So we're hesitant to needlessly complicate SON (at some point it's hypothetically possible we might want to revert back to using dictionaries alone, without breaking backwards compatibility for everyone). 3. It's easy (and Pythonic) for new users to deal with documents, since they behave just like dictionaries. If we start changing their behavior it adds a barrier to entry for new users - another class to learn. What is the correct way to handle time zones with PyMongo? ---------------------------------------------------------- Prior to PyMongo version 1.7, the correct way is to only save naive :class:`~datetime.datetime` instances, and to save all dates as UTC. In versions >= 1.7, the driver will automatically convert aware datetimes to UTC before saving them. By default, datetimes retrieved from the server (no matter what version of the driver you're using) will be naive and represent UTC. In newer versions of the driver you can set the :class:`~pymongo.mongo_client.MongoClient` `tz_aware` parameter to ``True``, which will cause all :class:`~datetime.datetime` instances returned from that MongoClient to be aware (UTC). This setting is recommended, as it can force application code to handle timezones properly. .. warning:: Be careful not to save naive :class:`~datetime.datetime` instances that are not UTC (i.e. the result of calling :meth:`datetime.datetime.now`). Something like :mod:`pytz` can be used to convert dates to localtime after retrieving them from the database. How can I save a :mod:`datetime.date` instance? ----------------------------------------------- PyMongo doesn't support saving :mod:`datetime.date` instances, since there is no BSON type for dates without times. Rather than having the driver enforce a convention for converting :mod:`datetime.date` instances to :mod:`datetime.datetime` instances for you, any conversion should be performed in your client code. .. _web-application-querying-by-objectid: When I query for a document by ObjectId in my web application I get no result ----------------------------------------------------------------------------- It's common in web applications to encode documents' ObjectIds in URLs, like:: "/posts/50b3bda58a02fb9a84d8991e" Your web framework will pass the ObjectId portion of the URL to your request handler as a string, so it must be converted to :class:`~bson.objectid.ObjectId` before it is passed to :meth:`~pymongo.collection.Collection.find_one`. It is a common mistake to forget to do this conversion. Here's how to do it correctly in Flask_ (other web frameworks are similar):: from pymongo import MongoClient from bson.objectid import ObjectId from flask import Flask, render_template client = MongoClient() app = Flask(__name__) @app.route("/posts/<_id>") def show_post(_id): # NOTE!: converting _id from string to ObjectId before passing to find_one post = client.db.posts.find_one({'_id': ObjectId(_id)}) return render_template('post.html', post=post) if __name__ == "__main__": app.run() .. _Flask: http://flask.pocoo.org/ .. seealso:: :ref:`querying-by-objectid` How can I use PyMongo from Django? ---------------------------------- `Django <http://www.djangoproject.com/>`_ is a popular Python web framework. Django includes an ORM, :mod:`django.db`. Currently, there's no official MongoDB backend for Django. `django-mongodb-engine <http://django-mongodb.org/>`_ is an unofficial, actively developed MongoDB backend that supports Django aggregations, (atomic) updates, embedded objects, Map/Reduce and GridFS. It allows you to use most of Django's built-in features, including the ORM, admin, authentication, site and session frameworks and caching through `django-mongodb-cache <http://github.com/django-mongodb-engine/mongodb-cache>`_. However, it's easy to use MongoDB (and PyMongo) from Django without using a Django backend. Certain features of Django that require :mod:`django.db` (admin, authentication and sessions) will not work using just MongoDB, but most of what Django provides can still be used. We have written a demo `Django + MongoDB project <http://github.com/mdirolf/DjanMon/tree/master>`_. The README for that project describes some of what you need to do to use MongoDB from Django. The main point is that your persistence code will go directly into your views, rather than being defined in separate models. The README also gives instructions for how to change settings.py to disable the features that won't work with MongoDB. One project which should make working with MongoDB and Django easier is `mango <http://github.com/vpulim/mango>`_. Mango is a set of MongoDB backends for Django sessions and authentication (bypassing :mod:`django.db` entirely). .. _using-with-mod-wsgi: Does PyMongo work with **mod_wsgi**? ------------------------------------ `mod_wsgi <http://code.google.com/p/modwsgi/>`_ is a popular Apache module used for hosting Python applications conforming to the `wsgi <http://www.wsgi.org/>`_ specification. There is a potential issue when deploying PyMongo applications with mod_wsgi involving PyMongo's C extension and mod_wsgi's multiple sub interpreters. One tricky issue that we've seen when deploying PyMongo applications with mod_wsgi is documented `here <http://code.google.com/p/modwsgi/wiki/ApplicationIssues>`_, in the **Multiple Python Sub Interpreters** section. When running PyMongo with the C extension enabled it is possible to see strange failures when encoding due to the way mod_wsgi handles module reloading with multiple sub interpreters. There are several possible ways to work around this issue: 1. Run mod_wsgi in daemon mode with each WSGI application assigned to its own daemon process. 2. Force all WSGI applications to run in the same application group. 3. Install PyMongo :ref:`without the C extension <install-no-c>` (this will carry a performance penalty, but is the most immediate solution to this problem). How can I use something like Python's :mod:`json` module to encode my documents to JSON? ---------------------------------------------------------------------------------------- The :mod:`json` module won't work out of the box with all documents from PyMongo as PyMongo supports some special types (like :class:`~bson.objectid.ObjectId` and :class:`~bson.dbref.DBRef`) that are not supported in JSON. We've added some utilities for working with :mod:`json` and :mod:`simplejson` in the :mod:`~bson.json_util` module. .. _year-2038-problem: Why do I get an error for dates on or after 2038? ------------------------------------------------- On Unix systems, dates are represented as seconds from 1 January 1970 and usually stored in the C :mod:`time_t` type. On most 32-bit operating systems :mod:`time_t` is a signed 4 byte integer which means it can't handle dates after 19 January 2038; this is known as the `year 2038 problem <http://en.wikipedia.org/wiki/Year_2038_problem>`_. Neither MongoDB nor Python uses :mod:`time_t` to represent dates internally so do not suffer from this problem, but Python's :mod:`datetime.datetime.fromtimestamp()` does, which means it is susceptible. Previous to version 2.0, PyMongo used :mod:`datetime.datetime.fromtimestamp()` in its pure Python :mod:`bson` module. Therefore, on 32-bit systems you may get an error retrieving dates after 2038 from MongoDB using older versions of PyMongo with the pure Python version of :mod:`bson`. This problem was fixed in the pure Python implementation of :mod:`bson` by commit ``b19ab334af2a29353529`` (8 June 2011 - PyMongo 2.0). The C implementation of :mod:`bson` also used to suffer from this problem but it was fixed in commit ``566bc9fb7be6f9ab2604`` (10 May 2010 - PyMongo 1.7). Why do I get OverflowError decoding dates stored by another language's driver? ------------------------------------------------------------------------------ PyMongo decodes BSON datetime values to instances of Python's :class:`datetime.datetime`. Instances of :class:`datetime.datetime` are limited to years between :data:`datetime.MINYEAR` (usually 1) and :data:`datetime.MAXYEAR` (usually 9999). Some MongoDB drivers (e.g. the PHP driver) can store BSON datetimes with year values far outside those supported by :class:`datetime.datetime`. There are a few ways to work around this issue. One option is to filter out documents with values outside of the range supported by :class:`datetime.datetime`:: >>> from datetime import datetime >>> coll = client.test.dates >>> cur = coll.find({'dt': {'$gte': datetime.min, '$lte': datetime.max}}) Another option, assuming you don't need the datetime field, is to filter out just that field:: >>> cur = coll.find({}, fields={'dt': False}) .. _use_kerberos: How do I use Kerberos authentication with PyMongo? -------------------------------------------------- GSSAPI (Kerberos) authentication is available in the subscriber edition of MongoDB, version 2.4 and newer. To authenticate using GSSAPI you must first install the python `kerberos module`_ using easy_install or pip. Make sure you run kinit before using the following authentication methods:: $ kinit mongodbuser@EXAMPLE.COM mongodbuser@EXAMPLE.COM's Password: $ klist Credentials cache: FILE:/tmp/krb5cc_1000 Principal: mongodbuser@EXAMPLE.COM Issued Expires Principal Feb 9 13:48:51 2013 Feb 9 23:48:51 2013 krbtgt/EXAMPLE.COM@EXAMPLE.COM Now authenticate using the MongoDB URI:: >>> # Note: the kerberos principal must be url encoded. >>> import pymongo >>> uri = "mongodb://mongodbuser%40EXAMPLE.COM@example.com/?authMechanism=GSSAPI" >>> client = pymongo.MongoClient(uri) >>> or using :meth:`~pymongo.database.Database.authenticate`:: >>> import pymongo >>> client = pymongo.MongoClient('example.com') >>> db = client.test >>> db.authenticate('mongodbuser@EXAMPLE.COM', mechanism='GSSAPI') True .. note:: Kerberos support is only provided in environments supported by the python `kerberos module`_. This currently limits support to CPython 2.x and Unix environments. .. _kerberos module: http://pypi.python.org/pypi/kerberos