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144 lines
4.6 KiB
144 lines
4.6 KiB
.. mongokit-pattern: |
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MongoKit in Flask |
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================= |
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Using a document database rather than a full DBMS gets more common these days. |
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This pattern shows how to use MongoKit, a document mapper library, to |
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integrate with MongoDB. |
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This pattern requires a running MongoDB server and the MongoKit library |
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installed. |
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There are two very common ways to use MongoKit. I will outline each of them |
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here: |
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Declarative |
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----------- |
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The default behaviour of MongoKit is the declarative one that is based on |
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common ideas from Django or the SQLAlchemy declarative extension. |
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Here an example `app.py` module for your application:: |
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from flask import Flask |
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from mongokit import Connection, Document |
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# configuration |
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MONGODB_HOST = 'localhost' |
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MONGODB_PORT = 27017 |
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# create the little application object |
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app = Flask(__name__) |
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app.config.from_object(__name__) |
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# connect to the database |
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connection = Connection(app.config['MONGODB_HOST'], |
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app.config['MONGODB_PORT']) |
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To define your models, just subclass the `Document` class that is imported |
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from MongoKit. If you've seen the SQLAlchemy pattern you may wonder why we do |
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not have a session and even do not define a `init_db` function here. On the |
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one hand, MongoKit does not have something like a session. This sometimes |
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makes it more to type but also makes it blazingly fast. On the other hand, |
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MongoDB is schemaless. This means you can modify the data structure from one |
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insert query to the next without any problem. MongoKit is just schemaless |
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too, but implements some validation to ensure data integrity. |
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Here is an example document (put this also into `app.py`, e.g.):: |
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def max_length(length): |
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def validate(value): |
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if len(value) <= length: |
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return True |
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raise Exception('%s must be at most %s characters long' % length) |
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return validate |
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class User(Document): |
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structure = { |
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'name': unicode, |
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'email': unicode, |
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} |
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validators = { |
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'name': max_length(50), |
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'email': max_length(120) |
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} |
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use_dot_notation = True |
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def __repr__(self): |
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return '<User %r>' % (self.name) |
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# register the User document with our current connection |
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connection.register([User]) |
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This example shows you how to define your schema (named structure), a |
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validator for the maximum character length and uses a special MongoKit feature |
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called `use_dot_notation`. Per default MongoKit behaves like a python |
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dictionary but with `use_dot_notation` set to `True` you can use your |
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documents like you use models in nearly any other ORM by using dots to |
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seperate between attributes. |
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You can insert entries into the database like this: |
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>>> from yourapplication.database import connection |
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>>> from yourapplication.models import User |
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>>> collection = connection['test'].users |
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>>> user = collection.User() |
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>>> user['name'] = u'admin' |
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>>> user['email'] = u'admin@localhost' |
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>>> user.save() |
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Note that MongoKit is kinda strict with used column types, you must not use a |
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common `str` type for either `name` or `email` but unicode. |
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Querying is simple as well: |
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>>> list(collection.User.find()) |
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[<User u'admin'>] |
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>>> collection.User.find_one({'name': u'admin'}) |
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<User u'admin'> |
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.. _MongoKit: http://bytebucket.org/namlook/mongokit/ |
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PyMongo Compatibility Layer |
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--------------------------- |
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If you just want to use PyMongo, you can do that with MongoKit as well. You |
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may use this process if you need the best performance to get. Note that this |
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example does not show how to couple it with Flask, see the above MongoKit code |
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for examples:: |
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from MongoKit import Connection |
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connection = Connection() |
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To insert data you can use the `insert` method. We have to get a |
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collection first, this is somewhat the same as a table in the SQL world. |
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>>> collection = connection['test'].users |
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>>> user = {'name': u'admin', 'email': u'admin@localhost'} |
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>>> collection.insert(user) |
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print list(collection.find()) |
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print collection.find_one({'name': u'admin'}) |
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MongoKit will automatically commit for us. |
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To query your database, you use the collection directly: |
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>>> list(collection.find()) |
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[{u'_id': ObjectId('4c271729e13823182f000000'), u'name': u'admin', u'email': u'admin@localhost'}] |
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>>> collection.find_one({'name': u'admin'}) |
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{u'_id': ObjectId('4c271729e13823182f000000'), u'name': u'admin', u'email': u'admin@localhost'} |
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These results are also dict-like objects: |
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>>> r = collection.find_one({'name': u'admin'}) |
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>>> r['email'] |
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u'admin@localhost' |
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For more information about MongoKit, head over to the |
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`website <http://bytebucket.org/namlook/mongokit/>`_.
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