Docs Home → Develop Applications → Python Drivers → PyMongo
Databases and Collections
On this page
Overview
In this guide, you can learn how to use MongoDB databases and collections with PyMongo.
MongoDB organizes data into a hierarchy of the following levels:
Databases: The top level of data organization in a MongoDB instance.
Collections: MongoDB stores documents in collections. They are analogous to tables in relational databases.
Documents: Contain literal data such as string, numbers, dates, and other embedded documents.
For more information about document field types and structure, see the Documents guide in the MongoDB Server manual.
Access a Database
Access a database by using dictionary-style access on your MongoClient
instance.
The following example accesses a database named "test_database":
database = client["test_database"]
Access a Collection
Access a collection by using dictionary-style access on an instance of your database.
The following example accesses a collection named "test_collection":
database = client["test_database"] collection = database["test_collection"]
Tip
If the provided collection name does not already exist in the database, MongoDB implicitly creates the collection when you first insert data into it.
Create a Collection
Use the create_collection()
method to explicitly create a collection in a
MongoDB database.
The following example creates a collection called "example_collection"
:
database = client["test_database"] database.create_collection("example_collection")
You can specify collection options, such as maximum size and document validation rules, by passing them in as keyword arguments. For a full list of optional parameters, see the create_collection() API documentation.
Get a List of Collections
You can query for a list of collections in a database by calling the
list_collections()
method. The method returns a cursor containing all
collections in the database and their associated metadata.
The following example calls the list_collections()
method and iterates over
the cursor to print the results:
collection_list = database.list_collections() for c in collection_list: print(c)
To query for only the names of the collections in the database, call the
list_collection_name()
method as follows:
collection_list = database.list_collection_names() for c in collection_list: print(c)
For more information about iterating over a cursor, see Access Data From a Cursor.
Delete a Collection
You can delete a collection from the database by using the drop_collection()
method.
The following example deletes the test_collection
collection:
collection = database["test_collection"]; collection.drop();
Warning
Dropping a Collection Deletes All Data in the Collection
Dropping a collection from your database permanently deletes all documents and all indexes within that collection.
Drop a collection only if the data in it is no longer needed.
Configure Read and Write Operations
You can control how the driver routes read operations by setting a read preference. You can also control options for how the driver waits for acknowledgment of read and write operations on a replica set by setting a read concern and a write concern.
By default, databases inherit these settings from the MongoClient
instance,
and collections inherit them from the database. However, you can change these
settings on your database or collection by using one of the following methods:
get_database()
: Gets the database and applies the client's read preference, read concern, and write preference.database.with_options()
: Gets the database and applies its current read preference, read concern, and write preference.get_collection()
: Gets the collection and applies its current read preference, read concern, and write preference.collection.with_options()
: Gets the collection and applies the database's read preference, read concern, and write preference.
To change read or write settings with the preceding methods, call the method and pass in the collection or database name, and the new read preference, read concern, or write preference.
The following example shows how to change the read preference, read concern and
write preference of a database called test-database
with the get_database()
method:
client.get_database("test-database", read_preference=ReadPreference.SECONDARY, read_concern="local", write_concern="majority")
The following example shows how to change read and write settings of a
collection called test-collection
with the get_collection()
method:
database.get_collection("test-collection", read_preference=ReadPreference.SECONDARY, read_concern="local", write_concern="majority")
The following example shows how to change read and write settings of a
collection called test-collection
with the with_options()
method:
collection.with_options(read_preference=ReadPreference.SECONDARY, read_concern="local", write_concern="majority")
Tip
To see the types of read preferences available in the ReadPreference
enum, see the
API documentation.
To learn more about the read and write settings, see the following guides in the MongoDB Server manual:
Tag Sets
In MongoDB Server, you can apply key-value tags to replica-set members according to any criteria you choose. You can then use those tags to target one or more members for a read operation.
By default, PyMongo ignores tags when choosing a member to read from. To instruct PyMongo to prefer certain tags, pass them as a parameter to your read preference class constructor.
In the following code example, the tag set passed to the read_preference
parameter
instructs PyMongo to prefer reads from the
New York data center ('dc': 'ny'
) and to fall back to the San Francisco data
center ('dc': 'sf'
):
db = client.get_database( 'test', read_preference=Secondary([{'dc': 'ny'}, {'dc': 'sf'}]))
Local Threshold
If multiple replica-set members match the read preference and tag sets you specify, PyMongo reads from the nearest replica-set members, chosen according to their ping time.
By default, the driver uses only those members whose ping times are within 15 milliseconds
of the nearest member for queries. To distribute reads between members with
higher latencies, pass the localThresholdMS
option to the MongoClient()
constructor.
The following example specifies a local threshold of 35 milliseconds:
client = MongoClient(replicaSet='repl0', readPreference=ReadPreference.SECONDARY_PREFERRED, localThresholdMS=35)
In the preceding example, PyMongo distributes reads between matching members within 35 milliseconds of the closest member's ping time.
Note
PyMongo ignores the value of localThresholdMS
when communicating with a
replica set through a mongos
instance. In this case, use the
localThreshold
command-line option.
Troubleshooting
AutoReconnect
Error
You receive this error if you specify tag-sets
in your
read preference and MongoDB is unable to find replica set members with the specified
tags. To avoid this error, include an empty dictionary ({}
) at the end of
the tag-set list. This instructs PyMongo to read from any member that
matches the read-reference mode when it can't find matching tags.
API Documentation
To learn more about any of the methods or types discussed in this guide, see the following API documentation: