infi.clickhouse_orm/docs/models_and_databases.md

207 lines
7.5 KiB
Markdown
Raw Permalink Normal View History

2017-04-26 15:47:02 +03:00
Models and Databases
====================
Models represent ClickHouse tables, allowing you to work with them using familiar pythonic syntax.
Database instances connect to a specific ClickHouse database for running queries, inserting data and other operations.
Defining Models
---------------
2018-04-22 09:03:31 +03:00
Models are defined in a way reminiscent of Django's ORM, by subclassing `Model`:
2017-04-26 15:47:02 +03:00
from infi.clickhouse_orm import models, fields, engines
class Person(models.Model):
first_name = fields.StringField()
last_name = fields.StringField()
birthday = fields.DateField()
height = fields.Float32Field()
engine = engines.MergeTree('birthday', ('first_name', 'last_name', 'birthday'))
2018-04-22 09:03:31 +03:00
The columns in the database table are represented by model fields. Each field has a type, which matches the type of the corresponding database column. All the supported fields types are listed [here](field_types.md).
2017-04-26 15:47:02 +03:00
2018-04-21 15:23:00 +03:00
A model must have an `engine`, which determines how its table is stored on disk (if at all), and what capabilities it has. For more details about table engines see [here](table_engines.md).
### Default values
Each field has a "natural" default value - empty string for string fields, zero for numeric fields etc. To specify a different value use the `default` parameter:
first_name = fields.StringField(default="anonymous")
### Null values
To allow null values in a field, wrap it inside a `NullableField`:
birthday = fields.NullableField(fields.DateField())
In this case, the default value for that fields becomes `null` unless otherwide specified.
### Materialized fields
The value of a materialized field is calculated from other fields in the model. For example:
year_born = fields.Int16Field(materialized="toYear(birthday)")
Materialized fields are read-only, meaning that their values are not sent to the database when inserting records.
It is not possible to specify a default value for a materialized field.
### Alias fields
2018-04-22 09:03:31 +03:00
An alias field is simply a different way to call another field in the model. For example:
2018-04-21 15:23:00 +03:00
date_born = field.DateField(alias="birthday")
Alias fields are read-only, meaning that their values are not sent to the database when inserting records.
It is not possible to specify a default value for an alias field.
2017-04-26 15:47:02 +03:00
### Table Names
The table name used for the model is its class name, converted to lowercase. To override the default name, implement the `table_name` method:
class Person(models.Model):
...
@classmethod
def table_name(cls):
return 'people'
Using Models
------------
Once you have a model, you can create model instances:
>>> dan = Person(first_name='Dan', last_name='Schwartz')
>>> suzy = Person(first_name='Suzy', last_name='Jones')
>>> dan.first_name
u'Dan'
When values are assigned to model fields, they are immediately converted to their Pythonic data type. In case the value is invalid, a `ValueError` is raised:
>>> suzy.birthday = '1980-01-17'
>>> suzy.birthday
datetime.date(1980, 1, 17)
>>> suzy.birthday = 0.5
ValueError: Invalid value for DateField - 0.5
>>> suzy.birthday = '1922-05-31'
ValueError: DateField out of range - 1922-05-31 is not between 1970-01-01 and 2038-01-19
Inserting to the Database
-------------------------
To write your instances to ClickHouse, you need a `Database` instance:
from infi.clickhouse_orm.database import Database
db = Database('my_test_db')
This automatically connects to <http://localhost:8123> and creates a database called my_test_db, unless it already exists. If necessary, you can specify a different database URL and optional credentials:
db = Database('my_test_db', db_url='http://192.168.1.1:8050', username='scott', password='tiger')
Using the `Database` instance you can create a table for your model, and insert instances to it:
db.create_table(Person)
db.insert([dan, suzy])
The `insert` method can take any iterable of model instances, but they all must belong to the same model class.
Creating a read-only database is also supported. Such a `Database` instance can only read data, and cannot modify data or schemas:
db = Database('my_test_db', readonly=True)
Reading from the Database
-------------------------
Loading model instances from the database is simple:
for person in db.select("SELECT * FROM my_test_db.person", model_class=Person):
print person.first_name, person.last_name
Do not include a `FORMAT` clause in the query, since the ORM automatically sets the format to `TabSeparatedWithNamesAndTypes`.
It is possible to select only a subset of the columns, and the rest will receive their default values:
for person in db.select("SELECT first_name FROM my_test_db.person WHERE last_name='Smith'", model_class=Person):
print person.first_name
The ORM provides a way to build simple queries without writing SQL by hand. The previous snippet can be written like this:
for person in Person.objects_in(db).filter(last_name='Smith').only('first_name'):
print person.first_name
See [Querysets](querysets.md) for more information.
Reading without a Model
-----------------------
When running a query, specifying a model class is not required. In case you do not provide a model class, an ad-hoc class will be defined based on the column names and types returned by the query:
for row in db.select("SELECT max(height) as max_height FROM my_test_db.person"):
print row.max_height
This is a very convenient feature that saves you the need to define a model for each query, while still letting you work with Pythonic column values and an elegant syntax.
SQL Placeholders
----------------
There are a couple of special placeholders that you can use inside the SQL to make it easier to write: `$db` and `$table`. The first one is replaced by the database name, and the second is replaced by the table name (but is available only when the model is specified).
2017-04-26 15:47:02 +03:00
So instead of this:
db.select("SELECT * FROM my_test_db.person", model_class=Person)
you can use:
db.select("SELECT * FROM $db.$table", model_class=Person)
2017-04-26 15:47:02 +03:00
Note: normally it is not necessary to specify the database name, since it's already sent in the query parameters to ClickHouse. It is enough to specify the table name.
2017-04-26 15:47:02 +03:00
Counting
--------
The `Database` class also supports counting records easily:
>>> db.count(Person)
117
>>> db.count(Person, conditions="height > 1.90")
6
Pagination
----------
It is possible to paginate through model instances:
>>> order_by = 'first_name, last_name'
>>> page = db.paginate(Person, order_by, page_num=1, page_size=10)
>>> print page.number_of_objects
2507
>>> print page.pages_total
251
>>> for person in page.objects:
>>> # do something
The `paginate` method returns a `namedtuple` containing the following fields:
- `objects` - the list of objects in this page
- `number_of_objects` - total number of objects in all pages
- `pages_total` - total number of pages
- `number` - the page number, starting from 1; the special value -1 may be used to retrieve the last page
2017-04-26 15:47:02 +03:00
- `page_size` - the number of objects per page
You can optionally pass conditions to the query:
>>> page = db.paginate(Person, order_by, page_num=1, page_size=100, conditions='height > 1.90')
Note that `order_by` must be chosen so that the ordering is unique, otherwise there might be inconsistencies in the pagination (such as an instance that appears on two different pages).
2017-04-28 13:44:45 +03:00
---
[<< Overview](index.md) | [Table of Contents](toc.md) | [Querysets >>](querysets.md)