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118 lines
3.6 KiB
ReStructuredText
118 lines
3.6 KiB
ReStructuredText
Dataloader
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==========
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DataLoader is a generic utility to be used as part of your application's
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data fetching layer to provide a simplified and consistent API over
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various remote data sources such as databases or web services via batching
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and caching. It is provided by a separate package `aiodataloader <https://pypi.org/project/aiodataloader/>`.
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Batching
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--------
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Batching is not an advanced feature, it's DataLoader's primary feature.
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Create loaders by providing a batch loading function.
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.. code:: python
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from aiodataloader import DataLoader
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class UserLoader(DataLoader):
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async def batch_load_fn(self, keys):
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# Here we call a function to return a user for each key in keys
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return [get_user(id=key) for key in keys]
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A batch loading async function accepts a list of keys, and returns a list of ``values``.
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``DataLoader`` will coalesce all individual loads which occur within a
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single frame of execution (executed once the wrapping event loop is resolved)
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and then call your batch function with all requested keys.
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.. code:: python
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user_loader = UserLoader()
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user1 = await user_loader.load(1)
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user1_best_friend = await user_loader.load(user1.best_friend_id)
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user2 = await user_loader.load(2)
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user2_best_friend = await user_loader.load(user2.best_friend_id)
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A naive application may have issued *four* round-trips to a backend for the
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required information, but with ``DataLoader`` this application will make at most *two*.
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Note that loaded values are one-to-one with the keys and must have the same
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order. This means that if you load all values from a single query, you must
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make sure that you then order the query result for the results to match the keys:
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.. code:: python
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class UserLoader(DataLoader):
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async def batch_load_fn(self, keys):
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users = {user.id: user for user in User.objects.filter(id__in=keys)}
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return [users.get(user_id) for user_id in keys]
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``DataLoader`` allows you to decouple unrelated parts of your application without
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sacrificing the performance of batch data-loading. While the loader presents
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an API that loads individual values, all concurrent requests will be coalesced
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and presented to your batch loading function. This allows your application to
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safely distribute data fetching requirements throughout your application and
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maintain minimal outgoing data requests.
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Using with Graphene
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-------------------
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DataLoader pairs nicely well with Graphene/GraphQL. GraphQL fields are designed
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to be stand-alone functions. Without a caching or batching mechanism, it's easy
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for a naive GraphQL server to issue new database requests each time a field is resolved.
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Consider the following GraphQL request:
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.. code::
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{
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me {
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name
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bestFriend {
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name
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}
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friends(first: 5) {
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name
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bestFriend {
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name
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}
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}
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}
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}
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If ``me``, ``bestFriend`` and ``friends`` each need to send a request to the backend,
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there could be at most 13 database requests!
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When using DataLoader, we could define the User type using our previous example with
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leaner code and at most 4 database requests, and possibly fewer if there are cache hits.
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.. code:: python
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class User(graphene.ObjectType):
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name = graphene.String()
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best_friend = graphene.Field(lambda: User)
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friends = graphene.List(lambda: User)
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async def resolve_best_friend(root, info):
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return await user_loader.load(root.best_friend_id)
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async def resolve_friends(root, info):
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return await user_loader.load_many(root.friend_ids)
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