Starlette includes optional support for GraphQL, using the `graphene` library. Here's an example of integrating the support into your application. ```python from starlette.applications import Starlette from starlette.graphql import GraphQLApp import graphene class Query(graphene.ObjectType): hello = graphene.String(name=graphene.String(default_value="stranger")) def resolve_hello(self, info, name): return "Hello " + name app = Starlette() app.add_route('/', GraphQLApp(schema=graphene.Schema(query=Query))) ``` If you load up the page in a browser, you'll be served the GraphiQL tool, which you can use to interact with your GraphQL API. ![GraphiQL](img/graphiql.png) ## Accessing request information The current request is available in the context. ```python class Query(graphene.ObjectType): user_agent = graphene.String() def resolve_user_agent(self, info): """ Return the User-Agent of the incoming request. """ request = info.context["request"] return request.headers.get("User-Agent", "") ``` ## Sync or Async executors If you're working with a standard ORM, then just use regular function calls for your "resolve" methods, and Starlette will manage running the GraphQL query within a seperate thread. If you want to use an asyncronous ORM, then use "async resolve" methods, and make sure to setup Graphene's AsyncioExecutor using the `executor` argument. ```python from graphql.execution.executors.asyncio import AsyncioExecutor from starlette.applications import Starlette import graphene class Query(graphene.ObjectType): hello = graphene.String(name=graphene.String(default_value="stranger")) async def resolve_hello(self, info, name): # We can make asynchronous network calls here. return "Hello " + name app = Starlette() # We're using `executor=AsyncioExecutor()` here. app.add_route('/', GraphQLApp(schema=graphene.Schema(query=Query), executor=AsyncioExecutor())) ```