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docs_src/response_directly/tutorial001_py310.py
from fastapi.responses import JSONResponse from pydantic import BaseModel class Item(BaseModel): title: str timestamp: datetime description: str | None = None app = FastAPI() @app.put("/items/{id}") def update_item(id: str, item: Item): json_compatible_item_data = jsonable_encoder(item)
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Wed Dec 10 08:55:32 GMT 2025 - 474 bytes - Click Count (0) -
docs_src/path_params_numeric_validations/tutorial001_an_py39.py
from typing import Annotated, Union from fastapi import FastAPI, Path, Query app = FastAPI() @app.get("/items/{item_id}") async def read_items( item_id: Annotated[int, Path(title="The ID of the item to get")], q: Annotated[Union[str, None], Query(alias="item-query")] = None, ): results = {"item_id": item_id} if q: results.update({"q": q})
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Sat Mar 18 12:29:59 GMT 2023 - 388 bytes - Click Count (0) -
docs_src/background_tasks/tutorial001_py39.py
from fastapi import BackgroundTasks, FastAPI app = FastAPI() def write_notification(email: str, message=""): with open("log.txt", mode="w") as email_file: content = f"notification for {email}: {message}" email_file.write(content) @app.post("/send-notification/{email}") async def send_notification(email: str, background_tasks: BackgroundTasks):
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Wed Dec 17 20:41:43 GMT 2025 - 519 bytes - Click Count (0) -
docs_src/query_param_models/tutorial001_an_py39.py
from fastapi import FastAPI, Query from pydantic import BaseModel, Field app = FastAPI() class FilterParams(BaseModel): limit: int = Field(100, gt=0, le=100) offset: int = Field(0, ge=0) order_by: Literal["created_at", "updated_at"] = "created_at" tags: list[str] = [] @app.get("/items/") async def read_items(filter_query: Annotated[FilterParams, Query()]):
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Wed Dec 17 20:41:43 GMT 2025 - 443 bytes - Click Count (0) -
docs_src/query_param_models/tutorial002_py39.py
from fastapi import FastAPI, Query from pydantic import BaseModel, Field app = FastAPI() class FilterParams(BaseModel): model_config = {"extra": "forbid"} limit: int = Field(100, gt=0, le=100) offset: int = Field(0, ge=0) order_by: Literal["created_at", "updated_at"] = "created_at" tags: list[str] = [] @app.get("/items/") async def read_items(filter_query: FilterParams = Query()):
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Wed Dec 17 20:41:43 GMT 2025 - 462 bytes - Click Count (0) -
docs_src/query_params/tutorial003_py39.py
from typing import Union from fastapi import FastAPI app = FastAPI() @app.get("/items/{item_id}") async def read_item(item_id: str, q: Union[str, None] = None, short: bool = False): item = {"item_id": item_id} if q: item.update({"q": q}) if not short: item.update( {"description": "This is an amazing item that has a long description"} )
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Wed Dec 17 20:41:43 GMT 2025 - 406 bytes - Click Count (0) -
docs/zh/docs/tutorial/response-model.md
# 响应模型 你可以在任意的*路径操作*中使用 `response_model` 参数来声明用于响应的模型: * `@app.get()` * `@app.post()` * `@app.put()` * `@app.delete()` * 等等。 {* ../../docs_src/response_model/tutorial001_py310.py hl[17,22,24:27] *} /// note 注意,`response_model`是「装饰器」方法(`get`,`post` 等)的一个参数。不像之前的所有参数和请求体,它不属于*路径操作函数*。 /// 它接收的类型与你将为 Pydantic 模型属性所声明的类型相同,因此它可以是一个 Pydantic 模型,但也可以是一个由 Pydantic 模型组成的 `list`,例如 `List[Item]`。
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Mon Nov 18 02:25:44 GMT 2024 - 6.9K bytes - Click Count (0) -
docs_src/body_multiple_params/tutorial002_py310.py
from fastapi import FastAPI from pydantic import BaseModel app = FastAPI() class Item(BaseModel): name: str description: str | None = None price: float tax: float | None = None class User(BaseModel): username: str full_name: str | None = None @app.put("/items/{item_id}") async def update_item(item_id: int, item: Item, user: User):
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Fri Jan 07 14:11:31 GMT 2022 - 446 bytes - Click Count (0) -
docs_src/schema_extra_example/tutorial001_pv1_py310.py
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Sat Dec 20 15:55:38 GMT 2025 - 634 bytes - Click Count (0) -
docs/bigdata/README.md
workloads rely on HDFS atomic rename functionality to complete writing data to the datastore. Object storage operations are atomic by nature and they do not require/implement rename API. The default S3A committer emulates renames through copy and delete APIs. This interaction pattern causes significant loss of performance because of the write amplification. _Netflix_, for example, developed two new staging committers - the Directory staging committer and the Partitioned staging committer - to take full...
Created: Sun Dec 28 19:28:13 GMT 2025 - Last Modified: Tue Aug 12 18:20:36 GMT 2025 - 14.7K bytes - Click Count (0)