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docs_src/events/tutorial003_py39.py
return x * 42 ml_models = {} @asynccontextmanager async def lifespan(app: FastAPI): # Load the ML model ml_models["answer_to_everything"] = fake_answer_to_everything_ml_model yield # Clean up the ML models and release the resources ml_models.clear() app = FastAPI(lifespan=lifespan) @app.get("/predict") async def predict(x: float):Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Wed Dec 17 20:41:43 GMT 2025 - 569 bytes - Click Count (0) -
docs/es/docs/tutorial/body.md
Mejora el soporte del editor para modelos de Pydantic, con: * autocompletado * chequeo de tipos * refactorización * búsqueda * inspecciones /// ## Usa el modelo { #use-the-model } Dentro de la función, puedes acceder a todos los atributos del objeto modelo directamente: {* ../../docs_src/body/tutorial002_py310.py *} /// info | InformaciónCreated: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Wed Dec 17 20:41:43 GMT 2025 - 7.6K bytes - Click Count (0) -
scripts/playwright/query_param_models/image01.py
page.get_by_role("button", name="Try it out").click() page.get_by_role("heading", name="Servers").click() # Manually add the screenshot page.screenshot(path="docs/en/docs/img/tutorial/query-param-models/image01.png") # --------------------- context.close() browser.close() process = subprocess.Popen( ["fastapi", "run", "docs_src/query_param_models/tutorial001.py"] ) try:
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Tue Sep 17 18:54:10 GMT 2024 - 1.3K bytes - Click Count (0) -
RELEASE.md
* `Model.fit_generator`, `Model.evaluate_generator`, `Model.predict_generator`, `Model.train_on_batch`, `Model.test_on_batch`, and `Model.predict_on_batch` methods now respect the `run_eagerly` property, and will correctly run using `tf.function` by default. Note that `Model.fit_generator`, `Model.evaluate_generator`,Created: Tue Dec 30 12:39:10 GMT 2025 - Last Modified: Tue Oct 28 22:27:41 GMT 2025 - 740.4K bytes - Click Count (3) -
api/maven-api-toolchain/src/main/mdo/toolchains.mdo
specific language governing permissions and limitations under the License. --> <model xmlns="http://codehaus-plexus.github.io/MODELLO/2.0.0" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://codehaus-plexus.github.io/MODELLO/2.0.0 https://codehaus-plexus.github.io/modello/xsd/modello-2.0.0.xsd" xml.namespace="http://maven.apache.org/TOOLCHAINS/${version}"
Created: Sun Dec 28 03:35:09 GMT 2025 - Last Modified: Sun May 18 09:15:56 GMT 2025 - 9.5K bytes - Click Count (0) -
docs/ja/docs/tutorial/response-model.md
## ドキュメントを見る 自動ドキュメントを見ると、入力モデルと出力モデルがそれぞれ独自のJSON Schemaを持っていることが確認できます。 <img src="https://fastapi.tiangolo.com/img/tutorial/response-model/image01.png"> そして、両方のモデルは、対話型のAPIドキュメントに使用されます: <img src="https://fastapi.tiangolo.com/img/tutorial/response-model/image02.png"> ## レスポンスモデルのエンコーディングパラメータ レスポンスモデルにはデフォルト値を設定することができます: {* ../../docs_src/response_model/tutorial004.py hl[11,13,14] *}
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Mon Nov 18 02:25:44 GMT 2024 - 9K bytes - Click Count (0) -
compat/maven-model-builder/src/site/apt/super-pom.apt.vm
~~ under the License. ----- Super POM ----- Hervé Boutemy ----- 2011-09-12 ----- Super POM All models implicitly inherit from a super-POM:
Created: Sun Dec 28 03:35:09 GMT 2025 - Last Modified: Fri Oct 25 12:31:46 GMT 2024 - 1K bytes - Click Count (0) -
docs/es/docs/how-to/migrate-from-pydantic-v1-to-pydantic-v2.md
No está soportado por Pydantic tener un modelo de Pydantic v2 con sus propios campos definidos como modelos de Pydantic v1 o viceversa. ```mermaid graph TB subgraph "❌ Not Supported" direction TB subgraph V2["Pydantic v2 Model"] V1Field["Pydantic v1 Model"] end subgraph V1["Pydantic v1 Model"] V2Field["Pydantic v2 Model"] end endCreated: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Tue Dec 16 16:16:35 GMT 2025 - 5.6K bytes - Click Count (0) -
docs/zh/docs/tutorial/response-model.md
因此,**FastAPI** 将会负责过滤掉未在输出模型中声明的所有数据(使用 Pydantic)。 ## 在文档中查看 当你查看自动化文档时,你可以检查输入模型和输出模型是否都具有自己的 JSON Schema: <img src="https://fastapi.tiangolo.com/img/tutorial/response-model/image01.png"> 并且两种模型都将在交互式 API 文档中使用: <img src="https://fastapi.tiangolo.com/img/tutorial/response-model/image02.png"> ## 响应模型编码参数 你的响应模型可以具有默认值,例如: {* ../../docs_src/response_model/tutorial004.py hl[11,13:14] *}
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/en/docs/release-notes.md
@app.get("/items/") async def read_items(filter_query: Annotated[FilterParams, Query()]): return filter_query ``` Read the new docs: [Query Parameter Models](https://fastapi.tiangolo.com/tutorial/query-param-models/). #### `Header` Parameter Models Use Pydantic models for `Header` parameters: ```python from typing import Annotated from fastapi import FastAPI, Header from pydantic import BaseModel
Created: Sun Dec 28 07:19:09 GMT 2025 - Last Modified: Sat Dec 27 19:06:15 GMT 2025 - 586.7K bytes - Click Count (0)