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Generate Clients

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As FastAPI is based on the OpenAPI specification, you get automatic compatibility with many tools, including the automatic API docs (provided by Swagger UI).

One particular advantage that is not necessarily obvious is that you can generate clients (sometimes called SDKs ) for your API, for many different programming languages.

OpenAPI Client Generators

There are many tools to generate clients from OpenAPI.

A common tool is OpenAPI Generator.

If you are building a frontend, a very interesting alternative is openapi-ts.

Client and SDK Generators - Sponsor

There are also some company-backed Client and SDK generators based on OpenAPI (FastAPI), in some cases they can offer you additional features on top of high-quality generated SDKs/clients.

Some of them also ✨ sponsor FastAPI ✨, this ensures the continued and healthy development of FastAPI and its ecosystem.

And it shows their true commitment to FastAPI and its community (you), as they not only want to provide you a good service but also want to make sure you have a good and healthy framework, FastAPI. 🙇

For example, you might want to try:

There are also several other companies offering similar services that you can search and find online. 🤓

Generate a TypeScript Frontend Client

Let's start with a simple FastAPI application:

from fastapi import FastAPI
from pydantic import BaseModel

app = FastAPI()


class Item(BaseModel):
    name: str
    price: float


class ResponseMessage(BaseModel):
    message: str


@app.post("/items/", response_model=ResponseMessage)
async def create_item(item: Item):
    return {"message": "item received"}


@app.get("/items/", response_model=list[Item])
async def get_items():
    return [
        {"name": "Plumbus", "price": 3},
        {"name": "Portal Gun", "price": 9001},
    ]
🤓 Other versions and variants
from typing import List

from fastapi import FastAPI
from pydantic import BaseModel

app = FastAPI()


class Item(BaseModel):
    name: str
    price: float


class ResponseMessage(BaseModel):
    message: str


@app.post("/items/", response_model=ResponseMessage)
async def create_item(item: Item):
    return {"message": "item received"}


@app.get("/items/", response_model=List[Item])
async def get_items():
    return [
        {"name": "Plumbus", "price": 3},
        {"name": "Portal Gun", "price": 9001},
    ]

Notice that the path operations define the models they use for request payload and response payload, using the models Item and ResponseMessage.

API Docs

If you go to the API docs, you will see that it has the schemas for the data to be sent in requests and received in responses:

You can see those schemas because they were declared with the models in the app.

That information is available in the app's OpenAPI schema, and then shown in the API docs (by Swagger UI).

And that same information from the models that is included in OpenAPI is what can be used to generate the client code.

Generate a TypeScript Client

Now that we have the app with the models, we can generate the client code for the frontend.

Install openapi-ts

You can install openapi-ts in your frontend code with:

$ npm install @hey-api/openapi-ts --save-dev

---> 100%

Generate Client Code

To generate the client code you can use the command line application openapi-ts that would now be installed.

Because it is installed in the local project, you probably wouldn't be able to call that command directly, but you would put it on your package.json file.

It could look like this:

{
  "name": "frontend-app",
  "version": "1.0.0",
  "description": "",
  "main": "index.js",
  "scripts": {
    "generate-client": "openapi-ts --input http://localhost:8000/openapi.json --output ./src/client --client axios"
  },
  "author": "",
  "license": "",
  "devDependencies": {
    "@hey-api/openapi-ts": "^0.27.38",
    "typescript": "^4.6.2"
  }
}

After having that NPM generate-client script there, you can run it with:

$ npm run generate-client

frontend-app@1.0.0 generate-client /home/user/code/frontend-app
> openapi-ts --input http://localhost:8000/openapi.json --output ./src/client --client axios

That command will generate code in ./src/client and will use axios (the frontend HTTP library) internally.

Try Out the Client Code

Now you can import and use the client code, it could look like this, notice that you get autocompletion for the methods:

You will also get autocompletion for the payload to send:

Tip

Notice the autocompletion for name and price, that was defined in the FastAPI application, in the Item model.

You will have inline errors for the data that you send:

The response object will also have autocompletion:

FastAPI App with Tags

In many cases your FastAPI app will be bigger, and you will probably use tags to separate different groups of path operations.

For example, you could have a section for items and another section for users, and they could be separated by tags:

from fastapi import FastAPI
from pydantic import BaseModel

app = FastAPI()


class Item(BaseModel):
    name: str
    price: float


class ResponseMessage(BaseModel):
    message: str


class User(BaseModel):
    username: str
    email: str


@app.post("/items/", response_model=ResponseMessage, tags=["items"])
async def create_item(item: Item):
    return {"message": "Item received"}


@app.get("/items/", response_model=list[Item], tags=["items"])
async def get_items():
    return [
        {"name": "Plumbus", "price": 3},
        {"name": "Portal Gun", "price": 9001},
    ]


@app.post("/users/", response_model=ResponseMessage, tags=["users"])
async def create_user(user: User):
    return {"message": "User received"}
🤓 Other versions and variants
from typing import List

from fastapi import FastAPI
from pydantic import BaseModel

app = FastAPI()


class Item(BaseModel):
    name: str
    price: float


class ResponseMessage(BaseModel):
    message: str


class User(BaseModel):
    username: str
    email: str


@app.post("/items/", response_model=ResponseMessage, tags=["items"])
async def create_item(item: Item):
    return {"message": "Item received"}


@app.get("/items/", response_model=List[Item], tags=["items"])
async def get_items():
    return [
        {"name": "Plumbus", "price": 3},
        {"name": "Portal Gun", "price": 9001},
    ]


@app.post("/users/", response_model=ResponseMessage, tags=["users"])
async def create_user(user: User):
    return {"message": "User received"}

Generate a TypeScript Client with Tags

If you generate a client for a FastAPI app using tags, it will normally also separate the client code based on the tags.

This way you will be able to have things ordered and grouped correctly for the client code:

In this case you have:

  • ItemsService
  • UsersService

Client Method Names

Right now the generated method names like createItemItemsPost don't look very clean:

ItemsService.createItemItemsPost({name: "Plumbus", price: 5})

...that's because the client generator uses the OpenAPI internal operation ID for each path operation.

OpenAPI requires that each operation ID is unique across all the path operations, so FastAPI uses the function name, the path, and the HTTP method/operation to generate that operation ID, because that way it can make sure that the operation IDs are unique.

But I'll show you how to improve that next. 🤓

Custom Operation IDs and Better Method Names

You can modify the way these operation IDs are generated to make them simpler and have simpler method names in the clients.

In this case you will have to ensure that each operation ID is unique in some other way.

For example, you could make sure that each path operation has a tag, and then generate the operation ID based on the tag and the path operation name (the function name).

Custom Generate Unique ID Function

FastAPI uses a unique ID for each path operation, it is used for the operation ID and also for the names of any needed custom models, for requests or responses.

You can customize that function. It takes an APIRoute and outputs a string.

For example, here it is using the first tag (you will probably have only one tag) and the path operation name (the function name).

You can then pass that custom function to FastAPI as the generate_unique_id_function parameter:

from fastapi import FastAPI
from fastapi.routing import APIRoute
from pydantic import BaseModel


def custom_generate_unique_id(route: APIRoute):
    return f"{route.tags[0]}-{route.name}"


app = FastAPI(generate_unique_id_function=custom_generate_unique_id)


class Item(BaseModel):
    name: str
    price: float


class ResponseMessage(BaseModel):
    message: str


class User(BaseModel):
    username: str
    email: str


@app.post("/items/", response_model=ResponseMessage, tags=["items"])
async def create_item(item: Item):
    return {"message": "Item received"}


@app.get("/items/", response_model=list[Item], tags=["items"])
async def get_items():
    return [
        {"name": "Plumbus", "price": 3},
        {"name": "Portal Gun", "price": 9001},
    ]


@app.post("/users/", response_model=ResponseMessage, tags=["users"])
async def create_user(user: User):
    return {"message": "User received"}
🤓 Other versions and variants
from typing import List

from fastapi import FastAPI
from fastapi.routing import APIRoute
from pydantic import BaseModel


def custom_generate_unique_id(route: APIRoute):
    return f"{route.tags[0]}-{route.name}"


app = FastAPI(generate_unique_id_function=custom_generate_unique_id)


class Item(BaseModel):
    name: str
    price: float


class ResponseMessage(BaseModel):
    message: str


class User(BaseModel):
    username: str
    email: str


@app.post("/items/", response_model=ResponseMessage, tags=["items"])
async def create_item(item: Item):
    return {"message": "Item received"}


@app.get("/items/", response_model=List[Item], tags=["items"])
async def get_items():
    return [
        {"name": "Plumbus", "price": 3},
        {"name": "Portal Gun", "price": 9001},
    ]


@app.post("/users/", response_model=ResponseMessage, tags=["users"])
async def create_user(user: User):
    return {"message": "User received"}

Generate a TypeScript Client with Custom Operation IDs

Now if you generate the client again, you will see that it has the improved method names:

As you see, the method names now have the tag and then the function name, now they don't include information from the URL path and the HTTP operation.

Preprocess the OpenAPI Specification for the Client Generator

The generated code still has some duplicated information.

We already know that this method is related to the items because that word is in the ItemsService (taken from the tag), but we still have the tag name prefixed in the method name too. 😕

We will probably still want to keep it for OpenAPI in general, as that will ensure that the operation IDs are unique.

But for the generated client we could modify the OpenAPI operation IDs right before generating the clients, just to make those method names nicer and cleaner.

We could download the OpenAPI JSON to a file openapi.json and then we could remove that prefixed tag with a script like this:

import json
from pathlib import Path

file_path = Path("./openapi.json")
openapi_content = json.loads(file_path.read_text())

for path_data in openapi_content["paths"].values():
    for operation in path_data.values():
        tag = operation["tags"][0]
        operation_id = operation["operationId"]
        to_remove = f"{tag}-"
        new_operation_id = operation_id[len(to_remove) :]
        operation["operationId"] = new_operation_id

file_path.write_text(json.dumps(openapi_content))
import * as fs from 'fs'

async function modifyOpenAPIFile(filePath) {
  try {
    const data = await fs.promises.readFile(filePath)
    const openapiContent = JSON.parse(data)

    const paths = openapiContent.paths
    for (const pathKey of Object.keys(paths)) {
      const pathData = paths[pathKey]
      for (const method of Object.keys(pathData)) {
        const operation = pathData[method]
        if (operation.tags && operation.tags.length > 0) {
          const tag = operation.tags[0]
          const operationId = operation.operationId
          const toRemove = `${tag}-`
          if (operationId.startsWith(toRemove)) {
            const newOperationId = operationId.substring(toRemove.length)
            operation.operationId = newOperationId
          }
        }
      }
    }

    await fs.promises.writeFile(
      filePath,
      JSON.stringify(openapiContent, null, 2),
    )
    console.log('File successfully modified')
  } catch (err) {
    console.error('Error:', err)
  }
}

const filePath = './openapi.json'
modifyOpenAPIFile(filePath)

With that, the operation IDs would be renamed from things like items-get_items to just get_items, that way the client generator can generate simpler method names.

Generate a TypeScript Client with the Preprocessed OpenAPI

Now as the end result is in a file openapi.json, you would modify the package.json to use that local file, for example:

{
  "name": "frontend-app",
  "version": "1.0.0",
  "description": "",
  "main": "index.js",
  "scripts": {
    "generate-client": "openapi-ts --input ./openapi.json --output ./src/client --client axios"
  },
  "author": "",
  "license": "",
  "devDependencies": {
    "@hey-api/openapi-ts": "^0.27.38",
    "typescript": "^4.6.2"
  }
}

After generating the new client, you would now have clean method names, with all the autocompletion, inline errors, etc:

Benefits

When using the automatically generated clients you would get autocompletion for:

  • Methods.
  • Request payloads in the body, query parameters, etc.
  • Response payloads.

You would also have inline errors for everything.

And whenever you update the backend code, and regenerate the frontend, it would have any new path operations available as methods, the old ones removed, and any other change would be reflected on the generated code. 🤓

This also means that if something changed it will be reflected on the client code automatically. And if you build the client it will error out if you have any mismatch in the data used.

So, you would detect many errors very early in the development cycle instead of having to wait for the errors to show up to your final users in production and then trying to debug where the problem is. ✨