


HTTPException(status_code=400, detail=\'X-Token header invalid\') occurs when processing fastapi
The reason for the error
HttpException(status_code=400, detai l="X-Token header invalid") is caused by a missing or invalid X-Token in the request header. In fastapi, when the user request is missing or invalid X-Token, such an exception will be thrown. Usually this is because the application is configured to verify the X-Token and throws this exception when verification fails.
How to solve
To solve this problem, you need to add X-Token verification logic to the application. You can check whether the X-Token exists in the request header and verify its validity. If the X-Token is invalid, an HTTPException can be thrown and the corresponding error code and detailed information can be provided.
One possible approach is to add validation logic in the application's middleware so that validation can be done before each request.
from fastapi import FastAPI, HTTPException, Request app = FastAPI() async def check_token(request: Request): token = request.headers.get("X-Token") if not token: raise HTTPException(status_code=400, detail="X-Token header is missing") if token != "valid_token": raise HTTPException(status_code=400, detail="X-Token header invalid") @app.middleware("http") async def check_token_middleware(request: Request, call_next): await check_token(request) response = await call_next(request) return response
In this code, we added a check_token function in the middleware check_token_middleware to check whether the X-Token exists in the request header and verify whether it is valid. If the X-Token is invalid, an HTTPException will be thrown.
You can also use third-party libraries such as pyJwt for verification, which can achieve more stringent verification.
Usage example
Yes, you can verify JWT token like this:
import jwt from fastapi import FastAPI, HTTPException, Request app = FastAPI() async def check_token(request: Request): token = request.headers.get("X-Token") if not token: raise HTTPException(status_code=400, detail="X-Token header is missing") try: jwt.decode(token, "secret_key", alGorithms=["HS256"]) except jwt.exceptions.InvalidSignatureError: raise HTTPException(status_code=400, detail="X-Token header invalid") @app.middleware("http") async def check_token_middleware(request: Request, call_next): await check_token(request) response = await call_next(request) return response
In this code, we use the third-party library pyjwt to verify the X-Token in the request header. We used the jwt.decode() function to verify whether the token is valid and used "secret_key" to sign. If validation fails, jwt.exceptions.InvalidSignatureError exception will be thrown. We catch this exception here and throw HTTPException.
It should be noted that this is just a sample code. In a production environment, a more stringent verification method is required, such as storing secret_key in an environment variable or an encrypted configuration file.
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