Crie tokens de autenticação íntegros e seguros com UToken.

Related tags

Text Data & NLPutoken
Overview

UToken - Tokens seguros.

BADGE BADGE

UToken (ou Unhandleable Token) é uma bilioteca criada para ser utilizada na geração de tokens seguros e íntegros, ou seja, não podem ser alterados. Veja o que você pode fazer com o UToken:

  • Criar tokens seguros
  • Inserir um conteúdo no token
  • Definir tempo de expiração para o token

Atalhos

Como usar

Aqui vai um breve tutorial sobre como utilizar o UToken de forma simples.

Criando um token

Vamos começar criando um token, veja o código abaixo:

from utoken import encode

# definindo nossa chave
KEY = 'secret-key'

# codificando
my_token = encode({'message': 'Firlast'}, KEY)
print(my_token)

# > eyJtZXNzYWdlIjogIkZpcmxhc3QifQ.5c99ae8e7ce3a000d5b0c35cb53e9e8f

Primeiro passamos como parâmetro para utoken.encode() o conteúdo do token, que pode ser um dicionário ou lista, depois, passamos a chave que vai ser utilizada para codificar. Após isso, temos o nosso token.

A chave que foi usada para codificar o token, também será usada para decodificá-lo.

Decodificando um token

Agora, vamos decodificar um token. Veja o código abaixo:

from utoken import decode

# definindo nossa chave
KEY = 'secret-key'
token = 'eyJtZXNz...'

# decodificando
my_decode_token = decode(token, KEY)
print(my_decode_token)

# > {'message': 'Firlast'}

Pronto! Nosso token foi decodificado. em utoken.decode() passamos como parâmetro o token e a chave utilizada na codificação, simples.

Owner
Jaedson Silva
Backend programmer focused on changing the world. #python
Jaedson Silva
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