| import decimal | |
| import json | |
| from dataclasses import dataclass | |
| import pytest | |
| from pydantic import BaseModel | |
| from aws_lambda_powertools.shared.json_encoder import Encoder | |
| def test_jsonencode_decimal(): | |
| result = json.dumps({"val": decimal.Decimal("8.5")}, cls=Encoder) | |
| assert result == '{"val": "8.5"}' | |
| def test_jsonencode_decimal_nan(): | |
| result = json.dumps({"val": decimal.Decimal("NaN")}, cls=Encoder) | |
| assert result == '{"val": NaN}' | |
| def test_jsonencode_calls_default(): | |
| class CustomClass: | |
| pass | |
| with pytest.raises(TypeError): | |
| json.dumps({"val": CustomClass()}, cls=Encoder) | |
| def test_json_encode_pydantic(): | |
| # GIVEN a Pydantic model | |
| class Model(BaseModel): | |
| data: dict | |
| data = {"msg": "hello"} | |
| model = Model(data=data) | |
| # WHEN json.dumps use our custom Encoder | |
| result = json.dumps(model, cls=Encoder) | |
| # THEN we should serialize successfully; not raise a TypeError | |
| assert result == json.dumps({"data": data}, cls=Encoder) | |
| def test_json_encode_dataclasses(): | |
| # GIVEN a standard dataclass | |
| class Model: | |
| data: dict | |
| data = {"msg": "hello"} | |
| model = Model(data=data) | |
| # WHEN json.dumps use our custom Encoder | |
| result = json.dumps(model, cls=Encoder) | |
| # THEN we should serialize successfully; not raise a TypeError | |
| assert result == json.dumps({"data": data}, cls=Encoder) | |