TGTGInsighttelegram intelligenceLIVE / telegram public index
← Python Заметки

TGINSIGHT SIMILAR POSTS

Најди сличен содржај

Изворен канал @pythonotes · Post #397 · 12 ное.

Использование Pydantic сегодня стало нормой, и это правильно. Но иногда на ревью вижу, что используют его не всегда корректно. Например, метод BaseModel.model_dump() по умолчанию не преобразует стандартные типы, такие как datetime, UUID или Decimal, в простой сериализуемый для JSON вид. Тогда пишут кастмоный сериализатор для этих типов чтобы функция json.dump() не падала с ошибкой. import uuid from datetime import datetime from decimal import Decimal from uuid import UUID from pydantic import BaseModel class MyModel(BaseModel): id: UUID date: datetime value: Decimal obj = MyModel( id=uuid.uuid4(), date=datetime.now(), value='1.23' ) print(obj.model_dump()) # не подходит для json.dump # { # 'id': UUID('4f8c1bc4-25fd-40cd-9dbe-2c73639b0dc1'), # 'date': datetime.datetime(2025, 12, 12, 12, 12, 12, 111111), # 'value': Decimal('1.23') # } # добавляем свой кастомный сериализатор json.dumps(obj.model_dump(), cls=MySerializer) # { # 'id': '4f8c1bc4-25fd-40cd-9dbe-2c73639b0dc1', # 'date': '2025-12-12T12:12:12.111111', # 'value': '1.23' # } В данном случае класс MySerializer обрабатывает datetime, UUID и Decimal. Например так: class MySerializer(json.JSONEncoder): def default(self, o): if isinstance(o, Decimal): return str(o) elif isinstance(o, datetime): return o.isoformat() elif isinstance(o, UUID): return str(o) return super().default(o) Специально для тех, кто всё еще так делает - в этом нет необходимости! Pydantic может это сделать сам, просто нужно добавить параметр mode="json". json.dumps(obj.model_dump(mode="json")) # { # 'id': '4f8c1bc4-25fd-40cd-9dbe-2c73639b0dc1', # 'date': '2012-12-12T12:12:12.111111', # 'value': '1.23' # } #pydantic#libs

Резултати

Пронајдени 1 слични објави

Пребарај: #streamingfraud

当前筛选 #streamingfraud清除筛选
AI & Law

@ai_and_law · Post #394 · 11.09.2024 г., 07:04

Criminal Indictment Exposes $10 Million AI Music Streaming Fraud In a groundbreaking case, a North Carolina musician, Michael Smith, has been indicted for orchestrating a massive streaming fraud scheme that allegedly exploited AI-generated tracks to rake in over $10 million in royalties. This marks the first criminal case involving artificially inflated music streaming, highlighting the emerging risks as AI tools become more embedded in the music industry. Smith is accused of partnering with an AI music company to create a vast library of tracks, which he then fraudulently boosted using a network of bot accounts across major platforms like Spotify, Apple Music, and YouTube Music. The complex scheme, which began in 2017 and continued through 2024, involved deceiving distributors, financial institutions, and even the Mechanical Licensing Collective (MLC), which eventually caught on and halted royalty payments. This case underscores the growing challenge of maintaining integrity in the digital music ecosystem as AI continues to evolve. As the DOJ takes action, the music industry must ramp up efforts to detect and prevent such fraudulent activities to protect legitimate creators and maintain trust in digital platforms. #AI#MusicIndustry#StreamingFraud#DigitalLaw#Copyright