1.3. Architecture

1.3.1. Technology Stack

  • Uvicorn

  • Starlette

  • Pydantic

  • Python type annotations (available since Python 3.5)

1.3.2. Uvicorn

  • Uvicorn is a lightning-fast ASGI server implementation, using uvloop and httptools.

  • Until recently Python has lacked a minimal low-level server/application interface for asyncio frameworks. The ASGI specification fills this gap, and means we're now able to start building a common set of tooling usable across all asyncio frameworks.

  • ASGI should help enable an ecosystem of Python web frameworks that are highly competitive against Node and Go in terms of achieving high throughput in IO-bound contexts. It also provides support for HTTP/2 and WebSockets, which cannot be handled by WSGI.

  • Uvicorn currently supports HTTP/1.1 and WebSockets. Support for HTTP/2 is planned.

  • Source: 1

1.3.3. Starlette

  • Starlette is a lightweight ASGI framework/toolkit, which is ideal for building high performance asyncio services.

  • It is production-ready, and gives you the following:

    • Seriously impressive performance.

    • WebSocket support.

    • GraphQL support.

    • In-process background tasks.

    • Startup and shutdown events.

    • Test client built on requests.

    • CORS, GZip, Static Files, Streaming responses.

    • Session and Cookie support.

    • 100% test coverage.

    • 100% type annotated codebase.

    • Zero hard dependencies.

  • Source: 3

1.3.4. Pydantic

  • Data validation and settings management using python type annotations.

  • pydantic enforces type hints at runtime, and provides user friendly errors when data is invalid.

  • Define how data should be in pure, canonical python; validate it with pydantic.

  • So pydantic uses some cool new language features, but why should I actually go and use it?

    • There's no new schema definition micro-language to learn.

    • pydantic's BaseSettings class allows pydantic to be used in both a "validate this request data" context and in a "load my system settings" context

    • In benchmarks pydantic is faster than all other tested libraries

    • validate complex structures

    • pydantic allows custom data types to be defined or you can extend validation with methods on a model decorated with the validator decorator.

    • dataclasses integration

  • Source: 2

1.3.5. References


Uvicorn official documentation. Retrieved: 2021-02-23. URL: https://www.uvicorn.org


Pydantic official documentation. Retrieved: 2021-02-23. URL: https://pydantic-docs.helpmanual.io


Starlette official documentation. Retrieved: 2021-02-23. URL: https://www.starlette.io