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bynect / hypercorn-fastapi-docker

Licence: MIT License
Docker image with Hypercorn for FastAPI apps in Python 3.7, 3.8, 3.9. Ready for HTTP2 and HTTPS

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Deploy

Image tags and Dockerfiles

hypercorn-fastapi-docker

Docker image with Hypercorn for FastAPI application in Python 3.7+. With slim and alpine options.

Hypercorn

Hypercorn is an HTTP2 ready ASGI web server based on the sans-io hyper, h11, h2, and wsproto libraries and inspired by Gunicorn.

Hypercorn supports HTTP/1, HTTP/2, WebSockets (over HTTP/1 and HTTP/2), ASGI/2, and ASGI/3 specifications. Hypercorn can utilise asyncio, uvloop, or trio worker types.

FastAPI

FastAPI is a modern, fast (high-performance), web framework for building APIs with Python 3.6+.

The key features are:

  • Fast: Very high performance, on par with NodeJS and Go (thanks to Starlette and Pydantic).
  • Fast to code: Increase the speed to develop features by about 300% to 500% *.
  • Less bugs: Reduce about 40% of human (developer) induced errors. *
  • Intuitive: Great editor support. Completion everywhere. Less time debugging.
  • Easy: Designed to be easy to use and learn. Less time reading docs.
  • Short: Minimize code duplication. Multiple features from each parameter declaration. Less bugs.
  • Robust: Get production-ready code. With automatic interactive documentation.
  • Standards-based: Based on (and fully compatible with) the open standards for APIs: OpenAPI (previously known as Swagger) and JSON Schema.

* estimation based on tests on an internal development team, building production applications.

How to start

  • You can use this image as a base image for other images, using this in your Dockerfile:
FROM bynect/hypercorn-fastapi:python3.8-slim

COPY ./app /app

It will expect a file either at /app/app/main.py and /app/main containing the variable app containing your FastAPI application.

Then you can build you Dockerfile, e.g:

$ docker build -t myimage ./

Usage

Environment variables

These are the environment variables that you can set in the container to configure it and their default values. You can set alternative values for them either from shell or from Dockerfile, e.g:

#from shell
$ docker run -d -p 80:80 -e MODULE_NAME="custom_app.custom_main" myimage
#from Dockerile
FROM bynect/hypercorn-fastapi:python3.8-slim

ENV MODULE_NAME="custom_app.custom_main"

COPY ./app /app

MODULE_NAME

The Python "module" (file) to be imported by Hypercorn, this module would contain the actual application in a variable.

By default:

  • app.main if there's a file /app/app/main.py or
  • main if there's a file /app/main.py

For example, if your main file was at /app/custom_app/custom_main.py, you could set it like:

$ docker run -d -p 80:80 -e MODULE_NAME="custom_app.custom_main" myimage

VARIABLE_NAME

The variable inside of the Python module that contains the FastAPI application.

By default:

  • app

For example, if your main Python file has something like:

from fastapi import FastAPI

api = FastAPI()


@api.get("/")
def read_root():
    return {"Hello": "World"}

In this case api would be the variable with the FastAPI application. You could set it like:

$ docker run -d -p 80:80 -e VARIABLE_NAME="api" myimage

APP_MODULE

The string with the Python module and the variable name passed to Hypercorn.

By default, set based on the variables MODULE_NAME and VARIABLE_NAME:

  • app.main:app or
  • main:app

You can set it like:

$ docker run -d -p 80:80 -e APP_MODULE="custom_app.custom_main:api" myimage

HYPERCORN_CONF

The path to a Hypercorn Python configuration file.

By default:

  • /app/app/hypercorn_conf.py if file exists
  • /app/hypercorn_conf.py if file exists
  • /hypercorn_conf.py included file

* ordered by priority.

You can set it like:

$ docker run -d -p 80:80 -e GUNICORN_CONF="/app/custom_gunicorn_conf.py" myimage

Note: that HYPERCORN_CONF needs the prefix file: for Python file, python: for Python module and no prefix for TOML file.

WORKERS_PER_CORE

This image will check how many CPU cores are available in the current server running your container.

It will set the number of workers to the number of CPU cores multiplied by this value.

By default:

  • 1

You can set it like:

$ docker run -d -p 80:80 -e WORKERS_PER_CORE="3" myimage

If you used the value 3 in a server with 2 CPU cores, it would run 6 worker processes.

You can use floating point values too.

So, for example, if you have a big server (let's say, with 8 CPU cores) running several applications, and you have a FastAPI application that you know won't need high performance. And you don't want to waste server resources. You could make it use 0.5 workers per CPU core. For example:

$ docker run -d -p 80:80 -e WORKERS_PER_CORE="0.5" myimage

In a server with 8 CPU cores, this would make it start only 4 worker processes.

MAX_WORKERS

Set the maximum number of workers to use.

You can use it to let the image compute the number of workers automatically but making sure it's limited to a maximum.

This can be useful, for example, if each worker uses a database connection and your database has a maximum limit of open connections.

By default it's not set, meaning that it's unlimited.

You can set it like:

$ docker run -d -p 80:80 -e MAX_WORKERS="24" myimage

This would make the image start at most 24 workers, independent of how many CPU cores are available in the server.

WEB_CONCURRENCY

Override the automatic definition of number of workers.

By default:

  • Set to the number of CPU cores in the current server multiplied by the environment variable WORKERS_PER_CORE. So, in a server with 2 cores, by default it will be set to 2.

You can set it like:

$ docker run -d -p 80:80 -e WEB_CONCURRENCY="2" myimage

This would make the image start 2 worker processes, independent of how many CPU cores are available in the server.

HOST

The "host" used by Hypercorn, the IP where Hypercorn will listen for requests.

It is the host inside of the container.

So, for example, if you set this variable to 127.0.0.1, it will only be available inside the container, not in the host running it.

It's is provided for completeness, but you probably shouldn't change it.

By default:

  • 0.0.0.0

TCP_PORT

The tcp port the container should listen on when USE_TCP is set to true.

If you are running your container in a restrictive environment that forces you to use some specific port (like 8080) you can set it with this variable.

By default:

  • 80

You can set it like:

$ docker run -d -p 80:8080 -e TCP_PORT="8080" myimage

USE_SSL

If Hypercorn will use ssl-related options. When false ssl-related options are not used.

By default is set to:

  • false

Depends on CA_CERTS - CERTFILE - KEYFILE At least one of USE_SSL and USE_TCP MUST be set to true.

USE_TCP

If Hypercorn will use tcp-related options. When false tcp-related options are not used.

By default is set to:

  • true

At least one of USE_SSL and USE_TCP MUST be set to true.

SSL_PORT

The ssl port the container should listen on when USE_SSL is set to true.

If you are running your container in a restrictive environment that forces you to use some specific port (like 8000) you can set it with this variable.

By default:

  • 443

You can set it like:

$ docker run -d -p 443:8000 -e SSL_PORT="8000" myimage

Depens on USE_SSL

BIND

The actual host and port passed to Hypercorn.

If USE_SSL is set to true the default value will be based on HOST and SSL_PORT. So, if you didn't change anything, it will be set by default to:

  • 0.0.0.0:443

Otherwise, if USE_SSL is not set to true, the value will be based on HOST and TCP_PORT. So, if you didn't change anything, it will be set by default to:

  • 0.0.0.0:80

You can set it like:

$ docker run -d -p 80:8080 -e BIND="0.0.0.0:8080" myimage

INSECURE_BIND

The host and port passed to Hypercorn as fallback in HTTPS connections.

If USE_SSL and USE_TCP are both true the default value is based on the variables HOST and TCP_PORT.

So, if you didn't change anything, it will be set by default to:

  • 0.0.0.0:80

Otherwise, if USE_SSL is not set to true or USE_TCP is set to false, the value will be set to None.

You can manually set only when the aforementioned conditions are true.

Depens on USE_SSL and USE_TCP

QUIC_BIND

Quic bind to be used instead of bind. By default it's not set.

You can set it like:

$ docker run -d -p 80:8080 -e QUIC_BIND="0.0.0.0:8080" myimage

LOG_LEVEL

The log level for Hypercorn.

One of:

  • debug
  • info
  • warning
  • error
  • critical

By default, set to info.

If you need to squeeze more performance sacrificing logging, set it to warning, for example:

You can set it like:

$ docker run -d -p 80:8080 -e LOG_LEVEL="warning" myimage

WORKER_CLASS

The worker class to be used by Hypercorn.

By default, set to asyncio.

The three avaible values are:

  • asyncio
  • uvloop
  • trio

You can set it like:

$ docker run -d -p 80:8080 -e WORKER_CLASS="uvloop" myimage

CA_CERTS

Path to CA certificate file. By default it's not set.

Depends on USE_SSL

CERTFILE

Path to CA certificate file. By default it's not set.

Depends on USE_SSL

KEYFILE

Path to CA certificate file. By default it's not set.

Depends on USE_SSL

CIPHERS

Ciphers used by ssl connection. By default:

  • "ECDHE+AESGCM"

Depends on USE_SSL

KEEP_ALIVE

The number of seconds to wait for requests on a Keep-Alive connection.

By default, set to 5.

You can set it like:

$ docker run -d -p 80:8080 -e KEEP_ALIVE="20" myimage

GRACEFUL_TIMEOUT

Timeout for graceful workers restart.

By default, set to 120.

You can set it like:

$ docker run -d -p 80:8080 -e GRACEFUL_TIMEOUT="20" myimage

ACCESS_LOG

The access log file to write to.

By default "-", which means stdout (print in the Docker logs).

If you want to disable ACCESS_LOG, set it to an empty value.

For example, you could disable it with:

$ docker run -d -p 80:8080 -e ACCESS_LOG= myimage

ERROR_LOG

The error log file to write to.

By default "-", which means stderr (print in the Docker logs).

If you want to disable ERROR_LOG, set it to an empty value.

For example, you could disable it with:

$ docker run -d -p 80:8080 -e ERROR_LOG= myimage

BACKLOG

The maximum number of pending connections. By default set to 100.

PRE_START_PATH

The path where to find the pre-start script.

By default, set to /app/prestart.sh.

You can set it like:

$ docker run -d -p 80:8080 -e PRE_START_PATH="/custom/script.sh" myimage

Prestart script

If you need to run anything before starting the app, you can add a file prestart.sh to the directory /app. The image will automatically detect and run it before starting everything. If you need to run a Python script before starting the app, you could make the /app/prestart.sh file run your Python script, with something like:

#! /usr/bin/env bash

# Run custom Python script before starting
python /app/my_custom_prestart_script.py

You can customize the location of the prestart script with the environment variable PRE_START_PATH described above.

Hypercorn configuration

The image includes a default Gunicorn Python config file at /gunicorn_conf.py. It uses the environment variables declared above to set all the configurations.

You can override it by including a file in:

  • /app/app/hypercorn_conf.py
  • /app/hypercorn_conf.py
  • /hypercorn_conf.py

* ordered by priority.

Development live reload

The default program that is run is at /start.sh. It does everything described above.

There's also a version for development with live auto-reload at:

/start-reload.sh

Details

For development, it's useful to be able to mount the contents of the application code inside of the container as a Docker "host volume", to be able to change the code and test it live, without having to build the image every time.

In that case, it's also useful to run the server with live auto-reload, so that it re-starts automatically at every code change.

The additional script /start-reload.sh runs Hypercorn with 1 asyncio worker.

It is ideal for development.

Usage

For example, instead of running:

$ docker run -d -p 80:80 myimage

You could run:

$ docker run -d -p 80:80 -v $(pwd):/app myimage /start-reload.sh
  • -v $(pwd):/app: means that the directory $(pwd) should be mounted as a volume inside of the container at /app.
  • $(pwd): runs pwd ("print working directory") and puts it as part of the string.
  • /start-reload.sh: adding something (like /start-reload.sh) at the end of the command, replaces the default "command" with this one. In this case, it replaces the default (/start.sh) with the development alternative /start-reload.sh.

Development live reload - Technical Details

As /start-reload.sh runs Hypercorn for debug/development purpose it doesn't use hypercorn_config file.

But these environment variables will work the same as described above:

  • MODULE_NAME
  • VARIABLE_NAME
  • APP_MODULE
  • HOST
  • TCP_PORT (only tcp avaible)
  • LOG_LEVEL

Falsy/Truly value

The included /hypercorn_conf.py has some options that accepts boolean value. These are the valid values. Invalid values will raise an exception.

Falsy values (compared after lowered):

  • "no"
  • "n"
  • "0"
  • "false"

Truly values (compared after lowered):

  • "yes"
  • "y"
  • "1"
  • "true"

Python 3.9 support

Python 3.9 is now supported, but some optional packages are not installed due to incompatible Python version.

Incompatible packages:

  • trio (hypercorn[trio])

License

Licensed under MIT License.

Based on tiangolo/uvicorn-gunicorn-docker

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].