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Logging

Configuration variables

See environment variable reference.

Default logging behavior

  • inboard's logging configuration logic is located in logging_conf.py. By default, inboard will load the LOGGING_CONFIG dictionary in this module. The dictionary was named for consistency with Uvicorn's logging configuration dictionary.
  • When running Uvicorn alone, logging is configured programmatically from within the start.py start script, by passing the LOGGING_CONFIG dictionary to uvicorn.run().
  • When running Gunicorn with the Uvicorn worker, the logging configuration dictionary is specified within the gunicorn_conf.py configuration file.

Filtering log messages

Filters identify log messages to filter out, so that the logger does not log messages containing any of the filters. If any matches are present in a log message, the logger will not output the message.

One of the primary use cases for log message filters is health checks. When applications with APIs are deployed, it is common to perform "health checks" on them. Health checks are usually performed by making HTTP requests to a designated API endpoint. These checks are made at frequent intervals, and so they can fill up the access logs with large numbers of unnecessary log records. To avoid logging health checks, add those endpoints to the LOG_FILTERS environment variable.

The LOG_FILTERS environment variable can be used to specify filters as a comma-separated string, like LOG_FILTERS="/health, /heartbeat". To then add the filters to a class instance, the LogFilter.set_filters() method can produce the set of filters from the environment variable value.

# start a REPL session in a venv in which inboard is installed
.venv  python
>>> import os
>>> import inboard
>>> os.environ["LOG_FILTERS"] = "/health, /heartbeat"
>>> inboard.LogFilter.set_filters()
{'/heartbeat', '/health'}

inboard will do this automatically by reading the LOG_FILTERS environment variable.

Let's see this in action by using one of the inboard Docker images. We'll have one terminal instance open to see the server logs from Uvicorn, and another one open to make client HTTP requests.

Start the server:

docker pull ghcr.io/br3ndonland/inboard
docker run \
  -d \
  -e BASIC_AUTH_USERNAME=test_user \
  -e BASIC_AUTH_PASSWORD=r4ndom_bUt_memorable \
  -e LOG_FILTERS="/health, /heartbeat" \
  -e LOG_LEVEL=debug \
  -e PROCESS_MANAGER=uvicorn \
  -p 8000:80 \
  --platform linux/amd64 \
  ghcr.io/br3ndonland/inboard
docker logs -f $(docker ps -q -n 1)
DEBUG      Logging dict config loaded from inboard.logging_conf.
DEBUG      Checking for pre-start script.
DEBUG      No pre-start script specified.
DEBUG      App module set to inboard.app.main_fastapi:app.
DEBUG      Running Uvicorn without Gunicorn.
INFO       Started server process [1]
INFO       Waiting for application startup.
INFO       Application startup complete.
INFO       Uvicorn running on http://0.0.0.0:80 (Press CTRL+C to quit)

Make a request to an endpoint that should be logged, using an HTTP client like HTTPie or the HTTPX CLI:

❯ http :8000 -b
{
    "Hello": "World"
}

The request will be logged through uvicorn.access:

INFO       172.17.0.1:65026 - "GET / HTTP/1.1" 200

Next, make a request to an endpoint that should be filtered out of the logs. The username and password you see here are just test values.

❯ http :8000/health -a test_user:r4ndom_bUt_memorable -b
{
    "application": "inboard",
    "message": null,
    "status": "active"
}

The server does not display a log message.

Extending the logging config

If the inboard Python package is installed from PyPI, the logging configuration can be easily customized as explained in the Python logging configuration docs.

Example of a custom logging module

# /app/package/custom_logging.py: set with LOGGING_CONF=package.custom_logging
import logging
import os

from inboard import LOGGING_CONFIG

# add a custom logging format: set with LOG_FORMAT=mycustomformat
LOGGING_CONFIG["formatters"]["mycustomformat"] = {
    "format": "[%(name)s] %(levelname)s %(message)s"
}


class MyFormatterClass(logging.Formatter):
    """Define a custom logging format class."""

    def __init__(self) -> None:
        super().__init__(fmt="[%(name)s] %(levelname)s %(message)s")


# use a custom logging format class: set with LOG_FORMAT=mycustomclass
LOGGING_CONFIG["formatters"]["mycustomclass"] = {
    "()": "package.custom_logging.MyFormatterClass",
}

# only show access logs when running Uvicorn with LOG_LEVEL=debug
LOGGING_CONFIG["loggers"]["gunicorn.access"] = {"propagate": False}
LOGGING_CONFIG["loggers"]["uvicorn.access"] = {
    "propagate": str(os.getenv("LOG_LEVEL")) == "debug"
}

# don't propagate boto logs
LOGGING_CONFIG["loggers"]["boto3"] = {"propagate": False}
LOGGING_CONFIG["loggers"]["botocore"] = {"propagate": False}
LOGGING_CONFIG["loggers"]["s3transfer"] = {"propagate": False}

Overriding the logging config

Want to override inboard's entire logging config? No problem. Set up a separate LOGGING_CONFIG dictionary, and pass inboard the path to the module containing the dictionary. Try something like this:

Example of a complete custom logging config

# /app/package/custom_logging.py: set with LOGGING_CONF=package.custom_logging
from uvicorn.config import LOGGING_CONFIG as UVICORN_LOGGING_CONFIG

LOGGING_CONFIG = {
    "version": 1,
    # Disable other loggers not specified in the configuration
    "disable_existing_loggers": True,
    "formatters": {
        "gunicorn.access": {
            "class": "logging.Formatter",
            "format": "%(asctime)s [%(process)d] [%(levelname)s] %(message)s",
            "datefmt": "[%Y-%m-%d %H:%M:%S %z]",
        },
        # Format Uvicorn loggers with Uvicorn's config directly
        "uvicorn.access": {
            "()": UVICORN_LOGGING_CONFIG["formatters"]["access"]["()"],
            "format": UVICORN_LOGGING_CONFIG["formatters"]["access"]["fmt"],
        },
        "uvicorn.default": {
            "()": UVICORN_LOGGING_CONFIG["formatters"]["default"]["()"],
            "format": UVICORN_LOGGING_CONFIG["formatters"]["default"]["fmt"],
        },
    },
    "handlers": {
        "default": {
            "class": "logging.StreamHandler",
            "formatter": "uvicorn.default",
            "level": "INFO",
            "stream": "ext://sys.stdout",
        },
        # Add a separate handler for stderr
        "error": {
            "class": "logging.StreamHandler",
            "formatter": "uvicorn.default",
            "stream": "ext://sys.stderr",
        },
        # Add a separate handler just for gunicorn.access
        "gunicorn.access": {
            "class": "logging.StreamHandler",
            "formatter": "gunicorn.access",
            "stream": "ext://sys.stdout",
        },
        # Add a separate handler just for uvicorn.access
        "uvicorn.access": {
            "class": "logging.StreamHandler",
            "formatter": "uvicorn.access",
            "stream": "ext://sys.stdout",
        },
    },
    "loggers": {
        "fastapi": {"propagate": True},
        # Use the gunicorn.access handler, and don't propagate to root
        "gunicorn.access": {"handlers": ["gunicorn.access"], "propagate": False},
        # Use the error handler to output to stderr, and don't propagate to root
        "gunicorn.error": {
            "handlers": ["error"],
            "level": "INFO",
            "propagate": False,
        },
        # Use the uvicorn.access handler, and don't propagate to root
        "uvicorn.access": {
            "handlers": ["uvicorn.access"],
            "level": "INFO",
            "propagate": False,
        },
        # Use the error handler to output to stderr, and don't propagate to root
        "uvicorn.error": {
            "handlers": ["error"],
            "level": "INFO",
            "propagate": False,
        },
    },
    # Use the uvicorn.default formatter for root
    "root": {"handlers": ["default"], "level": "INFO"},
}

Design decisions

Simplify logging

Logging is complicated in general, but logging a Uvicorn+Gunicorn+Starlette/FastAPI stack is particularly, and unnecessarily, complicated. Uvicorn and Gunicorn use different logging configurations, and it can be difficult to unify the log streams.

Gunicorn's API for loading logging configuration dictionaries has some problems:

  • Gunicorn does not have a clearly-documented interface for running programmatically from within a Python module, like uvicorn.run(), so subprocess.run() can be used instead. There isn't a clear way to pass logging configuration dictionaries to Gunicorn from the command line, unless you json.dumps() a logging configuration dictionary.
  • As of Gunicorn version 20, Gunicorn accepted a command-line argument --log-config-dict, but it didn't work, and the maintainers removed it.

Uvicorn's API for loading logging configurations is confusing and poorly documented:

  • The settings documentation as of version 0.11.8 (the version available when this project started) said, "--log-config <path> - Logging configuration file," but there was no information given on file format.
  • encode/uvicorn#665 and Uvicorn 0.12.0 added support for loading JSON and YAML configuration files, but not .py files.
  • Uvicorn's own logging configuration is a dictionary, LOGGING_CONFIG, in config.py, but there's no information provided on how to supply a custom dictionary config. It is possible to pass a dictionary config to Uvicorn when running programmatically, such as uvicorn.run(log_config=your_dict_config), although so far, this capability is only documented in the changelog for version 0.10.0.

The inboard project eliminates this complication and confusion. Uvicorn, Gunicorn, and FastAPI log streams are propagated to the root logger, and handled by the custom root logging config.

Require dict configs

The project initially also had support for the old-format .conf/.ini files, and YAML files, but this was later dropped, because:

  • Dict configs are the newer, recommended format, as explained in the logging.config docs:

    The fileConfig() API is older than the dictConfig() API and does not provide functionality to cover certain aspects of logging. For example, you cannot configure Filter objects, which provide for filtering of messages beyond simple integer levels, using fileConfig(). If you need to have instances of Filter in your logging configuration, you will need to use dictConfig(). Note that future enhancements to configuration functionality will be added to dictConfig(), so it’s worth considering transitioning to this newer API when it’s convenient to do so.

  • Dict configs allow programmatic control of logging settings (see how log level is set in logging_conf.py for an example).

  • Gunicorn and Uvicorn both use dict configs in .py files for their own logging configurations.
  • Gunicorn prefers dict configs specified with the logconfig_dict option.
  • Uvicorn accepts dict configs when running programmatically, like uvicorn.run(log_config=your_dict_config).
  • Relying on Python dictionaries reduces testing burden (only have to write unit tests for .py files)
  • YAML isn't a Python data structure. YAML is confusingly used for examples in the documentation, but isn't actually a recommended format. There's no built-in YAML data structure in Python, so the YAML must be parsed by PyYAML and converted into a dictionary, then passed to logging.config.dictConfig(). Why not just make the logging config a dictionary in the first place?

Further info

For more details on how logging was implemented initially, see br3ndonland/inboard#3.

For more information on Python logging configuration, see the Python logging how-to, Python logging cookbook, Python logging module docs, and Python logging.config module docs. Also consider Loguru, an alternative logging module with many improvements over the standard library logging module.