lognostic 0.0.4

Creator: bradpython12

Last updated:

Add to Cart

Description:

lognostic 0.0.4

lognostic




Documentation: https://Mamdasn.github.io/lognostic
Source Code: https://github.com/Mamdasn/lognostic
PyPI: https://pypi.org/project/lognostic/

lognostic is a lightweight, efficient Python package designed to seamlessly integrate into existing Python applications to provide logging statistics. This package caters to development teams seeking to optimize logging performance, diagnose issues, and understand logging loads without introducing significant overhead or complexity into their applications.
Installation
pip install lognostic

Development

Clone this repository
Requirements:

Poetry
Python 3.9+


Create a virtual environment and install the dependencies

poetry install


Activate the virtual environment

poetry shell

Custom logging Handler
The lognostic module can be integrated into logging subsystems by employing a custom logging handler:
class LogHandler(logging.Handler):
def __init__(self, lognostic: Lognostic):
super().__init__()
self._lognostic = lognostic

def emit(self, log_record: logging.LogRecord):
self._lognostic.record(log_record)

A Lognostic instance should be given to the custom logging handler, so later logging statistics can be obtained:
lognostic = Lognostic()
loghandler = LogHandler(lognostic)
logger.addHandler(loghandler)

logger.info('This is a test log message')

lognostic.total_size() # -> returns 26

Documentation
The documentation is automatically generated from the content of the docs directory and from the docstrings found in the source code.
Testing
Run unit tests using
pytest tests


Automated test runs: The lognostic package is automatically tested through python versions 3.9 to 3.12 using GitHub's CI/CD pipeline.

Docker Usage
Build the image of the Dockerfile using
docker build -t lognostic .

Run the image with
docker run --name lognostic_instance lognostic


The docker builds the envioronment followed by running the pre-commits and unit tests.

Pre-commit
Pre-commit hooks run all the auto-formatters (e.g. black, isort), linters (e.g. mypy, flake8), and other quality checks to make sure the changeset is in good shape before a commit/push happens.
You can install the hooks with (runs for each commit):
pre-commit install

Or if you want them to run only for each push:
pre-commit install -t pre-push

Or if you want e.g. want to run all checks manually for all files:
pre-commit run --all-files

Future features and improvements

Data persistency: Store statistics on the disk persistency for future historical logging analysis.
Logging Dashboard: A web dashboard to visualize logging statistics in real-time, allowing teams to monitor logging load dynamically.
Throw warning/error messages if certain logging thresholds are met, such as an unusually high logging rate, to quickly identify potential issues.


This project was generated using the python-package-cookiecutter template.

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

Customer Reviews

There are no reviews.