Cache-house - Caching tool for python, working with Redis single instance and Redis cluster mode

Overview

Caching tool for python, working with Redis single instance and Redis cluster mode

PyPi link

Installation

 $ pip install cache-house 

or with poetry

poetry add cache-house

Quick Start


cache decorator work with async and sync functions

from cache_house.backends.redis_backend import RedisCache
from cache_house.cache import cache
import asyncio

RedisCache.init()

@cache() # default expire time is 180 seconds
async def test_cache(a: int,b: int):
    print("async cached")
    return [a,b]

@cache()
def test_cache_1(a: int, b: int):
    print("cached")
    return [a, b]


if __name__ == "__main__":
    print(test_cache_1(3,4))
    print(asyncio.run(test_cache(1,2)))

Check stored cache key

➜ $ rdcli KEYS "*"
1) cachehouse:main:8f65aed1010f0062a783c83eb430aca0
2) cachehouse:main:f665833ea64e4fc32653df794257ca06

Setup Redis cache instance


You can pass all redis-py arguments to RedisCache.init method and additional arguments :

def RedisCache.init(
        host: str = "localhost",
        port: int = 6379,
        encoder: Callable[..., Any] = ...,
        decoder: Callable[..., Any] = ...,
        namespace: str = ...,
        key_prefix: str = ...,
        key_builder: Callable[..., Any] = ...,
        password: str = ...,
        db: int = ...,
        **kwargs
    )

or you can set your own encoder and decoder functions

from cache_house.backends.redis_backend import RedisCache

def custom_encoder(data):
    return json.dumps(data)

def custom_decoder(data):
    return json.loads(data)

RedisCache.init(encoder=custom_encoder, decoder=custom_decoder)

Default encoder and decoder is pickle module.


Setup Redis Cluster cache instance


All manipulation with RedisCache same with a RedisClusterCache

from cache_house.backends.redis_cluster_backend import RedisClusterCache
from cache_house.cache import cache

RedisClusterCache.init()

@cache()
async def test_cache(a: int,b: int):
    print("cached")
    return [a,b]
def RedisClusterCache.init(
        cls,
        host="localhost",
        port=6379,
        encoder: Callable[..., Any] = pickle_encoder,
        decoder: Callable[..., Any] = pickle_decoder,
        startup_nodes=None,
        cluster_error_retry_attempts: int = 3,
        require_full_coverage: bool = True,
        skip_full_coverage_check: bool = False,
        reinitialize_steps: int = 10,
        read_from_replicas: bool = False,
        namespace: str = DEFAULT_NAMESPACE,
        key_prefix: str = DEFAULT_PREFIX,
        key_builder: Callable[..., Any] = key_builder,
        **kwargs,
    )

You can set expire time (seconds) , namespace and key prefix in cache decorator


@cache(expire=30, namespace="app", key_prefix="test") 
async def test_cache(a: int,b: int):
    print("cached")
    return [a,b]


if __name__ == "__main__":
    print(asyncio.run(test_cache(1,2)))

Check stored cache

rdcli KEYS "*"
1) test:app:f665833ea64e4fc32653df794257ca06

If your function works with non-standard data types, you can pass custom encoder and decoder functions to the cache decorator.


import asyncio
import json
from cache_house.backends.redis_backend import RedisCache
from cache_house.cache import cache

RedisCache.init()

def custom_encoder(data):
    return json.dumps(data)

def custom_decoder(data):
    return json.loads(data)

@cache(expire=30, encoder=custom_encoder, decoder=custom_decoder, namespace="custom")
async def test_cache(a: int, b: int):
    print("async cached")
    return {"a": a, "b": b}


@cache(expire=30)
def test_cache_1(a: int, b: int):
    print("cached")
    return [a, b]


if __name__ == "__main__":
    print(asyncio.run(test_cache(1, 2)))
    print(test_cache_1(3, 4))

Check stored cache

rdcli KEYS "*"
1) cachehouse:main:8f65aed1010f0062a783c83eb430aca0
2) cachehouse:custom:f665833ea64e4fc32653df794257ca06

All examples works fine with Redis Cluster and single Redis instance.


Contributing

Free to open issue and send PR

cache-house supports Python >= 3.7

You might also like...
Qwerkey is a social media platform for connecting and learning more about mechanical keyboards built on React and Redux in the frontend and Flask in the backend on top of a PostgreSQL database.

Flask React Project This is the backend for the Flask React project. Getting started Clone this repository (only this branch) git clone https://github

A RESTful API for creating and monitoring resource components of a hypothetical build system. Built with FastAPI and pydantic. Complete with testing and CI.
A RESTful API for creating and monitoring resource components of a hypothetical build system. Built with FastAPI and pydantic. Complete with testing and CI.

diskspace-monitor-CRUD Background The build system is part of a large environment with a multitude of different components. Many of the components hav

Cookiecutter API for creating Custom Skills for Azure Search using Python and Docker

cookiecutter-spacy-fastapi Python cookiecutter API for quick deployments of spaCy models with FastAPI Azure Search The API interface is compatible wit

Docker image with Uvicorn managed by Gunicorn for high-performance FastAPI web applications in Python 3.6 and above with performance auto-tuning. Optionally with Alpine Linux.
Docker image with Uvicorn managed by Gunicorn for high-performance FastAPI web applications in Python 3.6 and above with performance auto-tuning. Optionally with Alpine Linux.

Supported tags and respective Dockerfile links python3.8, latest (Dockerfile) python3.7, (Dockerfile) python3.6 (Dockerfile) python3.8-slim (Dockerfil

 Turns your Python functions into microservices with web API, interactive GUI, and more.
Turns your Python functions into microservices with web API, interactive GUI, and more.

Instantly turn your Python functions into production-ready microservices. Deploy and access your services via HTTP API or interactive UI. Seamlessly export your services into portable, shareable, and executable files or Docker images.

Mixer -- Is a fixtures replacement. Supported Django, Flask, SqlAlchemy and custom python objects.

The Mixer is a helper to generate instances of Django or SQLAlchemy models. It's useful for testing and fixture replacement. Fast and convenient test-

Beyonic API Python official client library simplified examples using Flask, Django and Fast API.

Beyonic API Python Examples. The beyonic APIs Doc Reference: https://apidocs.beyonic.com/ To start using the Beyonic API Python API, you need to start

API using python and Fastapi framework

Welcome 👋 CFCApi is a API DEVELOPMENT PROJECT UNDER CODE FOR COMMUNITY ! Project Walkthrough 🚀 CFCApi run on Python using FASTapi Framework Docs The

Restful Api developed with Flask using Prometheus and Grafana for monitoring and containerization with Docker :rocket:
Restful Api developed with Flask using Prometheus and Grafana for monitoring and containerization with Docker :rocket:

Hephaestus 🚀 In Greek mythology, Hephaestus was either the son of Zeus and Hera or he was Hera's parthenogenous child. ... As a smithing god, Hephaes

Releases(v0.2.2)
Fast, simple API for Apple firmwares.

Loyal Fast, Simple API for fetching Apple Firmwares. The API server is closed due to some reasons. Wait for v2 releases. Features Fetching Signed IPSW

11 Oct 28, 2022
Local Telegram Bot With FastAPI & Ngrok

An easy local telegram bot server with python, fastapi and ngrok.

Ömer Faruk Özdemir 7 Dec 25, 2022
Minecraft biome tile server writing on Python using FastAPI

Blocktile Minecraft biome tile server writing on Python using FastAPI Usage https://blocktile.herokuapp.com/overworld/{seed}/{zoom}/{col}/{row}.png s

Vladimir 2 Aug 31, 2022
Sample project showing reliable data ingestion application using FastAPI and dramatiq

Create and deploy a reliable data ingestion service with FastAPI, SQLModel and Dramatiq This is the source code for the data ingestion service explain

François Voron 31 Nov 30, 2022
A simple Blogging Backend app created with Fast API

This is a simple blogging app backend built with FastAPI. This project is created to simulate a real CRUD blogging system. It is built to be used by s

Owusu Kelvin Clark 13 Mar 24, 2022
fastapi-admin2 is an upgraded fastapi-admin, that supports ORM dialects, true Dependency Injection and extendability

FastAPI2 Admin Introduction fastapi-admin2 is an upgraded fastapi-admin, that supports ORM dialects, true Dependency Injection and extendability. Now

Glib 14 Dec 05, 2022
FastAPI application and service structure for a more maintainable codebase

Abstracting FastAPI Services See this article for more information: https://camillovisini.com/article/abstracting-fastapi-services/ Poetry poetry inst

Camillo Visini 309 Jan 04, 2023
Fastapi performans monitoring

Fastapi-performans-monitoring This project is a simple performance monitoring for FastAPI. License This project is licensed under the terms of the MIT

bilal alpaslan 11 Dec 31, 2022
Simple FastAPI Example : Blog API using FastAPI : Beginner Friendly

fastapi_blog FastAPI : Simple Blog API with CRUD operation Steps to run the project: git clone https://github.com/mrAvi07/fastapi_blog.git cd fastapi-

Avinash Alanjkar 1 Oct 08, 2022
🚢 Docker images and utilities to power your Python APIs and help you ship faster. With support for Uvicorn, Gunicorn, Starlette, and FastAPI.

🚢 inboard 🐳 Docker images and utilities to power your Python APIs and help you ship faster. Description This repository provides Docker images and a

Brendon Smith 112 Dec 30, 2022
Utils for fastapi based services.

Installation pip install fastapi-serviceutils Usage For more details and usage see: readthedocs Development Getting started After cloning the repo

Simon Kallfass 31 Nov 25, 2022
A FastAPI WebSocket application that makes use of ncellapp package by @hemantapkh

ncellFastAPI author: @awebisam Used FastAPI to create WS application. Ncellapp module by @hemantapkh NOTE: Not following best practices and, needs ref

Aashish Bhandari 7 Oct 01, 2021
Practice-python is a simple Fast api project for dealing with modern rest api technologies.

Practice Python Practice-python is a simple Fast api project for dealing with modern rest api technologies. Deployment with docker Go to the project r

0 Sep 19, 2022
Keepalive - Discord Bot to keep threads from expiring

keepalive Discord Bot to keep threads from expiring Installation Create a new Di

Francesco Pierfederici 5 Mar 14, 2022
A kedro-plugin to serve Kedro Pipelines as API

General informations Software repository Latest release Total downloads Pypi Code health Branch Tests Coverage Links Documentation Deployment Activity

Yolan Honoré-Rougé 12 Jul 15, 2022
LuSyringe is a documentation injection tool for your classes when using Fast API

LuSyringe LuSyringe is a documentation injection tool for your classes when using Fast API Benefits The main benefit is being able to separate your bu

Enzo Ferrari 2 Sep 06, 2021
A FastAPI Plug-In to support authentication authorization using the Microsoft Authentication Library (MSAL)

FastAPI/MSAL - MSAL (Microsoft Authentication Library) plugin for FastAPI FastAPI - https://github.com/tiangolo/fastapi FastAPI is a modern, fast (hig

Dudi Levy 15 Jul 20, 2022
Stac-fastapi built on Tile38 and Redis to support caching

stac-fastapi-caching Stac-fastapi built on Tile38 to support caching. This code is built on top of stac-fastapi-elasticsearch 0.1.0 with pyle38, a Pyt

Jonathan Healy 4 Apr 11, 2022
A comprehensive CRUD API generator for SQLALchemy.

FastAPI Quick CRUD Introduction Advantage Constraint Getting started Installation Usage Design Path Parameter Query Parameter Request Body Upsert Intr

192 Jan 06, 2023
Hyperlinks for pydantic models

Hyperlinks for pydantic models In a typical web application relationships between resources are modeled by primary and foreign keys in a database (int

Jaakko Moisio 10 Apr 18, 2022