Skip to main content

A Meilisearch backend for Wagtail CMS

Project description

Wagtailmeili

Test Version codecov Ruff License

A search backend for Wagtail using MeiliSearch.

[!CAUTION] This package is still in development and until version 1.0.0, I will not maintain a DeprecationWarning pattern. I built the integration with meilisearch about 2 years ago for a project and decided to make it a public package to improve it and integrate more features.

[!TIP]
If you need support or require help with a Wagtail project, you can hire me 😊

Introduction

en - https://softquantum.com/resources/wagtailmeili-integrating-a-blazing-fast-search-engine-with-wagtail

fr - https://softquantum.com/fr/ressources/wagtailmeili-integrer-un-moteur-de-recherche-rapide-avec-wagtail/

Requirements

Wagtailmeili requires the following:

  • Python >= 3.11
  • Wagtail >= 5.2

Installation

In your Wagtail project

Configure your MeiliSearch instance in your settings.py file.

Install Meilisearch python client e.g., using pip

  pip install meilisearch

Add wagtailmeili to your INSTALLED_APPS

INSTALLED_APPS = [
    # ...
    "wagtailmeili",
    # ...
]

add the search backend 'meilisearch' to your WAGTAILSEARCH_BACKENDS

[!CAUTION] Leave the 'default' backend for the admin as you don't want to depend only on what was indexed in meilisearch Different use cases to consider so still work in progress.

import os

WAGTAILSEARCH_BACKENDS = {
    "meilisearch": {
        "BACKEND": "wagtailmeili.backend",
        "HOST":  os.environ.get("MEILISEARCH_HOST", "http://127.0.0.1"),
        "PORT": os.environ.get("MEILISEARCH_PORT", "7700"),
        "MASTER_KEY": os.environ.get("MEILISEARCH_MASTER_KEY", "your-master-key"),
        # "STOP_WORDS": ...
        # "RANKING_RULES: ...
        # "SKIP_MODELS": ...
        # "SKIP_MODELS_BY_FIELD_VALUE": ...
    },
    "default": {
        "BACKEND": "wagtail.search.backends.database",
    }
}

Features

Default search configs

  • STOP_WORDS: see defaults in settings.py
  • RANKING_RULES: see defaults in settings.py
  • SKIP_MODELS: "skip_models" is a list of models that you want to skip from indexing no matter the model setup.
WAGTAILSEARCH_BACKENDS = {
    "meilisearch": {
        "SKIP_MODELS": ["app_label.Model1", "app_label.Model2",],
        # ...
    }
}
  • SKIP_MODELS_BY_FIELD_VALUE: A convenient way to skip instances based on attributes
WAGTAILSEARCH_BACKENDS = {
    "meilisearch": {
        # add this to not index pages that are not published for example
        "SKIP_MODELS_BY_FIELD_VALUE": {
            "wagtailmeili_testapp.MoviePage": {
                "field": "live",
                "value": False,
            },
        },
        # ...
    }
}

Model fields

In any model you will be doing a search on with Meilisearch, add the page or model manager.
It will use the correct backend when doing something like MySuperPage.objects.search().

from wagtail.models import Page
from django.db import models
from wagtailmeili.manager import MeilisearchPageManager, MeilisearchModelManager

class MySuperPage(Page):
    """A Super Page to do incredible things indexed in Meilisearch."""
 
    objects = MeilisearchPageManager()

class MySuperModel(models.Model):
    """A Super Model to do incredible things indexed in Meilisearch."""
 
    objects = MeilisearchModelManager()

To declare sortable attributes or add ranking rules for the model, just add, for example:

from wagtail.models import Page


class MySuperPage(Page):
    """A Super Page to do incredible things indexed in Meilisearch."""
    
    sortable_attributes = [
        "published_last_timestamp", 
        # ...
    ]
    ranking_rules = [
        "published_last_timestamp:desc",
        # ...
    ]

Template Tag filter

{% load meilisearch %}

{% get_matches_position result %}

Index Cleanup

Wagtailmeili automatically handles cleanup of stale documents from your MeiliSearch indexes to ensure search results remain accurate and up-to-date.

Automatic Cleanup

Real-time Cleanup: When items are deleted or unpublished, they are automatically removed from the search index via Django signals.

Rebuild Cleanup: When running python manage.py update_index, stale documents are automatically detected and removed.

Smart Detection: The system automatically handles both regular models and Page models with live field detection.

Manual Cleanup

Use the management command for manual cleanup operations:

# Clean all indexes (dry-run mode)
python manage.py cleanup_search_index --dry-run

# Clean all indexes
python manage.py cleanup_search_index

# Clean specific model
python manage.py cleanup_search_index --model wagtailmeili_testapp.MoviePage

# Verbose output
python manage.py cleanup_search_index --verbosity 2

Programmatic Cleanup

You can also perform cleanup operations programmatically:

from wagtail.search.backends import get_search_backend

# Get the MeiliSearch backend
backend = get_search_backend('meilisearch')
index = backend.get_index_for_model(MyModel)

# Remove specific items
index.delete_item(item_id)

# Bulk remove multiple items
index.bulk_delete_items([id1, id2, id3])

# Clean up stale documents
live_ids = MyModel.objects.filter(live=True).values_list('pk', flat=True)
index.cleanup_stale_documents(live_ids)

Configuration

The cleanup system respects your existing configuration:

  • SKIP_MODELS: Models in this list won't be cleaned up
  • SKIP_MODELS_BY_FIELD_VALUE: Field-based skipping is honored during cleanup
  • Page Models: Only live pages (live=True) are considered valid for Page models

Roadmap before 1.0.0 (unsorted)

  • -[x] Adding tests (v0.3.3)
  • -[x] Cleaning up index if pages are unpublished or models deleted (v0.4.0)
  • -[ ] Exploring Meilisearch and bringing more of its features for Wagtail
  • -[ ] Getting a leaner implementation (looking at Autocomplete and rebuilder)
  • -[ ] Giving more love to the Sample project with a frontend
  • -[ ] official documentation

Sample Project: WMDB

The Wagtail Movie Database (WMDB) is a sample project for testing purposes. To run the project, follow these steps:

  1. start the local meilisearch instance
meilisearch --master-key=<your masterKey>
  1. copy the directory wagtail_moviedb wherever you want
  2. create a virtualenv and activate it (instructions on linux/macOS)
python -m venv .venv
source .venv/bin/activate
  1. install the dependencies
pip install -r requirements.txt
  1. add an .env file
MEILISEARCH_MASTER_KEY="your masterKey"
  1. apply migrations
python manage.py migrate
  1. Create a superuser (optional)
python manage.py createsuperuser
  1. load movies & start local web server
python manage.py load_movies
python manage.py runserver
  1. visit your meilisearch local instance: https://127.0.0.1:7700, give it your master-key. You should see some movies loaded.
  2. update index (optional):
python manage.py update_index

Development

Development Setup

This package uses flit for both local development and publishing.

  1. Install flit (if not already available):
# Via pip
pip install flit

# Via pyenv (if you have a Python version with flit pre-installed)
# flit may already be available in your pyenv Python installation
  1. Install the package locally for development:
# Using pip
pip install "pip>=21.3"
pip install -e '.[dev]' -U

# Using flit
flit install -s

For more information on installing and using flit, see the official flit documentation.

Contributions

Welcome to all contributions and reviews!

Prerequisites

  • Install Meilisearch locally following their documentation
  • Start Meilisearch instance in your favorite terminal
meilisearch --master-key correctmasterkey

Install

To make changes to this project, first clone this repository:

git clone git@github.com:softquantum/wagtailmeili.git
cd wagtailmeili

With your preferred virtualenv activated, install testing dependencies:

Using pip

pip install "pip>=21.3"
pip install -e '.[dev]' -U

How to run tests

You can run tests as shown below:

pytest 

or with tox

tox

Disclaimer

  • ✅ This project is to experiment with my dev experience and improve my skills.
  • ✅ It is, since v0.3, developed in an augmented development setup (JetBrains Pycharm, Claude Code with custom commands and configs)
  • ✅ I commit to have a test suite that makes sense (reviews are welcome)
  • ✅ The project is used in production in real projects: no shortcuts for quality standards, so if you find a bug please report it.
  • ✅ It is an open source project so you can hire me for support ☕️

License

This project is released under the 3-Clause BSD License.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

wagtailmeili-0.5.tar.gz (6.2 MB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

wagtailmeili-0.5-py3-none-any.whl (30.9 kB view details)

Uploaded Python 3

File details

Details for the file wagtailmeili-0.5.tar.gz.

File metadata

  • Download URL: wagtailmeili-0.5.tar.gz
  • Upload date:
  • Size: 6.2 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-requests/2.32.4

File hashes

Hashes for wagtailmeili-0.5.tar.gz
Algorithm Hash digest
SHA256 74ce6d8f2cdf907d66c726972b7a11187e34acc90de8b6a26e3f783042a2941f
MD5 f87aa581831ec87ed1327fed46efb79a
BLAKE2b-256 8d6f0ed31b10ce25fe497aa94ba4cbf8eeefa4a7d886b09df36d96b2797f3a7c

See more details on using hashes here.

File details

Details for the file wagtailmeili-0.5-py3-none-any.whl.

File metadata

  • Download URL: wagtailmeili-0.5-py3-none-any.whl
  • Upload date:
  • Size: 30.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: python-requests/2.32.4

File hashes

Hashes for wagtailmeili-0.5-py3-none-any.whl
Algorithm Hash digest
SHA256 6e863edae6e67ebadaf2a16599757483bc71feabf2725c1d5e4f1c788864fc7e
MD5 bfb72d3140a67ba0184a9a2e6a6945ff
BLAKE2b-256 93a31e33adf56ca4d1631be7086e28d1882b97c91110bc437fb67cc1ed20e128

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page