There are many search engines on the web, both open-source and otherwise. Deciding which search solution is the best fit for your project is very important, but also difficult. In this article, we’ll go over the differences between Meilisearch and other search engines:

Please be advised that many of the search products described below are constantly evolving—just like Meilisearch. These are only our own impressions, and may not reflect recent changes. If something appears inaccurate, please don’t hesitate to open an issue or pull request.

Comparison table

General overview

MeilisearchAlgoliaTypesenseElasticsearch
Source code licensingMIT
(Fully open-source)
Closed-sourceGPL-3
(Fully open-source)
AGPLv3
(open-source)
Built withRust
Check out why we believe in Rust.
C++C++Java
Data storageDisk with Memory Mapping — Not limited by RAMLimited by RAMLimited by RAMDisk with RAM cache

Features

Integrations and SDKs

Note: we are only listing libraries officially supported by the internal teams of each different search engine.

Can’t find a client you’d like us to support? Submit your idea or vote for it 😇

SDKMeilisearchAlgoliaTypesenseElasticsearch
REST API
JavaScript client
PHP client
Python client
Ruby client
Java client
Swift client
.NET client
Rust client🔶
WIP
Go client
Dart client
Symfony
Django
Rails🔶
WIP
Official Laravel Scout Support
Available as a standalone module

Available as a standalone module
Instantsearch
Autocomplete
Docsearch
Strapi
Gatsby
Firebase

Configuration

Document schema
MeilisearchAlgoliaTypesenseElasticsearch
Schemaless🔶
id field is required and must be a string
Nested field support
Nested document querying
Automatic document ID detection
Native document formatsJSON, NDJSON, CSVJSONNDJSONJSON, NDJSON, CSV
Compression SupportGzip, Deflate, and BrotliGzip
Reads payload as JSON which can lead to document corruption
Gzip
Relevancy
MeilisearchAlgoliaTypesenseElasticsearch
Typo tolerant🔶
Needs to be specified by fuzzy queries
Orderable ranking rules🔶
Field weight can be changed, but ranking rules order cannot be changed.
Custom ranking rules🔶
Function score query
Query field weights
Synonyms
Stop words
Automatic language detection
All language supports
Ranking Score Details
Security
MeilisearchAlgoliaTypesenseElasticsearch
API Key Management
Tenant tokens & multi-tenant indexes
Multitenancy support

Role-based
Search
MeilisearchAlgoliaTypesenseElasticsearch
Placeholder search
Multi-index search
Federated search
Exact phrase search
Geo search
Sort by🔶
Limited to one sort_by rule per index. Indexes may have to be duplicated for each sort field and sort order

Up to 3 sort fields per search query
Filtering
Support complex filter queries with an SQL-like syntax.
🔶
Does not support OR operation across multiple fields
Faceted search
Faceted fields must be searchable
Faceting can take several seconds when >10 million facet values must be returned
Distinct attributes
De-duplicate documents by a field value
Grouping
Bucket documents by field values
AI-powered search
MeilisearchAlgoliaTypesenseElasticsearch
Semantic Search🔶
Under Premium plan
Hybrid Search🔶
Under Premium plan
Embedding Generation
OpenAI
HuggingFace
REST embedders
Undisclosed
OpenAI
GCP Vertex AI

ELSER
E5
Cohere
OpenAI
Azure
Google AI Studio
Hugging Face
Prompt TemplatesUndisclosed
Vector StoreUndisclosed
Langchain Integration
GPU support
CUDA
Undisclosed
CUDA
Visualize
MeilisearchAlgoliaTypesenseElasticsearch
Mini Dashboard🔶
Cloud product
🔶
Cloud product
Search Analytics
Cloud product

Cloud Product

Cloud Product
Monitoring Dashboard
Cloud product

Cloud Product

Cloud Product

Cloud Product

Deployment

MeilisearchAlgoliaTypesenseElasticsearch
Self-hosted
Platform Support ARM
x86
x64
n/a🔶 ARM (requires Docker on macOS)
x86
x64
ARM
x86
x64
Official 1-click deploy
DigitalOcean
Platform.sh
Azure
Railway
Koyeb
🔶
Only for the cloud-hosted solution
Official cloud-hosted solutionMeilisearch Cloud
High availabilityAvailable with Meilisearch Cloud
Run-time dependenciesNoneN/ANoneNone
Backward compatibilityN/A
Upgrade pathDocuments are automatically reindexed on upgradeN/ADocuments are automatically reindexed on upgradeDocuments are automatically reindexed on upgrade, up to 1 major version

Limits

MeilisearchAlgoliaTypesenseElasticsearch
Maximum number of indexesNo limitation1000, increasing limit possible by contacting supportNo limitationNo limitation
Maximum index size80TiB128GBConstrained by RAMNo limitation
Maximum document sizeNo limitation100KB, configurableNo limitation100KB default, configurable

Community

MeilisearchAlgoliaTypesenseElasticsearch
GitHub stars of the main project42KN/A17K66K
Number of contributors on the main project179N/A381,900
Public Discord/Slack community size2,100N/A2,00016K

Support

MeilisearchAlgoliaTypesenseElasticsearch
Status page
Free support channelsInstant messaging / chatbox (2-3h delay),
emails,
public Discord community,
GitHub issues & discussions
Instant messaging / chatbox,
public community forum
Instant messaging/chatbox (24h-48h delay),
public Slack community,
GitHub issues.
Public Slack community,
public community forum,
GitHub issues
Paid support channelsSlack Channel, emails, personalized support — whatever you need, we’ll be there!EmailsEmails,
phone,
private Slack
Web support,
emails,
phone

Approach comparison

Meilisearch vs Elasticsearch

Elasticsearch is designed as a backend search engine. Although it is not suited for this purpose, it is commonly used to build search bars for end-users.

Elasticsearch can handle searching through massive amounts of data and performing text analysis. In order to make it effective for end-user searching, you need to spend time understanding more about how Elasticsearch works internally to be able to customize and tailor it to fit your needs.

Unlike Elasticsearch, which is a general search engine designed for large amounts of log data (for example, back-facing search), Meilisearch is intended to deliver performant instant-search experiences aimed at end-users (for example, front-facing search).

Elasticsearch can sometimes be too slow if you want to provide a full instant search experience. Most of the time, it is significantly slower in returning search results compared to Meilisearch.

Meilisearch is a perfect choice if you need a simple and easy tool to deploy a typo-tolerant search bar. It provides prefix searching capability, makes search intuitive for users, and returns results instantly with excellent relevance out of the box.

For a more detailed analysis of how it compares with Meilisearch, refer to our blog post on Elasticsearch.

Meilisearch vs Algolia

Meilisearch was inspired by Algolia’s product and the algorithms behind it. We indeed studied most of the algorithms and data structures described in their blog posts in order to implement our own. Meilisearch is thus a new search engine based on the work of Algolia and recent research papers.

Meilisearch provides similar features and reaches the same level of relevance just as quickly as its competitor.

If you are a current Algolia user considering a switch to Meilisearch, you may be interested in our migration guide.

Key similarities

Some of the most significant similarities between Algolia and Meilisearch are:

  • Features such as search-as-you-type, typo tolerance, faceting, etc.
  • Fast results targeting an instant search experience (answers < 50 milliseconds)
  • Schemaless indexing
  • Support for all JSON data types
  • Asynchronous API
  • Similar query response

Key differences

Contrary to Algolia, Meilisearch is open-source and can be forked or self-hosted.

Additionally, Meilisearch is written in Rust, a modern systems-level programming language. Rust provides speed, portability, and flexibility, which makes the deployment of our search engine inside virtual machines, containers, or even Lambda@Edge a seamless operation.

Pricing

The pricing model for Algolia is based on the number of records kept and the number of API operations performed. It can be prohibitively expensive for small and medium-sized businesses.

Meilisearch is an open-source search engine available via Meilisearch Cloud or self-hosted. Unlike Algolia, Meilisearch pricing is based on the number of documents stored and the number of search operations performed. However, Meilisearch offers a more generous free tier that allows more documents to be stored as well as fairer pricing for search usage. Meilisearch also offers a Pro tier for larger use cases to allow for more predictable pricing.

A quick look at the search engine landscape

Open source

Lucene

Apache Lucene is a free and open-source search library used for indexing and searching full-text documents. It was created in 1999 by Doug Cutting, who had previously written search engines at Xerox’s Palo Alto Research Center (PARC) and Apple. Written in Java, Lucene was developed to build web search applications such as Google and DuckDuckGo, the last of which still uses Lucene for certain types of searches.

Lucene has since been divided into several projects:

  • Lucene itself: the full-text search library.
  • Solr: an enterprise search server with a powerful REST API.
  • Nutch: an extensible and scalable web crawler relying on Apache Hadoop.

Since Lucene is the technology behind many open source or closed source search engines, it is considered as the reference search library.

Sonic

Sonic is a lightweight and schema-less search index server written in Rust. Sonic cannot be considered as an out-of-the-box solution, and compared to Meilisearch, it does not ensure relevancy ranking. Instead of storing documents, it comprises an inverted index with a Levenshtein automaton. This means any application querying Sonic has to retrieve the search results from an external database using the returned IDs and then apply some relevancy ranking.

Its ability to run on a few MBs of RAM makes it a minimalist and resource-efficient alternative to database tools that can be too heavyweight to scale.

Typesense

Like Meilisearch, Typesense is a lightweight open-source search engine optimized for speed. To better understand how it compares with Meilisearch, refer to our blog post on Typesense.

Lucene derivatives

Lucene-Solr

Solr is a subproject of Apache Lucene, created in 2004 by Yonik Seeley, and is today one of the most widely used search engines available worldwide. Solr is a search platform, written in Java, and built on top of Lucene. In other words, Solr is an HTTP wrapper around Lucene’s Java API, meaning you can leverage all the features of Lucene by using it. In addition, Solr server is combined with Solr Cloud, providing distributed indexing and searching capabilities, thus ensuring high availability and scalability. Data is shared but also automatically replicated. Furthermore, Solr is not only a search engine; it is often used as a document-structured NoSQL database. Documents are stored in collections, which can be comparable to tables in a relational database.

Due to its extensible plugin architecture and customizable features, Solr is a search engine with an endless number of use cases even though, since it can index and search documents and email attachments, it is specifically popular for enterprise search.

Bleve & Tantivy

Bleve and Tantivy are search engine projects, respectively written in Golang and Rust, inspired by Apache Lucene and its algorithms (for example, tf-idf, short for term frequency-inverse document frequency). Such as Lucene, both are libraries to be used for any search project; however they are not ready-to-use APIs.

Source available

Elasticsearch

Elasticsearch is a search engine based on the Lucene library and is most popular for full-text search. It provides a REST API accessed by JSON over HTTP. One of its key options, called index sharding, gives you the ability to divide indexes into physical spaces in order to increase performance and ensure high availability. Both Lucene and Elasticsearch have been designed for processing high-volume data streams, analyzing logs, and running complex queries. You can perform operations and analysis (for example, calculate the average age of all users named “Thomas”) on documents that match a specified query.

Today, Lucene and Elasticsearch are dominant players in the search engine landscape. They both are solid solutions for a lot of different use cases in search, and also for building your own recommendation engine. They are good general products, but they require to be configured properly to get similar results to those of Meilisearch or Algolia.

Closed source

Algolia

Algolia is a company providing a search engine on a SaaS model. Its software is closed source. In its early stages, Algolia offered mobile search engines that could be embedded in apps, facing the challenge of implementing the search algorithms from scratch. From the very beginning, the decision was made to build a search engine directly dedicated to the end-users, specifically, implementing search within mobile apps or websites. Algolia successfully demonstrated over the past few years how critical tolerating typos was in order to improve the users’ experience, and in the same way, its impact on reducing bounce rate and increasing conversion.

Apart from Algolia, a wide choice of SaaS products are available on the Search Engine Market. Most of them use Elasticsearch and fine-tune its settings in order to have a custom and personalized solution.

Swiftype

Swiftype is a search service provider specialized in website search and analytics. Swiftype was founded in 2012 by Matt Riley and Quin Hoxie, and is now owned by Elastic since November 2017. It is an end-to-end solution built on top of Elasticsearch, meaning it has the ability to leverage the Elastic Stack.

Doofinder

Doofinder is a paid on-site search service that is developed to integrate into any website with very little configuration. Doofinder is used by online stores to increase their sales, aiming to facilitate the purchase process.

Conclusions

Each Search solution fits best with the constraints of a particular use case. Since each type of search engine offers a unique set of features, it wouldn’t be easy nor relevant to compare their performance. For instance, it wouldn’t be fair to make a comparison of speed between Elasticsearch and Algolia over a product-based database. The same goes for a very large full text-based database.

We cannot, therefore, compare ourselves with Lucene-based or other search engines targeted to specific tasks.

In the particular use case we cover, the most similar solution to Meilisearch is Algolia.

While Algolia offers the most advanced and powerful search features, this efficiency comes with an expensive pricing. Moreover, their service is marketed to big companies.

Meilisearch is dedicated to all types of developers. Our goal is to deliver a developer-friendly tool, easy to install, and to deploy. Because providing an out-of-the-box awesome search experience for the end-users matters to us, we want to give everyone access to the best search experiences out there with minimum effort and without requiring any financial resources.

Usually, when a developer is looking for a search tool to integrate into their application, they will go for ElasticSearch or less effective choices. Even if Elasticsearch is not best suited for this use case, it remains a great source available solution. However, it requires technical know-how to execute advanced features and hence more time to customize it to your business.

We aim to become the default solution for developers.

Was this page helpful?