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Apache Solr VS Beats

Compare Apache Solr VS Beats and see what are their differences

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Apache Solr logo Apache Solr

Solr is an open source enterprise search server based on Lucene search library, with XML/HTTP and...

Beats logo Beats

Beats is the platform for single-purpose data shippers that is installed as lightweight agents and send data to machines to Logstash or Elasticsearch.
  • Apache Solr Landing page
    Landing page //
    2023-04-28
  • Beats Landing page
    Landing page //
    2023-10-21

Apache Solr features and specs

  • Scalability
    Apache Solr is highly scalable, capable of handling large amounts of data and numerous queries per second. It supports distributed search and indexing, which allows for horizontal scaling by adding more nodes.
  • Flexibility
    Solr provides flexible schema management, allowing for dynamic field definitions and easy handling of various data types. It supports a variety of search query types and can be customized to meet specific search requirements.
  • Rich Feature Set
    Solr comes with a wealth of features out-of-the-box, including faceted search, result highlighting, multi-index search, and advanced filtering capabilities. It also offers robust analytics and joins support.
  • Community and Documentation
    Being an open-source project, Apache Solr has a strong community and comprehensive documentation, which ensures continuous improvements, updates, and extensive support resources for developers.
  • Integrations
    Solr integrates well with a variety of databases and data sources, and it provides REST-like APIs for ease of integration with other applications. It also has strong support for popular programming languages like Java, Python, and Ruby.
  • Performance
    Solr is built on top of Apache Lucene, which provides high performance for searching and indexing. It is optimized for speed and can handle rapid data ingestion and real-time indexing.

Possible disadvantages of Apache Solr

  • Complexity
    The initial setup and configuration of Apache Solr can be complex, particularly for those not already familiar with search engines and indexing concepts. Managing a distributed Solr installation also requires considerable expertise.
  • Resource Intensive
    Running Solr, especially for large datasets, can be resource-intensive in terms of both memory and CPU. It requires careful tuning and adequate hardware to maintain performance.
  • Learning Curve
    The learning curve for Apache Solr can be steep due to its extensive feature set and the complexity of its configuration options. New users may find it challenging to get up to speed quickly.
  • Consistency Issues
    In distributed setups, ensuring data consistency can be challenging, particularly for users unfamiliar with managing clustered environments. There may be delays or issues with synchronizing indexes across multiple nodes.
  • Maintenance
    Ongoing maintenance of a Solr instance, including monitoring, tuning, and scaling, can be labor-intensive. This requires dedicated effort to keep the system running efficiently over time.
  • Limited Real-time Capabilities
    Although Solr provides near real-time indexing, it may not be as effective as some specialized real-time search engines. For applications requiring truly real-time capabilities, additional solutions might be necessary.

Beats features and specs

  • Lightweight Agents
    Beats are designed to be lightweight, which allows them to easily run on edge devices without significantly impacting system performance.
  • Eclectic Set of Data Shippers
    Beats offers a range of specialized shippers like Filebeat, Metricbeat, Packetbeat, and others, each tailored for different types of data collection, ensuring flexibility and efficiency.
  • Easy Integration with Elastic Stack
    Beats seamlessly integrates with other components of the Elastic Stack, like Elasticsearch and Kibana, providing a unified data collection and analysis ecosystem.
  • Extensible and Open Source
    Being open-source, Beats can be extended and customized to meet specific needs, allowing users to modify or enhance functionalities.
  • Community and Support
    Beats has a strong community and offers extensive documentation, which aids in troubleshooting and enhancing user knowledge.

Possible disadvantages of Beats

  • Limited Processing Capabilities
    Beats is designed primarily for data shipment and lacks powerful processing capabilities, which may necessitate additional processing tools like Logstash.
  • Complexity with Scale
    Managing many Beats agents across a large infrastructure can become complex, requiring orchestrations and management strategies to avoid configuration drifts.
  • Memory Consumption
    While lightweight, some Beats can still consume a notable amount of memory, particularly when processing large datasets or complex configurations.
  • Learning Curve
    For users not familiar with the Elastic Stack ecosystem, there might be a learning curve in configuring and optimizing Beats for specific use cases.

Analysis of Apache Solr

Overall verdict

  • Yes, Apache Solr is generally considered a good option for organizations seeking a reliable, scalable, and flexible search platform. It offers extensive features and is supported by a strong community, making it a solid choice for many use cases.

Why this product is good

  • Apache Solr is highly regarded for its robust full-text search capabilities, scalability, and ease of integration. As an open-source search platform, it is built on Apache Lucene and provides powerful distributed search and indexing, replication, load-balanced querying, and automated failover and recovery. Solr is designed to handle large volumes of data efficiently and supports various data formats with powerful data management features.

Recommended for

    Apache Solr is recommended for organizations that need to implement powerful search capabilities, especially those managing large, complex datasets. It is ideal for businesses that require full-text search features, e-commerce sites, content management systems, and big data applications that demand high query performance and scalability.

Analysis of Beats

Overall verdict

  • Yes, Beats is generally considered good, especially for organizations already using Elasticsearch and the Elastic Stack. It is praised for its ease of integration, versatility, and the substantial support and community around the Elastic ecosystem. However, the specific effectiveness can depend on your use case and data architecture needs.

Why this product is good

  • Beats, developed by Elastic, is a set of lightweight data shippers that are often used for sending data to Elasticsearch. They are known for their efficiency and ability to handle a variety of data types including logs, metrics, and network packets. Beats are part of the Elastic Stack, which is widely used for real-time data analysis and monitoring.

Recommended for

  • Organizations that already use Elasticsarch as their core data processing tool
  • Teams looking for efficient and lightweight data shipping solutions
  • Developers needing a solution to handle diverse data formats such as logs and metrics
  • Companies investing in real-time monitoring and data analysis
  • Businesses that can benefit from the extensive documentation and community support provided by Elastic

Apache Solr videos

Solr Index - Learn about Inverted Indexes and Apache Solr Indexing

More videos:

  • Review - Solr Web Crawl - Crawl Websites and Search in Apache Solr

Beats videos

Beats Solo Pro: Return to Excellence!

More videos:

  • Review - The Beats Solo Pro Are The Best Beats Yet
  • Review - Beats Studio 3 Wireless "Real Review"

Category Popularity

0-100% (relative to Apache Solr and Beats)
Custom Search Engine
100 100%
0% 0
Monitoring Tools
0 0%
100% 100
Custom Search
100 100%
0% 0
Security & Privacy
0 0%
100% 100

User comments

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Reviews

These are some of the external sources and on-site user reviews we've used to compare Apache Solr and Beats

Apache Solr Reviews

Top 10 Site Search Software Tools & Plugins for 2022
Apache Solr is optimized to handle high-volume traffic and is easy to scale up or down depending on your changing needs. The near real-time indexing capabilities ensure that your content remains fresh and search results are always relevant and updated. For more advanced customization, Apache Solr boasts extensible plug-in architecture so you can easily plug in index and...
5 Open-Source Search Engines For your Website
Apache Solr is the popular, blazing-fast, open-source enterprise search platform built on Apache Lucene. Solr is a standalone search server with a REST-like API. You can put documents in it (called "indexing") via JSON, XML, CSV, or binary over HTTP. You query it via HTTP GET and receive JSON, XML, CSV, or binary results.
Source: vishnuch.tech
Elasticsearch vs. Solr vs. Sphinx: Best Open Source Search Platform Comparison
Solr is not as quick as Elasticsearch and works best for static data (that does not require frequent changing). The reason is due to caches. In Solr, the caches are global, which means that, when even the slightest change happens in the cache, all indexing demands a refresh. This is usually a time-consuming process. In Elastic, on the other hand, the refreshing is made by...
Source: greenice.net
Algolia Review – A Hosted Search API Reviewed
If you’re not 100% satisfied with Algolia, there are always alternative methods to accomplish similar results, such as Solr (open-source & self-hosted) or ElasticSearch (open-source or hosted). Both of these are built on Apache Lucene, and their search syntax is very similar. Amazon Elasticsearch Service provides a fully managed Elasticsearch service which makes it easy to...
Source: getstream.io

Beats Reviews

We have no reviews of Beats yet.
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Social recommendations and mentions

Based on our record, Apache Solr seems to be more popular. It has been mentiond 19 times since March 2021. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.

Apache Solr mentions (19)

  • List of 45 databases in the world
    Solr — Open-source search platform built on Apache Lucene. - Source: dev.to / 11 months ago
  • Considerations for Unicode and Searching
    I want to spend the brunt of this article talking about how to do this in Postgres, partly because it's a little more difficult there. But let me start in Apache Solr, which is where I first worked on these issues. - Source: dev.to / 11 months ago
  • Swirl: An open-source search engine with LLMs and ChatGPT to provide all the answers you need 🌌
    Using the Galaxy UI, knowledge workers can systematically review the best results from all configured services including Apache Solr, ChatGPT, Elastic, OpenSearch, PostgreSQL, Google BigQuery, plus generic HTTP/GET/POST with configurations for premium services like Google's Programmable Search Engine, Miro and Northern Light Research. - Source: dev.to / over 1 year ago
  • Looking for software
    Apache Solr can be used to index and search text-based documents. It supports a wide range of file formats including PDFs, Microsoft Office documents, and plain text files. https://solr.apache.org/. Source: about 2 years ago
  • 'google-like' search engine for files on my NAS
    If so, then https://solr.apache.org/ can be a solution, though there's a bit of setup involved. Oh yea, you get to write your own "search interface" too which would end up calling solr's api to find stuff. Source: over 2 years ago
View more

Beats mentions (0)

We have not tracked any mentions of Beats yet. Tracking of Beats recommendations started around Mar 2021.

What are some alternatives?

When comparing Apache Solr and Beats, you can also consider the following products

ElasticSearch - Elasticsearch is an open source, distributed, RESTful search engine.

Wazuh - Open Source Host and Endpoint Security

Algolia - Algolia's Search API makes it easy to deliver a great search experience in your apps & websites. Algolia Search provides hosted full-text, numerical, faceted and geolocalized search.

Riemann - Container Monitoring

Typesense - Typo tolerant, delightfully simple, open source search 🔍

Fortinet FortiAnalyzer - Fortinet FortiAnalyzer is a powerful product for Security Fabric Analytics and Automation.