Enterprise Fluentd vs. Logstash

Overview
ProductRatingMost Used ByProduct SummaryStarting Price
Enterprise Fluentd
Score 8.4 out of 10
Enterprise companies (1,001+ employees)
Used by Microsoft, Amazon, Google, and many more, Fluentd was invented by Treasure Data to easily collect, parse, and deliver massive amounts of data from applications, infrastructure, network devices, and log files. Enterprise Fluentd expands on that original vision and brings enterprise-grade security, stable connectivity to critical backend systems, and support for logging infrastructure. Enterprise Fluentd addresses enterprise requirements such as Trusted Packaging, Security, Certified…N/A
Logstash
Score 8.0 out of 10
N/A
N/AN/A
Pricing
Enterprise FluentdLogstash
Editions & Modules
No answers on this topic
No answers on this topic
Offerings
Pricing Offerings
Enterprise FluentdLogstash
Free Trial
NoNo
Free/Freemium Version
NoNo
Premium Consulting/Integration Services
NoNo
Entry-level Setup FeeNo setup feeNo setup fee
Additional Details
More Pricing Information
Community Pulse
Enterprise FluentdLogstash
User Ratings
Enterprise FluentdLogstash
Likelihood to Recommend
9.0
(0 ratings)
10.0
(0 ratings)
User Testimonials
Enterprise FluentdLogstash
Likelihood to Recommend
Enterprise Fluentd is a classic solution that manages data, which allows the business to get information from various sources and connect it to conduct a comprehensive analytical procedure. More so, Enterprise Fluentd has the security part, which is specific and friendly in controlling all the systems. Finally, Enterprise Fluentd is strategic, and it uses AI for high performance.
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Logstash is a must in an ELK stack, which I am sure is going to be the #1 case. At any point when you have several sources, Logstash can be the common point to aggregate, and categorize those data. Then send this new data to its destination. Very handy. It is free and open source. It may not be appropriate to analyze data-sets dependent on each other but from a different data source. Reason being Logstash works on data at hand, and not wait for other data to arrive. It would be unwise for Logstashh to handle complicated, long-running transformations because this is injected and ejected. The faster you do it, the safer.
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Pros
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  • Plugin ecosystem allows modular extensions.
  • Tight integration into the Elastic.com products of Beats and Elasticsearch, so minimal setup is required when using those tools.
  • Filter plugins are powerful for extracting and enriching input data.
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Cons
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  • Memory: Logstash is a HOG, if you are deploying it on commodity (i.e. cheap and old) hardware: You will need at least 2GB, just for Logstash. So don't expect to run your entire ELK stack on one AMD Athlon machine.
  • Overlap: Logstash fills in an area of the ELK stack that makes the most sense: as a log file transformer / shipper. However, if you start breaking that stack, with the addition of other components- you start seeing where features of Logstash may be implemented or solved in the additional components much easier (or better, or to a higher degree of resolution)
  • More Overlap: Since my team employs Syslog-ng extensively- Logstash can sometimes get in the way (and this may be a problem for DevOps stacks overall): You can configure Syslog to record certain information from a source, filter that data, and even export that data in a particular format. Logstash will pick that data up, and then parse it. However, if you don't keep your Syslog-ng configuration files, and your Logstash configuration files in sync, your results will not be what you expected, and this will translate into (sometimes) hours/days of work, hunting down a line item in a configuration file.
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Usability
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As I said earlier, for a production-grade OpenStack Telco cloud, Logstash brings high value in flexibility, compliance, and troubleshooting efficiency. However, this brings a higher infra & ops cost on resources, but that is not a problem in big datacenters because there is no resource crunch in terms of servers or CPU/RAM
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Alternatives Considered
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MongoDB and Azure SQL Database are just that: Databases, and they allow you to pipe data into a database, which means that alot of the log filtering becomes a simple exercise of querying information from a DBMS. However, LogStash was chosen for it's ease of integration into our choice of using ELK Elasticsearch is an obvious inclusion: Using Logstash with it's native DevOps stack its really rational
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Return on Investment
  • Authentic data collection brings accuracy in the operations of the company.
  • Diverse data sourcing brings inclusive results.
  • Coordination among different systems allows companies to remain competitive.
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  • It is very difficult to give any figures on ROI, as it depends on many factors, and in a Telcocloud environment, it is much complex to find out; however, I would give some points below on ROI
  • ROI based on flexibility is very high, as it reduces the time to find RCA
  • ROI based on integration is very high because it supports multi-vendor environments, avoiding vendor lock-in & works across multi-cloud setups
  • ROI on resource consumption is less because Logstash in 2-3 times more resource-intensive as compared to its lightweight alternatives resulting in latency
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ScreenShots

Enterprise Fluentd Screenshots

Screenshot of Screenshot of Enterprise Fluentd manager configurationsScreenshot of Enterprise Fluentd Manager SourcesScreenshot of Enterprise Fluentd Kafka Producer ConfigurationScreenshot of Enterprise Fluentd Manager DashboardScreenshot of Enterprise Fluentd Manager Outputs