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Open Source Observability that is 💥💥 100x 💥💥 more efficient than Splunk

Single binary for Logs 🎯, Metrics 🎯 and Traces 🎯.

Cut down your Splunk bill by ⚡ ⚡ 90% ⚡ ⚡

Why SigLens:

Our experience servicing 10,000+ engineers with Observability tools taught us a few things:

  • Developers have to jump through different tools for logs, metrics, traces
  • Splunk, DataDog, NewRelic are very expensive 💸 💸 💸
  • ElasticSearch takes too many machines, cluster maintenance is hard 👩‍💻👩‍💻
  • Grafana Loki has slow query performance 🐌🐌

Armed with decades of experience in monitoring domain, we set out to build a observability DB from the ground up, uniquely suited for logs, metrics and traces with zero external dependencies. A single binary that you can run on your laptop and process 8 TB/day.


Setup

Installation

Git   |   Docker  |   Helm

Documentation

Docs

Differentiators

SigLens v/s Splunk,Elastic,Loki

Check out this blog where SigLens ingested data at 1 PB/day rate for 24 hours on a mere 32 EC2 instances compared to 3000 EC2 instances required for Splunk, Elastic, Grafana Loki

SigLens v/s Elasticsearch

Check out this blog where SigLens is 1025x Faster than Elasticsearch 🚀🚀

SigLens v/s ClickHouse

Check out this blog where SigLens is 54x Faster than ClickHouse 🚀🚀


Features:

  1. Multiple Ingestion formats: Open Telemetry, Elastic, Splunk HEC, Loki
  2. Multiple Query Languages: Splunk SPL, SQL and Loki LogQL
  3. Simple architecture, easy to get started.

Join our Community

Have questions, ask them in our community Slack 👋


Contributing

Please read CONTRIBUTING.md to get started with making contributions to SigLens.

How-Tos

Searching Logs

Searching Logs

Tracing

Tracing

Creating Dashboards

Creating Dashboards

Creating Alerts

Creating Alerts

Live Tail

Live Tail

Minion Searches

Minion Searches

Code of Conduct

Please review our code of conduct before contributing.

Thanks to all contributors for their efforts

siglens-docs's People

Contributors

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siglens-docs's Issues

Log Ingestion/Promtail: Add "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/log-ingestion/promtail
md: https://github.com/siglens/siglens-docs/blob/develop/docs/log-ingestion/promtail.md

Log Ingestion/Vector: Add a "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/log-ingestion/vector
md: https://github.com/siglens/siglens-docs/blob/develop/docs/log-ingestion/vector.md

Metric Ingestion/Metricbeat: Add "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/metric-ingestion/metricbeat
md: https://github.com/siglens/siglens-docs/blob/develop/docs/metric-ingestion/metricbeat.md

Log Ingestion/Logstash: Add "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/log-ingestion/logstash
md: https://github.com/siglens/siglens-docs/blob/develop/docs/log-ingestion/logstash.md

Metric Ingestion/Vector Metrics: Add "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/metric-ingestion/vector-metrics
md: https://github.com/siglens/siglens-docs/blob/develop/docs/metric-ingestion/vector-metrics.md

Log Ingestion/Filebeat: Add "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/log-ingestion/filebeat
md: https://github.com/siglens/siglens-docs/blob/develop/docs/log-ingestion/filebeat.md

Metric Ingestion/Open Telemetry: Add "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/metric-ingestion/open-telemetry
md: https://github.com/siglens/siglens-docs/blob/develop/docs/metric-ingestion/open-telemetry.md

Log Ingestion/Fluentd: Add "Conclusion" paragraph and "Next Steps" section

Description

This module requires a

  • Conclusion paragraph (optional): A quick summary of what's discussed in the module.
  • Next Steps: One line on what are the next steps once the user completes the module. (Hyperlink to other Siglens modules that instruct about further steps)

Note: Make sure you use h2 heading (##) while creating headers for the new sections

Reference: https://www.siglens.com/siglens-docs/log-ingestion/fluentd
md: https://github.com/siglens/siglens-docs/blob/develop/docs/log-ingestion/fluentd.md

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