LogZoom is a lightweight, Lumberjack-compliant log indexer based off the fine work of Hailo's Logslam. It accepts the Lumberjack v2 protocol, which is currently supported by [Elastic's Filebeat] (https://github.com/elastic/beats).
It was written with the intention of being a smaller, efficient, and more reliable replacement for logstash and Fluentd.
Like Logstash, LogZoom receives JSON data from Filebeat via the Lumberjack v2 protocol and inserts the data into different outputs. For example, let's say your application generated a JSON line for every event:
{"@timestamp":"2016-03-31T22:23:14+0000", "url": "http://www.google.com"}
{"@timestamp":"2016-03-31T22:25:14+0000", "url": "http://www.bing.com"}
{"@timestamp":"2016-03-31T22:26:14+0000", "url": "http://www.yahoo.com"}
As the diagram shows, you can then run a single process of LogZoom to receive this data and insert to Elasticsearch, S3, etc:
![LogZoom Basic Diagram](images/logzoom.png)Unlike Logstash, however, LogZoom does not attempt to manipulate data in any shape or form. JSON data that arrives from Filebeat is directly sent to outputs as-is.
Many users commonly use Logstash by adding a grok filter, "currently the best way in logstash to parse crappy unstructured log data." LogZoom currently does NOT support this use case; it is designed for software applications that generate structured data directly.
For example, if you are trying to use Kibana, a frontend to Elasticsearch, you
may need the @timestamp
field, which Logstash typically inserts for
you. With LogZoom, your application must generate this field in each JSON
log line. The advantages of using this approach:
-
LogZoom doesn't have to decode the JSON, insert a new field, and encode the JSON again. Logstash and Fluentd spend a fair amount of CPU time doing this.
-
The application explicitly defines the semantics of
@timestamp
. When we used Logstash, we were confused that each record was stamped when the entry was received by the central Logstash process, not when it was generated by the client. This caused great confusion, as we would often see large gaps in data when the data was just marked with the wrong timestamp.
- Filebeat (Lumberjack V2 Protocol)
- Redis Message Queue
- Redis Message Queue
- TCP Streaming
- WebSocket Streaming
- Elasticsearch
- S3
Create a YAML config file specifying the desired input and outputs. An example config can be found in examples/example.config.yml:
inputs:
filebeat:
host: 0.0.0.0:7200
ssl_crt: /etc/filebeat/filebeat.crt
ssl_key: /etc/filebeat/filebeat.key
outputs:
tcp:
host: :7201
websocket:
host: :7202
elasticsearch:
hosts:
- http://localhost:9200
$ go build
$ $GOPATH/bin/logzoom -config=examples/example.config.yml
2016/04/07 20:22:50 Starting server
2016/04/07 20:22:50 Starting buffer
2016/04/07 20:22:50 Starting input filebeat
2016/04/07 20:22:50 Starting output tcp
2016/04/07 20:22:50 Starting output websocket
2016/04/07 20:22:50 Starting output elasticsearch
2016/04/07 20:22:50 Setting HTTP timeout to 1m0s
2016/04/07 20:22:50 Setting GZIP enabled: false
2016/04/07 20:22:50 Connected to Elasticsearch
nc localhost 7201
Connect to http://localhost:7202 in a browser.
A list of known sources will be displayed.
Note that currently only Elasticsearch 1.x is supported. If you need 2.x support, I think it is just a matter of updating LogZoom to use Olliver Eilhard's 3.x client.