Giter Site home page Giter Site logo

georgeerickson / kafkacat Goto Github PK

View Code? Open in Web Editor NEW

This project forked from edenhill/kcat

0.0 1.0 0.0 330 KB

Generic command line non-JVM Apache Kafka producer and consumer

License: Other

Emacs Lisp 0.02% Dockerfile 0.60% Makefile 0.28% Shell 34.40% C 63.92% Roff 0.78%

kafkacat's Introduction

kafkacat

Copyright (c) 2014-2018 Magnus Edenhill

https://github.com/edenhill/kafkacat

kafkacat is a generic non-JVM producer and consumer for Apache Kafka >=0.8, think of it as a netcat for Kafka.

In producer mode kafkacat reads messages from stdin, delimited with a configurable delimiter (-D, defaults to newline), and produces them to the provided Kafka cluster (-b), topic (-t) and partition (-p).

In consumer mode kafkacat reads messages from a topic and partition and prints them to stdout using the configured message delimiter.

There's also support for the Kafka >=0.9 high-level balanced consumer, use the -G <group> switch and provide a list of topics to join the group.

kafkacat also features a Metadata list (-L) mode to display the current state of the Kafka cluster and its topics and partitions.

kafkacat is fast and lightweight; statically linked it is no more than 150Kb.

Install

On recent enough Debian systems:

apt-get install kafkacat

And on Mac OS X with homebrew installed:

brew install kafkacat

Otherwise follow directions below.

Requirements

On Ubuntu or Debian: sudo apt-get install librdkafka-dev libyajl-dev

Build

./configure <usual-configure-options>
make
sudo make install

Quick build

The bootstrap.sh build script will download and build the required dependencies, providing a quick and easy means of building kafkacat. Internet connectivity and wget/curl is required by this script. The resulting kafkacat binary will be linked statically to avoid runtime dependencies. NOTE: Requires curl and cmake (for yajl) to be installed.

./bootstrap.sh

Examples

High-level balanced KafkaConsumer: subscribe to topic1 and topic2 (requires broker >=0.9.0 and librdkafka version >=0.9.1)

$ kafkacat -b mybroker -G mygroup topic1 topic2

Read messages from stdin, produce to 'syslog' topic with snappy compression

$ tail -f /var/log/syslog | kafkacat -b mybroker -t syslog -z snappy

Read messages from Kafka 'syslog' topic, print to stdout

$ kafkacat -b mybroker -t syslog

Produce messages from file (one file is one message)

$ kafkacat -P -b mybroker -t filedrop -p 0 myfile1.bin /etc/motd thirdfile.tgz

Read the last 2000 messages from 'syslog' topic, then exit

$ kafkacat -C -b mybroker -t syslog -p 0 -o -2000 -e

Consume from all partitions from 'syslog' topic

$ kafkacat -C -b mybroker -t syslog

Output consumed messages in JSON envelope:

$ kafkacat -b mybroker -t syslog -J

Output consumed messages according to format string:

$ kafkacat -b mybroker -t syslog -f 'Topic %t[%p], offset: %o, key: %k, payload: %S bytes: %s\n'

Read the last 100 messages from topic 'syslog' with librdkafka configuration parameter 'broker.version.fallback' set to '0.8.2.1' :

$ kafkacat -C -b mybroker -X broker.version.fallback=0.8.2.1 -t syslog -p 0 -o -100 -e

Produce a tombstone (a "delete" for compacted topics) for key "abc" by providing an empty message value which -Z interpretes as NULL:

$ echo "abc:" | kafkacat -b mybroker -t mytopic -Z -K:

Metadata listing

$ kafkacat -L -b mybroker
Metadata for all topics (from broker 1: mybroker:9092/1):
 3 brokers:
  broker 1 at mybroker:9092
  broker 2 at mybrokertoo:9092
  broker 3 at thirdbroker:9092
 16 topics:
  topic "syslog" with 3 partitions:
    partition 0, leader 3, replicas: 1,2,3, isrs: 1,2,3
    partition 1, leader 1, replicas: 1,2,3, isrs: 1,2,3
    partition 2, leader 1, replicas: 1,2, isrs: 1,2
  topic "rdkafkatest1_auto_49f744a4327b1b1e" with 2 partitions:
    partition 0, leader 3, replicas: 3, isrs: 3
    partition 1, leader 1, replicas: 1, isrs: 1
  topic "rdkafkatest1_auto_e02f58f2c581cba" with 2 partitions:
    partition 0, leader 3, replicas: 3, isrs: 3
    partition 1, leader 1, replicas: 1, isrs: 1
  ....

JSON metadata listing

$ kafkacat -b mybroker -L -J

Pretty-printed JSON metadata listing

$ kafkacat -b mybroker -L -J | jq .

Query offset(s) by timestamp(s)

$ kafkacat -b mybroker -Q -t mytopic:3:2389238523 -t mytopic2:0:18921841

Running in Docker

You can find an image for kafkacat on Docker Hub.

If you are connecting to Kafka brokers also running on Docker you should specify the network name as part of the docker run command using the --network parameter. For more details of networking with Kafka and Docker see this post.

Here are two short examples of using kafkacat from Docker. See the Docker Hub listing and kafkacat docs for more details:

  • Send messages using here doc:

    docker run --interactive --rm \
        confluentinc/cp-kafkacat \
        kafkacat -b kafka-broker:9092 \
                -t test \
                -K: \
                -P <<EOF
    1:{"order_id":1,"order_ts":1534772501276,"total_amount":10.50,"customer_name":"Bob Smith"}
    2:{"order_id":2,"order_ts":1534772605276,"total_amount":3.32,"customer_name":"Sarah Black"}
    3:{"order_id":3,"order_ts":1534772742276,"total_amount":21.00,"customer_name":"Emma Turner"}
    EOF
    
  • Consume messages:

    docker run --tty --interactive --rm \
           confluentinc/cp-kafkacat \
           kafkacat -b kafka-broker:9092 \ 
           -C \
           -f '\nKey (%K bytes): %k\t\nValue (%S bytes): %s\n\Partition: %p\tOffset: %o\n--\n' \
           -t test
    
    Key (1 bytes): 1
    Value (88 bytes): {"order_id":1,"order_ts":1534772501276,"total_amount":10.50,"customer_name":"Bob Smith"}
    Partition: 0    Offset: 0
    --
    
    Key (1 bytes): 2
    Value (89 bytes): {"order_id":2,"order_ts":1534772605276,"total_amount":3.32,"customer_name":"Sarah Black"}
    Partition: 0    Offset: 1
    --
    
    Key (1 bytes): 3
    Value (90 bytes): {"order_id":3,"order_ts":1534772742276,"total_amount":21.00,"customer_name":"Emma Turner"}
    Partition: 0    Offset: 2
    --
    % Reached end of topic test [0] at offset 3
    

kafkacat's People

Contributors

edenhill avatar solsson avatar fsaintjacques avatar slimhazard avatar champtar avatar vincentbernat avatar bstarling avatar georgeerickson avatar julien-lecomte avatar maximecaron avatar redmar avatar rmoff avatar whissi avatar anshulpatel25 avatar chrisvroberts avatar apple-corps avatar

Watchers

James Cloos avatar

Recommend Projects

  • React photo React

    A declarative, efficient, and flexible JavaScript library for building user interfaces.

  • Vue.js photo Vue.js

    ๐Ÿ–– Vue.js is a progressive, incrementally-adoptable JavaScript framework for building UI on the web.

  • Typescript photo Typescript

    TypeScript is a superset of JavaScript that compiles to clean JavaScript output.

  • TensorFlow photo TensorFlow

    An Open Source Machine Learning Framework for Everyone

  • Django photo Django

    The Web framework for perfectionists with deadlines.

  • D3 photo D3

    Bring data to life with SVG, Canvas and HTML. ๐Ÿ“Š๐Ÿ“ˆ๐ŸŽ‰

Recommend Topics

  • javascript

    JavaScript (JS) is a lightweight interpreted programming language with first-class functions.

  • web

    Some thing interesting about web. New door for the world.

  • server

    A server is a program made to process requests and deliver data to clients.

  • Machine learning

    Machine learning is a way of modeling and interpreting data that allows a piece of software to respond intelligently.

  • Game

    Some thing interesting about game, make everyone happy.

Recommend Org

  • Facebook photo Facebook

    We are working to build community through open source technology. NB: members must have two-factor auth.

  • Microsoft photo Microsoft

    Open source projects and samples from Microsoft.

  • Google photo Google

    Google โค๏ธ Open Source for everyone.

  • D3 photo D3

    Data-Driven Documents codes.