[prev in list] [next in list] [prev in thread] [next in thread] 

List:       apache-announce
Subject:    [ANNOUNCE] Apache Kafka 2.3.1
From:       David Arthur <davidarthur () apache ! org>
Date:       2019-10-25 3:27:31
Message-ID: CA+0Ze6q1dO4ApGao75gpjLvS5C-mE3WR99XS-7iyHfTaUrENLA () mail ! gmail ! com
[Download RAW message or body]

The Apache Kafka community is pleased to announce the release for Apache
Kafka 2.3.1

This is a bugfix release for Kafka 2.3.0. All of the changes in this
release can be found in the release notes:
https://www.apache.org/dist/kafka/2.3.1/RELEASE_NOTES.html


You can download the source and binary release (with Scala 2.11 or 2.12)
from:
https://kafka.apache.org/downloads#2.3.1

---------------------------------------------------------------------------=
------------------------


Apache Kafka is a distributed streaming platform with four core APIs:


** The Producer API allows an application to publish a stream records to
one or more Kafka topics.

** The Consumer API allows an application to subscribe to one or more
topics and process the stream of records produced to them.

** The Streams API allows an application to act as a stream processor,
consuming an input stream from one or more topics and producing an
output stream to one or more output topics, effectively transforming the
input streams to output streams.

** The Connector API allows building and running reusable producers or
consumers that connect Kafka topics to existing applications or data
systems. For example, a connector to a relational database might
capture every change to a table.


With these APIs, Kafka can be used for two broad classes of application:

** Building real-time streaming data pipelines that reliably get data
between systems or applications.

** Building real-time streaming applications that transform or react
to the streams of data.


Apache Kafka is in use at large and small companies worldwide, including
Capital One, Goldman Sachs, ING, LinkedIn, Netflix, Pinterest, Rabobank,
Target, The New York Times, Uber, Yelp, and Zalando, among others.

A big thank you for the following 41 contributors to this release!

A. Sophie Blee-Goldman, Arjun Satish, Bill Bejeck, Bob Barrett, Boyang
Chen, Bruno Cadonna, Cheng Pan, Chia-Ping Tsai, Chris Egerton, Chris
Stromberger, Colin P. Mccabe, Colin Patrick McCabe, cpettitt-confluent,
cwildman, David Arthur, Dhruvil Shah, Greg Harris, Gunnar Morling, Guozhang
Wang, huxi, Ismael Juma, Jason Gustafson, John Roesler, Konstantine
Karantasis, Lee Dongjin, LuyingLiu, Magesh Nandakumar, Matthias J. Sax,
Micha=C5=82 Borowiecki, Mickael Maison, mjarvie, Nacho Mu=C3=B1oz G=C3=B3me=
z, Nigel Liang,
Paul, Rajini Sivaram, Randall Hauch, Robert Yokota, slim, Tirtha
Chatterjee, vinoth chandar, Will James

We welcome your help and feedback. For more information on how to
report problems, and to get involved, visit the project website at
https://kafka.apache.org/

Thank you!


Regards,
David Arthur

[Attachment #3 (text/html)]

<div dir="ltr">The Apache Kafka community is pleased to announce the release for \
Apache Kafka 2.3.1<br><br>This is a bugfix release for Kafka 2.3.0. All of the \
changes in this release can be found in the release notes:<br><a \
href="https://www.apache.org/dist/kafka/2.3.1/RELEASE_NOTES.html">https://www.apache.org/dist/kafka/2.3.1/RELEASE_NOTES.html</a><br><br><br>You \
can download the source and binary release (with Scala 2.11 or 2.12) from:<br><a \
href="https://kafka.apache.org/downloads#2.3.1">https://kafka.apache.org/downloads#2.3 \
.1</a><br><br>---------------------------------------------------------------------------------------------------<br><br><br>Apache \
Kafka is a distributed streaming platform with four core APIs:<br><br><br>** The \
Producer API allows an application to publish a stream records to<br>one or more \
Kafka topics.<br><br>** The Consumer API allows an application to subscribe to one or \
more<br>topics and process the stream of records produced to them.<br><br>** The \
Streams API allows an application to act as a stream processor,<br>consuming an input \
stream from one or more topics and producing an<br>output stream to one or more \
output topics, effectively transforming the<br>input streams to output \
streams.<br><br>** The Connector API allows building and running reusable producers \
or<br>consumers that connect Kafka topics to existing applications or \
data<br>systems. For example, a connector to a relational database might<br>capture \
every change to a table.<br><br><br>With these APIs, Kafka can be used for two broad \
classes of application:<br><br>** Building real-time streaming data pipelines that \
reliably get data<br>between systems or applications.<br><br>** Building real-time \
streaming applications that transform or react<br>to the streams of \
data.<br><br><br>Apache Kafka is in use at large and small companies worldwide, \
including<br>Capital One, Goldman Sachs, ING, LinkedIn, Netflix, Pinterest, \
Rabobank,<br>Target, The New York Times, Uber, Yelp, and Zalando, among \
others.<br><br>A big thank you for the following 41 contributors to this \
release!<br><br>A. Sophie Blee-Goldman, Arjun Satish, Bill Bejeck, Bob Barrett, \
Boyang Chen, Bruno Cadonna, Cheng Pan, Chia-Ping Tsai, Chris Egerton, Chris \
Stromberger, Colin P. Mccabe, Colin Patrick McCabe, cpettitt-confluent, cwildman, \
David Arthur, Dhruvil Shah, Greg Harris, Gunnar Morling, Guozhang Wang, huxi, Ismael \
Juma, Jason Gustafson, John Roesler, Konstantine Karantasis, Lee Dongjin, LuyingLiu, \
Magesh Nandakumar, Matthias J. Sax, Michał Borowiecki, Mickael Maison, mjarvie, \
Nacho Muñoz Gómez, Nigel Liang, Paul, Rajini Sivaram, Randall Hauch, Robert Yokota, \
slim, Tirtha Chatterjee, vinoth chandar, Will James<br><br>We welcome your help and \
feedback. For more information on how to<br>report problems, and to get involved, \
visit the project website at<br><a \
href="https://kafka.apache.org/">https://kafka.apache.org/</a><br><br>Thank \
you!<br><br><br>Regards,<br><div dir="ltr" class="gmail_signature" \
data-smartmail="gmail_signature">David Arthur</div></div>



[prev in list] [next in list] [prev in thread] [next in thread] 

Configure | About | News | Add a list | Sponsored by KoreLogic