Hi Paulo

Thanks for the feedback. If we do get the track accepted then we will 
definitely be needing help reviewing the submissions - so may take you up on 
your offer :-)

Thanks
Sharan

On 2022/03/14 16:32:23 Paulo Motta wrote:
> This Apachecon track sounds fun! I hope someone from the Cassandra
> community steps up to help on this track.
> 
> I would be happy to help on reviews but not organize the event per se as I
> will likely not attend the event.
> 
> Em sex., 11 de mar. de 2022 às 09:26, sharanf <sha...@apache.org> escreveu:
> 
> > Hi All
> >
> > The call for tracks for ApacheCon NA is open. There is a suggestion to
> > try and run a Performance Engineering track at ApacheCon this year. At
> > the end of the message I have included some details including a
> > definition of what we mean by it and some reasoning about why it could
> > be good to run. We have a list of projects that have something to do
> > with performance engineering and if you take a look -  you will see that
> > this project is on the list!
> >
> > So what I need is a some feedback as to whether the community thinks
> > that this could be an interesting track topic to run at ApacheCon..and
> > more importantly would the community be willing to submit talks for it
> > or attend ApacheCon to see it.
> >
> > Like I say - this is just an idea at this stage. If the Performance
> > Engineering track does get approval to be included at ApacheCon  - do we
> > have any volunteers willing to help with managing and promoting the
> > track on behalf of the project?
> >
> > Thanks
> > Sharan
> >
> > -----------------------------
> >
> > *Performance Engineering*  is the science and practice of engineering
> > software with the required performance and scalability characteristics.
> > Many Apache projects focus on solving hard Big Data performance and
> > scalability challenges, while others provide tools for performance
> > engineering - but there are few projects that don’t care about some
> > aspect of software performance.
> >
> > This track will enable Apache projects members to share their
> > experiences of performance engineering best practices, tools,
> > techniques, and results, from their own communities, with the benefits
> > of cross-fertilization between projects. Performance Engineering in the
> > wider open source community is pervasive and includes methods and tools
> > (including automation and agile approaches) for performance:
> > architecting and design, benchmarking, monitoring, tracing, analysis,
> > prediction, modeling and simulation, testing and reporting, regression
> > testing, and source code analysis and instrumentation techniques.
> >
> > Performance Engineering also has wider applicability to DevOps, the
> > operation of cloud platforms by managed service providers (hence some
> > overlap with SRE - Site Reliability Engineering), and customer
> > application performance and tuning.  This track would therefore be
> > applicable to the wider open source community.
> >
> > *SUPPORTING DETAILS*
> >
> > *Google Searches*
> > Google “Open source performance engineering” has 4,180,000,000 results
> > Google “site:apache.org<http://apache.org>  performance” has 147,000
> > results
> >
> > *Apache Projects *which may have some interest in, or focus on,
> > performance (just the top results):
> > JMeter, Cassandra, Storm, Spark, Samza, Pulsar, Kafka, Log4J, SystemML,
> > Drill, HTTP Server, Cayenne, ActiveMQ, Impala, Geode, Flink, Ignite,
> > Impala, Lucene, TVM, Tika, YuniKorn, Solr, Iceberg, Dubbo, Hudi,
> > Accumulo, Xerces, MXNet, Zookeeper
> >
> > *Incubator projects *which may have some interest in, or focus on,
> > performance**(again just top results):
> > Crail, Eagle, Nemo, Skywalking, MXnet, HAWQ, Mnemonic, CarbonData,
> > Drill, ShenYu, Tephra, Sedona
> >
> > *References *(randomly selected to show the range of open-source
> > performance engineering topics available, rather than the quality of
> > articles):
> >
> >   1. Performance Engineering for Apache Spark and Databricks Runtime
> >      ETHZ, Big Data HS19
> >      <
> > https://archive-systems.ethz.ch/sites/default/files/courses/2019-fall/bigdata/Databricks%20ETHZ%20Big%20Data%20HS19.pdf
> > >
> >   2. Real time insights into LinkedIn's performance using Apache Samza
> >      <
> > https://engineering.linkedin.com/samza/real-time-insights-linkedins-performance-using-apache-samza
> > >
> >   3. A day in the life of an open source performance engineering team
> >      <https://opensource.com/article/19/5/life-performance-engineer>
> >   4. Locating Performance Regression Root Causes in the Field Operations
> >      of<https://ieeexplore.ieee.org/document/9629300>Web-based Systems:
> >      An Experience Report Published in: IEEE Transactions on Software
> >      Engineering (Early Access)
> >      <https://ieeexplore.ieee.org/document/9629300>
> >   5. How to Detect Performance Changes in Software History: Performance
> >      Analysis of Software System Versions
> >      <https://dl.acm.org/doi/10.1145/3185768.3186404>
> >   6. Performance-Regression Pitfalls Every Project Should Avoid
> >      <
> > https://www.eetimes.eu/performance-regression-pitfalls-every-project-should-avoid/
> > >
> >   7. How to benchmark your websites with the open source Apache Bench
> >      tool
> >      <
> > https://www.techrepublic.com/article/how-to-benchmark-your-websites-with-the-open-source-apache-bench-tool/
> > >
> >   8. Benchmarking Pulsar and Kafka - A More Accurate Perspective on
> >      Pulsar’s Performance
> >      <
> > https://streamnative.io/blog/tech/2020-11-09-benchmark-pulsar-kafka-performance/
> > >
> >   9. Performance-Analyse: Apache Cassandra 4.0.0 Release
> >      <https://benchant.com/blog/cassandra-4-performance>
> > 10. Log4J Performance - This page compares the performance of a number
> >      of logging frameworks
> >      <https://logging.apache.org/log4j/2.x/performance.html>
> > 11. SystemML Performance Testing
> >      <https://systemds.apache.org/docs/1.0.0/python-performance-test.html>
> >
> >
> 

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