Following the discussion thread [1], I would like to call a VOTE for Accepting 
Apex as a new Apache Incubator project.

The proposal is available on the wiki [2] and is also attached below.

The VOTE will be open for at least 72 hours.

[ ] +1 Accept Apex into the Incubator
[ ] ±0 No opinion
[ ] -1 Do not accept Apex into the Incubator because…

Thanks,

-Taylor

[1] http://s.apache.org/apex_discuss <http://s.apache.org/apex_discuss>
[2] https://wiki.apache.org/incubator/ApexProposal


== Abstract ==
Apex is an enterprise grade native YARN big data-in-motion platform that 
unifies stream processing as well as batch processing. Apex processes big data 
in-motion in a highly scalable, highly performant, fault tolerant, stateful, 
secure, distributed, and an easily operable way. It provides a simple API that 
enables users to write or re-use generic Java code, thereby lowering the 
expertise needed to write big data applications.

Functional and operational specifications are separated. Apex is designed in a 
way to enable users to write their own code (aka user defined functions) as is 
and leave all operability to the platform. The API is very simple and is 
designed to allow users to drop in their code as is. The platform mainly deals 
with operability and treats functional code as a black box. Operability 
includes fault tolerance, scalability, security, ease of use, metrics api, 
webservices, etc. In other words there is no separation of UDF (user defined 
functions), as all functional code is UDF. This frees users to focus on 
functional development, and lets platform provide operability support. The same 
code runs as is with different operability attributes. The data-in-motion 
architecture of Apex unifies stream as well as batch processing in a single 
platform. Since Apex is a native YARN application, it leverages all the 
components of YARN without duplication. Apex was developed with YARN in mind 
and has no overlapping components/functionality with YARN.

The Apex platform is supplemented by project Malhar, which is a library of 
operators that implement common business logic functions needed by customers 
who want to quickly develop applications. These operators provide access to 
HDFS, S3, NFS, FTP, and other file systems;  Kafka, ActiveMQ, RabbitMQ, JMS, 
and other message systems; MySql, Cassandra, MongoDB, Redis, HBase, CouchDB and 
other databases along with JDBC connectors. The Malhar library also includes a 
host of other common business logic patterns that help users to significantly 
reduce the time it takes to go into production. Ease of integration with all 
other big data technologies is one of the primary missions of Malhar.

== Proposal ==
The goal of this proposal is to establish the core engine of DataTorrent RTS 
product as an Apache Software Foundation (ASF) project in order to build a 
vibrant, diverse, and self-governed open source community around the 
technology. DataTorrent will continue to sell management tools, application 
building tools, easy to use big data applications, and custom high end business 
logic operators. This proposal covers the Apex source code (written in Java), 
Apex documentation and other materials currently available on 
https://github.com/DataTorrent/Apex. This proposal also covers the Malhar 
source code (written in Java), Malhar documentation, and other materials 
currently available on https://github.com/DataTorrent/Malhar. We have done a 
trademark check on the name Apex, and have concluded that the Apex name is 
likely to be a suitable project name.

== Background ==
DataTorrent RTS is a mature and robust product developed as a native YARN 
application. RTS 1.0 was launched in summer of 2014; RTS 2.0 was launched in 
Jan 2015. Both were well received by customers. RTS 3.0 was launched at end of 
July 2015. RTS is among the first enterprise grade platform that was developed 
from the ground up as native YARN application. DataTorrent RTS is currently 
maintained by engineers as a closed source project. Even though the engineers 
behind RTS are experienced software engineers and are knowledge leaders in 
data-in-motion platforms, they have had little exposure to the open source 
governance process. Customers are currently running applications based on 
DataTorrent RTS in production.

== Rationale ==
Big data applications written for non-Hadoop platforms typically require major 
rewrites  to get them to work with Hadoop. This rewriting creates a significant 
bottleneck in terms of resources (expertise) which in turn jeopardizes the 
viability of such an endeavour. It is hard enough to acquire big data 
expertise, demanding additional expertise to do a major code conversion makes 
it a very hard problem for projects to successfully migrate to Hadoop. Also, 
due to the batch processing nature of Hadoop’s MapReduce paradigm, users often 
have to wait tens of minutes to see results and act on them due to various 
delays in data flow. DataTorrent’s RTS data-in-motion architecture is designed 
to address this problem. It enables even the non big data developer to write 
code and operate it in a scalable, fault tolerant manner. The big 
data-in-motion architecture of DataTorrent’s RTS enables ease of integration 
into current enterprise infrastructure. This goal was achieved by keeping the 
API simple and empowering users to put in the connector code as is (or with 
minimal changes).

Malhar is a manifestation of this reality, and we or the customer engineers 
were able to create these connectors within a day or so if not within a week. 
Connectors include those to integrate with message bus(es), file systems, 
databases, other protocols, and more continue to be added. Over a period of 
time we expect users to simply pick a connector that already exists in Malhar 
and quickly begin integrating with their current enterprise infrastructure. 
Within the data-in-motion architecture a stream application is one with 
connector(s) to say Kafka, JMS, or Flume; while a batch application is one with 
connector(s) to HDFS, HBase, FTP, NFS, S3n etc. This allows usage of the 
platform for both stream as well as batch processing with same business logic. 
Complete separation of user written application code from all operational 
aspects of the system, as well as support code for YARN, significantly expands 
the potential use cases that can migrate to use Hadoop.

Apex will enable Hadoop eco-system to migrate a lot more use cases. It will 
enable the Hadoop eco-system to deliver on a promise to rapidly transform 
current IT infrastructure. Apex will help in significantly increasing 
productization of big data projects. One of the main barometers of success in 
the Hadoop eco-system is significant reduction of time to market for big data 
applications migrating to Hadoop. We believe that Apex will be one of the 
platforms that will enable users to extract value from big data, by reducing 
time to market. This rapid innovation can be optimally achieved through a 
vibrant, diverse, self-governed community collectively innovating around Apex 
and the Malhar library, while at the same time cross-pollinating with various 
other big data platforms. ASF is an ideal place to meet this goal.

== Initial Goals ==
Our initial goals are to bring Apex and Malhar repositories into the ASF, adapt 
internal engineering processes to open development, and foster a collaborative 
development model in accordance with the "Apache Way." DataTorrent plans to 
develop new functionality in an open, community-driven way. To get there, the 
existing internal build, test and release processes will be refactored to 
support open development. We already have an active user community on google 
groups that we intend to migrate to Apache.

== Current Status ==
Currently, the project Apex code base is available under Apache 2.0 license 
(https://github.com/DataTorrent/Apex). Project Malhar code base is available 
under Apache 2.0 license (https://github.com/DataTorrent/Malhar). Project 
Malhar was open sourced 2 years ago which should make it easy for the project 
Malhar team to adapt to an  open, collaborative, and meritocratic environment. 
Contributors of Malhar are employees of DataTorrent or have agreed to the shift 
to Apache. Project Apex, in contrast, was developed as a proprietary, 
closed-source product, but the internal engineering practices adopted by the 
development team were common to Malhar, and should lend themselves well to an 
open  environment. DataTorrent plans to execute a software grant agreement as 
part of the launch of the incubation of Apex as an Apache project.

The DataTorrent team has always focused on building a robust end user community 
of paying and non-paying customers. We think that the existing community 
centered around the existing google groups mailing list should be relatively 
easy to transform into an Apache-style community including both users and 
developers.

=== Meritocracy ===
Our proposed list of initial committers include the current RTS R&D team, and 
our existing customers. This group will form a base for the broader community 
we will invite to collaborate on the codebase. We intend to radically expand 
the initial developer and user community by running the project in accordance 
with the "Apache Way". Users and new contributors will be treated with respect 
and welcomed. By participating in the community and providing quality 
patches/support that move the project forward, they will earn merit. They also 
will be encouraged to provide non-code contributions (documentation, events, 
presentations, community management, etc.) and will gain merit for doing so. 
Those with a proven support and quality track record will be encouraged to 
become committers.

=== Community ===
If Apex is accepted for incubation, the primary initial goal will be 
transitioning the core community towards embracing the Apache Way of project 
governance. We will solicit major existing contributors to become committers on 
the project from the start. It should be noted that the existing community is 
already more diverse in many ways than some top-level Apache projects. We 
expect that we can encourage even more diversity.

=== Core Developers ===
While a few core developers are skilled in working in openly governed Apache 
communities, most of the core developers are currently NOT affiliated with the 
ASF and would require new ICLAs before committing to the project. There would 
also be a learning curve associated with this on-boarding. Changing current 
development practices to be more open will be an important step.

=== Alignment ===
The following existing ASF projects provide related functionality as that 
provided by Apex and should be considered when reviewing Apex proposal:

Apache HadoopⓇ is a distributed storage and processing framework for very large 
datasets focusing primarily on batch processing for analytic purposes. Apex is 
a native YARN application. The Apex and Malhar roadmap includes plans to 
continue to leverage YARN, and help the YARN community develop the ability to 
support long running applications. Apex uses DFS interface of its core 
checkpoint/commit. Malhar has a large number of operators that leverage HDFS 
and other Apache projects. Our roadmap includes plans to continue to deepen the 
currently close integration with HDFS.

Apache HBase offers tabular data stored in Hadoop based on the Google Bigtable 
model. Malhar has HBase connectors to ease integration with HBase. Malhar 
roadmap includes plans to continue to enhance integration with Apache HBase.

Apache Kafka offers distributed and durable publish-subscribe messaging. Malhar 
integrates Kafka with Hadoop through feature rich connectors and supports 
ingest as well as analytical functions to incoming data. Raw data can be 
ingested from Kafka and results can be written to Kafka. Malhar roadmap 
includes plans to continue to enhance integration with Apache Kafka.

Apache Flume is a distributed, reliable, and available service for efficiently 
collecting, aggregating, and moving large amounts of log data. Malhar has Flume 
connectors to ease integration with Flume. These connectors ensures that 
ingestion with Flume is fault tolerant and thus can be done in real-time with 
the same SLA as Flume’s HDFS connectors. Malhar roadmap includes plans to 
continue to enhance integration with Apache Flume.

Apache Cassandra is a highly scalable, distributed key-value store that focuses 
on eventual consistency. Malhar has connectors to ease integration with 
Cassandra. Malhar roadmap includes plans to continue to enhance integration 
with Apache Cassandra.

Apache Accumulo is a distributed key-value store based on Google’s BigTable 
design. Malhar has connectors to ease integration with Accumulo. The Malhar 
roadmap includes plans to continue to enhance integration with Apache Accumulo.

Apache Tez is aimed at building an application framework which allows for a 
complex DAG of tasks for process data. The Apex and Malhar roadmaps include 
plans to integrate with Apache Tez but this is not currently supported.

Apache ActiveMQ and its sub project Apache Apollo offers a powerful message 
queue framework. Malhar has ActiveMQ connectors that ease integration with 
ActiveMQ.

Apache Spark is an engine for processing large datasets, typically in a Hadoop 
cluster. Malhar project makes it easy for users to integrate with Spark. The 
Malhar roadmap includes plans to continue to enhance integration with Apache 
Spark.

Apache Flink is an engine for scalable batch and stream data processing. Malhar 
project makes it easy for users to integrate with Flink. There is overlap in 
how Flink leverages data-in-motion architecture for both stream and batch 
processing, and it does subscribe to our thought process that data-in-motion 
can handle both stream and batch, meanwhile a batch only engine will find it 
harder to manage streams. We differ in terms of how we handle operability, user 
defined code, metrics, webservices etc. Apex is very operational oriented, 
while Flink has much more focus on functional elements. Malhar and rapid 
availability of common business logic is another differentiator. We believe 
both these approaches are valid and the community and innovation will gain by 
through cross pollination. We plan to integrate with Apache Flink via HDFS for 
now.

Apache Hive software facilitates querying and managing large datasets residing 
in distributed storage. Malhar project makes it easy for users to integrate 
with Apache Hive. The Malhar roadmap includes plans to continue to enhance 
integration with Apache Hive.

Apache Pig is a platform for analyzing large data sets.  Pig consists of a 
high-level language for expressing data analysis programs, coupled with 
infrastructure for evaluating these programs. The Apex and Malhar roadmaps 
include plans to integrate with Apache Pig.

Apache Storm is a distributed realtime computation system. Malhar makes it easy 
for users to integrate with Apache Storm. We plan to integrate with Apache 
Storm via HDFS for now. Malhar roadmaps include plans to continue to support 
mechanism for integration with Apache Storm.

Apache Samza is a distributed stream processing framework. Malhar makes it easy 
for users to integrate with Apache Samza. We plan to integrate with Apache 
Samza via HDFS or Apache Kafka for now. Malhar roadmaps include plans to 
continue to support mechanism for integration with Apache Samza.

Apache Slider is a YARN application to deploy existing distributed applications 
on YARN, monitor them, and make them larger or smaller as desired even when the 
application is running. Once Slider matures, we will take a look at close 
integration of Apex with Slider.

Project Malhar and Apex are aligned to many more Apache projects and other open 
source projects as ease of integration with other technologies is one of the 
primary goals of this project. These include Apache Solr, ElasticSearch, 
MongoDB, Aerospike, ZeroMQ, CouchDB, CouchBase, MemCache, Redis, RabbitMQ, 
Apache Derby.

== Known Risks ==
Development has been sponsored mostly by a single company (DataTorrent, Inc.) 
thus far and coordinated mainly by the core DataTorrent RTS and Malhar team, 
with active participation from our current customers.

For the project to fully transition to the Apache Way governance model, 
development must shift towards the merit-centric model of growing a community 
of contributors balanced with the needs for extreme stability and core 
implementation coherency.

The tools and development practices in place for the DataTorrent RTS and Malhar 
products are compatible with the ASF infrastructure and thus we do not 
anticipate any on-boarding pains. Migration from the current GitHub repository 
is also expected to be straightforward.

=== Orphaned products ===
DataTorrent is fully committed to DataTorrent Apex and Malhar and the product 
will continue to be based on the Apex project. Moreover, DataTorrent has a 
vested interest in making Apex succeed by driving its close integration with 
sister ASF projects. We expect this to further reduce the risk of orphaning the 
product.

=== Inexperience with Open Source ===
DataTorrent has embraced open source software by open sourcing Malhar project 
under Apache 2.0 license. The DataTorrent team includes veterans from the 
Yahoo! Hadoop team. Although some of the initial committers have not been 
developers on an entirely open source, community-driven project, we expect to 
bring to bear the open development practices of Malhar to the Apex project. 
Additionally, several ASF veterans agreed to mentor the project and are listed 
in this proposal. The project will rely on their guidance and collective wisdom 
to quickly transition the entire team of initial committers towards practicing 
the Apache Way. DataTorrent is also driving the Kafka on YARN (KOYA) initiative.

=== Homogeneous Developers ===
While most of the initial committers are employed by DataTorrent, we have 
already seen a healthy level of interest from our existing customers and 
partners. We intend to convert that interest directly into participation and 
will be investing in activities to recruit additional committers from other 
companies.

=== Reliance on Salaried Developers ===
Most of the contributors are paid to work in the Big Data space. While they 
might wander from their current employers, they are unlikely to venture far 
from their core expertises and thus will continue to be engaged with the 
project regardless of their current employers.

=== Relationships with Other Apache Products ===
As mentioned in the Alignment section, Apex may consider various degrees of 
integration and code exchange with Apache Hadoop (YARN and HDFS), Apache Kafka, 
Apache HBase, Apache Flume, Apache Cassandra, Apache Accumulo, Apache Tez, 
Apache Hive, Apache Pig, Apache Storm, Apache Samza, Apache Spark, Apache 
Slider. Given the success that the DataTorrent RTS product enjoyed, we expect 
integration points to be inside and outside the project. We look forward to 
collaborating with these communities as well as other communities under the 
Apache umbrella.

=== An Excessive Fascination with the Apache Brand ===
While we intend to leverage the Apache ‘branding’ when talking to other 
projects as testament of our project’s ‘neutrality’, we have no plans for 
making use of Apache brand in press releases nor posting billboards advertising 
acceptance of Apex into Apache Incubator.


== Documentation ==
See documentation for the current state of the project documentation available 
as part of the GitHub repositories - https://github.com/DataTorrent/Apex; 
https://github.com/DataTorrent/Malhar. In addition a list of demos that serve 
as a how to guide are available at 
https://github.com/DataTorrent/Malhar/tree/master/demos

== Initial Source ==
DataTorrent has released the source code for Apex under Apache 2.0 License at 
https://github.com/DataTorrent/Apex, and that of Malhar under Apache 2.0 
licence at https://github.com/DataTorrent/Malhar. We encourage ASF community 
members interested in this proposal to download the source code, review it and 
try out the software.

== Source and Intellectual Property Submission Plan ==
As soon as Apex is approved to join Apache Incubator, DataTorrent will execute 
a Software Grant Agreement and the source code will be transitioned onto ASF 
infrastructure. The code is already licensed under the  Apache Software 
License, version 2.0. We know of no legal encumberments that would inhibit the 
transfer of source code to the ASF.

== External Dependencies ==
All dependencies fall under the permissive licenses categories, or weak copy 
left (http://www.apache.org/legal/resolved.html#category-b). We intend to 
remove the dependencies on GPL licensed technologies on which APex or Malhar 
depend. These technologies are optional and have been marked as such.

Embedded dependencies (relocated):
   * None

Runtime dependencies:
   * activemq-client
   * ant
   * async-http-client
   * bval-jsr303
   * commons-beanutils
   * commons-codec
   * commons-lang3
   * commons-compiler
   * embassador
   * fastutil
   * guava
   * hadoop-common
   * hadoop-common-tests
   * hadoop-yarn-client
   * httpclient
   * jackson-core-asl
   * jackson-mapper-asl
   * javax.mail
   * jersey-apache-client4
   * jersey-client
   * jetty-servlet
   * jetty-websocket
   * jline
   * kryo
   * named-regexp
   * netlet
   * rhino (GPL 2.0, optional)
   * slf4j-api
   * slf4j-log4j12
   * validation-api
   * xbean-asm5-shaded
   * zip4j

Module or optional dependencies
   * accumulo-core
   * aerospike-client
   * amqp-client
   * aws-java-sdk-kinesis
   * cassandra-driver-core
   * couchbase-client
   * CouchbaseMock
   * elasticsearch
   * geoip-api (LGPL, optional)
   * hbase
   * hbase-client
   * hbase-server
   * hive-exec
   * hive-service
   * hiveunit
   * javax.mail-api
   * jedis
   * jms-api
   * jri (GPL, optional)
   * jriengine (LGPL, optional)
   * jruby (LGPL, optional)
   * jython (PSF License, optional)
   * jzmq (LGPL, optional)
   * kafka_2.10
   * lettuce (GPL, optional)
   * libthrift
   * Memcached-Java-Client
   * mongo-java-driver
   * mqtt-client
   * mysql-connector-java (GPL2, optional)
   * org.ektorp
   * rengine (LGPL, optional)
   * rome
   * solr-core
   * solr-solrj
   * spymemcached
   * sqlite4java
   * super-csv
   * twitter4j-core
   * twitter4j-stream
   * uadetector-resources
   * org.apache.servicemix.bundles.splunk

Build only dependencies:
   * None

Test only dependencies:
   * activemq-broker
   * activemq-kahadb-store
   * greenmail
   * hadoop-yarn-server-tests
   * hsqldb
   * janino
   * junit
   * MockFtpServer
   * mockito-all
   * testng

Cryptography N/A

== Required Resources ==
=== Mailing lists ===
   * priv...@apex.incubator.apache.org (moderated subscriptions)
   * comm...@apex.incubator.apache.org
   * d...@apex.incubator.apache.org

=== Git Repository ===
   * https://git-wip-us.apache.org/repos/asf/incubator-apex-core.git
   * https://git-wip-us.apache.org/repos/asf/incubator-apex-malhar.git

=== Issue Tracking ===
   * JIRA Project Apex (APEX_CORE) // If '_' is not allowed, use APEXCORE
   * JIRA Project Malhar (APEX_MALHAR) // If '_' is not allowed use APEXMALHAR

=== Other Resources ===
   * Means of setting up regular builds for apex-core on builds.apache.org
   * Means of setting up regular builds for apex-malhar on builds.apache.org

=== Rationale for Malhar and Apex having separate git and jira ===
We managed Malhar and Apex as two repos and two jiras on purpose. Both code 
bases are released under Apache 2.0 and are proposed for incubation. In terms 
of our vision to enable innovation around a native YARN data-in-motion that 
unifies stream processing as well as batch processing Malhar and Apex go hand 
in hand. Apex has base API that consists of java api (functional), and 
attributes (operability). Malhar is a manifestation of this api, but from user 
perspective, Malhar is itself an API to leverage business logic. Over past 
three years we have found that the cadence of release and api changes in Malhar 
is much rapid than Apex and it was operationally much easier to separate them 
into their own repos. Two repos will reflect clear separation of engine (Apex) 
and operators/business logic (Malhar). It will allow or independent release 
cycles (operator change independent of engine due to stable API). We however do 
not believe in two levels of committers. We believe there should be one 
community that works across both and innovates with ideas that Malhar and Apex 
combined provide the value proposition. We are proposing that Apache incubation 
process help us to foster development of one community (mailing list, 
committers), and a yet be ok with two repos. We are proposing that this be 
taken up during incubation. Community will learn if this works. The decision on 
whether to split them into two projects be taken after the learning curve 
during incubation.

== Initial Committers ==
   * Roma Ahuja (rahuja at directv dot com)
   * Isha Arkatkar (isha at datatorrent dot com)
   * Raja Ali (raji at silverspringnet dot com)
   * Sunaina Chaudhary ( SChaudhary at directv dot com)
   * Bhupesh Chawda (bhupesh at datatorrent dot com)
   * Chaitanya Chelobu (chaitanya at datatorrent dot com)
   * Bright Chen (bright at datatorrent dot com)
   * Pradeep Dalvi (pradeep dot dalvi at datatorrent dot com)
   * Sandeep Deshmukh (sandeep at datatorrent dot com)
   * Yogi Devendra (yogi at datatorrent dot com)
   * Cem Ezberci (hasan dot ezberci at ge dot com)
   * Timothy Farkas (tim at datatorrent dot com)
   * Ilya Ganelin (ilya dot ganelin at capitalone dot com)
   * Vitthal Gogate (vitthal_gogate at yahoo dot com)
   * Parag Goradia (parag dot goradia at ge dot com)
   * Tushar Gosavi (tushar at datatorrent dot com)
   * Priyanka Gugale (priyanka at datatorrent dot com)
   * Gaurav Gupta (gaurav at datatorrent dot com)
   * Sandesh Hegde (sandesh at datatorrent dot com)
   * Siyuan Hua ( siyuan at datatorrent dot com)
   * Ajith Joseph (ajoseph at silverspring dot com)
   * Amol Kekre ( amol at datatorrent dot com)
   * Chinmay Kolhatkar ( chinmay at datatorrent dot com)
   * Pramod Immaneni ( pramod at datatorrent dot com)
   * Anuj Lal ( anuj dot lal at ge dot com)
   * Dongsu Lee (dlee3 at directv dot com)
   * Vitaly Li (blossom dot valley at gmail dot com)
   * Dean Lockgaard (dean  at datatorrent dot com)
   * Rohan Mehta (rohan_mehta at apple dot com)
   * Adi Mishra (apmishra at directv dot com, adi dot mishra at gmail dot com)
   * Chetan Narsude (chetan  at datatorrent dot com)
   * Darin Nee (dnee at silverspring dot com)
   * Alexander Parfenov (sasha at datatorrent dot com)
   * Andrew Perlitch (andy at datatorrent dot com)
   * Shubham Phatak (shubham at datatorrent dot com)
   * Ashwin Putta (ashwin at datatorrent dot com)
   * Rikin Shah (shah_rikin at yahoo dot com)
   * Luis Ramos (l dot ramos at ge dot com)
   * Munagala Ramanath (ram at datatorrent dot com)
   * Vlad Rozov (vlad dot rozov at datatorrent dot com)
   * Atri Sharma (atri dot jiit at gmail dot com)
   * Chandni Singh (chandni at datatorrent dot com)
   * Venkatesh Sivasubramanian (venkateshs at ge dot com)
   * Aniruddha Thombare (aniruddha at datatorrent dot com)
   * Jessica Wang (jessica at datatorrent dot com)
   * Thomas Weise (thomas at datatorrent dot com)
   * David Yan (david at datatorrent dot com)
   * Kevin Yang (yang dot k at ge dot com)
   * Brennon York (brennon dot york at capitalone dot com)

== Affiliations ==
   * Apple: Vitaly Li, Rohan Mehta
   * Barclays: Atri Sharma
   * Class Software: Justin Mclean
   * CapitalOne: Ilya Ganelin, Brennon York
   * DataTorrent: everyone else on this proposal
   * Datachief: Rikin Shah
   * DirecTV: Roma Ahuja, Sunaina Chaudhary, Dongsu Lee, Adi Mishra
   * E8security: Vitthal Gogate
   * General Electric: Cem Ezberci, Parag Goradia, Anuj Lal, Luis Ramos, 
Venkatesh Sivasubramanian, Kevin Yang
   * Hortonworks: Alan Gates, Taylor Goetz, Chris Nauroth, Hitesh Shah
   * MapR: Ted Dunning
   * SilverSpring Networks: Raja Ali, Ajith Joseph, Darin Nee

== Sponsors ==

=== Champion ===
Ted Dunning

=== Nominated Mentors ===

The initial mentors are listed below:
   * Ted Dunning - Apache Member, MapR
   * Alan Gates - Apache Member, Hortonworks
   * Taylor Goetz - Apache Member, Hortonworks
   * Justin Mclean - Apache Member, Class Software
   * Chris Nauroth - Apache Member, Hortonworks
   * Hitesh Shah: Apache Member, Hortonworks

=== Sponsoring Entity ===

We would like to propose Apache incubator to sponsor this project.

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