Repository: incubator-griffin-site
Updated Branches:
  refs/heads/master 1c62dc5d0 -> 1d228cf19


update logo link


Project: http://git-wip-us.apache.org/repos/asf/incubator-griffin-site/repo
Commit: 
http://git-wip-us.apache.org/repos/asf/incubator-griffin-site/commit/1d228cf1
Tree: 
http://git-wip-us.apache.org/repos/asf/incubator-griffin-site/tree/1d228cf1
Diff: 
http://git-wip-us.apache.org/repos/asf/incubator-griffin-site/diff/1d228cf1

Branch: refs/heads/master
Commit: 1d228cf194de5c0455965237bc73fe075adf0f0f
Parents: 1c62dc5
Author: William Guo <[email protected]>
Authored: Tue Apr 25 16:11:13 2017 +0800
Committer: William Guo <[email protected]>
Committed: Tue Apr 25 16:11:13 2017 +0800

----------------------------------------------------------------------
 db.json                                  | 2 +-
 themes/landscape/layout/_widget/logo.ejs | 2 +-
 2 files changed, 2 insertions(+), 2 deletions(-)
----------------------------------------------------------------------


http://git-wip-us.apache.org/repos/asf/incubator-griffin-site/blob/1d228cf1/db.json
----------------------------------------------------------------------
diff --git a/db.json b/db.json
index d25ac63..d4b1d64 100644
--- a/db.json
+++ b/db.json
@@ -1 +1 @@
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 Mailing Lists\n\[email protected] \n\n[To subscribe dev 
list](mailto:[email protected])\n\n[To unsubscribe dev 
l
 ist](mailto:[email protected])\n\n## 
Jira\n\n[https://issues.apache.org/jira/browse/GRIFFIN](https://issues.apache.org/jira/browse/GRIFFIN)\n\n##
 
Wiki\n\n[https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin](https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin)\n\n##
 Contributing\n\n- Create jira ticket to specify what you want to do\n  
```bash\n  create ticket here.\n  
https://issues.apache.org/jira/browse/GRIFFIN\n  ```\n- Create one new branch 
for this task\n  ```bash\n  git clone 
https://github.com/apache/incubator-griffin.git\n  git checkout -b 
yourNewFeatrueBranch\n  ```\n- Commit and send pr to us\n\t```\n\t###please 
associate related JIRA TICK in your comments\n\tgit commit -am \"For task 
GRIFFIN-10 , blabla...\"\n\t```\n\n- GRIFFIN IPMC will review and accept your 
pr as 
contributing.\n\n\n\n\n\n\n","source":"_posts/community.md","raw":"---\ntitle: 
Community\ndate: 2017-03-04 13:00:45\ntags:\n---\n\n## Mailing 
Lists\n\[email protected]
 cubator.apache.org \n\n[To subscribe dev 
list](mailto:[email protected])\n\n[To unsubscribe dev 
list](mailto:[email protected])\n\n## 
Jira\n\n[https://issues.apache.org/jira/browse/GRIFFIN](https://issues.apache.org/jira/browse/GRIFFIN)\n\n##
 
Wiki\n\n[https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin](https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin)\n\n##
 Contributing\n\n- Create jira ticket to specify what you want to do\n  
```bash\n  create ticket here.\n  
https://issues.apache.org/jira/browse/GRIFFIN\n  ```\n- Create one new branch 
for this task\n  ```bash\n  git clone 
https://github.com/apache/incubator-griffin.git\n  git checkout -b 
yourNewFeatrueBranch\n  ```\n- Commit and send pr to us\n\t```\n\t###please 
associate related JIRA TICK in your comments\n\tgit commit -am \"For task 
GRIFFIN-10 , blabla...\"\n\t```\n\n- GRIFFIN IPMC will review and accept your 
pr as contributing.\n\n\n\n\n\n\n","slug":"commun
 
ity","published":1,"updated":"2017-04-07T03:10:34.000Z","comments":1,"layout":"post","photos":[],"link":"","_id":"cj1x9p0ag0000m7poo7gtyp5e","content":"<h2
 id=\"Mailing-Lists\"><a href=\"#Mailing-Lists\" class=\"headerlink\" 
title=\"Mailing Lists\"></a>Mailing 
Lists</h2><p>[email protected] </p>\n<p><a 
href=\"mailto:[email protected]\"; target=\"_blank\" 
rel=\"external\">To subscribe dev list</a></p>\n<p><a 
href=\"mailto:[email protected]\"; target=\"_blank\" 
rel=\"external\">To unsubscribe dev list</a></p>\n<h2 id=\"Jira\"><a 
href=\"#Jira\" class=\"headerlink\" title=\"Jira\"></a>Jira</h2><p><a 
href=\"https://issues.apache.org/jira/browse/GRIFFIN\"; target=\"_blank\" 
rel=\"external\">https://issues.apache.org/jira/browse/GRIFFIN</a></p>\n<h2 
id=\"Wiki\"><a href=\"#Wiki\" class=\"headerlink\" 
title=\"Wiki\"></a>Wiki</h2><p><a 
href=\"https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin\"; 
target=\"_blank\" rel=\"ex
 
ternal\">https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin</a></p>\n<h2
 id=\"Contributing\"><a href=\"#Contributing\" class=\"headerlink\" 
title=\"Contributing\"></a>Contributing</h2><ul>\n<li><p>Create jira ticket to 
specify what you want to do</p>\n<figure class=\"highlight 
bash\"><table><tr><td class=\"gutter\"><pre><div class=\"line\">1</div><div 
class=\"line\">2</div></pre></td><td class=\"code\"><pre><div 
class=\"line\">create ticket here.</div><div 
class=\"line\">https://issues.apache.org/jira/browse/GRIFFIN</div></pre></td></tr></table></figure>\n</li>\n<li><p>Create
 one new branch for this task</p>\n<figure class=\"highlight 
bash\"><table><tr><td class=\"gutter\"><pre><div class=\"line\">1</div><div 
class=\"line\">2</div></pre></td><td class=\"code\"><pre><div 
class=\"line\">git <span class=\"built_in\">clone</span> 
https://github.com/apache/incubator-griffin.git</div><div class=\"line\">git 
checkout -b yourNewFeatrueBranch</div></pre></td></tr></table></figure>\n
 </li>\n<li><p>Commit and send pr to us</p>\n  <figure class=\"highlight 
plain\"><table><tr><td class=\"gutter\"><pre><div class=\"line\">1</div><div 
class=\"line\">2</div></pre></td><td class=\"code\"><pre><div 
class=\"line\">###please associate related JIRA TICK in your comments</div><div 
class=\"line\">git commit -am &quot;For task GRIFFIN-10 , 
blabla...&quot;</div></pre></td></tr></table></figure>\n</li>\n<li><p>GRIFFIN 
IPMC will review and accept your pr as 
contributing.</p>\n</li>\n</ul>\n","excerpt":"","more":"<h2 
id=\"Mailing-Lists\"><a href=\"#Mailing-Lists\" class=\"headerlink\" 
title=\"Mailing Lists\"></a>Mailing 
Lists</h2><p>[email protected] </p>\n<p><a 
href=\"mailto:[email protected]\";>To subscribe dev 
list</a></p>\n<p><a 
href=\"mailto:[email protected]\";>To unsubscribe dev 
list</a></p>\n<h2 id=\"Jira\"><a href=\"#Jira\" class=\"headerlink\" 
title=\"Jira\"></a>Jira</h2><p><a href=\"https://issues.apache.
 
org/jira/browse/GRIFFIN\">https://issues.apache.org/jira/browse/GRIFFIN</a></p>\n<h2
 id=\"Wiki\"><a href=\"#Wiki\" class=\"headerlink\" 
title=\"Wiki\"></a>Wiki</h2><p><a 
href=\"https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin\";>https://cwiki.apache.org/confluence/display/GRIFFIN/Griffin</a></p>\n<h2
 id=\"Contributing\"><a href=\"#Contributing\" class=\"headerlink\" 
title=\"Contributing\"></a>Contributing</h2><ul>\n<li><p>Create jira ticket to 
specify what you want to do</p>\n<figure class=\"highlight 
bash\"><table><tr><td class=\"gutter\"><pre><div class=\"line\">1</div><div 
class=\"line\">2</div></pre></td><td class=\"code\"><pre><div 
class=\"line\">create ticket here.</div><div 
class=\"line\">https://issues.apache.org/jira/browse/GRIFFIN</div></pre></td></tr></table></figure>\n</li>\n<li><p>Create
 one new branch for this task</p>\n<figure class=\"highlight 
bash\"><table><tr><td class=\"gutter\"><pre><div class=\"line\">1</div><div 
class=\"line\">2</div></pre></td><td cl
 ass=\"code\"><pre><div class=\"line\">git <span 
class=\"built_in\">clone</span> 
https://github.com/apache/incubator-griffin.git</div><div class=\"line\">git 
checkout -b 
yourNewFeatrueBranch</div></pre></td></tr></table></figure>\n</li>\n<li><p>Commit
 and send pr to us</p>\n  <figure class=\"highlight plain\"><table><tr><td 
class=\"gutter\"><pre><div class=\"line\">1</div><div 
class=\"line\">2</div></pre></td><td class=\"code\"><pre><div 
class=\"line\">###please associate related JIRA TICK in your comments</div><div 
class=\"line\">git commit -am &quot;For task GRIFFIN-10 , 
blabla...&quot;</div></pre></td></tr></table></figure>\n</li>\n<li><p>GRIFFIN 
IPMC will review and accept your pr as 
contributing.</p>\n</li>\n</ul>\n"},{"title":"Apache 
Griffin","date":"2017-03-30T02:49:47.000Z","_content":"\n## Abstract\nApache 
Griffin is a Data Quality Service platform built on Apache Hadoop and Apache 
Spark. It provides a framework process for defining data quality model, 
executing data quality
  measurement, automating data profiling and validation, as well as a unified 
data quality visualization across multiple data systems.  It tries to address 
the data quality challenges in big data and streaming context.\n\n\n## Overview 
of Apache Griffin  \nAt eBay, when people use big data (Hadoop or other 
streaming systems), measurement of data quality is a big challenge. Different 
teams have built customized tools to detect and analyze data quality issues 
within their own domains. As a platform organization, we think of taking a 
platform approach to commonly occurring patterns. As such, we are building a 
platform to provide shared Infrastructure and generic features to solve common 
data quality pain points. This would enable us to build trusted data 
assets.\n\nCurrently it is very difficult and costly to do data quality 
validation when we have large volumes of related data flowing across 
multi-platforms (streaming and batch). Take eBay's Real-time Personalization 
Platform as a samp
 le; Everyday we have to validate the data quality for ~600M records. Data 
quality often becomes one big challenge in this complex environment and massive 
scale.\n\nWe detect the following at eBay:\n\n1. Lack of an end-to-end, unified 
view of data quality from multiple data sources to target applications that 
takes into account the lineage of the data. This results in a long time to 
identify and fix data quality issues.\n2. Lack of a system to measure data 
quality in streaming mode through self-service. The need is for a system where 
datasets can be registered, data quality models can be defined, data quality 
can be visualized and monitored using a simple tool and teams alerted when an 
issue is detected.\n3. Lack of a Shared platform and API Service. Every team 
should not have to apply and manage own hardware and software infrastructure to 
solve this common problem.\n\nWith these in mind, we decided to build Apache 
Griffin - A data quality service that aims to solve the above short-c
 omings.\n\nApache Griffin includes:\n\n**Data Quality Model Engine**: Apache 
Griffin is model driven solution, user can choose various data quality 
dimension to execute his/her data quality validation based on selected target 
data-set or source data-set ( as the golden reference data). It has 
corresponding library supporting it in back-end for the following 
measurement:\n\n - Accuracy - Does data reflect the real-world objects or a 
verifiable source\n - Completeness - Is all necessary data present\n - Validity 
-  Are all data values within the data domains specified by the business\n - 
Timeliness - Is the data available at the time needed\n - Anomaly detection -  
Pre-built algorithm functions for the identification of items, events or 
observations which do not conform to an expected pattern or other items in a 
dataset\n - Data Profiling - Apply statistical analysis and assessment of data 
values within a dataset for consistency, uniqueness and logic.\n\n**Data 
Collection Layer**:\n\n
 We support two kinds of data sources, batch data and real time data.\n\nFor 
batch mode, we can collect data source from  our Hadoop platform by various 
data connectors.\n\nFor real time mode, we can connect with messaging system 
like Kafka to near real time analysis.\n\n**Data Process and Storage 
Layer**:\n\nFor batch analysis, our data quality model will compute data 
quality metrics in our spark cluster based on data source in hadoop.\n\nFor 
near real time analysis, we consume data from messaging system, then our data 
quality model will compute our real time data quality metrics in our spark 
cluster. for data storage, we use time series database in our back end to 
fulfill front end request.\n\n**Apache Griffin Service**:\n\nWe have RESTful 
web services to accomplish all the functionalities of Apache Griffin, such as 
register data-set, create data quality model, publish metrics, retrieve 
metrics, add subscription, etc. So, the developers can develop their own user 
interface based on
  these web serivces.\n\n## Main business process\nHere's the business process 
diagram\n\n![](/images/Business_Process.png)\n\n## Rationale\nThe challenge we 
face at eBay is that our data volume is becoming bigger and bigger, systems 
process become more complex, while we do not have a unified data quality 
solution to ensure the trusted data sets which provide confidences on data 
quality to our data consumers.  The key challenges on data quality 
includes:\n\n1. Existing commercial data quality solution cannot address data 
quality lineage among systems, cannot scale out to support fast growing data at 
eBay\n2. Existing eBay's domain specific tools take a long time to identify and 
fix poor data quality when data flowed through multiple systems\n3. Business 
logic becomes complex, requires data quality system much flexible.\n4. Some 
data quality issues do have business impact on user experiences, revenue, 
efficiency & compliance.\n5. Communication overhead of data quality metrics, 
typical
 ly in a big organization, which involve different teams.\n\nThe idea of  
Apache Apache Griffin is to provide Data Quality validation as a Service, to 
allow data engineers and data consumers to have:\n\n - Near real-time 
understanding of the data quality health of your data pipelines with end-to-end 
monitoring, all in one place.\n - Profiling, detecting and correlating issues 
and providing recommendations that drive rapid and focused troubleshooting\n - 
A centralized data quality model management system including rule, metadata, 
scheduler etc.  \n - Native code generation to run everywhere, including 
Hadoop, Kafka, Spark, etc.\n - One set of tools to build data quality pipelines 
across all eBay data platforms.\n\n\n## Disclaimer\n\nApache Griffin is an 
effort undergoing incubation at The Apache Software Foundation (ASF), sponsored 
by the Apache Incubator. Incubation is required of all newly accepted projects 
until a further review indicates that the infrastructure, communications, an
 d decision making process have stabilized in a manner consistent with other 
successful ASF projects. While incubation status is not necessarily a 
reflection of the completeness or stability of the code, it does indicate that 
the project has yet to be fully endorsed by the 
ASF.\n\n\n","source":"_posts/home.md","raw":"---\ntitle: Apache Griffin\ndate: 
2017-03-30 10:49:47\n---\n\n## Abstract\nApache Griffin is a Data Quality 
Service platform built on Apache Hadoop and Apache Spark. It provides a 
framework process for defining data quality model, executing data quality 
measurement, automating data profiling and validation, as well as a unified 
data quality visualization across multiple data systems.  It tries to address 
the data quality challenges in big data and streaming context.\n\n\n## Overview 
of Apache Griffin  \nAt eBay, when people use big data (Hadoop or other 
streaming systems), measurement of data quality is a big challenge. Different 
teams have built customized tools to dete
 ct and analyze data quality issues within their own domains. As a platform 
organization, we think of taking a platform approach to commonly occurring 
patterns. As such, we are building a platform to provide shared Infrastructure 
and generic features to solve common data quality pain points. This would 
enable us to build trusted data assets.\n\nCurrently it is very difficult and 
costly to do data quality validation when we have large volumes of related data 
flowing across multi-platforms (streaming and batch). Take eBay's Real-time 
Personalization Platform as a sample; Everyday we have to validate the data 
quality for ~600M records. Data quality often becomes one big challenge in this 
complex environment and massive scale.\n\nWe detect the following at 
eBay:\n\n1. Lack of an end-to-end, unified view of data quality from multiple 
data sources to target applications that takes into account the lineage of the 
data. This results in a long time to identify and fix data quality issues.\n2.
  Lack of a system to measure data quality in streaming mode through 
self-service. The need is for a system where datasets can be registered, data 
quality models can be defined, data quality can be visualized and monitored 
using a simple tool and teams alerted when an issue is detected.\n3. Lack of a 
Shared platform and API Service. Every team should not have to apply and manage 
own hardware and software infrastructure to solve this common problem.\n\nWith 
these in mind, we decided to build Apache Griffin - A data quality service that 
aims to solve the above short-comings.\n\nApache Griffin includes:\n\n**Data 
Quality Model Engine**: Apache Griffin is model driven solution, user can 
choose various data quality dimension to execute his/her data quality 
validation based on selected target data-set or source data-set ( as the golden 
reference data). It has corresponding library supporting it in back-end for the 
following measurement:\n\n - Accuracy - Does data reflect the real-world obj
 ects or a verifiable source\n - Completeness - Is all necessary data present\n 
- Validity -  Are all data values within the data domains specified by the 
business\n - Timeliness - Is the data available at the time needed\n - Anomaly 
detection -  Pre-built algorithm functions for the identification of items, 
events or observations which do not conform to an expected pattern or other 
items in a dataset\n - Data Profiling - Apply statistical analysis and 
assessment of data values within a dataset for consistency, uniqueness and 
logic.\n\n**Data Collection Layer**:\n\nWe support two kinds of data sources, 
batch data and real time data.\n\nFor batch mode, we can collect data source 
from  our Hadoop platform by various data connectors.\n\nFor real time mode, we 
can connect with messaging system like Kafka to near real time 
analysis.\n\n**Data Process and Storage Layer**:\n\nFor batch analysis, our 
data quality model will compute data quality metrics in our spark cluster based 
on data sour
 ce in hadoop.\n\nFor near real time analysis, we consume data from messaging 
system, then our data quality model will compute our real time data quality 
metrics in our spark cluster. for data storage, we use time series database in 
our back end to fulfill front end request.\n\n**Apache Griffin Service**:\n\nWe 
have RESTful web services to accomplish all the functionalities of Apache 
Griffin, such as register data-set, create data quality model, publish metrics, 
retrieve metrics, add subscription, etc. So, the developers can develop their 
own user interface based on these web serivces.\n\n## Main business 
process\nHere's the business process 
diagram\n\n![](/images/Business_Process.png)\n\n## Rationale\nThe challenge we 
face at eBay is that our data volume is becoming bigger and bigger, systems 
process become more complex, while we do not have a unified data quality 
solution to ensure the trusted data sets which provide confidences on data 
quality to our data consumers.  The key chall
 enges on data quality includes:\n\n1. Existing commercial data quality 
solution cannot address data quality lineage among systems, cannot scale out to 
support fast growing data at eBay\n2. Existing eBay's domain specific tools 
take a long time to identify and fix poor data quality when data flowed through 
multiple systems\n3. Business logic becomes complex, requires data quality 
system much flexible.\n4. Some data quality issues do have business impact on 
user experiences, revenue, efficiency & compliance.\n5. Communication overhead 
of data quality metrics, typically in a big organization, which involve 
different teams.\n\nThe idea of  Apache Apache Griffin is to provide Data 
Quality validation as a Service, to allow data engineers and data consumers to 
have:\n\n - Near real-time understanding of the data quality health of your 
data pipelines with end-to-end monitoring, all in one place.\n - Profiling, 
detecting and correlating issues and providing recommendations that drive rapid 
a
 nd focused troubleshooting\n - A centralized data quality model management 
system including rule, metadata, scheduler etc.  \n - Native code generation to 
run everywhere, including Hadoop, Kafka, Spark, etc.\n - One set of tools to 
build data quality pipelines across all eBay data platforms.\n\n\n## 
Disclaimer\n\nApache Griffin is an effort undergoing incubation at The Apache 
Software Foundation (ASF), sponsored by the Apache Incubator. Incubation is 
required of all newly accepted projects until a further review indicates that 
the infrastructure, communications, and decision making process have stabilized 
in a manner consistent with other successful ASF projects. While incubation 
status is not necessarily a reflection of the completeness or stability of the 
code, it does indicate that the project has yet to be fully endorsed by the 
ASF.\n\n\n","slug":"home","published":1,"updated":"2017-04-21T03:08:14.000Z","comments":1,"layout":"post","photos":[],"link":"","_id":"cj1x9p0aj0001m7po5
 rjxluzo","content":"<h2 id=\"Abstract\"><a href=\"#Abstract\" 
class=\"headerlink\" title=\"Abstract\"></a>Abstract</h2><p>Apache Griffin is a 
Data Quality Service platform built on Apache Hadoop and Apache Spark. It 
provides a framework process for defining data quality model, executing data 
quality measurement, automating data profiling and validation, as well as a 
unified data quality visualization across multiple data systems.  It tries to 
address the data quality challenges in big data and streaming context.</p>\n<h2 
id=\"Overview-of-Apache-Griffin\"><a href=\"#Overview-of-Apache-Griffin\" 
class=\"headerlink\" title=\"Overview of Apache Griffin\"></a>Overview of 
Apache Griffin</h2><p>At eBay, when people use big data (Hadoop or other 
streaming systems), measurement of data quality is a big challenge. Different 
teams have built customized tools to detect and analyze data quality issues 
within their own domains. As a platform organization, we think of taking a 
platform approach to
  commonly occurring patterns. As such, we are building a platform to provide 
shared Infrastructure and generic features to solve common data quality pain 
points. This would enable us to build trusted data assets.</p>\n<p>Currently it 
is very difficult and costly to do data quality validation when we have large 
volumes of related data flowing across multi-platforms (streaming and batch). 
Take eBay’s Real-time Personalization Platform as a sample; Everyday we have 
to validate the data quality for ~600M records. Data quality often becomes one 
big challenge in this complex environment and massive scale.</p>\n<p>We detect 
the following at eBay:</p>\n<ol>\n<li>Lack of an end-to-end, unified view of 
data quality from multiple data sources to target applications that takes into 
account the lineage of the data. This results in a long time to identify and 
fix data quality issues.</li>\n<li>Lack of a system to measure data quality in 
streaming mode through self-service. The need is for a sys
 tem where datasets can be registered, data quality models can be defined, data 
quality can be visualized and monitored using a simple tool and teams alerted 
when an issue is detected.</li>\n<li>Lack of a Shared platform and API Service. 
Every team should not have to apply and manage own hardware and software 
infrastructure to solve this common problem.</li>\n</ol>\n<p>With these in 
mind, we decided to build Apache Griffin - A data quality service that aims to 
solve the above short-comings.</p>\n<p>Apache Griffin 
includes:</p>\n<p><strong>Data Quality Model Engine</strong>: Apache Griffin is 
model driven solution, user can choose various data quality dimension to 
execute his/her data quality validation based on selected target data-set or 
source data-set ( as the golden reference data). It has corresponding library 
supporting it in back-end for the following 
measurement:</p>\n<ul>\n<li>Accuracy - Does data reflect the real-world objects 
or a verifiable source</li>\n<li>Completeness -
  Is all necessary data present</li>\n<li>Validity -  Are all data values 
within the data domains specified by the business</li>\n<li>Timeliness - Is the 
data available at the time needed</li>\n<li>Anomaly detection -  Pre-built 
algorithm functions for the identification of items, events or observations 
which do not conform to an expected pattern or other items in a 
dataset</li>\n<li>Data Profiling - Apply statistical analysis and assessment of 
data values within a dataset for consistency, uniqueness and 
logic.</li>\n</ul>\n<p><strong>Data Collection Layer</strong>:</p>\n<p>We 
support two kinds of data sources, batch data and real time data.</p>\n<p>For 
batch mode, we can collect data source from  our Hadoop platform by various 
data connectors.</p>\n<p>For real time mode, we can connect with messaging 
system like Kafka to near real time analysis.</p>\n<p><strong>Data Process and 
Storage Layer</strong>:</p>\n<p>For batch analysis, our data quality model will 
compute data quality metri
 cs in our spark cluster based on data source in hadoop.</p>\n<p>For near real 
time analysis, we consume data from messaging system, then our data quality 
model will compute our real time data quality metrics in our spark cluster. for 
data storage, we use time series database in our back end to fulfill front end 
request.</p>\n<p><strong>Apache Griffin Service</strong>:</p>\n<p>We have 
RESTful web services to accomplish all the functionalities of Apache Griffin, 
such as register data-set, create data quality model, publish metrics, retrieve 
metrics, add subscription, etc. So, the developers can develop their own user 
interface based on these web serivces.</p>\n<h2 id=\"Main-business-process\"><a 
href=\"#Main-business-process\" class=\"headerlink\" title=\"Main business 
process\"></a>Main business process</h2><p>Here’s the business process 
diagram</p>\n<p><img src=\"/images/Business_Process.png\" alt=\"\"></p>\n<h2 
id=\"Rationale\"><a href=\"#Rationale\" class=\"headerlink\" title=\"
 Rationale\"></a>Rationale</h2><p>The challenge we face at eBay is that our 
data volume is becoming bigger and bigger, systems process become more complex, 
while we do not have a unified data quality solution to ensure the trusted data 
sets which provide confidences on data quality to our data consumers.  The key 
challenges on data quality includes:</p>\n<ol>\n<li>Existing commercial data 
quality solution cannot address data quality lineage among systems, cannot 
scale out to support fast growing data at eBay</li>\n<li>Existing eBay’s 
domain specific tools take a long time to identify and fix poor data quality 
when data flowed through multiple systems</li>\n<li>Business logic becomes 
complex, requires data quality system much flexible.</li>\n<li>Some data 
quality issues do have business impact on user experiences, revenue, efficiency 
&amp; compliance.</li>\n<li>Communication overhead of data quality metrics, 
typically in a big organization, which involve different teams.</li>\n</ol>
 \n<p>The idea of  Apache Apache Griffin is to provide Data Quality validation 
as a Service, to allow data engineers and data consumers to 
have:</p>\n<ul>\n<li>Near real-time understanding of the data quality health of 
your data pipelines with end-to-end monitoring, all in one 
place.</li>\n<li>Profiling, detecting and correlating issues and providing 
recommendations that drive rapid and focused troubleshooting</li>\n<li>A 
centralized data quality model management system including rule, metadata, 
scheduler etc.  </li>\n<li>Native code generation to run everywhere, including 
Hadoop, Kafka, Spark, etc.</li>\n<li>One set of tools to build data quality 
pipelines across all eBay data platforms.</li>\n</ul>\n<h2 id=\"Disclaimer\"><a 
href=\"#Disclaimer\" class=\"headerlink\" 
title=\"Disclaimer\"></a>Disclaimer</h2><p>Apache Griffin is an effort 
undergoing incubation at The Apache Software Foundation (ASF), sponsored by the 
Apache Incubator. Incubation is required of all newly accepted projec
 ts until a further review indicates that the infrastructure, communications, 
and decision making process have stabilized in a manner consistent with other 
successful ASF projects. While incubation status is not necessarily a 
reflection of the completeness or stability of the code, it does indicate that 
the project has yet to be fully endorsed by the 
ASF.</p>\n","excerpt":"","more":"<h2 id=\"Abstract\"><a href=\"#Abstract\" 
class=\"headerlink\" title=\"Abstract\"></a>Abstract</h2><p>Apache Griffin is a 
Data Quality Service platform built on Apache Hadoop and Apache Spark. It 
provides a framework process for defining data quality model, executing data 
quality measurement, automating data profiling and validation, as well as a 
unified data quality visualization across multiple data systems.  It tries to 
address the data quality challenges in big data and streaming context.</p>\n<h2 
id=\"Overview-of-Apache-Griffin\"><a href=\"#Overview-of-Apache-Griffin\" 
class=\"headerlink\" title=\"Ov
 erview of Apache Griffin\"></a>Overview of Apache Griffin</h2><p>At eBay, when 
people use big data (Hadoop or other streaming systems), measurement of data 
quality is a big challenge. Different teams have built customized tools to 
detect and analyze data quality issues within their own domains. As a platform 
organization, we think of taking a platform approach to commonly occurring 
patterns. As such, we are building a platform to provide shared Infrastructure 
and generic features to solve common data quality pain points. This would 
enable us to build trusted data assets.</p>\n<p>Currently it is very difficult 
and costly to do data quality validation when we have large volumes of related 
data flowing across multi-platforms (streaming and batch). Take eBay’s 
Real-time Personalization Platform as a sample; Everyday we have to validate 
the data quality for ~600M records. Data quality often becomes one big 
challenge in this complex environment and massive scale.</p>\n<p>We detect the f
 ollowing at eBay:</p>\n<ol>\n<li>Lack of an end-to-end, unified view of data 
quality from multiple data sources to target applications that takes into 
account the lineage of the data. This results in a long time to identify and 
fix data quality issues.</li>\n<li>Lack of a system to measure data quality in 
streaming mode through self-service. The need is for a system where datasets 
can be registered, data quality models can be defined, data quality can be 
visualized and monitored using a simple tool and teams alerted when an issue is 
detected.</li>\n<li>Lack of a Shared platform and API Service. Every team 
should not have to apply and manage own hardware and software infrastructure to 
solve this common problem.</li>\n</ol>\n<p>With these in mind, we decided to 
build Apache Griffin - A data quality service that aims to solve the above 
short-comings.</p>\n<p>Apache Griffin includes:</p>\n<p><strong>Data Quality 
Model Engine</strong>: Apache Griffin is model driven solution, user can ch
 oose various data quality dimension to execute his/her data quality validation 
based on selected target data-set or source data-set ( as the golden reference 
data). It has corresponding library supporting it in back-end for the following 
measurement:</p>\n<ul>\n<li>Accuracy - Does data reflect the real-world objects 
or a verifiable source</li>\n<li>Completeness - Is all necessary data 
present</li>\n<li>Validity -  Are all data values within the data domains 
specified by the business</li>\n<li>Timeliness - Is the data available at the 
time needed</li>\n<li>Anomaly detection -  Pre-built algorithm functions for 
the identification of items, events or observations which do not conform to an 
expected pattern or other items in a dataset</li>\n<li>Data Profiling - Apply 
statistical analysis and assessment of data values within a dataset for 
consistency, uniqueness and logic.</li>\n</ul>\n<p><strong>Data Collection 
Layer</strong>:</p>\n<p>We support two kinds of data sources, batch data and
  real time data.</p>\n<p>For batch mode, we can collect data source from  our 
Hadoop platform by various data connectors.</p>\n<p>For real time mode, we can 
connect with messaging system like Kafka to near real time 
analysis.</p>\n<p><strong>Data Process and Storage Layer</strong>:</p>\n<p>For 
batch analysis, our data quality model will compute data quality metrics in our 
spark cluster based on data source in hadoop.</p>\n<p>For near real time 
analysis, we consume data from messaging system, then our data quality model 
will compute our real time data quality metrics in our spark cluster. for data 
storage, we use time series database in our back end to fulfill front end 
request.</p>\n<p><strong>Apache Griffin Service</strong>:</p>\n<p>We have 
RESTful web services to accomplish all the functionalities of Apache Griffin, 
such as register data-set, create data quality model, publish metrics, retrieve 
metrics, add subscription, etc. So, the developers can develop their own user 
interface
  based on these web serivces.</p>\n<h2 id=\"Main-business-process\"><a 
href=\"#Main-business-process\" class=\"headerlink\" title=\"Main business 
process\"></a>Main business process</h2><p>Here’s the business process 
diagram</p>\n<p><img src=\"/images/Business_Process.png\" alt=\"\"></p>\n<h2 
id=\"Rationale\"><a href=\"#Rationale\" class=\"headerlink\" 
title=\"Rationale\"></a>Rationale</h2><p>The challenge we face at eBay is that 
our data volume is becoming bigger and bigger, systems process become more 
complex, while we do not have a unified data quality solution to ensure the 
trusted data sets which provide confidences on data quality to our data 
consumers.  The key challenges on data quality 
includes:</p>\n<ol>\n<li>Existing commercial data quality solution cannot 
address data quality lineage among systems, cannot scale out to support fast 
growing data at eBay</li>\n<li>Existing eBay’s domain specific tools take a 
long time to identify and fix poor data quality when data flow
 ed through multiple systems</li>\n<li>Business logic becomes complex, requires 
data quality system much flexible.</li>\n<li>Some data quality issues do have 
business impact on user experiences, revenue, efficiency &amp; 
compliance.</li>\n<li>Communication overhead of data quality metrics, typically 
in a big organization, which involve different teams.</li>\n</ol>\n<p>The idea 
of  Apache Apache Griffin is to provide Data Quality validation as a Service, 
to allow data engineers and data consumers to have:</p>\n<ul>\n<li>Near 
real-time understanding of the data quality health of your data pipelines with 
end-to-end monitoring, all in one place.</li>\n<li>Profiling, detecting and 
correlating issues and providing recommendations that drive rapid and focused 
troubleshooting</li>\n<li>A centralized data quality model management system 
including rule, metadata, scheduler etc.  </li>\n<li>Native code generation to 
run everywhere, including Hadoop, Kafka, Spark, etc.</li>\n<li>One set of tools
  to build data quality pipelines across all eBay data 
platforms.</li>\n</ul>\n<h2 id=\"Disclaimer\"><a href=\"#Disclaimer\" 
class=\"headerlink\" title=\"Disclaimer\"></a>Disclaimer</h2><p>Apache Griffin 
is an effort undergoing incubation at The Apache Software Foundation (ASF), 
sponsored by the Apache Incubator. Incubation is required of all newly accepted 
projects until a further review indicates that the infrastructure, 
communications, and decision making process have stabilized in a manner 
consistent with other successful ASF projects. While incubation status is not 
necessarily a reflection of the completeness or stability of the code, it does 
indicate that the project has yet to be fully endorsed by the 
ASF.</p>\n"},{"title":"Plan","date":"2017-03-03T02:49:47.000Z","_content":"\n## 
Features\n\n| Group        | Component           | Description  |\n| 
------------- |:-------------:| -----:|\n| Measure      | accuracy | accuracy 
measure between single source of truth and target |\n
 | Measure      | profiling | profiling target data asset, providing statistics 
by different rules or dimensions |\n| Measure      | completeness | are all 
data persent|\n| Measure      | timeliness | are data available at the 
specified time  |\n| Measure      | anomaly detection | data asset conform to 
an expected pattern or not |\n| Measure      | validity | are all data valid or 
not according to domain business |\n| Service      | web service | restful 
service accessing data assets|\n| Web UI      | ui page | web page to explore 
apache griffin features|\n| Connector      | spark connector | execute jobs in 
spark cluster|\n| Schedule      | schedule | schedule measure jobs on different 
clusters|\n\n## Plan\n\n#### 2017.04 batch accuracy onboard\n\n\n- Week01: 
headless batch accuracy measure\n  * headless batch accuracy measure use case 
onboard.\n  * headless batch accuracy measure usage document.\n\n- Week02: 
batch accuracy measure with service\n  * release batch accuracy measure w
 ith service enabled. \n  * end2end headless workable use case, including 
guidance, metrics report. \n  * prepare data in hive, explore data asset from 
ui, generate accuracy measure in ui, trigger accuracy measure in script.\n\n- 
Week03: batch accuracy measure with UI Page\n  * UI Page refine: remove 'create 
data asset' \n  * end2end ui enabled workable use case. \n  * prepare data in 
hive, explore data asset from ui, generate accuracy measure in ui, trigger 
accuracy measure in script.\n\n- Week04: release batch accuracy measure with 
UI, Service, Scheduler, Measure.\n  * end to end full pipeline use case 
enabled.\n\n\n#### 2017.05 streaming accuracy P2\n\n#### 2017.06 streaming 
accuracy onboard P2\n\n#### 2017.07 schedule P4\n\n#### 2017.08 profiling 
P3\n\n#### 2017.09 completeness P2\n\n#### 2017.10 timeliness P2\n\n#### 
2017.11 anomaly detection P3\n\n#### 2017.12 validity P3\n\n\n## Release 
Notes\n\n2017.03.30 release streaming measures\n\nWeekly updates\n\nwell planed 
and scalabl
 e \n\n\npriority/epic/story/breakdown to backlog task.\n\n3 
measures\n\n\n\n\n\n","source":"_posts/plan.md","raw":"---\ntitle: Plan\ndate: 
2017-03-03 10:49:47\ntags:\n---\n\n## Features\n\n| Group        | Component    
       | Description  |\n| ------------- |:-------------:| -----:|\n| Measure   
   | accuracy | accuracy measure between single source of truth and target |\n| 
Measure      | profiling | profiling target data asset, providing statistics by 
different rules or dimensions |\n| Measure      | completeness | are all data 
persent|\n| Measure      | timeliness | are data available at the specified 
time  |\n| Measure      | anomaly detection | data asset conform to an expected 
pattern or not |\n| Measure      | validity | are all data valid or not 
according to domain business |\n| Service      | web service | restful service 
accessing data assets|\n| Web UI      | ui page | web page to explore apache 
griffin features|\n| Connector      | spark connector | execute jobs in spar
 k cluster|\n| Schedule      | schedule | schedule measure jobs on different 
clusters|\n\n## Plan\n\n#### 2017.04 batch accuracy onboard\n\n\n- Week01: 
headless batch accuracy measure\n  * headless batch accuracy measure use case 
onboard.\n  * headless batch accuracy measure usage document.\n\n- Week02: 
batch accuracy measure with service\n  * release batch accuracy measure with 
service enabled. \n  * end2end headless workable use case, including guidance, 
metrics report. \n  * prepare data in hive, explore data asset from ui, 
generate accuracy measure in ui, trigger accuracy measure in script.\n\n- 
Week03: batch accuracy measure with UI Page\n  * UI Page refine: remove 'create 
data asset' \n  * end2end ui enabled workable use case. \n  * prepare data in 
hive, explore data asset from ui, generate accuracy measure in ui, trigger 
accuracy measure in script.\n\n- Week04: release batch accuracy measure with 
UI, Service, Scheduler, Measure.\n  * end to end full pipeline use case 
enabled.\
 n\n\n#### 2017.05 streaming accuracy P2\n\n#### 2017.06 streaming accuracy 
onboard P2\n\n#### 2017.07 schedule P4\n\n#### 2017.08 profiling P3\n\n#### 
2017.09 completeness P2\n\n#### 2017.10 timeliness P2\n\n#### 2017.11 anomaly 
detection P3\n\n#### 2017.12 validity P3\n\n\n## Release Notes\n\n2017.03.30 
release streaming measures\n\nWeekly updates\n\nwell planed and scalable 
\n\n\npriority/epic/story/breakdown to backlog task.\n\n3 
measures\n\n\n\n\n\n","slug":"plan","published":1,"updated":"2017-04-10T08:19:49.000Z","comments":1,"layout":"post","photos":[],"link":"","_id":"cj1x9p0am0002m7pok4k152ow","content":"<h2
 id=\"Features\"><a href=\"#Features\" class=\"headerlink\" 
title=\"Features\"></a>Features</h2><table>\n<thead>\n<tr>\n<th>Group</th>\n<th 
style=\"text-align:center\">Component</th>\n<th 
style=\"text-align:right\">Description</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>Measure</td>\n<td
 style=\"text-align:center\">accuracy</td>\n<td 
style=\"text-align:right\">accuracy meas
 ure between single source of truth and 
target</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">profiling</td>\n<td 
style=\"text-align:right\">profiling target data asset, providing statistics by 
different rules or dimensions</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">completeness</td>\n<td 
style=\"text-align:right\">are all data 
persent</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">timeliness</td>\n<td style=\"text-align:right\">are 
data available at the specified time</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">anomaly detection</td>\n<td 
style=\"text-align:right\">data asset conform to an expected pattern or 
not</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">validity</td>\n<td style=\"text-align:right\">are 
all data valid or not according to domain 
business</td>\n</tr>\n<tr>\n<td>Service</td>\n<td 
style=\"text-align:center\">web service</td>\n<td style=\"text-align:r
 ight\">restful service accessing data assets</td>\n</tr>\n<tr>\n<td>Web 
UI</td>\n<td style=\"text-align:center\">ui page</td>\n<td 
style=\"text-align:right\">web page to explore apache griffin 
features</td>\n</tr>\n<tr>\n<td>Connector</td>\n<td 
style=\"text-align:center\">spark connector</td>\n<td 
style=\"text-align:right\">execute jobs in spark 
cluster</td>\n</tr>\n<tr>\n<td>Schedule</td>\n<td 
style=\"text-align:center\">schedule</td>\n<td 
style=\"text-align:right\">schedule measure jobs on different 
clusters</td>\n</tr>\n</tbody>\n</table>\n<h2 id=\"Plan\"><a href=\"#Plan\" 
class=\"headerlink\" title=\"Plan\"></a>Plan</h2><h4 
id=\"2017-04-batch-accuracy-onboard\"><a 
href=\"#2017-04-batch-accuracy-onboard\" class=\"headerlink\" title=\"2017.04 
batch accuracy onboard\"></a>2017.04 batch accuracy 
onboard</h4><ul>\n<li><p>Week01: headless batch accuracy 
measure</p>\n<ul>\n<li>headless batch accuracy measure use case 
onboard.</li>\n<li>headless batch accuracy measure usage document.</l
 i>\n</ul>\n</li>\n<li><p>Week02: batch accuracy measure with 
service</p>\n<ul>\n<li>release batch accuracy measure with service enabled. 
</li>\n<li>end2end headless workable use case, including guidance, metrics 
report. </li>\n<li>prepare data in hive, explore data asset from ui, generate 
accuracy measure in ui, trigger accuracy measure in 
script.</li>\n</ul>\n</li>\n<li><p>Week03: batch accuracy measure with UI 
Page</p>\n<ul>\n<li>UI Page refine: remove ‘create data asset’ 
</li>\n<li>end2end ui enabled workable use case. </li>\n<li>prepare data in 
hive, explore data asset from ui, generate accuracy measure in ui, trigger 
accuracy measure in script.</li>\n</ul>\n</li>\n<li><p>Week04: release batch 
accuracy measure with UI, Service, Scheduler, Measure.</p>\n<ul>\n<li>end to 
end full pipeline use case enabled.</li>\n</ul>\n</li>\n</ul>\n<h4 
id=\"2017-05-streaming-accuracy-P2\"><a href=\"#2017-05-streaming-accuracy-P2\" 
class=\"headerlink\" title=\"2017.05 streaming accuracy P2\"><
 /a>2017.05 streaming accuracy P2</h4><h4 
id=\"2017-06-streaming-accuracy-onboard-P2\"><a 
href=\"#2017-06-streaming-accuracy-onboard-P2\" class=\"headerlink\" 
title=\"2017.06 streaming accuracy onboard P2\"></a>2017.06 streaming accuracy 
onboard P2</h4><h4 id=\"2017-07-schedule-P4\"><a href=\"#2017-07-schedule-P4\" 
class=\"headerlink\" title=\"2017.07 schedule P4\"></a>2017.07 schedule 
P4</h4><h4 id=\"2017-08-profiling-P3\"><a href=\"#2017-08-profiling-P3\" 
class=\"headerlink\" title=\"2017.08 profiling P3\"></a>2017.08 profiling 
P3</h4><h4 id=\"2017-09-completeness-P2\"><a href=\"#2017-09-completeness-P2\" 
class=\"headerlink\" title=\"2017.09 completeness P2\"></a>2017.09 completeness 
P2</h4><h4 id=\"2017-10-timeliness-P2\"><a href=\"#2017-10-timeliness-P2\" 
class=\"headerlink\" title=\"2017.10 timeliness P2\"></a>2017.10 timeliness 
P2</h4><h4 id=\"2017-11-anomaly-detection-P3\"><a 
href=\"#2017-11-anomaly-detection-P3\" class=\"headerlink\" title=\"2017.11 
anomaly detection P3\"></a
 >2017.11 anomaly detection P3</h4><h4 id=\"2017-12-validity-P3\"><a 
 >href=\"#2017-12-validity-P3\" class=\"headerlink\" title=\"2017.12 validity 
 >P3\"></a>2017.12 validity P3</h4><h2 id=\"Release-Notes\"><a 
 >href=\"#Release-Notes\" class=\"headerlink\" title=\"Release 
 >Notes\"></a>Release Notes</h2><p>2017.03.30 release streaming 
 >measures</p>\n<p>Weekly updates</p>\n<p>well planed and scalable 
 ></p>\n<p>priority/epic/story/breakdown to backlog task.</p>\n<p>3 
 >measures</p>\n","excerpt":"","more":"<h2 id=\"Features\"><a 
 >href=\"#Features\" class=\"headerlink\" 
 >title=\"Features\"></a>Features</h2><table>\n<thead>\n<tr>\n<th>Group</th>\n<th
 > style=\"text-align:center\">Component</th>\n<th 
 >style=\"text-align:right\">Description</th>\n</tr>\n</thead>\n<tbody>\n<tr>\n<td>Measure</td>\n<td
 > style=\"text-align:center\">accuracy</td>\n<td 
 >style=\"text-align:right\">accuracy measure between single source of truth 
 >and target</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
 >style=\"text-align:center\">profiling
 </td>\n<td style=\"text-align:right\">profiling target data asset, providing 
statistics by different rules or 
dimensions</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">completeness</td>\n<td 
style=\"text-align:right\">are all data 
persent</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">timeliness</td>\n<td style=\"text-align:right\">are 
data available at the specified time</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">anomaly detection</td>\n<td 
style=\"text-align:right\">data asset conform to an expected pattern or 
not</td>\n</tr>\n<tr>\n<td>Measure</td>\n<td 
style=\"text-align:center\">validity</td>\n<td style=\"text-align:right\">are 
all data valid or not according to domain 
business</td>\n</tr>\n<tr>\n<td>Service</td>\n<td 
style=\"text-align:center\">web service</td>\n<td 
style=\"text-align:right\">restful service accessing data 
assets</td>\n</tr>\n<tr>\n<td>Web UI</td>\n<td style=\"text-align:center\">ui 
page</td
 >\n<td style=\"text-align:right\">web page to explore apache griffin 
 >features</td>\n</tr>\n<tr>\n<td>Connector</td>\n<td 
 >style=\"text-align:center\">spark connector</td>\n<td 
 >style=\"text-align:right\">execute jobs in spark 
 >cluster</td>\n</tr>\n<tr>\n<td>Schedule</td>\n<td 
 >style=\"text-align:center\">schedule</td>\n<td 
 >style=\"text-align:right\">schedule measure jobs on different 
 >clusters</td>\n</tr>\n</tbody>\n</table>\n<h2 id=\"Plan\"><a href=\"#Plan\" 
 >class=\"headerlink\" title=\"Plan\"></a>Plan</h2><h4 
 >id=\"2017-04-batch-accuracy-onboard\"><a 
 >href=\"#2017-04-batch-accuracy-onboard\" class=\"headerlink\" title=\"2017.04 
 >batch accuracy onboard\"></a>2017.04 batch accuracy 
 >onboard</h4><ul>\n<li><p>Week01: headless batch accuracy 
 >measure</p>\n<ul>\n<li>headless batch accuracy measure use case 
 >onboard.</li>\n<li>headless batch accuracy measure usage 
 >document.</li>\n</ul>\n</li>\n<li><p>Week02: batch accuracy measure with 
 >service</p>\n<ul>\n<li>release batch accuracy measure with serv
 ice enabled. </li>\n<li>end2end headless workable use case, including 
guidance, metrics report. </li>\n<li>prepare data in hive, explore data asset 
from ui, generate accuracy measure in ui, trigger accuracy measure in 
script.</li>\n</ul>\n</li>\n<li><p>Week03: batch accuracy measure with UI 
Page</p>\n<ul>\n<li>UI Page refine: remove ‘create data asset’ 
</li>\n<li>end2end ui enabled workable use case. </li>\n<li>prepare data in 
hive, explore data asset from ui, generate accuracy measure in ui, trigger 
accuracy measure in script.</li>\n</ul>\n</li>\n<li><p>Week04: release batch 
accuracy measure with UI, Service, Scheduler, Measure.</p>\n<ul>\n<li>end to 
end full pipeline use case enabled.</li>\n</ul>\n</li>\n</ul>\n<h4 
id=\"2017-05-streaming-accuracy-P2\"><a href=\"#2017-05-streaming-accuracy-P2\" 
class=\"headerlink\" title=\"2017.05 streaming accuracy P2\"></a>2017.05 
streaming accuracy P2</h4><h4 id=\"2017-06-streaming-accuracy-onboard-P2\"><a 
href=\"#2017-06-streaming-accuracy-
 onboard-P2\" class=\"headerlink\" title=\"2017.06 streaming accuracy onboard 
P2\"></a>2017.06 streaming accuracy onboard P2</h4><h4 
id=\"2017-07-schedule-P4\"><a href=\"#2017-07-schedule-P4\" 
class=\"headerlink\" title=\"2017.07 schedule P4\"></a>2017.07 schedule 
P4</h4><h4 id=\"2017-08-profiling-P3\"><a href=\"#2017-08-profiling-P3\" 
class=\"headerlink\" title=\"2017.08 profiling P3\"></a>2017.08 profiling 
P3</h4><h4 id=\"2017-09-completeness-P2\"><a href=\"#2017-09-completeness-P2\" 
class=\"headerlink\" title=\"2017.09 completeness P2\"></a>2017.09 completeness 
P2</h4><h4 id=\"2017-10-timeliness-P2\"><a href=\"#2017-10-timeliness-P2\" 
class=\"headerlink\" title=\"2017.10 timeliness P2\"></a>2017.10 timeliness 
P2</h4><h4 id=\"2017-11-anomaly-detection-P3\"><a 
href=\"#2017-11-anomaly-detection-P3\" class=\"headerlink\" title=\"2017.11 
anomaly detection P3\"></a>2017.11 anomaly detection P3</h4><h4 
id=\"2017-12-validity-P3\"><a href=\"#2017-12-validity-P3\" 
class=\"headerlink\" title
 =\"2017.12 validity P3\"></a>2017.12 validity P3</h4><h2 
id=\"Release-Notes\"><a href=\"#Release-Notes\" class=\"headerlink\" 
title=\"Release Notes\"></a>Release Notes</h2><p>2017.03.30 release streaming 
measures</p>\n<p>Weekly updates</p>\n<p>well planed and scalable 
</p>\n<p>priority/epic/story/breakdown to backlog task.</p>\n<p>3 
measures</p>\n"}],"PostAsset":[],"PostCategory":[],"PostTag":[],"Tag":[]}}
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+{"meta":{"version":1,"warehouse":"2.2.0"},"models":{"Asset":[],"Cache":[],"Category":[],"Data":[],"Page":[],"Post":[],"PostAsset":[],"PostCategory":[],"PostTag":[],"Tag":[]}}
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--- a/themes/landscape/layout/_widget/logo.ejs
+++ b/themes/landscape/layout/_widget/logo.ejs
@@ -1,5 +1,5 @@
   <div class="widget-wrap">
     <div class="widget">
-        <img src="images/egg-logo.png"></img>
+        <img 
src="http://griffin.incubator.apache.org/images/egg-logo.png";></img>
     </div>
   </div>
\ No newline at end of file

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