wso2 analytics platform - the one stop shop for all your data needs
Post on 15-Apr-2017
379 Views
Preview:
TRANSCRIPT
WSO2 Analytics Platform: The One Stop Shop for All Your Data Needs
Sriskandarajah Suhothayan
Associate Director/Architect, WSO2
Anjana Fernando
Senior Technical Lead, WSO2
WSO2 Analytics Platform
WSO2 Analytics Platform uniquely combines simultaneous real-time, interactive, batch with predictive analytics to turn data from IoT, mobile and Web apps into actionable insights
WSO2 Analytics Platform
WSO2 Data Analytics Server
• Fully-open source solution with the ability to build systems and applications that collect and analyze both realtime and persisted data and communicate the results.
• Part of WSO2 Big Data Analytics Platform
• High performance data capture framework
• Highly available and scalable by design
• Pre-built Data Agents for WSO2 products
Case Study : Smart Home
• DEBS (Distributed Event Based Systems) is a premier academic conference, which post yearly event processing challenge (http://www.cse.iitb.ac.in/debs2014/?page_id=42)
• Smart Home electricity data: 2000 sensors, 40 houses, 4 Billion events
• We posted fastest single node solution measured (400K events/sec) and close to one million distributed throughput.
• WSO2 CEP based solution is one of the four finalists (with Dresden University of Technology, Fraunhofer Institute, and Imperial College London)
• Only generic solution to become a finalist
a
Experian delivers a digital marketing platform, where CEP plays a key role to analyze in real-time customers behavior and offer targeted promotions. CEP was chosen after careful analysis, primarily for its openness, its open source nature, the fact support is driven by engineers and the availability of a complete middleware, integrated with CEP, for additional use cases.
Eurecat is the Catalunya innovation center (in Spain) - Using CEP to analyze data from iBeacons deployed within department stores to offer instant rebates to user or send them help if it detected that they seem “stuck” in the shop area. They chose WSO2 due to real time processing, the variety of IoT connectors available as well as the extensible framework and the rich configuration language. They also use WSO2 ESB in conjunction with WSO2 CEP.
Pacific Controls is an innovative company delivering an IoT platform of platforms: Galaxy 2021. The platform allows to manage all kinds of devices within a building and take automated decisions such as moving an elevator or starting the air conditioning based on certain conditions. Within Galaxy2021, CEP is used for monitoring alarms and specific conditions.Pacific Controls also uses other products from the WSO2 platform, such as WSO2 ESB and Identity..
A leading airline uses CEP to enhance customer experience by calculating the average time to reach their boarding gate (going through security, walking, etc.). They also want to track the time it takes to clean a plane, in order to better streamline the boarding process and notify both the airline and customers about potential delays. They evaluated WSO2 CEP first as they were already using our platform and decided to use it as it addressed all their requirements.
Customer Stories
Healthcare Data Monitoring
• Allows to search/visualize/analyze healthcare records (HL7) across 20 hospitals in Italy
• Used in combination with WSO2 ESB• Custom toolbox tailored to customer’s requirement (to replace existing system)
WSO2 DAS Architecture
Data Processing Pipeline
Collect Data
• Define scheme for data
• Send events to batch and/or Real time pipeline
• Publish events
Analyze
• Spark SQL for batch analytics
• Siddhi Query Language for real time analytics
• Predictive models for Machine Learning.
Communicate
• Alerts• Dashboards• API
Highly Pluggable Event Receiver Architecture
Data Model
Data published conforming to a strongly typed data stream{
'name': 'stream.name',
'version': '1.0.0',
'nickName': 'stream nick name',
'description': 'description of the stream',
'metaData':[
{'name':'meta_data_1','type':'STRING'},
],
'correlationData':[
{'name':'correlation_data_1','type':'STRING'}
],
'payloadData':[
{'name':'payload_data_1','type':'BOOL'},
{'name':'payload_data_2','type':'LONG'}
]
}
Data Persistence
• Data Abstraction Layer to enable pluggable data connectors– RDBMS, Cassandra, HBase, custom..
• Analytics Tables– The data persistence entity in WSO2 Data Analytics Server– Provides a backend data source agnostic way of storing and retrieving
data– Allows applications to be written in a way, that it does not depend on a
specific data source, e.g. JDBC (RDBMS), Cassandra APIs etc.. – WSO2 DAS gives a standard REST API in accessing the Analytics Tables
Data Persistence
• Analytics Record Stores– An Analytics Record Store, stores a specific set of Analytics Tables– Event persistence can configure which Analytics Record Store to be used for
storing incoming events– Single Analytics Table namespace, the target record store only given at the time
of table creation– Useful in creating Analytics Tables where data will be stored in multiple target
databases
Interactive Analytics
Interactive Analysis
• Full text data indexing support powered by Apache Lucene
• Drilldown search support• Distributed data indexing
– Designed to support scalability• Near real time data indexing and
retrieval– Data indexed immediately as
received
Interactive Analysis
Activity Monitoring
• Correlate the messages collected based on the activity_id in the metadata of the event
• Trace the transaction path where the events could be in different tables using lucene queries
Activity Explorer
Batch Analytics
Batch Analytics
● Powered by Apache Spark up to 30x higher performance than Hadoop
● Parallel, distributed with optimized in-memory processing
● Scalable script-based analytics written using an easy-to-learn, SQL-like
query language powered by Spark SQL
● Interactive built in web interface for ad-hoc query execution
● HA/FO supported scheduled query script execution
● Run Spark on a single node, Spark embedded Carbon server cluster or
connect to external Spark cluster
Batch Analytics
Batch Analytics
● Idea is to given the “Overall idea” in a glance (e.g. car dashboard)
● Support for personalization, you can build your own dashboard.
● Also the entry point for Drill down● How to build?
○ Dashboard via Google Gadget and content via HTML5 + Javascript
○ Use WSO2 User Engagement Server to build a dashboard (or JSP/PHP)
○ Use charting libraries like Vega or D3
Communicate: Dashboards
● Start with data in tabular format ● Map each column to dimension in your plot like X,Y, color,
point size, etc ● Also do drill-downs● Create a chart with few clicks
Gadget Generation Wizard
Realtime Analysis
What’s Realtime Analytics?...
Realtime Analytics in Complex Event Processor
→
• Gather data from multiple sources• Correlate data streams over time• Find interesting occurrences • And Notify • All in Realtime !
Market Recognition
• Named as a Strong Performer in The Forrester Wave™: Big Data Streaming Analytics, Q1 2016.
• Highest score possible in 'Acquisition and Pricing' criteria, and among second-highest scores in 'Ability to execute' criteria
• The Forrester Report notes…..
“WSO2 is an open source middleware provider that includes a full spectrum of architected-as-one components such as application servers, message brokers, enterprise service bus, and many
others.
Its streaming analytics solution follows the complex event processor architectural approach, so it provides very low-latency analytics. Enterprises that already use WSO2 middleware can add CEP seamlessly. Enterprises looking for a full middleware stack that includes streaming analytics will
find a place for WSO2 on their shortlist as well.”
What is WSO2 CEP ?
Event Flow of WSO2 CEP
Realtime Execution
• Process in streaming fashion (one event at a time)
• Execution logic written as Execution Plans
• Execution Plan– An isolated logical execution unit– Includes a set of queries, and relates to multiple input and output
event streams– Executed using dedicated WSO2 Siddhi engine
Realtime Processing Patterns
• Transformation - project, translate, enrich, split
• Filter
• Composition / Aggregation / Analytics
– basic stats, group by, moving averages
• Join multiple streams
• Detect patterns
– Coordinating events over time
– Trends – increasing, decreasing, stable, on-increasing, non-decreasing, mixed
• Integrate with historical data
Siddhi Query Structure
define stream <event stream>(<attribute> <type>,<attribute> <type>, ...);
from <event stream>select <attribute>,<attribute>, ...insert into <event stream> ;
define stream SoftDrinkSales
(region string, brand string, quantity int,
price double);
from SoftDrinkSales
select brand, quantity
insert into OutputStream ;
define stream OutputStream
(brand string, quantity int);
Output Streams are inferred
Siddhi Query ...
define stream SoftDrinkSales
(region string, brand string, quantity int,
price double);
from SoftDrinkSales
select brand, avg(price*quantity) as avgCost,‘USD’ as currency
insert into AvgCostStream
from AvgCostStream
select brand, toEuro(avgCost) as avgCost,‘EURO’ as currency
insert into OutputStream ;
Enriching Streams
Using Functions
Siddhi Query ...
define stream SoftDrinkSales
(region string, brand string, quantity int,
price double);
from SoftDrinkSales[region == ‘USA’ and quantity > 99]
select brand, price, quantity
insert into WholeSales ;
from SoftDrinkSales#window.time(1 hour)
select region, brand, avg(quantity) as avgQuantity
group by region, brand
insert into LastHourSales ;
Filtering
Aggregation over 1 hour
Other supported window types: timeBatch(), length(), lengthBatch(), etc.
Siddhi Query (Filter & Window) ...
define stream Purchase (price double, cardNo long,place string);
from every (a1 = Purchase[price < 10] ) ->
a2 = Purchase[ price >10000 and a1.cardNo == a2.cardNo ]
within 1 day
select a1.cardNo as cardNo, a2.price as price, a2.place as place
insert into PotentialFraud ;
Siddhi Query (Pattern) ...
define stream StockStream (symbol string, price double, volume int);
partition by (symbol of StockStream)
begin
from t1=StockStream,
t2=StockStream [(t2[last] is null and t1.price < price) or
(t2[last].price < price)]+
within 5 min
select t1.price as initialPrice, t2[last].price as finalPrice,t1.symbol
insert into IncreaingMyStockPriceStream
end;
Siddhi Query (Trends & Partition)...
define table CardUserTable (name string, cardNum long) ;
@from(eventtable = 'rdbms' , datasource.name = ‘CardDataSource’ , table.name = ‘UserTable’, caching.algorithm’=‘LRU’)
define table CardUserTable (name string, cardNum long)
Cache types supported
• Basic: A size-based algorithm based on FIFO.• LRU (Least Recently Used): The least recently used event is dropped
when cache is full.• LFU (Least Frequently Used): The least frequently used event is dropped
when cache is full.
Siddhi Query (Table) ...
Supported for RDBMS, In-Memory, Analytics Table,
Hazelcast
define stream Purchase (price double, cardNo long, place string);
define stream CardUserStream (name string, cardNo long) ;
define table CardUserTable (name string, cardNum long) ;
from Purchase#window.length(1) join CardUserTable
on Purchase.cardNo == CardUserTable.cardNum
select Purchase.cardNo as cardNo, CardUserTable.name as name, Purchase.price as price
insert into PurchaseUserStream ;
from CardUserStream
select name, cardNo as cardNum
update CardUserTable
on CardUserTable.name == name ;
Similarly insert into and delete are also supported!
Siddhi Query (Table) ...
• Function extension• Aggregator extension• Window extension• Stream Processor extension
define stream SalesStream (brand string, price double, currency string);
from SalesStream
select brand, custom:toUSD(price, currency) as priceInUSD
insert into OutputStream ;
Referred with namespaces
Siddhi Query (Extension) ...
• geo: Geographical processing • nlp: Natural language Processing (with Stanford NLP)• ml: Running machine learning models of WSO2 Machine Lerner • pmml: Running PMML models learnt by R• timeseries: Regression and time series • math: Mathematical operations• str: String operations • regex: Regular expression • ...
Siddhi Extensions
Event Publisher
*Supports custom event publishers via its pluggable architecture!
Realtime Dashboard
• Dashboard – Google Gadget – HTML5 + javascripts
• Support gadget generation – Using D3 and Vega
• Gather data for UI from – Websockets – Polling
• Support Custom Gadgets and Dashboards
Predictive Analysis
What’s Predictive Analytics?...
Predictive Analytics in Machine Learner
→
• Extract, pre-process, and explore data• Create models, tune algorithms and make predictions• Integrate for better intelligence
Predictive Analytics
• Guided UI to build machine learning models via – Apache Spark MLlib– H2O.ai (for deep learning
algorithms)– R and export them as PMML
• Run models using CEP, DAS and ESB• Run R Scripts, Regression and Anomaly Detection on Realtime
Terminology
• Input data must be in a tabular format • Each row is called a data point • Each column is called a feature • Value you are going to predict is called the “response variable”
WSO2 ML Overview
Guided process
An insight into data
Data Exploration
Supported
Algorithms
Machine Learning Pipeline
Evaluate built models
Prediction in Real-time
http://wso2.com/landing/big-data-game/
DAS High Available Clustered Setup
WSO2 CEP (Realtime) Scalability
Distributed Realtime = Siddhi +
Advantages over Apache Storm
• No need to write Java code (Supports SQL like query language)
• No need to start from basic principles (Supports high level language)
• Adoption for change is fast
• Govern artifacts using Toolboxes
• etc ...
How we scale ?
Siddhi QL - distributed
define stream StockStream (symbol string, volume int, price double);
@name(Filter Query’)@dist(parallel= ‘3')from StockStream[price > 75]select *insert into HightPriceStockStream ;
@name(‘Window Query’)@dist(parallel= ‘2')partition with (symbol of HighPriceStockStream)begin
from HighPriceStockStream#window.time(10 min)select symbol, sum(volume) as sumVolume insert into ResultStockStream ;
end;
Distributed Execution on Storm UI
WSO2 ML (Predictive Analytics) Deployment
Iris DataSet
setosa versicolor virginica
Analytics for Products
Core :
•Analytics for Products distributions :
• Analytics ESB• Analytics IoTS• Analytics IS• etc
Thank You!
#WSO2ConEU
Share your feedback for this session
wso2con.com/app
top related