SlideShare a Scribd company logo
1 of 19
IS OLAP DEAD IN THE AGE OF BIG DATA?
AJAY ANAND, VP Products, Kyvos Insights Inc.
Yogesh Joshi, Head of Big Data and Analytics, AIG
AGENDA
•  Why OLAP?
•  Common implementation scenarios with Hadoop
•  Issues with traditional tools connecting to Big Data
•  OLAP on Hadoop: ROLAP, HOLAP, in-memory MOLAP,
distributed MOLAP on disk
•  The Kyvos approach
•  Use Cases
•  Using OLAP for Risk Analysis
•  Q&A
WHY OLAP?
•  What OLAP can provide:
•  Fast, interactive insights
•  Ad hoc analysis
•  Visual exploration, slice and dice, drill down
•  Multi-dimensional view of data
•  BUT, traditional OLAP solutions struggle with
•  Massive increase in business data volume
•  Explosion of cardinality (granularity) and dimensions
•  Variety of data sources
WHAT DO USERS WANT?
•  Self Service, Interactive Analytics
•  On Big Data
•  At any scale, with all kinds of datasets
•  With instant response times, no waiting
BIG DATA SCENARIO
HADOOP
Cost effective
Scalable
Flexible
Hard to use
Not interactive
Transactional Data
Customer Interaction
Internet of Things
Web Interaction Logs
Product Usage Logs
Social Media Interactions
System Logs
Sales, Inventory, Revenue
Audit logs
Operational Data
Security Logs
Issues:
Accessibility, Ease of use,
Support for high
performance, interactive
analytics
Business Analyst
COMMON BIG DATA SCENARIO
Data Mart / EDW OLAP CubeHADOOP
Analytics /
Visualization Tool
Transform and Process on Hadoop,
Load into DBMS
•  Transactional data
•  Clickstream data
•  Log files
•  Other structured
and unstructured
data
ISSUES
Data Warehouse /
DBMS
OLAP Cube
HADOOP
Analytics /
Visualization Tool
Transform and Process on Hadoop,
Load into DBMS
•  Transactional data
•  Clickstream data
•  Log files
•  Other structured
and unstructured
data
SCALABILITY,
PERFORMANCE
LIMITATIONS
LATENCY
OLAP ON HADOOP
•  Approaches
•  ROLAP / HOLAP on Hive / Impala
•  In-memory MOLAP

•  MOLAP on Hadoop
KYVOS SOLUTION: MOLAP ON HADOOP
KYVOS
•  Dashboards
•  Interactive visualizations
•  Explore, slice and dice, drill down
LOAD
HADOOP
 CUBES ON HADOOP
TRANSFORM
•  Transactional data
•  Clickstream data
•  Log files
•  Other structured and
unstructured data
TRANSFORMATIONS WITHOUT CODING
FLEXIBLE CUBE DESIGN
INTERACTIVE VISUALIZATIONS
SCALABLE ARCHITECTURE
USE CASES
• Entravision: 
• Consumer behavior analysis for Latino market
• Moving from sample and survey data (28K self reported diaries) to
empirical measurements on 15M+ adults
• Drill down to lowest levels of granularity
• Transactional data, purchase behavior, household characteristics,
consumer characteristics 
• Precise measurability to prove efficiencies and ROI for media
planning
USE CASES
•  Telecom subscriber profiling
•  20M subscribers
•  500B+ rows of data
•  60 days usage
•  96 node cluster
•  Hourly incremental builds
USE CASES
•  Risk analysis for financial services / insurance
•  Operational analytics
•  Web analytics for online shopping in the travel industry
•  Set top data analytics
RISK ANALYSIS
•  Yogesh Joshi, Head of Big Data and Analytics, AIG
Q&A
•  Join us at Booth S5
•  www.kyvosinsights.com
IS OLAP DEAD IN THE AGE OF BIG DATA?

More Related Content

What's hot

What's hot (20)

Big Data Computing Architecture
Big Data Computing ArchitectureBig Data Computing Architecture
Big Data Computing Architecture
 
Big Data in the Real World
Big Data in the Real WorldBig Data in the Real World
Big Data in the Real World
 
High-Scale Entity Resolution in Hadoop
High-Scale Entity Resolution in HadoopHigh-Scale Entity Resolution in Hadoop
High-Scale Entity Resolution in Hadoop
 
Database Camp 2016 @ United Nations, NYC - Bob Wiederhold, CEO, Couchbase
Database Camp 2016 @ United Nations, NYC - Bob Wiederhold, CEO, CouchbaseDatabase Camp 2016 @ United Nations, NYC - Bob Wiederhold, CEO, Couchbase
Database Camp 2016 @ United Nations, NYC - Bob Wiederhold, CEO, Couchbase
 
Database Camp 2016 @ United Nations, NYC - Brad Bebee, CEO, Blazegraph
Database Camp 2016 @ United Nations, NYC - Brad Bebee, CEO, BlazegraphDatabase Camp 2016 @ United Nations, NYC - Brad Bebee, CEO, Blazegraph
Database Camp 2016 @ United Nations, NYC - Brad Bebee, CEO, Blazegraph
 
Hd insight essentials quick view
Hd insight essentials quick viewHd insight essentials quick view
Hd insight essentials quick view
 
The Fundamentals Guide to HDP and HDInsight
The Fundamentals Guide to HDP and HDInsightThe Fundamentals Guide to HDP and HDInsight
The Fundamentals Guide to HDP and HDInsight
 
Interactive query in hadoop
Interactive query in hadoopInteractive query in hadoop
Interactive query in hadoop
 
HBaseCon 2015: Industrial Internet Case Study using HBase and TSDB
HBaseCon 2015: Industrial Internet Case Study using HBase and TSDBHBaseCon 2015: Industrial Internet Case Study using HBase and TSDB
HBaseCon 2015: Industrial Internet Case Study using HBase and TSDB
 
Big Data MDX with Mondrian and Apache Kylin
Big Data MDX with Mondrian and Apache KylinBig Data MDX with Mondrian and Apache Kylin
Big Data MDX with Mondrian and Apache Kylin
 
New World Hadoop Architectures (& What Problems They Really Solve) for Oracle...
New World Hadoop Architectures (& What Problems They Really Solve) for Oracle...New World Hadoop Architectures (& What Problems They Really Solve) for Oracle...
New World Hadoop Architectures (& What Problems They Really Solve) for Oracle...
 
Hd insight overview
Hd insight overviewHd insight overview
Hd insight overview
 
Using Hadoop to build a Data Quality Service for both real-time and batch data
Using Hadoop to build a Data Quality Service for both real-time and batch dataUsing Hadoop to build a Data Quality Service for both real-time and batch data
Using Hadoop to build a Data Quality Service for both real-time and batch data
 
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
Dirty Data? Clean it up! - Rocky Mountain DataCon 2016
 
Why Power BI is the right tool for you
Why Power BI is the right tool for youWhy Power BI is the right tool for you
Why Power BI is the right tool for you
 
Big Data Architecture and Design Patterns
Big Data Architecture and Design PatternsBig Data Architecture and Design Patterns
Big Data Architecture and Design Patterns
 
Intro to Big Data - Spark
Intro to Big Data - SparkIntro to Big Data - Spark
Intro to Big Data - Spark
 
Overview of stinger interactive query for hive
Overview of stinger   interactive query for hiveOverview of stinger   interactive query for hive
Overview of stinger interactive query for hive
 
OLAP Basics and Fundamentals by Bharat Kalia
OLAP Basics and Fundamentals by Bharat Kalia OLAP Basics and Fundamentals by Bharat Kalia
OLAP Basics and Fundamentals by Bharat Kalia
 
Data Integration and Data Warehousing for Cloud, Big Data and IoT: 
What’s Ne...
Data Integration and Data Warehousing for Cloud, Big Data and IoT: 
What’s Ne...Data Integration and Data Warehousing for Cloud, Big Data and IoT: 
What’s Ne...
Data Integration and Data Warehousing for Cloud, Big Data and IoT: 
What’s Ne...
 

Viewers also liked

Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013
Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013
Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013
Cosmin Lehene
 
A referencia intézményi működés szakmai, szervezeti hozadékai
A referencia intézményi működés szakmai, szervezeti hozadékaiA referencia intézményi működés szakmai, szervezeti hozadékai
A referencia intézményi működés szakmai, szervezeti hozadékai
Zoltán Kern
 
Low Latency “OLAP” with HBase - HBaseCon 2012
Low Latency “OLAP” with HBase - HBaseCon 2012Low Latency “OLAP” with HBase - HBaseCon 2012
Low Latency “OLAP” with HBase - HBaseCon 2012
Cosmin Lehene
 
Multidimensional Data Analysis with Ruby (sample)
Multidimensional Data Analysis with Ruby (sample)Multidimensional Data Analysis with Ruby (sample)
Multidimensional Data Analysis with Ruby (sample)
Raimonds Simanovskis
 

Viewers also liked (20)

Drilling into Data with Apache Drill
Drilling into Data with Apache DrillDrilling into Data with Apache Drill
Drilling into Data with Apache Drill
 
Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013
Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013
Real-time “OLAP” for Big Data (+ use cases) - bigdata.ro 2013
 
Apache Kylin: OLAP Engine on Hadoop - Tech Deep Dive
Apache Kylin: OLAP Engine on Hadoop - Tech Deep DiveApache Kylin: OLAP Engine on Hadoop - Tech Deep Dive
Apache Kylin: OLAP Engine on Hadoop - Tech Deep Dive
 
Low Latency OLAP with Hadoop and HBase
Low Latency OLAP with Hadoop and HBaseLow Latency OLAP with Hadoop and HBase
Low Latency OLAP with Hadoop and HBase
 
Apache Kylin - OLAP Cubes for SQL on Hadoop
Apache Kylin - OLAP Cubes for SQL on HadoopApache Kylin - OLAP Cubes for SQL on Hadoop
Apache Kylin - OLAP Cubes for SQL on Hadoop
 
Case Study Real Time Olap Cubes
Case Study Real Time Olap CubesCase Study Real Time Olap Cubes
Case Study Real Time Olap Cubes
 
Apache Kylin – Cubes on Hadoop
Apache Kylin – Cubes on HadoopApache Kylin – Cubes on Hadoop
Apache Kylin – Cubes on Hadoop
 
Design cube in Apache Kylin
Design cube in Apache KylinDesign cube in Apache Kylin
Design cube in Apache Kylin
 
Pulsar: Real-time Analytics at Scale with Kafka, Kylin and Druid
Pulsar: Real-time Analytics at Scale with Kafka, Kylin and DruidPulsar: Real-time Analytics at Scale with Kafka, Kylin and Druid
Pulsar: Real-time Analytics at Scale with Kafka, Kylin and Druid
 
OLAP options on Hadoop
OLAP options on HadoopOLAP options on Hadoop
OLAP options on Hadoop
 
86921864 olap-case-study-vj
86921864 olap-case-study-vj86921864 olap-case-study-vj
86921864 olap-case-study-vj
 
A referencia intézményi működés szakmai, szervezeti hozadékai
A referencia intézményi működés szakmai, szervezeti hozadékaiA referencia intézményi működés szakmai, szervezeti hozadékai
A referencia intézményi működés szakmai, szervezeti hozadékai
 
NABU Socials - A New Marketing Era
NABU Socials - A New Marketing EraNABU Socials - A New Marketing Era
NABU Socials - A New Marketing Era
 
Cost Optimization at Scale
Cost Optimization at ScaleCost Optimization at Scale
Cost Optimization at Scale
 
Low Latency “OLAP” with HBase - HBaseCon 2012
Low Latency “OLAP” with HBase - HBaseCon 2012Low Latency “OLAP” with HBase - HBaseCon 2012
Low Latency “OLAP” with HBase - HBaseCon 2012
 
NoSQL, Base VS ACID e Teorema CAP
NoSQL, Base VS ACID e Teorema CAPNoSQL, Base VS ACID e Teorema CAP
NoSQL, Base VS ACID e Teorema CAP
 
The Secrets of Building Realtime Big Data Systems
The Secrets of Building Realtime Big Data SystemsThe Secrets of Building Realtime Big Data Systems
The Secrets of Building Realtime Big Data Systems
 
Multidimensional Data Analysis with Ruby (sample)
Multidimensional Data Analysis with Ruby (sample)Multidimensional Data Analysis with Ruby (sample)
Multidimensional Data Analysis with Ruby (sample)
 
eBay Experimentation Platform on Hadoop
eBay Experimentation Platform on HadoopeBay Experimentation Platform on Hadoop
eBay Experimentation Platform on Hadoop
 
Pinot: Realtime Distributed OLAP datastore
Pinot: Realtime Distributed OLAP datastorePinot: Realtime Distributed OLAP datastore
Pinot: Realtime Distributed OLAP datastore
 

Similar to IS OLAP DEAD IN THE AGE OF BIG DATA?

Big-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-KoenigBig-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-Koenig
Manish Chopra
 
Big Data Strategy for the Relational World
Big Data Strategy for the Relational World Big Data Strategy for the Relational World
Big Data Strategy for the Relational World
Andrew Brust
 

Similar to IS OLAP DEAD IN THE AGE OF BIG DATA? (20)

Transform from database professional to a Big Data architect
Transform from database professional to a Big Data architectTransform from database professional to a Big Data architect
Transform from database professional to a Big Data architect
 
OLAP
OLAPOLAP
OLAP
 
Olap queries
Olap queriesOlap queries
Olap queries
 
Hadoop and the Data Warehouse: When to Use Which
Hadoop and the Data Warehouse: When to Use Which Hadoop and the Data Warehouse: When to Use Which
Hadoop and the Data Warehouse: When to Use Which
 
What is Hadoop & its Use cases-PromtpCloud
What is Hadoop & its Use cases-PromtpCloudWhat is Hadoop & its Use cases-PromtpCloud
What is Hadoop & its Use cases-PromtpCloud
 
Lecture1
Lecture1Lecture1
Lecture1
 
Big Data Everywhere Chicago: Leading a Healthcare Company to the Big Data Pro...
Big Data Everywhere Chicago: Leading a Healthcare Company to the Big Data Pro...Big Data Everywhere Chicago: Leading a Healthcare Company to the Big Data Pro...
Big Data Everywhere Chicago: Leading a Healthcare Company to the Big Data Pro...
 
Lecture 10.ppt
Lecture 10.pptLecture 10.ppt
Lecture 10.ppt
 
05_Decision Support and OLAP.pdf
05_Decision Support and OLAP.pdf05_Decision Support and OLAP.pdf
05_Decision Support and OLAP.pdf
 
Big Data at Oracle - Strata 2015 San Jose
Big Data at Oracle - Strata 2015 San JoseBig Data at Oracle - Strata 2015 San Jose
Big Data at Oracle - Strata 2015 San Jose
 
Big-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-KoenigBig-Data-Seminar-6-Aug-2014-Koenig
Big-Data-Seminar-6-Aug-2014-Koenig
 
Online analytical processing
Online analytical processingOnline analytical processing
Online analytical processing
 
Oh! Session on Introduction to BIG Data
Oh! Session on Introduction to BIG DataOh! Session on Introduction to BIG Data
Oh! Session on Introduction to BIG Data
 
Introduction To Big Data & Hadoop
Introduction To Big Data & HadoopIntroduction To Big Data & Hadoop
Introduction To Big Data & Hadoop
 
Kushal Data Warehousing PPT
Kushal Data Warehousing PPTKushal Data Warehousing PPT
Kushal Data Warehousing PPT
 
Big Data Strategy for the Relational World
Big Data Strategy for the Relational World Big Data Strategy for the Relational World
Big Data Strategy for the Relational World
 
Bridging Oracle Database and Hadoop by Alex Gorbachev, Pythian from Oracle Op...
Bridging Oracle Database and Hadoop by Alex Gorbachev, Pythian from Oracle Op...Bridging Oracle Database and Hadoop by Alex Gorbachev, Pythian from Oracle Op...
Bridging Oracle Database and Hadoop by Alex Gorbachev, Pythian from Oracle Op...
 
Big Data 2.0: YARN Enablement for Distributed ETL & SQL with Hadoop
Big Data 2.0: YARN Enablement for Distributed ETL & SQL with HadoopBig Data 2.0: YARN Enablement for Distributed ETL & SQL with Hadoop
Big Data 2.0: YARN Enablement for Distributed ETL & SQL with Hadoop
 
5 Things that Make Hadoop a Game Changer
5 Things that Make Hadoop a Game Changer5 Things that Make Hadoop a Game Changer
5 Things that Make Hadoop a Game Changer
 
SLQ vs NOSQL - friends or foes
SLQ vs NOSQL - friends or foes SLQ vs NOSQL - friends or foes
SLQ vs NOSQL - friends or foes
 

More from DataWorks Summit

HBase Global Indexing to support large-scale data ingestion at Uber
HBase Global Indexing to support large-scale data ingestion at UberHBase Global Indexing to support large-scale data ingestion at Uber
HBase Global Indexing to support large-scale data ingestion at Uber
DataWorks Summit
 
Security Framework for Multitenant Architecture
Security Framework for Multitenant ArchitectureSecurity Framework for Multitenant Architecture
Security Framework for Multitenant Architecture
DataWorks Summit
 
Computer Vision: Coming to a Store Near You
Computer Vision: Coming to a Store Near YouComputer Vision: Coming to a Store Near You
Computer Vision: Coming to a Store Near You
DataWorks Summit
 

More from DataWorks Summit (20)

Data Science Crash Course
Data Science Crash CourseData Science Crash Course
Data Science Crash Course
 
Floating on a RAFT: HBase Durability with Apache Ratis
Floating on a RAFT: HBase Durability with Apache RatisFloating on a RAFT: HBase Durability with Apache Ratis
Floating on a RAFT: HBase Durability with Apache Ratis
 
Tracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFi
Tracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFiTracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFi
Tracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFi
 
HBase Tales From the Trenches - Short stories about most common HBase operati...
HBase Tales From the Trenches - Short stories about most common HBase operati...HBase Tales From the Trenches - Short stories about most common HBase operati...
HBase Tales From the Trenches - Short stories about most common HBase operati...
 
Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...
Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...
Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...
 
Managing the Dewey Decimal System
Managing the Dewey Decimal SystemManaging the Dewey Decimal System
Managing the Dewey Decimal System
 
Practical NoSQL: Accumulo's dirlist Example
Practical NoSQL: Accumulo's dirlist ExamplePractical NoSQL: Accumulo's dirlist Example
Practical NoSQL: Accumulo's dirlist Example
 
HBase Global Indexing to support large-scale data ingestion at Uber
HBase Global Indexing to support large-scale data ingestion at UberHBase Global Indexing to support large-scale data ingestion at Uber
HBase Global Indexing to support large-scale data ingestion at Uber
 
Scaling Cloud-Scale Translytics Workloads with Omid and Phoenix
Scaling Cloud-Scale Translytics Workloads with Omid and PhoenixScaling Cloud-Scale Translytics Workloads with Omid and Phoenix
Scaling Cloud-Scale Translytics Workloads with Omid and Phoenix
 
Building the High Speed Cybersecurity Data Pipeline Using Apache NiFi
Building the High Speed Cybersecurity Data Pipeline Using Apache NiFiBuilding the High Speed Cybersecurity Data Pipeline Using Apache NiFi
Building the High Speed Cybersecurity Data Pipeline Using Apache NiFi
 
Supporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability ImprovementsSupporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability Improvements
 
Security Framework for Multitenant Architecture
Security Framework for Multitenant ArchitectureSecurity Framework for Multitenant Architecture
Security Framework for Multitenant Architecture
 
Presto: Optimizing Performance of SQL-on-Anything Engine
Presto: Optimizing Performance of SQL-on-Anything EnginePresto: Optimizing Performance of SQL-on-Anything Engine
Presto: Optimizing Performance of SQL-on-Anything Engine
 
Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...
Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...
Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...
 
Extending Twitter's Data Platform to Google Cloud
Extending Twitter's Data Platform to Google CloudExtending Twitter's Data Platform to Google Cloud
Extending Twitter's Data Platform to Google Cloud
 
Event-Driven Messaging and Actions using Apache Flink and Apache NiFi
Event-Driven Messaging and Actions using Apache Flink and Apache NiFiEvent-Driven Messaging and Actions using Apache Flink and Apache NiFi
Event-Driven Messaging and Actions using Apache Flink and Apache NiFi
 
Securing Data in Hybrid on-premise and Cloud Environments using Apache Ranger
Securing Data in Hybrid on-premise and Cloud Environments using Apache RangerSecuring Data in Hybrid on-premise and Cloud Environments using Apache Ranger
Securing Data in Hybrid on-premise and Cloud Environments using Apache Ranger
 
Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...
Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...
Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...
 
Computer Vision: Coming to a Store Near You
Computer Vision: Coming to a Store Near YouComputer Vision: Coming to a Store Near You
Computer Vision: Coming to a Store Near You
 
Big Data Genomics: Clustering Billions of DNA Sequences with Apache Spark
Big Data Genomics: Clustering Billions of DNA Sequences with Apache SparkBig Data Genomics: Clustering Billions of DNA Sequences with Apache Spark
Big Data Genomics: Clustering Billions of DNA Sequences with Apache Spark
 

Recently uploaded

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
 

Recently uploaded (20)

Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 

IS OLAP DEAD IN THE AGE OF BIG DATA?

  • 1. IS OLAP DEAD IN THE AGE OF BIG DATA? AJAY ANAND, VP Products, Kyvos Insights Inc. Yogesh Joshi, Head of Big Data and Analytics, AIG
  • 2. AGENDA •  Why OLAP? •  Common implementation scenarios with Hadoop •  Issues with traditional tools connecting to Big Data •  OLAP on Hadoop: ROLAP, HOLAP, in-memory MOLAP, distributed MOLAP on disk •  The Kyvos approach •  Use Cases •  Using OLAP for Risk Analysis •  Q&A
  • 3. WHY OLAP? •  What OLAP can provide: •  Fast, interactive insights •  Ad hoc analysis •  Visual exploration, slice and dice, drill down •  Multi-dimensional view of data •  BUT, traditional OLAP solutions struggle with •  Massive increase in business data volume •  Explosion of cardinality (granularity) and dimensions •  Variety of data sources
  • 4. WHAT DO USERS WANT? •  Self Service, Interactive Analytics •  On Big Data •  At any scale, with all kinds of datasets •  With instant response times, no waiting
  • 5. BIG DATA SCENARIO HADOOP Cost effective Scalable Flexible Hard to use Not interactive Transactional Data Customer Interaction Internet of Things Web Interaction Logs Product Usage Logs Social Media Interactions System Logs Sales, Inventory, Revenue Audit logs Operational Data Security Logs Issues: Accessibility, Ease of use, Support for high performance, interactive analytics Business Analyst
  • 6. COMMON BIG DATA SCENARIO Data Mart / EDW OLAP CubeHADOOP Analytics / Visualization Tool Transform and Process on Hadoop, Load into DBMS •  Transactional data •  Clickstream data •  Log files •  Other structured and unstructured data
  • 7. ISSUES Data Warehouse / DBMS OLAP Cube HADOOP Analytics / Visualization Tool Transform and Process on Hadoop, Load into DBMS •  Transactional data •  Clickstream data •  Log files •  Other structured and unstructured data SCALABILITY, PERFORMANCE LIMITATIONS LATENCY
  • 8. OLAP ON HADOOP •  Approaches •  ROLAP / HOLAP on Hive / Impala •  In-memory MOLAP •  MOLAP on Hadoop
  • 9. KYVOS SOLUTION: MOLAP ON HADOOP KYVOS •  Dashboards •  Interactive visualizations •  Explore, slice and dice, drill down LOAD HADOOP CUBES ON HADOOP TRANSFORM •  Transactional data •  Clickstream data •  Log files •  Other structured and unstructured data
  • 14. USE CASES • Entravision: • Consumer behavior analysis for Latino market • Moving from sample and survey data (28K self reported diaries) to empirical measurements on 15M+ adults • Drill down to lowest levels of granularity • Transactional data, purchase behavior, household characteristics, consumer characteristics • Precise measurability to prove efficiencies and ROI for media planning
  • 15. USE CASES •  Telecom subscriber profiling •  20M subscribers •  500B+ rows of data •  60 days usage •  96 node cluster •  Hourly incremental builds
  • 16. USE CASES •  Risk analysis for financial services / insurance •  Operational analytics •  Web analytics for online shopping in the travel industry •  Set top data analytics
  • 17. RISK ANALYSIS •  Yogesh Joshi, Head of Big Data and Analytics, AIG
  • 18. Q&A •  Join us at Booth S5 •  www.kyvosinsights.com