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Business Intelligence 3.0
(and the Emergence of Data Lake)
1 Cheow Lan Lake, Thailand
โกเมษ​​จันทวิมล
January 31 2559
Komes Chandavimol
หลักสูตร ปริญญาโท Big Data Engineering คณะวิศวกรรมศาสตร์
มหาวิทยาลัย ธุรกิจบัณฑิต
Business Intelligence
The set of Techniques and Tools for the Transformation of
Raw data into meaningful and useful Information for business
analysis purposes, Wikipedia
2
BI
Techniques and ToolsRaw data Information
Business Intelligence 1.0
What will I get my report then? That not what I want?
 Business Request for Information
 IT/Data Analyst query in the database/data warehouse
 IT/Data Analyst provide the report
BI 1.0 - Delivery to Customer
3Defining Business Intelligence 3.0, Lachlan James (2014)
BI 1.0 – Delivery to Customer
4
BI
BI
Present
Aggregate
Defining Business Intelligence 3.0, Lachlan James (2014)
 Batch Processing
 BI Tools Usage – for only some group/community of people
 IT Control
Stand Alone Reports
Business Intelligence 2.0
5
I can explore a wide range of data assets; I prefer to
blend data but my report differ from yours
 ERP, CRM, Data Warehouse
 A single point of view
 With a centralized BI tool
 Business Analysts can explore the data
in the Web Portal with BI Tools and predefined reports
BI 2.0 - Creation and Delivery for Consumers
Defining Business Intelligence 3.0, Lachlan James (2014)
BI 2.0 Creation and Delivery to Consumers
6
Explore
Predict
Defining Business Intelligence 3.0, Lachlan James (2014)
 Real time via any device Web Portal
 Centralized BI Tools – Business Analyst can explore
 Hybrid Control
Web Portal
Business Intelligence 2.5
I can use any tool, I can blend data rapidly (if I can find it), it was
so simple but now
 BI 2.0 ++ (Agile BI, SOA , Enterprise Search, Visualization)
 Give Business more power to BI Tools
 Less complicated to IT
On the fly Data Federation
7
Business Intelligence 3.0
I collaborate via any devices with content, harness information on the
fly and drive outcome
 Focus on Collaborate workgroup
 Self regulate, Self governance in data management
 Interact between customer, employee, regulators and third parties
 No Bottleneck from IT
 Include Big Data, Cloud, IoT and Social integration
Creation Delivery and Management for Consumers 8
Defining Business Intelligence 3.0, Lachlan James (2014)
BI 3.0 - Creation Delivery and Management
9
Anticipate
Enrich
Self-Service BI with Analytic 3.0
The Journey of Business Intelligence
3.0
10
BI 1.0 BI 2.0 BI 3.0
Functionality Present and
Aggregate
Explore and Predict Anticipate and Enrich
Frequency Monthly/Detail Weekly/Daily/Summary Real-time/Process
Level of Focus Community Enterprise Collaborative
Processing Batch Near Real-time In-Process
Data Products Information Intelligence Insight
Foundation/
Influence
Delivery Only Creation + Delivery Creation + Delivery
+ Automation
Defining Business Intelligence 3.0, Lachlan James (2014)
https://public.tableau.com/profile/ifpri.td7290#!/vizhome/2014GHI/2014GHI
Understand the needs of BI 3.0 users
 A set of Tools and Techniques that
 Delivery Intelligence without making users work for it
 Delivery to Right Data to the right Users at the right time
 Focus on Scalability + Usability
 Provide Self-Guided content creation, delivery and analysis
 Support Multi-Device User interface, anywhere, anytime
 Support Collaborative methodology
 Include Analytics 3.0, Data Discovery, Advanced Visualization, Visual
Analytics, Business Discovery, Self Serve Business
12
Source: Forrester Research’s James Kobielus
Understand the needs of BI 3.0
platform
 Technology should be in place to enable organization
to acquire, store, combine, and enrich huge volume
of unstructured and structured data in raw format
 Ability to perform analytics, real-time and near real-
time data scale , on these huge volume in iterative
way
13
Find the tools!
 Spreadsheet?
 Database?
 Data Mart?
 Data Warehouse?
14
Source: Forrester Research’s James Kobielus
Tools that support these!
15
http://www.adweek.com/prnewser/how-many-times-do-the-worlds-social-media-users-click-every-minute/117427
https://www.domo.com/learn/data-never-sleeps-3-0
The Emergence of Big Data Tools
16
HADOOP
17
Analytics 3.0
Data Mining Tools
18
Data Discovery and Visualization Tools
How to apply to current environment?
19
Traditional Data Warehouse
20
http://hortonworks.com/blog/optimize-your-data-architecture-with-hadoop/
New Data Management Architecture
21
http://hortonworks.com/blog/optimize-your-data-architecture-with-hadoop/
New Data Management Architecture
22
http://hortonworks.com/blog/optimize-your-data-architecture-with-hadoop/
Data Lake
23
https://www.digitalnewsasia.com/business/forget-data-warehousing-its-data-lakes-now
Data Lake
A single place to store every type of data in its native format
with no fixed limits on account size or file size, high throughput
to increase analytic performance and native integration with the
Hadoop ecosystem.
25
Reference: James Serra's Blog
Data Lake Development with Big Data , Pradeep Pasupuleti (2015)
https://www.digitalnewsasia.com/business/forget-data-warehousing-its-data-lakes-now
Data Lake Processes
26
www.emc.com
Data Lake and Data Warehouse
27
Hadoop Distributed Compared,BlazeClan Technology,2015
Data Lake and Data Warehouse
28
Hadoop Distributed Compared,BlazeClan Technology,2015
Data Lakes
29
http://www.kdnuggets.com/2015/09/data-lake-vs-data-warehouse-key- differences.html
Data Lake
 Type of Data
 Raw Data
 Derived Data
 Aggregated Data
 Type of Environment
 Discovery Environment
 Production Environment
30
The Definition of Data Lake, John O’Brien(2015)
How the Data Lake works?
31
http://www.clearpeaks.com/blog/category/tableau
Traditional Enterprise Data warehouse
New Data Management Architecture
32
http://hortonworks.com/blog/optimize-your-data-architecture-with-hadoop/
33
http://www.kdnuggets.com/2014/05/big-data-landscape-v30-
analyzed.html
Data Lake Maturity
35
The Definition of Data Lake, John O’Brien(2015)
4 Maturity Stages of Data Lake
 Stage 1 – Pilot Project (Understand the Technology)
 Stage 2 – Productionize Hadoop and its capabilities
 Stage 3 – Proactive consolidate data to (Big) Data Analytics
 Stage 4 – Platform the Data Lake to Core Competency
36
The Definition of Data Lake, John O’Brien(2015)
Putting the Data Lake to Work, Teradata, Hortonworks (2015)
Stage 1 – Pilot Project
 Handling data at scale
 Involves getting the plumbing in place and learning to acquire
and transform data at scale.
 The analytics may be quite simple, but much is learned about
making Hadoop work the way you desire.
37
The Definition of Data Lake, John O’Brien(2015)
Putting the Data Lake to Work, Teradata, Hortonworks (2015)
Stage 2– Productionize Hadoop
and its capabilities
 Involves improving the ability to transform and analyze data.
 Find the tools that are most appropriate to their skillset
 Acquiring more data and build applications.
38
The Definition of Data Lake, John O’Brien(2015)
Putting the Data Lake to Work, Teradata, Hortonworks (2015)
Stage 3 – Proactive consolidate data to
(Big) Data Analytics
 Involves getting data and analytics into the hands of as many
people as possible.
 It is in this stage that the data lake and the enterprise data
warehouse start to work in unison, each playing its role.
 Started with a data lake eventually added an enterprise data
warehouse to operationalize its data.
39
The Definition of Data Lake, John O’Brien(2015)
Putting the Data Lake to Work, Teradata, Hortonworks (2015)
Big Data Analytics
40
http://dataofthings.blogspot.com/2014/04/the-bbbt-sessions-hortonworks-big-data.html
Data Lake and Big Data Analytics
41http://hortonworks.com/blog/big-data-refinery-fuels-next-generation-data-architecture/
Stage 4 – Platform the Data Lake to
Core Competency
 Enhance Enterprise Capabilities are added to the data lake.
 Few companies have reached this level of maturity, but many
will as the use of big data grows,
 Require Data governance, compliance, security, and auditing
(and incorporate to Company Data Strategy)
42
The Technology of the Business Data Lake, Capgemini (2013)
Business Data Lake
43
The Technology of the Business Data Lake, Capgemini (2014)
The Data Lake Unifies Data Discovery,
Data Science, and BI 3.0
44
Big Data
Self Serve Business
Data Science
Machine Learning
Visual Analytics
Business Discovery
Deep Learning
Self Serve Business
Hadoop
Feature Engineering
Spark
Business Intelligence 3.0
YARN
Predictive Analytics Hive
Data Lake
Data Visualization
Graph Analytics
Big Data
Questions?
46

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Business intelligence 3.0 and the data lake

  • 1. Business Intelligence 3.0 (and the Emergence of Data Lake) 1 Cheow Lan Lake, Thailand โกเมษ​​จันทวิมล January 31 2559 Komes Chandavimol หลักสูตร ปริญญาโท Big Data Engineering คณะวิศวกรรมศาสตร์ มหาวิทยาลัย ธุรกิจบัณฑิต
  • 2. Business Intelligence The set of Techniques and Tools for the Transformation of Raw data into meaningful and useful Information for business analysis purposes, Wikipedia 2 BI Techniques and ToolsRaw data Information
  • 3. Business Intelligence 1.0 What will I get my report then? That not what I want?  Business Request for Information  IT/Data Analyst query in the database/data warehouse  IT/Data Analyst provide the report BI 1.0 - Delivery to Customer 3Defining Business Intelligence 3.0, Lachlan James (2014)
  • 4. BI 1.0 – Delivery to Customer 4 BI BI Present Aggregate Defining Business Intelligence 3.0, Lachlan James (2014)  Batch Processing  BI Tools Usage – for only some group/community of people  IT Control Stand Alone Reports
  • 5. Business Intelligence 2.0 5 I can explore a wide range of data assets; I prefer to blend data but my report differ from yours  ERP, CRM, Data Warehouse  A single point of view  With a centralized BI tool  Business Analysts can explore the data in the Web Portal with BI Tools and predefined reports BI 2.0 - Creation and Delivery for Consumers Defining Business Intelligence 3.0, Lachlan James (2014)
  • 6. BI 2.0 Creation and Delivery to Consumers 6 Explore Predict Defining Business Intelligence 3.0, Lachlan James (2014)  Real time via any device Web Portal  Centralized BI Tools – Business Analyst can explore  Hybrid Control Web Portal
  • 7. Business Intelligence 2.5 I can use any tool, I can blend data rapidly (if I can find it), it was so simple but now  BI 2.0 ++ (Agile BI, SOA , Enterprise Search, Visualization)  Give Business more power to BI Tools  Less complicated to IT On the fly Data Federation 7
  • 8. Business Intelligence 3.0 I collaborate via any devices with content, harness information on the fly and drive outcome  Focus on Collaborate workgroup  Self regulate, Self governance in data management  Interact between customer, employee, regulators and third parties  No Bottleneck from IT  Include Big Data, Cloud, IoT and Social integration Creation Delivery and Management for Consumers 8 Defining Business Intelligence 3.0, Lachlan James (2014)
  • 9. BI 3.0 - Creation Delivery and Management 9 Anticipate Enrich Self-Service BI with Analytic 3.0
  • 10. The Journey of Business Intelligence 3.0 10 BI 1.0 BI 2.0 BI 3.0 Functionality Present and Aggregate Explore and Predict Anticipate and Enrich Frequency Monthly/Detail Weekly/Daily/Summary Real-time/Process Level of Focus Community Enterprise Collaborative Processing Batch Near Real-time In-Process Data Products Information Intelligence Insight Foundation/ Influence Delivery Only Creation + Delivery Creation + Delivery + Automation Defining Business Intelligence 3.0, Lachlan James (2014)
  • 12. Understand the needs of BI 3.0 users  A set of Tools and Techniques that  Delivery Intelligence without making users work for it  Delivery to Right Data to the right Users at the right time  Focus on Scalability + Usability  Provide Self-Guided content creation, delivery and analysis  Support Multi-Device User interface, anywhere, anytime  Support Collaborative methodology  Include Analytics 3.0, Data Discovery, Advanced Visualization, Visual Analytics, Business Discovery, Self Serve Business 12 Source: Forrester Research’s James Kobielus
  • 13. Understand the needs of BI 3.0 platform  Technology should be in place to enable organization to acquire, store, combine, and enrich huge volume of unstructured and structured data in raw format  Ability to perform analytics, real-time and near real- time data scale , on these huge volume in iterative way 13
  • 14. Find the tools!  Spreadsheet?  Database?  Data Mart?  Data Warehouse? 14 Source: Forrester Research’s James Kobielus
  • 15. Tools that support these! 15 http://www.adweek.com/prnewser/how-many-times-do-the-worlds-social-media-users-click-every-minute/117427 https://www.domo.com/learn/data-never-sleeps-3-0
  • 16. The Emergence of Big Data Tools 16
  • 18. Analytics 3.0 Data Mining Tools 18 Data Discovery and Visualization Tools
  • 19. How to apply to current environment? 19
  • 21. New Data Management Architecture 21 http://hortonworks.com/blog/optimize-your-data-architecture-with-hadoop/
  • 22. New Data Management Architecture 22 http://hortonworks.com/blog/optimize-your-data-architecture-with-hadoop/
  • 24.
  • 25. Data Lake A single place to store every type of data in its native format with no fixed limits on account size or file size, high throughput to increase analytic performance and native integration with the Hadoop ecosystem. 25 Reference: James Serra's Blog Data Lake Development with Big Data , Pradeep Pasupuleti (2015) https://www.digitalnewsasia.com/business/forget-data-warehousing-its-data-lakes-now
  • 27. Data Lake and Data Warehouse 27 Hadoop Distributed Compared,BlazeClan Technology,2015
  • 28. Data Lake and Data Warehouse 28 Hadoop Distributed Compared,BlazeClan Technology,2015
  • 30. Data Lake  Type of Data  Raw Data  Derived Data  Aggregated Data  Type of Environment  Discovery Environment  Production Environment 30 The Definition of Data Lake, John O’Brien(2015)
  • 31. How the Data Lake works? 31 http://www.clearpeaks.com/blog/category/tableau Traditional Enterprise Data warehouse
  • 32. New Data Management Architecture 32 http://hortonworks.com/blog/optimize-your-data-architecture-with-hadoop/
  • 34.
  • 35. Data Lake Maturity 35 The Definition of Data Lake, John O’Brien(2015)
  • 36. 4 Maturity Stages of Data Lake  Stage 1 – Pilot Project (Understand the Technology)  Stage 2 – Productionize Hadoop and its capabilities  Stage 3 – Proactive consolidate data to (Big) Data Analytics  Stage 4 – Platform the Data Lake to Core Competency 36 The Definition of Data Lake, John O’Brien(2015) Putting the Data Lake to Work, Teradata, Hortonworks (2015)
  • 37. Stage 1 – Pilot Project  Handling data at scale  Involves getting the plumbing in place and learning to acquire and transform data at scale.  The analytics may be quite simple, but much is learned about making Hadoop work the way you desire. 37 The Definition of Data Lake, John O’Brien(2015) Putting the Data Lake to Work, Teradata, Hortonworks (2015)
  • 38. Stage 2– Productionize Hadoop and its capabilities  Involves improving the ability to transform and analyze data.  Find the tools that are most appropriate to their skillset  Acquiring more data and build applications. 38 The Definition of Data Lake, John O’Brien(2015) Putting the Data Lake to Work, Teradata, Hortonworks (2015)
  • 39. Stage 3 – Proactive consolidate data to (Big) Data Analytics  Involves getting data and analytics into the hands of as many people as possible.  It is in this stage that the data lake and the enterprise data warehouse start to work in unison, each playing its role.  Started with a data lake eventually added an enterprise data warehouse to operationalize its data. 39 The Definition of Data Lake, John O’Brien(2015) Putting the Data Lake to Work, Teradata, Hortonworks (2015)
  • 41. Data Lake and Big Data Analytics 41http://hortonworks.com/blog/big-data-refinery-fuels-next-generation-data-architecture/
  • 42. Stage 4 – Platform the Data Lake to Core Competency  Enhance Enterprise Capabilities are added to the data lake.  Few companies have reached this level of maturity, but many will as the use of big data grows,  Require Data governance, compliance, security, and auditing (and incorporate to Company Data Strategy) 42 The Technology of the Business Data Lake, Capgemini (2013)
  • 43. Business Data Lake 43 The Technology of the Business Data Lake, Capgemini (2014)
  • 44. The Data Lake Unifies Data Discovery, Data Science, and BI 3.0 44 Big Data Self Serve Business Data Science Machine Learning Visual Analytics Business Discovery Deep Learning Self Serve Business Hadoop Feature Engineering Spark Business Intelligence 3.0 YARN Predictive Analytics Hive Data Lake Data Visualization Graph Analytics Big Data
  • 45.