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OLAP (Online Analytical
    Processing)
              By
       Zalpa Rathod (39)
       Yatin Puthran (37)
       Mayuri Pawar (35)
       Mitesh Patil (33)
OVERVIEW
   INTRODUCTION
   OLAP CUBE
   HISTORY OF OLAP
   OLAP OPERATIONS
   DATAWAREHOUSE
   DATAWAREHOUSE
    ARCHITECHTURE
   DIFFERENCE BETWEEN OLAP &
    OLTP
   TYPES OF OLAP
   APPLICATIONS OF OLAP
INTRODUCTION TO OLAP
   OLAP (online analytical processing) is
    computer processing that enables a
    user to easily and selectively extract and
    view data from different points of view.
   OLAP allows users to analyze database
    information from multiple database
    systems at one time.
   OLAP data is stored in multidimensional
    databases.
AN EXAMPLE…
 Some popular OLAP server software
  programs include:
 Oracle Express Server
 Hyperion Solutions Essbase


   OLAP processing is often used for data
    mining.

   OLAP products are typically designed for
    multiple-user environments, with the cost of
    the software based on the number of users.
THE OLAP CUBE
   An OLAP Cube is a data structure that allows
    fast analysis of data.

   The arrangement of data into cubes overcomes a
    limitation of relational databases.

   It consists of numeric facts called measures which
    are categorized by dimensions.

   The OLAP cube consists of numeric facts called
    measures which are categorized by dimensions.
   A multidimensional cube can combine
    data from disparate data sources and
    store the information in a fashion that is
    logical for business users.
OLAP CUBE
HISTORY OF OLAP
   The term OLAP was created as a slight modification
    of the traditional database term OLTP (Online
    Transaction Processing).

   Databases configured for OLAP employ a
    multidimensional data model, allowing for complex
    analytical and ad-hoc queries with a rapid execution
    time.

   They borrow aspects of navigational databases and
    hierarchical databases that are speedier than their
    relational kind.
/Contd…
   Nigel Pendse has suggested that an alternative
    and perhaps more descriptive term to describe
    the concept of OLAP is Fast Analysis of
    Shared Multidimensional Information
    (FASMI).

   The first product that performed OLAP queries
    was Express, which was released in 1970 (and
    acquired by Oracle in 1995 from Information
    Resources). However, the term did not appear
    until 1993 when it was coined by Ted
    Codd, who has been described as "the father
    of the relational database".
OLAP OPERATIONS
   The user-initiated process of navigating by calling
    for page displays interactively, through the
    specification of slices via rotations and drill
    down/up is sometimes called "slice and dice".

   Slice: A slice is a subset of a multi-dimensional
    array corresponding to a single value for one or
    more members of the dimensions not in the
    subset.

   Dice: The dice operation is a slice on more than
    two dimensions of a data cube (or more than two
    consecutive slices).
   Drill Down/Up: Drilling down or up is a specific
    analytical technique whereby the user navigates among
    levels of data ranging from the most summarized (up) to
    the most detailed (down).

   Roll-up: A roll-up involves computing all of the data
    relationships for one or more dimensions. To do this, a
    computational relationship or formula might be defined.

   Pivot: To change the dimensional orientation of a report
    or page display.

   The output of an OLAP query is typically displayed in a
    matrix (or pivot) format. The dimensions form the row
    and column of the matrix; the measures, the values.
DATA WAREHOUSE
   A data warehouse is a repository of an organization's
    electronically stored data.
   A data warehouse is a
    o subject-oriented,
    o integrated,
    o time-varying,
    o non-volatile
    collection of data that is used primarily in organizational
      decision making.
   The essential components of a data warehousing system are
    the means to:
   Retrieve & Analyze data
   Extract, Transform & Load data
   Manage the data dictionary.
   Data warehouse is a collection
    of data designed to support management
    decision making.

   Data warehouses contain a wide variety of
    data that present a coherent picture of
    business conditions at a single point in time.


   The term data warehousing generally refers
    to the combination of many different
    databases across an entire enterprise.
BENEFITS
 A data warehouse provides a common data
  model for all data of interest regardless of the
  data's source.

 Priorto loading data into the data
  warehouse, inconsistencies are identified and
  resolved. This greatly simplifies reporting and
  analysis.

 Information  in the data warehouse is under the
  control of data warehouse users so that, even if
  the source system data is cleared over time, the
  information in the warehouse can be stored
  safely for extended periods of time.
 Because  they are separate from operational
 systems, data warehouses provide retrieval
 of data without slowing down operational
 systems.

 Datawarehouses facilitate decision support
 system applications such as trend
 reports, exception reports, and reports that
 show actual performance versus goals.

 Data warehouses can work in conjunction
 with and, hence, enhance the value of
 operational business applications, notably
 customer relationship management (CRM)
 systems.
DATA WAREHOUSE ARCHITECHTURE
   Architechture is a conceptualization of how the data
    warehouse is built.

   One possible simple conceptualization of a data
    warehouse architecture consists of the following
    interconnected layers:

   Operational database layer: The source data for the
    data warehouse - An organization's ERP systems fall
    into this layer.

   Informational access layer: The data accessed for
    reporting and analyzing and the tools for reporting and
    analyzing data - Business intelligence tools fall into this
    layer. And the Inmon-Kimball differences about design
    methodology, discussed later in this article, have to do
 Dataaccess layer: The interface between the
 operational and informational access layer -
 Tools to extract, transform, load data into the
 warehouse fall into this layer.

 Metadata  layer: The data directory - This is
 often usually more detailed than an operational
 system data directory. There are dictionaries for
 the entire warehouse and sometimes
 dictionaries for the data that can be accessed by
 a particular reporting and analysis tool.
DATA WAREHOUSING
ARCHITECHURE
 Monitoring & Administration
                                      OLAP servers

                 Metadata
                 Repository
                                                Analysis
                              DATA
              Extract
                                                Query/
External                  WAREHOUSE
              Transform                Serv     Reporting
Sources
              Load                     e
Operational   Refresh                            Data
databases                                       Mining
APPLICATIONS OF
     DATA WAREHOUSES

Data   Mining
Web    Mining
Decision   Support Systems (DSS)
TWO TYPES OF
       DATABASE ACTIVITY

   OLTP (Online-Transaction
    Processing)

   OLAP (Online-Analytical
    Processing)
AT A GLANCE…
   OLTP: On-Line               OLAP: On-Line
    Transaction Processing       Analytical Processing
   Short Transaction both      Long
    query and updates            transactions, usually
   (e.g., update account        Complex queries.
    balance, enroll is
                                (e.g., all statistics about
    courses)
                                 sales, grouped by
   Queries are Simple           department and month)
   (e.g., find account         “Data mining”
    balance, find grade in
                                 operations.
    courses)
                                Infrequent Updates.
   Updates are frequent
   (e.g., Concert
    tickets, seat
    reservations, shopping
DIFFERENCE BETWEEN
        OLTP & OLAP
Item         OLTP                   OLAP

User         IT Professional        Knowledge worker

Functional   Daily task             Decision Making

DB Design    Application oriented   Subject oriented

                                    Historical,
             Up to date, detail,
Data                                multidimensional,
             relational
                                    integrated

Access       Read/write             Read only

DB Size      100 MB-GB              100 GB-TB
TYPES OF OLAP
   Relational OLAP(ROLAP):
    Extended RDBMS with multidimensional data
    mapping to standard relational operation.

   Multidimensional OLAP(MOLAP): Implemented
    operation in multidimensional data.

   Hybrid OnlineAnalytical Processing (HOLAP)
    is a hybrid approach to the solution where the
    aggregated totals are stored in a
    multidimensional database while thedetail data
    is stored in the relational database. This is the
    balance between the data efficiency of the
    ROLAP model and the performance of the
    MOLAP model.
Relational OLAP
   Provides functionality by using relational
    databases and relational query tools to
    store and analyze multidimensional data.
   Build on existing relational technologies
    and represent extension to all those
    companies who already used RDBMS.
   Multidimensional data schema support
    within the RDBMS.
   Data access language and query
    performance are optimized for
    multidimensional data.
   Support for very large databases.
Multidimensional OLAP
   MOLAP extends OLAP functionality to
    MDBMS.
   Best suited to manage, store and analyze
    multidimensional data.
   Proprietary techniques used in MDBMS.
   MDBMS and users visualize the stored
    data as a 3-Dimensional Cube i.e Data
    Cube.
   MOLAP Databases are known to be much
    faster than the ROLAP counter parts.
   Data cubes are held in memory called
    “Cube Cache”
ROLAP v/s MOLAP
Characteristics   ROLAP                MOLAP


SCHEMA            User star Schema     User Data cubes
                  •Additional          •Addition dimensions
                  dimensions can be    require recreation of
                  added dynamically.   data cube.
Database Size     Medium to large      Small to medium


Architecture      Client/Server        Client/Server


Access            Support ad-hoc       Limited to pre-defined
                  requests             dimensions
Characteristics   ROLAP                   MOLAP




Resources         HIGH                    VERY HIGH


Flexibility       HIGH                    LOW


Scalability       HIGH                    LOW


Speed             •Good with small data   •Faster for small to
                  sets.                   medium data sets.
                  •Average for medium     •Average for large
                  to large data set.      data sets.
Implementation of OLAP
             server
   ROLAP:
   Data is stored in tables in relational
    database or extended relational databases.
   They use an RDBMS to manage the
    warehouse data and aggregations using
    often a star schema.
   Advantage:
   Scalable
   Disadvantage:
   Direct access to cells.
 MOLAP:
 Implements the multidimensional view
  by storing data in special
  multidimensional data structures.
 Advantages:
 Fast indexing to pre-computed
  aggregations.
 Only values are stored.
 Disadvantage:
 Not very Scalable
APPLICATIONS OF OLAP
OLE   DB for OLAP
      OLE DB for OLAP (abbreviated ODBO) is
 a Microsoft published specification and an industry
 standard for multi-dimensional data processing.
      ODBO is the standard application
 programming interface (API) for exchanging
 metadata and data between an OLAP server and a
 client on a Windows platform.
      ODBO was specifically designed for Online
 Analytical Processing (OLAP) systems by
 Microsoft as an extension to Object Linking and
 Embedding Database (OLE DB).
/Contd…
Marketing   and sales analysis

Consumer    goods industries

Financial services industry
 (insurance, banks etc)

Database    Marketing
BENEFITS OF OLAP
   One main benefit of OLAP is consistency of
    information and calculations.

   "What if" scenarios are some of the most popular uses
    of OLAP software and are made eminently more possible
    by multidimensional processing.

   It allows a manager to pull down data from an OLAP
    database in broad or specific terms.

   OLAP creates a single platform for all the information
    and business
    needs, planning, budgeting, forecasting, reporting
    and analysis.
References
   1.http://en.wikipedia.org/wiki/Online_analytical_proces
    sing

   2. http://www.dmreview.com/issues/19971101/964-
    l.html

   3. http://en.wikipedia.org/wiki/Extract,_transform,_load

   4. http://www.olapreport.com/Applications.html
THANK YOU!!

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OLAP & Data Warehouse

  • 1. OLAP (Online Analytical Processing) By Zalpa Rathod (39) Yatin Puthran (37) Mayuri Pawar (35) Mitesh Patil (33)
  • 2. OVERVIEW  INTRODUCTION  OLAP CUBE  HISTORY OF OLAP  OLAP OPERATIONS  DATAWAREHOUSE  DATAWAREHOUSE ARCHITECHTURE  DIFFERENCE BETWEEN OLAP & OLTP  TYPES OF OLAP  APPLICATIONS OF OLAP
  • 3. INTRODUCTION TO OLAP  OLAP (online analytical processing) is computer processing that enables a user to easily and selectively extract and view data from different points of view.  OLAP allows users to analyze database information from multiple database systems at one time.  OLAP data is stored in multidimensional databases.
  • 5.  Some popular OLAP server software programs include:  Oracle Express Server  Hyperion Solutions Essbase  OLAP processing is often used for data mining.  OLAP products are typically designed for multiple-user environments, with the cost of the software based on the number of users.
  • 6.
  • 7. THE OLAP CUBE  An OLAP Cube is a data structure that allows fast analysis of data.  The arrangement of data into cubes overcomes a limitation of relational databases.  It consists of numeric facts called measures which are categorized by dimensions.  The OLAP cube consists of numeric facts called measures which are categorized by dimensions.
  • 8. A multidimensional cube can combine data from disparate data sources and store the information in a fashion that is logical for business users.
  • 10. HISTORY OF OLAP  The term OLAP was created as a slight modification of the traditional database term OLTP (Online Transaction Processing).  Databases configured for OLAP employ a multidimensional data model, allowing for complex analytical and ad-hoc queries with a rapid execution time.  They borrow aspects of navigational databases and hierarchical databases that are speedier than their relational kind.
  • 11. /Contd…  Nigel Pendse has suggested that an alternative and perhaps more descriptive term to describe the concept of OLAP is Fast Analysis of Shared Multidimensional Information (FASMI).  The first product that performed OLAP queries was Express, which was released in 1970 (and acquired by Oracle in 1995 from Information Resources). However, the term did not appear until 1993 when it was coined by Ted Codd, who has been described as "the father of the relational database".
  • 12. OLAP OPERATIONS  The user-initiated process of navigating by calling for page displays interactively, through the specification of slices via rotations and drill down/up is sometimes called "slice and dice".  Slice: A slice is a subset of a multi-dimensional array corresponding to a single value for one or more members of the dimensions not in the subset.  Dice: The dice operation is a slice on more than two dimensions of a data cube (or more than two consecutive slices).
  • 13. Drill Down/Up: Drilling down or up is a specific analytical technique whereby the user navigates among levels of data ranging from the most summarized (up) to the most detailed (down).  Roll-up: A roll-up involves computing all of the data relationships for one or more dimensions. To do this, a computational relationship or formula might be defined.  Pivot: To change the dimensional orientation of a report or page display.  The output of an OLAP query is typically displayed in a matrix (or pivot) format. The dimensions form the row and column of the matrix; the measures, the values.
  • 14. DATA WAREHOUSE  A data warehouse is a repository of an organization's electronically stored data.  A data warehouse is a o subject-oriented, o integrated, o time-varying, o non-volatile collection of data that is used primarily in organizational decision making.  The essential components of a data warehousing system are the means to:  Retrieve & Analyze data  Extract, Transform & Load data  Manage the data dictionary.
  • 15. Data warehouse is a collection of data designed to support management decision making.  Data warehouses contain a wide variety of data that present a coherent picture of business conditions at a single point in time.  The term data warehousing generally refers to the combination of many different databases across an entire enterprise.
  • 16.
  • 17. BENEFITS  A data warehouse provides a common data model for all data of interest regardless of the data's source.  Priorto loading data into the data warehouse, inconsistencies are identified and resolved. This greatly simplifies reporting and analysis.  Information in the data warehouse is under the control of data warehouse users so that, even if the source system data is cleared over time, the information in the warehouse can be stored safely for extended periods of time.
  • 18.  Because they are separate from operational systems, data warehouses provide retrieval of data without slowing down operational systems.  Datawarehouses facilitate decision support system applications such as trend reports, exception reports, and reports that show actual performance versus goals.  Data warehouses can work in conjunction with and, hence, enhance the value of operational business applications, notably customer relationship management (CRM) systems.
  • 19. DATA WAREHOUSE ARCHITECHTURE  Architechture is a conceptualization of how the data warehouse is built.  One possible simple conceptualization of a data warehouse architecture consists of the following interconnected layers:  Operational database layer: The source data for the data warehouse - An organization's ERP systems fall into this layer.  Informational access layer: The data accessed for reporting and analyzing and the tools for reporting and analyzing data - Business intelligence tools fall into this layer. And the Inmon-Kimball differences about design methodology, discussed later in this article, have to do
  • 20.  Dataaccess layer: The interface between the operational and informational access layer - Tools to extract, transform, load data into the warehouse fall into this layer.  Metadata layer: The data directory - This is often usually more detailed than an operational system data directory. There are dictionaries for the entire warehouse and sometimes dictionaries for the data that can be accessed by a particular reporting and analysis tool.
  • 21. DATA WAREHOUSING ARCHITECHURE Monitoring & Administration OLAP servers Metadata Repository Analysis DATA Extract Query/ External WAREHOUSE Transform Serv Reporting Sources Load e Operational Refresh Data databases Mining
  • 22. APPLICATIONS OF DATA WAREHOUSES Data Mining Web Mining Decision Support Systems (DSS)
  • 23. TWO TYPES OF DATABASE ACTIVITY  OLTP (Online-Transaction Processing)  OLAP (Online-Analytical Processing)
  • 24. AT A GLANCE…  OLTP: On-Line  OLAP: On-Line Transaction Processing Analytical Processing  Short Transaction both  Long query and updates transactions, usually  (e.g., update account Complex queries. balance, enroll is  (e.g., all statistics about courses) sales, grouped by  Queries are Simple department and month)  (e.g., find account  “Data mining” balance, find grade in operations. courses)  Infrequent Updates.  Updates are frequent  (e.g., Concert tickets, seat reservations, shopping
  • 25. DIFFERENCE BETWEEN OLTP & OLAP Item OLTP OLAP User IT Professional Knowledge worker Functional Daily task Decision Making DB Design Application oriented Subject oriented Historical, Up to date, detail, Data multidimensional, relational integrated Access Read/write Read only DB Size 100 MB-GB 100 GB-TB
  • 26. TYPES OF OLAP  Relational OLAP(ROLAP): Extended RDBMS with multidimensional data mapping to standard relational operation.  Multidimensional OLAP(MOLAP): Implemented operation in multidimensional data.  Hybrid OnlineAnalytical Processing (HOLAP) is a hybrid approach to the solution where the aggregated totals are stored in a multidimensional database while thedetail data is stored in the relational database. This is the balance between the data efficiency of the ROLAP model and the performance of the MOLAP model.
  • 27. Relational OLAP  Provides functionality by using relational databases and relational query tools to store and analyze multidimensional data.  Build on existing relational technologies and represent extension to all those companies who already used RDBMS.  Multidimensional data schema support within the RDBMS.  Data access language and query performance are optimized for multidimensional data.  Support for very large databases.
  • 28. Multidimensional OLAP  MOLAP extends OLAP functionality to MDBMS.  Best suited to manage, store and analyze multidimensional data.  Proprietary techniques used in MDBMS.  MDBMS and users visualize the stored data as a 3-Dimensional Cube i.e Data Cube.  MOLAP Databases are known to be much faster than the ROLAP counter parts.  Data cubes are held in memory called “Cube Cache”
  • 29. ROLAP v/s MOLAP Characteristics ROLAP MOLAP SCHEMA User star Schema User Data cubes •Additional •Addition dimensions dimensions can be require recreation of added dynamically. data cube. Database Size Medium to large Small to medium Architecture Client/Server Client/Server Access Support ad-hoc Limited to pre-defined requests dimensions
  • 30. Characteristics ROLAP MOLAP Resources HIGH VERY HIGH Flexibility HIGH LOW Scalability HIGH LOW Speed •Good with small data •Faster for small to sets. medium data sets. •Average for medium •Average for large to large data set. data sets.
  • 31. Implementation of OLAP server  ROLAP:  Data is stored in tables in relational database or extended relational databases.  They use an RDBMS to manage the warehouse data and aggregations using often a star schema.  Advantage:  Scalable  Disadvantage:  Direct access to cells.
  • 32.  MOLAP:  Implements the multidimensional view by storing data in special multidimensional data structures.  Advantages:  Fast indexing to pre-computed aggregations.  Only values are stored.  Disadvantage:  Not very Scalable
  • 33. APPLICATIONS OF OLAP OLE DB for OLAP OLE DB for OLAP (abbreviated ODBO) is a Microsoft published specification and an industry standard for multi-dimensional data processing. ODBO is the standard application programming interface (API) for exchanging metadata and data between an OLAP server and a client on a Windows platform. ODBO was specifically designed for Online Analytical Processing (OLAP) systems by Microsoft as an extension to Object Linking and Embedding Database (OLE DB).
  • 34. /Contd… Marketing and sales analysis Consumer goods industries Financial services industry (insurance, banks etc) Database Marketing
  • 35. BENEFITS OF OLAP  One main benefit of OLAP is consistency of information and calculations.  "What if" scenarios are some of the most popular uses of OLAP software and are made eminently more possible by multidimensional processing.  It allows a manager to pull down data from an OLAP database in broad or specific terms.  OLAP creates a single platform for all the information and business needs, planning, budgeting, forecasting, reporting and analysis.
  • 36. References  1.http://en.wikipedia.org/wiki/Online_analytical_proces sing  2. http://www.dmreview.com/issues/19971101/964- l.html  3. http://en.wikipedia.org/wiki/Extract,_transform,_load  4. http://www.olapreport.com/Applications.html