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Data warehouse implementation
“ What is the Challenge ? “

  – Faster processing of OLAP queries


Requirements of a Data Warehouse system
   Efficient cube computation
   Better access methods
   Efficient query processing
Cube computation

COMPUTE CUBE OPERATOR
      Definition :
                       “ It computes the aggregates over all subsets of the
                                 dimensions specified in the operation “
     Syntax :
                       Compute cube cubename
Example
Consider we define the data cube for an electronic store “Best Electronics”
                      Dimensions are :
                                City
                                Item
                                Year

           Measure :
                       Sales_in_dollars
Cube Operation
•   Cube definition and computation in DMQL
         define cube sales[item, city, year]: sum(sales_in_dollars)
         compute cube sales
•   Transform it into a SQL-like language (with a new operator cube by,
    introduced by Gray et al.’96)                                 ()
         SELECT item, city, year, SUM (amount)
         FROM SALES                                  (city)        (item)       (year)

        CUBE BY item, city, year
•   Need compute the following Group-Bys
                                             (city, item)    (city, year)    (item, year)
        (date, product, customer),
        (date,product),(date, customer), (product, customer),
        (date), (product), (customer)                     (city, item, year)
        ()                                                                        4
Efficient Data Cube Computation
• Data cube can be viewed as a lattice of cuboids
   – The bottom-most cuboid is the base cuboid
   – The top-most cuboid (apex) contains only one cell
   – How many cuboids in an n-dimensional cube with L levels?
                         n
                     T = ∏ ( Li + )
                                 1
                        i= 1
• Materialization of data cube
   – Materialize every (cuboid) (full materialization), none (no
     materialization), or some (partial materialization)
   – Selection of which cuboids to materialize
      • Based on size, sharing, access frequency, etc.

                                                                   5
Iceberg Cube
• Computing only the cuboid cells whose count
  or other aggregates satisfying the condition like
            HAVING COUNT(*) >= minsup

   Motivation
     Only a small portion of cube cells may be “above the water’’

      in a sparse cube
     Only calculate “interesting” cells—data above certain

      threshold
     Avoid explosive growth of the cube

        Suppose 100 dimensions, only 1 base cell. How many aggregate cells if

                                                                           6
Compute cube operator
 •   The statement “ compute cube sales “

 •   It explicitly instructs the system to compute the sales aggregate cuboids for all the subsets of the set { item,
     city, year}

 •   Generates a lattice of cuboids making up a 3-D data cube ‘sales’

 •   Each cuboid in the lattice corresponds to a subset




                                    Figure from Data Mining Concepts & Techniques
                                          By Jiawei Han & Micheline Kamber
                                                      Page # 72
Compute cube operator

   Advantages

       – Computes all the cuboids for the cube in advance
       – Online analytical processing needs to access different cuboids for different queries.
       – Precomputation leads to fast response time

   Disadvantages
       – Required storage space may explode if all of the cuboids in the data cube are
         precomputed

  •   Consider the following 2 cases for n-dimensional cube

       – Case 1 : Dimensions have no hierarchies

            • Then the total number of cuboids computed for a n-dimensional cube         =   2n

       – Case 2: Dimensions have hierarchies

            • Then the total number of cuboids computed for a n-dimensional cube         =


                        » Where Li is the number of levels associated with dimension i
Multiway Array Aggregation
    “ What is chunking ?”

•    MOLAP uses multidimensional array for data storage

•    Chunk is obtained by partitioning the multidimensional array such that it
     is small enough to fit in the memory available for cube computation

So from the above 2 points we get :

“ Chunking is a method for dividing the n-dimensional array into small n-
   dimensional chunks “
Multiway Array Aggregation

• It is a technique used for the computation of data cube
• It is used for MOLAP cube construction
Example

•   Consider 3-D data array
     • Dimensions are A,B,C
     • Each dimension is partitioned into 4
       equalized partitions
          • A : a0,a1,a2,a3
          • B : b0,b1,b2,b3
          • C : c0,c1,c2,c3


     • 3-D array is partitioned into 64 chunks as
       shown in the figure




                                                    Figure from Data Mining Concepts & Techniques
                                                           By Jiawei Han & Micheline Kamber
                                                                       Page # 76
Multiway Array Aggregation (contd )


   •   The cuboids that make up the cube are

        – Base cuboid ABC
            • From which all other cuboids are
              generated
            • It is already computed and corresponds
              to given 3-D array


        – 2-D cuboids AB,AC,BC
        – 1-D cuboids A,B,C
        – 0-D cuboid (apex cuboid)




                                                       Figure from Data Mining Concepts &
                                                       Techniques
                                                       By Jiawei Han & Micheline Kamber
                                                       Page # 76
Better access methods
For efficient data accessing :
• Materialized View
• Index structures
     • Bitmap Indexing – allows quick searching on Data
       Cubes, through record_ID lists.
     • Join Indexing – creates a joinable rows of two
       relations from a relational database.
Materialized View

“ Materialized views contains aggregate data (cuboids)
   derived from a fact table in order to minimize the
   query response time “

There are 3 kinds of materialization
       (Given a base cuboid )
1. No Materialization
   –      Precompute only the base cuboid
         • “ Slow response time ”
2. Full Materialization
   –      Precompute all of the cuboids
         • “ Large storage space “
3. Partial Materialization
   –      Selectively compute a subset of the cuboids
         • “ Mix of the above “
Bitmap Indexing
   •     Used for quick searching in data cubes
   •     Features
          – A distinct bit vector Bv ,for each value v in the domain of the attribute
          – If the domain has n values then the bitmap index has n bit vectors


Example

Dimensions
       • Item
       • city
Where:
H=Home entertainment, C=Computer
P=Phone, S=Security
V=Vancouver, T=Toronto
Join Indexing
• It is useful in maintaining the relationship between the foreign key
  and its matching primary key
Consider the sales fact table and the dimension tables for location and item
Join Indexing
Efficient query processing
• Query processing proceeds as follows given materialized
  views :

   – Determine which operations should be performed on the available
     cuboids
       • Transforming operations (selection, roll-up, drill down,…) specified in the query into
         corresponding sql and/or OLAP operations.


   – Determine to which materialized cuboid(s) the relevant operations
     should be applied
       • Identifying the cuboids for answering the query

       • Select the cuboid with the least cost
Consider a data cube for “Best Electronics” of the form

•   “sales [time, item, location]:sum(sales_in_dollars)
•   Dimension hierarchies used are :
     – “ day<month<quarter<year ” for time
     – “ item_name<brand<type” for item
     – “ street<city<province_or_state<country “ for location

• Query :{ brand,province_or_state} with year = 2000

• Materialized cuboids available are
    •   Cuboid 1: { item_name,city,year}
    •   Cuboid 2: {brand,country,year}
    •   Cuboid 3: {brand,province_or_state,year}
    •   Cuboid 4: {item_name,province_or_state} where year=2000
“ Which of the     above four cuboids should be selected to process
    the query ? “

•   Cuboid 2
     – It cannot be used
                    » Since finer granularity data cannot be generated from coarser granularity data
                    » Here country is more general concept than province_or_state




• Cuboid 1,3,4
     • Can be used
                     • They have the same set or a superset of the dimensions in the query
                     • The selection clause in the query can imply the selection in the cuboid
                     • The abstraction levels for the item and location dimensions are at a finer level
                       than brand and province_or_state respectively
“How would the cost:of each cuboid compare if used to process the query”
      • Cuboid 1
             – Will cost more
                  • Since both item_name and city are at a lower level than brand and
                    province_or_state specified in the query




• Cuboid 3 :
     • Will cost least
         • If there are not many year values associated with items in the cube but there are
           several item_names for each brand
         • Cuboid 3 will be smaller than cuboid 4


• Cuboid 4 :
     • Will cost least
         • If efficient indices are available


 “Hence some cost based estimation is required in order to decide which set of
 cuboids must be selected for query processing “
Indexing OLAP Data: Bitmap Index
 • Index on a particular column
 • Each value in the column has a bit vector: bit-op is fast
 • The length of the bit vector: # of records in the base table
 • The i-th bit is set if the i-th row of the base table has the value for the
   indexed column
 • not suitable for high cardinality domains


     Base table            Index on Region                     Index on Type
Cust   Region     Type RecIDAsia Europe America RecID Retail Dealer
C1     Asia       Retail 1   1     0      0       1     1      0
C2     Europe     Dealer 2   0     1      0       2     0      1
C3     Asia       Dealer 3   1     0      0       3     0      1
C4     America    Retail 4   0     0      1       4     1      0
C5     Europe     Dealer 5   0     1      0       5     0      1
                                                                                 21
Indexing OLAP Data: Join Indices
•   Join index: JI(R-id, S-id) where R (R-id, …)  S (S-id,
    …)
•   Traditional indices map the values to a list of record
    ids
     – It materializes relational join in JI file and speeds
        up relational join
•   In data warehouses, join index relates the values of
    the dimensions of a start schema to rows in the fact
    table.
     – E.g. fact table: Sales and two dimensions city and
        product
          • A join index on city maintains for each distinct
            city a list of R-IDs of the tuples recording the
            Sales in the city
     – Join indices can span multiple dimensions
                                                               22
Efficient Processing OLAP Queries
•   Determine which operations should be performed on the available cuboids
     – Transform drill, roll, etc. into corresponding SQL and/or OLAP operations, e.g., dice
        = selection + projection
•   Determine which materialized cuboid(s) should be selected for OLAP op.
     – Let the query to be processed be on {brand, province_or_state} with the condition
        “year = 2004”, and there are 4 materialized cuboids available:
         1) {year, item_name, city}
         2) {year, brand, country}
         3) {year, brand, province_or_state}
         4) {item_name, province_or_state} where year = 2004
         Which should be selected to process the query?
•   Explore indexing structures and compressed vs. dense array structs in MOLAP
                                                                                        23
From data warehousing to data mining




                                       24
Data Warehouse Usage
•   Three kinds of data warehouse applications
     – Information processing
         • supports querying, basic statistical analysis, and reporting using
           crosstabs, tables, charts and graphs
     – Analytical processing
         • multidimensional analysis of data warehouse data
         • supports basic OLAP operations, slice-dice, drilling, pivoting
     – Data mining
         • knowledge discovery from hidden patterns
         • supports associations, constructing analytical models, performing
           classification and prediction, and presenting the mining results
           using visualization tools
                                                                                25
From On-Line Analytical Processing (OLAP)
         to On Line Analytical Mining (OLAM)
• Why online analytical mining?
  – High quality of data in data warehouses
      • DW contains integrated, consistent, cleaned data
  – Available information processing structure surrounding data
    warehouses
      • ODBC, OLEDB, Web accessing, service facilities, reporting
        and OLAP tools
  – OLAP-based exploratory data analysis
      • Mining with drilling, dicing, pivoting, etc.
  – On-line selection of data mining functions
      • Integration and swapping of multiple mining functions,
        algorithms, and tasks

                                                                    26
An OLAM System Architecture
Mining query                                  Mining result      Layer4
                                                              User Interface
                        User GUI API
                                                                 Layer3
      OLAM                                    OLAP
      Engine                                  Engine          OLAP/OLAM

                         Data Cube API


                                                                 Layer2
                           MDDB
                                                                 MDDB
                                              Meta
                                              Data
Filtering&Integration    Database API         Filtering
                                                                 Layer1
                          Data cleaning     Data
        Databases                                                Data
                         Data integration Warehouse            Repository
                                                                      27
OLAP APPLICATIONS
•   Financial Applications
•   Activity-based costing (resource allocation)
•   Budgeting
•   Marketing/Sales Applications
•   Market Research Analysis
•   Sales Forecasting
•   Promotions Analysis
•   Customer Analyses
•   Market/Customer Segmentation
•   Business modeling
•   Simulating business behaviour
•   Extensive, real-time decision support system for managers
BENEFITS OF USING OLAP

•   OLAP helps managers in decision-making through the multidimensional data
    views that it is capable of providing, thus increasing their productivity.

•   OLAP applications are self-sufficient owing to the inherent flexibility provided to
    the organized databases.

•   It enables simulation of business models and problems, through extensive usage
    of analysis-capabilities.

•   In conjunction with data warehousing, OLAP can be used to provide reduction in
    the application backlog, faster information retrieval and reduction in query drag..

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Datacube

  • 2. “ What is the Challenge ? “ – Faster processing of OLAP queries Requirements of a Data Warehouse system  Efficient cube computation  Better access methods  Efficient query processing
  • 3. Cube computation COMPUTE CUBE OPERATOR  Definition : “ It computes the aggregates over all subsets of the dimensions specified in the operation “ Syntax : Compute cube cubename Example Consider we define the data cube for an electronic store “Best Electronics” Dimensions are : City Item Year Measure : Sales_in_dollars
  • 4. Cube Operation • Cube definition and computation in DMQL define cube sales[item, city, year]: sum(sales_in_dollars) compute cube sales • Transform it into a SQL-like language (with a new operator cube by, introduced by Gray et al.’96) () SELECT item, city, year, SUM (amount) FROM SALES (city) (item) (year) CUBE BY item, city, year • Need compute the following Group-Bys (city, item) (city, year) (item, year) (date, product, customer), (date,product),(date, customer), (product, customer), (date), (product), (customer) (city, item, year) () 4
  • 5. Efficient Data Cube Computation • Data cube can be viewed as a lattice of cuboids – The bottom-most cuboid is the base cuboid – The top-most cuboid (apex) contains only one cell – How many cuboids in an n-dimensional cube with L levels? n T = ∏ ( Li + ) 1 i= 1 • Materialization of data cube – Materialize every (cuboid) (full materialization), none (no materialization), or some (partial materialization) – Selection of which cuboids to materialize • Based on size, sharing, access frequency, etc. 5
  • 6. Iceberg Cube • Computing only the cuboid cells whose count or other aggregates satisfying the condition like HAVING COUNT(*) >= minsup  Motivation  Only a small portion of cube cells may be “above the water’’ in a sparse cube  Only calculate “interesting” cells—data above certain threshold  Avoid explosive growth of the cube Suppose 100 dimensions, only 1 base cell. How many aggregate cells if 6
  • 7. Compute cube operator • The statement “ compute cube sales “ • It explicitly instructs the system to compute the sales aggregate cuboids for all the subsets of the set { item, city, year} • Generates a lattice of cuboids making up a 3-D data cube ‘sales’ • Each cuboid in the lattice corresponds to a subset Figure from Data Mining Concepts & Techniques By Jiawei Han & Micheline Kamber Page # 72
  • 8. Compute cube operator  Advantages – Computes all the cuboids for the cube in advance – Online analytical processing needs to access different cuboids for different queries. – Precomputation leads to fast response time  Disadvantages – Required storage space may explode if all of the cuboids in the data cube are precomputed • Consider the following 2 cases for n-dimensional cube – Case 1 : Dimensions have no hierarchies • Then the total number of cuboids computed for a n-dimensional cube = 2n – Case 2: Dimensions have hierarchies • Then the total number of cuboids computed for a n-dimensional cube = » Where Li is the number of levels associated with dimension i
  • 9. Multiway Array Aggregation “ What is chunking ?” • MOLAP uses multidimensional array for data storage • Chunk is obtained by partitioning the multidimensional array such that it is small enough to fit in the memory available for cube computation So from the above 2 points we get : “ Chunking is a method for dividing the n-dimensional array into small n- dimensional chunks “
  • 10. Multiway Array Aggregation • It is a technique used for the computation of data cube • It is used for MOLAP cube construction Example • Consider 3-D data array • Dimensions are A,B,C • Each dimension is partitioned into 4 equalized partitions • A : a0,a1,a2,a3 • B : b0,b1,b2,b3 • C : c0,c1,c2,c3 • 3-D array is partitioned into 64 chunks as shown in the figure Figure from Data Mining Concepts & Techniques By Jiawei Han & Micheline Kamber Page # 76
  • 11. Multiway Array Aggregation (contd ) • The cuboids that make up the cube are – Base cuboid ABC • From which all other cuboids are generated • It is already computed and corresponds to given 3-D array – 2-D cuboids AB,AC,BC – 1-D cuboids A,B,C – 0-D cuboid (apex cuboid) Figure from Data Mining Concepts & Techniques By Jiawei Han & Micheline Kamber Page # 76
  • 12. Better access methods For efficient data accessing : • Materialized View • Index structures • Bitmap Indexing – allows quick searching on Data Cubes, through record_ID lists. • Join Indexing – creates a joinable rows of two relations from a relational database.
  • 13. Materialized View “ Materialized views contains aggregate data (cuboids) derived from a fact table in order to minimize the query response time “ There are 3 kinds of materialization (Given a base cuboid ) 1. No Materialization – Precompute only the base cuboid • “ Slow response time ” 2. Full Materialization – Precompute all of the cuboids • “ Large storage space “ 3. Partial Materialization – Selectively compute a subset of the cuboids • “ Mix of the above “
  • 14. Bitmap Indexing • Used for quick searching in data cubes • Features – A distinct bit vector Bv ,for each value v in the domain of the attribute – If the domain has n values then the bitmap index has n bit vectors Example Dimensions • Item • city Where: H=Home entertainment, C=Computer P=Phone, S=Security V=Vancouver, T=Toronto
  • 15. Join Indexing • It is useful in maintaining the relationship between the foreign key and its matching primary key Consider the sales fact table and the dimension tables for location and item
  • 17. Efficient query processing • Query processing proceeds as follows given materialized views : – Determine which operations should be performed on the available cuboids • Transforming operations (selection, roll-up, drill down,…) specified in the query into corresponding sql and/or OLAP operations. – Determine to which materialized cuboid(s) the relevant operations should be applied • Identifying the cuboids for answering the query • Select the cuboid with the least cost
  • 18. Consider a data cube for “Best Electronics” of the form • “sales [time, item, location]:sum(sales_in_dollars) • Dimension hierarchies used are : – “ day<month<quarter<year ” for time – “ item_name<brand<type” for item – “ street<city<province_or_state<country “ for location • Query :{ brand,province_or_state} with year = 2000 • Materialized cuboids available are • Cuboid 1: { item_name,city,year} • Cuboid 2: {brand,country,year} • Cuboid 3: {brand,province_or_state,year} • Cuboid 4: {item_name,province_or_state} where year=2000
  • 19. “ Which of the above four cuboids should be selected to process the query ? “ • Cuboid 2 – It cannot be used » Since finer granularity data cannot be generated from coarser granularity data » Here country is more general concept than province_or_state • Cuboid 1,3,4 • Can be used • They have the same set or a superset of the dimensions in the query • The selection clause in the query can imply the selection in the cuboid • The abstraction levels for the item and location dimensions are at a finer level than brand and province_or_state respectively
  • 20. “How would the cost:of each cuboid compare if used to process the query” • Cuboid 1 – Will cost more • Since both item_name and city are at a lower level than brand and province_or_state specified in the query • Cuboid 3 : • Will cost least • If there are not many year values associated with items in the cube but there are several item_names for each brand • Cuboid 3 will be smaller than cuboid 4 • Cuboid 4 : • Will cost least • If efficient indices are available “Hence some cost based estimation is required in order to decide which set of cuboids must be selected for query processing “
  • 21. Indexing OLAP Data: Bitmap Index • Index on a particular column • Each value in the column has a bit vector: bit-op is fast • The length of the bit vector: # of records in the base table • The i-th bit is set if the i-th row of the base table has the value for the indexed column • not suitable for high cardinality domains Base table Index on Region Index on Type Cust Region Type RecIDAsia Europe America RecID Retail Dealer C1 Asia Retail 1 1 0 0 1 1 0 C2 Europe Dealer 2 0 1 0 2 0 1 C3 Asia Dealer 3 1 0 0 3 0 1 C4 America Retail 4 0 0 1 4 1 0 C5 Europe Dealer 5 0 1 0 5 0 1 21
  • 22. Indexing OLAP Data: Join Indices • Join index: JI(R-id, S-id) where R (R-id, …)  S (S-id, …) • Traditional indices map the values to a list of record ids – It materializes relational join in JI file and speeds up relational join • In data warehouses, join index relates the values of the dimensions of a start schema to rows in the fact table. – E.g. fact table: Sales and two dimensions city and product • A join index on city maintains for each distinct city a list of R-IDs of the tuples recording the Sales in the city – Join indices can span multiple dimensions 22
  • 23. Efficient Processing OLAP Queries • Determine which operations should be performed on the available cuboids – Transform drill, roll, etc. into corresponding SQL and/or OLAP operations, e.g., dice = selection + projection • Determine which materialized cuboid(s) should be selected for OLAP op. – Let the query to be processed be on {brand, province_or_state} with the condition “year = 2004”, and there are 4 materialized cuboids available: 1) {year, item_name, city} 2) {year, brand, country} 3) {year, brand, province_or_state} 4) {item_name, province_or_state} where year = 2004 Which should be selected to process the query? • Explore indexing structures and compressed vs. dense array structs in MOLAP 23
  • 24. From data warehousing to data mining 24
  • 25. Data Warehouse Usage • Three kinds of data warehouse applications – Information processing • supports querying, basic statistical analysis, and reporting using crosstabs, tables, charts and graphs – Analytical processing • multidimensional analysis of data warehouse data • supports basic OLAP operations, slice-dice, drilling, pivoting – Data mining • knowledge discovery from hidden patterns • supports associations, constructing analytical models, performing classification and prediction, and presenting the mining results using visualization tools 25
  • 26. From On-Line Analytical Processing (OLAP) to On Line Analytical Mining (OLAM) • Why online analytical mining? – High quality of data in data warehouses • DW contains integrated, consistent, cleaned data – Available information processing structure surrounding data warehouses • ODBC, OLEDB, Web accessing, service facilities, reporting and OLAP tools – OLAP-based exploratory data analysis • Mining with drilling, dicing, pivoting, etc. – On-line selection of data mining functions • Integration and swapping of multiple mining functions, algorithms, and tasks 26
  • 27. An OLAM System Architecture Mining query Mining result Layer4 User Interface User GUI API Layer3 OLAM OLAP Engine Engine OLAP/OLAM Data Cube API Layer2 MDDB MDDB Meta Data Filtering&Integration Database API Filtering Layer1 Data cleaning Data Databases Data Data integration Warehouse Repository 27
  • 28. OLAP APPLICATIONS • Financial Applications • Activity-based costing (resource allocation) • Budgeting • Marketing/Sales Applications • Market Research Analysis • Sales Forecasting • Promotions Analysis • Customer Analyses • Market/Customer Segmentation • Business modeling • Simulating business behaviour • Extensive, real-time decision support system for managers
  • 29. BENEFITS OF USING OLAP • OLAP helps managers in decision-making through the multidimensional data views that it is capable of providing, thus increasing their productivity. • OLAP applications are self-sufficient owing to the inherent flexibility provided to the organized databases. • It enables simulation of business models and problems, through extensive usage of analysis-capabilities. • In conjunction with data warehousing, OLAP can be used to provide reduction in the application backlog, faster information retrieval and reduction in query drag..