UNIT-1 Introduction
Lecture-1 Lecture-2 Lecture-3 Motivation: Why data mining? What is data mining? Data Mining: On what kind of data? Lecture-4 Lecture-5 Data mining functionality Classification of data mining systems Lecture-6 Major issues in data mining
Unit-1 Data warehouse and OLAP
Lecture-7 Lecture-8 Lecture-9 Lecture-10&11 Lecture-12 What is a data warehouse? A multi-dimensional data model Data warehouse architecture Data warehouse implementation From data warehousing to data mining
Lecture-1
Motivation: Why data mining?
Evolution of Database Technology
1960s and earlier: Data Collection and Database Creation
Primitive file processing
Lecture-1 Motivation
Evolution of Database Technology
1970s - early 1980s: Data Base Management Systems   
Hieratical and network database systems Relational database Systems
Query languages: SQL
Transactions, concurrency control and recovery.
On-line transaction processing (OLTP)
Lecture-1 Motivation
Evolution of Database Technology
Mid -1980s - present:
Advanced data models
Extended relational, object-relational
Advanced application-oriented DBMS
spatial, scientific, engineering, temporal, multimedia, active, stream and sensor, knowledgebased
Lecture-1 Motivation
Evolution of Database Technology
Late 1980s-present
Advanced Data Analysis
Data warehouse and OLAP Data mining and knowledge discovery Advanced data mining appliations
Data mining and socity
1990s-present:
  
XML-based database systems
Integration with information retrieval
Data and information integreation
Lecture-1 Motivation
Evolution of Database Technology
Present  future:
New generation of integrated data and information system.
Lecture-1 Motivation
Lecture-2 What Is Data Mining?
What Is Data Mining?
Data mining refers to extracting or mining knowledge from large amounts of data. Mining of gold from rocks or sand Knowledge mining from data, knowledge extraction, data/pattern analysis, data archeology, and data dreding. Knowledge Discovery from data, or KDD
Lecture-2 What is Data Mining?
Data Mining: A KDD Process
Pattern Evaluation
Data mining: the core of knowledge Data Mining discovery process.
Task-relevant Data Data Warehouse Selection
Data Cleaning
Data Integration Databases
Lecture-2 What is Data Mining?
Steps of a KDD Process
1. 2. 3. 4. 5. 6. 7. Data cleaning Data integration Data selection Data transformation Data mining Pattern evaluation Knowledge presentaion
Lecture-2 What is Data Mining?
Steps of a KDD Process
Learning the application domain:  relevant prior knowledge and goals of application Creating a target data set: data selection Data cleaning and preprocessing Data reduction and transformation:  Find useful features, dimensionality/variable reduction, invariant representation.
Lecture-2 What is Data Mining?
Steps of a KDD Process
Choosing functions of data mining
summarization, classification, regression, association, clustering.
Choosing the mining algorithms Data mining: search for patterns of interest Pattern evaluation and knowledge presentation
visualization, transformation, removing redundant patterns, etc.
Use of discovered knowledge
Lecture-2 What is Data Mining?
Architecture of a Typical Data Mining System
Graphical user interface
Pattern evaluation
Data mining engine
Database or data warehouse server
Data cleaning & data integration
Knowledge-base
Filtering
Databases
Data Warehouse
Lecture-2 What is Data Mining?
Data Mining and Business Intelligence
Increasing potential to support business decisions
Making Decisions
Data Presentation Visualization Techniques Data Mining Information Discovery Data Exploration Statistical Analysis, Querying and Reporting
End User
Business Analyst Data Analyst
Data Warehouses / Data Marts OLAP, MDA Data Sources Paper, Files, Information Providers, Database Systems, OLTP
Lecture-2 What is Data Mining?
DBA
Lecture-3 Data Mining: On What Kind of Data?
Data Mining: On What Kind of Data?
Relational databases Data warehouses Transactional databases
Lecture-3 Data Mining: On What kind of data?
Data Mining: On What Kind of Data?
Advanced DB and information repositories
Object-oriented and object-relational databases Spatial databases Time-series data and temporal data Text databases and multimedia databases Heterogeneous and legacy databases WWW
Lecture-3 Data Mining: On What kind of data?
Lecture-4 Data Mining Functionalities
Data Mining Functionalities
Concept description: Characterization and discrimination 
Data can be associated with classes or concepts Ex. AllElectronics store classes of items for sale include computer and printers. Description of class or concept called class/concept description.
Data characterization
Data discrimination
Lecture-4 Data Mining Funcionalities
Data Mining Functionalities
Mining Frequent Patterns, Associations, and Correlations
Frequent patters- patterns occurs frequently Item sets, subsequences and substructures Frequent item set Sequential patterns Structured patterns
Lecture-4 Data Mining Funcionalities
Data Mining Functionalities
Association Analysis
Multi-dimensional vs. single-dimensional association age(X, 20..29) ^ income(X, 20..29K) => buys(X, PC) [support = 2%, confidence = 60%] contains(T, computer) => contains(x, software) [support=1%, confidence=75%]
Lecture-4 Data Mining Funcionalities
Data Mining Functionalities Classification and Prediction
Finding models (functions) that describe and distinguish data classes or concepts for predict the class whose label is unknown E.g., classify countries based on climate, or classify cars based on gas mileage Models: decision-tree, classification rules (ifthen), neural network Prediction: Predict some unknown or
missing numerical values
Lecture-4 Data Mining Funcionalities
Data Mining Functionalities
Cluster analysis
Analyze class-labeled data objects, clustering analyze data objects without consulting a known class label. Clustering based on the principle: maximizing the intra-class similarity and minimizing the interclass similarity
Lecture-4 Data Mining Funcionalities
Data Mining Functionalities
Outlier analysis
Outlier: a data object that does not comply with the general behavior of the model of the data It can be considered as noise or exception but is quite useful in fraud detection, rare events analysis
Trend and evolution analysis
  Trend and deviation: regression analysis Sequential pattern mining, periodicity analysis Similarity-based analysis
Lecture-4 Data Mining Funcionalities
Lecture-5 Data Mining: Classification Schemes
Data Mining: Confluence of Multiple Disciplines
Database Technology Statistics
Information Science
Data Mining
MachineLearning
Visualization
Other Disciplines
Data Mining: Classification Schemes
General functionality
Descriptive data mining
Predictive data mining
Data mining various criteria's:
   Kinds of databases to be mined Kinds of knowledge to be discovered
Kinds of techniques utilized
Kinds of applications adapted
Data Mining: Classification Schemes
Databases to be mined  Relational, transactional, object-oriented, objectrelational, active, spatial, time-series, text, multimedia, heterogeneous, legacy, WWW, etc. Knowledge to be mined  Characterization, discrimination, association, classification, clustering, trend, deviation and outlier analysis, etc.  Multiple/integrated functions and mining at multiple levels
analysis, Web mining, Weblog analysis, etc.
Data Mining: Classification Schemes
Techniques utilized  Database-oriented, data warehouse (OLAP), machine learning, statistics, visualization, neural network, etc. Applications adapted  Retail, telecommunication, banking, fraud analysis, DNA mining, stock market
Lecture-6 Major Issues in Data Mining
Major Issues in Data Mining
Mining methodology and user interaction issues
Mining different kinds of knowledge in databases
Interactive mining of knowledge at multiple levels of abstraction
Incorporation of background knowledge
Data mining query languages and ad-hoc data mining Expression and visualization of data mining results
Handling noise and incomplete data
Pattern evaluation: the interestingness problem
Major Issues in Data Mining
Performance issues
Efficiency and scalability of data mining algorithms Parallel, distributed and incremental mining methods
Major Issues in Data Mining
Issues relating to the diversity of data types
Handling relational and complex types of data Mining information from heterogeneous databases and global information systems (WWW)
Lecture-7
What is Data Warehouse?
What is Data Warehouse?
Defined in many different ways  A decision support database that is maintained separately from the organizations operational database  Support information processing by providing a solid platform of consolidated, historical data for analysis. A data warehouse is a subject-oriented, integrated, time-variant, and nonvolatile collection of data in support of managements decision-making process.W. H. Inmon Data warehousing:  The process of constructing and using data warehouses
Data WarehouseSubjectOriented
Organized around major subjects, such as customer, product, sales. Focusing on the modeling and analysis of data for decision makers, not on daily operations or transaction processing. Provide a simple and concise view around particular subject issues by excluding data that are not useful in the decision support process.
Data WarehouseIntegrated
Constructed by integrating multiple, heterogeneous data sources
relational databases, flat files, on-line transaction records
Data cleaning and data integration techniques are applied.
Ensure consistency in naming conventions, encoding structures, attribute measures, etc. among different data sources
E.g., Hotel price: currency, tax, breakfast covered, etc.
When data is moved to the warehouse, it is converted.
Data WarehouseTime Variant
The time horizon for the data warehouse is significantly longer than that of operational systems.
Operational database: current value data.
Data warehouse data: provide information from a historical perspective (e.g., past 5-10 years)
Every key structure in the data warehouse
 Contains an element of time, explicitly or implicitly But the key of operational data may or may not contain time element.
Data WarehouseNon-Volatile
A physically separate store of data transformed
from the operational environment. Operational update of data does not occur in the data warehouse environment.
Does not require transaction processing, recovery,
and concurrency control mechanisms
Requires only two operations in data accessing: initial loading of data and access of data.
Data Warehouse vs. Operational DBMS
Distinct features (OLTP vs. OLAP): 
User and system orientation: customer vs. market Data contents: current, detailed vs. historical, consolidated Database design: ER + application vs. star + subject View: current, local vs. evolutionary, integrated Access patterns: update vs. read-only but complex queries
Data Warehouse vs. Operational DBMS
OLTP (on-line transaction processing) 
Major task of traditional relational DBMS
Day-to-day operations: purchasing, inventory, banking, manufacturing, payroll, registration, accounting, etc.
OLAP (on-line analytical processing)
 Major task of data warehouse system
Data analysis and decision making
OLTP vs. OLAP
OLTP users function DB design data clerk, IT professional day to day operations application-oriented current, up-to-date detailed, flat relational isolated repetitive read/write index/hash on prim. key short, simple transaction tens thousands 100MB-GB transaction throughput OLAP knowledge worker decision support subject-oriented historical, summarized, multidimensional integrated, consolidated ad-hoc lots of scans complex query millions hundreds 100GB-TB query throughput, response
usage access unit of work # records accessed #users DB size metric
Why Separate Data Warehouse?
High performance for both systems
DBMS tuned for OLTP: access methods, indexing, concurrency control, recovery Warehousetuned for OLAP: complex OLAP queries, multidimensional view, consolidation.
Why Separate Data Warehouse?
Different functions and different data:
missing data: Decision support requires historical data which operational DBs do not typically maintain data consolidation: DS requires consolidation (aggregation, summarization) of data from heterogeneous sources data quality: different sources typically use inconsistent data representations, codes and formats which have to be reconciled
Lecture-8
A multi-dimensional data model
Cube: A Lattice of Cuboids
all time item location supplier
0-D(apex) cuboid
1-D cuboids
time,item
time,location
item,location item,supplier
location,supplier
time,supplier time,item,location
2-D cuboids
time,location,supplier
3-D cuboids
item,location,supplier
time,item,supplier
4-D(base) cuboid
time, item, location, supplier
Conceptual Modeling of Data Warehouses
Modeling data warehouses: dimensions & measures
Star schema: A fact table in the middle connected to a set of dimension tables
Snowflake schema: A refinement of star schema
where some dimensional hierarchy is normalized into a set of smaller dimension tables, forming a shape
similar to snowflake
Fact constellations: Multiple fact tables share dimension tables, viewed as a collection of stars,
therefore called galaxy schema or fact constellation
Example of Star Schema
time
time_key day day_of_the_week month quarter year
item
Sales Fact Table time_key item_key branch_key
item_key item_name brand type supplier_type
branch
branch_key branch_name branch_type
location
location_key street city province_or_street country
location_key units_sold
dollars_sold
avg_sales
Measures
time
Example of Snowflake Schema
item
Sales Fact Table
item_key item_name brand type supplier_key
time_key day day_of_the_week month quarter year
supplier
supplier_key supplier_type
time_key
item_key branch_key
branch
branch_key branch_name branch_type
location
location_key street city_key
location_key
units_sold dollars_sold avg_sales Measures
city
city_key city province_or_street country
time
time_key day day_of_the_week month quarter year
Example of Fact Constellation
item
Sales Fact Table time_key item_key branch_key
item_key item_name brand type supplier_type
Shipping Fact Table time_key
item_key
shipper_key
from_location
location
location_key street city province_or_street country
branch
branch_key branch_name branch_type
location_key units_sold dollars_sold avg_sales Measures
to_location dollars_cost units_shipped shipper
shipper_key shipper_name location_key shipper_type
A Data Mining Query Language, DMQL: Language Primitives
Cube Definition (Fact Table)
define cube <cube_name> [<dimension_list>]: <measure_list>
Dimension Definition ( Dimension Table )
define dimension <dimension_name> as (<attribute_or_subdimension_list>)
Special Case (Shared Dimension Tables)
 First time as cube definition define dimension <dimension_name> as <dimension_name_first_time> in cube <cube_name_first_time>
Defining a Star Schema in DMQL
define cube sales_star [time, item, branch, location]: dollars_sold = sum(sales_in_dollars), avg_sales = avg(sales_in_dollars), units_sold = count(*) define dimension time as (time_key, day, day_of_week, month, quarter, year) define dimension item as (item_key, item_name, brand, type, supplier_type) define dimension branch as (branch_key, branch_name, branch_type) define dimension location as (location_key, street, city, province_or_state, country)
Defining a Snowflake Schema in DMQL
define cube sales_snowflake [time, item, branch, location]:
dollars_sold = sum(sales_in_dollars), avg_sales = avg(sales_in_dollars), units_sold = count(*)
define dimension time as (time_key, day, day_of_week, month, quarter, year) define dimension item as (item_key, item_name, brand, type, supplier(supplier_key, supplier_type))
Defining a Snowflake Schema in DMQL
define dimension branch as (branch_key, branch_name, branch_type) define dimension location as (location_key, street, city(city_key, province_or_state, country))
Defining a Fact Constellation in DMQL
define cube sales [time, item, branch, location]: dollars_sold = sum(sales_in_dollars), avg_sales = avg(sales_in_dollars), units_sold = count(*) define dimension time as (time_key, day, day_of_week, month, quarter, year) define dimension item as (item_key, item_name, brand, type, supplier_type) define dimension branch as (branch_key, branch_name, branch_type) define dimension location as (location_key, street, city, province_or_state, country)
Defining a Fact Constellation in DMQL
define cube shipping [time, item, shipper, from_location, to_location]: dollar_cost = sum(cost_in_dollars), unit_shipped = count(*) define dimension time as time in cube sales define dimension item as item in cube sales define dimension shipper as (shipper_key, shipper_name, location as location in cube sales, shipper_type) define dimension from_location as location in cube sales define dimension to_location as location in cube sales
Measures: Three Categories
distributive: if the result derived by applying the function to n aggregate values is the same as that derived by applying the function on all the data without partitioning.
E.g., count(), sum(), min(), max().
algebraic: if it can be computed by an algebraic function with M arguments (where M is a bounded integer), each of which is obtained by applying a distributive aggregate function.
E.g., avg(), min_N(), standard_deviation().
Measures: Three Categories
holistic: if there is no constant bound on the storage size needed to describe a sub aggregate.
E.g., median(), mode(), rank().
A Concept Hierarchy: Dimension (location)
all region Europe all ... North_America
country
Germany
...
Spain
Canada
...
Mexico
city office
Frankfurt
...
Vancouver ... L. Chan ...
Toronto
M. Wind
Multidimensional Data
Sales volume as a function of product, month, and region Dimensions: Product, Location, Time
Hierarchical summarization paths Industry Region Year
Category Country Quarter
Product
Product
City Office
Month Week Day
Month
A Sample Data Cube
TV PC VCR sum 1Qtr 2Qtr
Date
3Qtr 4Qtr
Total annual sales sum of TV in U.S.A. U.S.A Canada Mexico sum
Country
Cuboids Corresponding to the Cube
all 0-D(apex) cuboid
product
date
product,country
country
1-D cuboids
date, country
product,date
2-D cuboids 3-D(base) cuboid
product, date, country
OLAP Operations
Roll up (drill-up): summarize data
by climbing up hierarchy or by dimension reduction from higher level summary to lower level summary or detailed data, or introducing new dimensions project and select
Drill down (roll down): reverse of roll-up
Slice and dice:
OLAP Operations
Pivot (rotate):
reorient the cube, visualization, 3D to series of 2D planes.
drill across: involving (across) more than one fact table drill through: through the bottom level of the cube to its back-end relational tables (using SQL)
Other operations
Lecture-9
Data warehouse architecture
Steps for the Design and Construction of Data Warehouse
The design of a data warehouse: a business analysis framework The process of data warehouse design A three-tier data ware house architecture
Design of a Data Warehouse: A Business Analysis Framework
Four views regarding the design of a data warehouse
Top-down view
allows selection of the relevant information necessary for the data warehouse
Design of a Data Warehouse: A Business Analysis Framework
Data warehouse view
consists of fact tables and dimension tables
Data source view
exposes the information being captured, stored, and managed by operational systems
Business query view
sees the perspectives
Data Warehouse Design Process
Top-down, bottom-up approaches or a combination of both
Top-down: Starts with overall design and planning (mature) Bottom-up: Starts with experiments and prototypes (rapid) Waterfall: structured and systematic analysis at each step before proceeding to the next Spiral: rapid generation of increasingly functional systems, short turn around time, quick turn around
From software engineering point of view
Data Warehouse Design Process
Typical data warehouse design process
Choose a business process to model, e.g., orders, invoices, etc. Choose the grain (atomic level of data) of the business process Choose the dimensions that will apply to each fact table record Choose the measure that will populate each fact table record
Multi-Tiered Architecture
Monitor & Integrator OLAP Server
other
Metadata
sources
Operational Extract Transform Load Refresh
DBs
Data Warehouse
Serve
Analysis Query Reports Data mining
Data Marts
Data Sources
Data Storage
OLAP Engine Front-End Tools
Metadata Repository
Meta data is the data defining warehouse objects. It has the following kinds
Description of the structure of the warehouse
schema, view, dimensions, hierarchies, derived data defn, data mart locations and contents
Operational meta-data
data lineage (history of migrated data and transformation path), currency of data (active, archived, or purged), monitoring information (warehouse usage statistics, error reports, audit trails)
The algorithms used for summarization The mapping from operational environment to the data warehouse Data related to system performance
warehouse schema, view and derived data definitions
Business data
business terms and definitions, ownership of data, charging policies
Data Warehouse Back-End Tools and Utilities
Data extraction:  get data from multiple, heterogeneous, and external sources Data cleaning:  detect errors in the data and rectify them when possible Data transformation:  convert data from legacy or host format to warehouse format Load:  sort, summarize, consolidate, compute views, check integrity, and build indices and partitions Refresh  propagate the updates from the data sources to the warehouse
Three Data Warehouse Models
Enterprise warehouse  collects all of the information about subjects spanning the entire organization Data Mart  a subset of corporate-wide data that is of value to a specific groups of users. Its scope is confined to specific, selected groups, such as marketing data mart Independent vs. dependent (directly from warehouse) data mart Virtual warehouse  A set of views over operational databases  Only some of the possible summary views may be materialized
Data Warehouse Development: A Recommended Approach
Multi-Tier Data Warehouse
Distributed Data Marts
Data Mart
Data Mart
Enterprise Data Warehouse
Model refinement
Model refinement
Define a high-level corporate data model
Types of OLAP Servers
Relational OLAP (ROLAP)
Use relational or extended-relational DBMS to store and manage warehouse data and OLAP middle ware to support missing pieces Include optimization of DBMS backend, implementation of aggregation navigation logic, and additional tools and services greater scalability
Multidimensional OLAP (MOLAP)
Array-based multidimensional storage engine (sparse matrix techniques) fast indexing to pre-computed summarized data
Types of OLAP Servers
Hybrid OLAP (HOLAP)
User flexibility, e.g., low level: relational, highlevel: array
specialized support for SQL queries over star/snowflake schemas
Specialized SQL servers
Lecture-10 & 11 Data warehouse implementation
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.
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
CUBE BY item, city, year
(city) Need compute the following Group-Bys
()
(item)
(year)
(date, product, customer), (date,product),(date, customer), (product, customer), (city, item) (city, year) (date), (product), (customer) ()
(city, item, year)
(item, year)
Cube Computation: ROLAP-Based Method
Efficient cube computation methods  
ROLAP-based cubing algorithms (Agarwal et al96) Array-based cubing algorithm (Zhao et al97) Bottom-up computation method (Bayer & Ramarkrishnan99)
ROLAP-based cubing algorithms
Sorting, hashing, and grouping operations are applied to the dimension attributes in order to reorder and cluster related tuples Grouping is performed on some sub aggregates as a partial grouping step
Aggregates may be computed from previously computed aggregates, rather than from the base fact table
Multi-way Array Aggregation for Cube Computation
Partition arrays into chunks (a small sub cube which fits in memory).
Compressed sparse array addressing: (chunk_id, offset) Compute aggregates in multi way by visiting cube cells in the order which minimizes the # of times to visit each cell, and reduces memory access and storage cost.
Multi-way Array Aggregation for Cube Computation
C
c3 61 62 63 64 c2 45 46 47 48 c1 29 30 31 32 c0 B 13 14 15 16 28 24 2 3 4 20 40 36 52 60 44 56
b3
b2
9
5 1
b1
b0
a0
a1
a2
a3
Multi-Way Array Aggregation for Cube Computation Method: the planes should be sorted and computed according to their size in ascending order.
Idea: keep the smallest plane in the main memory, fetch and compute only one chunk at a time for the largest plane
Limitation of the method: computing well only for a small number of dimensions
If there are a large number of dimensions, bottom-up computation and iceberg cube computation methods can be explored
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
Cust C1 C2 C3 C4 C5 Region Asia Europe Asia America Europe
Index on Region
Index on Type
Type RecIDAsia Europe America RecID Retail Dealer Retail 1 1 0 1 1 0 0 Dealer 2 2 0 1 0 1 0 Dealer 3 1 0 0 3 0 1 Retail 4 0 0 1 4 1 0 0 1 0 5 0 1 Dealer 5
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  a rather costly operation
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
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 to which materialized cuboid(s) the relevant operations should be applied. Exploring indexing structures and compressed vs. dense array structures in MOLAP
Lecture-12 From data warehousing to data
mining
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.
Differences among the three tasks
From On-Line Analytical Processing 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.
Architecture of OLAM
An OLAM Architecture
Mining query
User GUI API
Mining result
Layer4 User Interface
OLAM Engine
Data Cube API
OLAP Engine
Layer3
OLAP/OLAM
Layer2
MDDB
Meta Data
Filtering&Integration
MDDB
Database API
Data cleaning
Filtering
Layer1 Databases Data Warehouse Data integration Data Repository