SlideShare une entreprise Scribd logo
1  sur  10
KHWAJA AAMER
The process of collecting, searching through, and 
analyzing a large amount of data in a database, as to 
discover patterns or relationships 
 extraction of useful patterns from data sources, e.g., 
databases, data warehouses, web. 
 Patterns must be valid, novel, potentially useful, 
understandable.
 Data is growing at a phenomenal rate n Users 
expect more sophisticated information 
 Traditional techniques are infeasible for raw 
data 
 Human analysts may take weeks to discover 
useful information 
 Much of the data is never analyzed at all
Predictive:- 
It makes prediction about values of 
data using known results from different data 
or based on historical data. 
Descriptive:- 
It identifies patterns or 
relationship in data, it serves as a way to 
explore properties of data.
discovery of a function that classifies a data 
item into one of several predefined classes. 
 Given a collection of records 
Each record contains a set of 
attributes, one of the attributes is the class. 
Ex:-pattern recognition
 The value of attribute is examined as it varies 
over time 
 A time series plot is used to visualize time 
series 
 Ex:- stock exchange
 Clustering is the task of segmenting a diverse 
group into a number of similar subgroups or 
clusters. 
 Most similar data are grouped in clusters 
 Ex:-Bank customer
 Abstraction or generalization of data 
resulting in a smaller set which gives general 
overview of a data. 
 alternatively , summary type information can 
be derived from data.
Data mining tasks

Contenu connexe

Tendances

Data mining slides
Data mining slidesData mining slides
Data mining slidessmj
 
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALADATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALASaikiran Panjala
 
Data mining :Concepts and Techniques Chapter 2, data
Data mining :Concepts and Techniques Chapter 2, dataData mining :Concepts and Techniques Chapter 2, data
Data mining :Concepts and Techniques Chapter 2, dataSalah Amean
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessingankur bhalla
 
Data mining , Knowledge Discovery Process, Classification
Data mining , Knowledge Discovery Process, ClassificationData mining , Knowledge Discovery Process, Classification
Data mining , Knowledge Discovery Process, ClassificationDr. Abdul Ahad Abro
 
Data mining techniques unit 1
Data mining techniques  unit 1Data mining techniques  unit 1
Data mining techniques unit 1malathieswaran29
 
05 Clustering in Data Mining
05 Clustering in Data Mining05 Clustering in Data Mining
05 Clustering in Data MiningValerii Klymchuk
 
Data Mining: Concepts and Techniques (3rd ed.) - Chapter 3 preprocessing
Data Mining:  Concepts and Techniques (3rd ed.)- Chapter 3 preprocessingData Mining:  Concepts and Techniques (3rd ed.)- Chapter 3 preprocessing
Data Mining: Concepts and Techniques (3rd ed.) - Chapter 3 preprocessingSalah Amean
 
Data Integration and Transformation in Data mining
Data Integration and Transformation in Data miningData Integration and Transformation in Data mining
Data Integration and Transformation in Data miningkavitha muneeshwaran
 
introduction to data mining tutorial
introduction to data mining tutorial introduction to data mining tutorial
introduction to data mining tutorial Salah Amean
 
Server system architecture
Server system architectureServer system architecture
Server system architectureFaiza Hafeez
 
Data cube computation
Data cube computationData cube computation
Data cube computationRashmi Sheikh
 
Data Warehouse Modeling
Data Warehouse ModelingData Warehouse Modeling
Data Warehouse Modelingvivekjv
 
Lecture6 introduction to data streams
Lecture6 introduction to data streamsLecture6 introduction to data streams
Lecture6 introduction to data streamshktripathy
 
Data Mining & Applications
Data Mining & ApplicationsData Mining & Applications
Data Mining & ApplicationsFazle Rabbi Ador
 

Tendances (20)

Data mining slides
Data mining slidesData mining slides
Data mining slides
 
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALADATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
DATA WAREHOUSE IMPLEMENTATION BY SAIKIRAN PANJALA
 
Data mining :Concepts and Techniques Chapter 2, data
Data mining :Concepts and Techniques Chapter 2, dataData mining :Concepts and Techniques Chapter 2, data
Data mining :Concepts and Techniques Chapter 2, data
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data Mining
Data MiningData Mining
Data Mining
 
Data mining , Knowledge Discovery Process, Classification
Data mining , Knowledge Discovery Process, ClassificationData mining , Knowledge Discovery Process, Classification
Data mining , Knowledge Discovery Process, Classification
 
Data mining techniques unit 1
Data mining techniques  unit 1Data mining techniques  unit 1
Data mining techniques unit 1
 
2. visualization in data mining
2. visualization in data mining2. visualization in data mining
2. visualization in data mining
 
05 Clustering in Data Mining
05 Clustering in Data Mining05 Clustering in Data Mining
05 Clustering in Data Mining
 
Data Mining: Concepts and Techniques (3rd ed.) - Chapter 3 preprocessing
Data Mining:  Concepts and Techniques (3rd ed.)- Chapter 3 preprocessingData Mining:  Concepts and Techniques (3rd ed.)- Chapter 3 preprocessing
Data Mining: Concepts and Techniques (3rd ed.) - Chapter 3 preprocessing
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Data Integration and Transformation in Data mining
Data Integration and Transformation in Data miningData Integration and Transformation in Data mining
Data Integration and Transformation in Data mining
 
Clustering in Data Mining
Clustering in Data MiningClustering in Data Mining
Clustering in Data Mining
 
introduction to data mining tutorial
introduction to data mining tutorial introduction to data mining tutorial
introduction to data mining tutorial
 
Server system architecture
Server system architectureServer system architecture
Server system architecture
 
Data cube computation
Data cube computationData cube computation
Data cube computation
 
Data Warehouse Modeling
Data Warehouse ModelingData Warehouse Modeling
Data Warehouse Modeling
 
Lecture6 introduction to data streams
Lecture6 introduction to data streamsLecture6 introduction to data streams
Lecture6 introduction to data streams
 
web mining
web miningweb mining
web mining
 
Data Mining & Applications
Data Mining & ApplicationsData Mining & Applications
Data Mining & Applications
 

En vedette

Data mining (lecture 1 & 2) conecpts and techniques
Data mining (lecture 1 & 2) conecpts and techniquesData mining (lecture 1 & 2) conecpts and techniques
Data mining (lecture 1 & 2) conecpts and techniquesSaif Ullah
 
Multiplication of two 3 d sparse matrices using 1d arrays and linked lists
Multiplication of two 3 d sparse matrices using 1d arrays and linked listsMultiplication of two 3 d sparse matrices using 1d arrays and linked lists
Multiplication of two 3 d sparse matrices using 1d arrays and linked listsDr Sandeep Kumar Poonia
 
Sparse matrices
Sparse matricesSparse matrices
Sparse matricesZain Zafar
 
Knowledge Discovery in Databases
Knowledge Discovery in DatabasesKnowledge Discovery in Databases
Knowledge Discovery in DatabasesDiwas Kandel
 
01 Introduction to Data Mining
01 Introduction to Data Mining01 Introduction to Data Mining
01 Introduction to Data MiningValerii Klymchuk
 
Introduction-to-Knowledge Discovery in Database
Introduction-to-Knowledge Discovery in DatabaseIntroduction-to-Knowledge Discovery in Database
Introduction-to-Knowledge Discovery in DatabaseKartik Kalpande Patil
 
Three case studies deploying cluster analysis
Three case studies deploying cluster analysisThree case studies deploying cluster analysis
Three case studies deploying cluster analysisGreg Makowski
 
Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...
Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...
Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...Jen Aman
 
Knowledge discovery thru data mining
Knowledge discovery thru data miningKnowledge discovery thru data mining
Knowledge discovery thru data miningDevakumar Jain
 
The 8 Step Data Mining Process
The 8 Step Data Mining ProcessThe 8 Step Data Mining Process
The 8 Step Data Mining ProcessMarc Berman
 
K-Means, its Variants and its Applications
K-Means, its Variants and its ApplicationsK-Means, its Variants and its Applications
K-Means, its Variants and its ApplicationsVarad Meru
 
Knowledge Discovery and Data Mining
Knowledge Discovery and Data MiningKnowledge Discovery and Data Mining
Knowledge Discovery and Data MiningAmritanshu Mehra
 

En vedette (20)

Data mining
Data miningData mining
Data mining
 
Data Mining Overview
Data Mining OverviewData Mining Overview
Data Mining Overview
 
Data mining (lecture 1 & 2) conecpts and techniques
Data mining (lecture 1 & 2) conecpts and techniquesData mining (lecture 1 & 2) conecpts and techniques
Data mining (lecture 1 & 2) conecpts and techniques
 
Data mining
Data miningData mining
Data mining
 
Lecture - Data Mining
Lecture - Data MiningLecture - Data Mining
Lecture - Data Mining
 
Data mining
Data miningData mining
Data mining
 
Multiplication of two 3 d sparse matrices using 1d arrays and linked lists
Multiplication of two 3 d sparse matrices using 1d arrays and linked listsMultiplication of two 3 d sparse matrices using 1d arrays and linked lists
Multiplication of two 3 d sparse matrices using 1d arrays and linked lists
 
Data mining and knowledge Discovery
Data mining and knowledge DiscoveryData mining and knowledge Discovery
Data mining and knowledge Discovery
 
Sparse matrices
Sparse matricesSparse matrices
Sparse matrices
 
Alleviating Data Sparsity for Twitter Sentiment Analysis
Alleviating Data Sparsity for Twitter Sentiment AnalysisAlleviating Data Sparsity for Twitter Sentiment Analysis
Alleviating Data Sparsity for Twitter Sentiment Analysis
 
Knowledge Discovery in Databases
Knowledge Discovery in DatabasesKnowledge Discovery in Databases
Knowledge Discovery in Databases
 
Introduction data mining
Introduction data miningIntroduction data mining
Introduction data mining
 
01 Introduction to Data Mining
01 Introduction to Data Mining01 Introduction to Data Mining
01 Introduction to Data Mining
 
Introduction-to-Knowledge Discovery in Database
Introduction-to-Knowledge Discovery in DatabaseIntroduction-to-Knowledge Discovery in Database
Introduction-to-Knowledge Discovery in Database
 
Three case studies deploying cluster analysis
Three case studies deploying cluster analysisThree case studies deploying cluster analysis
Three case studies deploying cluster analysis
 
Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...
Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...
Embrace Sparsity At Web Scale: Apache Spark MLlib Algorithms Optimization For...
 
Knowledge discovery thru data mining
Knowledge discovery thru data miningKnowledge discovery thru data mining
Knowledge discovery thru data mining
 
The 8 Step Data Mining Process
The 8 Step Data Mining ProcessThe 8 Step Data Mining Process
The 8 Step Data Mining Process
 
K-Means, its Variants and its Applications
K-Means, its Variants and its ApplicationsK-Means, its Variants and its Applications
K-Means, its Variants and its Applications
 
Knowledge Discovery and Data Mining
Knowledge Discovery and Data MiningKnowledge Discovery and Data Mining
Knowledge Discovery and Data Mining
 

Similaire à Data mining tasks

20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.ppt20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.pptPalaniKumarR2
 
20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.ppt20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.pptSamPrem3
 
Combining Data Lake and Data Wrangling for Ensuring Data Quality in CRIS
Combining Data Lake and Data Wrangling for Ensuring Data Quality in CRISCombining Data Lake and Data Wrangling for Ensuring Data Quality in CRIS
Combining Data Lake and Data Wrangling for Ensuring Data Quality in CRISAnastasija Nikiforova
 
Week-1-Introduction to Data Mining.pptx
Week-1-Introduction to Data Mining.pptxWeek-1-Introduction to Data Mining.pptx
Week-1-Introduction to Data Mining.pptxTake1As
 
Data mining introduction
Data mining introductionData mining introduction
Data mining introductionBasma Gamal
 
Data mining approaches and methods
Data mining approaches and methodsData mining approaches and methods
Data mining approaches and methodssonangrai
 
DATA MINING.doc
DATA MINING.docDATA MINING.doc
DATA MINING.docbutest
 
UNIT - 5: Data Warehousing and Data Mining
UNIT - 5: Data Warehousing and Data MiningUNIT - 5: Data Warehousing and Data Mining
UNIT - 5: Data Warehousing and Data MiningNandakumar P
 
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSEXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSeditorijettcs
 
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSEXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSeditorijettcs
 
Unit-V-Introduction to Data Mining.pptx
Unit-V-Introduction to  Data Mining.pptxUnit-V-Introduction to  Data Mining.pptx
Unit-V-Introduction to Data Mining.pptxHarsha Patel
 
Data Mining Presentation.pptx
Data Mining Presentation.pptxData Mining Presentation.pptx
Data Mining Presentation.pptxChingChingErm
 
Data miningvs datawarehouse
Data miningvs datawarehouseData miningvs datawarehouse
Data miningvs datawarehouseSuman Astani
 

Similaire à Data mining tasks (20)

Unit i
Unit iUnit i
Unit i
 
Datamining
DataminingDatamining
Datamining
 
20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.ppt20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.ppt
 
20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.ppt20IT501_DWDM_PPT_Unit_II.ppt
20IT501_DWDM_PPT_Unit_II.ppt
 
Combining Data Lake and Data Wrangling for Ensuring Data Quality in CRIS
Combining Data Lake and Data Wrangling for Ensuring Data Quality in CRISCombining Data Lake and Data Wrangling for Ensuring Data Quality in CRIS
Combining Data Lake and Data Wrangling for Ensuring Data Quality in CRIS
 
Week-1-Introduction to Data Mining.pptx
Week-1-Introduction to Data Mining.pptxWeek-1-Introduction to Data Mining.pptx
Week-1-Introduction to Data Mining.pptx
 
Unit 3 part i Data mining
Unit 3 part i Data miningUnit 3 part i Data mining
Unit 3 part i Data mining
 
Data mining introduction
Data mining introductionData mining introduction
Data mining introduction
 
Data mining approaches and methods
Data mining approaches and methodsData mining approaches and methods
Data mining approaches and methods
 
DATA MINING.doc
DATA MINING.docDATA MINING.doc
DATA MINING.doc
 
UNIT - 5: Data Warehousing and Data Mining
UNIT - 5: Data Warehousing and Data MiningUNIT - 5: Data Warehousing and Data Mining
UNIT - 5: Data Warehousing and Data Mining
 
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSEXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
 
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONSEXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
EXPLORING DATA MINING TECHNIQUES AND ITS APPLICATIONS
 
Unit-V-Introduction to Data Mining.pptx
Unit-V-Introduction to  Data Mining.pptxUnit-V-Introduction to  Data Mining.pptx
Unit-V-Introduction to Data Mining.pptx
 
Seminar Presentation
Seminar PresentationSeminar Presentation
Seminar Presentation
 
Data Mining Technniques
Data Mining TechnniquesData Mining Technniques
Data Mining Technniques
 
Data Mining Presentation.pptx
Data Mining Presentation.pptxData Mining Presentation.pptx
Data Mining Presentation.pptx
 
G045033841
G045033841G045033841
G045033841
 
Data miningvs datawarehouse
Data miningvs datawarehouseData miningvs datawarehouse
Data miningvs datawarehouse
 
data analysis.ppt
data analysis.pptdata analysis.ppt
data analysis.ppt
 

Dernier

Thermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VThermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VDineshKumar4165
 
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptxHOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptxSCMS School of Architecture
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXssuser89054b
 
Work-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptxWork-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptxJuliansyahHarahap1
 
Unleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leapUnleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leapRishantSharmaFr
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueBhangaleSonal
 
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...Amil baba
 
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptxOrlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptxMuhammadAsimMuhammad6
 
Online food ordering system project report.pdf
Online food ordering system project report.pdfOnline food ordering system project report.pdf
Online food ordering system project report.pdfKamal Acharya
 
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
COST-EFFETIVE  and Energy Efficient BUILDINGS ptxCOST-EFFETIVE  and Energy Efficient BUILDINGS ptx
COST-EFFETIVE and Energy Efficient BUILDINGS ptxJIT KUMAR GUPTA
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfJiananWang21
 
Standard vs Custom Battery Packs - Decoding the Power Play
Standard vs Custom Battery Packs - Decoding the Power PlayStandard vs Custom Battery Packs - Decoding the Power Play
Standard vs Custom Battery Packs - Decoding the Power PlayEpec Engineered Technologies
 
School management system project Report.pdf
School management system project Report.pdfSchool management system project Report.pdf
School management system project Report.pdfKamal Acharya
 
DeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakesDeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakesMayuraD1
 
Engineering Drawing focus on projection of planes
Engineering Drawing focus on projection of planesEngineering Drawing focus on projection of planes
Engineering Drawing focus on projection of planesRAJNEESHKUMAR341697
 
Thermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptThermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptDineshKumar4165
 
PE 459 LECTURE 2- natural gas basic concepts and properties
PE 459 LECTURE 2- natural gas basic concepts and propertiesPE 459 LECTURE 2- natural gas basic concepts and properties
PE 459 LECTURE 2- natural gas basic concepts and propertiessarkmank1
 
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptxS1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptxSCMS School of Architecture
 

Dernier (20)

Thermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - VThermal Engineering-R & A / C - unit - V
Thermal Engineering-R & A / C - unit - V
 
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptxHOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
 
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX
 
Work-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptxWork-Permit-Receiver-in-Saudi-Aramco.pptx
Work-Permit-Receiver-in-Saudi-Aramco.pptx
 
Unleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leapUnleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leap
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torque
 
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
 
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptxOrlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
 
Integrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - NeometrixIntegrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - Neometrix
 
Online food ordering system project report.pdf
Online food ordering system project report.pdfOnline food ordering system project report.pdf
Online food ordering system project report.pdf
 
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
COST-EFFETIVE  and Energy Efficient BUILDINGS ptxCOST-EFFETIVE  and Energy Efficient BUILDINGS ptx
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
 
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak HamilCara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
Cara Menggugurkan Sperma Yang Masuk Rahim Biyar Tidak Hamil
 
data_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdfdata_management_and _data_science_cheat_sheet.pdf
data_management_and _data_science_cheat_sheet.pdf
 
Standard vs Custom Battery Packs - Decoding the Power Play
Standard vs Custom Battery Packs - Decoding the Power PlayStandard vs Custom Battery Packs - Decoding the Power Play
Standard vs Custom Battery Packs - Decoding the Power Play
 
School management system project Report.pdf
School management system project Report.pdfSchool management system project Report.pdf
School management system project Report.pdf
 
DeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakesDeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakes
 
Engineering Drawing focus on projection of planes
Engineering Drawing focus on projection of planesEngineering Drawing focus on projection of planes
Engineering Drawing focus on projection of planes
 
Thermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptThermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.ppt
 
PE 459 LECTURE 2- natural gas basic concepts and properties
PE 459 LECTURE 2- natural gas basic concepts and propertiesPE 459 LECTURE 2- natural gas basic concepts and properties
PE 459 LECTURE 2- natural gas basic concepts and properties
 
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptxS1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
 

Data mining tasks

  • 2. The process of collecting, searching through, and analyzing a large amount of data in a database, as to discover patterns or relationships  extraction of useful patterns from data sources, e.g., databases, data warehouses, web.  Patterns must be valid, novel, potentially useful, understandable.
  • 3.  Data is growing at a phenomenal rate n Users expect more sophisticated information  Traditional techniques are infeasible for raw data  Human analysts may take weeks to discover useful information  Much of the data is never analyzed at all
  • 4.
  • 5. Predictive:- It makes prediction about values of data using known results from different data or based on historical data. Descriptive:- It identifies patterns or relationship in data, it serves as a way to explore properties of data.
  • 6. discovery of a function that classifies a data item into one of several predefined classes.  Given a collection of records Each record contains a set of attributes, one of the attributes is the class. Ex:-pattern recognition
  • 7.  The value of attribute is examined as it varies over time  A time series plot is used to visualize time series  Ex:- stock exchange
  • 8.  Clustering is the task of segmenting a diverse group into a number of similar subgroups or clusters.  Most similar data are grouped in clusters  Ex:-Bank customer
  • 9.  Abstraction or generalization of data resulting in a smaller set which gives general overview of a data.  alternatively , summary type information can be derived from data.