Model Deployment. Dr. Saed Sayad. University of Toronto

Size: px
Start display at page:

Download "Model Deployment. Dr. Saed Sayad. University of Toronto 2010 saed.sayad@utoronto.ca. http://chem-eng.utoronto.ca/~datamining/"

Transcription

1 Model Deployment Dr. Saed Sayad University of Toronto

2 Model Deployment Creation of the model is generally not the end of the project. Even if the purpose of the model is to increase knowledge of the data, the knowledge gained will need to be organized and presented in a way that the customer can use it. Depending on the requirements, the deployment phase can be as simple as generating a report or as complex as implementing a repeatable data mining process. In many cases it will be the customer, not the data analyst, who will carry out the deployment steps. However, even if the analyst will not carry out the deployment effort it is important for the customer to understand up front what actions will need to be carried out in order to actually make use of the created models. 2

3 Model Deployment - Poll May

4 Model Deployments Use the data mining tool Programming Scripts Java, C, VB, SAS, SPSS, SQL Scripts TSQL, PL-SQL, SQL functions PMML (Predictive Model Markup Language) 4

5 Using Data Mining Tool (Orange) 5

6 Programming Scripts - Visual Basic 6

7 SQL Scripts - SQL Function select RegressionModel(null,25000,'street') 7

8 PMML is an XML-based language used to define statistical and data mining models and to share these between compliant applications. PMML defines a standard not only to represent data-mining models, but also data handling and data transformations (pre and post processing). 8

9 PMML It is developed by the DMG (Data Mining Group) to avoid proprietary issues and incompatibilities and to deploy models. PMML eliminates need for custom model deployment and allows for the clear separation of tasks: model development vs. model deployment. 9

10 Predictive Models supported by PMML Regression Neural Networks Support Vector Machines Decision Trees Naïve Bayes Clustering Sequences Rule Sets Association Rules Time-Series (as of PMML 4.0) Text Models 10

11 PMML Processes 1. Pre-Processing Data Dictionary: Allows for the explicit specification of valid, invalid and missing values. Mining Schema: Used to define the appropriate treatment to be applied to missing and invalid values. Transformations: Allow for variable discretization, normalization, and mapping with handling of missing and default values. Built-in Functions: Arithmetic expressions, handling of date and time as well as strings. Also used for implementing IF-THEN-ELSE logic and Boolean operations. 2. Models PMML allows for several predictive modeling techniques to be fully expressed. 3. Post-Processing Scaling of model outputs can be performed with PMML element Targets. 11

12 PMML Components 12

13 PMML Components - Header Header: contains general information about the PMML document, such as copyright information for the model, its description, and information about the application used to generate the model such as name and version. It also contains an attribute for a timestamp which can be used to specify the date of model creation. 13

14 PMML Components Data Dictionary Data Dictionary: contains definitions for all the possible fields used by the model. It is here that a field is defined as continuous, categorical, or ordinal. Depending on this definition, the appropriate value ranges are then defined as well as the data type (such as, string or double). 14

15 PMML Components Data Transformations Data Transformations: transformations allow for the mapping of user data into a more desirable form to be used by the mining model. PMML defines several kinds of simple data transformations. Normalization: map values to numbers, the input can be continuous or discrete. Discretization: map continuous values to discrete values. Value mapping: map discrete values to discrete values. Functions: derive a value by applying a function to one or more parameters. Aggregation: used to summarize or collect groups of values. 15

16 Data Transformations 16

17 PMML Components Model Model: contains the definition of the data mining model. For example a fee-forward neural network is represented in PMML by a "NeuralNetwork" element which contains attributes such as: Model Name (attribute modelname) Function Name (attribute functionname) Algorithm Name (attribute algorithmname) Activation Function (attribute activationfunction) Number of Layers (attribute numberoflayers) 17

18 PMML Components Mining Schema Mining Schema: the mining schema lists all fields used in the model. This can be a subset of the fields as defined in the data dictionary. It contains specific information about each field, such as: Name (attribute name): must refer to a field in the data dictionary Usage type (attribute usagetype): defines the way a field is to be used in the model. Typical values are: active, predicted, and supplementary. Predicted fields are those whose values are predicted by the model. Outlier Treatment (attribute outliers): defines the outlier treatment to be use. In PMML, outliers can be treated as missing values, as extreme values (based on the definition of high and low values for a particular field), or as is. Missing Value Replacement Policy (attribute missingvaluereplacement): if this attribute is specified then a missing value is automatically replaced by the given values. Missing Value Treatment (attribute missingvaluetreatment): indicates how the missing value replacement was derived (e.g. as value, mean or median). 18

19 Model and Schema 19

20 PMML Components Targets Targets: allow for post-processing of the predicted value in the format of scaling if the output of the model is continuous. Targets can also be used for classification tasks. In this case, the attribute priorprobability specifies a default probability for the corresponding target category. It is used if the prediction logic itself did not produce a result. This can happen, e.g., if an input value is missing and there is no other method for treating missing values. 20

21 Targets 21

22 PMML 4.0 New Features Improved Pre-Processing Capabilities: Additions to built-in functions include a range of Boolean operations and an If-Then-Else function. Time Series Models: New exponential Smoothing models; also place holders for ARIMA, Seasonal Trend Decomposition, and Spectral Analysis, which are to be supported in the near future. Model Explanation: Saving of evaluation and model performance measures to the PMML file itself. Multiple Models: Capabilities for model composition, ensembles, and segmentation (e.g., combining of regression and decision trees). Extensions of Existing Elements: Addition of multi-class classification for Support Vector Machines, improved representation for Association Rules, and the addition of Cox Regression Models. 22

23 References up_language 23

Hadoop s Advantages for! Machine! Learning and. Predictive! Analytics. Webinar will begin shortly. Presented by Hortonworks & Zementis

Hadoop s Advantages for! Machine! Learning and. Predictive! Analytics. Webinar will begin shortly. Presented by Hortonworks & Zementis Webinar will begin shortly Hadoop s Advantages for Machine Learning and Predictive Analytics Presented by Hortonworks & Zementis September 10, 2014 Copyright 2014 Zementis, Inc. All rights reserved. 2

More information

Universal PMML Plug-in for EMC Greenplum Database

Universal PMML Plug-in for EMC Greenplum Database Universal PMML Plug-in for EMC Greenplum Database Delivering Massively Parallel Predictions Zementis, Inc. info@zementis.com USA: 6125 Cornerstone Court East, Suite #250, San Diego, CA 92121 T +1(619)

More information

Easy Execution of Data Mining Models through PMML

Easy Execution of Data Mining Models through PMML Easy Execution of Data Mining Models through PMML Zementis, Inc. UseR! 2009 Zementis Development, Deployment, and Execution of Predictive Models Development R allows for reliable data manipulation and

More information

The R pmmltransformations Package

The R pmmltransformations Package The R pmmltransformations Package Tridivesh Jena Alex Guazzelli Wen-Ching Lin Michael Zeller Zementis, Inc.* Zementis, Inc. Zementis, Inc. Zementis, Inc. Tridivesh.Jena@ Alex.Guazzelli@ Wenching.Lin@ Michael.Zeller@

More information

COPYRIGHTED MATERIAL. Contents. List of Figures. Acknowledgments

COPYRIGHTED MATERIAL. Contents. List of Figures. Acknowledgments Contents List of Figures Foreword Preface xxv xxiii xv Acknowledgments xxix Chapter 1 Fraud: Detection, Prevention, and Analytics! 1 Introduction 2 Fraud! 2 Fraud Detection and Prevention 10 Big Data for

More information

PMML and UIMA Based Frameworks for Deploying Analytic Applications and Services

PMML and UIMA Based Frameworks for Deploying Analytic Applications and Services PMML and UIMA Based Frameworks for Deploying Analytic Applications and Services David Ferrucci 1, Robert L. Grossman 2 and Anthony Levas 1 1. Introduction - The Challenges of Deploying Analytic Applications

More information

Make Better Decisions Through Predictive Intelligence

Make Better Decisions Through Predictive Intelligence IBM SPSS Modeler Professional Make Better Decisions Through Predictive Intelligence Highlights Easily access, prepare and model structured data with this intuitive, visual data mining workbench Rapidly

More information

Data Mining + Business Intelligence. Integration, Design and Implementation

Data Mining + Business Intelligence. Integration, Design and Implementation Data Mining + Business Intelligence Integration, Design and Implementation ABOUT ME Vijay Kotu Data, Business, Technology, Statistics BUSINESS INTELLIGENCE - Result Making data accessible Wider distribution

More information

SHARING THREAT INTELLIGENCE ANALYTICS FOR COLLABORATIVE ATTACK ANALYSIS

SHARING THREAT INTELLIGENCE ANALYTICS FOR COLLABORATIVE ATTACK ANALYSIS SHARING THREAT INTELLIGENCE ANALYTICS FOR COLLABORATIVE ATTACK ANALYSIS Samir Saklikar RSA, The Security Division of EMC Session ID: CLE T05 Session Classification: Intermediate Agenda Advanced Targeted

More information

Pentaho Data Mining Last Modified on January 22, 2007

Pentaho Data Mining Last Modified on January 22, 2007 Pentaho Data Mining Copyright 2007 Pentaho Corporation. Redistribution permitted. All trademarks are the property of their respective owners. For the latest information, please visit our web site at www.pentaho.org

More information

Silvermine House Steenberg Office Park, Tokai 7945 Cape Town, South Africa Telephone: +27 21 702 4666 www.spss-sa.com

Silvermine House Steenberg Office Park, Tokai 7945 Cape Town, South Africa Telephone: +27 21 702 4666 www.spss-sa.com SPSS-SA Silvermine House Steenberg Office Park, Tokai 7945 Cape Town, South Africa Telephone: +27 21 702 4666 www.spss-sa.com SPSS-SA Training Brochure 2009 TABLE OF CONTENTS 1 SPSS TRAINING COURSES FOCUSING

More information

The basic data mining algorithms introduced may be enhanced in a number of ways.

The basic data mining algorithms introduced may be enhanced in a number of ways. DATA MINING TECHNOLOGIES AND IMPLEMENTATIONS The basic data mining algorithms introduced may be enhanced in a number of ways. Data mining algorithms have traditionally assumed data is memory resident,

More information

Azure Machine Learning, SQL Data Mining and R

Azure Machine Learning, SQL Data Mining and R Azure Machine Learning, SQL Data Mining and R Day-by-day Agenda Prerequisites No formal prerequisites. Basic knowledge of SQL Server Data Tools, Excel and any analytical experience helps. Best of all:

More information

Get to Know the IBM SPSS Product Portfolio

Get to Know the IBM SPSS Product Portfolio IBM Software Business Analytics Product portfolio Get to Know the IBM SPSS Product Portfolio Offering integrated analytical capabilities that help organizations use data to drive improved outcomes 123

More information

Achieve Better Insight and Prediction with Data Mining

Achieve Better Insight and Prediction with Data Mining Clementine 12.0 Specifications Achieve Better Insight and Prediction with Data Mining Data mining provides organizations with a clearer view of current conditions and deeper insight into future events.

More information

International Journal of Computer Science Trends and Technology (IJCST) Volume 2 Issue 3, May-Jun 2014

International Journal of Computer Science Trends and Technology (IJCST) Volume 2 Issue 3, May-Jun 2014 RESEARCH ARTICLE OPEN ACCESS A Survey of Data Mining: Concepts with Applications and its Future Scope Dr. Zubair Khan 1, Ashish Kumar 2, Sunny Kumar 3 M.Tech Research Scholar 2. Department of Computer

More information

Make Better Decisions Through Predictive Intelligence

Make Better Decisions Through Predictive Intelligence IBM SPSS Modeler Professional Make Better Decisions Through Predictive Intelligence Highlights Easily access, prepare and model structured data with this intuitive, visual data mining workbench Expand

More information

Introduction to Data Mining and Machine Learning Techniques. Iza Moise, Evangelos Pournaras, Dirk Helbing

Introduction to Data Mining and Machine Learning Techniques. Iza Moise, Evangelos Pournaras, Dirk Helbing Introduction to Data Mining and Machine Learning Techniques Iza Moise, Evangelos Pournaras, Dirk Helbing Iza Moise, Evangelos Pournaras, Dirk Helbing 1 Overview Main principles of data mining Definition

More information

Decision Support Optimization through Predictive Analytics - Leuven Statistical Day 2010

Decision Support Optimization through Predictive Analytics - Leuven Statistical Day 2010 Decision Support Optimization through Predictive Analytics - Leuven Statistical Day 2010 Ernst van Waning Senior Sales Engineer May 28, 2010 Agenda SPSS, an IBM Company SPSS Statistics User-driven product

More information

IBM SPSS Modeler Professional

IBM SPSS Modeler Professional IBM SPSS Modeler Professional Make better decisions through predictive intelligence Highlights Create more effective strategies by evaluating trends and likely outcomes. Easily access, prepare and model

More information

from Larson Text By Susan Miertschin

from Larson Text By Susan Miertschin Decision Tree Data Mining Example from Larson Text By Susan Miertschin 1 Problem The Maximum Miniatures Marketing Department wants to do a targeted mailing gpromoting the Mythic World line of figurines.

More information

EXPLORING & MODELING USING INTERACTIVE DECISION TREES IN SAS ENTERPRISE MINER. Copyr i g ht 2013, SAS Ins titut e Inc. All rights res er ve d.

EXPLORING & MODELING USING INTERACTIVE DECISION TREES IN SAS ENTERPRISE MINER. Copyr i g ht 2013, SAS Ins titut e Inc. All rights res er ve d. EXPLORING & MODELING USING INTERACTIVE DECISION TREES IN SAS ENTERPRISE MINER ANALYTICS LIFECYCLE Evaluate & Monitor Model Formulate Problem Data Preparation Deploy Model Data Exploration Validate Models

More information

Name: Srinivasan Govindaraj Title: Big Data Predictive Analytics

Name: Srinivasan Govindaraj Title: Big Data Predictive Analytics Name: Srinivasan Govindaraj Title: Big Data Predictive Analytics Please note the following IBM s statements regarding its plans, directions, and intent are subject to change or withdrawal without notice

More information

Database Marketing, Business Intelligence and Knowledge Discovery

Database Marketing, Business Intelligence and Knowledge Discovery Database Marketing, Business Intelligence and Knowledge Discovery Note: Using material from Tan / Steinbach / Kumar (2005) Introduction to Data Mining,, Addison Wesley; and Cios / Pedrycz / Swiniarski

More information

Data Mining. Dr. Saed Sayad. University of Toronto 2010 saed.sayad@utoronto.ca. http://chem-eng.utoronto.ca/~datamining/

Data Mining. Dr. Saed Sayad. University of Toronto 2010 saed.sayad@utoronto.ca. http://chem-eng.utoronto.ca/~datamining/ Data Mining Dr. Saed Sayad University of Toronto 2010 saed.sayad@utoronto.ca http://chem-eng.utoronto.ca/~datamining/ 1 Data Mining Data mining is about explaining the past and predicting the future by

More information

testo dello schema Secondo livello Terzo livello Quarto livello Quinto livello

testo dello schema Secondo livello Terzo livello Quarto livello Quinto livello Extracting Knowledge from Biomedical Data through Logic Learning Machines and Rulex Marco Muselli Institute of Electronics, Computer and Telecommunication Engineering National Research Council of Italy,

More information

Practical Data Science with Azure Machine Learning, SQL Data Mining, and R

Practical Data Science with Azure Machine Learning, SQL Data Mining, and R Practical Data Science with Azure Machine Learning, SQL Data Mining, and R Overview This 4-day class is the first of the two data science courses taught by Rafal Lukawiecki. Some of the topics will be

More information

An Introduction to Data Mining

An Introduction to Data Mining An Introduction to Intel Beijing wei.heng@intel.com January 17, 2014 Outline 1 DW Overview What is Notable Application of Conference, Software and Applications Major Process in 2 Major Tasks in Detail

More information

CUSTOMER Presentation of SAP Predictive Analytics

CUSTOMER Presentation of SAP Predictive Analytics SAP Predictive Analytics 2.0 2015-02-09 CUSTOMER Presentation of SAP Predictive Analytics Content 1 SAP Predictive Analytics Overview....3 2 Deployment Configurations....4 3 SAP Predictive Analytics Desktop

More information

Data Mining. SPSS Clementine 12.0. 1. Clementine Overview. Spring 2010 Instructor: Dr. Masoud Yaghini. Clementine

Data Mining. SPSS Clementine 12.0. 1. Clementine Overview. Spring 2010 Instructor: Dr. Masoud Yaghini. Clementine Data Mining SPSS 12.0 1. Overview Spring 2010 Instructor: Dr. Masoud Yaghini Introduction Types of Models Interface Projects References Outline Introduction Introduction Three of the common data mining

More information

QsarDB first 100 DOIs for predictive models

QsarDB first 100 DOIs for predictive models QsarDB first 100 DOIs for predictive models Uko Maran Institute of chemistry, University of Tartu, Estonia LOD: Content Data Predictive (and descriptive) models? Goal Components Persistent digital identifiers

More information

Oracle Database 10g: Introduction to SQL

Oracle Database 10g: Introduction to SQL Oracle University Contact Us: 1.800.529.0165 Oracle Database 10g: Introduction to SQL Duration: 5 Days What you will learn This course offers students an introduction to Oracle Database 10g database technology.

More information

Introduction to Data Mining

Introduction to Data Mining Introduction to Data Mining Jay Urbain Credits: Nazli Goharian & David Grossman @ IIT Outline Introduction Data Pre-processing Data Mining Algorithms Naïve Bayes Decision Tree Neural Network Association

More information

Ensembles and PMML in KNIME

Ensembles and PMML in KNIME Ensembles and PMML in KNIME Alexander Fillbrunn 1, Iris Adä 1, Thomas R. Gabriel 2 and Michael R. Berthold 1,2 1 Department of Computer and Information Science Universität Konstanz Konstanz, Germany First.Last@Uni-Konstanz.De

More information

Predictive Analytics Techniques: What to Use For Your Big Data. March 26, 2014 Fern Halper, PhD

Predictive Analytics Techniques: What to Use For Your Big Data. March 26, 2014 Fern Halper, PhD Predictive Analytics Techniques: What to Use For Your Big Data March 26, 2014 Fern Halper, PhD Presenter Proven Performance Since 1995 TDWI helps business and IT professionals gain insight about data warehousing,

More information

WebFOCUS RStat. RStat. Predict the Future and Make Effective Decisions Today. WebFOCUS RStat

WebFOCUS RStat. RStat. Predict the Future and Make Effective Decisions Today. WebFOCUS RStat Information Builders enables agile information solutions with business intelligence (BI) and integration technologies. WebFOCUS the most widely utilized business intelligence platform connects to any enterprise

More information

Knowledge Discovery in Data with FIT-Miner

Knowledge Discovery in Data with FIT-Miner Knowledge Discovery in Data with FIT-Miner Michal Šebek, Martin Hlosta and Jaroslav Zendulka Faculty of Information Technology, Brno University of Technology, Božetěchova 2, Brno {isebek,ihlosta,zendulka}@fit.vutbr.cz

More information

In this presentation, you will be introduced to data mining and the relationship with meaningful use.

In this presentation, you will be introduced to data mining and the relationship with meaningful use. In this presentation, you will be introduced to data mining and the relationship with meaningful use. Data mining refers to the art and science of intelligent data analysis. It is the application of machine

More information

An Introduction to Data Mining. Big Data World. Related Fields and Disciplines. What is Data Mining? 2/12/2015

An Introduction to Data Mining. Big Data World. Related Fields and Disciplines. What is Data Mining? 2/12/2015 An Introduction to Data Mining for Wind Power Management Spring 2015 Big Data World Every minute: Google receives over 4 million search queries Facebook users share almost 2.5 million pieces of content

More information

Data Mining Part 5. Prediction

Data Mining Part 5. Prediction Data Mining Part 5. Prediction 5.1 Spring 2010 Instructor: Dr. Masoud Yaghini Outline Classification vs. Numeric Prediction Prediction Process Data Preparation Comparing Prediction Methods References Classification

More information

What s Cooking in KNIME

What s Cooking in KNIME What s Cooking in KNIME Thomas Gabriel Copyright 2015 KNIME.com AG Agenda Querying NoSQL Databases Database Improvements & Big Data Copyright 2015 KNIME.com AG 2 Querying NoSQL Databases MongoDB & CouchDB

More information

8. Machine Learning Applied Artificial Intelligence

8. Machine Learning Applied Artificial Intelligence 8. Machine Learning Applied Artificial Intelligence Prof. Dr. Bernhard Humm Faculty of Computer Science Hochschule Darmstadt University of Applied Sciences 1 Retrospective Natural Language Processing Name

More information

Oracle Database: Introduction to SQL

Oracle Database: Introduction to SQL Oracle University Contact Us: +381 11 2016811 Oracle Database: Introduction to SQL Duration: 5 Days What you will learn Understanding the basic concepts of relational databases ensure refined code by developers.

More information

Predictive Analytics Powered by SAP HANA. Cary Bourgeois Principal Solution Advisor Platform and Analytics

Predictive Analytics Powered by SAP HANA. Cary Bourgeois Principal Solution Advisor Platform and Analytics Predictive Analytics Powered by SAP HANA Cary Bourgeois Principal Solution Advisor Platform and Analytics Agenda Introduction to Predictive Analytics Key capabilities of SAP HANA for in-memory predictive

More information

Using reporting and data mining techniques to improve knowledge of subscribers; applications to customer profiling and fraud management

Using reporting and data mining techniques to improve knowledge of subscribers; applications to customer profiling and fraud management Using reporting and data mining techniques to improve knowledge of subscribers; applications to customer profiling and fraud management Paper Jean-Louis Amat Abstract One of the main issues of operators

More information

How to Optimize Your Data Mining Environment

How to Optimize Your Data Mining Environment WHITEPAPER How to Optimize Your Data Mining Environment For Better Business Intelligence Data mining is the process of applying business intelligence software tools to business data in order to create

More information

Oracle Database: Introduction to SQL

Oracle Database: Introduction to SQL Oracle University Contact Us: 1.800.529.0165 Oracle Database: Introduction to SQL Duration: 5 Days What you will learn View a newer version of this course This Oracle Database: Introduction to SQL training

More information

Improve Model Accuracy with Unstructured Data

Improve Model Accuracy with Unstructured Data IBM SPSS Modeler Premium Improve Model Accuracy with Unstructured Data Highlights Easily access, prepare and integrate structured data and text, Web and survey data Support the entire data mining process

More information

On Compiling Data Mining Tasks to PDDL

On Compiling Data Mining Tasks to PDDL On Compiling Data Mining Tasks to PDDL Susana Fernández and Fernando Fernández and Alexis Sánchez Tomás de la Rosa and Javier Ortiz and Daniel Borrajo Universidad Carlos III de Madrid. Leganés (Madrid).

More information

Performing a data mining tool evaluation

Performing a data mining tool evaluation Performing a data mining tool evaluation Start with a framework for your evaluation Data mining helps you make better decisions that lead to significant and concrete results, such as increased revenue

More information

Practical Applications of DATA MINING. Sang C Suh Texas A&M University Commerce JONES & BARTLETT LEARNING

Practical Applications of DATA MINING. Sang C Suh Texas A&M University Commerce JONES & BARTLETT LEARNING Practical Applications of DATA MINING Sang C Suh Texas A&M University Commerce r 3 JONES & BARTLETT LEARNING Contents Preface xi Foreword by Murat M.Tanik xvii Foreword by John Kocur xix Chapter 1 Introduction

More information

Tax Fraud in Increasing

Tax Fraud in Increasing Preventing Fraud with Through Analytics Satya Bhamidipati Data Scientist Business Analytics Product Group Copyright 2014 Oracle and/or its affiliates. All rights reserved. 2 Tax Fraud in Increasing 27%

More information

An Overview of Knowledge Discovery Database and Data mining Techniques

An Overview of Knowledge Discovery Database and Data mining Techniques An Overview of Knowledge Discovery Database and Data mining Techniques Priyadharsini.C 1, Dr. Antony Selvadoss Thanamani 2 M.Phil, Department of Computer Science, NGM College, Pollachi, Coimbatore, Tamilnadu,

More information

Improve Results with High- Performance Data Mining

Improve Results with High- Performance Data Mining Clementine 10.0 Specifications Improve Results with High- Performance Data Mining Data mining provides organizations with a clearer view of current conditions and deeper insight into future events. With

More information

Introduction. A. Bellaachia Page: 1

Introduction. A. Bellaachia Page: 1 Introduction 1. Objectives... 3 2. What is Data Mining?... 4 3. Knowledge Discovery Process... 5 4. KD Process Example... 7 5. Typical Data Mining Architecture... 8 6. Database vs. Data Mining... 9 7.

More information

Oracle Data Miner (Extension of SQL Developer 4.0)

Oracle Data Miner (Extension of SQL Developer 4.0) An Oracle White Paper September 2013 Oracle Data Miner (Extension of SQL Developer 4.0) Integrate Oracle R Enterprise Mining Algorithms into a workflow using the SQL Query node Denny Wong Oracle Data Mining

More information

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Course 803401 DSS. Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Oman College of Management and Technology Course 803401 DSS Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization CS/MIS Department Information Sharing

More information

ANALYTICS CENTER LEARNING PROGRAM

ANALYTICS CENTER LEARNING PROGRAM Overview of Curriculum ANALYTICS CENTER LEARNING PROGRAM The following courses are offered by Analytics Center as part of its learning program: Course Duration Prerequisites 1- Math and Theory 101 - Fundamentals

More information

INTRODUCTION TO DATA MINING SAS ENTERPRISE MINER

INTRODUCTION TO DATA MINING SAS ENTERPRISE MINER INTRODUCTION TO DATA MINING SAS ENTERPRISE MINER Mary-Elizabeth ( M-E ) Eddlestone Principal Systems Engineer, Analytics SAS Customer Loyalty, SAS Institute, Inc. AGENDA Overview/Introduction to Data Mining

More information

Prerequisites. Course Outline

Prerequisites. Course Outline MS-55040: Data Mining, Predictive Analytics with Microsoft Analysis Services and Excel PowerPivot Description This three-day instructor-led course will introduce the students to the concepts of data mining,

More information

Oracle Database: Introduction to SQL

Oracle Database: Introduction to SQL Oracle University Contact Us: 1.800.529.0165 Oracle Database: Introduction to SQL Duration: 5 Days What you will learn This Oracle Database: Introduction to SQL training teaches you how to write subqueries,

More information

DATA MINING ALPHA MINER

DATA MINING ALPHA MINER DATA MINING ALPHA MINER AlphaMiner is developed by the E-Business Technology Institute (ETI) of the University of Hong Kong under the support from the Innovation and Technology Fund (ITF) of the Government

More information

not possible or was possible at a high cost for collecting the data.

not possible or was possible at a high cost for collecting the data. Data Mining and Knowledge Discovery Generating knowledge from data Knowledge Discovery Data Mining White Paper Organizations collect a vast amount of data in the process of carrying out their day-to-day

More information

Data Quality Mining: Employing Classifiers for Assuring consistent Datasets

Data Quality Mining: Employing Classifiers for Assuring consistent Datasets Data Quality Mining: Employing Classifiers for Assuring consistent Datasets Fabian Grüning Carl von Ossietzky Universität Oldenburg, Germany, fabian.gruening@informatik.uni-oldenburg.de Abstract: Independent

More information

Web Document Clustering

Web Document Clustering Web Document Clustering Lab Project based on the MDL clustering suite http://www.cs.ccsu.edu/~markov/mdlclustering/ Zdravko Markov Computer Science Department Central Connecticut State University New Britain,

More information

Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Turban, Aronson, and Liang Decision Support Systems and Intelligent Systems, Seventh Edition Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization

More information

Data Mining Standards

Data Mining Standards Data Mining Standards Arati Kadav Jaya Kawale Pabitra Mitra aratik@cse.iitk.ac.in jayak@cse.iitk.ac.in pmitra@cse.iitk.ac.in Abstract In this survey paper we have consolidated all the current data mining

More information

Develop Predictive Models Using Your Business Expertise

Develop Predictive Models Using Your Business Expertise Clementine 8.5 Specifications Develop Predictive Models Using Your Business Expertise Clementine is an integrated data mining workbench, popular worldwide with data miners and business analysts alike.

More information

Data Mining. 1 Introduction 2 Data Mining methods. Alfred Holl Data Mining 1

Data Mining. 1 Introduction 2 Data Mining methods. Alfred Holl Data Mining 1 Data Mining 1 Introduction 2 Data Mining methods Alfred Holl Data Mining 1 1 Introduction 1.1 Motivation 1.2 Goals and problems 1.3 Definitions 1.4 Roots 1.5 Data Mining process 1.6 Epistemological constraints

More information

Database Programming with PL/SQL: Learning Objectives

Database Programming with PL/SQL: Learning Objectives Database Programming with PL/SQL: Learning Objectives This course covers PL/SQL, a procedural language extension to SQL. Through an innovative project-based approach, students learn procedural logic constructs

More information

Achieve Better Insight and Prediction with Data Mining

Achieve Better Insight and Prediction with Data Mining Clementine 11.1 Specifications Achieve Better Insight and Prediction with Data Mining Data mining provides organizations with a clearer view of current conditions and deeper insight into future events.

More information

Dynamic Data in terms of Data Mining Streams

Dynamic Data in terms of Data Mining Streams International Journal of Computer Science and Software Engineering Volume 2, Number 1 (2015), pp. 1-6 International Research Publication House http://www.irphouse.com Dynamic Data in terms of Data Mining

More information

Cascading Pattern - How to quickly migrate Predictive Models (PMML) from SAS, R, Micro Strategies etc., onto Hadoop and deploy them at scale

Cascading Pattern - How to quickly migrate Predictive Models (PMML) from SAS, R, Micro Strategies etc., onto Hadoop and deploy them at scale Cascading Pattern - How to quickly migrate Predictive Models (PMML) from SAS, R, Micro Strategies etc., onto Hadoop and deploy them at scale V1.0 September 12, 2013 Introduction Summary Cascading Pattern

More information

Scorecard Element in PMML 4.1 Provides Rich, Accurate Exchange of Predictive Models for Improved Business Decisions

Scorecard Element in PMML 4.1 Provides Rich, Accurate Exchange of Predictive Models for Improved Business Decisions Scorecard Element in PMML 4.1 Provides Rich, Accurate Exchange of Predictive Models for Improved Business Decisions Andrew Flint Alex Guazzelli FICO Zementis, Inc. 200 Smith Ranch Road 6125 Cornestone

More information

About Dell Statistica 12.6... 2

About Dell Statistica 12.6... 2 Complete Product Name with Trademarks Version Dell TM Statistica TM 12.6 Contents Dell TM Statistica TM... 1 About Dell Statistica 12.6... 2 New Features... 2 Workspace Enhancements: Statistica Enterprise

More information

Data Mining mit der JMSL Numerical Library for Java Applications

Data Mining mit der JMSL Numerical Library for Java Applications Data Mining mit der JMSL Numerical Library for Java Applications Stefan Sineux 8. Java Forum Stuttgart 07.07.2005 Agenda Visual Numerics JMSL TM Numerical Library Neuronale Netze (Hintergrund) Demos Neuronale

More information

IBM SPSS Modeler 14.2 In-Database Mining Guide

IBM SPSS Modeler 14.2 In-Database Mining Guide IBM SPSS Modeler 14.2 In-Database Mining Guide Note: Before using this information and the product it supports, read the general information under Notices on p. 197. This edition applies to IBM SPSS Modeler

More information

OLAP and Data Mining. Data Warehousing and End-User Access Tools. Introducing OLAP. Introducing OLAP

OLAP and Data Mining. Data Warehousing and End-User Access Tools. Introducing OLAP. Introducing OLAP Data Warehousing and End-User Access Tools OLAP and Data Mining Accompanying growth in data warehouses is increasing demands for more powerful access tools providing advanced analytical capabilities. Key

More information

Oracle SQL. Course Summary. Duration. Objectives

Oracle SQL. Course Summary. Duration. Objectives Oracle SQL Course Summary Identify the major structural components of the Oracle Database 11g Create reports of aggregated data Write SELECT statements that include queries Retrieve row and column data

More information

RAPIDMINER FREE SOFTWARE FOR DATA MINING, ANALYTICS AND BUSINESS INTELLIGENCE. Luigi Grimaudo 178627 Database And Data Mining Research Group

RAPIDMINER FREE SOFTWARE FOR DATA MINING, ANALYTICS AND BUSINESS INTELLIGENCE. Luigi Grimaudo 178627 Database And Data Mining Research Group RAPIDMINER FREE SOFTWARE FOR DATA MINING, ANALYTICS AND BUSINESS INTELLIGENCE Luigi Grimaudo 178627 Database And Data Mining Research Group Summary RapidMiner project Strengths How to use RapidMiner Operator

More information

Deployment of Predictive Models. Sumit Kumar Bardhan

Deployment of Predictive Models. Sumit Kumar Bardhan Deployment of Predictive Models Sumit Kumar Bardhan For more Information about Predictive Analytics Software, please visit our web site http://www.predictiveanalytics.in or contact Predictive Analytics

More information

Fluency With Information Technology CSE100/IMT100

Fluency With Information Technology CSE100/IMT100 Fluency With Information Technology CSE100/IMT100 ),7 Larry Snyder & Mel Oyler, Instructors Ariel Kemp, Isaac Kunen, Gerome Miklau & Sean Squires, Teaching Assistants University of Washington, Autumn 1999

More information

How To Use A Data Mining Tool

How To Use A Data Mining Tool Database Systems Journal vol. I, no. 2/2010 45 Commercially Available Data Mining Tools used in the Economic Environment Mihai ANDRONIE 1, Daniel CRIŞAN 2 1 Academy of Economic Studies, Bucharest, Romania

More information

Operationalise Predictive Analytics

Operationalise Predictive Analytics Operationalise Predictive Analytics Publish SPSS, Excel and R reports online Predict online using SPSS and R models Access models and reports via Android app Organise people and content into projects Monitor

More information

Oracle9i Data Warehouse Review. Robert F. Edwards Dulcian, Inc.

Oracle9i Data Warehouse Review. Robert F. Edwards Dulcian, Inc. Oracle9i Data Warehouse Review Robert F. Edwards Dulcian, Inc. Agenda Oracle9i Server OLAP Server Analytical SQL Data Mining ETL Warehouse Builder 3i Oracle 9i Server Overview 9i Server = Data Warehouse

More information

Customer Classification And Prediction Based On Data Mining Technique

Customer Classification And Prediction Based On Data Mining Technique Customer Classification And Prediction Based On Data Mining Technique Ms. Neethu Baby 1, Mrs. Priyanka L.T 2 1 M.E CSE, Sri Shakthi Institute of Engineering and Technology, Coimbatore 2 Assistant Professor

More information

Oracle Data Miner (Extension of SQL Developer 4.0)

Oracle Data Miner (Extension of SQL Developer 4.0) An Oracle White Paper October 2013 Oracle Data Miner (Extension of SQL Developer 4.0) Generate a PL/SQL script for workflow deployment Denny Wong Oracle Data Mining Technologies 10 Van de Graff Drive Burlington,

More information

Data Mining for Business Intelligence. Concepts, Techniques, and Applications in Microsoft Office Excel with XLMiner. 2nd Edition

Data Mining for Business Intelligence. Concepts, Techniques, and Applications in Microsoft Office Excel with XLMiner. 2nd Edition Brochure More information from http://www.researchandmarkets.com/reports/2170926/ Data Mining for Business Intelligence. Concepts, Techniques, and Applications in Microsoft Office Excel with XLMiner. 2nd

More information

April 2016 JPoint Moscow, Russia. How to Apply Big Data Analytics and Machine Learning to Real Time Processing. Kai Wähner. kwaehner@tibco.

April 2016 JPoint Moscow, Russia. How to Apply Big Data Analytics and Machine Learning to Real Time Processing. Kai Wähner. kwaehner@tibco. April 2016 JPoint Moscow, Russia How to Apply Big Data Analytics and Machine Learning to Real Time Processing Kai Wähner kwaehner@tibco.com @KaiWaehner www.kai-waehner.de LinkedIn / Xing Please connect!

More information

Customer and Business Analytic

Customer and Business Analytic Customer and Business Analytic Applied Data Mining for Business Decision Making Using R Daniel S. Putler Robert E. Krider CRC Press Taylor &. Francis Group Boca Raton London New York CRC Press is an imprint

More information

Data Mining Extensions (DMX) Reference

Data Mining Extensions (DMX) Reference Data Mining Extensions (DMX) Reference SQL Server 2012 Books Online Summary: Data Mining Extensions (DMX) is a language that you can use to create and work with data mining models in Microsoft SQL Server

More information

Machine Learning with MATLAB David Willingham Application Engineer

Machine Learning with MATLAB David Willingham Application Engineer Machine Learning with MATLAB David Willingham Application Engineer 2014 The MathWorks, Inc. 1 Goals Overview of machine learning Machine learning models & techniques available in MATLAB Streamlining the

More information

Data Mining. Nonlinear Classification

Data Mining. Nonlinear Classification Data Mining Unit # 6 Sajjad Haider Fall 2014 1 Nonlinear Classification Classes may not be separable by a linear boundary Suppose we randomly generate a data set as follows: X has range between 0 to 15

More information

TOWARDS SIMPLE, EASY TO UNDERSTAND, AN INTERACTIVE DECISION TREE ALGORITHM

TOWARDS SIMPLE, EASY TO UNDERSTAND, AN INTERACTIVE DECISION TREE ALGORITHM TOWARDS SIMPLE, EASY TO UNDERSTAND, AN INTERACTIVE DECISION TREE ALGORITHM Thanh-Nghi Do College of Information Technology, Cantho University 1 Ly Tu Trong Street, Ninh Kieu District Cantho City, Vietnam

More information

IBM SPSS Data Preparation 22

IBM SPSS Data Preparation 22 IBM SPSS Data Preparation 22 Note Before using this information and the product it supports, read the information in Notices on page 33. Product Information This edition applies to version 22, release

More information

STATISTICA. Financial Institutions. Case Study: Credit Scoring. and

STATISTICA. Financial Institutions. Case Study: Credit Scoring. and Financial Institutions and STATISTICA Case Study: Credit Scoring STATISTICA Solutions for Business Intelligence, Data Mining, Quality Control, and Web-based Analytics Table of Contents INTRODUCTION: WHAT

More information

DATA PREPARATION FOR DATA MINING

DATA PREPARATION FOR DATA MINING Applied Artificial Intelligence, 17:375 381, 2003 Copyright # 2003 Taylor & Francis 0883-9514/03 $12.00 +.00 DOI: 10.1080/08839510390219264 u DATA PREPARATION FOR DATA MINING SHICHAO ZHANG and CHENGQI

More information

METHODOLOGICAL NOTE: Seasonal adjustment of retail trade sales

METHODOLOGICAL NOTE: Seasonal adjustment of retail trade sales METHODOLOGICAL NOTE: Seasonal adjustment of retail trade sales March 2014 to February 2015 1 Methodological note on the seasonal adjustment of retail trade sales This document provides a brief explanation

More information

Data Mining for Customer Service Support. Senioritis Seminar Presentation Megan Boice Jay Carter Nick Linke KC Tobin

Data Mining for Customer Service Support. Senioritis Seminar Presentation Megan Boice Jay Carter Nick Linke KC Tobin Data Mining for Customer Service Support Senioritis Seminar Presentation Megan Boice Jay Carter Nick Linke KC Tobin Traditional Hotline Services Problem Traditional Customer Service Support (manufacturing)

More information