name :
0A018G
title :
Data science without a Ph.D. Using IBM SPSS Modeler (v18.1.1)
category :
Cloud
vendor :
IBM
classroomDeliveryMethod :
Classroom IBM
descriptions :
description :
OverviewThis course focuses on reviewing concepts of data science, where participants will learn the stages of a data science project. Topics include using automated tools to prepare data for analysis, build models, evaluate models, and deploy models. To learn about these data science concepts and topics, participants will use IBM SPSS Modeler as a tool.Audience• Business Analysts
• Data Scientists
• Participants who want to get started with data sciencePrerequisites• It is recommended that you have an understanding of your business dataObjective
  • Introduction to data science and IBM SPSS Modeler
  • Setting measurement levels
  • Exploring the data
  • Using automated data preparation
  • Partitioning the data
  • Selecting predictors
  • Using automated modeling
  • Evaluating models
  • Deploying models
Course Outline1:  Introduction to data science and IBM SPSS Modeler
    •  Explain the stages in a data-science project, using the CRISP-DM methodology
    •  Create IBM SPSS Modeler streams
    •  Build and apply a machine learning model
2:  Setting measurement levels
    •  Explain the concept of "field measurement level"
    •  Explain the consequences of incorrect measurement levels
    •  Modify a field's measurement level
3:  Exploring the data
    •  Audit the data
    •  Check for invalid values
    •  Take action for invalid values
    •  Impute missing values
    •  Replace outliers and extremes
4:  Using automated data preparation
    •  Automatically exclude low quality fields
    •  Automatically replace missing values
    •  Automatically replace outliers and extremes
5:  Partitioning the data
    •  Explain the rationale for partitioning the data
    •  Partition the data into a training set and testing set
6:  Selecting predictors
    •  Automatically select important predictors (features) to predict a target
    •  Explain the limitations of automatically selecting features
7:  Using automated modeling
    •  Find the best model for categorical targets
    •  Find the best model for continuous targets
    •  Explain what an ensemble model is
8:  Evaluating models
    •  Evaluate models for categorical targets
    •  Evaluate models for continuous targets
9:  Deploying models
    •  List two ways to deploy models
    •  Export scored data
overview :
[This course focuses on reviewing concepts of data science, where participants will learn the stages of a data science project. Topics include using automated tools to prepare data for analysis, build models, evaluate models, and deploy models. To learn about these data science concepts and topics, participants will use IBM SPSS Modeler as a tool.]
abstract :
This course focuses on reviewing concepts of data science, where participants will learn the stages of a data science project. Topics include using automated tools to prepare data for analysis, build models, evaluate models, and deploy models. To learn about these data science concepts and topics, participants will use IBM SPSS Modeler as a tool.
prerequisits :
objective :
Overview This course focuses on reviewing concepts of data science, where participants will learn the stages of a data science project. Topics include using automated tools to prepare data for analysis, build models, evaluate models, and deploy models. To learn about these data science concepts and topics, participants will use IBM SPSS Modeler as a tool. Audience • Business Analysts
• Data Scientists
• Participants who want to get started with data science Prerequisites • It is recommended that you have an understanding of your business data Objective
  • Introduction to data science and IBM SPSS Modeler
  • Setting measurement levels
  • Exploring the data
  • Using automated data preparation
  • Partitioning the data
  • Selecting predictors
  • Using automated modeling
  • Evaluating models
  • Deploying models
topic :
Course Outline1:  Introduction to data science and IBM SPSS Modeler
    •  Explain the stages in a data-science project, using the CRISP-DM methodology
    •  Create IBM SPSS Modeler streams
    •  Build and apply a machine learning model
2:  Setting measurement levels
    •  Explain the concept of "field measurement level"
    •  Explain the consequences of incorrect measurement levels
    •  Modify a field's measurement level
3:  Exploring the data
    •  Audit the data
    •  Check for invalid values
    •  Take action for invalid values
    •  Impute missing values
    •  Replace outliers and extremes
4:  Using automated data preparation
    •  Automatically exclude low quality fields
    •  Automatically replace missing values
    •  Automatically replace outliers and extremes
5:  Partitioning the data
    •  Explain the rationale for partitioning the data
    •  Partition the data into a training set and testing set
6:  Selecting predictors
    •  Automatically select important predictors (features) to predict a target
    •  Explain the limitations of automatically selecting features
7:  Using automated modeling
    •  Find the best model for categorical targets
    •  Find the best model for continuous targets
    •  Explain what an ensemble model is
8:  Evaluating models
    •  Evaluate models for categorical targets
    •  Evaluate models for continuous targets
9:  Deploying models
    •  List two ways to deploy models
    •  Export scored data
startDate :
2021-12-09T04:28:46Z
endDate :
2022-04-15T00:00:00Z
lastModified :
2021-12-08T08:00:34Z
created :
2017-12-19T08:00:28Z
duration :
8
durationUnit :
HOURS
ibmIPType :
listPrice :
575
currency :
GBP
badge_Template_ID :
badge_Title :
badge_Url :

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