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100 |
1 |
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|a Barga, Roger S.,
|e author.
|
245 |
1 |
0 |
|a Predictive analytics with Microsoft Azure machine learning :
|b build and deploy actionable solutions in minutes /
|c Roger Barga, Valentine Fontama and Wee Hyong Tok.
|
250 |
|
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|a Second edition.
|
264 |
|
1 |
|a [Berkley, CA] :
|b Apress,
|c 2015.
|
264 |
|
4 |
|c Ã2015
|
300 |
|
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|a 1 online resource
|
336 |
|
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|a text
|b txt
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|a computer
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0 |
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|a Online resource; title from PDF title page (EBSCO, viewed August 31, 2015).
|
500 |
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|a Includes index.
|
520 |
|
|
|a Predictive Analytics with Microsoft Azure Machine Learning, Second Edition is a practical tutorial introduction to the field of data science and machine learning, with a focus on building and deploying predictive models. The book provides a thorough overview of the Microsoft Azure Machine Learning service released for general availability on February 18th, 2015 with practical guidance for building recommenders, propensity models, and churn and predictive maintenance models. The authors use task oriented descriptions and concrete end-to-end examples to ensure that the reader can immediately begin using this new service. The book describes all aspects of the service from data ingress to applying machine learning, evaluating the models, and deploying them as web services. Learn how you can quickly build and deploy sophisticated predictive models with the new Azure Machine Learning from Microsoft. What's New in the Second Edition? Five new chapters have been added with practical detailed coverage of: Python Integration - a new feature announced February 2015 Data preparation and feature selection Data visualization with Power BI Recommendation engines Selling your models on Azure Marketplace.
|
505 |
0 |
0 |
|g Machine generated contents note:
|g pt. I
|t Introducing Data Science and Microsoft Azure Machine Learning --
|g ch. 1
|t Introduction to Data Science --
|t What is Data Science? --
|t Analytics Spectrum --
|t Descriptive Analysis --
|t Diagnostic Analysis --
|t Predictive Analysis --
|t Prescriptive Analysis --
|t Why Does It Matter and Why Now? --
|t Data as a Competitive Asset --
|t Increased Customer Demand --
|t Increased Awareness of Data Mining Technologies --
|t Access to More Data --
|t Faster and Cheaper Processing Power --
|t Data Science Process --
|t Common Data Science Techniques --
|t Classification Algorithms --
|t Clustering Algorithms --
|t Regression Algorithms --
|t Simulation --
|t Content Analysis --
|t Recommendation Engines --
|t Cutting Edge of Data Science --
|t Rise of Ensemble Models --
|t Summary --
|t Bibliography --
|g ch. 2
|t Introducing Microsoft Azure Machine Learning --
|t Hello, Machine Learning Studio! --
|t Components of an Experiment --
|t Introducing the Gallery --
|t Five Easy Steps to Creating a Training Experiment --
|g Step 1
|t Getting the Data --
|g Step 2
|t Preprocessing the Data --
|g Step 3
|t Defining the Features --
|g Step 4
|t Choosing and Applying Machine Learning Algorithms --
|g Step 5
|t Predicting Over New Data --
|t Deploying Your Model in Production --
|t Creating a Predictive Experiment --
|t Publishing Your Experiment as a Web Service --
|t Accessing the Azure Machine Learning Web Service --
|t Summary --
|g ch. 3
|t Data Preparation --
|t Data Cleaning and Processing --
|t Getting to Know Your Data --
|t Missing and Null Values --
|t Handling Duplicate Records --
|t Identifying and Removing Outliers --
|t Feature Normalization --
|t Dealing with Class Imbalance --
|t Feature Selection --
|t Feature Engineering --
|t Binning Data --
|t Curse of Dimensionality --
|t Summary --
|g ch. 4
|t Integration with R --
|t R in a Nutshell --
|t Building and Deploying Your First R Script --
|t Using R for Data Preprocessing --
|t Using a Script Bundle (ZIP) --
|t Building and Deploying a Decision Tree Using R --
|t Summary --
|g ch. 5
|t Integration with Python --
|t Overview --
|t Python Jumpstart --
|t Using Python in Azure ML Experiments --
|t Using Python for Data Preprocessing --
|t Combining Data using Python --
|t Handling Missing Data Using Python --
|t Feature Selection Using Python --
|t Running Python Code in an Azure ML Experiment --
|t Summary --
|g pt. II
|t Statistical and Machine Learning Algorithms --
|g ch. 6
|t Introduction to Statistical and Machine Learning Algorithms --
|t Regression Algorithms --
|t Linear Regression --
|t Neural Networks --
|t Decision Trees --
|t Boosted Decision Trees --
|t Classification Algorithms --
|t Support Vector Machines --
|t Bayes Point Machines --
|t Clustering Algorithms --
|t Summary --
|g pt. III
|t Practical Applications --
|g ch. 7
|t Building Customer Propensity Models --
|t Business Problem --
|t Data Acquisition and Preparation --
|t Data Analysis --
|t Training the Model --
|t Model Testing and Validation --
|t Model Performance --
|t Prioritizing Evaluation Metrics --
|t Summary --
|g ch. 8
|t Visualizing Your Models with Power BI --
|t Overview --
|t Introducing Power BI --
|t Three Approaches for Visualizing with Power BI --
|t Scoring Your Data in Azure Machine Learning and Visualizing in Excel --
|t Scoring and Visualizing Your Data in Excel --
|t Scoring Your Data in Azure Machine Learning and Visualizing in powerbi.com --
|t Loading Data --
|t Building Your Dashboard --
|t Summary --
|g ch. 9
|t Building Churn Models --
|t Churn Models in a Nutshell --
|t Building and Deploying a Customer Churn Model --
|t Preparing and Understanding Data --
|t Data Preprocessing and Feature Selection --
|t Classification Model for Predicting Churn --
|t Evaluating the Performance of the Customer Churn Models --
|t Summary --
|g ch. 10
|t Customer Segmentation Models --
|t Customer Segmentation Models in a Nutshell --
|t Building and Deploying Your First K-Means Clustering Model --
|t Feature Hashing --
|t Identifying the Right Features --
|t Properties of K-Means Clustering --
|t Customer Segmentation of Wholesale Customers --
|t Loading the Data from the UCI Machine Learning Repository --
|t Using K-Means Clustering for Wholesale Customer Segmentation --
|t Cluster Assignment for New Data --
|t Summary --
|g ch. 11
|t Building Predictive Maintenance Models --
|t Overview --
|t Predictive Maintenance Scenarios --
|t Business Problem --
|t Data Acquisition and Preparation --
|t Dataset --
|t Data Loading --
|t Data Analysis --
|t Training the Model --
|t Model Testing and Validation --
|t Model Performance --
|t Techniques for Improving the Model --
|t Upsampling and Downsampling --
|t Model Deployment --
|t Creating a Predictive Experiment --
|t Publishing Your Experiment as a Web Service --
|t Summary --
|g ch. 12
|t Recommendation Systems --
|t Overview --
|t Recommendation Systems Approaches and Scenarios --
|t Business Problem --
|t Data Acquisition and Preparation --
|t Dataset --
|t Training the Model --
|t Model Testing and Validation --
|t Summary --
|g ch. 13
|t Consuming and Publishing Models on Azure Marketplace --
|t What Are Machine Learning APIs? --
|t How to Use an API from Azure Marketplace --
|t Publishing Your Own Models in Azure Marketplace --
|t Creating and Publishing a Web Service for Your Machine Learning Model --
|t Creating Scoring Experiment --
|t Publishing Your Experiment as a Web Service --
|t Obtaining the API Key and the Details of the OData Endpoint --
|t Publishing Your Model as an API in Azure Marketplace --
|t Summary --
|g ch. 14
|t Cortana Analytics --
|t What Is the Cortana Analytics Suite? --
|t Capabilities of Cortana Analytics Suite --
|t Example Scenario --
|t Summary.
|
590 |
|
|
|a O'Reilly
|b O'Reilly Online Learning: Academic/Public Library Edition
|
630 |
0 |
0 |
|a Windows Azure.
|
630 |
0 |
7 |
|a Windows Azure
|2 fast
|
650 |
|
0 |
|a Information technology
|x Management.
|
650 |
|
6 |
|a Technologie de l'information
|x Gestion.
|
650 |
|
7 |
|a Software Engineering.
|2 bicssc
|
650 |
|
7 |
|a Data mining.
|2 bicssc
|
650 |
|
7 |
|a Program concepts
|x learning to program.
|2 bicssc
|
650 |
|
7 |
|a COMPUTERS
|x Desktop Applications
|x Databases.
|2 bisacsh
|
650 |
|
7 |
|a COMPUTERS
|x Database Management
|x General.
|2 bisacsh
|
650 |
|
7 |
|a COMPUTERS
|x System Administration
|x Storage & Retrieval.
|2 bisacsh
|
650 |
|
7 |
|a Information technology
|x Management
|2 fast
|
653 |
0 |
0 |
|a computerwetenschappen
|
653 |
0 |
0 |
|a computer sciences
|
653 |
0 |
0 |
|a datamining
|
653 |
0 |
0 |
|a data mining
|
653 |
1 |
0 |
|a Information and Communication Technology (General)
|
653 |
1 |
0 |
|a Informatie- en communicatietechnologie (algemeen)
|
700 |
1 |
|
|a Fontama, Valentine,
|e author.
|
700 |
1 |
|
|a Tok, Wee-Hyong,
|e author.
|
776 |
0 |
8 |
|i Printed edition:
|z 9781484212011
|
856 |
4 |
0 |
|u https://learning.oreilly.com/library/view/~/9781484212004/?ar
|z Texto completo (Requiere registro previo con correo institucional)
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