Customer Analysis Module Reference for MicroStrategy 9.5

Customer Analysis Module Reference for MicroStrategy 9.5 PDF

Author: MicroStrategy Product Manuals

Publisher: MicroStrategy, Inc.

Published: 2015-02-01

Total Pages: 216

ISBN-13: 1938244869

DOWNLOAD EBOOK →

A reference for the MicroStrategy Customer Analysis Module (CAM), part of the MicroStrategy Analytics Modules that come with MicroStrategy Architect. This guide provides a description, usage scenarios, and screen shots for all the packaged reports for CAM.

Customer Analysis Module Reference for MicroStrategy 9.2.1m

Customer Analysis Module Reference for MicroStrategy 9.2.1m PDF

Author: MicroStrategy Product Manuals

Publisher: MicroStrategy

Published: 2011-12-20

Total Pages: 217

ISBN-13: 1936804719

DOWNLOAD EBOOK →

A reference for the MicroStrategy Customer Analysis Module (CAM), part of the MicroStrategy Analytics Modules that come with MicroStrategy Architect. This guide provides a description, usage scenarios, and screen shots for all the packaged reports for CAM.

Freeform SQL Essentials

Freeform SQL Essentials PDF

Author: MicroStrategy University

Publisher: MicroStrategy Inc.

Published: 2013-09-02

Total Pages: 219

ISBN-13: 1937418499

DOWNLOAD EBOOK →

The MicroStrategy Freeform SQL Essentials course covers how to use Freeform SQL reports in a design concepts as well as knowledge of SQL. You will learn how to create and use Freeform SQL reports, including working with managed objects, incorporating prompts, using derived and common table expressions and stored procedures, accessing non-relational data sources, and configuring security.MicroStrategy project. The course assumes an understanding of basic report development and project

Financial Statement Analysis

Financial Statement Analysis PDF

Author: Martin S. Fridson

Publisher: John Wiley & Sons

Published: 2002-10-01

Total Pages: 414

ISBN-13: 0471264601

DOWNLOAD EBOOK →

Praise for Financial Statement Analysis A Practitioner's Guide Third Edition "This is an illuminating and insightful tour of financial statements, how they can be used to inform, how they can be used to mislead, and how they can be used to analyze the financial health of a company." -Professor Jay O. Light Harvard Business School "Financial Statement Analysis should be required reading for anyone who puts a dime to work in the securities markets or recommends that others do the same." -Jack L. Rivkin Executive Vice President (retired) Citigroup Investments "Fridson and Alvarez provide a valuable practical guide for understanding, interpreting, and critically assessing financial reports put out by firms. Their discussion of profits-'quality of earnings'-is particularly insightful given the recent spate of reporting problems encountered by firms. I highly recommend their book to anyone interested in getting behind the numbers as a means of predicting future profits and stock prices." -Paul Brown Chair-Department of Accounting Leonard N. Stern School of Business, NYU "Let this book assist in financial awareness and transparency and higher standards of reporting, and accountability to all stakeholders." -Patricia A. Small Treasurer Emeritus, University of California Partner, KCM Investment Advisors "This book is a polished gem covering the analysis of financial statements. It is thorough, skeptical and extremely practical in its review." -Daniel J. Fuss Vice Chairman Loomis, Sayles & Company, LP

Enabling Real-time Analytics on IBM z Systems Platform

Enabling Real-time Analytics on IBM z Systems Platform PDF

Author: Lydia Parziale

Publisher: IBM Redbooks

Published: 2016-08-08

Total Pages: 218

ISBN-13: 0738441864

DOWNLOAD EBOOK →

Regarding online transaction processing (OLTP) workloads, IBM® z SystemsTM platform, with IBM DB2®, data sharing, Workload Manager (WLM), geoplex, and other high-end features, is the widely acknowledged leader. Most customers now integrate business analytics with OLTP by running, for example, scoring functions from transactional context for real-time analytics or by applying machine-learning algorithms on enterprise data that is kept on the mainframe. As a result, IBM adds investment so clients can keep the complete lifecycle for data analysis, modeling, and scoring on z Systems control in a cost-efficient way, keeping the qualities of services in availability, security, reliability that z Systems solutions offer. Because of the changed architecture and tighter integration, IBM has shown, in a customer proof-of-concept, that a particular client was able to achieve an orders-of-magnitude improvement in performance, allowing that client's data scientist to investigate the data in a more interactive process. Open technologies, such as Predictive Model Markup Language (PMML) can help customers update single components instead of being forced to replace everything at once. As a result, you have the possibility to combine your preferred tool for model generation (such as SAS Enterprise Miner or IBM SPSS® Modeler) with a different technology for model scoring (such as Zementis, a company focused on PMML scoring). IBM SPSS Modeler is a leading data mining workbench that can apply various algorithms in data preparation, cleansing, statistics, visualization, machine learning, and predictive analytics. It has over 20 years of experience and continued development, and is integrated with z Systems. With IBM DB2 Analytics Accelerator 5.1 and SPSS Modeler 17.1, the possibility exists to do the complete predictive model creation including data transformation within DB2 Analytics Accelerator. So, instead of moving the data to a distributed environment, algorithms can be pushed to the data, using cost-efficient DB2 Accelerator for the required resource-intensive operations. This IBM Redbooks® publication explains the overall z Systems architecture, how the components can be installed and customized, how the new IBM DB2 Analytics Accelerator loader can help efficient data loading for z Systems data and external data, how in-database transformation, in-database modeling, and in-transactional real-time scoring can be used, and what other related technologies are available. This book is intended for technical specialists and architects, and data scientists who want to use the technology on the z Systems platform. Most of the technologies described in this book require IBM DB2 for z/OS®. For acceleration of the data investigation, data transformation, and data modeling process, DB2 Analytics Accelerator is required. Most value can be achieved if most of the data already resides on z Systems platforms, although adding external data (like from social sources) poses no problem at all.

Dimensional Modeling: In a Business Intelligence Environment

Dimensional Modeling: In a Business Intelligence Environment PDF

Author: Chuck Ballard

Publisher: IBM Redbooks

Published: 2012-07-31

Total Pages: 670

ISBN-13: 0738496448

DOWNLOAD EBOOK →

In this IBM Redbooks publication we describe and demonstrate dimensional data modeling techniques and technology, specifically focused on business intelligence and data warehousing. It is to help the reader understand how to design, maintain, and use a dimensional model for data warehousing that can provide the data access and performance required for business intelligence. Business intelligence is comprised of a data warehousing infrastructure, and a query, analysis, and reporting environment. Here we focus on the data warehousing infrastructure. But only a specific element of it, the data model - which we consider the base building block of the data warehouse. Or, more precisely, the topic of data modeling and its impact on the business and business applications. The objective is not to provide a treatise on dimensional modeling techniques, but to focus at a more practical level. There is technical content for designing and maintaining such an environment, but also business content. For example, we use case studies to demonstrate how dimensional modeling can impact the business intelligence requirements for your business initiatives. In addition, we provide a detailed discussion on the query aspects of BI and data modeling. For example, we discuss query optimization and how you can determine performance of the data model prior to implementation. You need a solid base for your data warehousing infrastructure . . . . a solid data model.