Details

Applied Microsoft Business Intelligence


Applied Microsoft Business Intelligence


1. Aufl.

von: Patrick LeBlanc, Jessica M. Moss, Dejan Sarka, Dustin Ryan

32,99 €

Verlag: Wiley
Format: EPUB
Veröffentl.: 06.05.2015
ISBN/EAN: 9781118961780
Sprache: englisch
Anzahl Seiten: 432

DRM-geschütztes eBook, Sie benötigen z.B. Adobe Digital Editions und eine Adobe ID zum Lesen.

Beschreibungen

<b>Leverage the integration of SQL Server and Office for more effective BI</b> <p><i>Applied Microsoft Business Intelligence</i> shows you how to leverage the complete set of Microsoft tools—including Microsoft Office and SQL Server—to better analyze business data.</p> <p>This book provides best practices for building complete BI solutions using the full Microsoft toolset. You will learn how to effectively use SQL Server Analysis and Reporting Services, along with Excel, SharePoint, and other tools to provide effective and cohesive solutions for the enterprise. Coverage includes BI architecture, data queries, semantic models, multidimensional modeling, data analysis and visualization, performance monitoring, data mining, and more, to help you learn to perform practical business analysis and reporting. Written by an author team that includes a key member of the BI product team at Microsoft, this useful reference provides expert instruction for more effective use of the Microsoft BI toolset.</p> <ul> <li>Use Microsoft BI suite cohesively for more effective enterprise solutions</li> <li>Search, analyze, and visualize data more efficiently and completely</li> <li>Develop flexible and scalable tabular and multidimensional models</li> </ul> <p>Monitor performance, build a BI portal, and deploy and manage the BI Solution</p>
Introduction xiii <p><b>Part I Overview of the Microsoft Business Intelligence Toolset 1</b></p> <p><b>Chapter 1 Which Analysis and Reporting Tools Do You Need? 3</b></p> <p>Selecting a SQL Server Database Engine 4</p> <p>Building a Data Warehouse 4</p> <p>Selecting an RDBMS 5</p> <p>Selecting SQL Server Analysis Services 6</p> <p>Working with SQL Server Reporting Services 7</p> <p>Understanding Operational Reports 8</p> <p>Understanding Ad Hoc Reporting 10</p> <p>Working with SharePoint 11</p> <p>Working with Performance Point 12</p> <p>Using Excel for Business Intelligence 14</p> <p>What Is Power Query? 14</p> <p>What Is Power Pivot? 14</p> <p>What Is Power View? 14</p> <p>Power Map 15</p> <p>Which Development Tools Do You Need? 16</p> <p>Using SQL Server Data Tools 16</p> <p>Using SQL Management Studio 17</p> <p>Using Dashboard Designer 18</p> <p>Using Report Builder 19</p> <p>Summary 20</p> <p><b>Chapter 2 Designing an Eff ective Business Intelligence Architecture 21</b></p> <p>Identifying the Audience and Goal of the Business Intelligence Solution 21</p> <p>Who’s the Audience? 22</p> <p>What Is the Goal(s)? 23</p> <p>What Are the Data Sources? 23</p> <p>Using Internal Data Sources 23</p> <p>Using External Data Sources 24</p> <p>Using a Data Warehouse (or Not) 24</p> <p>Implementing and Enforcing Data Governance 26</p> <p>Planning an Analytical Model 28</p> <p>Planning the Business Intelligence Delivery Solution 29</p> <p>Considering Performance 30</p> <p>Considering Availability 31</p> <p>Summary 32</p> <p><b>Chapter 3 Selecting the Data Architecture that Fits Your Organization 33</b></p> <p>Why Is Data Architecture Selection Important? 34</p> <p>Challenges 34</p> <p>Benefits 35</p> <p>How Do You Pick the Right Data Architecture? 36</p> <p>Understanding Architecture Options 36</p> <p>Understanding Research Selection Factors 42</p> <p>Interviewing Key Stakeholders 44</p> <p>Completing the Selection Form 45</p> <p>Finalizing and Approving the Architecture 46</p> <p>Summary 48</p> <p><b>Part II Business Intelligence for Analysis 49</b></p> <p><b>Chapter 4 Searching and Combining Data with Power Query 51</b></p> <p>Downloading and Installing Power Query 52</p> <p>Importing Data 56</p> <p>Importing from a Database 57</p> <p>Importing from the Web 59</p> <p>Importing from a File 61</p> <p>Transforming Data 62</p> <p>Combining Data from Multiple Sources 62</p> <p>Splitting Data 64</p> <p>Aggregating Data 66</p> <p>Introducing M Programming 70</p> <p>A Glance at the M Language 70</p> <p>Adding and Removing Columns Using M 72</p> <p>Summary 72</p> <p><b>Chapter 5 Choosing the Right Business Intelligence Semantic Model 73</b></p> <p>Understanding the Business Intelligence Semantic Model Architecture 74</p> <p>Understanding the Data Access Layer 75</p> <p>Using Power Pivot 77</p> <p>Using the Multidimensional Model 78</p> <p>Using the Tabular Model 78</p> <p>Implementing Query Languages and the Business Logic Layer 79</p> <p>Data Analytics Expressions (DAX) 79</p> <p>Multidimensional Expressions (MDX) 81</p> <p>Direct Query and ROLAP 81</p> <p>Data Model Layer 82</p> <p>Comparing the Different Types of Models 83</p> <p>Which Model Fits Your Organization? 84</p> <p>Departmental 84</p> <p>Team 86</p> <p>Organizational 87</p> <p>Summary 88</p> <p><b>Chapter 6 Discovering and Analyzing Data with Power Pivot 89</b></p> <p>Understanding Hardware and Software Requirements 90</p> <p>Enabling Power Pivot 90</p> <p>Designing an Optimal Power Pivot Model 92</p> <p>Importing Only What You Need 92</p> <p>Understanding Why Data Types Matter 99</p> <p>Working with Columns or DAX Calculated Measures 103</p> <p>Optimizing the Power Pivot Model for Reporting 104</p> <p>Understanding Power Pivot Model Basics 104</p> <p>Adding All Necessary Relationships 107</p> <p>Adding Calculated Columns and DAX Measures 114</p> <p>Creating Hierarchies and Key Performance Indicators (KPIs) 118</p> <p>Sorting Your Data to Meet End-User Needs 121</p> <p>Implementing Role-Playing Dimensions 122</p> <p>Summary 125</p> <p><b>Chapter 7 Developing a Flexible and Scalable Tabular Model 127</b></p> <p>Why Use a Tabular Model? 127</p> <p>Understanding the Tabular Model 128</p> <p>Using the Tabular Model 128</p> <p>Comparing the Tabular and Multidimensional Models 130</p> <p>Understanding the Tabular Development Process 130</p> <p>How Do You Design the Model? 131</p> <p>Importing Data 131</p> <p>Designing Relationships 134</p> <p>Calculated Columns and Measures 135</p> <p>How Do You Enhance the Model? 137</p> <p>Adding Hierarchies 137</p> <p>Designing Perspectives 140</p> <p>Adding Partitions 141</p> <p>How Do You Tune the Model? 144</p> <p>Optimizing Processing 144</p> <p>Optimizing Querying 147</p> <p>Summary 149</p> <p><b>Chapter 8 Developing a Flexible and Scalable Multidimensional Model 151</b></p> <p>Why Use a Multidimensional Model? 151</p> <p>Understanding the Multidimensional Model 152</p> <p>Understanding the Multidimensional Model Process 153</p> <p>How Do You Design the Model? 153</p> <p>Creating Data Sources and the Data Source View 153</p> <p>Using the Cube Creation Wizard 156</p> <p>Adjusting Measures 159</p> <p>Completing Dimensions 160</p> <p>How Do You Enhance the Model? 162</p> <p>Adding Navigation with Hierarchies 162</p> <p>Using the Business Intelligence Wizard for Calculations 164</p> <p>Using Partitions and Aggregations 166</p> <p>How Do You Tune the Model? 169</p> <p>Resolving Processing Issues 169</p> <p>Querying 171</p> <p>Summary 172</p> <p><b>Chapter 9 Discovering Knowledge with Data Mining 173</b></p> <p>Understanding the Business Value of Data Mining 174</p> <p>Understanding Data Mining Techniques 174</p> <p>Common Business Use Cases 175</p> <p>Driving Decisions, Strategies, and Processes Through Data Mining 176</p> <p>Getting the Basics Right 179</p> <p>Understanding the Data 180</p> <p>Training and Test Datasets 182</p> <p>Defining the Data Mining Structure 184</p> <p>The Data Mining Model 184</p> <p>Applying the Microsoft Data Mining Techniques with Best Practices 185</p> <p>Using Microsoft Association Rules 186</p> <p>Grouping Data with Microsoft Clustering 190</p> <p>Building Mining Models with Microsoft Naïve Bayes 192</p> <p>Using the Microsoft Decision Trees 193</p> <p>Using Microsoft Neural Network and Microsoft Logistic Regression 195</p> <p>Using Microsoft Linear Regression and Microsoft Regression Trees 197</p> <p>Microsoft Sequence Clustering 199</p> <p>Forecasting with Microsoft Time Series 200</p> <p>Developing and Deploying a Scalable and Extensible Data Mining Solution 201</p> <p>Choosing Between a Relational or a Cube Source for Your Data Mining Structure 202</p> <p>Deploying Data Mining Models 202</p> <p>Using DMX to Query Data Mining Models 204</p> <p>Maintaining Data Mining Models 205</p> <p>Fine-Tuning the Data Mining Structure 205</p> <p>Keeping the Data Model Relevant 205</p> <p>Continuous Learning Cycle 205</p> <p>Integrating Data Mining with Your BI Solution 206</p> <p>Integrating Data Mining in Your DW and ETL Processes 206</p> <p>Integrating Data Mining with Reporting Services 207</p> <p>Data Mining in Excel 207</p> <p>Summary 208</p> <p><b>Part III Business Intelligence for Reporting 209</b></p> <p><b>Chapter 10 Choosing the Right Business Intelligence Visualization Tool 211</b></p> <p>Why Do You Need to Choose? 211</p> <p>Identifying Users 212</p> <p>Selecting Tools 213</p> <p>What Are the Selection Criteria? 213</p> <p>Business Capabilities 214</p> <p>Technical Capabilities 214</p> <p>How Do You Gather the Necessary Information? 215</p> <p>What Are the Business Intelligence Visualization Options? 215</p> <p>Using SQL Server Reporting Services 215</p> <p>Using Power View 218</p> <p>Using Power Map 219</p> <p>How Do You Create and Complete the Evaluation Matrix? 221</p> <p>How Do You Verify and Complete the Process? 223</p> <p>Evaluation Matrix #1 224</p> <p>Evaluation Matrix #2 224</p> <p>Summary 225</p> <p><b>Chapter 11 Designing Operational Reports with Reporting Services 227</b></p> <p>What Are Operational Reports and Reporting Services? 227</p> <p>Understanding Analytical versus Operational Reports 228</p> <p>Using Reporting Services 228</p> <p>What Are Development Best Practices? 230</p> <p>Using Source and Version Control 231</p> <p>Using Shared Data Sources and Datasets 234</p> <p>Creating Templates 236</p> <p>What Are Performance Best Practices? 237</p> <p>Investigating Performance 237</p> <p>Performance Tuning 238</p> <p>What Are Functionality Best Practices? 239</p> <p>Using Visualizations 239</p> <p>Using Filters and Parameters 240</p> <p>Providing Drilldown and Drillthrough 241</p> <p>Summary 244</p> <p><b>Chapter 12 Visualizing Your Data Interactively with Power View 245</b></p> <p>Where Does Power View Fit with Your Reporting Solution? 246</p> <p>Power View System Requirements 246</p> <p>Creating Power View Data Source Connections 247</p> <p>Creating Data Sources Inside Excel 247</p> <p>Creating Data Sources Inside SharePoint 249</p> <p>Creating Power View Reports 251</p> <p>Using SharePoint to Create Power View Reports 251</p> <p>Using Multiple Views in Power View 252</p> <p>Creating Power View Visualizations 253</p> <p>Creating Tables 253</p> <p>Converting Visualizations 254</p> <p>Creating Matrices 255</p> <p>Creating Charts 256</p> <p>Creating Multiples 261</p> <p>Creating Cards 261</p> <p>Creating Maps 262</p> <p>Using Excel to Create Power View Reports 263</p> <p>Filtering Data with Power View 264</p> <p>Adding Filters 264</p> <p>Using Advanced Filters 266</p> <p>Adding Slicers 266</p> <p>Invoking Cross-Filters 267</p> <p>Adding Tiles 268</p> <p>Adding Filters to a Report URL 270</p> <p>Exporting Power View Reports 271</p> <p>Summary 272</p> <p><b>Chapter 13 Exploring Geographic and Temporal Data with Power Map 273</b></p> <p>How Power Map Fits into Reporting Solutions 274</p> <p>Understanding Power Map Features and Advantages 274</p> <p>Comparing Power Map to Other SQL Server Geospatial Reporting Tools 275</p> <p>Understanding Power Map Requirements 279</p> <p>Optimizing Your Data Model for Power Map 280</p> <p>Using Tours, Scenes, and Layers in Power Map 280</p> <p>Defining Geography Fields in Your Data Model 282</p> <p>Defining Date and Time Fields in Your Data Model 283</p> <p>Working with Geospatial and Temporal Data 284</p> <p>Visualizing Data Aggregation 284</p> <p>Creating a Power Map Tour 285</p> <p>Visualizing Data Over Time with Rich Animations 288</p> <p>Deploying and Sharing Power Map Visualizations 290</p> <p>Sharing Power Map Tours 291</p> <p>Enhancing Power Map Deployment and Configurations in Office 365 291</p> <p>Summary 292</p> <p><b>Chapter 14 Monitoring Your Business with PerformancePoint Services 293</b></p> <p>Where Does PerformancePoint Services Fit with Your Reporting Solution? 294</p> <p>Understanding PPS Features 295</p> <p>When Is PPS the Right Choice? 298</p> <p>Implementing PPS Requirements for SharePoint 300</p> <p>Extending PPS Dashboards 301</p> <p>Adding PerformancePoint Time Intelligence 301</p> <p>Using Interactivity Features 304</p> <p>Adding Reporting Services Reports to PerformancePoint 311</p> <p>Extending Filters and KPIs 313</p> <p>Deployment Best Practices 317</p> <p>Following Best Practices for PerformancePoint Data Connections and Content Libraries 317</p> <p>Deploying Dashboards Across Dev, Test, and Production Environments 319</p> <p>Customizing PerformancePoint SharePoint Web Parts 321</p> <p>Security and Configuration Best Practices 325</p> <p>Configuring the Unattended Service Account in SharePoint 325</p> <p>Optimizing PerformancePoint Services Application Settings 326</p> <p>Summary 328</p> <p><b>Part IV Deploying and Managing the Business Intelligence Solution 329</b></p> <p><b>Chapter 15 Implementing a Self-Service Delivery Framework 331</b></p> <p>Planning a Self-Service Delivery Framework 331</p> <p>Creating a Data Governance Plan for Enterprise, Team, and Personal BI 332</p> <p>Identifying Stakeholders, Subject Matter Experts, and Data Stewards 334</p> <p>Understanding Industry Compliance Considerations 334</p> <p>Managing Data Quality and Master Data 337</p> <p>Identifying Target Audience and Roles 339</p> <p>Developing a Training Plan 340</p> <p>Inventorying Tools and Skillset 340</p> <p>Understanding Data Quality Services 340</p> <p>Understanding Master Data Services 342</p> <p>Managing Data Quality and Master Data in Excel 345</p> <p>Business Intelligence Features Across the Microsoft Data Platform Versions and Editions 347</p> <p>Defining Success Criteria 348</p> <p>Summary 349</p> <p><b>Chapter 16 Designing and Implementing a Deployment Plan 351</b></p> <p>What Is a Deployment Plan? 351</p> <p>How Do You Deploy Business Intelligence Code? 353</p> <p>Using Analysis Services (Multidimensional or Tabular) 354</p> <p>Using Reporting Services 357</p> <p>How Do You Implement the Deployment Plan? 359</p> <p>Planning the Deployment 359</p> <p>Designing Scripts 360</p> <p>Documenting Steps 360</p> <p>Testing the Plan 361</p> <p>Training Your Staff 362</p> <p>Summary 362</p> <p><b>Chapter 17 Managing and Maintaining the Business Intelligence Environment 363</b></p> <p>Using SQL Server Reporting Services 363</p> <p>Configuring Memory 365</p> <p>Caching Data and Pre-Rendering Reports 368</p> <p>Using ExecutionLog Views 369</p> <p>Working with SQL Server Analysis Services 372</p> <p>Using Multidimensional Models 372</p> <p>Using Tabular Models 374</p> <p>Using SharePoint to Improve Performance 375</p> <p>Summary 378</p> <p><b>Chapter 18 Scaling the Business Intelligence Environment 379</b></p> <p>Why Would You Scale the Business Intelligence Environment? 379</p> <p>How Do You Scale Each Tool? 381</p> <p>Using Analysis Services (Multidimensional or Tabular) 381</p> <p>Reporting Services 385</p> <p>Using Power Pivot and Power View 387</p> <p>Summary 390</p> <p>Index 391</p>
<p><b>Patrick LeBlanc</b> is a Microsoft SQL Server and Business Intelligence Technical Solution Professional. He holds a Masters of Science from Louisiana State University and has authored four SQL Server books. <p><b>Jessica M. Moss,</b> a Microsoft SQL Server MVP, is a well-known practitioner, author, and speaker in Microsoft SQL Server business intelligence. She has created numerous data warehousing solutions for companies in the retail, internet, health services, finance, and energy industries. <p><b>Dejan Sarka,</b> MCT and SQL Server MVP, focuses on development of database and business intelligence applications. He is the founder of the Slovenian SQL Server and .NET Users Group. <p><b>Dustin Ryan,</b> a Senior Business Intelligence Consultant and Trainer at Pragmatic Works, is a blogger, speaker, and author in the Microsoft SQL Server Business Intelligence field. He has developed enterprise business intelligence solutions and provided training for customers in the retail, finance, transportation, healthcare, energy, and manufacturing industries.
<p><b>Leverage the power of SQL and Office to build a complete enterprise BI solution</b> <p>The business intelligence world is changing. Hardware is getting more powerful, platforms are getting more capable, and decision timeframes are getting shorter. Microsoft's SQL Server and Office products provide powerful core BI technologies that allow decision makers who rely on Office for basic analytics to tap into a sophisticated BI toolset for both analysis and reporting. <i>Applied Microsoft Business Intelligence</i> reveals the best practices for building complete BI solutions using SQL Server, Reporting, and Analysis Services along with Excel and SharePoint for a more robust business intelligence framework. <p>This book shows you how to use the Microsoft business intelligence building blocks to construct synergetic and complete solutions to suit any organization. Organized chronologically by implementation order, it guides you through the data layer, data transformation and quality, the semantic layer, and the presentation layer, and ties it all together with comprehensive case studies. Focusing on best practices rather than specific tools keeps your skills relevant beyond the 2014 SQL release. Comprehensive explanations including architecture, strengths and weaknesses, and practical applications bring you fully up to speed quickly. <p><b><i>Applied Microsoft Business Intelligence</i> shows you how to:</b> <ul> <li><b>Design an effective BI architecture that best fits your organization</b></li> <li><b>Develop flexible, scalable, tabular and multi-dimensional models</b></li> <li><b>Create interactive visualizations with Power View</b></li> <li><b>Explore geographic and temporal data with Power Map</b></li> <li><b>Implement self-service delivery and an efficient deployment strategy</b></li> <li><b>Manage, maintain, and scale the BI environment</b></li> </ul>

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