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cezarovidiu

Magic Quadrant for Business Intelligence and Analytics Platforms - 0 views

  • Integration BI infrastructure: All tools in the platform use the same security, metadata, administration, portal integration, object model and query engine, and should share the same look and feel. Metadata management: Tools should leverage the same metadata, and the tools should provide a robust way to search, capture, store, reuse and publish metadata objects, such as dimensions, hierarchies, measures, performance metrics and report layout objects. Development tools: The platform should provide a set of programmatic and visual tools, coupled with a software developer's kit for creating analytic applications, integrating them into a business process, and/or embedding them in another application. Collaboration: Enables users to share and discuss information and analytic content, and/or to manage hierarchies and metrics via discussion threads, chat and annotations.
  • Information Delivery Reporting: Provides the ability to create formatted and interactive reports, with or without parameters, with highly scalable distribution and scheduling capabilities. Dashboards: Includes the ability to publish Web-based or mobile reports with intuitive interactive displays that indicate the state of a performance metric compared with a goal or target value. Increasingly, dashboards are used to disseminate real-time data from operational applications, or in conjunction with a complex-event processing engine. Ad hoc query: Enables users to ask their own questions of the data, without relying on IT to create a report. In particular, the tools must have a robust semantic layer to enable users to navigate available data sources. Microsoft Office integration: Sometimes, Microsoft Office (particularly Excel) acts as the reporting or analytics client. In these cases, it is vital that the tool provides integration with Microsoft Office, including support for document and presentation formats, formulas, data "refreshes" and pivot tables. Advanced integration includes cell locking and write-back. Search-based BI: Applies a search index to structured and unstructured data sources and maps them into a classification structure of dimensions and measures that users can easily navigate and explore using a search interface. Mobile BI: Enables organizations to deliver analytic content to mobile devices in a publishing and/or interactive mode, and takes advantage of the mobile client's location awareness.
  • Analysis Online analytical processing (OLAP): Enables users to analyze data with fast query and calculation performance, enabling a style of analysis known as "slicing and dicing." Users are able to navigate multidimensional drill paths. They also have the ability to write back values to a proprietary database for planning and "what if" modeling purposes. This capability could span a variety of data architectures (such as relational or multidimensional) and storage architectures (such as disk-based or in-memory). Interactive visualization: Gives users the ability to display numerous aspects of the data more efficiently by using interactive pictures and charts, instead of rows and columns. Predictive modeling and data mining: Enables organizations to classify categorical variables, and to estimate continuous variables using mathematical algorithms. Scorecards: These take the metrics displayed in a dashboard a step further by applying them to a strategy map that aligns key performance indicators (KPIs) with a strategic objective. Prescriptive modeling, simulation and optimization: Supports decision making by enabling organizations to select the correct value of a variable based on a set of constraints for deterministic processes, and by modeling outcomes for stochastic processes.
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  • These capabilities enable organizations to build precise systems of classification and measurement to support decision making and improve performance. BI and analytic platforms enable companies to measure and improve the metrics that matter most to their businesses, such as sales, profits, costs, quality defects, safety incidents, customer satisfaction, on-time delivery and so on. BI and analytic platforms also enable organizations to classify the dimensions of their businesses — such as their customers, products and employees — with more granular precision. With these capabilities, marketers can better understand which customers are most likely to churn. HR managers can better understand which attributes to look for when recruiting top performers. Supply chain managers can better understand which inventory allocation levels will keep costs low without increasing out-of-stock incidents.
  • descriptive, diagnostic, predictive and prescriptive analytics
  • "descriptive"
  • diagnostic
  • data discovery vendors — such as QlikTech, Salient Management Company, Tableau Software and Tibco Spotfire — received more positive feedback than vendors offering OLAP cube and semantic-layer-based architectures.
  • Microsoft Excel users are often disaffected business BI users who are unable to conduct the analysis they want using enterprise, IT-centric tools. Since these users are the typical target users of data discovery tool vendors, Microsoft's aggressive plans to enhance Excel will likely pose an additional competitive threat beyond the mainstreaming and integration of data discovery features as part of the other leading, IT-centric enterprise platforms.
  • Building on the in-memory capabilities of PowerPivot in SQL Server 2012, Microsoft introduced a fully in-memory version of Microsoft Analysis Services cubes, based on the same data structure as PowerPivot, to address the needs of organizations that are turning to newer in-memory OLAP architectures over traditional, multidimensional OLAP architectures to support dynamic and interactive analysis of large datasets. Above-average performance ratings suggest that customers are happy with the in-memory improvements in SQL Server 2012 compared with SQL Server 2008 R2, which ranks below the survey average.
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    "Gartner defines the business intelligence (BI) and analytics platform market as a software platform that delivers 15 capabilities across three categories: integration, information delivery and analysis."
cezarovidiu

Free Web Analytics Software - 0 views

cezarovidiu

Focus on Valuable Data - Not Big Data - to Boost Conversions and ROI | ClickZ - 0 views

  • Big Data has been all the rage. But fast data, even if it is small, can be more valuable than complicated masses of information.
  • Here's why: All the focus on "bigger is better" has overlooked the fact that most Big Data segments have not been validated with a business application or value.
  • Those kinds of analytics can help you find the right streams to access and work with, and also can help you build out robust programs that identify valuable customers.
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  • 1) Your First-Party Data: The primary and most valuable data set you can access, first-party data encompasses transactional and other customer-level profile information you have on your customers. It could also include your own off-line segmentation analysis that allows you to map a customer to a customer profile around which you build your marketing programs. This can also include your analytics or other on-site tracking data, which can deliver behavioral insight to your consumers. This data can be difficult to export from its current environment due to the ad hoc nature of the data, but, if possible, look at ways to make this information accessible to your digital sites. 2) Third-Party Data: A consumer's broader Web browsing and buying history can now be accessed in session to provide you with more context on their likes and habits. Data management platforms (DMPs) and other data aggregators are accelerating this offering and, just as importantly, the availability of this type of data. This is invaluable in the context of new visitors who you know nothing about historically. 3) Real-Time Behavior: Let's not forget what our customers are telling us with each click. We get enamored with our predictive modeling to the point that we do not see the tell-tale signs as they are happening. Take the time to stop, look, and react. Your analytic tools, personalization tools, and other software-as-a-service (SaaS) platforms can help you trigger alternate site experiences based on every click you see.
cezarovidiu

Is Big Data Really Working for Marketers? | ClickZ - 0 views

  • Channel Optimization. Many marketers struggle to optimize each individual channel, let alone optimizing at a customer level across many channels. To the extent that Big Data can help marketers understand what is important in the moment and across touch points, that could be valuable, but it seems more of us need stronger attribution models and analytics methodologies more than access to data. Big Data does seem to be valuable if you want to understand which customers are highest value within each channel and across channels, because the platforms that manage Big Data can handle both structured and unstructured data - which is what you need to truly include Web/clickstream and social data in your analysis.
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