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VRMobileBIVI_HotVendorMobility continues to be a hot adoption area in business intelligence, according to our research across analytics and line of business departments. Nearly three-quarters (71%) of organizations said their mobile workforce would be able to access BI capabilities in the next 12 months according to our next generation mobile business intelligence research. Roambi, a provider of mobile business intelligence applications, has made important strides this year after moving to deploying its products in the cloud, an event that I covered previously. Roambi is rated as one of the top providers of mobile business intelligence or what we refer to as a ‘Hot Vendor’ according to our Value Index.

Earlier this year, Roambi announced a partnership with Box, which offers cloud-based data storage and file sharing. More recently it began to catch up with the market by announcing support for the Android mobile operating system. Roambi has focused on the mobile BI market from its inception, first by building on the Apple iPhone’s small screen and then progressing to support the majority of mobile devices in corporations today.

The Box partnership, announced in March, enables joint Box and Roambi customers to visualize and interact with data stored on the Box file sharing system. Specifically, users are able to sync Roambi Analytics, the company’s visualization engine, and Roambi Flow, its storyboarding capability, with Box. The integration allows fast importation of Box source files and the ability to create and share interactive reports through Roambi Analytics and to create digital magazines and content through Roambi Flow. Data can be automatically refreshed in real time via Box Sync.

This partnership serves both companies since the coupled service provide users with expanded capabilities and little overlap. Box’s rapid growth is being driven by its ease of use, open platform and cloud approach to file sharing. Thisis a natural platform for Roambi to build on and expand its customer base. For Box, Roambi’s dynamic visualization and a collaboration capabilities address its business customers’ needs and increase its market opportunities. In our benchmark research on information optimization 83 percent of organizations said it is important to have components that provide interactive capabilities to support presentation of information.

Roambi also works with other application vendors in the CRM and ERP market to integrate their applications. The same research shows that CRM (for 45%) and ERP (38%) are important types to integrate with others especially in areas such as sales and customer service. Apple’s recent announcement of a new SDK, should facilitate process integration between software systems so that, for example, users can access and navigate applications such as those from Box and Roambi and transactional applications such as CRM and ERP in a single workflow. This capability can provide further usability advantages for Roambi, which scored the highest rating in this area in our Mobile Business Intelligence Value Index.

Roambi announced its mobile BI support for the Google Android mobile operating system that operates across a wide range of those smartphone and tablet technologies. It had delayed its development of its software on the Android platform, which required significant development resources and investment but was part of its strategy to maximize its business potential and relationship with Apple. The release are available at the Google Play store . The initial version will include four of Roambi’s most popular views: Card, Catalist, Layers and Superlist. Similar to its application for the Apple platform, security features for Android include Device Lockout, Remote Wipe and Application Passcode. Integration with Roambi’s partner Okta provides identity management services and gives access to any applications supported by Okta. Integration includes Active Directory (AD) and lightweight directory access protocol (LDAP). While Roambi Flow will not be available on Android out of the gate, the company says it will be becoming available by the end of 2014.

Current approaches to mobile business intelligence applications on the market include native, Web-based and hybrid (a combination of both). We compare these approaches in detail in the executive summary of our Mobile Business Intelligence Value Index report.With the new Android support, Roambi has a unique approach to the hybrid architecture that bypasses the browser completely. There is no data cached in a browser and in fact the data is loaded directly to the device and rendered through Roambi natively on the device.  From the user’s perspective, the benefit of this approach is performance since interactivity does not rely on data traveling over a network. A second benefit is offline access to data, which is not available via non-native approaches. From the developer’s or information assembler perspective, testing across browsers is not needed since there is no data caching and the experience is the same regardless of browser in use.

vr_Info_Optimization_16_information_software_evaluation_criteriaOur next-generation business intelligence research shows that executives strongly support mobile BI: Nearly half of them said that mobility is very important to their BI processes. Executives also favor Apple over Android devices which is likely one of the key reasons for Apple’s dominance in the current business intelligence landscape. However our research shows latent demand for Android devices in the business intelligence market and given the dominance of Android in the consumer market as well as dominance in places like Asia and other emerging markets, any company that seeks to take significant global market share will need support for both platforms. Our information optimization research fond Google Android as second in smartphone platform (24%) behind Apple iPhone (59%) as first ranked position. Therefore, Android support is an important evolution for Roambi in order to address an increasing demand in the market for Android devices.

Usability has become the most important evaluation criteria and in the information optimization benchmark research was selected as most important to over half (58%) of organizations. Roambi ranked as the highest in usability in the Ventana Research Mobile Business Intelligence Value Index, though its overall score was hampered somewhat by the lack of support for Android. With Android support, the company now addresses the need for multiple and the so called bring your own device (BYOD) to work methods now becoming more prevalent and allowed by organizations. By addressing this as well as taking advantages of broader market developments such as the new Apple SDKs, Roambi continues to address what organizations find important today. Usability of business intelligence systems is a top priority for 63% of companies. Even our big data analytics research finds a growing level of overall importance for mobile access in almost half of organizations (46%).  Any company that wants to get a user friendly business intelligence into the hands of its mobile workers quickly and effectively should have Roambi in the consideration set.

Regards,

Tony Cosentino

VP and Research Director

At its annual industry analyst summit last month and in a more recent announcement of enterprise support for parallelizing the R language on its Aster Discovery Platform, Teradata showed that it is adapting to changes in database and analytics technologies. The presentations at the conference revealed a unified approach to data architectures and value propositions in a variety of uses including the Internet of Things, digital marketing and ETL offloading. In particular, the company provided updates on the state of its business as well as how the latest version of its database platform, Teradata 15.0, is addressing customers’ needs for big data. My colleague Mark Smith covered these announcements in depth. The introduction of scalable R support was discussed at the conference but not announced publicly until late last month.

vr_Big_Data_Analytics_13_advanced_analytics_on_big_dataTeradata now has a beta release of parallelized support for R, an open source programming language used significantly in universities and growing rapidly in enterprise use. One challenge is that R relies on a single-thread, in-memory approach to analytics. Parallelization of R allows the algorithm to run on much larger data sets since it is not limited to data stored in memory. For a broader discussion of the pros and cons of R and its evolution, see my analysis. Our benchmark research shows that organizations are counting on companies such as Teradata to provide a layer of abstraction that can simplify analytics on big data architectures. More than half (54%) of advanced analytics implementations are custom built, but in the future this percentage will go down to about one in three (36%).

Teradata’s R project has three parts. The first includes a Teradata Aster R library, which supplies more than 100 prebuilt R functions that hide complexity of the in-database implementation. The algorithms cover the most common big data analytic approaches in use today, which according to our big data analytics benchmark research are classification (used by 39% of organizations), clustering (37%), regression (35%), time series (32%) and affinity analysis (29%). Some use innovative approaches available in Aster such as Teradata’s patented nPath algorithm, which is useful in areas such as digital marketing. All of these functions will receive enterprise support from Teradata, likely through its professional services team.

The second part of the project involves the R parallel constructor. This component gives analysts and data scientists tools to build their own parallel algorithms based on the entire library of open source R algorithms. The framework follows the “split, apply and combine” paradigm, which is popular among the R community. While Teradata won’t support the algorithms themselves, this tool set is a key innovation that I have not yet seen from others in the market.

Finally, the R engine has been integrated with Teradata’s SNAP integration framework. The framework provides unified access to multiple workload specific engines such as relational (SQL), graph (SQL-GR), MapReduce (SQL-MR) and statistics. This is critical since the ultimate value of analytics rests in the information itself. By tying together multiple systems, Teradata enables a variety of analytic approaches. More importantly, the data sources that can be merged into the analysis can deliver competitive advantages. For example, JSON integration, recently announced, delivers information from a plethora of connected devices and detailed Web data.

vr_Big_Data_Analytics_09_use_cases_for_big_data_analyticsTeradata is participating in industry discussions about both data management and analytics. As Mark Smith discussed, its unified approach to data architecture addresses challenges brought on competing big data platforms such as Hadoop and other NoSQL approaches like that one announced with MongoDB supporting JSON integration. These platforms access new information sources and help companies use analytics to indirectly increase revenues, reduce costs and improve operational efficiency. Analytics applied to big data serve a variety of uses, most often cross-selling and up-selling (for 38% of organizations), better understanding of individual customers (32%) and optimizing price (30%) and IT operations (24%). Teradata is active in these areas and is working in multiple industries such as financial services, retail, healthcare, communications, government, energy and utilities.

Current Teradata customers should evaluate the company’s broader analytic and platform portfolio, not just the database appliances. In the fragmented and diverse big data market, Teradata is sorting through the chaos to provide a roadmap for largest of organizations to midsized ones. The Aster Discovery Platform can put power into the hands of analysts and statisticians who need not be data scientists. Business users from various departments, but especially high-level marketing groups that need to integrate multiple data sources for operational use, should take a close look at the Teradata Aster approach.

Regards,

Tony Cosentino

VP & Research Director

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