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the potential value from Big Data assets in the connected car at $14.5 billion USD or more by 2020. Such figures will remain aca- demic, however, unless the data can be exploited to achieve real business goals.


To balance the sheer volume and cost of collecting and managing the data against the potential value, automakers need Big Data strategies. They need mechanisms for realizing value from data early (close to the collection point) and for adjusting data collection strategies throughout the vehicle lifecycle.


A Solution from within the Industry A global integrator in many sectors, Altran has been active in the automotive industry for over 30 years and is a long-standing partner of leading original equipment manufacturers (OEMs) and Tier 1 and 2 automotive suppliers. To address IoT challenges and opportunities in the field, the company is introducing its VueForge* portfolio of products and managed services.


VueForge integrates technology, usage, and business models within machine-driven Big Data by combining in-depth domain knowledge with in-house accelerators, turnkey services, and a supporting eco- system. The solution provides insights on new cost, time, and quality optimization opportunities across a wide range of industries.


VueForge addresses five stages in the continuous cycle of transforming machine data into value (Figure 1). Each stage must comply with industry security and privacy regulations as it performs one of these roles:


• Connecting sensors and machines with solutions like Intel® Gateway Technology and Intel In-Vehicle Solutions


• Establishing a transport network for sending data to infrastructure, such as a cloud


• Implementing turnkey analytics, data visualization, and business intelligence tools


• Delivering product and services innovation and ideation based on business intelligence from these tools


• Supporting business model innovation based on the collected intelligence


Much of VueForge's value comes from its four in-house accelerators. These accelerators and their functions include:


• VueForge Sense, which provides an extremely low-power- consuming, software-based sensing technology for turning commodity microcontroller platforms and smartphones into powerful sensors.


• VueForge Think, which extracts valuable information from data and presents it in easily understood forms.


• VueForge Play, which aids rapid prototyping by providing a lightweight cloud-based IoT platform.


• VueForge Innovate, which offers a design-thinking approach for creating new services and business models.


VueForge in Action Elements of the VueForge product portfolio are already field-proven for advanced data collection and services in vehicles. Most recently, Altran and Microsoft explored a range of new application possibilities for car manufacturers and car owners based on vehicle usage data.


IoT


2 1


HARVESTING THE DATA


TRANSPORTING THE DATA


*


Creating Value from Machine-Driven Big Data


3


EXTRACTING THE INFORMATION


5 Figure 1.


TURNING SERVICES INTO BUSINESS


4


TRANSFORMING INFORMATION INTO DESIRABLE SERVICES


VueForge provides solutions for all five stages required for a continuous cycle of harvesting Big Data and turning it into valuable insight, services, and business.


intel.com/embedded-innovator | Embedded Innovator | 13th Edition | 2016 | 15


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