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How to Use Big Data For Improving Driver Safety

Acuvate

The WHO has undertaken a mighty initiative to halve the number of deaths and injuries from road traffic crashes by 2020. This goal seems achievable with massive advancements in automotive technology and big data. Big data and Telematics synergistically play an important role in creating a safe driving environment.

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Applications and innovations in the Internet of Things (IoT)

hackerearth

IoT ecosystems consist of internet-enabled smart devices that have integrated sensors, processors, and communication hardware to capture, analyze, and send data from their immediate environments. IHS Technology predicts that there will be over 30 billion IoT devices in use by 2020 and over 75 billion by 2025. Healthcare. Conclusion.

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What autonomous cars tell us about the future of innovation

Jeffrey Phillips

They may reach that threshold in 2020. The combinations of big data, real time analytics, sensors, on board processing, all linked to a very responsive processor connected to the engine and drive train will provide a safe and simple journey. The promise and excitement of technology often ignores significant barriers to adoption.

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How China Creates the Strongest Innovation System

The BMI Lab Blog

Right now, as part of the current five years plan (ending in 2020), China is focusing on: Aviation and aerospace. New-energy automotive. The goal is very clear: the share of the global GDP for all those industries should increase to 15% in 2020. Agriculture. Electrical power. High-end robotics. New materials and composites.

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Applications of Artificial Intelligence (AI) in business

hackerearth

trillion per annum from their less informed peers by 2020.” Recent advances in AI have been helped by three factors: Access to big data generated from e-commerce, businesses, governments, science, wearables, and social media. Improvement in machine learning (ML) algorithms—due to the availability of large amounts of data.