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A Golden Era of HPC in Government Meets Accelerating Demands

CIO Business Intelligence

billion by 2030. In addition to quantitative ROI metrics, HPC research was also shown to save lives, lead to important public/private partnerships, and spur innovations. . Real-time big data analytics, deep learning, and modeling and simulation are newer uses of HPC that governments are embracing for a variety of applications.

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Digital Twin Use Races Ahead at McLaren Group

CIO Business Intelligence

billion by 2030. For businesses like the McLaren Group, these two trends are at the core of the conglomerate’s digital transformation and competitive strategy, on and off the track. . Modern data analytics spans a range of technologies, from dedicated analytics platforms and databases to deep learning and artificial intelligence (AI).

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Five machine learning types to know

IBM Big Data Hub

To deploy reinforcement learning, an agent takes actions in a specific environment to reach a predetermined goal. The agent is rewarded or penalized for its actions based on an established metric (typically points), encouraging the agent to continue good practices and discard bad ones.

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AI in marketing: How to leverage this powerful new technology for your next campaign

IBM Big Data Hub

A recent study by Price Waterhouse Cooper (PwC) estimates that by 2030, artificial intelligence (AI) will generate more than USD 15 trillion for the global economy and boost local economies by as much as 26%. (1) 1) But what about AI’s potential specifically in the field of marketing?

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Conversational AI use cases for enterprises

IBM Big Data Hub

Machine learning (ML) and deep learning (DL) form the foundation of conversational AI development. billion by 2030. This data can be used to better understand customer preferences and tailor marketing strategies accordingly. Prioritizing tracking metrics accurately measures the success of your implementation.