Ruchir Puri, an IBM Fellow at IBM’s Thomas J. Watson Research Center shares how they are building large-scale big data systems and delivering real-time solutions, such as using machine learning and GPUs to predict drug reactions.
Learn more about the work IBM Thomas J. Watson Research Center is doing with GPUs at research.ibm.com/labs/watson
Share your GPU-accelerated science with us: http://nvda.ly/Vpjxr
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Share Your Science: Accelerating Cognitive Workloads with Machine Learning
Jan 18, 2016
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