publication . Preprint . Article . 2012

Memory Based Machine Intelligence Techniques in VLSI hardware

Alex Pappachen James;
Open Access English
  • Published: 28 Jan 2012
We briefly introduce the memory based approaches to emulate machine intelligence in VLSI hardware, describing the challenges and advantages. Implementation of artificial intelligence techniques in VLSI hardware is a practical and difficult problem. Deep architectures, hierarchical temporal memories and memory networks are some of the contemporary approaches in this area of research. The techniques attempt to emulate low level intelligence tasks and aim at providing scalable solutions to high level intelligence problems such as sparse coding and contextual processing.
free text keywords: Computer Science - Artificial Intelligence, Computer Science - Robotics

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