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•Auralisation is the process of simulating the listening experience at a given position. •While many auralisation algorithms currently exist, the majority require a manual description of the environment. •In contrast, MvEcho removes the need for this manual description to provide an environment independent algorithm to approximate auralisation. •Initial implementation of MvEcho concerned the acoustic...
➔ The incremental step of LiveSynth reduces synthesis time by about 95% for incremental changes. ➔ LiveSynth shifts the paradigm to small, incremental changes and more iterations per day. ➔ We advocate for an interactive synthesis flow as a way to boost design productivity.
This poster will describe a taped-out 2×2mm 1.3 M-transistor test chip in IBM 130 nm designed using our new Python-based hardware modeling framework. The goal of our tapeout was to demonstrate the ability of this framework to enable Agile hardware design flows.
Communicating data from sensors such as gyroscopes and accelerometers, to processors, typically occurs over printed circuit board traces. This communication can cost up to 40 µW at data rates of 1 Mb/s.
Presents the introductory welcome message from the conference proceedings. May include the conference officers' congratulations to all involved with the conference event and publication of the proceedings record.
◢ Factors driving advanced memory designs - Applications requiring real time video, VR, advanced graphics ◢ Increased CPU/GPU performance - Need for balancing BW, capacity - HBM solutions ◢ Emerging applications with unique memory requirements - ML - training and inference ◢ Novel solutions for PE-Mem structures ◢ Big Data - More data upload - Cloud DL: massive parameter and training data sets
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