Enabling Easier Programming of Machine Learning Algorithms on Robots with oneAPI Toolkits.
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SCV Chapter, IEEE Computer Society
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Abstract
This work shows that it is feasible to solve large-scale decision-making problems for
robot navigation in real-time onboard low-power heterogeneous CPU+iGPU platforms. We can
achieve both performance and productivity by carefully selecting the scheduling strategy and
programming model. In particular, we remark that the oneAPI programming model creates new
opportunities to improve productivity, performance, and efficiency in low-power systems. Our
experimental results show that the implementations based on the oneAPI programming model
are up to 5× easier to program than those based on OpenCL while incurring only 3 to 8%
overhead for low-power systems.
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https://r6.ieee.org/scv-cs/wp-content/uploads/sites/81/2022/03/1-CS-Mag-Feedforward-Denisa-MyFinal.pdf
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Except where otherwised noted, this item's license is described as Attribution 4.0 Internacional










