JunningWu/Learning-NVDLA-Notes
NVDLA is an Open source DL/ML accelerator, which is very suitable for individuals or college students. This is the NOTES when I learn and try. Hope THIS PAGE may Helps you a bit. Contact Me:junning.wu@ia.ac.cn
This is a collection of study notes and practical guides for understanding the NVIDIA Deep Learning Accelerator (NVDLA) open-source hardware and software. It takes you from foundational knowledge to specific topics like bus interfaces, software stacks, and FPGA implementation. University students or individual learners exploring deep learning accelerator design and implementation would find this valuable.
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Use this if you are a student or individual looking for a structured learning path and practical insights into the NVDLA architecture and its deployment.
Not ideal if you are looking for a plug-and-play solution for accelerating your existing deep learning models without diving into the underlying hardware/software details.
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