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https://github.com/embedeep/Free-TPU
Free TPU for FPGA with compiler supporting Pytorch/Caffe/Darknet/NCNN. An AI processor for using Xilinx FPGA to solve image classification, detection, and segmentation problem.
https://github.com/embedeep/Free-TPU
caffe cnn-accelerator darknet deep-learning fpga free hardware lstm npu npu-compiler pytorch rnn tpu zynq
Last synced: 12 days ago
JSON representation
Free TPU for FPGA with compiler supporting Pytorch/Caffe/Darknet/NCNN. An AI processor for using Xilinx FPGA to solve image classification, detection, and segmentation problem.
- Host: GitHub
- URL: https://github.com/embedeep/Free-TPU
- Owner: embedeep
- License: mit
- Created: 2018-12-25T01:26:24.000Z (over 5 years ago)
- Default Branch: master
- Last Pushed: 2023-05-06T03:25:28.000Z (about 1 year ago)
- Last Synced: 2024-02-29T09:32:32.765Z (4 months ago)
- Topics: caffe, cnn-accelerator, darknet, deep-learning, fpga, free, hardware, lstm, npu, npu-compiler, pytorch, rnn, tpu, zynq
- Language: Shell
- Homepage: https://www.embedeep.com
- Size: 74.6 MB
- Stars: 216
- Watchers: 10
- Forks: 58
- Open Issues: 2
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Metadata Files:
- Readme: README.md
- License: LICENSE
Lists
- awesome-yolo-object-detection - embedeep/Free-TPU - TPU?style=social"/> : Free TPU for FPGA with Lenet, MobileNet, Squeezenet, Resnet, Inception V3, YOLO V3, and ICNet. Deep learning acceleration using Xilinx zynq (Zedboard or ZC702 ) or kintex-7 to solve image classification, detection, and segmentation problem. (Lighter and Deployment Frameworks)
- awesome-cuda-tensorrt-fpga - embedeep/Free-TPU - TPU?style=social"/> : Free TPU for FPGA with Lenet, MobileNet, Squeezenet, Resnet, Inception V3, YOLO V3, and ICNet. Deep learning acceleration using Xilinx zynq (Zedboard or ZC702 ) or kintex-7 to solve image classification, detection, and segmentation problem. (Applications)
README
After four years R&D, EEP-TPU has evolved into the second-generation architecture with V3+ version, and has been embedded in three ASIC chips to achieve mass production.
### FREE TPU V3plus for FPGA has updated, which is the free version of a commercial AI processor (EEP-TPU) for Deep Learning EDGE Inference.
### User can download lastest EEP-TPU from https://github.com/embedeep/FREE-TPU-V3plus-for-FPGA