Nvidia Jetson Nano - Submissions for EXPORT competition #3426
Replies: 11 comments 15 replies
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Hi. We are preparing a submission for the competition. Even though it currently works as expected and it will be finished soon, we would like to know which Jetpack version are we expected to support. Are we supposed to support the last stable release(4.5.*) or shall we support also the older versions of Jetpack(4.4.*)? |
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Where can I see the code submitted by the contributers? Must we wait until the end of the competition to see it? |
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Is Jetson Nano 2GB Developer Kit eligible for competition? |
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Coded & wrote tutorial for Jetson Nano 🙌 Needs a little review and refactor, which you'll be able to see in the end of July 12-16 week. ✅ Bonus l - Includes INT8 conversion & calibration tutorial. |
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Hi Can I take part in this competition using Nvidia Xavier development kit ? I have implemented it and it's working good . |
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Hi, @aditya-dl and I have worked on this submission for Nvidia Jetson Nano. https://github.com/BlueMirrors/Yolov5-TensorRT We are getting identical outputs as PyTorch Inference(FP16). This uses letterboxing (so no need to forcefully resize) and you can directly test it on Colab as well (we got up to 165FPS on Colab T4 GPU in benchmarking). P.S. We are working on int8 and batching support. |
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I made experiments with yolov5 on mu Jetson Nano, and made docker container to build tensorrt models. Also I made python wrapper with NMS for it. Wrapper allows you process photos, batch of photos, videos and camera streaming. Demos included. |
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Submission for YOLOv5 EXPORT Competition (Jetson platform) I tested the detection accuracy and speed on COCO dataset on nano (472 gflops), TX2 (1.33 tflops), Xavier NX (21 tops) and AgX Xavier (32 tops). Two different languages (Python and C++) are provided, and it is found that C++ is much more efficient than python. Finally, a detailed tutorial is provided. |
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Hi participants, Thank you all for your submissions, we have already reviewed them and are about to announce the winners! Please send me an email at stefani@ultralytics.com including your full name and GitHub username, so I can share more information with you. Stay tuned - the results are coming soon! Stefani Kovachevska |
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Congratulations to @alxmamaev, our winner in the Nvidia Jetson Nano category! 🎉 Thank you all for participating and for making our community great! Stay amazing and keep creating! 🚀 |
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Use this discussion thread for YOLOv5 🚀 EXPORT Competition submissions in the Nvidia Jetson Nano category. Good luck!
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