Here I will explain the flow to deploy your custom deep learning models on Ultra96V2.

Overview

Xilinx_Vitis_AI

This repo will help you to Deploy your Deep Learning Model on Ultra96v2 Board.


Prerequisites

  1. Vitis Core Development Kit 2019.2

This could be downloaded from here: Link to the websire

  1. Vitis-AI GitHub Repository v1.1

Here is the link to the repository v1.1

  1. Vitis-Ai Docker Container

The command to pull the container: docker pull xilinx/vitis-ai:1.1.56

  1. XRT 2019.2

GitHub Repo Link 2019.2

  1. Avnet Vitis Platform 2019.2

Here is the link to download the zip file Avnet Website

  1. Ubuntu OS 18.04

Once the tools have been setup, there are five (5) main steps to targeting an AI applications to Ultra96V2 Platform:

  1. Build the Hardware Design
  2. Compile Your Custom Model
  3. Build the AI Applications
  4. Create the SD Card Content
  5. Execute the AI Applications on hardware

Supposed that you have trained your model previously in one of the Tensorflow (.Pb), Caffe(.Caffemodel and .Prototxt) and Darknet(.Weights and .Cfg) Frameworks.

Build the Hardware Design

Clone Xilinx’s Vitis-AI github repository:

$ git clone --branch v1.1 https://github.com/Xilinx/Vitis-AI
$ cd Vitis-AI
$ export VITIS_AI_HOME = "$PWD"

Install the Avnet Vitis platform:>

Download this and extract to the hard drive of your linux machine. Then, specify the location of the Vitis platform, by creating the SDX_PLATFORM environment variable that specified to the location of the.xpfm file.

$ export SDX_PLATFORM=/home/Avnet/vitis/platform_repo/ULTRA96V2/ULTRA96V2.xpfm

Build the Hardware Project (SD Card Image)

I suggest you to download the Pre-Built from here

Compile the Trained Models

Remember that you should have pulled the docker container first.

Caffe Models:

$ cd $VITIS_AI_HOME
$ mkdir project
$ cp PATH/TO/TRAINED/MODELS  $VITIS_AI_HOME/project
$ ./docker_run.sh xilinx/vitis-ai:1.1.56
$ cd project
$ conda activate vitis-ai-caffe
$ vai_q_caffe quantize -model float.prototxt -weights float.caffemodel -calib_iter 5
$ vai_c_caffe -p .PROTOTXT -c .CAFFEMODEL -a ARCH.JSON -o OUTPUT_DIR -n NET_NAME 

Tensorflow Models:

$ cd $VITIS_AI_HOME
$ mkdir project
$ cp PATH/TO/TRAINED/MODELS  $VITIS_AI_HOME/project
$ ./docker_run.sh xilinx/vitis-ai:1.1.56
$ cd project
$ conda activate vitis-ai-tensorflow
$ vai_q_tensorflow quantize --input_frozen_graph FROZEN_PB --input_nodes xxx --output_nodes yyy --input_shapes zzz --input_fn module.calib_input --calib_iter 5
$ vai_c_tensorflow -f FROZEN_PB -a ARCH.JSON -o OUTPUT_DIR -n NET_NAME 

Compile the AI Application Using DNNDK APIs

The DNNDK API is the low-level API used to communicate with the AI engine (DPU). This API is the recommended API for users that will be creating their own custom neural networks.

Download and install the SDK for cross-compilation, specifying a unique and meaningful installation destination (knowing that this SDK will be specific to the Vitis-AI 1.1 DNNDK samples):

$ wget -O sdk.sh https://www.xilinx.com/bin/public/openDownload?filename=sdk.sh
$ chmod +x sdk.sh
$ ./sdk.sh -d ~/petalinux_sdk_vai_1_1_dnndk 

Setup the environment for cross-compilation:

$ unset LD_LIBRARY_PATH
$ source ~/petalinux_sdk_vai_1_1_dnndk/environment-setup-aarch64-xilinx-linux

Download and extract the DNNDK runtime examples and Install the additional DNNDK runtime content:

$ wget -O vitis-ai_v1.1_dnndk.tar.gz  https://www.xilinx.com/bin/public/openDownload?filename=vitis-ai_v1.1_dnndk.tar.gz
$ tar -xvzf vitis-ai-v1.1_dnndk.tar.gz
$ cd vitis-ai-v1.1_dnndk
$ ./install.sh $SDKTARGETSYSROOT

Copy the Compiled project:

$ cp -r ../project/ .

Download and extract the additional content (images and video files) for the DNNDK examples:

$ wget -O vitis-ai_v1.1_dnndk_sample_img.tar.gz https://www.xilinx.com/bin/public/openDownload?filename=vitis-ai_v1.1_dnndk_sample_img.tar.gz
$ tar -xvzf vitis-ai_v1.1_dnndk_sample_img.tar.gz

For the custom application (project folder), create a model directory and copy the dpu_*.elf model files you previously built:

$ cd $VITIS_AI_HOME/project
$ mkdir model_for_ultra96v2
$ cp -r model_for_ultra96v2 model
$ make

NOTE: You could also edit the build.sh script to add support for the new Platforms like Ultra96V2.

Execute the AI Application on ULTRA96V2

  1. Boot the Ultra96V2 with the pre-build sd-card image you dowloaded. For Learning How to Do This, Click HERE!
  2. $ cd /run/media/mmcblk0p1
  3. $ cp dpu.xclbin /usr/lib/.
  4. Install the Vitis-AI embedded package:
$ cd runtime/vitis-ai_v1.1_dnndk 
$ source ./install.sh
  1. Define the DISPLAY environment variable:
$ export DISPLAY=:0.0
$ xrandr --output DP-1 --mode 640x480
  1. Run the Custom Application:
 $ cd vitis_ai_dnndk_samples
 $ ./App 
Owner
Amin Mamandipoor
Currently, Studying Master of Computer Systems Architecture at the University of Tabriz.
Amin Mamandipoor
A Simplied Framework of GAN Inversion

Framework of GAN Inversion Introcuction You can implement your own inversion idea using our repo. We offer a full range of tuning settings (in hparams

Kangneng Zhou 13 Sep 27, 2022
Semi-supervised Adversarial Learning to Generate Photorealistic Face Images of New Identities from 3D Morphable Model

Semi-supervised Adversarial Learning to Generate Photorealistic Face Images of New Identities from 3D Morphable Model Baris Gecer 1, Binod Bhattarai 1

Baris Gecer 190 Dec 29, 2022
Interactive dimensionality reduction for large datasets

BlosSOM 🌼 BlosSOM is a graphical environment for running semi-supervised dimensionality reduction with EmbedSOM. You can use it to explore multidimen

19 Dec 14, 2022
Calling Julia from Python - an experiment on data loading

Calling Julia from Python - an experiment on data loading See the slides. TLDR After reading Patrick's blog post, we decided to try to replace C++ wit

Abel Siqueira 8 Jun 07, 2022
Auto grind btdb2 exp for tower

Bloons TD Battles 2 EXP Grinder Auto grind btdb2 exp for towers Setup I suggest checking out every screenshot to see what they are supposed to be, so

Vincent 6 Jul 29, 2022
[NeurIPS 2021] Deceive D: Adaptive Pseudo Augmentation for GAN Training with Limited Data

Deceive D: Adaptive Pseudo Augmentation for GAN Training with Limited Data (NeurIPS 2021) This repository will provide the official PyTorch implementa

Liming Jiang 238 Nov 25, 2022
System Design course at HSE (2021)

System Design course at HSE (2021) Wiki-страница курса Структура репозитория: slides - директория с презентациями с занятий tasks - материалы для выпо

22 Dec 25, 2022
Real-time 3D multi-person detection made easy with OpenPose and the ZED

OpenPose ZED This sample show how to simply use the ZED with OpenPose, the deep learning framework that detects the skeleton from a single 2D image. T

blanktec 5 Nov 06, 2020
Cosine Annealing With Warmup

CosineAnnealingWithWarmup Formulation The learning rate is annealed using a cosine schedule over the course of learning of n_total total steps with an

zhuyun 4 Apr 18, 2022
Deep learned, hardware-accelerated 3D object pose estimation

Isaac ROS Pose Estimation Overview This repository provides NVIDIA GPU-accelerated packages for 3D object pose estimation. Using a deep learned pose e

NVIDIA Isaac ROS 41 Dec 18, 2022
Predict stock movement with Machine Learning and Deep Learning algorithms

Project Overview Stock market movement prediction using LSTM Deep Neural Networks and machine learning algorithms Software and Library Requirements Th

Naz Delam 46 Sep 13, 2022
A simple baseline for 3d human pose estimation in PyTorch.

3d_pose_baseline_pytorch A PyTorch implementation of a simple baseline for 3d human pose estimation. You can check the original Tensorflow implementat

weigq 312 Jan 06, 2023
A complete speech segmentation system using Kaldi and x-vectors for voice activity detection (VAD) and speaker diarisation.

bbc-speech-segmenter: Voice Activity Detection & Speaker Diarization A complete speech segmentation system using Kaldi and x-vectors for voice activit

BBC 16 Oct 27, 2022
Predict Breast Cancer Wisconsin (Diagnostic) using Naive Bayes

Naive-Bayes Predict Breast Cancer Wisconsin (Diagnostic) using Naive Bayes Downloading Data Set Use our Breast Cancer Wisconsin Data Set Also you can

Faeze Habibi 0 Apr 06, 2022
Rayvens makes it possible for data scientists to access hundreds of data services within Ray with little effort.

Rayvens augments Ray with events. With Rayvens, Ray applications can subscribe to event streams, process and produce events. Rayvens leverages Apache

CodeFlare 32 Dec 25, 2022
Official PyTorch Implementation of paper "Deep 3D Mask Volume for View Synthesis of Dynamic Scenes", ICCV 2021.

Deep 3D Mask Volume for View Synthesis of Dynamic Scenes Official PyTorch Implementation of paper "Deep 3D Mask Volume for View Synthesis of Dynamic S

Ken Lin 17 Oct 12, 2022
PyTorch implementation of the Value Iteration Networks (VIN) (NIPS '16 best paper)

Value Iteration Networks in PyTorch Tamar, A., Wu, Y., Thomas, G., Levine, S., and Abbeel, P. Value Iteration Networks. Neural Information Processing

LEI TAI 75 Nov 24, 2022
Replication package for the manuscript "Using Personality Detection Tools for Software Engineering Research: How Far Can We Go?" submitted to TOSEM

tosem2021-personality-rep-package Replication package for the manuscript "Using Personality Detection Tools for Software Engineering Research: How Far

Collaborative Development Group 1 Dec 13, 2021
Groceries ARL: Association Rules (Birliktelik Kuralı)

Groceries_ARL Association Rules (Birliktelik Kuralı) Birliktelik kuralları, mark

Şebnem 5 Feb 08, 2022
Little tool in python to watch anime from the terminal (the better way to watch anime)

ani-cli Script working again :), thanks to the fork by Dink4n for the alternative approach to by pass the captcha on gogoanime A cli to browse and wat

Harshith 4.5k Dec 31, 2022