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This repository contains mini applications for GPU Bootcamps. The objective of this Bootcamp is to give an introduction to using NVIDIA DeepStream Framework and apply to Intelligent Video Analytics Domain.
The target audience for this bootcamp are AI developers working in domain of Intelligent Video Anaytics and looking at optimizing the application using NVIDIA DeepStream SDK.
The overall lab should take approximate 3.5 hours. There is an additional mini-challenge provided at the end of lab.
To run this tutorial you will need a machine with NVIDIA GPU.
Install the latest Docker or Singularity.
The base containers required for the lab may require users to create a NGC account and generate an API key (https://docs.nvidia.com/ngc/ngc-catalog-user-guide/index.html#registering-activating-ngc-account)
To start with, you will have to build a Docker or Singularity container.
To build a docker container, run:
sudo docker build --network=host -t <imagename>:<tagnumber> .
For instance:
sudo docker build -t myimage:1.0 .
and to run the container, run:
sudo docker run --rm -it --gpus=all --network=host -p 8888:8888 myimage:1.0
Once inside the container launch the jupyter lab by typing the following command
jupyter-lab --no-browser --allow-root --ip=0.0.0.0 --port=8888 --NotebookApp.token="" --notebook-dir=/opt/nvidia/deepstream/deepstream-5.0/python
Then, open the jupyter lab in browser: http://localhost:8888
Start working on the lab by clicking on the Start_Here.ipynb
notebook.
To build the singularity container, run:
sudo singularity build --sandbox <image_name>.simg Singularity
and copy the files to your local machine to make sure changes are stored locally:
singularity run --writable <image_name>.simg cp -rT /opt/nvidia/deepstream/deepstream-5.0/ ~/workspace
Then, run the container:
singularity run --nv --writable <image_name>.simg jupyter-lab --no-browser --allow-root --ip=0.0.0.0 --port=8888 --NotebookApp.token="" --notebook-dir=~/workspace/python
Then, open the jupyter lab in browser: http://localhost:8888
Start working on the lab by clicking on the Start_Here.ipynb
notebook.
Q. "ResourceExhaustedError" error is observed while running the labs
A. Currently the batch size and network model is set to consume 16GB GPU memory. In order to use the labs without any modifications it is recommended to have GPU with minimum 16GB GPU memory. Else the users can play with batch size to reduce the memory footprint