Sample data and config file for PipeTuner.
Introduction
We have introduced PipeTuner Collection. PipeTuner is an automatic tuning tool that efficiently explores the parameter space and finds the optimal parameters for the pipelines, which yields the highest KPI on the dataset provided by the user. This resource page contains the documentation, sample data and config files to run PipeTuner. Visit "File Browser" to download them.
Getting Started
Users need to follow all the steps in this section to start tuning.
System Requirements
PipeTuner requires the following components on an x86_64 system:
- OS Ubuntu 22.04
- NVIDIA driver 535.104 or 535.161
- Docker (need to run without sudo privilege)
- NVIDIA container toolkit
NGC Setup
Users need to follow below steps to sign in to an NGC account and get an API key.
- Visit NGC sign in page, Enter your email address and click Next, or Create an Account.
- Choose your organization when prompted for Organization/Team. DeepStream users may use any organization and team; Metropolis Microservice users need to select nv-mdx/mdx-v2-0; Click Sign In.
- Generate an API key following the instructions.
- Log in to the NGC docker registry (nvcr.io) and enter the following credentials, where YOUR_NGC_API_KEY corresponds to the key you generated from the previous step.
$ docker login nvcr.io
Username: "$oauthtoken"
Password: "YOUR_NGC_API_KEY"
- Metropolis Microservice users need to install NGC CLI following the instructions, and set ngc config as below. DeepStream users can skip this step.
$ ngc config set
Enter API key: "YOUR_NGC_API_KEY"
Enter org: nfgnkvuikvjm
Enter team: mdx-v2-0
Sample Data Setup
The sample data consists of a mini-synthetic dataset with eight 1-minute streams and config files for tuning. You can download the sample files pipe-tuner-sample.zip by clicking “Download” from this page.
Once you download the sample file, unzip the file and run setup.sh to finish sample data for either DeepStream or Metropolis Microservices.
$ unzip pipe-tuner-sample.zip
$ cd pipe-tuner-sample/scripts
$ # DeepStream or Metropolis Microservices users should run only one of the following two commands based on their usage
$ bash setup.sh deepstream # DeepStream users
$ bash setup.sh metropolis # Metropolis Microservices users
DeepStream users should see docker images like below.
$ docker images # bash setup.sh deepstream
REPOSITORY TAG
nvcr.io/nvidia/pipetuner 1.0
nvcr.io/nvidia/deepstream 7.0-triton-multiarch
Also, model files should be under the ‘models’ folder. They will be mapped into DeepStream containers during tuning.
$ ls ../models
labels.txt resnet34_peoplenet_int8.etlt resnet34_peoplenet_int8.txt resnet50_market1501_aicity156.onnx
Metropolis users should see docker images like below. The ‘models’ folder is empty because default models in mdx-perception container will be used.
$ docker images # bash setup.sh metropolis
REPOSITORY TAG
nvcr.io/nvidia/pipetuner 1.0
nvcr.io/nfgnkvuikvjm/mdx-v2-0/mdx-perception 2.1
The final directory under pipe-tuner-sample is like:
pipe-tuner-sample
├── configs
│ ├── config_CameraMatrix
│ ├── config_GuiTool
│ ├── config_MTMC
│ ├── config_PGIE
│ ├── config_PipeTuner
│ └── config_Tracker
├── data
│ ├── SDG_1min_utils
│ └── SDG_1min_videos
├── models
├── ngc_download
├── multi-camera-tracking (only for Metropolis Microservice)
└── scripts
License
| Asset | Applicable EULA | Notes |
|---|---|---|
| PipeTuner Container | NVIDIA_PipeTuner_EULA | A copy of the license is available in the following path inside the container: /pipe-tuner/NVIDIA_PipeTuner_EULA.pdf |
NOTE: By pulling, downloading, or using PipeTuner, you accept the terms and conditions of the EULA licenses listed above.
For DeepStream SDK and Metropolis Microservices, please refer to their own licenses.
Ethical AI
NVIDIA’s platforms and application frameworks enable developers to build a wide array of AI applications. Consider potential algorithmic bias when choosing or creating the models being deployed. Work with the model’s developer to ensure that it meets the requirements for the relevant industry and use case; that the necessary instruction and documentation are provided to understand error rates, confidence intervals, and results; and that the model is being used under the conditions and in the manner intended.