# Introduction To IProgressMonitor Callbacks Using Python **Table Of Contents** - [Description](#description) - [How does this sample work?](#how-does-this-sample-work) * [simple_progress_monitor](#simple_progress_monitor) - [Prerequisites](#prerequisites) - [Running the sample](#running-the-sample) * [Sample `--help` options](#sample-help-options) - [Additional resources](#additional-resources) - [License](#license) - [Changelog](#changelog) - [Known issues](#known-issues) ## Description This sample, simple_progress_monitor, is a Python sample which uses TensorRT and its included ONNX parser, to perform inference with ResNet-50 models saved in ONNX format. It displays animated progress bars while TensorRT builds the engine. ## How does this sample work? ### simple_progress_monitor This sample demonstrates how to build an engine from an ONNX model file using the open-source ONNX parser and then run inference. The ONNX parser can be used with any framework that supports the ONNX format (typically `.onnx` files). An `IProgressMonitor` object receives updates on the progress of the build, and displays them as ASCII progress bars on stdout. ## Prerequisites 1. Install the dependencies for Python. ```bash pip3 install -r requirements.txt ``` 2. Preparing sample data See [Preparing sample data](../../README.md#preparing-sample-data) in the main samples README. ## Running the sample 1. Run the sample from a terminal to create a TensorRT inference engine and run inference: `python3 simple_progress_monitor.py` **Note:** If the TensorRT sample data is not installed in the default location, the `data` directory must be specified. For example: `python3 simple_progress_monitor.py -d $TRT_DATADIR` **Note:** Do not redirect the output of this script to a file or pipe. 2. Verify that the sample ran successfully. If the sample runs successfully you should see output similar to the following: `Correctly recognized data/samples/resnet50/reflex_camera.jpeg as reflex camera` ### Sample --help options To see the full list of available options and their descriptions, use the `-h` or `--help` command line option. For example: ``` usage: simple_progress_monitor.py [-h] [-d DATADIR] Runs a ResNet50 network with a TensorRT inference engine. Displays intermediate build progress. optional arguments: -h, --help show this help message and exit -d DATADIR, --datadir DATADIR Location of the TensorRT sample data directory. (default: /usr/src/tensorrt/data) ``` # Additional resources The following resources provide a deeper understanding about importing a model into TensorRT using Python: **ResNet-50** - [Deep Residual Learning for Image Recognition](https://arxiv.org/pdf/1512.03385.pdf) **Parsers** - [ONNX Parser](https://docs.nvidia.com/deeplearning/sdk/tensorrt-api/python_api/parsers/Onnx/pyOnnx.html) **Documentation** - [Introduction To NVIDIA’s TensorRT Samples](https://docs.nvidia.com/deeplearning/sdk/tensorrt-sample-support-guide/index.html#samples) - [Working With TensorRT Using The Python API](https://docs.nvidia.com/deeplearning/sdk/tensorrt-developer-guide/index.html#python_topics) - [Importing A Model Using A Parser In Python](https://docs.nvidia.com/deeplearning/sdk/tensorrt-developer-guide/index.html#import_model_python) - [NVIDIA’s TensorRT Documentation Library](https://docs.nvidia.com/deeplearning/sdk/tensorrt-archived/index.html) **Terminal Escape Sequences** - Linux: [XTerm Control Sequences](https://invisible-island.net/xterm/ctlseqs/ctlseqs.html) - Windows: [Console Virtual Terminal Sequences](https://learn.microsoft.com/en-us/windows/console/console-virtual-terminal-sequences) # License For terms and conditions for use, reproduction, and distribution, see the [TensorRT Software License Agreement](https://docs.nvidia.com/deeplearning/sdk/tensorrt-sla/index.html) documentation. # Changelog October 2025 Migrate to strongly typed APIs. August 2025 Removed support for Python versions < 3.10. August 2023 Removed support for Python versions < 3.8. June 2023 This `README.md` file was created and reviewed. # Known issues There are no known issues in this sample