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# Big Transfer Image Classification Model Quantization with NNCF in OpenVINO™ | |
This tutorial demonstrates how to apply 'INT8' quantization to the [Big Transfer](https://tfhub.dev/google/bit/m-r50x1) Image Classification model. Here we demonstrate fine-tuning the model, OpenVINO optimization and followed by INT8 quantization processing with [NNCF](https://github.com/openvinotoolkit/nncf/). | |
## Notebook Contents | |
This tutorial consists of the following steps: | |
- Prepare Dataset. | |
- Plotting data samples. | |
- Model fine-tuning. | |
- Perform model optimization (IR) step. | |
- Compute model accuracy of the TF model. | |
- Compute model accuracy of the optimized model. | |
- Run nncf.Quantize for getting an Optimized model. | |
- Compute model accuracy of the quantized model. | |
- Compare model accuracy of the optimized and quantized models. | |
- Compare inference results on one picture | |
## Installation Instructions | |
This is a self-contained example that relies solely on its own code.</br> | |
We recommend running the notebook in a virtual environment. You only need a Jupyter server to start. | |
For details, please refer to [Installation Guide](../../README.md). | |