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# zero-to-hero | |
Create and deploy to production a simple neural network for Computer Vision | |
# Tools Used | |
* JAX Library for computing gradients, performing tensor operations and scheming the segmentation model | |
* Wandb for metrics and training tools | |
* MLflow for deploying and compiling the model for production | |
* Gradio for interactive user-experience platform within an online platform (Data-ICMC Website). | |
## Datasets to consider | |
* [LabelMe 12 50k](https://www.kaggle.com/datasets/dschettler8845/labelme-12-50k) | |
* [City-Scapes](https://www.cityscapes-dataset.com/dataset-overview/) | |
* [CamVid](http://mi.eng.cam.ac.uk/research/projects/VideoRec/CamVid/) | |
## References | |
* [DSNet-Fast](https://www.researchgate.net/figure/The-architecture-of-fast-dense-segmentation-network-DSNet-fast-The-encoder-is_fig1_347180093) | |
* [DSNet](https://www.researchgate.net/figure/The-architecture-of-dense-segmentation-network-DSNet-The-encoder-is-a-fully-convolutional_fig1_347180092) | |
# First Model | |
The first model available and deployed considers a simple 2D image, taken from the MNIST Dataset. Reefer to [_High-Performance Neural Networks | |
for Visual Object Classification_](https://arxiv.org/pdf/1102.0183.pdf) for further details on the dataset. | |
The CI/CD process will use the default Github pipeline using the available [Github Actions features](https://github.blog/2022-02-02-build-ci-cd-pipeline-github-actions-four-steps/). The training process will use the MLFLow framework, to cather and track the necessary metrics and log accordingly. Reefer to the [docs](https://mlflow.org/docs/latest/quickstart.html) for further details. | |