> Note: The examples provides doesn't work on Safari, in case people are trying to access on a Mac. Please try it in a different browser. During first lesson of Practical Deep Learning for Coders course, Jeremy had mentioned how using simple computer vision model by being a bit creative we can build a state of the art model to classify audio with same image classification model. I was curious on how I can train an music classifier, as I have never worked on audio data problems before. [You can find how I trained this music genre classification using fast.ai in this blogpost.](https://kurianbenoy.com/posts/2022/2022-05-01-audiocnndemo.html). ## Dataset 1. [The competition data](https://www.kaggle.com/competitions/kaggle-pog-series-s01e02/data) 2. [Image data generated from converting audio to melspectograms in form of images](https://www.kaggle.com/datasets/dienhoa/music-genre-spectrogram-pogchamps) ## Training Fast.ai was used to train this classifier with a ResNet50 vision learner for 10 epochs. | epoch | train_loss | valid_loss | error_rate | time | |-------|---------------|---------------|---------------|-------| |0 | 2.312176 | 1.843815 | 0.558654 | 02:07 | |1 | 2.102361 | 1.719162 | 0.539061 | 02:08 | |2 | 1.867139 | 1.623988 | 0.527003 | 02:08 | |3 | 1.710557 | 1.527913 | 0.507661 | 02:07 | |4 | 1.629478 | 1.456836 | 0.479779 | 02:05 | |5 | 1.519305 | 1.433036 | 0.474253 | 02:05 | |6 | 1.457465 | 1.379757 | 0.464456 | 02:05 | |7 | 1.396283 | 1.369344 | 0.457925 | 02:05 | |8 | 1.359388 | 1.367973 | 0.453655 | 02:05 | |9 | 1.364363 | 1.368887 | 0.456167 | 02:04 | ## Examples The example images provided in the demo are from the validation data from Kaggle competition data, which was not used during training. ## Credits Thanks [Dien Hoa Truong](https://twitter.com/DienhoaT) for providing [inference code](https://www.kaggle.com/code/dienhoa/inference-submission-music-genre) for creating end to end pipeline from creating audio to converting to melspectograms, and then doing prediction. Thanks [@suvash](https://twitter.com/suvash) for helping me get started with huggingface spaces and for his [excellent space](https://huggingface.co/spaces/suvash/food-101-resnet50) which was a reference for this work. Thanks [@strickvl](https://twitter.com/strickvl) for reporting issue in safari browser and trying this space out.