--- title: Ai Academy 2024 Gr8 Recommender Api emoji: 📉 colorFrom: green colorTo: pink sdk: docker pinned: false license: mit --- Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference # ai-academy-2024-group8 A lightweight backend API for song recommender Dataset used in this project is public and available from [online](https://www.kaggle.com/datasets/undefinenull/million-song-dataset-spotify-lastfm) ## What's in here - `data/`: Contains the trained `model.pkl` and related `model.csv` that has the training set in csv format - `notebooks/`: Contains any jupyter notebooks used in the project - `recommendation-api/`: A FastAPI app to serve user recommendations ## Running service locally 1. (Optional) Create an activate python venv 2. Install the requirements `pip install -r requirements.txt` 3. Start the service `python recommendation-api/server.py` Then - `curl http://localhost:7860/users` to fetch list of supported users - `curl http://localhost:7860/users/` to fetch track history for individual user - `curl http://localhost:7860/recommend/` to recommend tracks for the specific user ## Running in Huggingface Application is built and started on push to master. Application is available from [here](https://schibsted-ai-academy-2024-gr8-recommender-api.hf.space/docs)