ts-tok: Time-Series Forecasting with Classification

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Hey everyone! I wanted to share with you a weekend project I've been working on called ts-tok. It's an experimental approach to time-series forecasting that uses classification instead of regression. Essentially, we take a range of time-series values and transform them into a fixed vocabulary of tokens. This allows for a seamless training of GPT like models without changing the architecture or loss function. There are some subtleties required for data preparation for training, and I've outlined these in the README, so feel free to check it out! While this approach 'may' not have practical applications in the real world, it's been a fun experiment to explore. I've included some forecasting results in the output/ folder, so feel free to check those out! Open to feedback from the community about potential use cases and limitations of this approach. Thanks for taking the time to read about this project! https://github.com/arpytanshu1/ts-tok

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