Fast-API base StockSeer-API uses different machine learning alogs to forecast closing stock prices.
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Updated
Jun 6, 2024 - Python
Fast-API base StockSeer-API uses different machine learning alogs to forecast closing stock prices.
This repository contains implementations of regression models on the Starbucks stock market. The goal is to provide a comprehensive understanding of the performance of these models. Also, implement metrics without relying on external machine learning libraries. ☕️📈
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