Stock Portfolio Optimization with Bayesian shrinkage, DRIP, Projected vs Actual perfomenace and Blume-Adjusted Betas
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Updated
Aug 23, 2025 - Jupyter Notebook
Stock Portfolio Optimization with Bayesian shrinkage, DRIP, Projected vs Actual perfomenace and Blume-Adjusted Betas
This repository contains work for CSCI 447 Introduction to Machine Learning. It represent a wide range of machine learning algorithms and principles, implemented from scratch by Braeden Hunt and Tyler Koon (group 6).
These are a couple katas attempting at solving the N Queens problem set using diffrent algorithms and huristics.
In this project, we executed an optimized architecture for image recognition on the CIFAR-10 dataset using the Particle Swarm Optimization (PSO) method.
Archiving a miscellaneous study
🚀 Reinforcement learning from scratch — including value-based and policy-based methods, alongside search-driven approaches from evolutionary strategies like Genetic Algorithms to adaptive techniques like Simulated Annealing, PSO, and CMA-ES
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