AiLearning:数据分析+机器学习实战+线性代数+PyTorch+NLTK+TF2
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Updated
Jul 21, 2023 - Python
AiLearning:数据分析+机器学习实战+线性代数+PyTorch+NLTK+TF2
A curated list of gradient boosting research papers with implementations.
A Lightweight Decision Tree Framework supporting regular algorithms: ID3, C4,5, CART, CHAID and Regression Trees; some advanced techniques: Gradient Boosting, Random Forest and Adaboost w/categorical features support for Python
Machine learning for C# .Net
An workflow in factor-based equity trading, including factor analysis and factor modeling. For well-established factor models, I implement APT model, BARRA's risk model and dynamic multi-factor model in this project.
Estudo e implementação dos principais algoritmos de Machine Learning em Jupyter Notebooks.
Insanely fast Open Source Computer Vision library for ARM and x86 devices (Up to #50 times faster than OpenCV)
经典机器学习算法的极简实现
A repository contains more than 12 common statistical machine learning algorithm implementations. 常见机器学习算法原理与实现
machine learning algorithm
Scene text detection and recognition based on Extremal Region(ER)
Transfer learning algorithm TrAdaboost,coded by python
Forecast stock prices using machine learning approach. A time series analysis. Employ the Use of Predictive Modeling in Machine Learning to Forecast Stock Return. Approach Used by Hedge Funds to Select Tradeable Stocks
Viola-Jones face detection from scratch in WebAssembly
Building Decision Trees From Scratch In Python
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