Theau Heral (theauheral)

theauheral

Geek Repo

Company:Goldman Sachs

Location:London, UK

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Theau Heral's repositories

EliteQuant

A list of online resources for quantitative modeling, trading, portfolio management

License:Apache-2.0Stargazers:3Issues:0Issues:0

machine-learning-for-software-engineers

A complete daily plan for studying to become a machine learning engineer.

License:CC-BY-SA-4.0Stargazers:2Issues:1Issues:0

mlfactor.github.io

Website dedicated to a book on machine learning for factor investing

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Adv_Fin_ML_Exercises

Experimental solutions to selected exercises from the book [Advances in Financial Machine Learning by Marcos Lopez De Prado]

Language:Jupyter NotebookLicense:MITStargazers:1Issues:1Issues:0

awesome-awesome-finance

An awesome repository of other awesome-finance repositories

License:MITStargazers:1Issues:2Issues:0

awesome-quant

A curated list of insanely awesome libraries, packages and resources for Quants (Quantitative Finance)

Awesome-Quant-Machine-Learning-Trading

Quant/Algorithm trading resources with an emphasis on Machine Learning

data-engineer-roadmap

Roadmap to becoming a data engineer in 2021

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PyPortfolioOpt

Financial portfolio optimisation in python, including classical efficient frontier, Black-Litterman, Hierarchical Risk Parity

Language:Jupyter NotebookLicense:MITStargazers:1Issues:1Issues:0

technology_books

Premium eBook free for Geeks

backtrader-docs

backtrader documentation

License:GPL-3.0Stargazers:0Issues:1Issues:0

Berkeley-Haas-MBA-Notes

Collection of notes

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change-tutorial

Materials for the useR2017 tutorial on changepoint detection

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coursework

summer school coursework

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financial-machine-learning

A curated list of practical financial machine learning tools and applications.

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langchain

⚡ Building applications with LLMs through composability ⚡

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legend-studio

Legend Studio module

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MIRC_2019

MIRC Team for the 2018/2019 year

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MOOC-MBA

Path to a free self-taught education in Business

License:MITStargazers:0Issues:1Issues:0

Product-Notes-2018

Product Notes

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research

Contains all the Jupyter Notebooks used in our research

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ruptures

ruptures: change point detection in Python

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SpaceXtract

Extraction and analysis of telemetry from SpaceX webcasts

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statsmodels

Statsmodels: statistical modeling and econometrics in Python

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Stock-Prediction-Models

Gathers machine learning and deep learning models for Stock forecasting including trading bots and simulations

Language:Jupyter NotebookLicense:Apache-2.0Stargazers:0Issues:2Issues:0

stockpredictionai

In this noteboook I will create a complete process for predicting stock price movements. Follow along and we will achieve some pretty good results. For that purpose we will use a Generative Adversarial Network (GAN) with LSTM, a type of Recurrent Neural Network, as generator, and a Convolutional Neural Network, CNN, as a discriminator. We use LSTM for the obvious reason that we are trying to predict time series data. Why we use GAN and specifically CNN as a discriminator? That is a good question: there are special sections on that later.

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Telemetry-Data

A collection of telemetry captured from SpaceX Launch Webcasts

License:UnlicenseStargazers:0Issues:1Issues:0