PacktPublishing / Python For Finance Cookbook
Python for Finance Cookbook, published by Packt
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Python For Finance Cookbook - Code Repository
Python For Finance Cookbook
published: January 31st, 2020
Paperback: 432 pages
Publisher: Packt Publishing
Language: English
Links
Table of Contents
- Financial Data and Preprocessing
- Technical Analysis in Python
- Time Series Modeling
- Multi-Factor Models
- Modeling Volatility with GARCH Class Models
- Monte Carlo Simulations in Finance
- Asset Allocation in Python
- Identifying Credit Default with Machine Learning
- Advanced Machine Learning Models in Finance
- Deep Learning in Finance
Eryk Lewinson. Python For Finance Cookbook. Packt Publishing, 2020.
@book{Lewinson2019,
address = {Birmingham, UK},
author = {Lewinson, Eryk},
edition = {1},
isbn = {9781789618518},
publisher = {Packt Publishing},
title = {{Python For Finance Cookbook}},
year = {2020}
}
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