Skip to content

Latest commit

 

History

History
45 lines (29 loc) · 1.26 KB

ReadMe.md

File metadata and controls

45 lines (29 loc) · 1.26 KB

Investing Book

This is my a interactive recording of my quest to become a successful investor.

Contains various code snippets in python and ipython notebooks with useful code snippets to analyze a variety of stocks and stock related data.

My quest to gain an edge on stocks includes

  • Scanning for news from yahoo
  • Subscribing to ceo.ca to get news alerts
  • Python scripts to visualize my yolo purchase decisions
  • Sentiment Analysis on published documents and text
  • Analyze the transcripts of youtube videos for nlp
  • Algorithmic trading - just for back testing
  • Price Prediction
  • Risk Analyze - I honestly just held enough cash to deploy in any situation.
  • Estimation of Returns

But to be perfectly honest, I have done fairly well buying canadian small cap companies that were interesting or undervalued in 2021, not 2022.

Building this book

To build this project

jb build ibook/

To convert an ipynb book to a markdown file

jupytext CorrelationExamples.ipynb --to rmarkdown

Since this book contains useful contain, I will try to make money on ads, please click on them <3

To serve content directly you can use

python -m http.server 8080 --bind 127.0.0.1 --directory ibook/_build

This repo is meant to contain some of my investing notes