compendium
Finance/Crypto compendium
A comprehensive collection of finance and crypto-related topics, papers, and protocols in Jupyter Notebook format
The Greatest Collection of anything related to finance and crypto
201 stars
7 watching
28 forks
Language: Jupyter Notebook
last commit: over 2 years ago
Linked from 1 awesome list
bitcoincommoditiescryptocoinscryptocurrencyderivativesderivatives-pricingerc20erc721ethereumfinancefuturesisdalegal-documentsmarketsregulatorystock-marketsupplychaintokenstradetrading
Related projects:
| Repository | Description | Stars |
|---|---|---|
| | Provides an interface to financial economics data and analysis tools | 1,147 |
| | A comprehensive training platform providing educational materials and resources for quantitative finance concepts taught through Jupyter Notebooks. | 397 |
| | A Go library providing access to current and historical financial markets data. | 730 |
| | A collection of Python notebooks focused on quantitative finance and derivatives pricing using the QuantLib library. | 151 |
| | A comprehensive index of gas price prediction and reporting services for the Ethereum blockchain | 99 |
| | Provides an easy-to-use interface to financial data from various sources. | 45 |
| | A comprehensive Python library for pricing and risk management of financial derivatives. | 2,179 |
| | A collection of Python codes and Jupyter Notebooks for the book Python for Finance (2nd ed.) by Yves Hilpisch. | 1,424 |
| | Provides data on currencies for financial analysis | 81 |
| | An initiative exploring proof-of-stake blockchain consensus algorithms and their applications. | 1,276 |
| | A collection of educational resources and notes on financial modeling and analysis using Jupyter Notebook | 25 |
| | Tools and libraries for building blockchain applications in Ruby | 225 |
| | A Python library for retrieving financial data from various exchanges and indexes. | 1,200 |
| | A Python library providing a unified interface to Cosmos Protobuf APIs for querying blockchain data. | 19 |
| | Analyzing and exploring Common Crawl data using Jupyter notebooks to provide insights into webarchiving and internet connections. | 48 |