Econometrics-With-Python VS eip1559_analysis

Compare Econometrics-With-Python vs eip1559_analysis and see what are their differences.

Econometrics-With-Python

Tutorials of econometrics featuring Python programming. This is a crash course for reviewing the most important concepts and techniques of basic econometrics, the theories are presented lightly without hustles of derivation and Python codes are straightforward. (by weijie-chen)

eip1559_analysis

Can we estimate the economic impact of EIP-1559 on miners? This repository try to estimate the loss of miners' revenue coming from transactions fees, using Ethereum historical data. (by louisoutin)
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Econometrics-With-Python eip1559_analysis
1 1
250 12
- -
10.0 4.1
over 1 year ago about 3 years ago
Jupyter Notebook Jupyter Notebook
MIT License MIT License
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Econometrics-With-Python

Posts with mentions or reviews of Econometrics-With-Python. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2023-08-24.
  • Python for Econometrics for Practitioners [Free Online Courses]
    5 projects | /r/CompSocial | 24 Aug 2023
    Econometrics with Python: This is a crash course for reviewing the most important concepts and techniques of econometrics. The theories are presented lightly without hustles of mathematical derivation and Python codes are mostly procedural and straightforward. Core concepts covered: multi- linear regression, logistic model, dummy variable, simultaneous equations model, panel data model and time series.

eip1559_analysis

Posts with mentions or reviews of eip1559_analysis. We have used some of these posts to build our list of alternatives and similar projects.

What are some alternatives?

When comparing Econometrics-With-Python and eip1559_analysis you can also consider the following projects:

Time-Series-and-Financial-Engineering-With-Python - A series of lessons on time series analysis with Python

fecon235 - Notebooks for financial economics. Keywords: Jupyter notebook pandas Federal Reserve FRED Ferbus GDP CPI PCE inflation unemployment wage income debt Case-Shiller housing asset portfolio equities SPX bonds TIPS rates currency FX euro EUR USD JPY yen XAU gold Brent WTI oil Holt-Winters time-series forecasting statistics econometrics

Bayesian-Statistics-Econometrics - Bayesian Statistics-Econometrics

ydata-profiling - 1 Line of code data quality profiling & exploratory data analysis for Pandas and Spark DataFrames.

Linear-Algebra-With-Python - Lecture Notes for Linear Algebra Featuring Python. This series of lecture notes will walk you through all the must-know concepts that set the foundation of data science or advanced quantitative skillsets. Suitable for statistician/econometrician, quantitative analysts, data scientists and etc. to quickly refresh the linear algebra with the assistance of Python computation and visualization.

60-Days-of-Data-Science-and-ML - 60 Days of Data Science and ML

hyperlearn - 2-2000x faster ML algos, 50% less memory usage, works on all hardware - new and old.

telegram-stat - CLI tool to extract Telegram channel statistics as JSON.

udsb - Unlimited Data-Science Benchmarks for Numeric, Tabular and Graph Workloads