Alan Lujan (alanlujan91)

alanlujan91

Geek Repo

Company:Johns Hopkins University

Location:Rockville, MD

Home Page:quantmacro.org

Github PK Tool:Github PK Tool


Organizations
econ-ark

Alan Lujan's repositories

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HARK

Heterogenous Agents Resources & toolKit

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ConsumptionSavingNotebooks

Jupyter Notebook examples of the ConSav package

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DistributionOfWealthMPC

The Distribution of Wealth and the Marginal Propensity to Consume

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nber-workshop-2023

Code for the Spring 2023 NBER heterogeneous-agent macro workshop

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QuantEcon.py

A community based Python library for quantitative economics

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SHARKFin

Public fork of HARK_ABM_INTRO

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ai-economist

Foundation is a flexible, modular, and composable framework to model socio-economic behaviors and dynamics with both agents and governments. This framework can be used in conjunction with reinforcement learning to learn optimal economic policies, as done by the AI Economist (https://www.einstein.ai/the-ai-economist).

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alanlujan91

Config files for my GitHub profile.

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BufferStockTheory

Tested for Apple Silicon, Apple Multipass, Ubuntu 20.04

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BufferStockTheory-Bloated

Theoretical Foundations of Buffer Stock Saving

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DemARK

Demonstrations of how to use material in the Econ-ARK

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estimagic

Estimagic is a Python package for nonlinear optimization with or without constraints. It is particularly suited to solve difficult nonlinear estimation problems. On top, it provides functionality to perform statistical inference on estimated parameters.

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FUES_EGM

EGM using fast upper-envelope scan

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HAFiscal

Public version of HAFiscal project

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REMARK

Replications and Explorations Made using the ARK

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scipy_proceedings

Tools used to generate the SciPy conference proceedings

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sequence-jacobian

Interactive guide to Auclert, Bardóczy, Rognlie, and Straub (2019): "Using the Sequence-Space Jacobian to Solve and Estimate Heterogeneous-Agent Models".

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SolvingMicroDSOPs

Christopher Carroll's Lecture Notes on Solving Microeconomic Dynamic Stochastic Optimization Problems and Indirect Inference

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