Ejercicios Panda usando Pandas

Overview

Readme

Below we add configuration details to locally test your application

To configure in windows:

To configure in macOS:

For zsh

> ~/.zshrc echo 'export PYENV_ROOT="$HOME/.pyenv"' >> ~/.zshrc echo 'export PATH="$PYENV_ROOT/shims:$PATH"' >> ~/.zshrc echo 'eval "$(pyenv init -)"' >> ~/.zshrc echo 'eval "$(pyenv virtualenv-init -)"' >> ~/.zshrc # 4. Activate the updated config for the current shell exec $SHELL # 4. Installs python 3.10.1, creates a virtualenv, # activates it and get dependencies. pyenv install 3.10.1 pyenv virtualenv 3.10.1 venv_almacen pyenv activate venv_almacen pip install -r requirements.txt">
# 1. Install homebrew
/bin/bash -c "$(curl -fsSL https://raw.githubusercontent.com/Homebrew/install/HEAD/install.sh)"

# 2. Install pyenv and it's plugin for virtualenv
brew install pyenv pyenv-virtualenv

# 3. Adds to ~/.zshrc the following lines:
echo '\n' >> ~/.zshrc
echo 'export PYENV_ROOT="$HOME/.pyenv"' >> ~/.zshrc
echo 'export PATH="$PYENV_ROOT/shims:$PATH"' >> ~/.zshrc
echo 'eval "$(pyenv init -)"' >> ~/.zshrc
echo 'eval "$(pyenv virtualenv-init -)"' >> ~/.zshrc

# 4. Activate the updated config for the current shell
exec $SHELL

# 4. Installs python 3.10.1, creates a virtualenv, 
# activates it and get dependencies.
pyenv install 3.10.1
pyenv virtualenv 3.10.1 venv_almacen
pyenv activate venv_almacen
pip install -r requirements.txt
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