Skip to content

Instantly share code, notes, and snippets.

@joepie91
joepie91 / express-server-side-rendering.md
Last active February 20, 2024 20:52
Rendering pages server-side with Express (and Pug)

Terminology

  • View: Also called a "template", a file that contains markup (like HTML) and optionally additional instructions on how to generate snippets of HTML, such as text interpolation, loops, conditionals, includes, and so on.
  • View engine: Also called a "template library" or "templater", ie. a library that implements view functionality, and potentially also a custom language for specifying it (like Pug does).
  • HTML templater: A template library that's designed specifically for generating HTML. It understands document structure and thus can provide useful advanced tools like mixins, as well as more secure output escaping (since it can determine the right escaping approach from the context in which a value is used), but it also means that the templater is not useful for anything other than HTML.
  • String-based templater: A template library that implements templating logic, but that has no understanding of the content it is generating - it simply concatenates together strings, potenti
@bhagyas
bhagyas / convert-to-ssh.sh
Last active March 17, 2021 20:29
Convert BitBucket HTTPS to SSH
#/bin/bash
#-- Author: Bhagya Silva (https://about.me/bhagyas)
#-- Script to automate https://help.github.com/articles/why-is-git-always-asking-for-my-password
#-- based on original code from : https://gist.github.com/m14t/3056747
REPO_URL=`git remote -v | grep -m1 '^origin' | sed -Ene's#.*(https://[^[:space:]]*).*#\1#p'`
if [ -z "$REPO_URL" ]; then
echo "-- ERROR: Could not identify Repo url."
echo " It is possible this repo is already using SSH instead of HTTPS."
exit
@bsweger
bsweger / useful_pandas_snippets.md
Last active April 19, 2024 18:04
Useful Pandas Snippets

Useful Pandas Snippets

A personal diary of DataFrame munging over the years.

Data Types and Conversion

Convert Series datatype to numeric (will error if column has non-numeric values)
(h/t @makmanalp)