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Success lies beyond what people say you can't accomplish.

Mateja Petrovic mateja176

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Success lies beyond what people say you can't accomplish.
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@bradmontgomery
bradmontgomery / import this
Created January 14, 2012 03:34
The Zen of Python. (in a python shell, type "import this")
The Zen of Python, by Tim Peters
Beautiful is better than ugly.
Explicit is better than implicit.
Simple is better than complex.
Complex is better than complicated.
Flat is better than nested.
Sparse is better than dense.
Readability counts.
Special cases aren't special enough to break the rules.
@steinwaywhw
steinwaywhw / One Liner to Download the Latest Release from Github Repo.md
Last active November 3, 2024 22:54
One Liner to Download the Latest Release from Github Repo
  • Use curl to get the JSON response for the latest release
  • Use grep to find the line containing file URL
  • Use cut and tr to extract the URL
  • Use wget to download it
curl -s https://api.github.com/repos/jgm/pandoc/releases/latest \
| grep "browser_download_url.*deb" \
| cut -d : -f 2,3 \
| tr -d \" \
@jarun
jarun / Travis CI local install
Created June 5, 2016 19:00
How to install Travis CI locally on Ubuntu 16.04
sudo apt install ruby ruby-dev
sudo gem install travis
# install path: /var/lib/gems/
@Brainiarc7
Brainiarc7 / xclip-copy-to-clipboard.md
Created April 26, 2017 17:53
Using xclip to copy terminal content to the clip board on Linux

Using xclip to copy terminal content to the clip board:

Say you want to pipe shell output to your clipboard on Linux. How would you do it? First, choose the clipboard destination, either the Mouse clip or the system clipboard.

For the mouse clipboard, pipe straight to xclip:

echo 123 | xclip

For the system clip board, pipe to xclip and select clip directly:

This file has been truncated, but you can view the full file.
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@jthomas
jthomas / package.json
Last active September 24, 2023 21:58
Using TensorFlow.js with MobileNet models for image classification on Node.js
{
"name": "tf-js",
"version": "1.0.0",
"main": "script.js",
"license": "MIT",
"dependencies": {
"@tensorflow-models/mobilenet": "^0.2.2",
"@tensorflow/tfjs": "^0.12.3",
"@tensorflow/tfjs-node": "^0.1.9",
"jpeg-js": "^0.3.4"