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@DamienCassou
DamienCassou / update-emacs-ppa.sh
Last active February 20, 2016 21:26
Emacs-snapshot and emacs24 build script for Ubuntu PPA
#! /usr/bin/env bash
# Author: Damien Cassou
#
# This is the script I use to build Emacs packages for Ubuntu. These
# packages are uploaded to
# https://launchpad.net/~cassou/+archive/emacs/. Each package is
# either build from a Debian package or from
# http://emacs.naquadah.org/.
@miguelgrinberg
miguelgrinberg / rest-server.py
Last active July 30, 2025 09:09
The code from my article on building RESTful web services with Python and the Flask microframework. See the article here: http://blog.miguelgrinberg.com/post/designing-a-restful-api-with-python-and-flask
#!flask/bin/python
from flask import Flask, jsonify, abort, request, make_response, url_for
from flask_httpauth import HTTPBasicAuth
app = Flask(__name__, static_url_path = "")
auth = HTTPBasicAuth()
@auth.get_password
def get_password(username):
if username == 'miguel':
@aaronpolhamus
aaronpolhamus / map_clsloc.txt
Created May 12, 2016 01:21
Image net classes + labels
n02119789 1 kit_fox
n02100735 2 English_setter
n02110185 3 Siberian_husky
n02096294 4 Australian_terrier
n02102040 5 English_springer
n02066245 6 grey_whale
n02509815 7 lesser_panda
n02124075 8 Egyptian_cat
n02417914 9 ibex
n02123394 10 Persian_cat
@karpathy
karpathy / pg-pong.py
Created May 30, 2016 22:50
Training a Neural Network ATARI Pong agent with Policy Gradients from raw pixels
""" Trains an agent with (stochastic) Policy Gradients on Pong. Uses OpenAI Gym. """
import numpy as np
import cPickle as pickle
import gym
# hyperparameters
H = 200 # number of hidden layer neurons
batch_size = 10 # every how many episodes to do a param update?
learning_rate = 1e-4
gamma = 0.99 # discount factor for reward
@veekaybee
veekaybee / normcore-llm.md
Last active November 20, 2025 15:04
Normcore LLM Reads

Anti-hype LLM reading list

Goals: Add links that are reasonable and good explanations of how stuff works. No hype and no vendor content if possible. Practical first-hand accounts of models in prod eagerly sought.

Foundational Concepts

Screenshot 2023-12-18 at 10 40 27 PM

Pre-Transformer Models