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@rouseguy
rouseguy / recsys.txt
Last active September 8, 2019 03:03
List of libraries needed for rec sys workshop
absl-py==0.8.0
altair==3.2.0
annoy==1.16.0
appnope==0.1.0
asn1crypto==0.24.0
astor==0.8.0
attrs==19.1.0
backcall==0.1.0
bleach==3.1.0
blis==0.2.4
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import numpy as np
import pandas as pd
import altair as alt
import matplotlib.pyplot as plt
from mpl_toolkits.mplot3d import Axes3D
# Helper to get the labels for each class of Fashion Mnist
def fashion_mnist_label():
labels = {
X = np.zeros((int(len(data)/SEQ_LENGTH), SEQ_LENGTH, VOCAB_SIZE))
y = np.zeros((int(len(data)/SEQ_LENGTH), SEQ_LENGTH, VOCAB_SIZE))
for i in range(0, int(len(data)/SEQ_LENGTH)):
X_sequence = data[i*SEQ_LENGTH:(i+1)*SEQ_LENGTH]
X_sequence_ix = [char_to_ix[value] for value in X_sequence]
input_sequence = np.zeros((SEQ_LENGTH, VOCAB_SIZE))
for j in range(SEQ_LENGTH):
input_sequence[j][X_sequence_ix[j]] = 1.
X[i] = input_sequence
import numpy as np
def input_generate_data(data, SEQ_LENGTH=20, VOCAB_SIZE=30, char_to_ix = {}):
X = np.zeros((int(len(data)/SEQ_LENGTH), SEQ_LENGTH, VOCAB_SIZE))
y = np.zeros((int(len(data)/SEQ_LENGTH), SEQ_LENGTH, VOCAB_SIZE))
for i in range(0, int(len(data)/SEQ_LENGTH)):
X_sequence = data[i*SEQ_LENGTH:(i+1)*SEQ_LENGTH]
X_sequence_ix = [char_to_ix[value] for value in X_sequence]
import numpy as np
def input_generate_data(data, SEQ_LENGTH=SEQ_LENGTH, VOCAB_SIZE=VOCAB_SIZE, char_to_ix = char_to_ix):
X = np.zeros((int(len(data)/SEQ_LENGTH), SEQ_LENGTH, VOCAB_SIZE))
y = np.zeros((int(len(data)/SEQ_LENGTH), SEQ_LENGTH, VOCAB_SIZE))
for i in range(0, int(len(data)/SEQ_LENGTH)):
X_sequence = data[i*SEQ_LENGTH:(i+1)*SEQ_LENGTH]
X_sequence_ix = [char_to_ix[value] for value in X_sequence]
@rouseguy
rouseguy / helpers.py
Last active March 10, 2018 05:12
helper functions for the deep learning workshop
import numpy as np
import matplotlib.pyplot as plt
import tensorflow as tf
import keras
from tensorflow.examples.tutorials.mnist import input_data
import os
# Helper to get the labels for each class of Fashion Mnist
def fashion_mnist_label():
labels = {
import numpy as np
def fizzbuzz(number):
if number % 15 == 0:
return np.array(["fizzbuzz"], dtype="object")
elif number % 5 == 0:
return np.array(["buzz"], dtype="object")
elif number % 3 == 0:
return np.array(["fizz"], dtype="object")
else:
@rouseguy
rouseguy / zshrc
Created August 9, 2017 18:56
zshrc
# If you come from bash you might have to change your $PATH.
# export PATH=$HOME/bin:/usr/local/bin:$PATH
# Path to your oh-my-zsh installation.
export ZSH=/Users/bsubrama/.oh-my-zsh
# Set name of the theme to load. Optionally, if you set this to "random"
# it'll load a random theme each time that oh-my-zsh is loaded.
# See https://github.com/robbyrussell/oh-my-zsh/wiki/Themes
ZSH_THEME="robbyrussell"
@rouseguy
rouseguy / vimrc
Created August 9, 2017 18:53
vimrc
execute pathogen#infect()
syntax on
filetype plugin indent on
syntax enable
set background=light
let g:solarized_contrast="high"
colorscheme solarized
set guifont=Hack:h20
set showmatch