To add a value to a secret we need to ensure it is base64 encoded without whitespace
E.g.
echo -n 'true' | base64 -w0
// Interval time to check if runtime is disconnected | |
interval = 1000 * 60; | |
// Busy/Reconnect button top-right | |
reloadButton = document.querySelector('#connect > paper-button > span') | |
setInterval(() => { | |
if (reloadButton.innerText == 'Reconnect') { | |
reloadButton.click(); | |
console.log('Restarting'); |
raise ClientError(operation_name='InvalidKeyPair.Duplicate', error_response={ | |
'Error': { | |
'Code': 'Duplicate', | |
'Message': 'This is a custom message' | |
} | |
} | |
) |
To add a value to a secret we need to ensure it is base64 encoded without whitespace
E.g.
echo -n 'true' | base64 -w0
# example multistage process docker build script from https://blog.phusion.nl/2016/08/31/efficiently-and-conveniently-building-ruby-and-node-js-application-docker-containers-for-production-2 | |
set -e | |
export IMAGE_NAME=tinco/express-example | |
export RUN_BUILD="docker run -it --rm -v $PWD:/usr/src/app -w /usr/src/app node:6" | |
export TEST_COMMAND="./node_modules/mocha/bin/mocha" | |
function run_image() { |
# Keras tokenizer lacks serialization. Therefore I created the below to address this without changing the API. | |
# (Since I don't know how long it'll take for keras to support it) | |
# The Tokenizer __init__ should be modified to take the word_stats dictionary as a kwarg, | |
# and a method added to the class to return the stats | |
# Expiermentally this works, but I am not sure of any nuances in the Tokenizer class. | |
def test_tokenizer(): | |
texts = ["It was the best of times, it was the worst of times, it was the age of wisdom", | |
"it was the age of foolishness, it was the epoch of belief, it was the epoch of incredulity, ", | |
"it was the season of Light, it was the season of Darkness, it was the spring of hope, ", |
from keras.models import Sequential | |
from keras.layers import Dense | |
from keras.utils.io_utils import HDF5Matrix | |
import numpy as np | |
def create_dataset(): | |
import h5py | |
X = np.random.randn(200,10).astype('float32') | |
y = np.random.randint(0, 2, size=(200,1)) | |
f = h5py.File('test.h5', 'w') |
# Create a Person class which will print the following output when run: | |
# Jane Doe | |
# John Smith | |
# YOUR CODE GOES HERE | |
class Person | |
attr_accessor :first_name, :last_name | |
def initialize(first_name="", last_name="") |
// === Arrays | |
var [a, b] = [1, 2]; | |
console.log(a, b); | |
//=> 1 2 | |
// Use from functions, only select from pattern | |
var foo = () => [1, 2, 3]; |
import numpy as np | |
from keras.models import Sequential | |
from keras.layers.core import Activation, Dense | |
from keras.optimizers import SGD | |
X = np.array([[0,0],[0,1],[1,0],[1,1]], "float32") | |
y = np.array([[0],[1],[1],[0]], "float32") | |
model = Sequential() | |
model.add(Dense(2, input_dim=2, activation='sigmoid')) |
require 'oat/adapters/hal' | |
class BooticAdapter < Oat::Adapters::HAL | |
def type(*types) | |
property :_class, *types | |
end | |
def curie(link_opts) | |
data[:_links][:curies] ||= [] | |
data[:_links][:curies] << link_opts | |
end |