I hereby claim:
- I am yinleon on github.
- I am leonleon (https://keybase.io/leonleon) on keybase.
- I have a public key ASD5y56XsVBxKct1HzreWZgFR0TuM59fIbcWfreau0am_Ao
To claim this, I am signing this object:
[ | |
{ | |
"index": "0", | |
"lon": "31.4", | |
"lat": "81.27", | |
"month": "7", | |
"year": "1987", | |
"depth": "3.0", | |
"temp": "-1.66", | |
"sal": "34.09", |
[ | |
{ | |
"lat": -89, | |
"lon": -180, | |
"d18o": -1.0000000150474662e+30 | |
}, | |
{ | |
"lat": -89, | |
"lon": -179, | |
"d18o": -1.0000000150474662e+30 |
<!DOCTYPE html> | |
<meta charset="utf-8"> | |
<style> | |
.links line { | |
stroke: #999; | |
stroke-opacity: 0.6; | |
} | |
.nodes circle { |
{"contributors": null, | |
"coordinates": null, | |
"created_at": "Thu Jan 19 16:14:30 +0000 2017", | |
"entities": {"hashtags": [{"indices": [66, 66], "text": "<OBFUSCATED>"}, | |
{"indices": [66, 66], "text": "<OBFUSCATED>"}], | |
"symbols": [], | |
"urls": [], | |
"user_mentions": [{"id": 666, | |
"id_str": "<OBFUSCATED>", | |
"indices": [66, 66], |
{ | |
"entities": { | |
"symbols": [], | |
"hashtags": [ | |
{ | |
"indices": [ | |
66, | |
66 | |
], | |
"text": "<OBFUSCATED>" |
{ | |
"favorite_count": 666, | |
"lang": "en", | |
"coordinates": null, | |
"quoted_status": { | |
"favorite_count": 666, | |
"lang": "en", | |
"coordinates": null, | |
"extended_tweet": { | |
"display_text_range": [ |
I hereby claim:
To claim this, I am signing this object:
def get_all_keys(d, key=[]): | |
''' | |
A recursive function that traverses json keys in a dict `d`, | |
and prints the path to all keys | |
''' | |
if not isinstance(d, dict): | |
print(''.join(['["' + k + '"]' for k in key])) | |
return | |
for k, v in d.items(): |
from multiprocessing import Pool | |
from tqdm import tqdm | |
import pandas as pd | |
# def file_parser_func(fn : str): | |
# return pd.read_csv(fn).to_dict('records') | |
# files = ['a.csv', 'b.csv'] | |
data = [] | |
with Pool(processes=8) as pool: |
from PIL import Image | |
import matplotlib.pyplot as plt | |
import numpy as np | |
img_width, img_height = 400, 300 | |
def resize_img_to_array(img, img_shape=(244, 244)): | |
img_array = np.array( | |
img.resize( | |
img_shape, |