I want to go through a folder and want to check to which timezone each file in the folder belong to. To that I have a csv file

ip1         ip2           timezone
0           16777215          0
16777216    16777471       +10:00
16777472    16778239       +08:00
16778240    16779263       +11:00
16779264    16781311       +08:00
16781312    16785407       +09:00

When the particular ip_number is between ip1 and ip2, the correlated timezone is in the third column.

df = pd.read_csv('IP2LOCATION-LITE-DB11.csv', parse_dates=True)

result = [i for i in glob.glob('*.{}'.format("csv"))]
for i in result:
    df2 = pd.read_csv("twiceaweek/"+i, parse_dates=True)
    ip_number= 16777216*w + 65536*x + 256*y+1

I have no idea how to range the numbers between ip1 and ip2 and how to merge the ip_number of each file to them and get my timezone. Do you have any ideas?

  • What is result? Do you want to achieve? Please edit for clarification. Otherwise we won't be able to help you. – Amazing Things Around You Jun 12 at 11:55
  • Just edited my post. I want to achieve that I find the right timezone for my ip_number and for that I have find in which range between ip1 and ip2 my ip_number is – Dennis Jun 12 at 11:59
  • Are the numbers in ip1 always larger than those (shifted) in ip2 by 1? – Quang Hoang Jun 12 at 12:05
  • Yes, the first row is valid for all ip_number between 0 and 16777215, the second from 16777216 to 16777471 and so on .. – Dennis Jun 12 at 12:07
  • 1
    df.loc[(df['ip1'] <= ip_number) & (ip_number <= df['ip2']), 'timezone']? – Goyo Jun 12 at 12:44

You want qcut:

thresholds = list(df['ip1']) + [df['ip2'].iloc[-1]]

# test:
ips = df[['ip1', 'ip2']].mean(axis=1).astype(int)

# bucketing
buckets = pd.cut(ips, thresholds,

# get the labels:


array(['0', '+10:00', '+08:00', '+11:00', '+08:00', '+09:00'],

You can use merge_asof. It allows to find the last index less than the search value, which is what you need. So to find the timezone when you have found the ip number, use:

tmp = pd.merge_asof(pd.DataFrame([ip_number], columns=['ip']), df, left_on=['ip'],
tmp = tmp[tmp.ip2>ip_number]
if len(tmp) > 0:
    tz = tmp.at[0, 'timezone']
    tz = ''       # not found

Alternatively, you can use searchsorted:

ix = df['ip2'].searchsorted([ip_number], 'right')[0]
if ix == len(df) or df.at[ix, 'ip1']>ip_number:
    tz = ''        # not found:
    tz = df.at[ix, 'timezone']

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.