Transforming letters into 0 in pandas - python

I am a very beginner in Python Pandas.
I have a Data set with wrongly types postal codes : last characters are random letters.
How can I transform these letters into 0 ?
I tried this but obviously the whole postal code turns out to a 0 :
if data["CODE_POSTAL_PATIENT"].str.isalpha:
df1 = data["CODE_POSTAL_PATIENT"].transform(lambda x: 0)
Thanks in advance !

Assuming you have zip codes like '12XY#' and want to change to '12000', use a regex to match the non digits and replace them with "0" using str.replace:
df['CODE_POSTAL_CORRECTED'] = df['CODE_POSTAL'].str.replace('\D', '0', regex=True)
output:
CODE_POSTAL CODE_POSTAL_CORRECTED
0 12345 12345
1 12XY# 12000
regex:
\D # match a non digit

Use:
df = pd.DataFrame({'CODE_POSTAL_PATIENT': ['abcdr', 'efghr']})
df['0'] = ['0' for i in range(len(df))]
df['new'] = df['CODE_POSTAL_PATIENT'].str[:-1]+df['0']
Output:

Replace everything except digits
df['CODE_POSTAL'].str.replace('[^\d]','0',regex=True)

Related

extracting a string from between to strings in dataframe

im trying to extract a value from my data frame
i have a column ['Desc'] it contains sentences in the folowing format
_000it_ZZZ$$$-
_0780it_ZBZT$$$-
_011it_BB$$$-
_000it_CCCC$$$-
I want to extract the string between 'it_' and '$$$'
I have tried this code but does not seem to work
# initializing substrings
sub1 = "it_"
sub2 = "$$$"
# getting index of substrings
idx1 = df['DESC'].find(sub1)
idx2 = df['DESC'].find(sub2)
# length of substring 1 is added to
# get string from next character
df['results'] = df['DESC'][idx1 + len(sub1) + 1: idx2]
I would appreciate your help
You can use str.extract to get the desired output in your new column.
import pandas as pd
import re
df = pd.DataFrame({
'DESC' : ["_000it_ZZZ$$$-", "_0780it_ZBZT$$$-", "_011it_BB$$$-", "_000it_CCCC$$$-", "_000it_123$$$-"]
})
pat = r"(?<=it_)(.+)(?=[\$]{3}-)"
df['results'] = df['DESC'].str.extract(pat)
print(df)
DESC results
0 _000it_ZZZ$$$- ZZZ
1 _0780it_ZBZT$$$- ZBZT
2 _011it_BB$$$- BB
3 _000it_CCCC$$$- CCCC
4 _000it_123$$$- 123
You can see the regex pattern on Regex101 for more details.
You could try using a regex pattern. It matches your cases you listed here, but I can't guarantee that it will generalize to all possible patterns.
import re
string = "_000it_ZZZ$$$-"
p = re.compile(r"(?<=it_)(.*)(?<!\W)")
m = p.findall(string)
print(m) # ['_ZZZ']
The pattern looks for it in the string and then stops untill it meets a non-word character.

Regex replace first two letters within column in python

I have a dataframe such as
COL1
A_element_1_+_none
C_BLOCA_element
D_element_3
element_'
BasaA_bloc
B_basA_bloc
BbasA_bloc
and I would like to remove the first 2 letters within each row of COL1 only if they are within that list :
the_list =['A_','B_','C_','D_']
Then I should get the following output:
COL1
element_1_+_none
BLOCA_element
element_3
element_'
BasaA_bloc
basA_bloc
BbasA_bloc
So far I tried the following :
df['COL1']=df['COL1'].str.replace("A_","")
df['COL1']=df['COL1'].str.replace("B_","")
df['COL1']=df['COL1'].str.replace("C_","")
df['COL1']=df['COL1'].str.replace("D_","")
But it also remove the pattern such as in row2 A_ and does not remove only the first 2 letters...
If the values to replace in the_list always have that format, you could also consider using str.replace with a simple pattern matching an uppercase char A-D followed by an underscore at the start of the string ^[A-D]_
import pandas as pd
strings = [
"A_element_1_+_none ",
"C_BLOCA_element ",
"D_element_3",
"element_'",
"BasaA_bloc",
"B_basA_bloc",
"BbasA_bloc"
]
df = pd.DataFrame(strings, columns=["COL1"])
df['COL1'] = df['COL1'].str.replace(r"^[A-D]_", "")
print(df)
Output
COL1
0 element_1_+_none
1 BLOCA_element
2 element_3
3 element_'
4 BasaA_bloc
5 basA_bloc
6 BbasA_bloc
You can also use apply() function from pandas. So if the string is with the concerned patterns, we ommit the two first caracters else return the whole string.
d["COL1"] = d["COL1"].apply(lambda x: x[2:] if x.startswith(("A_","B_","C_","D_")) else x)

Python dataframe : strip part of string, on each column row, if it is in specific format [duplicate]

I have read some pricing data into a pandas dataframe the values appear as:
$40,000*
$40000 conditions attached
I want to strip it down to just the numeric values.
I know I can loop through and apply regex
[0-9]+
to each field then join the resulting list back together but is there a not loopy way?
Thanks
You could use Series.str.replace:
import pandas as pd
df = pd.DataFrame(['$40,000*','$40000 conditions attached'], columns=['P'])
print(df)
# P
# 0 $40,000*
# 1 $40000 conditions attached
df['P'] = df['P'].str.replace(r'\D+', '', regex=True).astype('int')
print(df)
yields
P
0 40000
1 40000
since \D matches any character that is not a decimal digit.
You could use pandas' replace method; also you may want to keep the thousands separator ',' and the decimal place separator '.'
import pandas as pd
df = pd.DataFrame(['$40,000.32*','$40000 conditions attached'], columns=['pricing'])
df['pricing'].replace(to_replace="\$([0-9,\.]+).*", value=r"\1", regex=True, inplace=True)
print(df)
pricing
0 40,000.32
1 40000
You could remove all the non-digits using re.sub():
value = re.sub(r"[^0-9]+", "", value)
regex101 demo
You don't need regex for this. This should work:
df['col'] = df['col'].astype(str).convert_objects(convert_numeric=True)
In case anyone is still reading this. I'm working on a similar problem and need to replace an entire column of pandas data using a regex equation I've figured out with re.sub
To apply this on my entire column, here's the code.
#add_map is rules of replacement for the strings in pd df.
add_map = dict([
("AV", "Avenue"),
("BV", "Boulevard"),
("BP", "Bypass"),
("BY", "Bypass"),
("CL", "Circle"),
("DR", "Drive"),
("LA", "Lane"),
("PY", "Parkway"),
("RD", "Road"),
("ST", "Street"),
("WY", "Way"),
("TR", "Trail"),
])
obj = data_909['Address'].copy() #data_909['Address'] contains the original address'
for k,v in add_map.items(): #based on the rules in the dict
rule1 = (r"(\b)(%s)(\b)" % k) #replace the k only if they're alone (lookup \
b)
rule2 = (lambda m: add_map.get(m.group(), m.group())) #found this online, no idea wtf this does but it works
obj = obj.str.replace(rule1, rule2, regex=True, flags=re.IGNORECASE) #use flags here to avoid the dictionary iteration problem
data_909['Address_n'] = obj #store it!
Hope this helps anyone searching for the problem I had. Cheers

Pandas DataFrame - Extract string between two strings and include the first delimiter

I've the following strings in column on a dataframe:
"LOCATION: FILE-ABC.txt"
"DRAFT-1-FILENAME-ADBCD.txt"
And I want to extract everything that is between the word FILE and the ".". But I want to include the first delimiter. Basically I am trying to return the following result:
"FILE-ABC"
"FILENAME-ABCD"
For that I am using the script below:
df['field'] = df.string_value.str.extract('FILE/(.w+)')
But I am not able to return the desired information (always getting NA).
How can I do this?
you can accomplish this all within the regex without having to use string slicing.
df['field'] = df.string_value.str.extract('(FILE.*(?=.txt))')
FILE is the what we begin the match on
.* grabs any number of characters
(?=) is a lookahead assertion that matches without
consuming.
Handy regex tool https://pythex.org/
If the strings will always end in .txt then you can try with the following:
df['field'] = df['string_value'].str.extract('(FILE.*)')[0].str[:-4]
Example:
import pandas as pd
text = ["LOCATION: FILE-ABC.txt","DRAFT-1-FILENAME-ADBCD.txt"]
data = {'index':[0,1],'string_value':text}
df = pd.DataFrame(data)
df['field'] = df['string_value'].str.extract('(FILE.*)')[0].str[:-4]
Output:
index string_value field
0 0 LOCATION: FILE-ABC.txt FILE-ABC
1 1 DRAFT-1-FILENAME-ADBCD.txt FILENAME-ADBCD
You can make a capturing group that captures from (including) 'FILE' greedily to the last period. Or you can make it not greedy so it stops at the first . after FILE.
import pandas as pd
df = pd.DataFrame({'string_value': ["LOCATION: FILE-ABC.txt", "DRAFT-1-FILENAME-ADBCD.txt",
"BADFILENAME.foo.txt"]})
df['field_greedy'] = df['string_value'].str.extract('(FILE.*)\.')
df['field_not_greedy'] = df['string_value'].str.extract('(FILE.*?)\.')
print(df)
string_value field_greedy field_not_greedy
0 LOCATION: FILE-ABC.txt FILE-ABC FILE-ABC
1 DRAFT-1-FILENAME-ADBCD.txt FILENAME-ADBCD FILENAME-ADBCD
2 BADFILENAME.foo.txt FILENAME.foo FILENAME

pandas applying regex to replace values

I have read some pricing data into a pandas dataframe the values appear as:
$40,000*
$40000 conditions attached
I want to strip it down to just the numeric values.
I know I can loop through and apply regex
[0-9]+
to each field then join the resulting list back together but is there a not loopy way?
Thanks
You could use Series.str.replace:
import pandas as pd
df = pd.DataFrame(['$40,000*','$40000 conditions attached'], columns=['P'])
print(df)
# P
# 0 $40,000*
# 1 $40000 conditions attached
df['P'] = df['P'].str.replace(r'\D+', '', regex=True).astype('int')
print(df)
yields
P
0 40000
1 40000
since \D matches any character that is not a decimal digit.
You could use pandas' replace method; also you may want to keep the thousands separator ',' and the decimal place separator '.'
import pandas as pd
df = pd.DataFrame(['$40,000.32*','$40000 conditions attached'], columns=['pricing'])
df['pricing'].replace(to_replace="\$([0-9,\.]+).*", value=r"\1", regex=True, inplace=True)
print(df)
pricing
0 40,000.32
1 40000
You could remove all the non-digits using re.sub():
value = re.sub(r"[^0-9]+", "", value)
regex101 demo
You don't need regex for this. This should work:
df['col'] = df['col'].astype(str).convert_objects(convert_numeric=True)
In case anyone is still reading this. I'm working on a similar problem and need to replace an entire column of pandas data using a regex equation I've figured out with re.sub
To apply this on my entire column, here's the code.
#add_map is rules of replacement for the strings in pd df.
add_map = dict([
("AV", "Avenue"),
("BV", "Boulevard"),
("BP", "Bypass"),
("BY", "Bypass"),
("CL", "Circle"),
("DR", "Drive"),
("LA", "Lane"),
("PY", "Parkway"),
("RD", "Road"),
("ST", "Street"),
("WY", "Way"),
("TR", "Trail"),
])
obj = data_909['Address'].copy() #data_909['Address'] contains the original address'
for k,v in add_map.items(): #based on the rules in the dict
rule1 = (r"(\b)(%s)(\b)" % k) #replace the k only if they're alone (lookup \
b)
rule2 = (lambda m: add_map.get(m.group(), m.group())) #found this online, no idea wtf this does but it works
obj = obj.str.replace(rule1, rule2, regex=True, flags=re.IGNORECASE) #use flags here to avoid the dictionary iteration problem
data_909['Address_n'] = obj #store it!
Hope this helps anyone searching for the problem I had. Cheers

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