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python - Pandas convert float in scientific notation to string

I used read_csv() to load a dataset that looks like this

userid
NaN
1.091178e+11
1.137856e+11

I want to convert the user ids to string. One solution is to add keep_default_na=False to read_csv(), which is suggested by this SO: Converting long integers to strings in pandas (to avoid scientific notation)

Let's say I don't want to use keep_default_na=False. Is there any way to convert the user id column to str.

I tried df.userid.astype(str) and I got 1.091178e+11 back. I was expecting the result in the expanded form not scientific form.

What should I do?

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1 Answer

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You can use map or apply, as mentioned in this comment:

print (df.userid.map(lambda x: '{:.0f}'.format(x)))
0             nan
1    109117800000
2    113785600000
Name: userid, dtype: object

df.userid = df.userid.map(lambda x: '{:.0f}'.format(x))
print (df)
         userid
0           nan
1  109117800000
2  113785600000

I wondered whether map would be faster, but it is the same:

#[300000 rows x 1 columns]
df = pd.concat([df]*100000).reset_index(drop=True)
#print (df)

In [40]: %timeit (df.userid.map(lambda x: '{:.0f}'.format(x)))
1 loop, best of 3: 211 ms per loop

In [41]: %timeit (df.userid.apply(lambda x: '{:.0f}'.format(x)))
1 loop, best of 3: 210 ms per loop

Another solution is to_string, but it is slow:

print(df.userid.to_string(float_format='{:.0f}'.format))
0            nan
1   109117800000
2   113785600000

In [41]: (df.userid.to_string(float_format='{:.0f}'.format))
1 loop, best of 3: 2.52 s per loop

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