Reputation: 6122
I'm using Pandas to read a bunch of CSVs. Passing an options json to dtype parameter to tell pandas which columns to read as string instead of the default:
dtype_dic= { 'service_id':str, 'end_date':str, ... }
feedArray = pd.read_csv(feedfile , dtype = dtype_dic)
In my scenario, all the columns except a few specific ones are to be read as strings. So instead of defining several columns as str in dtype_dic
, I'd like to set just my chosen few as int or float. Is there a way to do that?
It's a loop cycling through various CSVs with differing columns, so a direct column conversion after having read the whole csv as string (dtype=str
), would not be easy as I would not immediately know which columns that csv is having. (I'd rather spend that effort in defining all the columns in the dtype json!)
Edit: But if there's a way to process the list of column names to be converted to number without erroring out if that column isn't present in that csv, then yes that'll be a valid solution, if there's no other way to do this at csv reading stage itself.
Note: this sounds like a previously asked question but the answers there went down a very different path (bool related) which doesn't apply to this question. Pls don't mark as duplicate!
Upvotes: 132
Views: 278553
Reputation: 10326
For Pandas 1.5.0+, there's an easy way to do this. If you use a defaultdict
instead of a normal dict
for the dtype
argument, any columns which aren't explicitly listed in the dictionary will use the default as their type. E.g.
from collections import defaultdict
types = defaultdict(lambda: str, A="int", B="float")
df = pd.read_csv("/path/to/file.csv", dtype=types, keep_default_na=False)
(I haven't tested this, but I assume you still need keep_default_na=False
)
For older versions of Pandas:
You can read the entire csv as strings then convert your desired columns to other types afterwards like this:
df = pd.read_csv('/path/to/file.csv', dtype=str, keep_default_na=False)
# example df; yours will be from pd.read_csv() above
df = pd.DataFrame({'A': ['1', '3', '5'], 'B': ['2', '4', '6'], 'C': ['x', 'y', 'z']})
types_dict = {'A': int, 'B': float}
for col, col_type in types_dict.items():
df[col] = df[col].astype(col_type)
keep_default_na=False
is necessary if some of the columns are empty strings or something like NA
which pandas convert to NA
of type float
by default, which would make you end up with a mixed datatype of str
/float
Another approach, if you really want to specify the proper types for all columns when reading the file in and not change them after: read in just the column names (no rows), then use those to fill in which columns should be strings
col_names = pd.read_csv('file.csv', nrows=0).columns
types_dict = {'A': int, 'B': float}
types_dict.update({col: str for col in col_names if col not in types_dict})
pd.read_csv('file.csv', dtype=types_dict)
Upvotes: 178
Reputation: 120519
The accepted answer was updated on February 7, 2023 to introduce the defauldict
functionality of the dtype
parameter. However this answer cannot work.
from collections import defaultdict
types = defaultdict(str, A="int", B="float")
df = pd.read_csv("/path/to/file.csv", dtype=types, keep_default_na=False)
...
TypeError: data type '' not understood
Indeed, the first parameter of defaultdict
is a callable to create the default entry so:
>>> (str)()
''
But ''
is not a valid type unlike:
>>> (lambda:str)()
str
So the correct answer should be:
from collections import defaultdict
types = defaultdict(lambda: str, A="int", B="float")
df = pd.read_csv("/path/to/file.csv", dtype=types, keep_default_na=False)
Example:
>>> df
A B C D
0 1 2.0 hello world
1 3 4.0 hello world
>>> df.dtypes
A int64
B float64
C object
D object
dtype:object
Edit: As suggested by @DaniilFajnberg, you can also use lambda: 'string'
to use Pandas dtypes as a string:
>>> df.dtypes
A int64
B float64
C string[python]
D string[python]
dtype: object
Upvotes: 9
Reputation: 88
Extending on @MECoskun's answer using converters and simultaneously striping leading and trailing white spaces, making converters more versatile:
df = pd.read_csv('data.csv', dtype = 'float64', converters = {'A': str.strip, 'B': str.strip})
There is also lstrip and rstrip that could be used if needed instead of strip. Note, do not use strip() but just strip. Of course, you do not strip non strings.
Upvotes: 3
Reputation: 1285
You can do the following:
pd.read_csv(self._LOCAL_FILE_PATH,
index_col=0,
encoding="utf-8",
dtype={
'customer_id': 'int32',
'product_id': 'int32',
'subcategory_id': 'int16',
'category_id': 'int16',
'gender': 'int8',
'views': 'int8',
'purchased': 'int8',
'added': 'int8',
'time_on_page': 'float16',
})
Upvotes: 7
Reputation: 909
I recently encountered the same issue, though I only have one csv file so I don't need to loop over files. I think this solution can be adapted into a loop as well.
Here I present a solution I used. Pandas' read_csv
has a parameter called converters
which overrides dtype
, so you may take advantage of this feature.
An example code is as follows:
Assume that our data.csv
file contains all float64 columns except A
and B
which are string columns. You may read this file using:
df = pd.read_csv('data.csv', dtype = 'float64', converters = {'A': str, 'B': str})
The code gives warnings that converters override dtypes for these two columns A and B, and the result is as desired.
Regarding looping over several csv files all one needs to do is to figure out which columns will be exceptions to put in converters. This is easy if files have a similar pattern of column names, otherwise, it would get tedious.
Upvotes: 51