405

When calling

df = pd.read_csv('somefile.csv')

I get:

/Users/josh/anaconda/envs/py27/lib/python2.7/site-packages/pandas/io/parsers.py:1130: DtypeWarning: Columns (4,5,7,16) have mixed types. Specify dtype option on import or set low_memory=False.

Why is the dtype option related to low_memory, and why would making it False help with this problem?

3
  • 4
    I have a question about this warning. Is the index of the columns mentioned 0-based? For example column 4 which has a mixed type, is that df[:,4] or df[:,3] – maziar Mar 21 '16 at 19:15
  • 2
    @maziar when reading a csv, by default a new 0-based index is created and used. – firelynx May 24 '17 at 14:19
  • This answer worked for me very well <stackoverflow.com/a/48187106/12079996> – Nikhileswar Komati Jan 4 at 22:38

10 Answers 10

542

The deprecated low_memory option

The low_memory option is not properly deprecated, but it should be, since it does not actually do anything differently[source]

The reason you get this low_memory warning is because guessing dtypes for each column is very memory demanding. Pandas tries to determine what dtype to set by analyzing the data in each column.

Dtype Guessing (very bad)

Pandas can only determine what dtype a column should have once the whole file is read. This means nothing can really be parsed before the whole file is read unless you risk having to change the dtype of that column when you read the last value.

Consider the example of one file which has a column called user_id. It contains 10 million rows where the user_id is always numbers. Since pandas cannot know it is only numbers, it will probably keep it as the original strings until it has read the whole file.

Specifying dtypes (should always be done)

adding

dtype={'user_id': int}

to the pd.read_csv() call will make pandas know when it starts reading the file, that this is only integers.

Also worth noting is that if the last line in the file would have "foobar" written in the user_id column, the loading would crash if the above dtype was specified.

Example of broken data that breaks when dtypes are defined

import pandas as pd
try:
    from StringIO import StringIO
except ImportError:
    from io import StringIO


csvdata = """user_id,username
1,Alice
3,Bob
foobar,Caesar"""
sio = StringIO(csvdata)
pd.read_csv(sio, dtype={"user_id": int, "username": "string"})

ValueError: invalid literal for long() with base 10: 'foobar'

dtypes are typically a numpy thing, read more about them here: http://docs.scipy.org/doc/numpy/reference/generated/numpy.dtype.html

What dtypes exists?

We have access to numpy dtypes: float, int, bool, timedelta64[ns] and datetime64[ns]. Note that the numpy date/time dtypes are not time zone aware.

Pandas extends this set of dtypes with its own:

'datetime64[ns, <tz>]' Which is a time zone aware timestamp.

'category' which is essentially an enum (strings represented by integer keys to save

'period[]' Not to be confused with a timedelta, these objects are actually anchored to specific time periods

'Sparse', 'Sparse[int]', 'Sparse[float]' is for sparse data or 'Data that has a lot of holes in it' Instead of saving the NaN or None in the dataframe it omits the objects, saving space.

'Interval' is a topic of its own but its main use is for indexing. See more here

'Int8', 'Int16', 'Int32', 'Int64', 'UInt8', 'UInt16', 'UInt32', 'UInt64' are all pandas specific integers that are nullable, unlike the numpy variant.

'string' is a specific dtype for working with string data and gives access to the .str attribute on the series.

'boolean' is like the numpy 'bool' but it also supports missing data.

Read the complete reference here:

Pandas dtype reference

Gotchas, caveats, notes

Setting dtype=object will silence the above warning, but will not make it more memory efficient, only process efficient if anything.

Setting dtype=unicode will not do anything, since to numpy, a unicode is represented as object.

Usage of converters

@sparrow correctly points out the usage of converters to avoid pandas blowing up when encountering 'foobar' in a column specified as int. I would like to add that converters are really heavy and inefficient to use in pandas and should be used as a last resort. This is because the read_csv process is a single process.

CSV files can be processed line by line and thus can be processed by multiple converters in parallel more efficiently by simply cutting the file into segments and running multiple processes, something that pandas does not support. But this is a different story.

20
  • 7
    So, given that setting a dtype=object is not more memory efficient, is there any reason to mess with it besides getting rid of the error? – zthomas.nc Aug 31 '16 at 7:09
  • 7
    @zthomas.nc yes, Pandas does not need to bother testing what is in the column. Theoretically saving some memory while loading (but none after loading is complete) and theoretically saving some cpu cycles (which you won't notice since disk I/O will be the bottleneck. – firelynx Sep 1 '16 at 11:22
  • 5
    "Also worth noting is that if the last line in the file would have "foobar" written in the user_id column, the loading would crash if the above dtype was specified." is there some "coerce" option that could be used to throw away this row instead of crashing? – sparrow Sep 1 '16 at 15:33
  • 5
    @sparrow there may be, but last time I used it it had bugs. It may be fixed in the latest version of pandas. error_bad_lines=False, warn_bad_lines=True should do the trick. The documentation says it's only valid with the C parser. It also says the default parser is None which makes it hard to know which one is the default. – firelynx Sep 2 '16 at 6:48
  • 7
    @nealmcb You can read the dataframe with nrows=100 as an argument and then do df.dtypes to see the dtypes you get. However, when reading the whole dataframe with these dtypes, be sure to do a try/except so you catch faulty dtype guesses. Data is dirty you know. – firelynx Dec 19 '16 at 8:17
61

Try:

dashboard_df = pd.read_csv(p_file, sep=',', error_bad_lines=False, index_col=False, dtype='unicode')

According to the pandas documentation:

dtype : Type name or dict of column -> type

As for low_memory, it's True by default and isn't yet documented. I don't think its relevant though. The error message is generic, so you shouldn't need to mess with low_memory anyway. Hope this helps and let me know if you have further problems

2
  • 1
    Adding dtype=unicode produced: NameError: name 'unicode' is not defined. But putting unicode in quotes (as in 'unicode') appears to work! – sedeh Feb 19 '15 at 18:06
  • 5
    @sedeh You can specify dtypes either as python types or as numpy.dtype('unicode'). When you give the dtype option a string, it will try to cast it via the numpy.dtype() factory by default. Specifying 'unicode' will actually not do anything, unicodes are just upcasted to objects. You will get dtype='object' – firelynx Jul 15 '15 at 7:35
49
df = pd.read_csv('somefile.csv', low_memory=False)

This should solve the issue. I got exactly the same error, when reading 1.8M rows from a CSV.

4
  • 69
    This silences the error, but does not actually change anything else. – firelynx Jan 13 '16 at 8:32
  • 3
    I have same problem while running 1.5gb datafile – Sitz Blogz May 25 '17 at 9:14
  • show this error when i tried , C error: out of memory – vampirekabir Feb 3 at 9:06
  • what is low_memory = False doing exactly ? Is it solving the issue or just not showing the error message? – JSVJ Mar 22 at 6:35
20

As mentioned earlier by firelynx if dtype is explicitly specified and there is mixed data that is not compatible with that dtype then loading will crash. I used a converter like this as a workaround to change the values with incompatible data type so that the data could still be loaded.

def conv(val):
    if not val:
        return 0    
    try:
        return np.float64(val)
    except:        
        return np.float64(0)

df = pd.read_csv(csv_file,converters={'COL_A':conv,'COL_B':conv})
5

It worked for me with low_memory = False while importing a DataFrame. That is all the change that worked for me:

df = pd.read_csv('export4_16.csv',low_memory=False)
3

I was facing a similar issue when processing a huge csv file (6 million rows). I had three issues:

  1. the file contained strange characters (fixed using encoding)
  2. the datatype was not specified (fixed using dtype property)
  3. Using the above I still faced an issue which was related with the file_format that could not be defined based on the filename (fixed using try .. except..)
    df = pd.read_csv(csv_file,sep=';', encoding = 'ISO-8859-1',
                     names=['permission','owner_name','group_name','size','ctime','mtime','atime','filename','full_filename'],
                     dtype={'permission':str,'owner_name':str,'group_name':str,'size':str,'ctime':object,'mtime':object,'atime':object,'filename':str,'full_filename':str,'first_date':object,'last_date':object})
    
    try:
        df['file_format'] = [Path(f).suffix[1:] for f in df.filename.tolist()]
    except:
        df['file_format'] = ''
2

I had a similar issue with a ~400MB file. Setting low_memory=False did the trick for me. Do the simple things first,I would check that your dataframe isn't bigger than your system memory, reboot, clear the RAM before proceeding. If you're still running into errors, its worth making sure your .csv file is ok, take a quick look in Excel and make sure there's no obvious corruption. Broken original data can wreak havoc...

1

According to the pandas documentation, specifying low_memory=False as long as the engine='c' (which is the default) is a reasonable solution to this problem.

If low_memory=False, then whole columns will be read in first, and then the proper types determined. For example, the column will be kept as objects (strings) as needed to preserve information.

If low_memory=True (the default), then pandas reads in the data in chunks of rows, then appends them together. Then some of the columns might look like chunks of integers and strings mixed up, depending on whether during the chunk pandas encountered anything that couldn't be cast to integer (say). This could cause problems later. The warning is telling you that this happened at least once in the read in, so you should be careful. Setting low_memory=False will use more memory but will avoid the problem.

Personally, I think low_memory=True is a bad default, but I work in an area that uses many more small datasets than large ones and so convenience is more important than efficiency.

The following code illustrates an example where low_memory=True is set and a column comes in with mixed types. It builds off the answer by @firelynx

import pandas as pd
try:
    from StringIO import StringIO
except ImportError:
    from io import StringIO

# make a big csv data file, following earlier approach by @firelynx
csvdata = """1,Alice
2,Bob
3,Caesar
"""

# we have to replicate the "integer column" user_id many many times to get
# pd.read_csv to actually chunk read. otherwise it just reads 
# the whole thing in one chunk, because it's faster, and we don't get any 
# "mixed dtype" issue. the 100000 below was chosen by experimentation.
csvdatafull = ""
for i in range(100000):
    csvdatafull = csvdatafull + csvdata
csvdatafull =  csvdatafull + "foobar,Cthlulu\n"
csvdatafull = "user_id,username\n" + csvdatafull

sio = StringIO(csvdatafull)
# the following line gives me the warning:
    # C:\Users\rdisa\anaconda3\lib\site-packages\IPython\core\interactiveshell.py:3072: DtypeWarning: Columns (0) have mixed types.Specify dtype option on import or set low_memory=False.
    # interactivity=interactivity, compiler=compiler, result=result)
# but it does not always give me the warning, so i guess the internal workings of read_csv depend on background factors
x = pd.read_csv(sio, low_memory=True) #, dtype={"user_id": int, "username": "string"})

x.dtypes
# this gives:
# Out[69]: 
# user_id     object
# username    object
# dtype: object

type(x['user_id'].iloc[0]) # int
type(x['user_id'].iloc[1]) # int
type(x['user_id'].iloc[2]) # int
type(x['user_id'].iloc[10000]) # int
type(x['user_id'].iloc[299999]) # str !!!! (even though it's a number! so this chunk must have been read in as strings)
type(x['user_id'].iloc[300000]) # str !!!!!

Aside: To give an example where this is a problem (and where I first encountered this as a serious issue), imagine you ran pd.read_csv() on a file then wanted to drop duplicates based on an identifier. Say the identifier is sometimes numeric, sometimes string. One row might be "81287", another might be "97324-32". Still, they are unique identifiers.

With low_memory=True, pandas might read in the identifier column like this:

81287
81287
81287
81287
81287
"81287"
"81287"
"81287"
"81287"
"97324-32"
"97324-32"
"97324-32"
"97324-32"
"97324-32"

Just because it chunks things and so, sometimes the identifier 81287 is a number, sometimes a string. When I try to drop duplicates based on this, well,

81287 == "81287"
Out[98]: False
1

As the error says, you should specify the datatypes when using the read_csv() method. So, you should write

file = pd.read_csv('example.csv', dtype='unicode')
0

Sometimes, when all else fails, you just want to tell pandas to shut up about it:

# Ignore DtypeWarnings from pandas' read_csv                                                                                                                                                                                            
warnings.filterwarnings('ignore', message="^Columns.*")

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.