IO Tools (Text, CSV, HDF5, ...)¶
The pandas I/O API is a set of top level reader functions accessed like pd.read_csv() that generally return a pandas
object.
- read_csv
- read_excel
- read_hdf
- read_sql
- read_json
- read_msgpack (experimental)
- read_html
- read_gbq (experimental)
- read_stata
- read_sas
- read_clipboard
- read_pickle
The corresponding writer functions are object methods that are accessed like df.to_csv()
Here is an informal performance comparison for some of these IO methods.
Note
For examples that use the StringIO class, make sure you import it
according to your Python version, i.e. from StringIO import StringIO for
Python 2 and from io import StringIO for Python 3.
CSV & Text files¶
The two workhorse functions for reading text files (a.k.a. flat files) are
read_csv() and read_table(). They both use the same parsing code to
intelligently convert tabular data into a DataFrame object. See the
cookbook for some advanced strategies.
Parsing options¶
read_csv() and read_table() accept the following arguments:
Basic¶
- filepath_or_buffer : various
- Either a path to a file (a
python:str,python:pathlib.Path, orpy:py._path.local.LocalPath), URL (including http, ftp, and S3 locations), or any object with aread()method (such as an open file orStringIO). - sep : str, defaults to
','forread_csv(),\tforread_table() - Delimiter to use. If sep is
None, will try to automatically determine this. Separators longer than 1 character and different from'\s+'will be interpreted as regular expressions, will force use of the python parsing engine and will ignore quotes in the data. Regex example:'\\r\\t'. - delimiter : str, default
None - Alternative argument name for sep.
- delim_whitespace : boolean, default False
Specifies whether or not whitespace (e.g.
' 'or'\t') will be used as the delimiter. Equivalent to settingsep='\s+'. If this option is set to True, nothing should be passed in for thedelimiterparameter.New in version 0.18.1: support for the Python parser.
Column and Index Locations and Names¶
- header : int or list of ints, default
'infer' - Row number(s) to use as the column names, and the start of the data. Default
behavior is as if
header=0if nonamespassed, otherwise as ifheader=None. Explicitly passheader=0to be able to replace existing names. The header can be a list of ints that specify row locations for a multi-index on the columns e.g.[0,1,3]. Intervening rows that are not specified will be skipped (e.g. 2 in this example is skipped). Note that this parameter ignores commented lines and empty lines ifskip_blank_lines=True, so header=0 denotes the first line of data rather than the first line of the file. - names : array-like, default
None - List of column names to use. If file contains no header row, then you should
explicitly pass
header=None. Duplicates in this list are not allowed unlessmangle_dupe_cols=True, which is the default. - index_col : int or sequence or
False, defaultNone - Column to use as the row labels of the DataFrame. If a sequence is given, a
MultiIndex is used. If you have a malformed file with delimiters at the end of
each line, you might consider
index_col=Falseto force pandas to not use the first column as the index (row names). - usecols : array-like, default
None - Return a subset of the columns. All elements in this array must either be positional (i.e. integer indices into the document columns) or strings that correspond to column names provided either by the user in names or inferred from the document header row(s). For example, a valid usecols parameter would be [0, 1, 2] or [‘foo’, ‘bar’, ‘baz’]. Using this parameter results in much faster parsing time and lower memory usage.
- as_recarray : boolean, default
False DEPRECATED: this argument will be removed in a future version. Please call
pd.read_csv(...).to_records()instead.Return a NumPy recarray instead of a DataFrame after parsing the data. If set to
True, this option takes precedence over thesqueezeparameter. In addition, as row indices are not available in such a format, theindex_colparameter will be ignored.- squeeze : boolean, default
False - If the parsed data only contains one column then return a Series.
- prefix : str, default
None - Prefix to add to column numbers when no header, e.g. ‘X’ for X0, X1, ...
- mangle_dupe_cols : boolean, default
True - Duplicate columns will be specified as ‘X.0’...’X.N’, rather than ‘X’...’X’. Passing in False will cause data to be overwritten if there are duplicate names in the columns.
General Parsing Configuration¶
- dtype : Type name or dict of column -> type, default
None - Data type for data or columns. E.g.
{'a': np.float64, 'b': np.int32}(unsupported withengine='python'). Use str or object to preserve and not interpret dtype. - engine : {
'c','python'} - Parser engine to use. The C engine is faster while the python engine is currently more feature-complete.
- converters : dict, default
None - Dict of functions for converting values in certain columns. Keys can either be integers or column labels.
- true_values : list, default
None - Values to consider as
True. - false_values : list, default
None - Values to consider as
False. - skipinitialspace : boolean, default
False - Skip spaces after delimiter.
- skiprows : list-like or integer, default
None - Line numbers to skip (0-indexed) or number of lines to skip (int) at the start of the file.
- skipfooter : int, default
0 - Number of lines at bottom of file to skip (unsupported with engine=’c’).
- skip_footer : int, default
0 - DEPRECATED: use the
skipfooterparameter instead, as they are identical - nrows : int, default
None - Number of rows of file to read. Useful for reading pieces of large files.
- low_memory : boolean, default
True - Internally process the file in chunks, resulting in lower memory use
while parsing, but possibly mixed type inference. To ensure no mixed
types either set
False, or specify the type with thedtypeparameter. Note that the entire file is read into a single DataFrame regardless, use thechunksizeoriteratorparameter to return the data in chunks. (Only valid with C parser) - buffer_lines : int, default None
- DEPRECATED: this argument will be removed in a future version because its value is not respected by the parser
- compact_ints : boolean, default False
DEPRECATED: this argument will be removed in a future version
If
compact_intsisTrue, then for any column that is of integer dtype, the parser will attempt to cast it as the smallest integerdtypepossible, either signed or unsigned depending on the specification from theuse_unsignedparameter.- use_unsigned : boolean, default False
DEPRECATED: this argument will be removed in a future version
If integer columns are being compacted (i.e.
compact_ints=True), specify whether the column should be compacted to the smallest signed or unsigned integer dtype.- memory_map : boolean, default False
- If a filepath is provided for
filepath_or_buffer, map the file object directly onto memory and access the data directly from there. Using this option can improve performance because there is no longer any I/O overhead.
NA and Missing Data Handling¶
- na_values : scalar, str, list-like, or dict, default
None - Additional strings to recognize as NA/NaN. If dict passed, specific per-column
NA values. By default the following values are interpreted as NaN:
'-1.#IND', '1.#QNAN', '1.#IND', '-1.#QNAN', '#N/A N/A', '#N/A', 'N/A', 'NA', '#NA', 'NULL', 'NaN', '-NaN', 'nan', '-nan', ''. - keep_default_na : boolean, default
True - If na_values are specified and keep_default_na is
Falsethe default NaN values are overridden, otherwise they’re appended to. - na_filter : boolean, default
True - Detect missing value markers (empty strings and the value of na_values). In
data without any NAs, passing
na_filter=Falsecan improve the performance of reading a large file. - verbose : boolean, default
False - Indicate number of NA values placed in non-numeric columns.
- skip_blank_lines : boolean, default
True - If
True, skip over blank lines rather than interpreting as NaN values.
Datetime Handling¶
- parse_dates : boolean or list of ints or names or list of lists or dict, default
False. - If
True-> try parsing the index. - If
[1, 2, 3]-> try parsing columns 1, 2, 3 each as a separate date column. - If
[[1, 3]]-> combine columns 1 and 3 and parse as a single date column. - If
{'foo' : [1, 3]}-> parse columns 1, 3 as date and call result ‘foo’. A fast-path exists for iso8601-formatted dates.
- If
- infer_datetime_format : boolean, default
False - If
Trueand parse_dates is enabled for a column, attempt to infer the datetime format to speed up the processing. - keep_date_col : boolean, default
False - If
Trueand parse_dates specifies combining multiple columns then keep the original columns. - date_parser : function, default
None - Function to use for converting a sequence of string columns to an array of
datetime instances. The default uses
dateutil.parser.parserto do the conversion. Pandas will try to call date_parser in three different ways, advancing to the next if an exception occurs: 1) Pass one or more arrays (as defined by parse_dates) as arguments; 2) concatenate (row-wise) the string values from the columns defined by parse_dates into a single array and pass that; and 3) call date_parser once for each row using one or more strings (corresponding to the columns defined by parse_dates) as arguments. - dayfirst : boolean, default
False - DD/MM format dates, international and European format.
Iteration¶
- iterator : boolean, default
False - Return TextFileReader object for iteration or getting chunks with
get_chunk(). - chunksize : int, default
None - Return TextFileReader object for iteration. See iterating and chunking below.
Quoting, Compression, and File Format¶
- compression : {
'infer','gzip','bz2','zip','xz',None}, default'infer' For on-the-fly decompression of on-disk data. If ‘infer’, then use gzip, bz2, zip, or xz if filepath_or_buffer is a string ending in ‘.gz’, ‘.bz2’, ‘.zip’, or ‘.xz’, respectively, and no decompression otherwise. If using ‘zip’, the ZIP file must contain only one data file to be read in. Set to
Nonefor no decompression.New in version 0.18.1: support for ‘zip’ and ‘xz’ compression.
- thousands : str, default
None - Thousands separator.
- decimal : str, default
'.' - Character to recognize as decimal point. E.g. use
','for European data. - float_precision : string, default None
- Specifies which converter the C engine should use for floating-point values.
The options are
Nonefor the ordinary converter,highfor the high-precision converter, andround_tripfor the round-trip converter. - lineterminator : str (length 1), default
None - Character to break file into lines. Only valid with C parser.
- quotechar : str (length 1)
- The character used to denote the start and end of a quoted item. Quoted items can include the delimiter and it will be ignored.
- quoting : int or
csv.QUOTE_*instance, default0 - Control field quoting behavior per
csv.QUOTE_*constants. Use one ofQUOTE_MINIMAL(0),QUOTE_ALL(1),QUOTE_NONNUMERIC(2) orQUOTE_NONE(3). - doublequote : boolean, default
True - When
quotecharis specified andquotingis notQUOTE_NONE, indicate whether or not to interpret two consecutivequotecharelements inside a field as a singlequotecharelement. - escapechar : str (length 1), default
None - One-character string used to escape delimiter when quoting is
QUOTE_NONE. - comment : str, default
None - Indicates remainder of line should not be parsed. If found at the beginning of
a line, the line will be ignored altogether. This parameter must be a single
character. Like empty lines (as long as
skip_blank_lines=True), fully commented lines are ignored by the parameter header but not by skiprows. For example, ifcomment='#', parsing ‘#empty\na,b,c\n1,2,3’ with header=0 will result in ‘a,b,c’ being treated as the header. - encoding : str, default
None - Encoding to use for UTF when reading/writing (e.g.
'utf-8'). List of Python standard encodings. - dialect : str or
python:csv.Dialectinstance, defaultNone - If
Nonedefaults to Excel dialect. Ignored if sep longer than 1 char. Seepython:csv.Dialectdocumentation for more details. - tupleize_cols : boolean, default
False - Leave a list of tuples on columns as is (default is to convert to a MultiIndex on the columns).
Error Handling¶
- error_bad_lines : boolean, default
True - Lines with too many fields (e.g. a csv line with too many commas) will by
default cause an exception to be raised, and no DataFrame will be returned. If
False, then these “bad lines” will dropped from the DataFrame that is returned (only valid with C parser). See bad lines below. - warn_bad_lines : boolean, default
True - If error_bad_lines is
False, and warn_bad_lines isTrue, a warning for each “bad line” will be output (only valid with C parser).
Consider a typical CSV file containing, in this case, some time series data:
In [1]: print(open('foo.csv').read())
date,A,B,C
20090101,a,1,2
20090102,b,3,4
20090103,c,4,5
The default for read_csv is to create a DataFrame with simple numbered rows:
In [2]: pd.read_csv('foo.csv')
Out[2]:
date A B C
0 20090101 a 1 2
1 20090102 b 3 4
2 20090103 c 4 5
In the case of indexed data, you can pass the column number or column name you wish to use as the index:
In [3]: pd.read_csv('foo.csv', index_col=0)
Out[3]:
A B C
date
20090101 a 1 2
20090102 b 3 4
20090103 c 4 5
In [4]: pd.read_csv('foo.csv', index_col='date')
Out[4]:
A B C
date
20090101 a 1 2
20090102 b 3 4
20090103 c 4 5
You can also use a list of columns to create a hierarchical index:
In [5]: pd.read_csv('foo.csv', index_col=[0, 'A'])
Out[5]:
B C
date A
20090101 a 1 2
20090102 b 3 4
20090103 c 4 5
The dialect keyword gives greater flexibility in specifying the file format.
By default it uses the Excel dialect but you can specify either the dialect name
or a python:csv.Dialect instance.
Suppose you had data with unenclosed quotes:
In [6]: print(data)
label1,label2,label3
index1,"a,c,e
index2,b,d,f
By default, read_csv uses the Excel dialect and treats the double quote as
the quote character, which causes it to fail when it finds a newline before it
finds the closing double quote.
We can get around this using dialect
In [7]: dia = csv.excel()
In [8]: dia.quoting = csv.QUOTE_NONE
In [9]: pd.read_csv(StringIO(data), dialect=dia)
Out[9]:
label1 label2 label3
index1 "a c e
index2 b d f
All of the dialect options can be specified separately by keyword arguments:
In [10]: data = 'a,b,c~1,2,3~4,5,6'
In [11]: pd.read_csv(StringIO(data), lineterminator='~')
Out[11]:
a b c
0 1 2 3
1 4 5 6
Another common dialect option is skipinitialspace, to skip any whitespace
after a delimiter:
In [12]: data = 'a, b, c\n1, 2, 3\n4, 5, 6'
In [13]: print(data)
a, b, c
1, 2, 3
4, 5, 6
In [14]: pd.read_csv(StringIO(data), skipinitialspace=True)