pandas.Series¶
-
class
pandas.Series(data=None, index=None, dtype=None, name=None, copy=False, fastpath=False)[source]¶ One-dimensional ndarray with axis labels (including time series).
Labels need not be unique but must be a hashable type. The object supports both integer- and label-based indexing and provides a host of methods for performing operations involving the index. Statistical methods from ndarray have been overridden to automatically exclude missing data (currently represented as NaN).
Operations between Series (+, -, /, , *) align values based on their associated index values– they need not be the same length. The result index will be the sorted union of the two indexes.
- Parameters
- dataarray-like, Iterable, dict, or scalar value
Contains data stored in Series.
Changed in version 0.23.0: If data is a dict, argument order is maintained for Python 3.6 and later.
- indexarray-like or Index (1d)
Values must be hashable and have the same length as data. Non-unique index values are allowed. Will default to RangeIndex (0, 1, 2, …, n) if not provided. If both a dict and index sequence are used, the index will override the keys found in the dict.
- dtypestr, numpy.dtype, or ExtensionDtype, optional
Data type for the output Series. If not specified, this will be inferred from data. See the user guide for more usages.
- namestr, optional
The name to give to the Series.
- copybool, default False
Copy input data.
Attributes
Return the transpose, which is by definition self.
The ExtensionArray of the data backing this Series or Index.
Access a single value for a row/column label pair.
Dictionary of global attributes on this object.
Return a list of the row axis labels.
Return the dtype object of the underlying data.
Return the dtype object of the underlying data.
Return if I have any nans; enables various perf speedups.
Access a single value for a row/column pair by integer position.
Purely integer-location based indexing for selection by position.
The index (axis labels) of the Series.
Return boolean if values in the object are monotonic_increasing.
Return boolean if values in the object are monotonic_decreasing.
Alias for is_monotonic.
Return boolean if values in the object are unique.
Access a group of rows and columns by label(s) or a boolean array.
Return the name of the Series.
Return the number of bytes in the underlying data.
Number of dimensions of the underlying data, by definition 1.
Return a tuple of the shape of the underlying data.
Return the number of elements in the underlying data.
Return Series as ndarray or ndarray-like depending on the dtype.
empty
Methods
abs()Return a Series/DataFrame with absolute numeric value of each element.
add(other[, level, fill_value, axis])Return Addition of series and other, element-wise (binary operator add).
add_prefix(prefix)Prefix labels with string prefix.
add_suffix(suffix)Suffix labels with string suffix.
agg([func, axis])Aggregate using one or more operations over the specified axis.
aggregate([func, axis])Aggregate using one or more operations over the specified axis.
align(other[, join, axis, level, copy, …])Align two objects on their axes with the specified join method.
all([axis, bool_only, skipna, level])Return whether all elements are True, potentially over an axis.
any([axis, bool_only, skipna, level])Return whether any element is True, potentially over an axis.
append(to_append[, ignore_index, …])Concatenate two or more Series.
apply(func[, convert_dtype, args])Invoke function on values of Series.
argmax([axis, skipna])Return int position of the largest value in the Series.
argmin([axis, skipna])Return int position of the smallest value in the Series.
argsort([axis, kind, order])Return the integer indices that would sort the Series values.
asfreq(freq[, method, how, normalize, …])Convert TimeSeries to specified frequency.
asof(where[, subset])Return the last row(s) without any NaNs before where.
astype(dtype[, copy, errors])Cast a pandas object to a specified dtype
dtype.at_time(time[, asof, axis])Select values at particular time of day (e.g., 9:30AM).
autocorr([lag])Compute the lag-N autocorrelation.
backfill([axis, inplace, limit, downcast])Synonym for
DataFrame.fillna()withmethod='bfill'.between(left, right[, inclusive])Return boolean Series equivalent to left <= series <= right.
between_time(start_time, end_time[, …])Select values between particular times of the day (e.g., 9:00-9:30 AM).
bfill([axis, inplace, limit, downcast])Synonym for
DataFrame.fillna()withmethod='bfill'.bool()Return the bool of a single element Series or DataFrame.
alias of
pandas.core.arrays.categorical.CategoricalAccessorclip([lower, upper, axis, inplace])Trim values at input threshold(s).
combine(other, func[, fill_value])Combine the Series with a Series or scalar according to func.
combine_first(other)Combine Series values, choosing the calling Series’s values first.
compare(other[, align_axis, keep_shape, …])Compare to another Series and show the differences.
convert_dtypes([infer_objects, …])Convert columns to best possible dtypes using dtypes supporting
pd.NA.copy([deep])Make a copy of this object’s indices and data.
corr(other[, method, min_periods])Compute correlation with other Series, excluding missing values.
count([level])Return number of non-NA/null observations in the Series.
cov(other[, min_periods, ddof])Compute covariance with Series, excluding missing values.
cummax([axis, skipna])Return cumulative maximum over a DataFrame or Series axis.
cummin([axis, skipna])Return cumulative minimum over a DataFrame or Series axis.
cumprod([axis, skipna])Return cumulative product over a DataFrame or Series axis.
cumsum([axis, skipna])Return cumulative sum over a DataFrame or Series axis.
describe([percentiles, include, exclude, …])Generate descriptive statistics.
diff([periods])First discrete difference of element.
div(other[, level, fill_value, axis])Return Floating division of series and other, element-wise (binary operator truediv).
divide(other[, level, fill_value, axis])Return Floating division of series and other, element-wise (binary operator truediv).
divmod(other[, level, fill_value, axis])Return Integer division and modulo of series and other, element-wise (binary operator divmod).
dot(other)Compute the dot product between the Series and the columns of other.
drop([labels, axis, index, columns, level, …])Return Series with specified index labels removed.
drop_duplicates([keep, inplace])Return Series with duplicate values removed.
droplevel(level[, axis])Return DataFrame with requested index / column level(s) removed.
dropna([axis, inplace, how])Return a new Series with missing values removed.
duplicated([keep])Indicate duplicate Series values.
eq(other[, level, fill_value, axis])Return Equal to of series and other, element-wise (binary operator eq).
equals(other)Test whether two objects contain the same elements.
ewm([com, span, halflife, alpha, …])Provide exponential weighted (EW) functions.
expanding([min_periods, center, axis])Provide expanding transformations.
explode([ignore_index])Transform each element of a list-like to a row.
factorize([sort, na_sentinel])Encode the object as an enumerated type or categorical variable.
ffill([axis, inplace, limit, downcast])Synonym for
DataFrame.fillna()withmethod='ffill'.fillna([value, method, axis, inplace, …])Fill NA/NaN values using the specified method.
filter([items, like, regex, axis])Subset the dataframe rows or columns according to the specified index labels.
first(offset)Select initial periods of time series data based on a date offset.
Return index for first non-NA/null value.
floordiv(other[, level, fill_value, axis])Return Integer division of series and other, element-wise (binary operator floordiv).
ge(other[, level, fill_value, axis])Return Greater than or equal to of series and other, element-wise (binary operator ge).
get(key[, default])Get item from object for given key (ex: DataFrame column).
groupby([by, axis, level, as_index, sort, …])Group Series using a mapper or by a Series of columns.
gt(other[, level, fill_value, axis])Return Greater than of series and other, element-wise (binary operator gt).
head([n])Return the first n rows.
hist([by, ax, grid, xlabelsize, xrot, …])Draw histogram of the input series using matplotlib.
idxmax([axis, skipna])Return the row label of the maximum value.
idxmin([axis, skipna])Return the row label of the minimum value.
Attempt to infer better dtypes for object columns.
interpolate([method, axis, limit, inplace, …])Please note that only
method='linear'is supported for DataFrame/Series with a MultiIndex.isin(values)Whether elements in Series are contained in values.
isna()Detect missing values.
isnull()Detect missing values.
item()Return the first element of the underlying data as a python scalar.
items()Lazily iterate over (index, value) tuples.
Lazily iterate over (index, value) tuples.
keys()Return alias for index.
kurt([axis, skipna, level, numeric_only])Return unbiased kurtosis over requested axis.
kurtosis([axis, skipna, level, numeric_only])Return unbiased kurtosis over requested axis.
last(offset)Select final periods of time series data based on a date offset.
Return index for last non-NA/null value.
le(other[, level, fill_value, axis])Return Less than or equal to of series and other, element-wise (binary operator le).
lt(other[, level, fill_value, axis])Return Less than of series and other, element-wise (binary operator lt).
mad([axis, skipna, level])Return the mean absolute deviation of the values for the requested axis.
map(arg[, na_action])Map values of Series according to input correspondence.
mask(cond[, other, inplace, axis, level, …])Replace values where the condition is True.
max([axis, skipna, level, numeric_only])Return the maximum of the values for the requested axis.
mean([axis, skipna, level, numeric_only])Return the mean of the values for the requested axis.
median([axis, skipna, level, numeric_only])Return the median of the values for the requested axis.
memory_usage([index, deep])Return the memory usage of the Series.
min([axis, skipna, level, numeric_only])Return the minimum of the values for the requested axis.
mod(other[, level, fill_value, axis])Return Modulo of series and other, element-wise (binary operator mod).
mode([dropna])Return the mode(s) of the dataset.
mul(other[, level, fill_value, axis])Return Multiplication of series and other, element-wise (binary operator mul).
multiply(other[, level, fill_value, axis])Return Multiplication of series and other, element-wise (binary operator mul).
ne(other[, level, fill_value, axis])Return Not equal to of series and other, element-wise (binary operator ne).
nlargest([n, keep])Return the largest n elements.
notna()Detect existing (non-missing) values.
notnull()Detect existing (non-missing) values.
nsmallest([n, keep])Return the smallest n elements.
nunique([dropna])Return number of unique elements in the object.
pad([axis, inplace, limit, downcast])Synonym for
DataFrame.fillna()withmethod='ffill'.pct_change([periods, fill_method, limit, freq])Percentage change between the current and a prior element.
pipe(func, *args, **kwargs)Apply func(self, *args, **kwargs).
alias of
pandas.plotting._core.PlotAccessorpop(item)Return item and drops from series.
pow(other[, level, fill_value, axis])Return Exponential power of series and other, element-wise (binary operator pow).
prod([axis, skipna, level, numeric_only, …])Return the product of the values for the requested axis.
product([axis, skipna, level, numeric_only, …])Return the product of the values for the requested axis.
quantile([q, interpolation])Return value at the given quantile.
radd(other[, level, fill_value, axis])Return Addition of series and other, element-wise (binary operator radd).
rank([axis, method, numeric_only, …])Compute numerical data ranks (1 through n) along axis.
ravel([order])Return the flattened underlying data as an ndarray.
rdiv(other[, level, fill_value, axis])Return Floating division of series and other, element-wise (binary operator rtruediv).
rdivmod(other[, level, fill_value, axis])Return Integer division and modulo of series and other, element-wise (binary operator rdivmod).
reindex([index])Conform Series to new index with optional filling logic.
reindex_like(other[, method, copy, limit, …])Return an object with matching indices as other object.
rename([index, axis, copy, inplace, level, …])Alter Series index labels or name.
rename_axis([mapper, index, columns, axis, …])Set the name of the axis for the index or columns.
reorder_levels(order)Rearrange index levels using input order.
repeat(repeats[, axis])Repeat elements of a Series.
replace([to_replace, value, inplace, limit, …])Replace values given in to_replace with value.
resample(rule[, axis, closed, label, …])Resample time-series data.
reset_index([level, drop, name, inplace])Generate a new DataFrame or Series with the index reset.
rfloordiv(other[, level, fill_value, axis])Return Integer division of series and other, element-wise (binary operator rfloordiv).
rmod(other[, level, fill_value, axis])Return Modulo of series and other, element-wise (binary operator rmod).
rmul(other[, level, fill_value, axis])Return Multiplication of series and other, element-wise (binary operator rmul).
rolling(window[, min_periods, center, …])Provide rolling window calculations.
round([decimals])Round each value in a Series to the given number of decimals.
rpow(other[, level, fill_value, axis])Return Exponential power of series and other, element-wise (binary operator rpow).
rsub(other[, level, fill_value, axis])Return Subtraction of series and other, element-wise (binary operator rsub).
rtruediv(other[, level, fill_value, axis])Return Floating division of series and other, element-wise (binary operator rtruediv).
sample([n, frac, replace, weights, …])Return a random sample of items from an axis of object.
searchsorted(value[, side, sorter])Find indices where elements should be inserted to maintain order.
sem([axis, skipna, level, ddof, numeric_only])Return unbiased standard error of the mean over requested axis.
set_axis(labels[, axis, inplace])Assign desired index to given axis.
shift([periods, freq, axis, fill_value])Shift index by desired number of periods with an optional time freq.
skew([axis, skipna, level, numeric_only])Return unbiased skew over requested axis.
slice_shift([periods, axis])Equivalent to shift without copying data.
sort_index([axis, level, ascending, …])Sort Series by index labels.
sort_values([axis, ascending, inplace, …])Sort by the values.
alias of
pandas.core.arrays.sparse.accessor.SparseAccessorsqueeze([axis])Squeeze 1 dimensional axis objects into scalars.
std([axis, skipna, level, ddof, numeric_only])Return sample standard deviation over requested axis.
alias of
pandas.core.strings.StringMethodssub(other[, level, fill_value, axis])Return Subtraction of series and other, element-wise (binary operator sub).
subtract(other[, level, fill_value, axis])Return Subtraction of series and other, element-wise (binary operator sub).
sum([axis, skipna, level, numeric_only, …])Return the sum of the values for the requested axis.
swapaxes(axis1, axis2[, copy])Interchange axes and swap values axes appropriately.
swaplevel([i, j, copy])Swap levels i and j in a
MultiIndex.tail([n])Return the last n rows.
take(indices[, axis, is_copy])Return the elements in the given positional indices along an axis.
to_clipboard([excel, sep])Copy object to the system clipboard.
to_csv([path_or_buf, sep, na_rep, …])Write object to a comma-separated values (csv) file.
to_dict([into])Convert Series to {label -> value} dict or dict-like object.
to_excel(excel_writer[, sheet_name, na_rep, …])Write object to an Excel sheet.
to_frame([name])Convert Series to DataFrame.
to_hdf(path_or_buf, key[, mode, complevel, …])Write the contained data to an HDF5 file using HDFStore.
to_json([path_or_buf, orient, date_format, …])Convert the object to a JSON string.
to_latex([buf, columns, col_space, header, …])Render object to a LaTeX tabular, longtable, or nested table/tabular.
to_list()Return a list of the values.
to_markdown([buf, mode, index])Print Series in Markdown-friendly format.
to_numpy([dtype, copy, na_value])A NumPy ndarray representing the values in this Series or Index.
to_period([freq, copy])Convert Series from DatetimeIndex to PeriodIndex.
to_pickle(path[, compression, protocol])Pickle (serialize) object to file.
to_sql(name, con[, schema, if_exists, …])Write records stored in a DataFrame to a SQL database.
to_string([buf, na_rep, float_format, …])Render a string representation of the Series.
to_timestamp([freq, how, copy])Cast to DatetimeIndex of Timestamps, at beginning of period.
Return an xarray object from the pandas object.
tolist()Return a list of the values.
transform(func[, axis])Call
funcon self producing a Series with transformed values.transpose(*args, **kwargs)Return the transpose, which is by definition self.
truediv(other[, level, fill_value, axis])Return Floating division of series and other, element-wise (binary operator truediv).
truncate([before, after, axis, copy])Truncate a Series or DataFrame before and after some index value.
tshift([periods, freq, axis])(DEPRECATED) Shift the time index, using the index’s frequency if available.
tz_convert(tz[, axis, level, copy])Convert tz-aware axis to target time zone.
tz_localize(tz[, axis, level, copy, …])Localize tz-naive index of a Series or DataFrame to target time zone.
unique()Return unique values of Series object.
unstack([level, fill_value])Unstack, also known as pivot, Series with MultiIndex to produce DataFrame.
update(other)Modify Series in place using values from passed Series.
value_counts([normalize, sort, ascending, …])Return a Series containing counts of unique values.
var([axis, skipna, level, ddof, numeric_only])Return unbiased variance over requested axis.
view([dtype])Create a new view of the Series.
where(cond[, other, inplace, axis, level, …])Replace values where the condition is False.
xs(key[, axis, level, drop_level])Return cross-section from the Series/DataFrame.
dt