目录
1.Series介绍2.Series创建1.pd.Series([list],index=[list])2.pd.Series(np.arange())3 Series基本属性4 索引5 计算、描述性统计6 排序总结1.Series介绍
Pandas模块的数据结构主要有两种:1.Series 2.DataFrame
Series 是一维数组,基于Numpy的ndarray 结构
(资料图片仅供参考)
Series([data, index, dtype, name, copy, …]) # One-dimensional ndarray with axis labels (including time series).
2.Series创建
import Pandas as pd import numpy as np
1.pd.Series([list],index=[list])
参数为list ,index为可选参数,若不填写则默认为index从0开始
obj = pd.Series([4, 7, -5, 3, 7, np.nan]) obj
输出结果为:
0 4.0
1 7.0
2 -5.0
3 3.0
4 7.0
5 NaN
dtype: float64
2.pd.Series(np.arange())
arr = np.arange(6) s = pd.Series(arr) s
输出结果为:
0 0
1 1
2 2
3 3
4 4
5 5
dtype: int32
pd.Series({dict}) d = {"a":10,"b":20,"c":30,"d":40,"e":50} s = pd.Series(d) s
输出结果为:
a 10
b 20
c 30
d 40
e 50
dtype: int64
可以通过DataFrame中某一行或者某一列创建序列
3 Series基本属性
Series.values:Return Series as ndarray or ndarray-like depending on the dtypeobj.values # array([ 4., 7., -5., 3., 7., nan])Series.index:The index (axis labels) of the Series.
obj.index # RangeIndex(start=0, stop=6, step=1)Series.name:Return name of the Series.
4 索引
Series.loc:Access a group of rows and columns by label(s) or a boolean array.Series.iloc:Purely integer-location based indexing for selection by position.5 计算、描述性统计
Series.value_counts:Return a Series containing counts of unique values.
index = ["Bob", "Steve", "Jeff", "Ryan", "Jeff", "Ryan"] obj = pd.Series([4, 7, -5, 3, 7, np.nan],index = index) obj.value_counts()
输出结果为:
7.0 2
3.0 1
-5.0 1
4.0 1
dtype: int64
6 排序
Series.sort_values
Series.sort_values(self, axis=0, ascending=True, inplace=False, kind="quicksort", na_position="last")
Parameters:
Parameters | Description |
---|---|
axis | {0 or ‘index’}, default 0,Axis to direct sorting. The value ‘index’ is accepted for compatibility with DataFrame.sort_values. |
ascendin | bool, default True,If True, sort values in ascending order, otherwise descending. |
inplace | bool, default FalseIf True, perform operation in-place. |
kind | {‘quicksort’, ‘mergesort’ or ‘heapsort’}, default ‘quicksort’Choice of sorting algorithm. See also numpy.sort() for more information. ‘mergesort’ is the only stable algorithm. |
na_position | {‘first’ or ‘last’}, default ‘last’,Argument ‘first’ puts NaNs at the beginning, ‘last’ puts NaNs at the end. |
Returns:
Series:Series ordered by values.
obj.sort_values()
输出结果为:
Series.rankJeff -5.0
Ryan 3.0
Bob 4.0
Steve 7.0
Jeff 7.0
Ryan NaN
dtype: float64
Series.rank(self, axis=0, method="average", numeric_only=None, na_option="keep", ascending=True, pct=False)[source]
Parameters:
Parameters | Description |
---|---|
axis | {0 or ‘index’, 1 or ‘columns’}, default 0Index to direct ranking. |
method | {‘average’, ‘min’, ‘max’, ‘first’, ‘dense’}, default ‘average’How to rank the group of records that have the same value (i.e. ties): average, average rank of the group; min: lowest rank in the group; max: highest rank in the group; first: ranks assigned in order they appear in the array; dense: like ‘min’, but rank always increases by 1,between groups |
numeric_only | bool, optional,For DataFrame objects, rank only numeric columns if set to True. |
na_option | {‘keep’, ‘top’, ‘bottom’}, default ‘keep’, How to rank NaN values:;keep: assign NaN rank to NaN values; top: assign smallest rank to NaN values if ascending; bottom: assign highest rank to NaN values if ascending |
ascending | bool, default True Whether or not the elements should be ranked in ascending order. |
pct | bool, default False Whether or not to display the returned rankings in percentile form. |
Returns:
same type as caller :Return a Series or DataFrame with data ranks as values.
# obj.rank() #从大到小排,NaN还是NaN obj.rank(method="dense") # obj.rank(method="min") # obj.rank(method="max") # obj.rank(method="first") # obj.rank(method="dense")
输出结果为:
Bob 3.0
Steve 4.0
Jeff 1.0
Ryan 2.0
Jeff 4.0
Ryan NaN
dtype: float64
总结
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