这篇文章主要介绍了pandas中如何使用append函数,具有一定借鉴价值,感兴趣的朋友可以参考下,希望大家阅读完这篇文章之后大有收获,下面让小编带着大家一起了解一下。
append
append主要用于追加数据,是比较简单直接的数据合并方式。
df.append(
other,
ignore_index: 'bool' = False,
verify_integrity: 'bool' = False,
sort: 'bool' = False,
) -> 'DataFrame'
在函数方法中,各参数含义如下:
接下来,我们就对该函数功能进行演示
基础追加
In [41]: df1.append(df2)
Out[41]:
letter number
0 a 1
1 b 2
0 c 3
1 d 4
In [42]: df1.append([df1,df2,df3])
Out[42]:
letter number animal
0 a 1 NaN
1 b 2 NaN
0 a 1 NaN
1 b 2 NaN
0 c 3 NaN
1 d 4 NaN
0 c 3 cat
1 d 4 dog
columns重置(不保留原有索引)
In [43]: df1.append([df1,df2,df3], ignore_index=True)
Out[43]:
letter number animal
0 a 1 NaN
1 b 2 NaN
2 a 1 NaN
3 b 2 NaN
4 c 3 NaN
5 d 4 NaN
6 c 3 cat
7 d 4 dog
检测重复
如果索引出现重复,则无法通过检测,会报错
In [44]: df1.append([df1,df2], verify_integrity=True)
Traceback (most recent call last):
...
ValueError: Indexes have overlapping values: Int64Index([0, 1], dtype='int64')
索引排序
In [46]: df1.append([df1,df2,df3], sort=True)
Out[46]:
animal letter number
0 NaN a 1
1 NaN b 2
0 NaN a 1
1 NaN b 2
0 NaN c 3
1 NaN d 4
0 cat c 3
1 dog d 4
追加Series
In [49]: s = pd.Series({'letter':'s1','number':9})
In [50]: s
Out[50]:
letter s1
number 9
dtype: object
In [51]: df1.append(s)
Traceback (most recent call last):
...
TypeError: Can only append a Series if ignore_index=True or if the Series has a name
In [53]: df1.append(s, ignore_index=True)
Out[53]:
letter number
0 a 1
1 b 2
2 s1 9追加字典
这个在爬虫的时候比较好使,每爬取一条数据就合并到DataFrame类似数据中存储起来
In [54]: dic = {'letter':'s1','number':9}
In [55]: df1.append(dic, ignore_index=True)
Out[55]:
letter number
0 a 1
1 b 2
2 s1 9感谢你能够认真阅读完这篇文章,希望小编分享的“pandas中如何使用append函数”这篇文章对大家有帮助,同时也希望大家多多支持天达云,关注天达云行业资讯频道,更多相关知识等着你来学习!