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pandas一些基本操作(DataFram和Series)_3

重復值 包含 asc import afr and 對齊 是否 isn

import pandas as pd;
import numpy as np
#通過一維數組創建
Chinese = np.array([89,87,86])
print(Chinese)
print(pd.Series(Chinese))
print(pd.Series(Chinese,index=[‘xiaoming‘,‘xiaohong‘,‘xiaohei‘],dtype=‘float‘))
#通過字典創建
Chinese2={"小紅":98,"小黑":76,"小王":65}
score = pd.Series(Chinese2)
print(score)
print(score.index)
abc = score.index=list(‘abc‘)#修改索引值
print("====================================")
print(score.values)
#設置數據變量名
score.name=‘語文‘
score.index.name=‘姓名‘
print(score)
#axes 獲取索引
print(score.axes)
print(score.index)
#empty 是否為空
print(score.empty)

#head tail 返回前幾行 返回後幾行
scores = pd.Series(np.random.randint(60,100,20));
print(scores)
print(scores.head(3))
#p排序 取前幾名
print(scores.sort_values(ascending=False).head(3))
#Series值獲取 索引值可以重復
ser1 = pd.Series([33,22,55,72,63],index=list(‘abcde‘));
print(ser1)
print(ser1[‘c‘])#index取值
print(ser1[3])#下表取值
print(ser1[‘b‘:‘d‘])#切片 索引切片是包含末尾的
print(ser1[1:4])#下表切片 不包含末尾
#!!如果重復index 利用這個重復值去切片就會報錯
#Series運算
print(Chinese)
Chinese_ser1 = pd.Series(Chinese)
Chinese_ser1.index = [‘小紅‘,‘小黑‘,‘小王‘]
print(Chinese_ser1)
Match_ser1 = pd.Series({"小紅":88,"小黑":99,"小王":70,"海濤":"1"})
total_ser1 = Match_ser1 + Chinese_ser1
print(total_ser1) #np是依賴位置相加,Series是根據index去相加的(自動對齊)
#缺失值檢測
print(total_ser1.isnull())#notnull 非空檢測


pandas一些基本操作(DataFram和Series)_3