python学习-pandas

2021-01-21 02:15

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标签:重复   ace   python学习   map   ilo   false   pandas   abs   with   

1、Series

 obj = pd.Series([4, 7, -5, 3]) #创建series
obj.values #获取值
obj.index #获取索引
obj2 = pd.Series([4, 7, -5, 3], index=[d, b, a, c]) #指定索引创建Series
obj2[a] #获取值
obj2[[c, a, d]] 
obj2[obj2 > 0] #使用boolean数组过滤
np.exp(obj2) #表达式
#可以作为固定长度 有序的字典使用
b in obj2 
#通过字典创建Series
sdata = {Ohio: 35000, Texas: 71000, Oregon: 16000, Utah: 5000}
obj3 = pd.Series(sdata)
#更改索引
 states = [California, Ohio, Oregon, Texas]
obj4= pd.Series(sdata, index=states)
#判断是否为空
pd.isnull(obj4)
pd.notnull(obj4)
obj4.isnull()

#设置name
obj4.name = population
obj4.index.name = state
#更改索引
obj.index = [Bob, Steve, Jeff, Ryan]

2、DataFrame

data = {state: [Ohio, Ohio, Ohio, Nevada, Nevada, Nevada], year: [2000, 2001, 2002, 2001, 2002, 2003],
pop: [1.5, 1.7, 3.6, 2.4, 2.9, 3.2]}
frame = pd.DataFrame(data)
#指定有序列
pd.DataFrame(data, columns=[year, state, pop])
#指定列和索引,没有则显示空
frame2 = pd.DataFrame(data, columns=[year, state, pop, debt], index=[one, two, three, four,
five, six])

frame2.columns
frame2[state]
frame2.loc[three] #获取某行值
#frame 列赋值
frame2[debt] = np.arange(6.)
val = pd.Series([-1.2, -1.5, -1.7], index=[two, four, five])
frame2[debt] = val
frame2[eastern] = frame2.state == Ohio
 del frame2[eastern] #删除列

#嵌套字典组成frame
pop = {Nevada: {2001: 2.4, 2002: 2.9},Ohio: {2000: 1.5, 2001: 1.7, 2002: 3.6}}
frame3 = pd.DataFrame(pop)

frame3.index.name = year; 
frame3.columns.name = state
frame2.values

#索引
obj = pd.Series(range(3), index=[a, b, c])
index = obj.index
labels = pd.Index(np.arange(3))
obj2 = pd.Series([1.5, -2.5, 0], index=labels)
obj2.index is labels

Ohio in frame3.columns
2003 in frame3.index

pd.Index([foo, foo, bar, bar])#pandas index可以重复

3、重要函数

#reindex
obj = pd.Series([4.5, 7.2, -5.3, 3.6], index=[d, b, a, c])
obj2 = obj.reindex([a, b, c, d, e])

#reindex 可以改变index column
frame = pd.DataFrame(np.arange(9).reshape((3, 3)), index=[a, c, d],
                     columns=[Ohio, Texas, California])
frame2 = frame.reindex([a, b, c, d])
states = [Texas, Utah, California]
frame.reindex(columns=states)
frame.loc[[a, b, c, d], states]

#drop
 obj = pd.Series(np.arange(5.), index=[a, b, c, d, e])
 obj.drop([d, c])

data = pd.DataFrame(np.arange(16).reshape((4, 4)),index=[Ohio, Colorado, Utah, New York],
columns=[one, two, three, four])

data.drop([Colorado, Ohio])#drop row
data.drop(two, axis=1) #通过axis drop列
data.drop([two, four], axis=columns)#通过columns drop列

obj.drop(c, inplace=True) #inplace 不创建新对象

4、选择索引

obj = pd.Series(np.arange(4.), index=[a, b, c, d])
obj[b]
obj[1]
obj[2:4]
obj[[b, a, d]]
obj[[1, 3]]
obj[obj ]
obj[b:c]
obj[b:c] = 5

data = pd.DataFrame(np.arange(16).reshape((4, 4)),
index=[Ohio, Colorado, Utah, New York],
                    columns=[one, two, three, four])
data[two]
data[[three, one]]
data[:2] #选择行
data[data[three] > 5]

#Selection with loc and iloc
data.loc[Colorado, [two, three]]
data.iloc[2, [3, 0, 1]] 
data.iloc[[1, 2], [3, 0, 1]]
data.loc[:Utah, two]
data.iloc[:, :3][data.three > 5]

5、运算和排列

df1 = pd.DataFrame(np.arange(12.).reshape((3, 4)), columns=list(abcd))
df2 = pd.DataFrame(np.arange(20.).reshape((4, 5)), columns=list(abcde))
df2.loc[1, b] = np.nan
df1.add(df2, fill_value=0)
 1 / df1
df1.reindex(columns=df2.columns, fill_value=0)

frame = pd.DataFrame(np.arange(12.).reshape((4, 3)), columns=list(bde),
index=[Utah, Ohio, Texas, Oregon])
series = frame.iloc[0]
frame - series
series3 = frame[d]
frame.sub(series3, axis=index)

6、功能应用和映射

frame = pd.DataFrame(np.random.randn(4, 3), columns=list(bde), index=[Utah, Ohio, Texas, Oregon])
np.abs(frame)

f = lambda x: x.max() - x.min()

frame.apply(f)
frame.apply(f,axis=columns)

def f(x):
    return pd.Series([x.min(), x.max()], index=[min, max])

format = lambda x: %.2f % x
frame.applymap(format)

frame[e].map(format)

7、排序和rank

frame = pd.DataFrame(np.arange(8).reshape((2, 4)),index=[three, one],columns=[d, a, b, c])
frame.sort_index()
frame.sort_index(axis=1, ascending=False)

obj = pd.Series([4, 7, -3, 2]) 
obj.sort_values()

frame = pd.DataFrame({b: [4, 7, -3, 2], a: [0, 1, 0, 1]})
frame.sort_values(by=b)
frame.sort_values(by=[a, b])

8、统计计算

df= pd.DataFrame([[1.4, np.nan], [7.1, -4.5],[np.nan, np.nan], [0.75, -1.3]],
                 index=[a, b, c, d], columns=[one, two])
df
 df.sum()
df.sum(axis=columns)
df.mean(axis=columns, skipna=False)
df.idxmax()
df.idxmin()
df.cumsum()
df.describe()

obj = pd.Series([a, a, b, c] * 4)
obj.describe()


import pandas_datareader.data as web

9、Unique Values, Value Counts, and Membership

obj = pd.Series([c, a, d, a, a, b, b, c, c])
uniques = obj.unique()
obj.value_counts()
pd.value_counts(obj.values, sort=False)
mask = obj.isin([b, c])
obj[mask]
to_match = pd.Series([c, a, b, b, c, a])
unique_vals = pd.Series([c, b, a])
pd.Index(unique_vals).get_indexer(to_match)

 

python学习-pandas

标签:重复   ace   python学习   map   ilo   false   pandas   abs   with   

原文地址:https://www.cnblogs.com/excellence/p/12877032.html


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