Pandas必知必会的使用技巧,值得收藏!
公众号关注“杰哥的IT之旅”,
选择“星标”,重磅干货,第一时间送达!
大家好,我是JackTian。
由于公众号的改版,为了保证你们第一时间能看到我的文章,大家记得将公众号 加星标置顶 哦!
作者:风控猎人
Pandas技巧总结
1.计算变量缺失率
df=pd.read_csv('titanic_train.csv')
def missing_cal(df):
"""
df :数据集
return:每个变量的缺失率
"""
missing_series = df.isnull().sum()/df.shape[0]
missing_df = pd.DataFrame(missing_series).reset_index()
missing_df = missing_df.rename(columns={'index':'col',
0:'missing_pct'})
missing_df = missing_df.sort_values('missing_pct',ascending=False).reset_index(drop=True)
return missing_df
missing_cal(df)
2.获取分组里最大值所在的行方法
df = pd.DataFrame({'Sp':['a','b','c','d','e','f'], 'Mt':['s1', 's1', 's2','s2','s2','s3'], 'Value':[1,2,3,4,5,6], 'Count':[3,2,5,10,10,6]})
df
df.iloc[df.groupby(['Mt']).apply(lambda x: x['Count'].idxmax())]
df["rank"] = df.groupby("ID")["score"].rank(method="min", ascending=False).astype(np.int64)
df[df["rank"] == 1][["ID", "class"]]
3.多列合并为一行
df = pd.DataFrame({'id_part':['a','b','c','d'], 'pred':[0.1,0.2,0.3,0.4], 'pred_class':['women','man','cat','dog'], 'v_id':['d1','d2','d3','d1']})
df.groupby(['v_id']).agg({'pred_class': [', '.join],'pred': lambda x: list(x),
'id_part': 'first'}).reset_index()
4.删除包含特定字符串所在的行
df = pd.DataFrame({'a':[1,2,3,4], 'b':['s1', 'exp_s2', 's3','exps4'], 'c':[5,6,7,8], 'd':[3,2,5,10]})
df[df['b'].str.contains('exp')]
5.组内排序
df = pd.DataFrame([['A',1],['A',3],['A',2],['B',5],['B',9]], columns = ['name','score'])
df.sort_values(['name','score'], ascending = [True,False])
df.groupby('name').apply(lambda x: x.sort_values('score', ascending=False)).reset_index(drop=True)
6.选择特定类型的列
drinks = pd.read_csv('data/drinks.csv')
# 选择所有数值型的列
drinks.select_dtypes(include=['number']).head()
# 选择所有字符型的列
drinks.select_dtypes(include=['object']).head()
drinks.select_dtypes(include=['number','object','category','datetime']).head()
# 用 exclude 关键字排除指定的数据类型
drinks.select_dtypes(exclude=['number']).head()
7.字符串转换为数值
df = pd.DataFrame({'列1':['1.1','2.2','3.3'],
'列2':['4.4','5.5','6.6'],
'列3':['7.7','8.8','-']})
df
df.astype({'列1':'float','列2':'float'}).dtypes
df = df.apply(pd.to_numeric, errors='coerce').fillna(0)
8.优化 DataFrame 对内存的占用
cols = ['beer_servings','continent']
small_drinks = pd.read_csv('data/drinks.csv', usecols=cols)
dtypes ={'continent':'category'}
smaller_drinks = pd.read_csv('data/drinks.csv',usecols=cols, dtype=dtypes)
9.根据最大的类别筛选 DataFrame
movies = pd.read_csv('data/imdb_1000.csv')
counts = movies.genre.value_counts()
movies[movies.genre.isin(counts.nlargest(3).index)].head()
10.把字符串分割为多列
df = pd.DataFrame({'姓名':['张 三','李 四','王 五'],
'所在地':['北京-东城区','上海-黄浦区','广州-白云区']})
df
df.姓名.str.split(' ', expand=True)
11.把 Series 里的列表转换为 DataFrame
df = pd.DataFrame({'列1':['a','b','c'],'列2':[[10,20], [20,30], [30,40]]})
df
df_new = df.列2.apply(pd.Series)
pd.concat([df,df_new], axis='columns')
12.用多个函数聚合
orders = pd.read_csv('data/chipotle.tsv', sep='\t')
orders.groupby('order_id').item_price.agg(['sum','count']).head()
13.分组聚合
import pandas as pd
df = pd.DataFrame({'key1':['a', 'a', 'b', 'b', 'a'],
'key2':['one', 'two', 'one', 'two', 'one'],
'data1':np.random.randn(5),
'data2':np.random.randn(5)})
df
for name, group in df.groupby('key1'):
print(name)
print(group)
dict(list(df.groupby('key1')))
people = pd.DataFrame(np.random.randn(5, 5),
columns=['a', 'b', 'c', 'd', 'e'],
index=['Joe', 'Steve', 'Wes', 'Jim', 'Travis'])
mapping = {'a':'red', 'b':'red', 'c':'blue',
'd':'blue', 'e':'red', 'f':'orange'}
by_column = people.groupby(mapping, axis=1)
by_column.sum()
往期资源回顾 需要可自取
推荐阅读
点个[在看],是对杰哥最大的支持!
评论