📜  从列表创建 Pandas DataFrame

📅  最后修改于: 2022-05-13 01:54:21.470000             🧑  作者: Mango

从列表创建 Pandas DataFrame

Python是一种用于进行数据分析的出色语言,主要是因为以数据为中心的Python包的奇妙生态系统。 Pandas 就是其中之一,它使导入和分析数据变得更加容易。

创建 Pandas Dataframe 可以通过多种方式实现。让我们看看如何从 Lists 创建 Pandas DataFrame。

代码 #1:基本示例

# import pandas as pd
import pandas as pd
  
# list of strings
lst = ['Geeks', 'For', 'Geeks', 'is', 
            'portal', 'for', 'Geeks']
  
# Calling DataFrame constructor on list
df = pd.DataFrame(lst)
df

输出:
代码 #2:使用带有索引和列名的列表的数据框

# import pandas as pd
import pandas as pd
  
# list of strings
lst = ['Geeks', 'For', 'Geeks', 'is', 'portal', 'for', 'Geeks']
  
# Calling DataFrame constructor on list
# with indices and columns specified
df = pd.DataFrame(lst, index =['a', 'b', 'c', 'd', 'e', 'f', 'g'],
                                              columns =['Names'])
df

输出:
代码 #3:使用 zip() 压缩两个列表

# import pandas as pd
import pandas as pd
  
# list of strings
lst = ['Geeks', 'For', 'Geeks', 'is', 'portal', 'for', 'Geeks']
  
# list of int
lst2 = [11, 22, 33, 44, 55, 66, 77]
  
# Calling DataFrame constructor after zipping
# both lists, with columns specified
df = pd.DataFrame(list(zip(lst, lst2)),
               columns =['Name', 'val'])
df

输出:
代码 #4:使用多维列表创建 DataFrame

# import pandas as pd
import pandas as pd 
    
# List1 
lst = [['tom', 25], ['krish', 30],
       ['nick', 26], ['juli', 22]]
    
df = pd.DataFrame(lst, columns =['Name', 'Age'])
df

输出:
代码 #5:使用指定列名和 dtype 的多维列表。

# import pandas as pd
import pandas as pd 
    
# List1 
lst = [['tom', 'reacher', 25], ['krish', 'pete', 30],
       ['nick', 'wilson', 26], ['juli', 'williams', 22]]
    
df = pd.DataFrame(lst, columns =['FName', 'LName', 'Age'], dtype = float)
df

输出:
代码 #6:使用字典中的列表创建数据框

# importing pandas as pd 
import pandas as pd 
  
# list of name, degree, score
nme = ["aparna", "pankaj", "sudhir", "Geeku"]
deg = ["MBA", "BCA", "M.Tech", "MBA"]
scr = [90, 40, 80, 98]
  
# dictionary of lists 
dict = {'name': nme, 'degree': deg, 'score': scr} 
    
df = pd.DataFrame(dict)
    
df 

输出: