• iterrows(): 将DataFrame迭代为(insex, Series)对。
  • itertuples(): 将DataFrame迭代为元祖。
  • iteritems(): 将DataFrame迭代为(列名, Series)对

 

现有如下DataFrame数据:

import pandas as pd
inp
= [{'c1':10, 'c2':100}, {'c1':11, 'c2':110}, {'c1':12, 'c2':123}] df = pd.DataFrame(inp)
print(df)

 iterrows(), iteritems(), itertuples()对dataframe进行遍历

iterrows():

for date, row in df.iterrows():
    print(date)

iterrows(), iteritems(), itertuples()对dataframe进行遍历

for date, row in df.iterrows():
    print(row)

iterrows(), iteritems(), itertuples()对dataframe进行遍历

# 对于每一行,通过列名访问对应的元素

for date, row in df.iterrows():
    print(row['c1'], row['c2'])

iterrows(), iteritems(), itertuples()对dataframe进行遍历

iteritems():

for date, row in df.iteritems():
    print(date)

iterrows(), iteritems(), itertuples()对dataframe进行遍历

for date, row in df.iteritems():
    print(row)

iterrows(), iteritems(), itertuples()对dataframe进行遍历

for date, row in df.iteritems():
    print(row[0], row[1], row[2])

iterrows(), iteritems(), itertuples()对dataframe进行遍历

itertuples():

for row in df.itertuples():
  print(row)

iterrows(), iteritems(), itertuples()对dataframe进行遍历

for row in df.itertuples():
    print(getattr(row, 'c1'), getattr(row, 'c2'))

iterrows(), iteritems(), itertuples()对dataframe进行遍历

 

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