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software_development:python_pandas [2022/08/04 14:42]
prgram
software_development:python_pandas [2023/05/16 15:17] (current)
prgram [encoding_errors - 'ignore']
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 ====== python pandas ====== ====== python pandas ======
 {{INLINETOC}} {{INLINETOC}}
 +
 +=== etc : list ===
 +<code python>
 +set( [list] ) # unique value
 +[list].sort() #​자동적용?​
 +[list1] + [list2] ​ #​list합치기
 +</​code>​
 +
 +===== shape of df =====
 +=== Pivot_table ===
 +<code python>
 +df.pivot_table(index=[인덱스컬럼],​
 +               ​columns=[컬럼1,​컬럼2],​
 +               ​values=[값],​
 +               ​aggfunc='​sum'​).reset_index()
 +</​code>​
 +  * string일 때는 aggfunc='​max'​
 +  * index에 NULL 있으면 안됨
 +== fillna ==
 +<code python>
 +df[['​a','​b','​c'​]] = df[['​a','​b','​c'​]].fillna(''​)
 +</​code>​
 +
 +=== group by ===
 +<code python>
 +df.groupby([컬럼들]).agg({'​컬럼':​sum}).reset_index()
 +
 +df.groupby([COLUMNS])['​COLUMN'​].max().reset_index()
 +
 +df = df.assign(date=pd.to_numeric(df['​date'​],​ errors='​coerce'​)).groupby(['​코드',​ '​종목명'​]).agg({'​date':​np.min}).reset_index().drop_duplicates()
 +
 +df = df[['​코드',​ '​date'​]].groupby(['​코드'​]).agg({'​date':​ [np.min, np.max]}).reset_index(level='​종목코드'​)
 +df.columns = df.columns.droplevel()
 +</​code>​
 +
 +=== rank ===
 +<code python>
 +df['​rank'​] = df.groupby('​code'​)['​value'​].rank(ascending=False)
 +</​code>​
 +
 +=== merge ===
 +<code python>
 +df_out = df_out.merge(df,​ on=['​no',​ '​name'​],​ how='​outer'​) #​left_on right_on
 +</​code>​
 +
 +
 +===== modify =====
 +=== Series to DF ===
 +<code python>
 +df = df.append(pd.DataFrame(pd.Series(dict_row)).transpose(),​ ignore_index=True)
 +</​code>​
 +
 +
 +=== rename ===
 +<code python>
 +df.rename(columns = {'​컬럼':'​new name'​},​ index={0:'​new index'​})
 +df.rename({1:​ 2, 2: 4}, axis='​index'​)
 +
 +df.columns = [컬럼들..]
 +df.columns = ['​1'​] + df.columns[1:​].tolist()
 +</​code>​
 +
 +=== order of columns ===
 +<code python>
 +#1
 +df = df.sort_index(axis='​columns',​ level = '​MULTILEVEL INDEX NAME/​no'​)
 +#2
 +df.columns
 +col_order = ['​a','​b','​c'​]
 +df = df.reindex(col_order,​ axis='​columns'​)
 +</​code>​
 +
 +
 +=== map ===
 +<code python>
 +df['​코드'​] = '​A'​ + df['​코드'​].map(lambda x: f'​{x:​0>​6}'​) ​ #6글자로
 +</​code>​
 +
  
 ===== get info ===== ===== get info =====
Line 29: Line 107:
 iloc: Select by position iloc: Select by position
 loc: Select by label loc: Select by label
 +  ​
 +df.loc[:,​~df.columns.isin(['​a','​b'​])]  ​
 +
 +df[~( df['​a'​].isin(['​1','​2','​3'​]) & df['​b'​]=='​3'​ )] #​row-wise
 +df.loc[~( df['​a'​].isin(['​1','​2','​3'​]) & df['​b'​]=='​3'​ ), 8] #​row-wise & column
 </​code>​ </​code>​
  
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     print(idx, row)     print(idx, row)
 </​code>​ </​code>​
- 
  
   ​   ​
   ​   ​
 =====I/O file===== =====I/O file=====
 +
 +=== encoding_errors - '​ignore'​===
 +Encoding 제대로 했는데도 안되면..
 +공공데이터가 이런 경우가 많음.
 +
 +Error tokenizing data. C error: EOF inside string starting at row 0 | 판다스 에러
 +https://​con2joa.tistory.com/​m/​60
 +quoting=csv.QUOTE_NONE 파라미터
 +
 +<code python>
 +import chardet
 +with open(file, '​rb'​) as rawdata:
 +    result = chardet.detect(rawdata.read(100000))
 +result
 +
 +
 +data = pd.read_csv( file, encoding='​cp949',​ encoding_errors='​ignore'​)
 +# on_bad_lines='​skip'​
 +# error_bad_lines=False
 +</​code>​
 +
 +=== to_numberic ===
 +<code python>
 +#1
 +df = pd.read_csv('​file.csv',​ encoding='​utf-8',​ index_col=0,​ converters={'​col':​int,​ '​col2':​str})
 +#2
 +df['​col'​] = pd.to_numeric(df[col].str.replace(',',''​),​ errors='​coerce'​)
 +</​code>​
  
 === Excel === === Excel ===
Line 80: Line 190:
  
  
-=== Series to DF === 
-<code python> 
-df = df.append(pd.DataFrame(pd.Series(dict_row)).transpose(),​ ignore_index=True) 
-</​code>​ 
- 
-=== rename === 
-<code python> 
-df.rename(columns = {'​컬럼':'​new name'​},​ index={0:'​new index'​}) 
-df.rename({1:​ 2, 2: 4}, axis='​index'​) 
- 
-df.columns = [컬럼들..] 
-df.columns = ['​1'​] + df.columns[1:​].tolist() 
-</​code>​ 
- 
-=== map === 
-<code python> 
-df['​코드'​] = '​A'​ + df['​코드'​].map(lambda x: f'​{x:​0>​6}'​) ​ #6글자로 
-</​code>​ 
- 
-=== Pivot_table === 
-<code python> 
-df.pivot_table(index=[인덱스컬럼],​ 
-               ​columns=[컬럼1,​컬럼2],​ 
-               ​values=[값],​ 
-               ​aggfunc='​sum'​).reset_index() 
-</​code>​ 
- 
-=== group by === 
-<code python> 
-df.groupby([컬럼들]).agg({'​컬럼':​sum}).reset_index() 
- 
-df = df.assign(date=pd.to_numeric(df['​date'​],​ errors='​coerce'​)).groupby(['​코드',​ '​종목명'​]).agg({'​date':​np.min}).reset_index().drop_duplicates() 
- 
-df = df[['​코드',​ '​date'​]].groupby(['​코드'​]).agg({'​date':​ [np.min, np.max]}).reset_index(level='​종목코드'​) 
-df.columns = df.columns.droplevel() 
-</​code>​ 
- 
-=== merge === 
-<code python> 
-df_out = df_out.merge(df,​ on=['​no',​ '​name'​],​ how='​outer'​) 
-</​code>​ 
- 
-=== rank === 
-<code python> 
-df['​rank'​] = df.groupby('​code'​)['​value'​].rank(ascending=False) 
-</​code>​ 
-=== to_numberic === 
-<code python> 
-#1 
-df = pd.read_csv('​file.csv',​ encoding='​utf-8',​ index_col=0,​ converters={'​col':​int,​ '​col2':​str}) 
-#2 
-df['​col'​] = pd.to_numeric(df[col].str.replace(',',''​),​ errors='​coerce'​) 
-</​code>​