3

This code gets the data and the data is made into a loop and that runs until the loops gets completed.

So i need to append the data to a df that stores the data after every process complete

code :

a = "SELECT id FROM USER WHERE time >'2018-03-01'"
dataa = pd.read_sql_query(a, con=engine)
print(dataa)

for userid in dataa:
   x=f"SELECT idbody FROM col1 WHERE user_id='{userid}'"
   data = pd.read_sql_query(x,con = engine)

so here data gets is processed and data every time produced is different need to append the data to a df that stores all the data that gets processed

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1

In loop or by list comprehension append values to list and only once use concat:

a = "SELECT id FROM USER WHERE time >'2018-03-01'"
dataa = pd.read_sql_query(a, con=engine)

dfs = []
for userid in dataa:
    x=f"SELECT idbody FROM col1 WHERE user_id='{userid}'"
    data = pd.read_sql_query(x,con = engine)
    dfs.append(data)

df = pd.concat(dfs, ignore_index=True)

dfs = [pd.read_sql_query(f"SELECT idbody FROM col1 WHERE user_id='{userid}'",con = engine) 
       for userid in dataa]

df = pd.concat(dfs, ignore_index=True)
1

I'm assuming you get same number of columns, and those columns have the same names. e.g. This is the basic idea:

df = pd.DataFrame()  # this will hold your all data

df1 = pd.DataFrame([(1, 2, 3)], columns=['a', 'b', 'c'])  # 1st iteration data
df2 = pd.DataFrame([(11, 22, 33)], columns=['a', 'b', 'c'])  # 2nd iteration data
df3 = pd.DataFrame([(111, 222, 333)], columns=['a', 'b', 'c'])  # 3rd iteratin data etc.

for data in [df1, df2, df3]:
    df = df.append(df1)

     a    b    c
0    1    2    3
1   11   22   33
2  111  222  333

What you need to do is:

a = "SELECT id FROM USER WHERE time >'2018-03-01'"
dataa = pd.read_sql_query(a, con=engine)
print(dataa)

df_all = pd.DataFrame()  # create an empty df to store all returns
for userid in dataa:
    x=f"SELECT idbody FROM col1 WHERE user_id='{userid}'"
    data = pd.read_sql_query(x,con = engine)
    df_all = df_all.append(data)  # update df with new dframes
1

You can also use concat:

a = "SELECT id FROM USER WHERE time >'2018-03-01'"
dataa = pd.read_sql_query(a, con=engine)
print(dataa)

df = pd.DataFrame()
for userid in dataa:
    x=f"SELECT idbody FROM col1 WHERE user_id='{userid}'"
    data = pd.read_sql_query(x,con = engine)
    df = pd.concat([df_all, data])

And now:

print(df)

Would be the desired output.

1

An alternate approach, instead of looping, why not join all userid into one string, and make one call to the database using SQL IN statement:

a = "SELECT id FROM USER WHERE time >'2018-03-01'"
dataa = pd.read_sql_query(a, con=engine)

userids = ', '.join([f'"{x}"' for x in dataa['id'].astype(str).values])
x = f"SELECT idbody FROM col1 WHERE user_id IN ({userids})"

data = pd.read_sql_query(x,con = engine)

Example

dataa = pd.DataFrame({'id': ['123', '124', '125', '126']})

userids = ', '.join([f'"{x}"' for x in dataa['id'].astype(str).values])
x = f"SELECT idbody FROM col1 WHERE user_id IN ({userids})"
print(x)

[out]

# SELECT idbody FROM col1 WHERE user_id IN ("123", "124", "125", "126")

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