I have many text files with one column data,different dtype (float64, date), no header inside.
I'm trying to write code which will:
- get all file names without extension -> create a list (this works!)
- read all files in one directory and concat them into one data frame with one numerated index.
filelist = os.listdir(path) #Make a file list file_names=[os.path.splitext(x) for x in filelist] #Remove file extension
Tried this (first option):
df_list = [pd.read_table(file) for file in filelist] df = pd.concat(df_list,ignore_index=True)
...but I got 3 columns from 6 files with completely messed data.
Also tried this (second option):
df=pd.DataFrame(columns=file_names) for file in filelist: frame=pd.read_csv(file) df=df.append(frame, ignore_index=True)
...this also doesn't work.
Any advice would be appreciated.
At the beginning of Q*.txt files are only zeros (about 100values), and after this numbers shows.
Q1.txt Q2.txt T21 T22 0 0 51.06 77.46 0 0 50.32 77.33 0 0 50.90 77.45
When I run "first option", I got:
filelist >>>['Q1.txt', 'Q2.txt','T21.txt', 'T22.txt'] file_names >>>['Q1', 'Q2','T21', 'T22'] df.dtypes >>>0 object >>>51.06 object >>>77.46 object >>>dtype: object
0 51.06 77.46 0 0 1 0 2 0
It looks like first 2 files (those with zeros at the beginning) are in one column. Second and third are first values of file T21 and T22.
Thanks to @Viktor Kerkez I've added
header=None to the
pd.read_table and now all files are in one column, dtype=object.
How can I split all files to many columns ?