I would like to read multiple CSV files (with a different number of columns) from a target directory into a single Python Pandas DataFrame to efficiently search and extract data.
Events 1,0.32,0.20,0.67 2,0.94,0.19,0.14,0.21,0.94 3,0.32,0.20,0.64,0.32 4,0.87,0.13,0.61,0.54,0.25,0.43 5,0.62,0.21,0.77,0.44,0.16
Here is what I have so far:
# get a list of all csv files in target directory my_dir = "C:\\Data\\" filelist =  os.chdir( my_dir ) for files in glob.glob( "*.csv" ) : filelist.append(files) # read each csv file into single dataframe and add a filename reference column # (i.e. file1, file2, file 3) for each file read df = pd.DataFrame() columns = range(1,100) for c, f in enumerate(filelist) : key = "file%i" % c frame = pd.read_csv( (my_dir + f), skiprows = 1, index_col=0, names=columns ) frame['key'] = key df = df.append(frame,ignore_index=True)
(the indexing isn't working properly)
Essentially, the script below is exactly what I want (tried and tested) but needs to be looped through 10 or more csv files:
df1 = pd.DataFrame() df2 = pd.DataFrame() columns = range(1,100) df1 = pd.read_csv("C:\\Data\\Currambene_001y09h00m_events.csv", skiprows = 1, index_col=0, names=columns) df2 = pd.read_csv("C:\\Data\\Currambene_001y12h00m_events.csv", skiprows = 1, index_col=0, names=columns) keys = [('file1'), ('file2')] df = pd.concat([df1, df2], keys=keys, names=['fileno'])
I have found many related links, however I am still not able to get this to work: