As a new-to-python person the only way that I can think of to grab information from a table (separated by only whitespace) is to call an item by its position using the row and column its located in. I've been using numpy a lot like so:
information_table=np.array() #The table I'm pulling data from info_i_need_from_table=information_table[i][j] #Where i/j is the location of whatever info I need
Is this the optimal way of grabbing information from a table? I'm new to python so as far as I know this is the only way to do it, but I'd be willing to bet I'm wrong. Say my
information_table is fairly large, thousands of rows, hundreds of colums. Would you utilize the same 'tool' to pull information from, say, a much smaller table?
As an example of one of the tables I'm working with:
/SAH/SAH5/jimunoz/DUSTYlib2/models_Y100_699K/COMPACTs3300_Al_g+1.5_m1.0_t02_st_z-0.25.inp 3300 699 1.000E+02 Al2O3 1.06E+05 1.26E-05 1.70E+14 81 2.61E-10 0.360484737991 0.77871386826 1.03440307618 0.568135259544 0.157877963222 0.0791445961324 0.0398783584044 0.0159762347055 0.000741792598059 /SAH/SAH5/jimunoz/DUSTYlib2/models_Y100_699K/COMPACTs3300_Al_g+1.5_m1.0_t02_st_z-0.25.inp 3300 699 1.000E+02 Al2O3 1.06E+05 1.60E-05 1.70E+14 81 3.12E-10 0.360484737991 0.77871386826 1.03440307618 0.568135259544 0.157877963222 0.0791445961324 0.0398783584044 0.0159762347055 0.000741792620505
Those are just the first two rows. Another table I may be working with would just have numerous rows and columns of floating point numbers (at about 5 sig-figs).