I have a list like this:
a = [[4.0, 4, 4.0], [3.0, 3, 3.6], [3.5, 6, 4.8]]
I want an outcome like this (EVERY first element in the list):
4.0, 3.0, 3.5
a[::1], but it doesn't work
columns = zip(*rows) #transpose rows to columns print columns #print the first column #you can also do more with the columns print columns # or print the second column columns.append([7,7,7]) #add a new column to the end backToRows = zip(*columns) # now we are back to rows with a new column print backToRows
You can also use numpy:
a = numpy.array(a) print a[:,0]
Edit: zip object is not subscriptable. It need to be converted to list to access as list:
column = list(zip(*row))
Compared the 3 methods
D2_list=[list(range(100))]*100 t1=time.time() for i in range(10**5): for j in range(10): b=[k[j] for k in D2_list] D2_list_time=time.time()-t1 array=np.array(D2_list) t1=time.time() for i in range(10**5): for j in range(10): b=array[:,j] Numpy_time=time.time()-t1 D2_trans = list(zip(*D2_list)) t1=time.time() for i in range(10**5): for j in range(10): b=D2_trans[j] Zip_time=time.time()-t1 print ('2D List:',D2_list_time) print ('Numpy:',Numpy_time) print ('Zip:',Zip_time)
The Zip method works best. It was quite useful when I had to do some column wise processes for mapreduce jobs in the cluster servers where numpy was not installed.
If you have access to numpy,
import numpy as np a_transposed = a.T # Get first row print(a_transposed)
The benefit of this method is that if you want the "second" element in a 2d list, all you have to do now is
a_transposed object is already computed, so you do not need to recalculate.
Finding the first element in a 2-D list can be rephrased as find the first column in the 2d list. Because your data structure is
a list of rows, an easy way of sampling the value at the first index in every row is just by transposing the matrix and sampling the first list.