I am trying to put together a unittest to test whether my function that reads in big data files, produces the correct result in shape of an numpy array. However, these files and arrays are huge and can not be typed in. I believe I need to save input and output files and test using them. This is how my testModule looks like:
import numpy as np from myFunctions import fun1 import unittest class TestMyFunctions(unittest.TestCase): def setUp(self): self.inputFile1 = "input1.txt" self.inputFile2 = "input2.txt" self.outputFile = "output.txt" def test_fun1(self): m1 = np.genfromtxt(self.inputFile1) m2 = np.genfromtxt(self.inputFile2) R = np.genfromtxt(self.outputFile) self.assertEqual(fun1(m1,m2),R) if __name__ =='__main__': unittest.main(exit=False)
I'm not sure if there is a better/neater way of testing huge results.
Edit: Also getting an attribute error now:
AttributeError: TestMyFunctions object has no attribute '_testMethodName'
Update - AttributeError Solved - 'def init()' is not allowed. Changed with def setUp()!