Baunsgaard commented on a change in pull request #892: Extend Python API (rand, 
lm, matrix multiplication)
URL: https://github.com/apache/systemml/pull/892#discussion_r410382542
 
 

 ##########
 File path: src/main/python/tests/test_matrix_aggregations.py
 ##########
 @@ -84,6 +86,63 @@ def test_var2(self):
     def test_var3(self):
         self.assertTrue(np.allclose(sds.matrix(m1).var(axis=1).compute(), 
m1.var(axis=1, ddof=1).reshape(dim, 1)))
 
+    def test_rand_basic(self):
+        seed = 15
+        shape = (20, 20)
+        min_max = (0, 1)
+        sparsity = 0.2
+
+        m = sds.rand(rows=shape[0], cols=shape[1], pdf="uniform", 
min=min_max[0], max=min_max[1],
+                     seed=seed, sparsity=sparsity).compute()
+
+        self.assertTrue(m.shape == shape)
+        self.assertTrue((m.min() >= min_max[0]) and (m.max() <= min_max[1]))
+
+        # sparsity
+        m_flat = m.flatten('F')
+        count, bins, patches = plt.hist(m_flat)
+
+        non_zero_value_percent = sum(count[1:]) * 100 / count[0]
+        e = 0.05
+        self.assertTrue((non_zero_value_percent >= (sparsity - e) * 100)
+                        and (non_zero_value_percent <= (sparsity + e) * 100))
+        self.assertTrue(sum(count) == (shape[0] * shape[1]))
+
+    def test_rand_distribution(self):
+        seed = 15
+        shape = (20, 20)
+        min_max = (0, 1)
+
+        m = sds.rand(rows=shape[0], cols=shape[1], pdf="uniform", 
min=min_max[0], max=min_max[1],
+                     seed=seed).compute()
+
+        m_flat = m.flatten('F')
+
+        dist = best_distribution(m_flat)
+        self.assertTrue(dist == 'uniform')
+
+        m1 = sds.rand(rows=shape[0], cols=shape[1], pdf="normal", 
min=min_max[0], max=min_max[1],
+                     seed=seed).compute()
+
+        m1_flat = m1.flatten('F')
+
+        dist = best_distribution(m1_flat)
+        self.assertTrue(dist == 'norm')
+
+
 
 Review comment:
   (OCD comment) double newline 

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