Esempio n. 1
0
 def test_negative_extreme_percentile_is_still_positive(
         self, empty_tdigest):
     # Test https://github.com/CamDavidsonPilon/tdigest/issues/16
     t = TDigest()
     t.batch_update([62.0, 202.0, 1415.0, 1433.0])
     print(t.percentile(26))
     assert t.percentile(26) > 0
Esempio n. 2
0
 def test_extreme_percentiles_return_min_and_max(self, empty_tdigest):
     t = TDigest()
     data = random.randn(10000)
     t.batch_update(data)
     assert t.percentile(100.) == data.max()
     assert t.percentile(0) == data.min()
     assert t.percentile(0.1) > data.min()
     assert t.percentile(0.999) < data.max()
Esempio n. 3
0
    def test_ints(self):
        t = TDigest()
        t.batch_update([1, 2, 3])
        assert abs(t.percentile(50) - 2) < 0.0001

        t = TDigest()
        x = [1, 2, 2, 2, 2, 2, 2, 2, 3]
        t.batch_update(x)
        assert t.percentile(50) == 2
        assert sum([c.count for c in t.C.values()]) == len(x)
Esempio n. 4
0
    def test_ints(self):
        t = TDigest()
        t.batch_update([1,2,3])
        assert t.percentile(0.5) == 2

        t = TDigest()
        x = [1,2,2,2,2,2,2,2,3]
        t.batch_update(x)
        assert t.percentile(0.5) == 2
        assert sum([c.count for c in t.C.values()]) == len(x)
Esempio n. 5
0
    def test_uniform(self):
        T1 = TDigest()
        x = random.random(size=10000)
        T1.batch_update(x)

        assert abs(T1.percentile(.5) - 0.5) < 0.02
        assert abs(T1.percentile(.1) - .1) < 0.01
        assert abs(T1.percentile(.9) - 0.9) < 0.01
        assert abs(T1.percentile(.01) - 0.01) < 0.005
        assert abs(T1.percentile(.99) - 0.99) < 0.005
        assert abs(T1.percentile(.001) - 0.001) < 0.001
        assert abs(T1.percentile(.999) - 0.999) < 0.001
Esempio n. 6
0
    def test_uniform(self):
        t = TDigest()
        x = random.random(size=10000)
        t.batch_update(x)

        assert abs(t.percentile(.5) - 0.5) < 0.02
        assert abs(t.percentile(.1) - .1) < 0.01
        assert abs(t.percentile(.9) - 0.9) < 0.01
        assert abs(t.percentile(.01) - 0.01) < 0.005
        assert abs(t.percentile(.99) - 0.99) < 0.005
        assert abs(t.percentile(.001) - 0.001) < 0.001
        assert abs(t.percentile(.999) - 0.999) < 0.001
Esempio n. 7
0
    def test_uniform(self):
        t = TDigest()
        x = random.random(size=10000)
        t.batch_update(x)

        assert abs(t.percentile(50) - 0.5) < 0.01
        assert abs(t.percentile(10) - .1) < 0.01
        assert abs(t.percentile(90) - 0.9) < 0.01
        assert abs(t.percentile(1) - 0.01) < 0.005
        assert abs(t.percentile(99) - 0.99) < 0.005
        assert abs(t.percentile(0.1) - 0.001) < 0.001
        assert abs(t.percentile(99.9) - 0.999) < 0.001
Esempio n. 8
0
 def test_percentile_at_border_returns_an_intermediate_value(self, empty_tdigest):
     data = [62.0, 202.0, 1415.0, 1433.0]
     t = TDigest()
     t.batch_update(data)
     assert t.percentile(25) == 132.0
Esempio n. 9
0
 def test_extreme_percentiles_return_min_and_max(self, empty_tdigest):
     t = TDigest()
     data = random.randn(100000)
     t.batch_update(data)
     assert t.percentile(0) == data.min()
     assert t.percentile(1.) == data.max()
Esempio n. 10
0
 def test_negative_extreme_percentile_is_still_positive(self, empty_tdigest):
     # Test https://github.com/CamDavidsonPilon/tdigest/issues/16
     t = TDigest()
     t.batch_update([62.0, 202.0, 1415.0, 1433.0])
     assert t.percentile(0.25) > 0