Пример #1
0
    def test_cross(self):
        stim = FieldCompositeModel("stim", True)
        f = FieldScalarModel("a", 16, False, True)
        stim.add_field(f)
        f2 = FieldScalarModel("b", 16, False, True)
        stim.add_field(f2)
        
        cg = CovergroupModel("cg")
        
        cp = CoverpointModel(ExprFieldRefModel(f), "cp1",
                             CoverageOptionsModel())
        cg.add_coverpoint(cp)
        bn = CoverpointBinArrayModel("cp", 0, 1, 16)
        cp.add_bin_model(bn)
        
        cp2 = CoverpointModel(ExprFieldRefModel(f2), "cp2",
                              CoverageOptionsModel())
        cg.add_coverpoint(cp2)
        bn = CoverpointBinArrayModel("cp", 0, 1, 16)
        cp2.add_bin_model(bn)
        
        cr = CoverpointCrossModel("aXb",
                                  CoverageOptionsModel())
        cr.add_coverpoint(cp)
        cr.add_coverpoint(cp2)
        cg.add_coverpoint(cr)
        
        gen = GeneratorModel("top")
        gen.add_field(stim)
        gen.add_covergroup(cg)
        
        gen.finalize()

        # Need a special randomizer to deal with generators        
        r = Randomizer()

        count = 0        
        for i in range(1000):
            r.do_randomize([gen])
            cg.sample()
            count += 1
            cov = cg.get_coverage()
            print("Coverage: (" + str(i) + ") " + str(cov))
            if cov == 100:
                break
            
        self.assertEqual(cg.get_coverage(), 100)
        # Ensure that we converge relatively quickly
        self.assertLessEqual(count, (256+16+16))
Пример #2
0
    def test_coverpoint_bins(self):
        stim = FieldCompositeModel("stim", True)
        f = FieldScalarModel("a", 16, False, True)
        stim.add_field(f)
        f2 = FieldScalarModel("b", 16, False, True)
        stim.add_field(f2)
        
        cg = CovergroupModel("cg")
        
        cp = CoverpointModel(ExprFieldRefModel(f), "cp1",
                             CoverageOptionsModel())
        cg.add_coverpoint(cp)
        cp.add_bin_model(CoverpointBinArrayModel("bn1", 0, 1, 16))
        cp.add_bin_model(CoverpointBinCollectionModel.mk_collection("bn2", RangelistModel([
            [17,65535-16-1]
            ]), 16))
        cp.add_bin_model(CoverpointBinArrayModel("bn3", 0, 65535-16, 65535))
        
        cp2 = CoverpointModel(ExprFieldRefModel(f2), "cp2",
                              CoverageOptionsModel())
        cg.add_coverpoint(cp2)
        bn = CoverpointBinArrayModel("cp", 0, 1, 16)
        cp2.add_bin_model(bn)
        
        gen = GeneratorModel("top")
        gen.add_field(stim)
        gen.add_covergroup(cg)
        
        gen.finalize()

        # Need a special randomizer to deal with generators        
        r = Randomizer()

        count = 0        
        for i in range(1000):
            r.do_randomize([gen])
            cg.sample()
            count += 1
            cov = cg.get_coverage()
            if cov == 100:
                break
            
        self.assertEqual(cg.get_coverage(), 100)
        # Ensure that we converge relatively quickly
        self.assertLessEqual(count, 64)
Пример #3
0
    def test_smoke(self):
        stim = FieldCompositeModel("stim", True)
        f = FieldScalarModel("a", 16, False, True)
        stim.add_field(f)
        f2 = FieldScalarModel("b", 16, False, True)
        stim.add_field(f2)

        cg = CovergroupModel("cg")

        cp = CoverpointModel(ExprFieldRefModel(f), "cp1",
                             CoverageOptionsModel())
        cg.add_coverpoint(cp)
        bn = CoverpointBinArrayModel("cp", 1, 16)
        cp.add_bin_model(bn)

        cp2 = CoverpointModel(ExprFieldRefModel(f2), "cp2",
                              CoverageOptionsModel())
        cg.add_coverpoint(cp2)
        bn = CoverpointBinArrayModel("cp", 1, 16)
        cp2.add_bin_model(bn)

        gen = GeneratorModel("top")
        gen.add_field(stim)
        gen.add_covergroup(cg)

        gen.finalize()

        # Need a special randomizer to deal with generators
        r = Randomizer(RandState(0))
        randstate = RandState(0)

        count = 0
        for i in range(1000):
            r.do_randomize(randstate, SourceInfo("", -1), [gen])
            cg.sample()
            count += 1
            cov = cg.get_coverage()
            if cov == 100:
                break

        self.assertEqual(cg.get_coverage(), 100)
        # Ensure that we converge relatively quickly
        self.assertLessEqual(count, 32)