mirror of
https://github.com/RPCS3/llvm-mirror.git
synced 2024-11-26 12:43:36 +01:00
2e697ee084
llvm-svn: 197302
249 lines
11 KiB
C++
249 lines
11 KiB
C++
#include "llvm/Support/BlockFrequency.h"
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#include "llvm/Support/BranchProbability.h"
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#include "llvm/Support/DataTypes.h"
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#include "gtest/gtest.h"
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#include <climits>
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using namespace llvm;
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namespace {
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TEST(BlockFrequencyTest, OneToZero) {
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BlockFrequency Freq(1);
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BranchProbability Prob(UINT32_MAX - 1, UINT32_MAX);
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Freq *= Prob;
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EXPECT_EQ(Freq.getFrequency(), 0u);
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Freq = BlockFrequency(1);
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uint32_t Remainder = Freq.scale(Prob);
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EXPECT_EQ(Freq.getFrequency(), 0u);
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EXPECT_EQ(Remainder, UINT32_MAX - 1);
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}
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TEST(BlockFrequencyTest, OneToOne) {
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BlockFrequency Freq(1);
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BranchProbability Prob(UINT32_MAX, UINT32_MAX);
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Freq *= Prob;
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EXPECT_EQ(Freq.getFrequency(), 1u);
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Freq = BlockFrequency(1);
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uint32_t Remainder = Freq.scale(Prob);
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EXPECT_EQ(Freq.getFrequency(), 1u);
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EXPECT_EQ(Remainder, 0u);
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}
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TEST(BlockFrequencyTest, ThreeToOne) {
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BlockFrequency Freq(3);
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BranchProbability Prob(3000000, 9000000);
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Freq *= Prob;
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EXPECT_EQ(Freq.getFrequency(), 1u);
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Freq = BlockFrequency(3);
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uint32_t Remainder = Freq.scale(Prob);
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EXPECT_EQ(Freq.getFrequency(), 1u);
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EXPECT_EQ(Remainder, 0u);
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}
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TEST(BlockFrequencyTest, MaxToHalfMax) {
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BlockFrequency Freq(UINT64_MAX);
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BranchProbability Prob(UINT32_MAX / 2, UINT32_MAX);
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Freq *= Prob;
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EXPECT_EQ(Freq.getFrequency(), 9223372034707292159ULL);
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Freq = BlockFrequency(UINT64_MAX);
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uint32_t Remainder = Freq.scale(Prob);
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EXPECT_EQ(Freq.getFrequency(), 9223372034707292159ULL);
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EXPECT_EQ(Remainder, 0u);
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}
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TEST(BlockFrequencyTest, BigToBig) {
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const uint64_t Big = 387246523487234346LL;
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const uint32_t P = 123456789;
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BlockFrequency Freq(Big);
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BranchProbability Prob(P, P);
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Freq *= Prob;
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EXPECT_EQ(Freq.getFrequency(), Big);
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Freq = BlockFrequency(Big);
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uint32_t Remainder = Freq.scale(Prob);
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EXPECT_EQ(Freq.getFrequency(), Big);
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EXPECT_EQ(Remainder, 0u);
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}
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TEST(BlockFrequencyTest, MaxToMax) {
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BlockFrequency Freq(UINT64_MAX);
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BranchProbability Prob(UINT32_MAX, UINT32_MAX);
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Freq *= Prob;
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EXPECT_EQ(Freq.getFrequency(), UINT64_MAX);
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// This additionally makes sure if we have a value equal to our saturating
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// value, we do not signal saturation if the result equals said value, but
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// saturating does not occur.
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Freq = BlockFrequency(UINT64_MAX);
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uint32_t Remainder = Freq.scale(Prob);
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EXPECT_EQ(Freq.getFrequency(), UINT64_MAX);
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EXPECT_EQ(Remainder, 0u);
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}
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TEST(BlockFrequencyTest, ScaleResultRemainderTest) {
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struct {
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uint64_t Freq;
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uint32_t Prob[2];
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uint64_t ExpectedFreq;
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uint32_t ExpectedRemainder;
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} Tests[80] = {
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// Data for scaling that results in <= 64 bit division.
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{ 0x1423e2a50ULL, { 0x64819521, 0x7765dd13 }, 0x10f418889ULL, 0x92b9d25 },
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{ 0x35ef14ceULL, { 0x28ade3c7, 0x304532ae }, 0x2d73c33aULL, 0x2c0fd0b6 },
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{ 0xd03dbfbe24ULL, { 0x790079, 0xe419f3 }, 0x6e776fc1fdULL, 0x4a06dd },
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{ 0x21d67410bULL, { 0x302a9dc2, 0x3ddb4442 }, 0x1a5948fd6ULL, 0x265d1c2a },
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{ 0x8664aeadULL, { 0x3d523513, 0x403523b1 }, 0x805a04cfULL, 0x324c27b8 },
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{ 0x201db0cf4ULL, { 0x35112a7b, 0x79fc0c74 }, 0xdf8b07f6ULL, 0x490c1dc4 },
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{ 0x13f1e4430aULL, { 0x21c92bf, 0x21e63aae }, 0x13e0cba15ULL, 0x1df47c30 },
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{ 0x16c83229ULL, { 0x3793f66f, 0x53180dea }, 0xf3ce7b6ULL, 0x1d0c1b6b },
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{ 0xc62415be8ULL, { 0x9cc4a63, 0x4327ae9b }, 0x1ce8b71caULL, 0x3f2c696a },
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{ 0x6fac5e434ULL, { 0xe5f9170, 0x1115e10b }, 0x5df23dd4cULL, 0x4dafc7c },
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{ 0x1929375f2ULL, { 0x3a851375, 0x76c08456 }, 0xc662b082ULL, 0x343589ee },
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{ 0x243c89db6ULL, { 0x354ebfc0, 0x450ef197 }, 0x1bf8c1661ULL, 0x4948e49 },
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{ 0x310e9b31aULL, { 0x1b1b8acf, 0x2d3629f0 }, 0x1d69c93f9ULL, 0x73e3b96 },
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{ 0xa1fae921dULL, { 0xa7a098c, 0x10469f44 }, 0x684413d6cULL, 0x86a882c },
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{ 0xc1582d957ULL, { 0x498e061, 0x59856bc }, 0x9edc5f4e7ULL, 0x29b0653 },
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{ 0x57cfee75ULL, { 0x1d061dc3, 0x7c8bfc17 }, 0x1476a220ULL, 0x2383d33f },
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{ 0x139220080ULL, { 0x294a6c71, 0x2a2b07c9 }, 0x1329e1c76ULL, 0x7aa5da },
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{ 0x1665d353cULL, { 0x7080db5, 0xde0d75c }, 0xb590d9fbULL, 0x7ba8c38 },
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{ 0xe8f14541ULL, { 0x5188e8b2, 0x736527ef }, 0xa4971be5ULL, 0x6b612167 },
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{ 0x2f4775f29ULL, { 0x254ef0fe, 0x435fcf50 }, 0x1a2e449c1ULL, 0x28bbf5e },
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{ 0x27b85d8d7ULL, { 0x304c8220, 0x5de678f2 }, 0x146e3bef9ULL, 0x4b27097e },
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{ 0x1d362e36bULL, { 0x36c85b12, 0x37a66f55 }, 0x1cc19b8e6ULL, 0x688e828 },
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{ 0x155fd48c7ULL, { 0xf5894d, 0x1256108 }, 0x11e383602ULL, 0x111f0cb },
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{ 0xb5db2d15ULL, { 0x39bb26c5, 0x5bdcda3e }, 0x72499259ULL, 0x59c4939b },
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{ 0x153990298ULL, { 0x48921c09, 0x706eb817 }, 0xdb3268e8ULL, 0x66bb8a80 },
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{ 0x28a7c3ed7ULL, { 0x1f776fd7, 0x349f7a70 }, 0x184f73ae1ULL, 0x28910321 },
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{ 0x724dbeabULL, { 0x1bd149f5, 0x253a085e }, 0x5569c0b3ULL, 0xff8e2ed },
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{ 0xd8f0c513ULL, { 0x18c8cc4c, 0x1b72bad0 }, 0xc3e30643ULL, 0xd85e134 },
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{ 0x17ce3dcbULL, { 0x1e4c6260, 0x233b359e }, 0x1478f4afULL, 0x49ea31e },
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{ 0x1ce036ce0ULL, { 0x29e3c8af, 0x5318dd4a }, 0xe8e76196ULL, 0x11d5b9c4 },
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{ 0x1473ae2aULL, { 0x29b897ba, 0x2be29378 }, 0x13718185ULL, 0x6f93b2c },
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{ 0x1dd41aa68ULL, { 0x3d0a4441, 0x5a0e8f12 }, 0x1437b6bbfULL, 0x54b09ffa },
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{ 0x1b49e4a53ULL, { 0x3430c1fe, 0x5a204aed }, 0xfcd6852fULL, 0x15ad6ed7 },
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{ 0x217941b19ULL, { 0x12ced2bd, 0x21b68310 }, 0x12aca65b1ULL, 0x1b2a9565 },
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{ 0xac6a4dc8ULL, { 0x3ed68da8, 0x6fdca34c }, 0x60da926dULL, 0x22ff53e4 },
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{ 0x1c503a4e7ULL, { 0xfcbbd32, 0x11e48d17 }, 0x18fec7d38ULL, 0xa8aa816 },
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{ 0x1c885855ULL, { 0x213e919d, 0x25941897 }, 0x193de743ULL, 0x4ea09c },
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{ 0x29b9c168eULL, { 0x2b644aea, 0x45725ee7 }, 0x1a122e5d5ULL, 0xbee1099 },
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{ 0x806a33f2ULL, { 0x30a80a23, 0x5063733a }, 0x4db9a264ULL, 0x1eaed76e },
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{ 0x282afc96bULL, { 0x143ae554, 0x1a9863ff }, 0x1e8de5204ULL, 0x158d9020 },
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// Data for scaling that results in > 64 bit division.
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{ 0x23ca5f2f672ca41cULL, { 0xecbc641, 0x111373f7 }, 0x1f0301e5e8295ab5ULL, 0xf627f79 },
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{ 0x5e4f2468142265e3ULL, { 0x1ddf5837, 0x32189233 }, 0x383ca7ba9fdd2c8cULL, 0x1c8f33e1 },
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{ 0x277a1a6f6b266bf6ULL, { 0x415d81a8, 0x61eb5e1e }, 0x1a5a3e1d41b30c0fULL, 0x29cde3ae },
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{ 0x1bdbb49a237035cbULL, { 0xea5bf17, 0x1d25ffb3 }, 0xdffc51c53d44b93ULL, 0x5170574 },
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{ 0x2bce6d29b64fb8ULL, { 0x3bfd5631, 0x7525c9bb }, 0x166ebedda7ac57ULL, 0x3026dfab },
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{ 0x3a02116103df5013ULL, { 0x2ee18a83, 0x3299aea8 }, 0x35be8922ab1e2a84ULL, 0x298d9919 },
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{ 0x7b5762390799b18cULL, { 0x12f8e5b9, 0x2563bcd4 }, 0x3e960077aca01209ULL, 0x93afeb8 },
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{ 0x69cfd72537021579ULL, { 0x4c35f468, 0x6a40feee }, 0x4be4cb3848be98a3ULL, 0x4ff96b9e },
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{ 0x49dfdf835120f1c1ULL, { 0x8cb3759, 0x559eb891 }, 0x79663f7120edadeULL, 0x51b1fb5b },
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{ 0x74b5be5c27676381ULL, { 0x47e4c5e0, 0x7c7b19ff }, 0x4367d2dff36a1028ULL, 0x7a7b5608 },
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{ 0x4f50f97075e7f431ULL, { 0x9a50a17, 0x11cd1185 }, 0x2af952b34c032df4ULL, 0xfddc6a3 },
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{ 0x2f8b0d712e393be4ULL, { 0x1487e386, 0x15aa356e }, 0x2d0df36478a776aaULL, 0x14e2564c },
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{ 0x224c1c75999d3deULL, { 0x3b2df0ea, 0x4523b100 }, 0x1d5b481d145f08aULL, 0x15145eec },
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{ 0x2bcbcea22a399a76ULL, { 0x28b58212, 0x48dd013e }, 0x187814d084c47cabULL, 0x3a38ebe2 },
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{ 0x1dbfca91257cb2d1ULL, { 0x1a8c04d9, 0x5e92502c }, 0x859cf7d00f77545ULL, 0x7431f4d },
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{ 0x7f20039b57cda935ULL, { 0xeccf651, 0x323f476e }, 0x25720cd976461a77ULL, 0x202817a3 },
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{ 0x40512c6a586aa087ULL, { 0x113b0423, 0x398c9eab }, 0x1341c03de8696a7eULL, 0x1e27284b },
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{ 0x63d802693f050a11ULL, { 0xf50cdd6, 0xfce2a44 }, 0x60c0177bb5e46846ULL, 0xf7ad89e },
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{ 0x2d956b422838de77ULL, { 0xb2d345b, 0x1321e557 }, 0x1aa0ed16b6aa5319ULL, 0xfe1a5ce },
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{ 0x5a1cdf0c1657bc91ULL, { 0x1d77bb0c, 0x1f991ff1 }, 0x54097ee94ff87560ULL, 0x11c4a26c },
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{ 0x3801b26d7e00176bULL, { 0xeed25da, 0x1a819d8b }, 0x1f89e96a3a639526ULL, 0xcd51e7c },
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{ 0x37655e74338e1e45ULL, { 0x300e170a, 0x5a1595fe }, 0x1d8cfb55fddc0441ULL, 0x3df05434 },
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{ 0x7b38703f2a84e6ULL, { 0x66d9053, 0xc79b6b9 }, 0x3f7d4c91774094ULL, 0x26d939e },
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{ 0x2245063c0acb3215ULL, { 0x30ce2f5b, 0x610e7271 }, 0x113b916468389235ULL, 0x1b588512 },
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{ 0x6bc195877b7b8a7eULL, { 0x392004aa, 0x4a24e60c }, 0x530594fb17db6ba5ULL, 0x35c0a5f0 },
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{ 0x40a3fde23c7b43dbULL, { 0x4e712195, 0x6553e56e }, 0x320a799bc76a466aULL, 0x5e23a5eb },
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{ 0x1d3dfc2866fbccbaULL, { 0x5075b517, 0x5fc42245 }, 0x18917f0061595bc3ULL, 0x3fcf4527 },
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{ 0x19aeb14045a61121ULL, { 0x1bf6edec, 0x707e2f4b }, 0x6626672a070bcc7ULL, 0x3607801f },
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{ 0x44ff90486c531e9fULL, { 0x66598a, 0x8a90dc }, 0x32f6f2b0525199b0ULL, 0x5ab576 },
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{ 0x3f3e7121092c5bcbULL, { 0x1c754df7, 0x5951a1b9 }, 0x14267f50b7ef375dULL, 0x221220a8 },
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{ 0x60e2dafb7e50a67eULL, { 0x4d96c66e, 0x65bd878d }, 0x49e31715ac393f8bULL, 0x4e97b195 },
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{ 0x656286667e0e6e29ULL, { 0x9d971a2, 0xacda23b }, 0x5c6ee315ead6cb4fULL, 0x516f5bd },
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{ 0x1114e0974255d507ULL, { 0x1c693, 0x2d6ff }, 0xaae42e4b35f6e60ULL, 0x8b65 },
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{ 0x508c8baf3a70ff5aULL, { 0x3b26b779, 0x6ad78745 }, 0x2c98387636c4b365ULL, 0x11dc6a51 },
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{ 0x5b47bc666bf1f9cfULL, { 0x10a87ed6, 0x187d358a }, 0x3e1767155848368bULL, 0xfb871c },
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{ 0x50954e3744460395ULL, { 0x7a42263, 0xcdaa048 }, 0x2fe739f0aee1fee1ULL, 0xb8add57 },
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{ 0x20020b406550dd8fULL, { 0x3318539, 0x42eead0 }, 0x186f326325fa346bULL, 0x10d3ae7 },
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{ 0x5bcb0b872439ffd5ULL, { 0x6f61fb2, 0x9af7344 }, 0x41fa1e3bec3c1b30ULL, 0x4fee45a },
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{ 0x7a670f365db87a53ULL, { 0x417e102, 0x3bb54c67 }, 0x8642a558304fd9eULL, 0x3b65f514 },
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{ 0x1ef0db1e7bab1cd0ULL, { 0x2b60cf38, 0x4188f78f }, 0x147ae0d6226b2ee6ULL, 0x336b6106 }
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};
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for (unsigned i = 0; i < 80; i++) {
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BlockFrequency Freq(Tests[i].Freq);
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uint32_t Remainder = Freq.scale(BranchProbability(Tests[i].Prob[0],
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Tests[i].Prob[1]));
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EXPECT_EQ(Tests[i].ExpectedFreq, Freq.getFrequency());
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EXPECT_EQ(Tests[i].ExpectedRemainder, Remainder);
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}
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}
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TEST(BlockFrequency, Divide) {
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BlockFrequency Freq(0x3333333333333333ULL);
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Freq /= BranchProbability(1, 2);
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EXPECT_EQ(Freq.getFrequency(), 0x6666666666666666ULL);
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}
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TEST(BlockFrequencyTest, Saturate) {
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BlockFrequency Freq(0x3333333333333333ULL);
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Freq /= BranchProbability(100, 300);
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EXPECT_EQ(Freq.getFrequency(), 0x9999999999999999ULL);
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Freq /= BranchProbability(1, 2);
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EXPECT_EQ(Freq.getFrequency(), UINT64_MAX);
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Freq = 0x1000000000000000ULL;
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Freq /= BranchProbability(10000, 160000);
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EXPECT_EQ(Freq.getFrequency(), UINT64_MAX);
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// Try to cheat the multiplication overflow check.
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Freq = 0x00000001f0000001ull;
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Freq /= BranchProbability(1000, 0xf000000f);
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EXPECT_EQ(33506781356485509ULL, Freq.getFrequency());
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}
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TEST(BlockFrequencyTest, ProbabilityCompare) {
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BranchProbability A(4, 5);
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BranchProbability B(4U << 29, 5U << 29);
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BranchProbability C(3, 4);
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EXPECT_TRUE(A == B);
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EXPECT_FALSE(A != B);
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EXPECT_FALSE(A < B);
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EXPECT_FALSE(A > B);
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EXPECT_TRUE(A <= B);
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EXPECT_TRUE(A >= B);
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EXPECT_FALSE(B == C);
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EXPECT_TRUE(B != C);
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EXPECT_FALSE(B < C);
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EXPECT_TRUE(B > C);
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EXPECT_FALSE(B <= C);
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EXPECT_TRUE(B >= C);
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BranchProbability BigZero(0, UINT32_MAX);
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BranchProbability BigOne(UINT32_MAX, UINT32_MAX);
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EXPECT_FALSE(BigZero == BigOne);
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EXPECT_TRUE(BigZero != BigOne);
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EXPECT_TRUE(BigZero < BigOne);
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EXPECT_FALSE(BigZero > BigOne);
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EXPECT_TRUE(BigZero <= BigOne);
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EXPECT_FALSE(BigZero >= BigOne);
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}
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TEST(BlockFrequencyTest, SaturatingRightShift) {
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BlockFrequency Freq(0x10080ULL);
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Freq >>= 2;
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EXPECT_EQ(Freq.getFrequency(), 0x4020ULL);
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Freq >>= 20;
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EXPECT_EQ(Freq.getFrequency(), 0x1ULL);
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}
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}
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