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/*
* Copyright 2019 Texas A&M University
*
* Redistribution and use in source and binary forms, with or without
* modification, are permitted provided that the following conditions are met:
*
* 1. Redistributions of source code must retain the above copyright notice,
* this list of conditions and the following disclaimer.
*
* 2. Redistributions in binary form must reproduce the above copyright notice,
* this list of conditions and the following disclaimer in the documentation
* and/or other materials provided with the distribution.
*
* 3. Neither the name of the copyright holder nor the names of its
* contributors may be used to endorse or promote products derived from this
* software without specific prior written permission.
*
* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS
* "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT
* LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR
* A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT
* HOLDER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL,
* SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT
* LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE,
* DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY
* THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT
* (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
* OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
*
* Author: Daniel A. Jiménez
* Adapted to gem5 by: Javier Bueno Hedo
*
*/
/*
* Multiperspective Perceptron Predictor (by Daniel A. Jiménez)
*/
#include "cpu/pred/multiperspective_perceptron.hh"
#include "base/random.hh"
#include "debug/Branch.hh"
namespace gem5
{
namespace branch_prediction
{
int
MultiperspectivePerceptron::xlat[] =
{1,3,4,5,7,8,9,11,12,14,15,17,19,21,23,25,27,29,32,34,37,41,45,49,53,58,63,
69,76,85,94,106,};
int
MultiperspectivePerceptron::xlat4[] =
{0,4,5,7,9,11,12,14,16,17,19,22,28,33,39,45,};
MultiperspectivePerceptron::ThreadData::ThreadData(int num_filters,
int n_local_histories, int local_history_length, int assoc,
const std::vector<std::vector<int>> &blurrypath_bits, int path_length,
int ghist_length, int block_size,
const std::vector<std::vector<std::vector<bool>>> &acyclic_bits,
const std::vector<int> &modhist_indices,
const std::vector<int> &modhist_lengths,
const std::vector<int> &modpath_indices,
const std::vector<int> &modpath_lengths,
const std::vector<int> &table_sizes, int n_sign_bits)
: filterTable(num_filters), acyclic_histories(acyclic_bits.size()),
acyclic2_histories(acyclic_bits.size()),
blurrypath_histories(blurrypath_bits.size()),
ghist_words(ghist_length/block_size+1, 0),
path_history(path_length, 0), imli_counter(4,0),
localHistories(n_local_histories, local_history_length),
recency_stack(assoc), last_ghist_bit(false), occupancy(0)
{
for (int i = 0; i < blurrypath_bits.size(); i+= 1) {
blurrypath_histories[i].resize(blurrypath_bits[i].size());
}
for (int i = 0; i < acyclic_bits.size(); i += 1) {
acyclic_histories[i].resize(acyclic_bits[i].size());
acyclic2_histories[i].resize(acyclic_bits[i].size());
}
int max_modhist_idx = -1;
for (auto &elem : modhist_indices) {
max_modhist_idx = (max_modhist_idx < elem) ? elem : max_modhist_idx;
}
if (max_modhist_idx >= 0) {
mod_histories.resize(max_modhist_idx + 1);
}
for (int i = 0; i < modhist_lengths.size(); i+= 1) {
mod_histories[modhist_indices[i]].resize(modhist_lengths[i]);
}
int max_modpath_idx = -1;
for (auto &elem : modpath_indices) {
max_modpath_idx = (max_modpath_idx < elem) ? elem : max_modpath_idx;
}
if (max_modpath_idx >= 0) {
modpath_histories.resize(max_modpath_idx + 1);
}
for (int i = 0; i < modpath_lengths.size(); i+= 1) {
modpath_histories[modpath_indices[i]].resize(modpath_lengths[i]);
}
for (int i = 0; i < table_sizes.size(); i += 1) {
mpreds.push_back(0);
tables.push_back(std::vector<short int>(table_sizes[i]));
sign_bits.push_back(std::vector<std::array<bool, 2>>(table_sizes[i]));
for (int j = 0; j < table_sizes[i]; j += 1) {
for (int k = 0; k < n_sign_bits; k += 1) {
sign_bits[i][j][k] = (i & 1) | (k & 1);
}
}
}
}
MultiperspectivePerceptron::MultiperspectivePerceptron(
const MultiperspectivePerceptronParams &p) : BPredUnit(p),
blockSize(p.block_size), pcshift(p.pcshift), threshold(p.threshold),
bias0(p.bias0), bias1(p.bias1), biasmostly0(p.biasmostly0),
biasmostly1(p.biasmostly1), nbest(p.nbest), tunebits(p.tunebits),
hshift(p.hshift), imli_mask1(p.imli_mask1), imli_mask4(p.imli_mask4),
recencypos_mask(p.recencypos_mask), fudge(p.fudge),
n_sign_bits(p.n_sign_bits), pcbit(p.pcbit), decay(p.decay),
record_mask(p.record_mask), hash_taken(p.hash_taken),
tuneonly(p.tuneonly), extra_rounds(p.extra_rounds), speed(p.speed),
budgetbits(p.budgetbits), speculative_update(p.speculative_update),
threadData(p.numThreads, nullptr), doing_local(false),
doing_recency(false), assoc(0), ghist_length(p.initial_ghist_length),
modghist_length(1), path_length(1), thresholdCounter(0),
theta(p.initial_theta), extrabits(0), imli_counter_bits(4),
modhist_indices(), modhist_lengths(), modpath_indices(), modpath_lengths()
{
fatal_if(speculative_update, "Speculative update not implemented");
}
void
MultiperspectivePerceptron::setExtraBits(int bits)
{
extrabits = bits;
}
void
MultiperspectivePerceptron::init()
{
createSpecs();
for (auto &spec : specs) {
// initial assignation of values
table_sizes.push_back(spec->size);
}
// Update bit requirements and runtime values
for (auto &spec : specs) {
spec->setBitRequirements();
}
const MultiperspectivePerceptronParams &p =
static_cast<const MultiperspectivePerceptronParams &>(params());
computeBits(p.num_filter_entries, p.num_local_histories,
p.local_history_length, p.ignore_path_size);
for (int i = 0; i < threadData.size(); i += 1) {
threadData[i] = new ThreadData(p.num_filter_entries,
p.num_local_histories,
p.local_history_length, assoc,
blurrypath_bits, path_length,
ghist_length, blockSize, acyclic_bits,
modhist_indices, modhist_lengths,
modpath_indices, modpath_lengths,
table_sizes, n_sign_bits);
}
}
void
MultiperspectivePerceptron::computeBits(int num_filter_entries,
int nlocal_histories, int local_history_length, bool ignore_path_size)
{
int totalbits = extrabits;
for (auto &imli_bits : imli_counter_bits) {
totalbits += imli_bits;
}
totalbits += ghist_length;
if (!ignore_path_size) {
totalbits += path_length * 16;
}
totalbits += (threshold >= 0) ? (tunebits * specs.size()) : 0;
for (auto &len : modhist_lengths) {
totalbits += len;
}
if (!ignore_path_size) {
for (auto &len : modpath_lengths) {
totalbits += 16 * len;
}
}
totalbits += doing_local ? (nlocal_histories * local_history_length) : 0;
totalbits += doing_recency ? (assoc * 16) : 0;
for (auto &bv : blurrypath_bits) {
for (auto &bve : bv) {
totalbits += bve;
}
}
totalbits += num_filter_entries * 2;
for (auto &abi : acyclic_bits) {
for (auto &abj : abi) {
for (auto abk : abj) {
totalbits += abk;
}
}
}
int remaining = budgetbits - totalbits;
// count the tables that have already been assigned sizes
int num_sized = 0;
for (int i = 0; i < specs.size(); i +=1) {
if (table_sizes[i] != 0) {
int sz = table_sizes[i] * (specs[i]->width + (n_sign_bits - 1));
totalbits += sz;
remaining -= sz;
num_sized += 1;
}
}
// whatever is left, we divide among the rest of the tables
int table_size_bits = (remaining / (specs.size()-num_sized));
for (int i = 0; i < specs.size(); i += 1) {
// if a table doesn't have a size yet, give it one and count those bits
if (!table_sizes[i]) {
int my_table_size = table_size_bits /
(specs[i]->width + (n_sign_bits - 1)); // extra sign bits
table_sizes[i] = my_table_size;
totalbits += my_table_size * (specs[i]->width + (n_sign_bits - 1));
}
}
DPRINTF(Branch, "%d bits of metadata so far, %d left out of "
"%d total budget\n", totalbits, remaining, budgetbits);
DPRINTF(Branch, "table size is %d bits, %d entries for 5 bit, %d entries "
"for 6 bit\n", table_size_bits,
table_size_bits / (5 + (n_sign_bits - 1)),
table_size_bits / (6 + (n_sign_bits - 1)));
DPRINTF(Branch, "%d total bits (%0.2fKB)\n", totalbits,
totalbits / 8192.0);
}
void
MultiperspectivePerceptron::findBest(ThreadID tid,
std::vector<int> &best_preds) const
{
if (threshold < 0) {
return;
}
struct BestPair
{
int index;
int mpreds;
bool operator<(BestPair const &bp) const
{
return mpreds < bp.mpreds;
}
};
std::vector<BestPair> pairs(best_preds.size());
for (int i = 0; i < best_preds.size(); i += 1) {
pairs[i].index = i;
pairs[i].mpreds = threadData[tid]->mpreds[i];
}
std::sort(pairs.begin(), pairs.end());
for (int i = 0; i < (std::min(nbest, (int) best_preds.size())); i += 1) {
best_preds[i] = pairs[i].index;
}
}
unsigned int
MultiperspectivePerceptron::getIndex(ThreadID tid, const MPPBranchInfo &bi,
const HistorySpec &spec, int index) const
{
unsigned int g = spec.getHash(tid, bi.getPC(), bi.getPC2(), index);
unsigned long long int h = g;
// shift the hash from the feature to xor with the hashed PC
if (hshift < 0) {
h <<= -hshift;
h ^= bi.getPC2();
} else {
h <<= hshift;
h ^= bi.getHPC();
}
// xor in the imli counter(s) and/or recency position based on the masks
if ((1ull<<index) & imli_mask1) {
h ^= threadData[tid]->imli_counter[0];
}
if ((1ull<<index) & imli_mask4) {
h ^= threadData[tid]->imli_counter[3];
}
if (doing_recency) {
if ((1ull<<index) & recencypos_mask) {
h ^= RECENCYPOS::hash(threadData[tid]->recency_stack, table_sizes,
bi.getPC2(), 31, index);
}
}
h %= table_sizes[index];
return h;
}
int
MultiperspectivePerceptron::computeOutput(ThreadID tid, MPPBranchInfo &bi)
{
// list of best predictors
std::vector<int> best_preds(specs.size(), -1);
// initialize sum
bi.yout = 0;
// bias the prediction by whether the local history is
// one of four distinctive patterns
int lhist = threadData[tid]->localHistories[bi.getPC()];
int history_len = threadData[tid]->localHistories.getLocalHistoryLength();
if (lhist == 0) {
bi.yout = bias0;
} else if (lhist == ((1<<history_len)-1)) {
bi.yout = bias1;
} else if (lhist == (1<<(history_len-1))) {
bi.yout = biasmostly0;
} else if (lhist == ((1<<(history_len-1))-1)) {
bi.yout = biasmostly1;
}
// find the best subset of features to use in case of a low-confidence
// branch
findBest(tid, best_preds);
// begin computation of the sum for low-confidence branch
int bestval = 0;
for (int i = 0; i < specs.size(); i += 1) {
HistorySpec const &spec = *specs[i];
// get the hash to index the table
unsigned int hashed_idx = getIndex(tid, bi, spec, i);
// add the weight; first get the weight's magnitude
int counter = threadData[tid]->tables[i][hashed_idx];
// get the sign
bool sign =
threadData[tid]->sign_bits[i][hashed_idx][bi.getHPC() % n_sign_bits];
// apply the transfer function and multiply by a coefficient
int weight = spec.coeff * ((spec.width == 5) ?
xlat4[counter] : xlat[counter]);
// apply the sign
int val = sign ? -weight : weight;
// add the value
bi.yout += val;
// if this is one of those good features, add the value to bestval
if (threshold >= 0) {
for (int j = 0;
j < std::min(nbest, (int) best_preds.size());
j += 1)
{
if (best_preds[j] == i) {
bestval += val;
break;
}
}
}
}
// apply a fudge factor to affect when training is triggered
bi.yout *= fudge;
return bestval;
}
void
MultiperspectivePerceptron::satIncDec(bool taken, bool &sign, int &counter,
int max_weight) const
{
if (taken) {
// increment sign/magnitude
if (sign) {
// go toward 0 away from negative max weight
if (counter == 0) {
sign = false; // moved to positive 0
} else {
counter -= 1;
}
} else {
// go toward max weight away from 0
if (counter < max_weight) {
counter += 1;
}
}
} else {
// decrement sign/magnitude
if (sign) {
// go toward negative max weight down from 0
if (counter < max_weight) {
counter += 1;
}
} else {
// go toward 0 away from max weight
if (counter == 0) {
sign = true; // negative 0
} else {
counter -= 1;
}
}
}
}
void
MultiperspectivePerceptron::train(ThreadID tid, MPPBranchInfo &bi, bool taken)
{
std::vector<std::vector<short int>> &tables = threadData[tid]->tables;
std::vector<std::vector<std::array<bool, 2>>> &sign_bits =
threadData[tid]->sign_bits;
std::vector<int> &mpreds = threadData[tid]->mpreds;
// was the prediction correct?
bool correct = (bi.yout >= 1) == taken;
// what is the magnitude of yout?
int abs_yout = abs(bi.yout);
// keep track of mispredictions per table
if (threshold >= 0) if (!tuneonly || (abs_yout <= threshold)) {
bool halve = false;
// for each table, figure out if there was a misprediction
for (int i = 0; i < specs.size(); i += 1) {
HistorySpec const &spec = *specs[i];
// get the hash to index the table
unsigned int hashed_idx = getIndex(tid, bi, spec, i);
bool sign = sign_bits[i][hashed_idx][bi.getHPC() % n_sign_bits];
int counter = tables[i][hashed_idx];
int weight = spec.coeff * ((spec.width == 5) ?
xlat4[counter] : xlat[counter]);
if (sign) weight = -weight;
bool pred = weight >= 1;
if (pred != taken) {
mpreds[i] += 1;
if (mpreds[i] == (1 << tunebits) - 1) {
halve = true;
}
}
}
// if we reach the maximum counter value, halve all the counters
if (halve) {
for (int i = 0; i < specs.size(); i += 1) {
mpreds[i] /= 2;
}
}
}
// if the branch was predicted incorrectly or the correct
// prediction was weak, update the weights
bool do_train = !correct || (abs_yout <= theta);
if (!do_train) return;
// adaptive theta training, adapted from O-GEHL
if (!correct) {
thresholdCounter += 1;
if (thresholdCounter >= speed) {
theta += 1;
thresholdCounter = 0;
}
}
if (correct && abs_yout < theta) {
thresholdCounter -= 1;
if (thresholdCounter <= -speed) {
theta -= 1;
thresholdCounter = 0;
}
}
// train the weights, computing what the value of yout
// would have been if these updates had been applied before
int newyout = 0;
for (int i = 0; i < specs.size(); i += 1) {
HistorySpec const &spec = *specs[i];
// get the magnitude
unsigned int hashed_idx = getIndex(tid, bi, spec, i);
int counter = tables[i][hashed_idx];
// get the sign
bool sign = sign_bits[i][hashed_idx][bi.getHPC() % n_sign_bits];
// increment/decrement if taken/not taken
satIncDec(taken, sign, counter, (1 << (spec.width - 1)) - 1);
// update the magnitude and sign
tables[i][hashed_idx] = counter;
sign_bits[i][hashed_idx][bi.getHPC() % n_sign_bits] = sign;
int weight = ((spec.width == 5) ? xlat4[counter] : xlat[counter]);
// update the new version of yout
if (sign) {
newyout -= weight;
} else {
newyout += weight;
}
}
// if the prediction still would have been incorrect even
// with the updated weights, update some more weights to
// try to fix the problem
if ((newyout >= 1) != taken) {
if (extra_rounds != -1) {
int round_counter = 0;
bool found;
do {
// udpate a random weight
int besti = -1;
int nrand = random_mt.random<int>() % specs.size();
int pout;
found = false;
for (int j = 0; j < specs.size(); j += 1) {
int i = (nrand + j) % specs.size();
HistorySpec const &spec = *specs[i];
unsigned int hashed_idx = getIndex(tid, bi, spec, i);
int counter = tables[i][hashed_idx];
bool sign =
sign_bits[i][hashed_idx][bi.getHPC() % n_sign_bits];
int weight = ((spec.width == 5) ?
xlat4[counter] : xlat[counter]);
int signed_weight = sign ? -weight : weight;
pout = newyout - signed_weight;
if ((pout >= 1) == taken) {
// we have found a weight that if we blow
// it away will help!
besti = i;
break;
}
}
if (besti != -1) {
int i = besti;
HistorySpec const &spec = *specs[i];
unsigned int hashed_idx = getIndex(tid, bi, spec, i);
int counter = tables[i][hashed_idx];
bool sign =
sign_bits[i][hashed_idx][bi.getHPC() % n_sign_bits];
if (counter > 1) {
counter--;
tables[i][hashed_idx] = counter;
}
int weight = ((spec.width == 5) ?
xlat4[counter] : xlat[counter]);
int signed_weight = sign ? -weight : weight;
int out = pout + signed_weight;
round_counter += 1;
if ((out >= 1) != taken) {
found = true;
}
}
} while (found && round_counter < extra_rounds);
}
}
}
void
MultiperspectivePerceptron::uncondBranch(ThreadID tid, Addr pc,
void * &bp_history)
{
MPPBranchInfo *bi = new MPPBranchInfo(pc, pcshift, false);
std::vector<unsigned int> &ghist_words = threadData[tid]->ghist_words;
bp_history = (void *)bi;
unsigned short int pc2 = pc >> 2;
bool ab = !(pc & (1<<pcbit));
for (int i = 0; i < ghist_length / blockSize + 1; i += 1) {
bool ab_new = (ghist_words[i] >> (blockSize - 1)) & 1;
ghist_words[i] <<= 1;
ghist_words[i] |= ab;
ghist_words[i] &= (1 << blockSize) - 1;
ab = ab_new;
}
memmove(&threadData[tid]->path_history[1],
&threadData[tid]->path_history[0],
sizeof(unsigned short int) * (path_length - 1));
threadData[tid]->path_history[0] = pc2;
}
bool
MultiperspectivePerceptron::lookup(ThreadID tid, Addr instPC,
void * &bp_history)
{
MPPBranchInfo *bi = new MPPBranchInfo(instPC, pcshift, true);
bp_history = (void *)bi;
bool use_static = false;
if (!threadData[tid]->filterTable.empty()) {
unsigned int findex =
bi->getHashFilter(threadData[tid]->last_ghist_bit) %
threadData[tid]->filterTable.size();
FilterEntry &f = threadData[tid]->filterTable[findex];
if (f.alwaysNotTakenSoFar()) {
bi->filtered = true;
bi->prediction = false;
return false;
} else if (f.alwaysTakenSoFar()) {
bi->filtered = true;
bi->prediction = true;
return true;
}
if (f.neverSeen()) {
use_static = true;
}
}
int bestval = computeOutput(tid, *bi);
if (use_static) {
bi->prediction = false;
} else {
if (abs(bi->yout) <= threshold) {
bi->prediction = (bestval >= 1);
} else {
bi->prediction = (bi->yout >= 1);
}
}
return bi->prediction;
}
void
MultiperspectivePerceptron::update(ThreadID tid, Addr instPC, bool taken,
void *bp_history, bool squashed,
const StaticInstPtr & inst,
Addr corrTarget)
{
assert(bp_history);
MPPBranchInfo *bi = static_cast<MPPBranchInfo*>(bp_history);
if (squashed) {
//delete bi;
return;
}
if (bi->isUnconditional()) {
delete bi;
return;
}
bool do_train = true;
if (!threadData[tid]->filterTable.empty()) {
int findex = bi->getHashFilter(threadData[tid]->last_ghist_bit) %
threadData[tid]->filterTable.size();
FilterEntry &f = threadData[tid]->filterTable[findex];
// compute this first, so we don't not train on the
// first time a branch is seen.
bool transition = false;
if (f.alwaysNotTakenSoFar() || f.alwaysTakenSoFar()) {
do_train = false;
}
if (taken) {
if (f.alwaysNotTakenSoFar()) {
transition = true;
}
f.seenTaken = true;
} else {
if (f.alwaysTakenSoFar()) {
transition = true;
}
f.seenUntaken = true;
}
// is this the first time time the branch has gone both ways?
if (transition) {
threadData[tid]->occupancy += 1;
}
// for every new dynamic branch, when there ar
// more than 'decay' number of branches in the
// filter, blow a random filter entry away
if (decay && transition &&
((threadData[tid]->occupancy > decay) || (decay == 1))) {
int rnd = random_mt.random<int>() %
threadData[tid]->filterTable.size();
FilterEntry &frand = threadData[tid]->filterTable[rnd];
if (frand.seenTaken && frand.seenUntaken) {
threadData[tid]->occupancy -= 1;
}
frand.seenTaken = false;
frand.seenUntaken = false;
}
}
if (do_train) {
train(tid, *bi, taken);
}
enum RecordFiltered
{
Imli = 1,
GHist = 2,
Path = 4,
Acyclic = 8,
Mod = 16,
Blurry = 32,
// Should never record a filtered local branch - duh!
Local = 64,
Recency = 128
};
// four different styles of IMLI
if (!bi->filtered || (record_mask & Imli)) {
unsigned int target = corrTarget;
if (target < bi->getPC()) {
if (taken) {
threadData[tid]->imli_counter[0] += 1;
} else {
threadData[tid]->imli_counter[0] = 0;
}
if (!taken) {
threadData[tid]->imli_counter[1] += 1;
} else {
threadData[tid]->imli_counter[1] = 0;
}
} else {
if (taken) {
threadData[tid]->imli_counter[2] += 1;
} else {
threadData[tid]->imli_counter[2] = 0;
}
if (!taken) {
threadData[tid]->imli_counter[3] += 1;
} else {
threadData[tid]->imli_counter[3] = 0;
}
}
}
bool hashed_taken = hash_taken ? (taken ^ !!(bi->getPC() & (1<<pcbit)))
: taken;
// record into ghist
if (!bi->filtered || (record_mask & GHist)) {
bool ab = hashed_taken;
assert(threadData[tid]->ghist_words.size() > 0);
for (int i = 0; i < ghist_length / blockSize + 1; i += 1) {
unsigned int a = threadData[tid]->ghist_words[i];
bool ab_new = (a >> (blockSize - 1)) & 1;
a <<= 1;
a |= ab;
ab = ab_new;
a &= (1 << blockSize) - 1;
threadData[tid]->ghist_words[i] = a;
}
}
// record into path history
if (!bi->filtered || (record_mask & Path)) {
assert(threadData[tid]->path_history.size() > 0);
memmove(&threadData[tid]->path_history[1],
&threadData[tid]->path_history[0],
sizeof(unsigned short int) * (path_length - 1));
threadData[tid]->path_history[0] = bi->getPC2();
}
// record into acyclic history
if (!bi->filtered || (record_mask & Acyclic)) {
threadData[tid]->updateAcyclic(hashed_taken, bi->getHPC());
}
// record into modulo path history
if (!bi->filtered || (record_mask & Mod)) {
for (int ii = 0; ii < modpath_indices.size(); ii += 1) {
int i = modpath_indices[ii];
if (bi->getHPC() % (i + 2) == 0) {
memmove(&threadData[tid]->modpath_histories[i][1],
&threadData[tid]->modpath_histories[i][0],
sizeof(unsigned short int) * (modpath_lengths[ii]-1));
threadData[tid]->modpath_histories[i][0] = bi->getPC2();
}
}
}
// update blurry history
if (!bi->filtered || (record_mask & Blurry)) {
std::vector<std::vector<unsigned int>> &blurrypath_histories =
threadData[tid]->blurrypath_histories;
for (int i = 0; i < blurrypath_histories.size(); i += 1)
{
if (blurrypath_histories[i].size() > 0) {
unsigned int z = bi->getPC() >> i;
if (blurrypath_histories[i][0] != z) {
memmove(&blurrypath_histories[i][1],
&blurrypath_histories[i][0],
sizeof(unsigned int) *
(blurrypath_histories[i].size() - 1));
blurrypath_histories[i][0] = z;
}
}
}
}
// record into modulo pattern history
if (!bi->filtered || (record_mask & Mod)) {
for (int ii = 0; ii < modhist_indices.size(); ii += 1) {
int i = modhist_indices[ii];
if (bi->getHPC() % (i + 2) == 0) {
for (int j = modhist_lengths[ii] - 1; j > 0; j -= 1) {
threadData[tid]->mod_histories[i][j] =
threadData[tid]->mod_histories[i][j-1];
}
threadData[tid]->mod_histories[i][0] = hashed_taken;
}
}
}
// insert this PC into the recency stack
if (doing_recency) {
if (!bi->filtered || (record_mask & Recency)) {
threadData[tid]->insertRecency(bi->getPC2(), assoc);
}
}
// record into a local history
if (!bi->filtered || (record_mask & Local)) {
threadData[tid]->localHistories.update(bi->getPC(), hashed_taken);
}
// update last ghist bit, used to index filter
threadData[tid]->last_ghist_bit = taken;
delete bi;
}
void
MultiperspectivePerceptron::btbUpdate(ThreadID tid, Addr branch_pc,
void* &bp_history)
{
}
void
MultiperspectivePerceptron::squash(ThreadID tid, void *bp_history)
{
assert(bp_history);
MPPBranchInfo *bi = static_cast<MPPBranchInfo*>(bp_history);
delete bi;
}
} // namespace branch_prediction
} // namespace gem5