llvm-project/compiler-rt/lib/fuzzer/FuzzerCorpus.h

Ignoring revisions in .git-blame-ignore-revs. Click here to bypass and see the normal blame view.

545 lines
17 KiB
C
Raw Normal View History

//===- FuzzerCorpus.h - Internal header for the Fuzzer ----------*- C++ -* ===//
//
// Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions.
// See https://llvm.org/LICENSE.txt for license information.
// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
//
//===----------------------------------------------------------------------===//
// fuzzer::InputCorpus
//===----------------------------------------------------------------------===//
#ifndef LLVM_FUZZER_CORPUS
#define LLVM_FUZZER_CORPUS
#include "FuzzerDataFlowTrace.h"
#include "FuzzerDefs.h"
#include "FuzzerIO.h"
#include "FuzzerRandom.h"
#include "FuzzerSHA1.h"
#include "FuzzerTracePC.h"
#include <algorithm>
#include <numeric>
#include <random>
#include <unordered_set>
namespace fuzzer {
struct InputInfo {
Unit U; // The actual input data.
uint8_t Sha1[kSHA1NumBytes]; // Checksum.
// Number of features that this input has and no smaller input has.
size_t NumFeatures = 0;
size_t Tmp = 0; // Used by ValidateFeatureSet.
// Stats.
size_t NumExecutedMutations = 0;
size_t NumSuccessfullMutations = 0;
bool NeverReduce = false;
bool MayDeleteFile = false;
bool Reduced = false;
bool HasFocusFunction = false;
Vector<uint32_t> UniqFeatureSet;
Vector<uint8_t> DataFlowTraceForFocusFunction;
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
// Power schedule.
bool NeedsEnergyUpdate = false;
double Energy = 0.0;
size_t SumIncidence = 0;
Vector<std::pair<uint32_t, uint16_t>> FeatureFreqs;
// Delete feature Idx and its frequency from FeatureFreqs.
bool DeleteFeatureFreq(uint32_t Idx) {
if (FeatureFreqs.empty())
return false;
// Binary search over local feature frequencies sorted by index.
auto Lower = std::lower_bound(FeatureFreqs.begin(), FeatureFreqs.end(),
std::pair<uint32_t, uint16_t>(Idx, 0));
if (Lower != FeatureFreqs.end() && Lower->first == Idx) {
FeatureFreqs.erase(Lower);
return true;
}
return false;
}
// Assign more energy to a high-entropy seed, i.e., that reveals more
// information about the globally rare features in the neighborhood
// of the seed. Since we do not know the entropy of a seed that has
// never been executed we assign fresh seeds maximum entropy and
// let II->Energy approach the true entropy from above.
void UpdateEnergy(size_t GlobalNumberOfFeatures) {
Energy = 0.0;
SumIncidence = 0;
// Apply add-one smoothing to locally discovered features.
for (auto F : FeatureFreqs) {
size_t LocalIncidence = F.second + 1;
Energy -= LocalIncidence * logl(LocalIncidence);
SumIncidence += LocalIncidence;
}
// Apply add-one smoothing to locally undiscovered features.
// PreciseEnergy -= 0; // since logl(1.0) == 0)
SumIncidence += (GlobalNumberOfFeatures - FeatureFreqs.size());
// Add a single locally abundant feature apply add-one smoothing.
size_t AbdIncidence = NumExecutedMutations + 1;
Energy -= AbdIncidence * logl(AbdIncidence);
SumIncidence += AbdIncidence;
// Normalize.
if (SumIncidence != 0)
Energy = (Energy / SumIncidence) + logl(SumIncidence);
}
// Increment the frequency of the feature Idx.
void UpdateFeatureFrequency(uint32_t Idx) {
NeedsEnergyUpdate = true;
// The local feature frequencies is an ordered vector of pairs.
// If there are no local feature frequencies, push_back preserves order.
// Set the feature frequency for feature Idx32 to 1.
if (FeatureFreqs.empty()) {
FeatureFreqs.push_back(std::pair<uint32_t, uint16_t>(Idx, 1));
return;
}
// Binary search over local feature frequencies sorted by index.
auto Lower = std::lower_bound(FeatureFreqs.begin(), FeatureFreqs.end(),
std::pair<uint32_t, uint16_t>(Idx, 0));
// If feature Idx32 already exists, increment its frequency.
// Otherwise, insert a new pair right after the next lower index.
if (Lower != FeatureFreqs.end() && Lower->first == Idx) {
Lower->second++;
} else {
FeatureFreqs.insert(Lower, std::pair<uint32_t, uint16_t>(Idx, 1));
}
}
};
struct EntropicOptions {
bool Enabled;
size_t NumberOfRarestFeatures;
size_t FeatureFrequencyThreshold;
};
class InputCorpus {
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
static const uint32_t kFeatureSetSize = 1 << 21;
static const uint8_t kMaxMutationFactor = 20;
static const size_t kSparseEnergyUpdates = 100;
size_t NumExecutedMutations = 0;
EntropicOptions Entropic;
public:
InputCorpus(const std::string &OutputCorpus, EntropicOptions Entropic)
: Entropic(Entropic), OutputCorpus(OutputCorpus) {
memset(InputSizesPerFeature, 0, sizeof(InputSizesPerFeature));
memset(SmallestElementPerFeature, 0, sizeof(SmallestElementPerFeature));
}
~InputCorpus() {
for (auto II : Inputs)
delete II;
}
size_t size() const { return Inputs.size(); }
size_t SizeInBytes() const {
size_t Res = 0;
for (auto II : Inputs)
Res += II->U.size();
return Res;
}
size_t NumActiveUnits() const {
size_t Res = 0;
for (auto II : Inputs)
Res += !II->U.empty();
return Res;
}
size_t MaxInputSize() const {
size_t Res = 0;
for (auto II : Inputs)
Res = std::max(Res, II->U.size());
return Res;
}
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
void IncrementNumExecutedMutations() { NumExecutedMutations++; }
size_t NumInputsThatTouchFocusFunction() {
return std::count_if(Inputs.begin(), Inputs.end(), [](const InputInfo *II) {
return II->HasFocusFunction;
});
}
size_t NumInputsWithDataFlowTrace() {
return std::count_if(Inputs.begin(), Inputs.end(), [](const InputInfo *II) {
return !II->DataFlowTraceForFocusFunction.empty();
});
}
bool empty() const { return Inputs.empty(); }
const Unit &operator[] (size_t Idx) const { return Inputs[Idx]->U; }
InputInfo *AddToCorpus(const Unit &U, size_t NumFeatures, bool MayDeleteFile,
bool HasFocusFunction, bool NeverReduce,
const Vector<uint32_t> &FeatureSet,
const DataFlowTrace &DFT, const InputInfo *BaseII) {
assert(!U.empty());
if (FeatureDebug)
Printf("ADD_TO_CORPUS %zd NF %zd\n", Inputs.size(), NumFeatures);
Inputs.push_back(new InputInfo());
InputInfo &II = *Inputs.back();
II.U = U;
II.NumFeatures = NumFeatures;
II.NeverReduce = NeverReduce;
II.MayDeleteFile = MayDeleteFile;
II.UniqFeatureSet = FeatureSet;
II.HasFocusFunction = HasFocusFunction;
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
// Assign maximal energy to the new seed.
II.Energy = RareFeatures.empty() ? 1.0 : log(RareFeatures.size());
II.SumIncidence = RareFeatures.size();
II.NeedsEnergyUpdate = false;
std::sort(II.UniqFeatureSet.begin(), II.UniqFeatureSet.end());
ComputeSHA1(U.data(), U.size(), II.Sha1);
auto Sha1Str = Sha1ToString(II.Sha1);
Hashes.insert(Sha1Str);
if (HasFocusFunction)
if (auto V = DFT.Get(Sha1Str))
II.DataFlowTraceForFocusFunction = *V;
// This is a gross heuristic.
// Ideally, when we add an element to a corpus we need to know its DFT.
// But if we don't, we'll use the DFT of its base input.
if (II.DataFlowTraceForFocusFunction.empty() && BaseII)
II.DataFlowTraceForFocusFunction = BaseII->DataFlowTraceForFocusFunction;
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
DistributionNeedsUpdate = true;
PrintCorpus();
// ValidateFeatureSet();
return &II;
}
// Debug-only
void PrintUnit(const Unit &U) {
if (!FeatureDebug) return;
for (uint8_t C : U) {
if (C != 'F' && C != 'U' && C != 'Z')
C = '.';
Printf("%c", C);
}
}
// Debug-only
void PrintFeatureSet(const Vector<uint32_t> &FeatureSet) {
if (!FeatureDebug) return;
Printf("{");
for (uint32_t Feature: FeatureSet)
Printf("%u,", Feature);
Printf("}");
}
// Debug-only
void PrintCorpus() {
if (!FeatureDebug) return;
Printf("======= CORPUS:\n");
int i = 0;
for (auto II : Inputs) {
if (std::find(II->U.begin(), II->U.end(), 'F') != II->U.end()) {
Printf("[%2d] ", i);
Printf("%s sz=%zd ", Sha1ToString(II->Sha1).c_str(), II->U.size());
PrintUnit(II->U);
Printf(" ");
PrintFeatureSet(II->UniqFeatureSet);
Printf("\n");
}
i++;
}
}
void Replace(InputInfo *II, const Unit &U) {
assert(II->U.size() > U.size());
Hashes.erase(Sha1ToString(II->Sha1));
DeleteFile(*II);
ComputeSHA1(U.data(), U.size(), II->Sha1);
Hashes.insert(Sha1ToString(II->Sha1));
II->U = U;
II->Reduced = true;
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
DistributionNeedsUpdate = true;
}
bool HasUnit(const Unit &U) { return Hashes.count(Hash(U)); }
bool HasUnit(const std::string &H) { return Hashes.count(H); }
InputInfo &ChooseUnitToMutate(Random &Rand) {
InputInfo &II = *Inputs[ChooseUnitIdxToMutate(Rand)];
assert(!II.U.empty());
return II;
}
InputInfo &ChooseUnitToCrossOverWith(Random &Rand, bool UniformDist) {
if (!UniformDist) {
return ChooseUnitToMutate(Rand);
}
InputInfo &II = *Inputs[Rand(Inputs.size())];
assert(!II.U.empty());
return II;
}
// Returns an index of random unit from the corpus to mutate.
size_t ChooseUnitIdxToMutate(Random &Rand) {
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
UpdateCorpusDistribution(Rand);
size_t Idx = static_cast<size_t>(CorpusDistribution(Rand));
assert(Idx < Inputs.size());
return Idx;
}
void PrintStats() {
for (size_t i = 0; i < Inputs.size(); i++) {
const auto &II = *Inputs[i];
Printf(" [% 3zd %s] sz: % 5zd runs: % 5zd succ: % 5zd focus: %d\n", i,
Sha1ToString(II.Sha1).c_str(), II.U.size(),
II.NumExecutedMutations, II.NumSuccessfullMutations, II.HasFocusFunction);
}
}
void PrintFeatureSet() {
for (size_t i = 0; i < kFeatureSetSize; i++) {
if(size_t Sz = GetFeature(i))
Printf("[%zd: id %zd sz%zd] ", i, SmallestElementPerFeature[i], Sz);
}
Printf("\n\t");
for (size_t i = 0; i < Inputs.size(); i++)
if (size_t N = Inputs[i]->NumFeatures)
Printf(" %zd=>%zd ", i, N);
Printf("\n");
}
void DeleteFile(const InputInfo &II) {
if (!OutputCorpus.empty() && II.MayDeleteFile)
RemoveFile(DirPlusFile(OutputCorpus, Sha1ToString(II.Sha1)));
}
void DeleteInput(size_t Idx) {
InputInfo &II = *Inputs[Idx];
DeleteFile(II);
Unit().swap(II.U);
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
II.Energy = 0.0;
II.NeedsEnergyUpdate = false;
DistributionNeedsUpdate = true;
if (FeatureDebug)
Printf("EVICTED %zd\n", Idx);
}
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
void AddRareFeature(uint32_t Idx) {
// Maintain *at least* TopXRarestFeatures many rare features
// and all features with a frequency below ConsideredRare.
// Remove all other features.
while (RareFeatures.size() > Entropic.NumberOfRarestFeatures &&
FreqOfMostAbundantRareFeature > Entropic.FeatureFrequencyThreshold) {
// Find most and second most abbundant feature.
uint32_t MostAbundantRareFeatureIndices[2] = {RareFeatures[0],
RareFeatures[0]};
size_t Delete = 0;
for (size_t i = 0; i < RareFeatures.size(); i++) {
uint32_t Idx2 = RareFeatures[i];
if (GlobalFeatureFreqs[Idx2] >=
GlobalFeatureFreqs[MostAbundantRareFeatureIndices[0]]) {
MostAbundantRareFeatureIndices[1] = MostAbundantRareFeatureIndices[0];
MostAbundantRareFeatureIndices[0] = Idx2;
Delete = i;
}
}
// Remove most abundant rare feature.
RareFeatures[Delete] = RareFeatures.back();
RareFeatures.pop_back();
for (auto II : Inputs) {
if (II->DeleteFeatureFreq(MostAbundantRareFeatureIndices[0]))
II->NeedsEnergyUpdate = true;
}
// Set 2nd most abundant as the new most abundant feature count.
FreqOfMostAbundantRareFeature =
GlobalFeatureFreqs[MostAbundantRareFeatureIndices[1]];
}
// Add rare feature, handle collisions, and update energy.
RareFeatures.push_back(Idx);
GlobalFeatureFreqs[Idx] = 0;
for (auto II : Inputs) {
II->DeleteFeatureFreq(Idx);
// Apply add-one smoothing to this locally undiscovered feature.
// Zero energy seeds will never be fuzzed and remain zero energy.
if (II->Energy > 0.0) {
II->SumIncidence += 1;
II->Energy += logl(II->SumIncidence) / II->SumIncidence;
}
}
DistributionNeedsUpdate = true;
}
bool AddFeature(size_t Idx, uint32_t NewSize, bool Shrink) {
assert(NewSize);
Idx = Idx % kFeatureSetSize;
uint32_t OldSize = GetFeature(Idx);
if (OldSize == 0 || (Shrink && OldSize > NewSize)) {
if (OldSize > 0) {
size_t OldIdx = SmallestElementPerFeature[Idx];
InputInfo &II = *Inputs[OldIdx];
assert(II.NumFeatures > 0);
II.NumFeatures--;
if (II.NumFeatures == 0)
DeleteInput(OldIdx);
} else {
NumAddedFeatures++;
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
if (Entropic.Enabled)
AddRareFeature((uint32_t)Idx);
}
NumUpdatedFeatures++;
if (FeatureDebug)
Printf("ADD FEATURE %zd sz %d\n", Idx, NewSize);
SmallestElementPerFeature[Idx] = Inputs.size();
InputSizesPerFeature[Idx] = NewSize;
return true;
}
return false;
}
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
// Increment frequency of feature Idx globally and locally.
void UpdateFeatureFrequency(InputInfo *II, size_t Idx) {
uint32_t Idx32 = Idx % kFeatureSetSize;
// Saturated increment.
if (GlobalFeatureFreqs[Idx32] == 0xFFFF)
return;
uint16_t Freq = GlobalFeatureFreqs[Idx32]++;
// Skip if abundant.
if (Freq > FreqOfMostAbundantRareFeature ||
std::find(RareFeatures.begin(), RareFeatures.end(), Idx32) ==
RareFeatures.end())
return;
// Update global frequencies.
if (Freq == FreqOfMostAbundantRareFeature)
FreqOfMostAbundantRareFeature++;
// Update local frequencies.
if (II)
II->UpdateFeatureFrequency(Idx32);
}
size_t NumFeatures() const { return NumAddedFeatures; }
size_t NumFeatureUpdates() const { return NumUpdatedFeatures; }
private:
static const bool FeatureDebug = false;
size_t GetFeature(size_t Idx) const { return InputSizesPerFeature[Idx]; }
void ValidateFeatureSet() {
if (FeatureDebug)
PrintFeatureSet();
for (size_t Idx = 0; Idx < kFeatureSetSize; Idx++)
if (GetFeature(Idx))
Inputs[SmallestElementPerFeature[Idx]]->Tmp++;
for (auto II: Inputs) {
if (II->Tmp != II->NumFeatures)
Printf("ZZZ %zd %zd\n", II->Tmp, II->NumFeatures);
assert(II->Tmp == II->NumFeatures);
II->Tmp = 0;
}
}
// Updates the probability distribution for the units in the corpus.
// Must be called whenever the corpus or unit weights are changed.
//
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
// Hypothesis: inputs that maximize information about globally rare features
// are interesting.
void UpdateCorpusDistribution(Random &Rand) {
// Skip update if no seeds or rare features were added/deleted.
// Sparse updates for local change of feature frequencies,
// i.e., randomly do not skip.
if (!DistributionNeedsUpdate &&
(!Entropic.Enabled || Rand(kSparseEnergyUpdates)))
return;
DistributionNeedsUpdate = false;
size_t N = Inputs.size();
assert(N);
Intervals.resize(N + 1);
Weights.resize(N);
std::iota(Intervals.begin(), Intervals.end(), 0);
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
bool VanillaSchedule = true;
if (Entropic.Enabled) {
for (auto II : Inputs) {
if (II->NeedsEnergyUpdate && II->Energy != 0.0) {
II->NeedsEnergyUpdate = false;
II->UpdateEnergy(RareFeatures.size());
}
}
for (size_t i = 0; i < N; i++) {
if (Inputs[i]->NumFeatures == 0) {
// If the seed doesn't represent any features, assign zero energy.
Weights[i] = 0.;
} else if (Inputs[i]->NumExecutedMutations / kMaxMutationFactor >
NumExecutedMutations / Inputs.size()) {
// If the seed was fuzzed a lot more than average, assign zero energy.
Weights[i] = 0.;
} else {
// Otherwise, simply assign the computed energy.
Weights[i] = Inputs[i]->Energy;
}
// If energy for all seeds is zero, fall back to vanilla schedule.
if (Weights[i] > 0.0)
VanillaSchedule = false;
}
}
if (VanillaSchedule) {
for (size_t i = 0; i < N; i++)
Weights[i] = Inputs[i]->NumFeatures
? (i + 1) * (Inputs[i]->HasFocusFunction ? 1000 : 1)
: 0.;
}
if (FeatureDebug) {
for (size_t i = 0; i < N; i++)
Printf("%zd ", Inputs[i]->NumFeatures);
Printf("SCORE\n");
for (size_t i = 0; i < N; i++)
Printf("%f ", Weights[i]);
Printf("Weights\n");
}
CorpusDistribution = std::piecewise_constant_distribution<double>(
Intervals.begin(), Intervals.end(), Weights.begin());
}
std::piecewise_constant_distribution<double> CorpusDistribution;
Vector<double> Intervals;
Vector<double> Weights;
std::unordered_set<std::string> Hashes;
Vector<InputInfo*> Inputs;
size_t NumAddedFeatures = 0;
size_t NumUpdatedFeatures = 0;
uint32_t InputSizesPerFeature[kFeatureSetSize];
uint32_t SmallestElementPerFeature[kFeatureSetSize];
Entropic: Boosting LibFuzzer Performance Summary: This is collaboration between Marcel Boehme @ Monash, Australia and Valentin Manès plus Sang Kil Cha @ KAIST, South Korea. We have made a few modifications to boost LibFuzzer performance by changing how weights are assigned to the seeds in the corpus. Essentially, seeds that reveal more "information" about globally rare features are assigned a higher weight. Our results on the Fuzzer Test Suite seem quite promising. In terms of bug finding, our Entropic patch usually finds the same errors much faster and in more runs. In terms of coverage, our version Entropic achieves the same coverage in less than half the time for the majority of subjects. For the lack of space, we shared more detailed performance results directly with @kcc. We'll publish the preprint with all the technical details as soon as it is accepted. Happy to share if you drop us an email. There should be plenty of opportunities to optimise further. For instance, while Entropic achieves the same coverage in less than half the time, Entropic has a much lower #execs per second. We ran the perf-tool and found a few performance bottlenecks. Thanks for open-sourcing LibFuzzer (and the entire LLVM Compiler Infrastructure)! This has been such a tremendous help to my research. Patch By: Marcel Boehme Reviewers: kcc, metzman, morehouse, Dor1s, vitalybuka Reviewed By: kcc Subscribers: dgg5503, Valentin, llvm-commits, kcc Tags: #llvm Differential Revision: https://reviews.llvm.org/D73776
2020-05-20 01:28:18 +08:00
bool DistributionNeedsUpdate = true;
uint16_t FreqOfMostAbundantRareFeature = 0;
uint16_t GlobalFeatureFreqs[kFeatureSetSize] = {};
Vector<uint32_t> RareFeatures;
std::string OutputCorpus;
};
} // namespace fuzzer
#endif // LLVM_FUZZER_CORPUS