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+# Fuzzing binary-only programs with afl++
+
+  afl++, libfuzzer and others are great if you have the source code, and
+  it allows for very fast and coverage guided fuzzing.
+
+  However, if there is only the binary program and no source code available,
+  then standard `afl-fuzz -n` (dumb mode) is not effective.
+
+  The following is a description of how these binaries can be fuzzed with afl++
+
+  !!!!!
+  TL;DR: try DYNINST with afl-dyninst. If it produces too many crashes then
+         use afl -Q qemu_mode, or better: use both in parallel.
+  !!!!!
+
+
+## QEMU
+
+  Qemu is the "native" solution to the program.
+  It is available in the ./qemu_mode/ directory and once compiled it can
+  be accessed by the afl-fuzz -Q command line option.
+  The speed decrease is at about 50%.
+  It is the easiest to use alternative and even works for cross-platform binaries.
+
+  Note that there is also honggfuzz: [https://github.com/google/honggfuzz](https://github.com/google/honggfuzz)
+  which now has a qemu_mode, but its performance is just 1.5%!
+
+  As it is included in afl++ this needs no URL.
+
+
+## WINE+QEMU
+
+  Wine mode can run Win32 PE binaries with the QEMU instrumentation.
+  It needs Wine, python3 and the pefile python package installed.
+
+  As it is included in afl++ this needs no URL.
+
+
+## UNICORN
+
+  Unicorn is a fork of QEMU. The instrumentation is, therefore, very similar.
+  In contrast to QEMU, Unicorn does not offer a full system or even userland
+  emulation. Runtime environment and/or loaders have to be written from scratch,
+  if needed. On top, block chaining has been removed. This means the speed boost
+  introduced in  the patched QEMU Mode of afl++ cannot simply be ported over to
+  Unicorn. For further information, check out ./unicorn_mode.txt.
+
+  As it is included in afl++ this needs no URL.
+
+
+## DYNINST
+
+  Dyninst is a binary instrumentation framework similar to Pintool and
+  Dynamorio (see far below). However whereas Pintool and Dynamorio work at
+  runtime, dyninst instruments the target at load time, and then let it run -
+  or save the  binary with the changes.
+  This is great for some things, e.g. fuzzing, and not so effective for others,
+  e.g. malware analysis.
+
+  So what we can do with dyninst is taking every basic block, and put afl's
+  instrumention code in there - and then save the binary.
+  Afterwards we can just fuzz the newly saved target binary with afl-fuzz.
+  Sounds great? It is. The issue though - it is a non-trivial problem to
+  insert instructions, which change addresses in the process space, so that
+  everything is still working afterwards. Hence more often than not binaries
+  crash when they are run.
+
+  The speed decrease is about 15-35%, depending on the optimization options
+  used with afl-dyninst.
+
+  So if Dyninst works, it is the best option available. Otherwise it just
+  doesn't work well.
+
+  [https://github.com/vanhauser-thc/afl-dyninst](https://github.com/vanhauser-thc/afl-dyninst)
+
+
+## INTEL-PT
+
+  If you have a newer Intel CPU, you can make use of Intels processor trace.
+  The big issue with Intel's PT is the small buffer size and the complex
+  encoding of the debug information collected through PT.
+  This makes the decoding very CPU intensive and hence slow.
+  As a result, the overall speed decrease is about 70-90% (depending on
+  the implementation and other factors).
+
+  There are two afl intel-pt implementations:
+
+  1. [https://github.com/junxzm1990/afl-pt](https://github.com/junxzm1990/afl-pt)
+     => this needs Ubuntu 14.04.05 without any updates and the 4.4 kernel.
+
+  2. [https://github.com/hunter-ht-2018/ptfuzzer](https://github.com/hunter-ht-2018/ptfuzzer)
+     => this needs a 4.14 or 4.15 kernel. the "nopti" kernel boot option must
+        be used. This one is faster than the other.
+
+  Note that there is also honggfuzz: https://github.com/google/honggfuzz
+  But its IPT performance is just 6%!
+
+
+## CORESIGHT
+
+  Coresight is ARM's answer to Intel's PT.
+  There is no implementation so far which handle coresight and getting
+  it working on an ARM Linux is very difficult due to custom kernel building
+  on embedded systems is difficult. And finding one that has coresight in
+  the ARM chip is difficult too.
+  My guess is that it is slower than Qemu, but faster than Intel PT.
+
+  If anyone finds any coresight implementation for afl please ping me: vh@thc.org
+
+
+## FRIDA
+
+  Frida is a dynamic instrumentation engine like Pintool, Dyninst and Dynamorio.
+  What is special is that it is written Python, and scripted with Javascript.
+  It is mostly used to reverse binaries on mobile phones however can be used
+  everywhere.
+
+  There is a WIP fuzzer available at [https://github.com/andreafioraldi/frida-fuzzer](https://github.com/andreafioraldi/frida-fuzzer)
+
+
+## PIN & DYNAMORIO
+
+  Pintool and Dynamorio are dynamic instrumentation engines, and they can be
+  used for getting basic block information at runtime.
+  Pintool is only available for Intel x32/x64 on Linux, Mac OS and Windows
+  whereas Dynamorio is additionally available for ARM and AARCH64.
+  Dynamorio is also 10x faster than Pintool.
+
+  The big issue with Dynamorio (and therefore Pintool too) is speed.
+  Dynamorio has a speed decrease of 98-99%
+  Pintool has a speed decrease of 99.5%
+
+  Hence Dynamorio is the option to go for if everything fails, and Pintool
+  only if Dynamorio fails too.
+
+  Dynamorio solutions:
+  * [https://github.com/vanhauser-thc/afl-dynamorio](https://github.com/vanhauser-thc/afl-dynamorio)
+  * [https://github.com/mxmssh/drAFL](https://github.com/mxmssh/drAFL)
+  * [https://github.com/googleprojectzero/winafl/](https://github.com/googleprojectzero/winafl/) <= very good but windows only
+
+  Pintool solutions:
+  * [https://github.com/vanhauser-thc/afl-pin](https://github.com/vanhauser-thc/afl-pin)
+  * [https://github.com/mothran/aflpin](https://github.com/mothran/aflpin)
+  * [https://github.com/spinpx/afl_pin_mode](https://github.com/spinpx/afl_pin_mode) <= only old Pintool version supported
+
+
+## Non-AFL solutions
+
+  There are many binary-only fuzzing frameworks.
+  Some are great for CTFs but don't work with large binaries, others are very
+  slow but have good path discovery, some are very hard to set-up ...
+
+  * QSYM: [https://github.com/sslab-gatech/qsym](https://github.com/sslab-gatech/qsym)
+  * Manticore: [https://github.com/trailofbits/manticore](https://github.com/trailofbits/manticore)
+  * S2E: [https://github.com/S2E](https://github.com/S2E)
+  *  ... please send me any missing that are good
+
+
+## Closing words
+
+  That's it! News, corrections, updates? Send an email to vh@thc.org