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RIOT/fuzzing/README.md

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Fuzzing

Automated fuzzing tests for RIOT network applications.

Setup

The following additional dependencies are required:

Writing a fuzzing application

The fuzzing setup relies heavily on RIOT's netapi interface, or more generally RIOT's message passing algorithm. RIOT modules implementing network protocols usually start a single thread which receives messages via message passing and interprets these as protocol messages for further processing. This software architecture is utilized by the fuzzing setup by sending random data to network modules using message passing.

For each network module which should be fuzzed a protocol specific fuzzing application needs to be written. This application must initialize the network module and make sure that the thread is started and configured correctly. Afterwards, the application must read from standard input where random data is provided by AFL which must be converted to a gnrc_pktsnip_t by the application. The fuzzing module provides a utility function (fuzzing_read_packet) for this purpose.

Additionally, the fuzzing application is responsible for ensuring the correct protocol specific encapsulation for the gnrc_pktsnip_t type. For instance, the gnrc_tcp module expects each packet, received via message passing, to be encapsulated in an IP datagram. This encapsulation is created by the fuzzing application.

Afterwards, the created gnrc_pktsnip_t is dispatched to the started network module thread using netapi. As soon as the network module finished processing the packet, i.e. frees it (or requests the next one when using the sock API), the fuzzing application is terminated and started again with new random input by AFL. Currently, only a single packet can be processed per invocation.

Input Corpus

AFL utilizes mutation-based input generation and as such requires an initial input corpus. Refer to the AFL manual for further information an AFL's input generation algorithm. The input corpus should consist of valid protocol messages and should be as small as possible. The input corpus for a given fuzzing application is located in the input/ subdirectory, each file in this directory represents a single protocol message. Depending on the specific protocol, an input corpus may be generated using a script or by extracting packets from a sniffed sample communication (e.g. using wireshark).

When creating a new fuzzing application, it is advisable to test that packets of the input corpus are successfully processed. This can be done by setting ENABLE_DEBUG for the tested module and running:

make -C fuzzing/<application> term < fuzzing/<application>/input/<packet>

Invocation

Before fuzzing an application it needs to be compiled, to ease detection of unwanted behaviour (e.g. out-of-bounds buffer accesses), compiling with all-asan is highly recommended. For example:

make -C fuzzing/<application> all-asan

Afterwards invoke afl using:

make -C fuzzing/<application> fuzz

Parallel Fuzzing

Parallel fuzzing is supported through FLAGS_FOR_AFL, e.g.:

# Start first AFL instance
FLAGS_FOR_AFL="-M fuzzer01" make -C fuzzing/gnrc_tcp/ fuzz

# Start second AFL instance in a different terminal
FLAGS_FOR_AFL="-S fuzzer02" make -C fuzzing/gnrc_tcp/ fuzz