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BeDivFuzz: Behavioral Diversity Fuzzing

DOI

This repository provides the code and replication instructions for our paper BeDivFuzz: Integrating Behaviorial Diversity into Generator-based Fuzzing (ICSE'2022).

BeDivFuzz is implemented as an extension of JQF.

Using Docker

First, build the image:

docker build -t bedivfuzz .

Then, run the container (with the current directory mounted to /workspace inside the container):

docker run -it --rm -v ${PWD}:/workspace bedivfuzz

Step 1: Build BeDivFuzz, Zest, and RLCheck

To build BeDivFuzz and Zest, run:

mvn package

RLCheck needs to be build separately:

cd RLCheck/jqf/
mvn package
cd ../..

Optional: Test BeDivFuzz

We can now perform a test run of BeDivFuzz (e.g., on Rhino) as follows:

bin/jqf-bediv -c $(scripts/examples_classpath.sh) edu.berkeley.cs.jqf.examples.rhino.CompilerTest testWithSplitGenerator

After a while, you should see a status screen similar to this:

BeDivFuzz: Behavioral Diversity Fuzzing.
Test name:            edu.berkeley.cs.jqf.examples.rhino.CompilerTest#testWithSplitGenerator
Results directory:    /Users/lam/_projects/clustering-guided-fuzzing/code/BeDivFuzz/experiments/fuzz-results
Elapsed time:         30s (no time limit)
Number of executions: 4,577
Valid inputs:         3,607 (78.81%)
Cycles completed:     0
Unique failures:      1
Queue size:           153 (0 favored last cycle)
Current parent input: 14 (favored) {229/360 mutations}
Execution speed:      215/sec now | 150/sec overall
Valid coverage:       5,236 branches (7.99% of map)
Behavioral Diversity: (B(0): 5367 | B(1): 3001 | B(2): 2563)
Unique valid inputs:  1,588 (34.70%)
Unique valid paths:   3,607
Structure-changing mutations (exploration):    216,776
Overall exploration score: 0.295
Structure-preserving mutations (exploitation):    611,515
Overall exploitation score: 0.990

Since this process runs without a timeout, you have to manually abort it with Ctrl+C.

Step 2: Perform the Evaluation

The evaluation script can be executed as follows:

scripts/run_parallel_experiments.sh -o out_dir -t timeout -n repetitions -p parallel_workers [-r]
  • out_dir is the folder where the results should be saved
  • timeout is the timeout (in seconds) per trial
  • repetitions is the number of repetitions to perform
  • parallel_workers is the number of parallel trials to perform and must be a factor of repetitions to evenly distribute the workload (e.g., with repetitions=30 and parallel_workers=10, each instance will perform 3 repetitions)
  • The -r flag enables coverage replay and is required to collect coverage data for RLCheck and QuickCheck

In our original evaluation, we first performed experiments with 1 hour timeout and 30 repetitions to answer RQ1 (input diversity) and RQ2 (behavioral diversity). The command for this setup (with 15 parallel instances) is:

scripts/run_parallel_experiments.sh -o coverage-results -t 3600 -n 30 -p 15 -r 

To answer RQ3 (fault finding capabilities), we extended the timeout to 24 hours, but did not measure any coverage (i.e., no -r flag):

scripts/run_parallel_experiments.sh -o crash-results -t 86400 -n 30 -p 15

Step 3: Generate the figures

For this step, we assume that the results are stored under coverage-results (RQ1/RQ2) and crash-results (RQ3).

To generate the plots for Figure 3 (diverse valid inputs) and Figure 4 (behavioral diversity), use:

python3 scripts/gen_figures.py coverage-results

The plots will be produced in the subdirectory coverage-results/figs.

To generate the crash table (Table 1) from crash-results, the following command can be used:

python3 scripts/gen_crash_table.py crash-results

The table will be printed on the terminal, but also saved as crash-results/crash_table.txt.