Fuzzing Dictionary
A fuzzing dictionary provides domain-specific tokens to guide the fuzzer toward interesting inputs. Instead of purely random mutations, the fuzzer incorporates known keywords, magic numbers, protocol commands, and format-specific strings that are more likely to reach deeper code paths in parsers, protocol handlers, and file format processors.
Overview
Dictionaries are text files containing quoted strings that represent meaningful tokens for your target. They help fuzzers bypass early validation checks and explore code paths that would be difficult to reach through blind mutation alone.
Key Concepts
Concept Description
Dictionary Entry A quoted string (e.g., "keyword" ) or key-value pair (e.g., kw="value" )
Hex Escapes Byte sequences like "\xF7\xF8" for non-printable characters
Token Injection Fuzzer inserts dictionary entries into generated inputs
Cross-Fuzzer Format Dictionary files work with libFuzzer, AFL++, and cargo-fuzz
When to Apply
Apply this technique when:
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Fuzzing parsers (JSON, XML, config files)
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Fuzzing protocol implementations (HTTP, DNS, custom protocols)
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Fuzzing file format handlers (PNG, PDF, media codecs)
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Coverage plateaus early without reaching deeper logic
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Target code checks for specific keywords or magic values
Skip this technique when:
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Fuzzing pure algorithms without format expectations
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Target has no keyword-based parsing
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Corpus already achieves high coverage
Quick Reference
Task Command/Pattern
Use with libFuzzer ./fuzz -dict=./dictionary.dict ...
Use with AFL++ afl-fuzz -x ./dictionary.dict ...
Use with cargo-fuzz cargo fuzz run fuzz_target -- -dict=./dictionary.dict
Extract from header grep -o '".*"' header.h > header.dict
Generate from binary strings ./binary | sed 's/^/"&/; s/$/&"/' > strings.dict
Step-by-Step
Step 1: Create Dictionary File
Create a text file with quoted strings on each line. Use comments (# ) for documentation.
Example dictionary format:
Lines starting with '#' and empty lines are ignored.
Adds "blah" (w/o quotes) to the dictionary.
kw1="blah"
Use \ for backslash and " for quotes.
kw2=""ac\dc""
Use \xAB for hex values
kw3="\xF7\xF8"
the name of the keyword followed by '=' may be omitted:
"foo\x0Abar"
Step 2: Generate Dictionary Content
Choose a generation method based on what's available:
From LLM: Prompt ChatGPT or Claude with:
A dictionary can be used to guide the fuzzer. Write me a dictionary file for fuzzing a <PNG parser>. Each line should be a quoted string or key-value pair like kw="value". Include magic bytes, chunk types, and common header values. Use hex escapes like "\xF7\xF8" for binary values.
From header files:
grep -o '".*"' header.h > header.dict
From man pages (for CLI tools):
man curl | grep -oP '^\s*(--|-)\K\S+' | sed 's/[,.]$//' | sed 's/^/"&/; s/$/&"/' | sort -u > man.dict
From binary strings:
strings ./binary | sed 's/^/"&/; s/$/&"/' > strings.dict
Step 3: Pass Dictionary to Fuzzer
Use the appropriate flag for your fuzzer (see Quick Reference above).
Common Patterns
Pattern: Protocol Keywords
Use Case: Fuzzing HTTP or custom protocol handlers
Dictionary content:
HTTP methods
"GET" "POST" "PUT" "DELETE" "HEAD"
Headers
"Content-Type" "Authorization" "Host"
Protocol markers
"HTTP/1.1" "HTTP/2.0"
Pattern: Magic Bytes and File Format Headers
Use Case: Fuzzing image parsers, media decoders, archive handlers
Dictionary content:
PNG magic bytes and chunks
png_magic="\x89PNG\r\n\x1a\n" ihdr="IHDR" plte="PLTE" idat="IDAT" iend="IEND"
JPEG markers
jpeg_soi="\xFF\xD8" jpeg_eoi="\xFF\xD9"
Pattern: Configuration File Keywords
Use Case: Fuzzing config file parsers (YAML, TOML, INI)
Dictionary content:
Common config keywords
"true" "false" "null" "version" "enabled" "disabled"
Section headers
"[general]" "[network]" "[security]"
Advanced Usage
Tips and Tricks
Tip Why It Helps
Combine multiple generation methods LLM-generated keywords + strings from binary covers broad surface
Include boundary values "0" , "-1" , "2147483647" trigger edge cases
Add format delimiters : , = , { , } help fuzzer construct valid structures
Keep dictionaries focused 50-200 entries perform better than thousands
Test dictionary effectiveness Run with and without dict, compare coverage
Auto-Generated Dictionaries (AFL++)
When using afl-clang-lto compiler, AFL++ automatically extracts dictionary entries from string comparisons in the binary. This happens at compile time via the AUTODICTIONARY feature.
Enable auto-dictionary:
export AFL_LLVM_DICT2FILE=auto.dict afl-clang-lto++ target.cc -o target
Dictionary saved to auto.dict
afl-fuzz -x auto.dict -i in -o out -- ./target
Combining Multiple Dictionaries
Some fuzzers support multiple dictionary files:
AFL++ with multiple dictionaries
afl-fuzz -x keywords.dict -x formats.dict -i in -o out -- ./target
Anti-Patterns
Anti-Pattern Problem Correct Approach
Including full sentences Fuzzer needs atomic tokens, not prose Break into individual keywords
Duplicating entries Wastes mutation budget Use sort -u to deduplicate
Over-sized dictionaries Slows fuzzer, dilutes useful tokens Keep focused: 50-200 most relevant entries
Missing hex escapes Non-printable bytes become mangled Use \xXX for binary values
No comments Hard to maintain and audit Document sections with # comments
Tool-Specific Guidance
libFuzzer
clang++ -fsanitize=fuzzer,address harness.cc -o fuzz ./fuzz -dict=./dictionary.dict corpus/
Integration tips:
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Dictionary tokens are inserted/replaced during mutations
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Combine with -max_len to control input size
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Use -print_final_stats=1 to see dictionary effectiveness metrics
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Dictionary entries longer than -max_len are ignored
AFL++
afl-fuzz -x ./dictionary.dict -i input/ -o output/ -- ./target @@
Integration tips:
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AFL++ supports multiple -x flags for multiple dictionaries
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Use AFL_LLVM_DICT2FILE with afl-clang-lto for auto-generated dictionaries
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Dictionary effectiveness shown in fuzzer stats UI
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Tokens are used during deterministic and havoc stages
cargo-fuzz (Rust)
cargo fuzz run fuzz_target -- -dict=./dictionary.dict
Integration tips:
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cargo-fuzz uses libFuzzer backend, so all libFuzzer dict flags work
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Place dictionary file in fuzz/ directory alongside harness
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Reference from harness directory: cargo fuzz run target -- -dict=../dictionary.dict
go-fuzz (Go)
go-fuzz does not have built-in dictionary support, but you can manually seed the corpus with dictionary entries:
Convert dictionary to corpus files
grep -o '".*"' dict.txt | while read line; do echo -n "$line" | base64 > corpus/$(echo "$line" | md5sum | cut -d' ' -f1) done
go-fuzz -bin=./target-fuzz.zip -workdir=.
Troubleshooting
Issue Cause Solution
Dictionary file not loaded Wrong path or format error Check fuzzer output for dict parsing errors; verify file format
No coverage improvement Dictionary tokens not relevant Analyze target code for actual keywords; try different generation method
Syntax errors in dict file Unescaped quotes or invalid escapes Use \ for backslash, " for quotes; validate with test run
Fuzzer ignores long entries Entries exceed -max_len
Keep entries under max input length, or increase -max_len
Too many entries slow fuzzer Dictionary too large Prune to 50-200 most relevant entries
Related Skills
Tools That Use This Technique
Skill How It Applies
libfuzzer Native dictionary support via -dict= flag
aflpp Native dictionary support via -x flag; auto-generation with AUTODICTIONARIES
cargo-fuzz Uses libFuzzer backend, inherits -dict= support
Related Techniques
Skill Relationship
fuzzing-corpus Dictionaries complement corpus: corpus provides structure, dictionary provides keywords
coverage-analysis Use coverage data to validate dictionary effectiveness
harness-writing Harness structure determines which dictionary tokens are useful
Resources
Key External Resources
AFL++ Dictionaries Pre-built dictionaries for common formats (HTML, XML, JSON, SQL, etc.). Good starting point for format-specific fuzzing.
libFuzzer Dictionary Documentation Official libFuzzer documentation on dictionary format and usage. Explains token insertion strategy and performance implications.
Additional Examples
OSS-Fuzz Dictionaries Real-world dictionaries from Google's continuous fuzzing service. Search project directories for *.dict files to see production examples.