Rapid fuzzy string matching in C++ using the Levenshtein Distance
Description • Installation • Usage • License
Description
RapidFuzz is a fast string matching library for Python and C++, which is using the string similarity calculations from FuzzyWuzzy. However there are two aspects that set RapidFuzz apart from FuzzyWuzzy:
- It is MIT licensed so it can be used whichever License you might want to choose for your project, while you're forced to adopt the GPL license when using FuzzyWuzzy
- It is mostly written in C++ and on top of this comes with a lot of Algorithmic improvements to make string matching even faster, while still providing the same results. More details on these performance improvements in form of benchmarks can be found here
The Library is splitted across multiple repositories for the different supported programming languages:
- The C++ version is versioned in this repository
- The Python version can be found at maxbachmann/rapidfuzz
CMake Integration
There are severals ways to integrate rapidfuzz
in your CMake project.
By Installing it
git clone https://github.com/maxbachmann/rapidfuzz-cpp.git rapidfuzz-cpp
cd rapidfuzz-cpp
mkdir build && cd build
cmake .. -DCMAKE_BUILD_TYPE=Release
cmake --build .
cmake --build . --target install
Then in your CMakeLists.txt:
find_package(rapidfuzz REQUIRED)
add_executable(foo main.cpp)
target_link_libraries(foo rapidfuzz::rapidfuzz)
Add this repository as a submodule
git submodule add https://github.com/maxbachmann/rapidfuzz-cpp.git 3rdparty/RapidFuzz
Then you can either:
- include it as a subdirectory
add_subdirectory(3rdparty/RapidFuzz) add_executable(foo main.cpp) target_link_libraries(foo rapidfuzz::rapidfuzz)
- build it at configure time with
FetchContent
FetchContent_Declare( rapidfuzz SOURCE_DIR ${CMAKE_SOURCE_DIR}/3rdparty/RapidFuzz PREFIX ${CMAKE_CURRENT_BINARY_DIR}/rapidfuzz CMAKE_ARGS -DCMAKE_INSTALL_PREFIX:PATH=<INSTALL_DIR> "${CMAKE_OPT_ARGS}" ) FetchContent_MakeAvailable(rapidfuzz) add_executable(foo main.cpp) target_link_libraries(foo PRIVATE rapidfuzz::rapidfuzz)
Download it at configure time
If you don't want to add rapidfuzz-cpp
as a submodule, you can also download it with FetchContent
:
FetchContent_Declare(rapidfuzz
GIT_REPOSITORY https://github.com/maxbachmann/rapidfuzz-cpp.git
GIT_TAG main)
FetchContent_MakeAvailable(rapidfuzz)
add_executable(foo main.cpp)
target_link_libraries(foo PRIVATE rapidfuzz::rapidfuzz)
It will be downloaded each time you run CMake in a blank folder.
CMake option
There are CMake options available:
RAPIDFUZZ_BUILD_TESTING
: to build test (default OFF and requires Catch2)RAPIDFUZZ_BUILD_BENCHMARKS
: to build benchmarks (default OFF and requires Google Benchmark)RAPIDFUZZ_INSTALL
: to install the library to local computer- When configured independently, installation is on.
- When used as a subproject, the installation is turned off by default.
- For library developers, you might want to toggle the behavior depending on your project.
- If your project is exported via
CMake
, turn installation on or export error will result. - If your project publicly depends on
RapidFuzz
(includesrapidfuzz.hpp
in header), turn installation on or apps depending on your project would face include errors.
Usage
#include <rapidfuzz/fuzz.hpp>
Simple Ratio
using rapidfuzz::fuzz::ratio;
// score is 96.55171966552734
double score = rapidfuzz::fuzz::ratio("this is a test", "this is a test!");
Partial Ratio
// score is 100
double score = rapidfuzz::fuzz::partial_ratio("this is a test", "this is a test!");
Token Sort Ratio
// score is 90.90908813476562
double score = rapidfuzz::fuzz::ratio("fuzzy wuzzy was a bear", "wuzzy fuzzy was a bear")
// score is 100
double score = rapidfuzz::fuzz::token_sort_ratio("fuzzy wuzzy was a bear", "wuzzy fuzzy was a bear")
Token Set Ratio
// score is 83.8709716796875
double score = rapidfuzz::fuzz::token_sort_ratio("fuzzy was a bear", "fuzzy fuzzy was a bear")
// score is 100
double score = rapidfuzz::fuzz::token_set_ratio("fuzzy was a bear", "fuzzy fuzzy was a bear")
Process
In the Python implementation there is a module process, which is used to compare e.g. a string to a list of strings. In Python this both saves the time to implement those features yourself and can be a lot more efficient than repeated type conversions between Python and C++. Implementing a similar function in C++ using templates is not easily possible and probably slower than implementing them on your own. Thats why this section describes how users can implement those features with a couple lines of code using the C++ library.
extract
The following function compares a query string to all strings in a list of choices. It returns all elements with a similarity over score_cutoff. Generally make use of the cached implementations when comparing a string to multiple strings.
template <typename Sentence1,
typename Iterable, typename Sentence2 = typename Iterable::value_type>
std::vector<std::pair<Sentence2, double>>
extract(const Sentence1& query, const Iterable& choices, const double score_cutoff = 0.0)
{
std::vector<std::pair<Sentence2, double>> results;
rapidfuzz::fuzz::CachedRatio<typename Sentence1::value_type> scorer(query);
for (const auto& choice : choices) {
double score = scorer.similarity(choice, score_cutoff);
if (score >= score_cutoff) {
results.emplace_back(choice, score);
}
}
return results;
}
extractOne
The following function compares a query string to all strings in a list of choices.
template <typename Sentence1,
typename Iterable, typename Sentence2 = typename Iterable::value_type>
std::optional<std::pair<Sentence2, double>>
extractOne(const Sentence1& query, const Iterable& choices, const double score_cutoff = 0.0)
{
bool match_found = false;
double best_score = score_cutoff;
Sentence2 best_match;
rapidfuzz::fuzz::CachedRatio<typename Sentence1::value_type> scorer(query);
for (const auto& choice : choices) {
double score = scorer.similarity(choice, best_score);
if (score >= best_score) {
match_found = true;
best_score = score;
best_match = choice;
}
}
if (!match_found) {
return nullopt;
}
return std::make_pair(best_match, best_score);
}
multithreading
It is very simple to use those scorers e.g. with open OpenMP to achieve better performance.
template <typename Sentence1,
typename Iterable, typename Sentence2 = typename Iterable::value_type>
std::vector<std::pair<Sentence2, double>>
extract(const Sentence1& query, const Iterable& choices, const double score_cutoff = 0.0)
{
std::vector<std::pair<Sentence2, double>> results(choices.size());
rapidfuzz::fuzz::CachedRatio<typename Sentence1::value_type> scorer(query);
#pragma omp parallel for
for (size_t i = 0; i < choices.size(); ++i) {
double score = scorer.similarity(choices[i], score_cutoff);
results[i] = std::make_pair(choices[i], score);
}
return results;
}
License
RapidFuzz is licensed under the MIT license since I believe that everyone should be able to use it without being forced to adopt the GPL license. Thats why the library is based on an older version of fuzzywuzzy that was MIT licensed as well. This old version of fuzzywuzzy can be found here.