Compute the similarity of two sets
Get Jaccard distance between strings.
Implements the Jaccard algorithm for finding the similarity coefficient between sentences
Promise-based Jaccard similarity coefficient index calculation framework
Jaccard Index Javascript Library
A Jaccard index calculator supporting multi-set.
TypeScript implementation of the SuperMinHash algorithm for Jaccard similarity estimation
An algorithm to calculate rarity of NFT(how special it is), based on Jaccard Distance.
Fast Jaccard-similarity based auto-suggestion for JS/TS
Zero-dependency LLM response cache with exact, fuzzy (Jaccard), semantic (HNSW cosine) matching, Redis/SQLite/FS/Memory backends, MCP server, HTTP middleware, streaming, analytics, and local embeddings.
Jaccard Similarity Coefficient Index Stream Transform
calculate jaccard index for two sorted streams of data
Straightforward fuzzy matching, information retrieval and NLP building blocks for JavaScript.
This is a little project to explore theming using n-gramms and Jaccard index
A module for finding the best match based on Jaccard similarity.
An algorithm to calculate rarity of NFT(how special it is), based on Jaccard Distance.
Calculate the Jaccard Index of Hashes of GeoJSON Polygons
Distance/Similarity functions for Bag of Words, Strings, Numbers, Dates and Vectors.
Javascript version of hermetrics.py
Very simple package for measuring the similarity of two sets by their shared members.
library for simularity identification
A lightweight, rule-based text similarity calculator that selects the most appropriate comparison algorithm based on input string lengths.
A collection of string comparisons algorithms
Complete string distance and similarity algorithms package with WebAssembly and JavaScript implementations
Fast Sketching for Weighted Sets
Portable mixed-precision BLAS-like vector math library for x86 and ARM
Compute Jaccard similarity statistic between two BED files — bedtools jaccard equivalent
Minhash algorithms for weighted Jaccard index
Portable mixed-precision math, linear-algebra, & retrieval library with 2000+ SIMD kernels for x86, Arm, RISC-V, LoongArch, Power, & WebAssembly
GRIT: Genomic Range Interval Toolkit - high-performance genomic interval operations
genome classification, probminhash hnsw, genome search
Greedy clustering engine compatible with CD-HIT-like pipelines
Probabilistic data structures for scalable approximate analytics
A high-performance Rust library for computing text similarity using multiple algorithms.
Ultra-fast approximate UniFrac via Weighted MinHash
Candidate search (LSH/MinHash & KMV) for high-identity sequence clustering pipelines compatible with CD-HIT outputs.
The Jaccard Coefficient Index is a measure of how similar two sets are. This library makes calculating the coefficient very easy, and provides useful helpers.
A Jaccard-similarity recommender using Redis sets or MySQL
Enter two strings and it compares their similarity and gives a score between 0 and 1, when 1 is the similarity
This gem provides recommendations by calculating similarity scores using the Jaccard Index, Dice-Sørensen Coefficient, and collaborative filtering.
DEPRECATED PROJECT. MIGRATED TO PYTHON: https://github.com/seoanezonjic/NetAnalyzer. NetAnalyzer is a useful network analysis tool developed in Ruby that can 1) analyse any type of unweighted network, regardless of the number of layers, 2) calculate the relationship between different layers, using various association indices (Jaccard, Simpson, PCC, geometric, cosine and hypergeometric) and 3) validate the results
A small duplicate-code metric for Ruby that compares normalized Ripper syntax fingerprints with Jaccard similarity. Inspired by Uncle Bob's dry4clj.
Ruby gem to generate automated test reports for academic assignments with HTML templates, CSV export, optional PDF (via prawn), class-wide reporting, and basic Jaccard code similarity.
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