Capability
20 artifacts provide this capability.
Want a personalized recommendation?
Find the best match →via “hybrid-search-vector-keyword-fusion”
Open-source vector DB — built-in vectorizers, hybrid search, GraphQL API, multi-tenancy.
Unique: Implements explicit alpha-weighted fusion of vector and keyword scores (not just re-ranking), allowing fine-grained control over semantic vs. lexical matching; built-in to the database layer rather than requiring post-processing
vs others: More transparent and tunable than Elasticsearch's hybrid search (which uses internal scoring), and simpler to implement than Pinecone's keyword filtering which requires separate keyword index management
via “metadata filtering and hybrid search across vectors and keywords”
Serverless data — Redis, Kafka, Vector DB, QStash with pay-per-request and edge support.
Unique: Metadata filtering integrated into vector search without separate filtering layer. Enables hybrid search combining semantic similarity with structured metadata constraints.
vs others: More flexible than pure vector search; simpler than separate vector + keyword search systems; tighter integration than combining Pinecone + Elasticsearch.
via “sparse-dense-hybrid-vector-search”
Manage Pinecone vector indexes and similarity searches via MCP.
Unique: Official Pinecone MCP server exposes hybrid search as a first-class capability with native sparse-dense vector support, avoiding the need for custom score combination logic in agents. Integrates sparse and dense search seamlessly through unified MCP interface.
vs others: More effective than dense-only search for keyword-heavy queries because it preserves exact term matching; simpler than maintaining separate keyword and semantic indexes because Pinecone handles dual indexing internally.
via “hybrid search combining vector and full-text retrieval”
Serverless embedded vector DB — Lance format, multimodal, versioning, no server needed.
Unique: Integrates full-text and vector search at the storage layer using Lance's columnar format, avoiding separate indices and enabling single-pass retrieval; combines both modalities without requiring external search engines like Elasticsearch
vs others: Simpler than Elasticsearch + vector plugin because both search modes share the same columnar storage, but less mature than Pinecone's hybrid search in terms of tuning options and performance optimization
via “hybrid search combining dense and sparse retrieval”
LangChain reference RAG implementation from scratch.
Unique: Implements hybrid search by running parallel dense (vector similarity) and sparse (BM25) retrieval and merging results using configurable weighting (e.g., 0.7 * dense_score + 0.3 * sparse_score), enabling developers to tune the balance between semantic and lexical relevance.
vs others: More effective than pure semantic search for specialized vocabularies because BM25 captures exact term matches; more practical than pure keyword search because dense retrieval captures semantic relationships and synonyms that keyword search misses.
via “bm25 full-text search with metadata filtering”
Low-cost vector database — pay-per-query, S3-backed, up to 10x cheaper at scale.
Unique: Integrates BM25 full-text search as a first-class capability alongside vector search within the same API, enabling hybrid search queries that combine both ranking signals without requiring separate search infrastructure or post-processing to merge results
vs others: Simpler than maintaining separate Elasticsearch/Meilisearch instances for keyword search because full-text and vector search are unified in a single API with shared namespace isolation and S3 storage
via “hybrid retrieval with semantic and keyword search fusion”
Open-source LLM knowledge platform: turn raw documents into a queryable RAG, an autonomous reasoning agent, and a self-maintaining Wiki.
Unique: Decouples semantic and keyword retrieval into independent pipelines with pluggable reranking, allowing fine-grained control over fusion strategy per knowledge base. Supports multiple reranking backends (BM25, cross-encoder models) without requiring model retraining.
vs others: More flexible than pure semantic search (handles domain jargon better) and more intelligent than keyword-only search (understands intent), with configurable reranking that adapts to domain-specific precision/recall tradeoffs.
via “hybrid search combining full-text and vector results”
🌌 A complete search engine and RAG pipeline in your browser, server or edge network with support for full-text, vector, and hybrid search in less than 2kb.
Unique: Implements score normalization and weighted combination of BM25 and cosine similarity in a single unified query interface, allowing developers to tune the balance without maintaining separate search endpoints. Most vector databases treat hybrid search as an afterthought; Orama makes it a first-class citizen with configurable weighting.
vs others: Simpler API than Elasticsearch's hybrid search which requires separate queries and manual score combination; more flexible than Pinecone's hybrid search which uses fixed weighting algorithms.
via “semantic-context-retrieval-with-hybrid-search”
MineContext is your proactive context-aware AI partner(Context-Engineering+ChatGPT Pulse)
Unique: Implements hybrid search combining vector similarity with structured SQL filters, enabling queries that blend semantic relevance with temporal and categorical constraints. Supports both programmatic API and UI-based search with configurable ranking and filtering.
vs others: More powerful than vector-only search because it enables structured filtering (date range, type) combined with semantic similarity, whereas vector-only databases lack efficient categorical filtering. More intelligent than SQL-only search because it understands semantic meaning rather than just keyword matching.
via “metadata-driven filtering and faceted search”
Project-local RAG memory MCP server — knowledge graph + multilingual vector + FTS5 in a single SQLite file. Per-project isolation, 30 MCP tools, codepoint-safe chunking (Korean/CJK/emoji).
Unique: Combines vector similarity with metadata filtering in a single query interface, allowing agents to perform hybrid searches that are both semantically relevant and structurally constrained, without separate filtering steps
vs others: More flexible than pure vector search for structured knowledge bases, and more efficient than post-filtering results because constraints are applied during retrieval rather than after ranking
via “hybrid vector and keyword indexing with efficient similarity search”
Ready-to-run cloud templates for RAG, AI pipelines, and enterprise search with live data. 🐳Docker-friendly.⚡Always in sync with Sharepoint, Google Drive, S3, Kafka, PostgreSQL, real-time data APIs, and more.
Unique: Implements hybrid search through a unified query interface that abstracts over multiple index types, allowing dynamic selection of retrieval strategy (pure vector, pure keyword, or combined) at query time without re-indexing. Supports metadata filtering as a first-class retrieval primitive alongside similarity scoring.
vs others: More flexible than vector-only systems (Pinecone, Weaviate) for exact matching use cases; simpler than building separate keyword and vector pipelines. Pathway's configuration-driven approach enables switching retrieval strategies without code changes.
via “hybrid keyword-semantic search with weighted fusion”
A lightning-fast search engine API bringing AI-powered hybrid search to your sites and applications.
Unique: Uses weighted fusion of separate inverted indexes (for keyword) and arroy vector stores (for semantic) with configurable semanticRatio parameter, enabling per-index tuning of keyword vs. semantic weight without requiring external ranking services or re-indexing
vs others: Faster than Elasticsearch's hybrid search because Meilisearch's Rust-based milli engine pre-computes both index types at ingest time rather than computing similarity scores at query time, achieving sub-50ms latency on large datasets
via “hybrid semantic and full-text search with reranking”
An open source, privacy focused alternative to NotebookLM for teams with no data limits. Join our Discord: https://discord.gg/ejRNvftDp9
Unique: Implements a true hybrid search combining vector embeddings with BM25 full-text indexing and explicit reranking, rather than relying on vector-only search. This architecture allows precise keyword matching (critical for technical documentation) while maintaining semantic understanding, with configurable scoring weights to tune the balance per use case.
vs others: More sophisticated than NotebookLM's document search (semantic-only) and more flexible than Perplexity's web search (which lacks internal document indexing); comparable to enterprise search platforms like Glean but open-source and self-hostable
via “hybrid semantic and keyword search with adaptive strategy selection”
Memento MCP: A Knowledge Graph Memory System for LLMs
Unique: Implements adaptive strategy selection that automatically routes queries to semantic or keyword search based on query characteristics, rather than requiring explicit user configuration. Combines Neo4j's vector index and full-text index capabilities in a single unified search interface.
vs others: More intelligent than single-strategy search systems; avoids the latency overhead of always running both semantic and keyword searches by adaptively selecting the optimal path.
via “semantic search across knowledge base with hybrid retrieval”
🔥 MaxKB is an open-source platform for building enterprise-grade agents. 强大易用的开源企业级智能体平台。
Unique: Implements hybrid semantic + keyword search using PGVector with native PostgreSQL integration, enabling fast retrieval without external vector DB dependencies; supports metadata filtering while maintaining semantic relevance through combined scoring.
vs others: Faster than cloud vector DBs (Pinecone) for on-premise deployments because search happens locally in PostgreSQL; more flexible than pure keyword search because it understands semantic meaning; simpler than building custom hybrid search because both vector and keyword indices are managed automatically.
via “hybrid search combining dense and sparse retrieval”
Self-learning vector database for Node.js — hybrid search, Graph RAG, FlashAttention-3, HNSW, 50+ attention mechanisms
Unique: Implements configurable fusion strategies (RRF, weighted sum) with per-query weight tuning, whereas most vector DBs treat hybrid search as an afterthought or require external re-ranking services
vs others: More flexible than Elasticsearch's dense_vector + text search because fusion weights are tunable per query; simpler than Vespa because it doesn't require complex ranking expressions
via “bm25 full-text search with hybrid ranking”
A lightweight, file-backed vector database for Node.js and browsers with Pinecone-compatible filtering and hybrid BM25 search.
Unique: Combines BM25 and vector similarity in a single ranking framework with configurable weighting, avoiding the need for separate lexical and semantic search pipelines. Implements BM25 from scratch rather than wrapping an external library.
vs others: Simpler than Elasticsearch for hybrid search but lacks advanced features like phrase queries, stemming, and distributed indexing. Better integrated with vector search than bolting BM25 onto a pure vector database.
via “semantic search with hybrid bm25 and embedding-based ranking”
Open Source AI Platform - AI Chat with advanced features that works with every LLM
Unique: Combines Vespa's native BM25 ranking with semantic similarity scoring in a single query, with configurable weighting and optional LLM-based re-ranking. Supports per-assistant search strategy configuration without re-indexing, enabling teams to optimize for precision vs. recall per use case.
vs others: More accurate than BM25-only search because it captures semantic meaning; more efficient than pure semantic search because BM25 filtering reduces embedding computation overhead. More flexible than fixed-weight hybrid search because weights are configurable per-assistant.
via “metadata filtering and hybrid search (semantic + keyword)”
A rag component for Convex.
Unique: Performs metadata filtering within Convex's query engine before similarity computation, reducing the number of documents to score and enabling efficient combination of structured filtering with semantic ranking in a single database query
vs others: More integrated than Elasticsearch hybrid search (no separate index), but less flexible than Pinecone's metadata filtering for complex boolean queries on high-cardinality fields
via “hybrid document-vector search with semantic ranking”
Local-first document and vector database for React, React Native, and Node.js
Unique: Implements dual-index hybrid search (text + vector) entirely client-side with configurable fusion strategies, whereas most local search libraries support only one modality or require separate infrastructure for each
vs others: Eliminates the need for separate Elasticsearch and vector database by unifying both search types in a single local index, reducing complexity and infrastructure costs compared to hybrid search stacks
Building an AI tool with “Metadata Filtering And Hybrid Search Semantic Keyword”?
Submit your artifact →curl unfragile.ai/agents.md | sh© 2026 Unfragile. The platform for software for agents.