惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

F
Full Disclosure
V
Vulnerabilities – Threatpost
Attack and Defense Labs
Attack and Defense Labs
N
News and Events Feed by Topic
SecWiki News
SecWiki News
S
Security @ Cisco Blogs
Schneier on Security
Schneier on Security
B
Blog
TaoSecurity Blog
TaoSecurity Blog
The Last Watchdog
The Last Watchdog
H
Hacker News: Front Page
Hacker News - Newest:
Hacker News - Newest: "LLM"
博客园_首页
D
Docker
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
Y
Y Combinator Blog
W
WeLiveSecurity
N
News and Events Feed by Topic
F
Fortinet All Blogs
PCI Perspectives
PCI Perspectives
WordPress大学
WordPress大学
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
www.infosecurity-magazine.com
www.infosecurity-magazine.com
Recent Announcements
Recent Announcements
Forbes - Security
Forbes - Security
T
Tailwind CSS Blog
Hacker News: Ask HN
Hacker News: Ask HN
爱范儿
爱范儿
腾讯CDC
Last Week in AI
Last Week in AI
月光博客
月光博客
C
Cybersecurity and Infrastructure Security Agency CISA
P
Proofpoint News Feed
Help Net Security
Help Net Security
V
V2EX
C
Cyber Attacks, Cyber Crime and Cyber Security
C
CXSECURITY Database RSS Feed - CXSecurity.com
H
Heimdal Security Blog
L
LINUX DO - 最新话题
GbyAI
GbyAI
The Hacker News
The Hacker News
罗磊的独立博客
S
SegmentFault 最新的问题
H
Hackread – Cybersecurity News, Data Breaches, AI and More
博客园 - 【当耐特】
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
V2EX - 技术
V2EX - 技术
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
O
OpenAI News
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻

DEV Community

Authentication Security Deep Dive: From Brute Force to Salted Hashing (With Java Examples) Why AI Systems Don’t Fail — They Drift Spilling beans for how i learn for exam😁"Reinforcement Learning Cheat Sheet" I Replaced Chrome with Safari for AI Browser Automation. Here's What Broke (and What Finally Worked) How Python Borrows Other People's Work The $40 Architecture: Processing 1 Billion API Requests with 99.99% Uptime Vibe Coding: A Workflow Guide (From Zero to SaaS) Most webhook security guides protect the wrong side. The scary part is delivery. Headless CMS for TanStack Start: Build a Blog with Cosmic EU Age Verification App "Hacked in 2 Minutes" — What Actually Happened Comfy Cloud’s delete function does not actually remove files Running AI Models on GPU Cloud Servers: A Beginner Guide Event-driven media intelligence with AWS Step Functions and Bedrock I scored 500 AI prompts across 8 quality dimensions — here's what broke How to Call Google Gemini API from Next.js (Free Tier, No Backend Needed) The Portal Protocol: Reclaiming Human Connection in the Age of AI How to Fix Your Team's Scattered Knowledge Problem With a Self-Hosted Forum Intro to tc Cloud Functors: A Graph-First Mental Model for the Modern Cloud Designing Multi-Tenant Backends With Both Ownership and Team Access I Built a Neumorphic CSS Library with 77+ Components — Here's What I Learned PostgreSQL Performance Optimization: Why Connection Pooling Is Critical at Scale Cómo construí un SaaS multi-rubro para gestionar expensas en Argentina con FastAPI + Vue 3 🚀 I Built an Ethical Hacking Scanner Tool – Open Source Project I Replaced /usage and /context in Claude Code With a Single Statusline A Pythonic Way to Handle Emails (IMAP/SMTP) with Auto-Discovery and AI-Ready Design I Collected 8.9 Million Polymarket Price Points — Here's What I Found About How Markets Really Move EcoTrack AI — Carbon Footprint Tracker & Dashboard Everyone's Using AI. No One Agrees How. 5 self-hosted ebook managers worth trying in 2026 Building Your First AI Agent with LangChain: From Chatbot to Autonomous Assistant Common SOC 2 Failures (Real World) Stop Vibe-Checking Your AI App: A Practical Guide to Evals How to Use SonarQube and SonarScanner Locally to Level Up Your Code Quality Your Next To-Do App Is Dead — I Replaced Mine with an OpenClaw AI Sign a Nostr event in 60 lines of Python using coincurve — no nostr-sdk, no nbxplorer, no rust toolchain ITGC Audit Explained Like You’re in Big 4 Patch Tuesday abril 2026: Microsoft parcha 163 vulnerabilidades y un zero-day en SharePoint Stop scraping everything: a better way to track competitor price changes Listing on MCPize + the Official MCP Registry while routing payments OUTSIDE the marketplace — how I kept 100% of my x402 revenue Building an AI-Powered Risk Intelligence System Using Serverless Architecture Why We Ripped Function Overloading Out of Our AI Toolchain Testing AI-Generated Code: How to Actually Know If It Works SaaS Churn Is Killing Your Business. Here Is What to Do About It (Without a Support Team) The Speed of AI Is No Longer Linear - And Self-Improving Models Are Why How to Implement RBAC for MCP Tools: A Practical Guide for Engineering Teams From Standard Quote to Persuasive Proposal: AI Automation for Arborists I built a CLI that scaffolds complete multi-tenant SaaS apps Axios CVE-2025–62718: The Silent SSRF Bug That Could Be Hiding in Your Node.js App Right Now The dashboard that ended our friendship Data Pipelines Explained Simply (and How to Build Them with Python) The Hidden Cost of AI Systems Nobody Talks About. undefined vs undeclared, and how typeof behaves Switching from file-based jobs to NATS/Kafka in Rust without changing code io_uring Adventures: Rust Servers That Love Syscalls Why Agentic AI is Killing the Traditional Database The POUR principles of web accessibility for developers and designers Quantum Neural Network 3D — A Deep Dive into Interactive WebGL Visualization How To Install Caveman In Codex On macOS And Windows Automation Pipeline Reliability: Why Your Workflow Breaks When Nobody Is Watching I Built an 'Open World' AI Coding Agent — It Works From ANY Folder From Freelancing to Product: A Tech Service Company's SaaS Transformation China's AI Giants: Adding Tencent Hunyuan & ByteDance Doubao to AI University (74 Providers) On the Vibe Coders and Their Lies clerk: Auto-Summarize Your Claude Code Sessions AI Weekly — 2026/04/10–04/17 | The Model Lockdown Is Here, but the Toolchain Is the Real Battleground AI 週報 — 2026/04/10–2026/04/17 模型封鎖潮來了,但工具鏈才是真戰場 Maybe this is how Open-Source apps are born... 🚀 Fine-Tune LLMs with LoRA and QLoRA: 2026 Guide tRPC v11 + Next.js App Router: End-to-End Type Safety Without the Boilerplate ShadCN UI in 2026: Why I Stopped Installing Component Libraries and Started Owning My Components SaaS Billing in React Server Components: Stripe + Supabase Without a Single `useEffect` Join our DEV Weekend Challenge — $1,000 in Prizes Across TEN winners! Submissions Due April 20 at 6:59 AM UTC. Implementing FSRS Spaced Repetition in Flutter + Supabase — Adding Memory Science to an AI Learning App "I Texted My Localhost From the Train — Claude Code Fixed the Bug Before I Got Home" I Built a Sales Prep AI and It Went Deeper Than Expected Design to Code #2: One JSON, Eleven Outputs Solving the 100M-Row Problem: A Summary Table Pattern for High-Volume Push Notification Logs Flutter Web With Wasm: What Actually Changes For Developers I Built 50 Royalty-Free Soundtracks for My Side Project in a Weekend Using AI Music Generation The Vibe Coding Security Checklist: 7 Things to Check Before You Ship Stop Letting Googlebot Guess Fix Your React App's SEO Right Desconstruindo o Streaming do LinkedIn: Como Criar um Engine de Extração de Vídeo de Alta Performance com HLS e FFmpeg (EDA Part-1) EDA (Exploratory Data Analysis) Explained With Real Life — Why Looking at Your Data Is the Most Important Step in Machine Learning Brand Relationship Management at Scale: Our 4-Touch Outreach System for 200+ Brands Why String.fromEnvironment() Might Return an Empty String in Dart JGuardrails 1.0.0 — Hardening Java LLM Apps Against Jailbreaks, Toxicity, and Prompt Injection Plan and Schedule a Full Week of Threads Content From One Claude Conversation Coding Cat Oran Ep3, Five Tables Changed Everything Updated: BFF Pattern I'm done watching freelancers get buried by 200 proposals. So I'm building the alternative. This is my first post BFS Algorithm in Java Step by Step Tutorial with Examples Tracking LLM Pricing Monthly: An Open Dataset for 22 AI Models How We Measure Content ROI on a Comparison Site: Revenue Attribution Without Perfect Data Introducing Nova AI Ops: The AI-Native Operating System for SRE Teams I built a free desktop video downloader for Windows — Grabbit How Talkie OCR Helps Vision-Impaired & Dyslexic Users Read the World Around Them VRCFaceTracking安装和iPhone面捕配置教程,有bug Even CrowdStrike Can't See Your Agents The Automation Gold Rush: What n8n Workflows and Claude Are Opening Up for Developers Right Now
RAG Series (10): Hybrid Search — Retrieving More, Missing Less
WonderLab · 2026-05-08 · via DEV Community

A Blind Spot in Vector Search

Suppose your knowledge base contains a document with this sentence:

"For Chinese scenarios, we recommend BAAI/bge-large-zh-v1.5, with a vector dimension of 1024."

A user asks: "What is the vector dimension of BAAI/bge-large-zh-v1.5?"

You might think this is a gimme — identical words, vector search should nail it easily.

Not necessarily. Vector search relies on semantic similarity. When the query and document share the same exact vocabulary, vector search has no particular advantage over BM25 — and sometimes performs worse. BM25 is specifically designed for exact term frequency matching. This is its home turf.

The real issue: your RAG system will inevitably face both types of queries:

  • Keyword queries: contain exact model names, parameters, formulas, names — "BAAI/bge-large-zh-v1.5 dimension"
  • Semantic queries: conceptual questions phrased differently — "My AI assistant keeps giving outdated answers, how do I fix this?"

Pure vector search handles the second well, but struggles with the first. Pure BM25 is the opposite.

Hybrid Search is conceptually simple: run both, then merge the results.


BM25 in Plain Terms

BM25 (Best Match 25) is the classic ranking algorithm behind Elasticsearch, Lucene, and most search engines.

Core formula:

score(D, Q) = Σ IDF(qi) × (f(qi, D) × (k1 + 1)) / (f(qi, D) + k1 × (1 - b + b × |D|/avgdl))

Enter fullscreen mode Exit fullscreen mode

Human-readable version:

  • IDF (Inverse Document Frequency): Rare words are worth more. "the" is worthless; "BAAI/bge-large-zh-v1.5" is gold.
  • TF (Term Frequency): More occurrences → higher score, but with diminishing returns.
  • Document length normalization: Long documents don't automatically win just because they have more words.

BM25 strengths: Purely vocabulary-based. If the query word appears in the document, it hits — precisely and reliably. Exact product names, function names, parameter values — this is its home court.

BM25 weaknesses: No semantic understanding. "knowledge cutoff" and "AI that doesn't know recent events" are completely unrelated to BM25, even though they mean the same thing.


The RRF Fusion Algorithm

Given results from both BM25 and vector search, how do you combine them?

The naive approach is to take a weighted average of scores — but the two algorithms use completely different scoring scales, so direct addition is meaningless.

RRF (Reciprocal Rank Fusion) takes a more elegant approach: compare ranks, not scores.

Formula:

RRF_score(d) = Σ 1 / (k + rank(d))

Enter fullscreen mode Exit fullscreen mode

  • rank(d): where document d ranked in a given retriever (1st, 2nd, ...)
  • k: a constant, usually 60, to prevent the top-ranked document from dominating
  • Sum across all retrievers

Example:

Document BM25 Rank Vector Rank RRF Score (k=60)
doc-006 1 3 1/(60+1) + 1/(60+3) = 0.0164 + 0.0159 = 0.0323
doc-003 3 1 1/(60+3) + 1/(60+1) = 0.0323
doc-002 2 4 1/(60+2) + 1/(60+4) = 0.0161 + 0.0156 = 0.0317

The key benefit of RRF: no matter how different two retrievers' score ranges are, results are fused fairly based on rank alone. No manual score normalization needed.


Experiment Design

6 test queries covering both scenarios:

Type Query Expected Doc What It Tests
Keyword BAAI/bge-large-zh-v1.5 dimension doc-003 Exact model name
Keyword RRF score sum 1/(k+rank) formula doc-006 Exact formula string
Keyword chunk_size 256 1024 overlap recommended doc-004 Exact parameter values
Semantic My AI assistant gives outdated answers, how do I keep it current? doc-001 No mention of "RAG"
Semantic Multiple teams share one Q&A system — how to keep their data separate? doc-008 No mention of "multi-tenancy"
Semantic Rephrasing the same question returns completely different results — how to fix this? doc-007 No mention of "Multi-Query"

Evaluation metric: MRR (Mean Reciprocal Rank)

RR = 1 / rank  (where did the correct document land?)
MRR = average RR across all queries

Enter fullscreen mode Exit fullscreen mode

  • Always ranks first → MRR = 1.0
  • Averages second place → MRR = 0.5
  • Never found → MRR = 0.0

Implementing the Three Retrievers

BM25 Retriever

Chinese text needs word segmentation first. We use jieba:

import jieba
from langchain_community.retrievers import BM25Retriever

def chinese_tokenizer(text: str) -> list[str]:
    return list(jieba.cut(text))

bm25_retriever = BM25Retriever.from_documents(
    docs,
    k=3,
    preprocess_func=chinese_tokenizer,
)

Enter fullscreen mode Exit fullscreen mode

Vector Retriever

from langchain_chroma import Chroma
from langchain_openai import OpenAIEmbeddings

embeddings = OpenAIEmbeddings(
    model="BAAI/bge-large-zh-v1.5",
    api_key=os.getenv("EMBEDDING_API_KEY"),
    base_url="https://api.siliconflow.cn/v1",
)
vectorstore = Chroma.from_documents(docs, embedding=embeddings)
vector_retriever = vectorstore.as_retriever(search_kwargs={"k": 3})

Enter fullscreen mode Exit fullscreen mode

Hybrid Retriever (EnsembleRetriever + RRF)

from langchain_classic.retrievers import EnsembleRetriever

hybrid_retriever = EnsembleRetriever(
    retrievers=[bm25_retriever, vector_retriever],
    weights=[0.5, 0.5],   # Equal weight — fused internally via RRF
)

Enter fullscreen mode Exit fullscreen mode

The weights parameter in EnsembleRetriever controls each retriever's contribution to RRF scoring, not a direct score average. The implementation performs weighted RRF fusion over each retriever's ranked results.


Experimental Results

======================================================================
  Per-Query Results  (RR = Reciprocal Rank; Hit@1 = correct doc ranked first?)
======================================================================

  [KEYWORD ] BAAI/bge-large-zh-v1.5 dimension
    Expected: doc-003
    BM25   [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-003', 'doc-006', 'doc-004']
    Vector [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-003', 'doc-005', 'doc-002']
    Hybrid [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-003', 'doc-006', 'doc-004']

  [KEYWORD ] RRF score sum 1/(k+rank) formula
    Expected: doc-006
    BM25   [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-006', 'doc-002', 'doc-004']
    Vector [H@1=✗] RR=0.50 | rank=2 | retrieved: ['doc-004', 'doc-006', 'doc-003']
    Hybrid [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-006', 'doc-004', 'doc-003']

  [KEYWORD ] chunk_size 256 1024 overlap recommended
    Expected: doc-004
    BM25   [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-004', 'doc-003', 'doc-006']
    Vector [H@1=✗] RR=0.50 | rank=2 | retrieved: ['doc-006', 'doc-004', 'doc-003']
    Hybrid [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-004', 'doc-006', 'doc-003']

  [SEMANTIC] My AI gives outdated answers — how do I keep it current?
    Expected: doc-001
    BM25   [H@1=✗] RR=0.33 | rank=3 | retrieved: ['doc-007', 'doc-005', 'doc-001']
    Vector [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-001', 'doc-005', 'doc-007']
    Hybrid [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-001', 'doc-007', 'doc-005']

  [SEMANTIC] Multiple teams share a Q&A system — how to keep their data separate?
    Expected: doc-008
    BM25   [H@1=✗] RR=0.33 | rank=3 | retrieved: ['doc-002', 'doc-007', 'doc-008']
    Vector [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-008', 'doc-001', 'doc-002']
    Hybrid [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-008', 'doc-002', 'doc-007']

  [SEMANTIC] Rephrasing a question gives completely different results — how to fix?
    Expected: doc-007
    BM25   [H@1=✗] RR=0.00 | rank=miss | retrieved: ['doc-005', 'doc-001', 'doc-003']
    Vector [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-007', 'doc-001', 'doc-005']
    Hybrid [H@1=✓] RR=1.00 | rank=1 | retrieved: ['doc-007', 'doc-001', 'doc-005']

Enter fullscreen mode Exit fullscreen mode

MRR summary:

======================================================================
  MRR Summary
  MRR=1.0 → always ranked first  |  MRR=0.0 → never found
======================================================================

  Query Type         BM25     Vector     Hybrid  Winner
  ────────────────────────────────────────────────────────
  Keyword queries    1.000      0.667      1.000  BM25
  Semantic queries   0.222      1.000      1.000  Vector
  Overall            0.611      0.833      1.000  Hybrid
======================================================================

  ✓ Keyword queries: BM25 MRR is higher (exact term matching advantage)
  ✓ Semantic queries: Vector MRR is higher (semantic understanding advantage)
  ✓ Hybrid search: highest overall MRR — handles both query types

Enter fullscreen mode Exit fullscreen mode

Reading the numbers:

  • BM25 achieves a perfect 1.000 on keyword queries, but collapses to 0.222 on semantic ones — the third semantic query ("rephrasing") completely fails with no hit in the top 3.
  • Vector search is perfect on semantic queries (1.000), but only 0.667 on keyword ones — two queries (the RRF formula and chunk_size) rank second instead of first.
  • Hybrid search scores 1.000 across the board — it inherits BM25's keyword precision and matches vector's semantic performance.

When to Use What

Dimension BM25 Vector Search
Strengths Exact term matching (model names, formulas, parameters) Semantic understanding (synonyms, paraphrases)
Fails when Query and document use different words Exact technical terms don't have semantically distinct embeddings
Typical query "BERT-base-uncased number of layers" "Why do pre-trained models need fine-tuning?"
Language Better for English; Chinese needs tokenization Works well for both
Compute cost Low (no GPU, no API calls) Higher (requires embedding calls)

When you should definitely use hybrid search:

  • Your knowledge base contains product names, API names, parameter names, acronyms
  • Users query in diverse ways (power users ask exact terms; general users ask conceptually)
  • You need high recall and can't afford to miss relevant documents

When vector-only is fine:

  • Knowledge base is all natural language prose — no exact technical terms
  • All queries are conceptual and semantic in nature
  • Resource-constrained and want to minimize dependencies

Full Code

Complete code is open-sourced at:

https://github.com/chendongqi/llm-in-action/tree/main/10-hybrid-search

Core file:

  • hybrid_search.py — Full comparison experiment across three retrieval strategies

How to run:

git clone https://github.com/chendongqi/llm-in-action
cd 10-hybrid-search
cp .env.example .env   # Fill in your Embedding API key
pip install -r requirements.txt
python hybrid_search.py

Enter fullscreen mode Exit fullscreen mode


Summary

This article ran a controlled experiment comparing three retrieval strategies:

  1. Pure BM25 — The keyword matching specialist. Perfect on exact terms, blind to semantics.
  2. Pure Vector Search — The semantic specialist. Handles paraphrasing beautifully, misses exact terms.
  3. Hybrid Search (RRF) — Fuses both, achieves the highest MRR across all query types.

The core idea behind RRF is worth keeping in mind: compare ranks, not scores. This lets it fairly fuse any two retrievers regardless of how different their scoring scales are.

In production, hybrid search has become the default recommendation for RAG systems. Elasticsearch, Qdrant, and Weaviate all support it natively. It's no longer an optional enhancement — it's the baseline.


References