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

TaoSecurity Blog
TaoSecurity Blog
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
F
Fortinet All Blogs
Cisco Talos Blog
Cisco Talos Blog
D
Darknet – Hacking Tools, Hacker News & Cyber Security
S
Secure Thoughts
美团技术团队
雷峰网
雷峰网
Hugging Face - Blog
Hugging Face - Blog
博客园_首页
C
CXSECURITY Database RSS Feed - CXSecurity.com
Engineering at Meta
Engineering at Meta
人人都是产品经理
人人都是产品经理
月光博客
月光博客
T
Tor Project blog
P
Privacy & Cybersecurity Law Blog
Recorded Future
Recorded Future
I
Intezer
博客园 - 【当耐特】
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
GbyAI
GbyAI
罗磊的独立博客
V
V2EX
Google DeepMind News
Google DeepMind News
D
DataBreaches.Net
Last Week in AI
Last Week in AI
T
Tailwind CSS Blog
www.infosecurity-magazine.com
www.infosecurity-magazine.com
A
About on SuperTechFans
Scott Helme
Scott Helme
Vercel News
Vercel News
Spread Privacy
Spread Privacy
T
Threat Research - Cisco Blogs
Recent Announcements
Recent Announcements
Hacker News: Ask HN
Hacker News: Ask HN
C
CERT Recently Published Vulnerability Notes
G
Google Developers Blog
B
Blog
博客园 - 叶小钗
WordPress大学
WordPress大学
博客园 - 聂微东
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
Jina AI
Jina AI
IT之家
IT之家
C
Cybersecurity and Infrastructure Security Agency CISA
P
Palo Alto Networks Blog
小众软件
小众软件
博客园 - Franky
Microsoft Azure Blog
Microsoft Azure Blog
AWS News Blog
AWS News Blog

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
Building a RAG System from Scratch — Design Decisions Explained
Hiroki Kameyama · 2026-06-28 · via DEV Community

In the previous article, we built a working RAG pipeline. Now let's step back and ask why we made each design decision — and what alternatives exist when your requirements change.


The Full Picture

Here's what we built:

Ingest phase
  Text → gemini-embedding-001 (RETRIEVAL_DOCUMENT, 768 dims)
       → pgvector (HNSW index, cosine similarity)

Query phase
  Question → gemini-embedding-001 (RETRIEVAL_QUERY, 768 dims)
           → pgvector search (top-k)
           → Gemini 2.5 Flash (answer generation)

Every element in this diagram was a choice. Let's examine each one.


Decision 1: pgvector over a Dedicated Vector DB

We used pgvector, a PostgreSQL extension, rather than a purpose-built vector database like Pinecone, Weaviate, or Qdrant.

Why pgvector works here:

  • Integrates with existing PostgreSQL infrastructure — no new service to operate
  • SQL and vector search in the same query: filter by category, join with other tables, all in one round-trip
  • Handles millions of documents comfortably with HNSW indexing

When to consider a dedicated vector DB:

Signal Consider moving to
> 10M documents Pinecone, Weaviate
Multi-modal search (text + image) Weaviate, Qdrant
Managed cloud with SLA Pinecone
On-premise, full control Qdrant

For most enterprise RAG applications at typical document volumes, pgvector is the right starting point. Migrate when you hit actual limits, not anticipated ones.


Decision 2: 768 Dimensions instead of 3072

gemini-embedding-001 outputs 3072 dimensions by default. We set output_dimensionality=768.

The constraint: pgvector's HNSW index has a hard limit of 2000 dimensions.

Why not 2000? We chose 768 because:

  • It's a well-established embedding size used by BERT and many production systems
  • Cosine similarity quality degrades only slightly versus the full 3072 dims for typical retrieval tasks
  • Smaller vectors mean faster index builds and lower storage cost

Dimension vs. quality trade-off:

Dimensions Index build Storage Retrieval quality
256 Fastest Smallest Noticeably lower
768 Fast Small Near full quality
1536 Moderate Moderate Full quality
3072 Slow Largest Full quality (no HNSW)

Decision 3: Asymmetric task_type

We used different task_type values for ingestion and querying:

# Ingestion
config=types.EmbedContentConfig(task_type="RETRIEVAL_DOCUMENT", ...)

# Query
config=types.EmbedContentConfig(task_type="RETRIEVAL_QUERY", ...)

Why this matters: Gemini's embedding model is trained with asymmetric objectives. A document and a query about the same topic are represented differently in embedding space — the model learns to map queries toward relevant documents, not to the same point. Using the same task type for both degrades retrieval accuracy.

This is analogous to how you'd phrase a document differently from a search query in natural language: "F1 Score is the harmonic mean of Precision and Recall" (document) vs. "how to calculate F1" (query).


Decision 4: HNSW over IVFFlat

pgvector supports two index types. We chose HNSW.

HNSW IVFFlat
Query speed Fast Moderate
Build time Moderate Fast
Memory Higher Lower
Accuracy at scale Higher Lower
Requires training data No Yes (needs VACUUM after inserts)

HNSW is the better default for production. IVFFlat is worth considering only when you have very tight memory constraints and can afford slower queries.

HNSW parameter guide:

WITH (
    m = 16,              -- max connections per node
    ef_construction = 64 -- search width during build
)

  • m: higher = better recall, more memory. Range: 4–64. Default 16 works for most cases.
  • ef_construction: higher = better index quality, slower build. Range: 16–512. Default 64 is a good production starting point.

Decision 5: Gemini 2.5 Flash for Generation

We used gemini-2.5-flash rather than the more capable gemini-opus models.

Reasoning:

  • Flash has sufficient quality for document-grounded Q&A — the retrieval step does the heavy lifting
  • Flash is faster and cheaper (or free-tier eligible during development)
  • The generation prompt is constrained: "answer based on these documents" limits hallucination regardless of model capability

When to upgrade the generation model:

  • Complex multi-step reasoning across many documents
  • Synthesis tasks requiring cross-document inference
  • When evaluation scores (Faithfulness, Relevancy) are consistently below threshold

When to upgrade the embedding model:

  • Low Context Recall — the right documents aren't being retrieved
  • Evaluation reveals semantic mismatch between queries and stored documents

The embedding model matters more for retrieval quality. The generation model matters more for answer quality. Optimize them independently.


The Scaling Path

This architecture scales predictably:

Phase 1 (now): pgvector local → works to ~1M docs
Phase 2:       pgvector + Supabase → managed PostgreSQL, easy scaling
Phase 3:       pgvector + read replicas → horizontal query scaling
Phase 4:       Dedicated vector DB → if you genuinely outgrow pgvector

Most teams never reach Phase 4. Start at Phase 1, move when you have evidence you need to.


Common Pitfalls

Chunking strategy matters more than model choice. If your documents are long (PDFs, reports), how you split them into chunks dramatically affects retrieval quality. A naive split at 512 tokens often breaks context mid-sentence. Consider semantic chunking or overlap.

Don't embed the question alone. For complex questions, consider HyDE (Hypothetical Document Embedding): generate a hypothetical answer to the question, embed that, then search. This often retrieves better documents than embedding the raw question.

Reranking improves precision. After vector search returns top-k candidates, a cross-encoder reranker (like Cohere Rerank) re-scores them for precision. Add this when recall is good but final answer quality is inconsistent.


In the next article, we'll give the LLM the ability to call these search functions autonomously using Tool Use.


Full source code: github.com/qameqame/pgvector-tutorial