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

T
The Exploit Database - CXSecurity.com
F
Fortinet All Blogs
U
Unit 42
F
Full Disclosure
雷峰网
雷峰网
博客园 - 司徒正美
云风的 BLOG
云风的 BLOG
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
T
Tailwind CSS Blog
The Cloudflare Blog
Last Week in AI
Last Week in AI
罗磊的独立博客
D
DataBreaches.Net
C
Check Point Blog
www.infosecurity-magazine.com
www.infosecurity-magazine.com
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
O
OpenAI News
C
CXSECURITY Database RSS Feed - CXSecurity.com
aimingoo的专栏
aimingoo的专栏
S
Security @ Cisco Blogs
大猫的无限游戏
大猫的无限游戏
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
S
SegmentFault 最新的问题
NISL@THU
NISL@THU
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
The Hacker News
The Hacker News
Webroot Blog
Webroot Blog
Security Latest
Security Latest
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
Google DeepMind News
Google DeepMind News
酷 壳 – CoolShell
酷 壳 – CoolShell
N
News | PayPal Newsroom
P
Proofpoint News Feed
B
Blog RSS Feed
MongoDB | Blog
MongoDB | Blog
C
Cybersecurity and Infrastructure Security Agency CISA
N
News and Events Feed by Topic
Google Online Security Blog
Google Online Security Blog
H
Help Net Security
Spread Privacy
Spread Privacy
T
Threat Research - Cisco Blogs
GbyAI
GbyAI
I
Intezer
Application and Cybersecurity Blog
Application and Cybersecurity Blog
M
MIT News - Artificial intelligence
Vercel News
Vercel News
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
IT之家
IT之家
MyScale Blog
MyScale Blog
腾讯CDC

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
How My Career Evolved Like an AI (LLM Architectures )System
Seenivasa Ra · 2026-05-22 · via DEV Community

Introduction.

What if every stage of your life mapped precisely onto one of the three LLM architectures? Here's how I lived through each one.

I've spent years studying how AI systems learn, represent knowledge, and generate outputs. But it wasn't until I sat back and looked at my own life that something clicked. I've been living through these architectures all along.

There are exactly three types of LLM architecture. And they map almost perfectly onto three phases of a knowledge worker's career.

Life is a model in training. Each stage builds the foundation for the next.

Phase 1: School & College: The Encoder

Encoder-only phase

AI Architecture: Encoder-only (BERT, RoBERTa) · Focus: Absorb & Represent

From school through college, I was in pure encoder mode. In school I absorbed raw facts; in college I connected them across domains and built deeper internal representations. Both stages share the same architectural principle take input and build a rich embedding. No generation required yet.

  • Learned facts & concepts
  • Connected ideas across domains
  • Understood language & context
  • Applied theory to practice
  • Classified good vs bad
  • Built knowledge embeddings

An encoder-only model like BERT takes raw text and transforms it into rich, dense vector representations. It doesn't generate anything its entire purpose is to build the best possible internal model of the input. BERT is extraordinarily good at understanding; it just can't write back to you.

That's exactly what school and college do. You're not expected to ship products in year one of university. You're building the model that will let you do that later.

The AI parallel: BERT-style encoders produce embeddings that downstream tasks (classification, search, NLI) rely on. They're the foundation. College graduates are the same not yet specialized for generation, but deeply capable of understanding. The depth of that encoding determines everything that follows.

Phase 2: Industry: The Decoder

Decoder-only phase

AI Architecture: Decoder-only (GPT-4, Llama, Mistral) · Focus: Generate & Produce

When I entered the workforce, the mode shifted completely. Now I had to deliver. Write the code. Solve the problem. Ship the product. I was drawing on everything I had encoded to generate real outputs in the world.

  • Created & developed applications
  • Solved customer problems
  • Answered queries & provided solutions
  • Wrote code & documentation
  • Optimized & improved systems
  • Delivered business value

Decoder-only models like GPT take a context (prompt) and generate token by token from their learned knowledge. They don't need to re-encode everything from scratch they draw on rich internal representations built during training. That's exactly what a working engineer does: your years of encoding are now the weights. You generate from them.

The danger here? Pure decoders can hallucinate. They generate fluently even when uncertain. I made that mistake early in my career — confident outputs that needed more grounding in the actual requirements.

Phase 3 : AI Solution Architect: The Encoder–Decoder

Encoder–Decoder phase
AI Architecture: Encoder–Decoder (T5, BART, original Transformer) · Focus: Translate & Architect

As a Solution Architect, I do both at once. I encode the business requirements, constraints, team dynamics, stakeholder context. Then I decode into technical reality system design, roadmaps, team guidance. I'm the bridge between two languages.

  • Encode stakeholder needs & context
  • Understand BRD & business requirements
  • Design system architecture
  • Translate to developers
  • Guide team & solve complex problems
  • Deliver end-to-end solutions

The original Transformer encoder–decoder designed for translation is architecturally brilliant because of cross-attention. The decoder doesn't ignore the encoder's output while generating; it continuously attends to it. Every token generated is informed by the full encoded context.

That is solution architecture. You never stop listening to the business while designing the technical solution. The moment you decouple from the encoder (the business context), you start generating hallucinations technically correct solutions that solve the wrong problem.

The sharpest insight: Cross attention is the skill that separates architects from pure engineers. A decoder-only engineer generates great code. An encoder–decoder architect generates great code that solves the actual business problem because they never stopped attending to the encoded context.

Here’s a fact-checked and refined version that aligns more accurately with how Transformer architectures actually work while preserving your analogy and narrative style:

Why This Matters

Most people get trapped in a single architecture.

Some remain in an Encoder-only phase for years constantly learning, collecting certifications, reading books, attending courses, and building deeper internal understanding, but rarely translating that knowledge into real world outcomes.

In AI terms, encoder models like BERT specialize in understanding, contextual representation, classification, and semantic relationships. They are exceptional at comprehension, but they are not primarily designed for generation.

Other professionals operate like Decoder-only systems always producing output, writing code, creating presentations, answering questions, or generating solutions rapidly, but without deeply understanding the underlying problem space or business context first.

Decoder only LLMs such as GPT models are extremely powerful generators, but because they predict the next token based on patterns rather than grounded understanding alone, they can sometimes hallucinate when context, retrieval, or reasoning is insufficient.

The same pattern appears in professional life.

People who generate without deeply encoding the problem space often create shallow solutions, misaligned architectures, or confident but weak decisions.

The real evolution is becoming an Encoder–Decoder system.

Modern encoder–decoder architectures l*ike T5 and BART first encode context into rich internal representations and then decode that understanding into meaningful outputs.* The decoder continuously attends to the encoded context through mechanisms such as cross-attention.

That is what mature professionals eventually become.

A strong Solution Architect, engineering leader, researcher, or consultant operates like an encoder–decoder system.

  • Encoding stakeholder intent, constraints, business goals, and domain context
  • Decoding that understanding into technical systems, architecture, applications, and delivery plans
  • Continuously connecting understanding and generation through feedback loops

That “cross-attention” between understanding and execution is where real impact happens.

It enables people to:

  • Translate ambiguity into architecture
  • Connect business and technology
  • Generate solutions grounded in context
  • Balance theory with execution
  • Lead systems rather than simply produce output

Learning alone is not enough.
Generation alone is not enough.

Growth happens when understanding and creation operate together.

Just as AI evolved from isolated encoder or decoder models into full Transformer systems capable of both understanding and generation, human professional growth follows a similar path.

Key Takeaway

There are only 3 LLM architectures. There are only 3 phases of a knowledge career. They are the same thing expressed in different domains.

The best engineers, leaders, and architects run encoder–decoder with full cross-attention. They never stop encoding the context while generating the solution.

Learn → Create → Architect → Impact

Thanks
Sreeni Ramadorai