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

U
Unit 42
C
Cybersecurity and Infrastructure Security Agency CISA
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
Know Your Adversary
Know Your Adversary
S
Securelist
I
Intezer
AWS News Blog
AWS News Blog
L
LINUX DO - 热门话题
P
Privacy International News Feed
Recent Announcements
Recent Announcements
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
博客园 - 聂微东
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
Attack and Defense Labs
Attack and Defense Labs
N
News and Events Feed by Topic
The GitHub Blog
The GitHub Blog
C
Cyber Attacks, Cyber Crime and Cyber Security
Schneier on Security
Schneier on Security
N
Netflix TechBlog - Medium
爱范儿
爱范儿
B
Blog
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
C
CERT Recently Published Vulnerability Notes
Hacker News: Ask HN
Hacker News: Ask HN
Google DeepMind News
Google DeepMind News
Engineering at Meta
Engineering at Meta
Blog — PlanetScale
Blog — PlanetScale
WordPress大学
WordPress大学
S
Secure Thoughts
K
Kaspersky official blog
N
News | PayPal Newsroom
O
OpenAI News
Last Week in AI
Last Week in AI
C
Check Point Blog
D
Darknet – Hacking Tools, Hacker News & Cyber Security
Cyberwarzone
Cyberwarzone
Application and Cybersecurity Blog
Application and Cybersecurity Blog
T
Tor Project blog
大猫的无限游戏
大猫的无限游戏
Vercel News
Vercel News
D
Docker
Hugging Face - Blog
Hugging Face - Blog
T
Threat Research - Cisco Blogs
Cisco Talos Blog
Cisco Talos Blog
The Register - Security
The Register - Security
博客园 - 司徒正美
Martin Fowler
Martin Fowler
人人都是产品经理
人人都是产品经理
P
Palo Alto Networks Blog

Hacker News: Show HN

PurrrrrFocus: Pomodoro Timer App - App Store Workflow Engine — Multi-Step Orchestration for Bun RapidPhoto: Pro Photo Editor App - App Store GitHub - DheerG/swarms: Achieve extraordinary results with claude code across a variety of tasks SPICE simulation → oscilloscope → verification with Claude Code — Lucas Gerads Show HN: VCoding – A 5 MB native Windows IDE with no dynamic dependencies Show HN: LLMs don't hallucinate because they're bad at math, it's the format GitHub - Agent-FM/agentfm-core: AgentFM is a peer-to-peer network that turns everyday computers into a decentralized AI supercomputer. AgentFM lets you run massive AI workloads directly across a global mesh of idle CPUs and GPUs. Show HN: Tracking Top US Science Olympiad Alumni over Last 25 Years GitHub - Potarix/agent-hub: One place to talk to all your agents Show HN: Runtime security for AI agents(injection,tool abuse, data exfiltration) GitHub - dubeyKartikay/lazyspotify: Terminal Spotify client for macOS and Linux GitHub - the-banana-tool/king-louie: Easy to use GUI Personal AI Assistant. Win/Linux/Mac. Show HN I made my vacation rental bookable by AI agents–no Airbnb, 0% commission GitHub - basteez/jsf-autoreload: maven plugin to enable hot reload on jsf projects uvm32/hosts/host-gdbstub at main · ringtailsoftware/uvm32 GitHub - labsai/EDDI: Config-driven engine that turns JSON into production-grade AI agents. Multi-agent orchestration, 12+ LLM providers, MCP/A2A protocols, RAG, persistent memory, and enterprise compliance (EU AI Act, GDPR, HIPAA). Built on Quarkus. GitHub - glitchnsec/fortyone-oss: AI Executive Assistant Platform Quickstart | Alien GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. GitHub - ocrbase-hq/ocrbase: 📄 PDF/IMG ->.MD/JSON Document OCR API for PaddleOCR and GLMOCR. Self-hostable. GitHub - impactjo/home-memory: MCP server that lets your AI assistant remember everything about your home. GitHub - Sets88/dbcls: DbCls is a powerful terminal database client that supports various databases GitHub - neptun2000/heor-agent-mcp GitHub - SeanFDZ/macmind: Single-layer transformer in HyperTalk for the classic Macintosh RollQuation: Math Puzzles - Apps on Google Play GitHub - dropbox/witchcraft Show HN: Agent-cache – Multi-tier LLM/tool/session caching for Valkey and Redis GitHub - opentalon/opentalon: OpenTalon is an open-source platform built from the ground up in Go as a robust alternative to OpenClaw LinkedIn™ 职位抓取工具 - Chrome 应用商店 GitHub - EdoardoBambini/Agent-Armor-Iaga: AI agents are getting tool access — shell, file system, databases, APIs, secrets. But **nobody is governing what they actually do with it**. Frameworks like LangChain, CrewAI, AutoGen, and Claude Code give agents the power to execute. Agent Armor gives you the power to control, audit, and approve every single action before it happens. HN Vibes — Week 15, Apr 7–13 2026 GitHub - chojs23/ec: Easy terminal-native 3-way git mergetool vim-like workflow GitHub - SethPyle376/hiraeth: Local AWS emulator focused on fast integration testing, with SQS support, SQLite-backed state, and a debug-friendly web UI. GitHub - JakOb-dotcom/cloud-sandbox-security-analysis: Technical analysis and Proof of Concept (PoC) regarding environment variable exfiltration in containerized cloud sandboxes via side-channel data leaks. Springboards - Flint Alpha Show HN: A simpler coding agent harness GitHub - audiodude/sudomake-friends GitHub - 256thFission/mini-mythos: OSS clone of Anthropic’s Mythos harness to locate C/C++ memory vulnerabilities Show HN: OpenParallax: OS-level privilege separation for AI agent execution Hacker News Sorted - Chrome 应用商店 Show HN: How to Install Docker on Ubuntu 24.04 LTS: Complete 2026 Guide GitHub - himanshudongre/smriti GitHub - sverrirsig/claude-control: macOS desktop dashboard for monitoring and managing multiple Claude Code sessions GitHub - ory/dockertest: Write better integration tests! Dockertest helps you boot up ephermal docker images for your Go tests with minimal work. Chiral - Chrome 应用商店 Show HN: Two Claudes collaborating through shared memory on a $100 mini-PC GitHub - pmichaillat/latex-cv: Minimalist LaTeX template for academic CVs GitHub - oguzbilgic/posse: A web UI for Anthropic Managed Agents. GitHub - sshiraz/depsly: Dependency risk analysis tool for npm packages ABI Add safari/agent-harness — Safari browser automation via safari-mcp by achiya-automation · Pull Request #212 · HKUDS/CLI-Anything GitHub - Halfblood-Prince/trustcheck: Verify PyPI package attestations and improve Python supply-chain security GitHub - oguzbilgic/kern-ai: Agents that do the work and show it. GitHub - bruits/satteri: High-performance Markdown and MDX processing for the JavaScript ecosystem GitHub - tylergibbs1/feedstock: High-performance web crawler and scraper for TypeScript, powered by Bun and Playwright GitHub - Grimm67123/grimmbot: The self-improving sandboxed and open-source AI agent. With persistent memory and scheduling. GitHub - whitevanillaskies/whitebloom: Local whiteboard that blooms. GitHub - hwdsl2/docker-whisper: Docker image for a self-hosted Whisper speech-to-text server with speaker diarization and OpenAI-compatible transcription and translation APIs. Powered by faster-whisper. Supports all Whisper models, NVIDIA GPU (CUDA) acceleration, JSON/SRT/VTT output, SSE streaming, offline mode, and multi-arch (amd64, arm64). GitHub - yisding/reviewwiggum GitHub - MarwanAlsoltany/serrors: Structured errors for Go: sentinel hierarchies, typed data, custom formatting, and slog integration. GitHub - soatok/age-php GitHub - Luthiraa/markitme GitHub - stagas/rtdiff: realtime git diff gui and AI-assisted commits GitHub - tombedor/excalicharts GitHub - wh1le/excalidraw-edit: Open and edit .excalidraw files from the terminal. Offline, auto-saves to disk. MalExt Sentry - Malicious Extension Scanner - Chrome 应用商店 GitHub - syi0808/asciianimesvg: Generate animated ASCII art SVGs from text. CLI, Rust library, WASM, and web editor. GitHub - zaina-ml/ml_forge: A visual-based graph node editor for training computer vision models. GitHub - anakin87/llm-rl-environments-lil-course: 🌱 A little course on Reinforcement Learning Environments for evaluating and training Language Models GitHub - takaakit/superpowers-uml: Superpowers-UML modifies Superpowers to ensure a software development workflow in which AI agents design through UML modeling. AdriByte Studio - Sviluppo Web e Soluzioni Digitali GitHub - chouligi/angel-copilot: Your personalized Angel Investment Advisor Show HN: MoodSense AI (ML and FastAPI and Gradio, Deployed on Hugging Face) Moodsense Ai - a Hugging Face Space by aman179102 GitHub - agenteractai/lodmem: Level Of Detail Context Management for Agents GitHub - ostefani/subnetlens: A fast, concurrent network scanner with a TUI and plain-text CLI, built in Go. It discovers live hosts on your network, scans their open ports, resolves hostnames, and fingerprints operating systems—delivered. Cyber Pulse: Agentic Intel - Apps on Google Play Whisper API: Self-Hostable Speech to Text Transcription The Agent-Web Protocol Stack: A Research Thesis GitHub - msmarkgu/RelayFreeLLM: A restful API designed to route user prompts to various AI model providers. Show HN: Provepy – A Python decorator that proves your code using Lean and LLMs Show HN: Pardonned.com – A searchable database of US Pardons GitHub - patrickdappollonio/dux: Dux is a terminal UI that lets you run multiple AI coding agents side by side, each in its own git worktree, with full companion terminals, macros, commit generation, and a command palette that knows more tricks than you do. kMC Crystal Simulator Show HN: HyperFlow – A self-improving agent framework built on LangGraph GitHub - stef41/vibescore: 🎵 Grade your vibe-coded project. One command, instant letter grade across security, quality, dependencies, and testing. GitHub - stef41/lmscan: 🔍 Detect AI-generated text and fingerprint which LLM wrote it. Open-source GPTZero alternative. Zero dependencies, works offline. imgur.com GitHub - visionscaper/collabmem: Enabling long-term collaboration with Agentic AI - building up episodic and world model memory over time with in-context awareness 在 Steam 上购买 FriedrichAI: Offline AI 立省 10% GitHub - atripati/ark: AI Runtime Kernel — a context operating system for AI agents. Eliminates tool bloat, loads only what’s needed, and gives LLMs their reasoning space back. GitHub - nowork-studio/toprank: Open-source Claude Code skills for SEO, SEM, Google Ads GitHub - tacomanator/sash: Lightweight macOS menu bar app for reliably cycling through windows of the current application. Appents | Social Media Management for Product-First Teams GitHub - pnhoang/youtube-spam-blocker: Automatically detects and hides spam messages in YouTube Live chat. Set rate limits, keyword filters, and block repeat offenders. GitHub - decisionnode/DecisionNode: CLI + Local MCP - A shared structured memory store across Claude Code, Cursor, Windsurf, Antigravity, and every MCP client. Semantically queryable. GitHub - AvaCodeSolutions/django-email-learning: An open source Django app for creating email-based learning platforms with IMAP integration and React frontend components. The $100K Gap in Kubernetes Security Tooling Function Calling Harness: From 6.75% to 100%
GitHub - raiyanyahya/how-to-train-your-gpt: Build a modern LLM from scratch. Every line commented. Explained like we are five.
linhns · 2026-05-04 · via Hacker News: Show HN

A guide to building a world-class language model from absolute scratch. Taught like you're five. Built like you're an engineer.

12 chapters 3,671 lines 100% commented Python basics only LLaMA 3 style


📖 What Is This?

This is a 12-chapter, 3,671-line interactive textbook that teaches you how to build, train and run a modern language model from absolute scratch. The same family of architecture behind ChatGPT, Claude, LLaMA and Mistral.

You won't just read about Transformers. You'll write every line yourself: tokenizer, embeddings, attention, training loop, inference engine. Every single line annotated to explain what it does and why it's there.


🤔 Why This Exists

Most ML tutorials fall into one of two traps:

❌ Too Shallow ❌ Too Academic ✅ This Guide
model = GPT().fit(data) 40-page papers, dense notation 5-year-old analogies → full working code
You learn to call APIs Assumes PhD in ML Zero ML experience required
No understanding of internals No worked examples Every line annotated with WHAT & WHY

The goal: After finishing, you won't just know that attention "works". You'll understand the variance argument behind 1/√d_k. How RoPE captures relative position through rotation. Why pre-norm beats post-norm for deep networks. And exactly where every gradient flows during backpropagation.


👥 Who Is This For?

🧑‍💻 You Are... 📚 You Need...
A Python developer curious about how ChatGPT actually works Basic Python (functions, classes, lists). No ML experience
A student who wants to deeply understand Transformers Willingness to read ~3,600 lines of commented code
An engineer evaluating LLM architectures Understanding of tradeoffs (RoPE vs learned, RMSNorm vs LayerNorm)
Someone who got lost at "attention" in other tutorials Party analogy + worked numeric example with real numbers

🔧 Prerequisites: Python basics (variables, functions, classes, pip install). That's it. No calculus, no linear algebra, no PyTorch experience required. We teach those as we go.


🗺️ Chapters

Chapter What You'll Learn
0: Overview What is a GPT? The big picture
1: Setup Install tools, GPU vs CPU, venv, PyTorch basics
2: Tokenization BPE walkthrough: how "unbelievably" becomes tokens
3: Embeddings How numbers become meaning. king − man + woman = queen
4: Positional Encoding RoPE: why LLaMA rotates vectors, not adds numbers
5: Attention ⭐ THE CORE. Q,K,V, scaling, causal mask, 8-step walkthrough
6: Transformer Block RMSNorm, SwiGLU, residuals, pre-norm vs post-norm
7: Complete GPT Model 124M parameter model, weight tying, logits explained
8: Training Pipeline Cross-entropy, backprop, AdamW, cosine warmup, mixed precision
9: Inference KV cache, temperature, top-k/p, beam search, repetition penalty
10: Full Script Runnable main.py: everything in one file
11: Glossary Architecture provenance table, parameter breakdown

Start with Chapter 0 and read sequentially. Each builds on the previous.


🏗️ What You'll Build

🧩 Component 📝 Lines 💡 What You'll Understand
BPE Tokenizer ~60 How GPT-4 splits "unbelievably" → "un" + "believ" + "ably"
Embeddings ~30 How "cat" and "dog" end up near each other in 768D space
RoPE ~70 Why LLaMA rotates vectors instead of adding position numbers
Multi-Head Attention ~120 The exact 8-step computation behind every modern LLM
Transformer Block ~50 Why residual connections are the "gradient highway"
Full GPT Model ~200 124M parameter model with weight tying and pre-norm
Training Pipeline ~250 AdamW, cosine warmup, mixed precision, gradient accumulation
Inference Engine ~80 KV cache, temperature, top-k/p, beam search

💎 ~860 lines of core model code, ~2,800 lines of explanation and diagrams


🏛️ Architecture

This guide implements the latest publicly-documented decoder-only Transformer:

🧬 Technique 📦 Source Model ⚡ Why It Matters
RoPE LLaMA, Mistral, Qwen Relative position without learned parameters
RMSNorm LLaMA, Mistral, Gemma 15% faster than LayerNorm, equally effective
SwiGLU PaLM, LLaMA, Gemini Learns which information to pass or block
Pre-Norm GPT-3, all modern Stable training at 100+ layers
AdamW GPT-3+ Better generalization than vanilla Adam
BPE GPT-2/3/4 Handles any text. Even unseen words and emoji
Weight Tying GPT-2/3 Saves 30% parameters, improves training signal
Mixed Precision All production LLMs 2× speed, half memory, same quality

ℹ️ GPT-4 and Claude architectures are proprietary/undisclosed. This teaches the best publicly-confirmed architecture: what LLaMA 3, Mistral and Qwen 2.5 use.


🚀 Quick Start

# 1. Clone
git clone https://github.com/raiyanyahya/how-to-train-your-gpt.git
cd how-to-train-your-gpt

# 2. Create environment
python -m venv gpt_env
source gpt_env/bin/activate          # Mac/Linux
# gpt_env\Scripts\activate           # Windows

# 3. Install dependencies
pip install torch tiktoken datasets numpy matplotlib

# 4. Verify GPU (optional but recommended)
python -c "import torch; print(f'CUDA: {torch.cuda.is_available()}')"

# 5. Start reading!
open chapters/00_overview.md

To run the full training script, copy chapters/10_full_script.md to main.py and run:

python main.py

📊 Expected output (RTX 3090, ~2 hours):

GPT initialized with 124,439,808 parameters
Training starting!
Step    100/50,000 | Loss: 6.2345 | LR: 1.50e-05 | Toks/sec: 45,000
Step    200/50,000 | Loss: 5.1234 | LR: 3.00e-05 | Toks/sec: 45,200
...
Step 50,000/50,000 | Loss: 2.8901 | LR: 1.00e-05 | Toks/sec: 44,800
✅ Training complete! 112.3 min | Best loss: 2.8901

💻 On CPU only (~10-50× slower): Use the "tiny" config in Chapter 10.


📖 How to Read

Each chapter follows the same 4-step structure:

Step Format Purpose
1️⃣ Analogy Plain English, 5-year-old level Build intuition before math
2️⃣ Worked Example Real numbers traced through See exactly what happens
3️⃣ Annotated Code Every line: WHAT + WHY Understand every decision
4️⃣ Diagram Mermaid flowchart or ASCII Visualize data flow

💡 Tip: Lost in the code? Jump back to the analogy. Confused by the math? Skip to the worked example.


✨ What Makes This Different

Aspect 😴 Typical Tutorial 🔥 This Guide
Explanation depth "Attention helps the model focus" 8-step worked example with real numbers + variance math + causal mask visualization
Code comments Few or none Every single line: WHAT + WHY
Modern techniques GPT-2 style (2019) LLaMA 3 style (2024): RoPE, RMSNorm, SwiGLU
Training Uses HuggingFace Trainer Full custom loop: AdamW, cosine warmup, mixed precision, grad accumulation
Inference model.generate() Temperature, top-k, top-p, beam search, KV cache explained
Target audience ML engineers Python developers with zero ML experience
Diagrams None Mermaid flowcharts + ASCII matrices + worked examples

🎯 Skills You'll Gain

  • ✅ Explain how GPT-4 tokenizes text using BPE
  • ✅ Understand why RoPE, RMSNorm and SwiGLU replaced older techniques
  • ✅ Compute attention scores manually for a 3-token sentence
  • ✅ Debug a Transformer training loop (loss spikes, flat lines, overfitting)
  • ✅ Choose sampling parameters (temperature, top_k, top_p) for different use cases
  • ✅ Understand why KV caching is critical for production inference
  • ✅ Read modern ML papers with confidence (you'll recognize every component)

🔮 Next Steps After Finishing

Experiment What to Change What You'll Learn
Bigger model num_layers 12 → 24 How depth improves reasoning
More data Add BookCorpus, C4, The Pile Impact of data quality and diversity
Flash Attention Install flash-attn, swap attention 2-5× faster training, longer context
Grouped Query Attention Set num_kv_heads < num_heads How Mistral achieves efficient inference
LoRA fine-tuning Add low-rank adapter layers Customize models without full retraining
RLHF / DPO Add reward model training How ChatGPT learns to follow instructions
KV Cache Implement persistent key-value storage 500× faster text generation
Mixture of Experts Route tokens through different FFN experts How GPT-4 scales to trillions of params

📁 File Structure

📦 how-to-train-your-gpt/
├── 📄 README.md              ← You are here
└── 📂 chapters/
    ├── 🏠 00_overview.md     ← What is a GPT? Why build one?
    ├── 🔧 01_setup.md        ← Install tools, GPU vs CPU, venv basics
    ├── 🔪 02_tokenization.md ← BPE walkthrough, EOS tokens, emoji handling
    ├── 🧊 03_embeddings.md   ← How numbers become meaning, king − man + woman
    ├── 📍 04_positional_encoding.md ← RoPE math, numerical example, theta
    ├── 🧠 05_attention.md    ← ⭐ THE CORE (713 lines). Q,K,V, scaling, causal mask
    ├── 🧱 06_transformer_block.md ← RMSNorm, SwiGLU, residuals, pre-norm vs post
    ├── 🏗️ 07_gpt_model.md    ← Complete 124M model, weight tying, logits explained
    ├── 🏋️ 08_training.md     ← Cross-entropy, backprop, AdamW, cosine warmup
    ├── 🎤 09_inference.md    ← KV cache, temperature, top-k/p, beam search
    ├── 📜 10_full_script.md  ← Runnable main.py
    └── 📊 11_glossary.md     ← Architecture provenance, parameter breakdown

"Any sufficiently explained technology is indistinguishable from magic. Until you build it yourself."

⭐ Star this repo if you found it useful | 🐛 Issues & PRs welcome | 📖 Happy learning!