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

CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
L
Lohrmann on Cybersecurity
aimingoo的专栏
aimingoo的专栏
V
V2EX
S
Security Affairs
T
Threatpost
C
CXSECURITY Database RSS Feed - CXSecurity.com
IT之家
IT之家
J
Java Code Geeks
The Register - Security
The Register - Security
U
Unit 42
C
CERT Recently Published Vulnerability Notes
月光博客
月光博客
A
About on SuperTechFans
H
Hackread – Cybersecurity News, Data Breaches, AI and More
T
The Blog of Author Tim Ferriss
Cisco Talos Blog
Cisco Talos Blog
Project Zero
Project Zero
S
Schneier on Security
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
D
DataBreaches.Net
博客园 - 司徒正美
V
Vulnerabilities – Threatpost
T
Tor Project blog
Security Latest
Security Latest
T
The Exploit Database - CXSecurity.com
T
Threat Research - Cisco Blogs
Scott Helme
Scott Helme
Application and Cybersecurity Blog
Application and Cybersecurity Blog
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
M
MIT News - Artificial intelligence
云风的 BLOG
云风的 BLOG
小众软件
小众软件
L
LangChain Blog
Attack and Defense Labs
Attack and Defense Labs
Recent Commits to openclaw:main
Recent Commits to openclaw:main
P
Palo Alto Networks Blog
A
Arctic Wolf
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
C
Cyber Attacks, Cyber Crime and Cyber Security
博客园 - 叶小钗
D
Darknet – Hacking Tools, Hacker News & Cyber Security
L
LINUX DO - 最新话题
MongoDB | Blog
MongoDB | Blog
Webroot Blog
Webroot Blog
H
Hacker News: Front Page
Know Your Adversary
Know Your Adversary
Spread Privacy
Spread Privacy
AWS News Blog
AWS News Blog
Engineering at Meta
Engineering at Meta

Hacker News: Front Page

SPICE simulation → oscilloscope → verification with Claude Code — Lucas Gerads GitHub - GainSec/AutoProber: Hardware hacker’s flying probe automation stack for agent-driven target discovery, microscope mapping, safety-monitored CNC motion, probe review, and controlled pin probing. Introducing Claude Opus 4.7 Qwen Studio The Future of Everything is Lies, I Guess: Where Do We Go From Here? GitHub - SeanFDZ/macmind: Single-layer transformer in HyperTalk for the classic Macintosh Virginia Bans Sale of Geolocation Data Show HN: Agent-cache – Multi-tier LLM/tool/session caching for Valkey and Redis Ancient DNA reveals pervasive directional selection across West Eurasia [pdf] AI cybersecurity is not proof of work Moving a large-scale metrics pipeline from StatsD to OpenTelemetry / Prometheus GitHub - Nightmare-Eclipse/RedSun: The Red Sun vulnerability repository GitHub - SethPyle376/hiraeth: Local AWS emulator focused on fast integration testing, with SQS support, SQLite-backed state, and a debug-friendly web UI. A Better Ludum Dare; Or, How to Ruin a Legacy GitHub - macOS26/Agent: Any AI, replaces Claude Code, Cursor, OpenClaw. Over 18 LLM providers (Claude, OpenAI, Gemini, Ollama, Zai, HF, Qwen) wired into a native Mac app that writes code, builds Xcode projects, bumps versions, manages git, automates Safari, use AppleScript, JS or Accessibility, extend Agent! w/ MCP Servers, run tasks from your iPhone via Messages. YouTube now lets you turn off Shorts I Made a Terminal Pager Burgers | マクドナルド公式 Commands — HackerNews CLI documentation ChatGPT for Excel PiCore - Raspberry Pi Port of Tiny Core Linux Live Nation illegally monopolized ticketing market, jury finds Google Broke Its Promise to Me. Now ICE Has My Data. Founding Engineer at Adaptional | Y Combinator CRISPR takes important step toward silencing Down syndrome’s extra chromosome GitHub - saffron-health/libretto: The AI toolkit for building reliable browser automations US v. Heppner (S.D.N.Y. 2026) no attorney-client privilege for AI chats [pdf] Unexpected €54k billing spike in 13 hours: Firebase browser key without API restrictions used for Gemini requests Fragments: April 14 Cal.com Goes Closed Source: Why AI Security Is Forcing Our Decision | Cal.com - Scheduling Software for Online Bookings Laravel raised money and now injects ads directly into your agent Codex Hacked a Samsung TV Tech Valuations Back to Pre-AI Boom Levels A perfectable programming language — Soter GitHub - halfwhey/claudraband: Claude Code for the Power User Partnership through Play: Investigating How Long-Distance Couples Use Digital Games to Facilitate Intimacy Textbooks and Methods of Note-Taking in Early Modern Europe (2008) Eternity in six hours: Intergalactic spreading of intelligent life (2013) Seven countries now generate 100% of their electricity from renewable energy Tell HN: OpenAI silently removed Study Mode from ChatGPT Pro Max 5x Quota Exhausted in 1.5 Hours Despite Moderate Usage Show HN: Oberon System 3 runs natively on Raspberry Pi 3 (with ready SD card) Tell HN: docker pull fails in spain due to football cloudflare block Bring Back Idiomatic Design No one owes you supply-chain security GitHub - xsawyerx/curl-doom: DOOM, played over cURL Apple update turns Czech mate for locked-out iPhone user The Grand Line Cache TTL silently regressed from 1h to 5m around early March 2026, causing quota and cost inflation Building a Z-Machine in the worst possible language The peril of laziness lost Iran war: We spoke to the man making Lego-style AI videos that experts say are powerful propaganda AI Will Be Met With Violence, and Nothing Good Will Come of It GitHub - duguyue100/midnight-captain: Inspired by Midnight Commander, tailored to my taste. How to build a `git diff` driver · Jamie Tanna | Software Engineer Center for Responsible, Decentralized Intelligence at Berkeley The Local Universe’s Expansion Rate Is Clearer Than Ever, but Still Doesn’t Add Up - A new synthesis of astronomical measurements confirms a persistent mismatch that could point to physics beyond current models The disturbing white paper Red Hat is trying to erase from the internet – OSnews NetBlocks (@netblocks@mastodon.social) The Future of Everything is Lies, I Guess: Annoyances ‘Abhorrent’: the inside story of the Polymarket gamblers betting millions on war Productive procrastination — Max van IJsselmuiden maps, territory and LMs 447 Terabytes per Square Centimetre at Zero Retention Energy: Non-Volatile Memory at the Atomic Scale on Fluorographane Show HN: Pardonned.com – A searchable database of US Pardons 20 Years on AWS and Never Not My Job The Seasons are Wrong The FAA wants gamers to apply for air traffic control jobs Artemis II crew splashes down near San Diego after historic moon mission Why weekends are under threat We gave an AI a 3 year retail lease in SF and asked it to make a profit | Andon Labs How a dancer with ALS used brainwaves to perform live On filing the corners off my MacBooks Installing every* Firefox extension OpenClaw’s memory is unreliable, and you don’t know when it will break Steve Blank Nowhere Is Safe Chimpanzees in Uganda locked in vicious 'civil war', say researchers watgo - a WebAssembly Toolkit for Go linux/Documentation/process/coding-assistants.rst at master · torvalds/linux GitHub - callumlocke/json-formatter: Makes JSON easy to read. Founding Product Engineer at Bild AI | Y Combinator A compelling title that is cryptic enough to get you to take action on it GitHub - Keychron/Keychron-Keyboards-Hardware-Design: Industrial design files for Keychron keyboards and mice. 100+ models with CAD assets in STEP, DXF, DWG, and PDF. Source-available, with commercial use allowed for original compatible accessories within the license terms. [ANNOUNCE] WireGuardNT v0.11 and WireGuard for Windows v0.6 Released 1D-Chess Helium Is Hard to Replace Keeping a Postgres queue healthy — PlanetScale Serenity Forge (@serenityforge.com) Our response to the Axios developer tool compromise Do Americans read print books, e-books or audiobooks more? Uncharted island soon to appear on nautical charts The Problem That Built an Industry Fragments: April 2 Python Release Python install manager 26.1 Bitcoin miners are losing $19,000 on every BTC produced as difficulty drops 7.8% God sleeps in the minerals Harness engineering: leveraging Codex in an agent-first world Apple Silicon and Virtual Machines: Beating the 2 VM Limit What have been the greatest intellectual achievements? The APL Programming Language Source Code
GLM-5.2: The Most Powerful Open-Weight Model Yet — and the Brutal Reality of Running It Locally
Thomas Newkirk · 2026-06-19 · via Hacker News: Front Page

Every few weeks the "best open model" crown changes hands. This week it's GLM-5.2, from the Chinese lab Z.ai — and unusually, the claim has teeth: it sits at #1 on the independent Artificial Analysis Intelligence Index. It's also MIT-licensed, has a million-token context, and ships with a genuinely clever architecture trick. So should you download it? That's where this gets interesting — because the full weights are 1.51 TB, and "run it locally" means something very specific here. We haven't run it ourselves; what follows synthesizes Z.ai's own docs, independent benchmarks, owner reports, and the hardware math.

What it is — and what Z.ai claims

GLM-5.2 is a Mixture-of-Experts model: 753 billion total parameters, ~40 billion active per token (only a fraction of the network fires for any given token — the reason a model this large can run at all; see our MoE explainer). Per Z.ai's release, it's text-only, carries a 1-million-token context window (up from GLM-5.1's 200K), and ships under a permissive MIT license with weights on Hugging Face at zai-org/GLM-5.2. The open weights went public on June 16, 2026, days after a coding-plan-only soft launch.

The headline number is real and independently sourced: as Simon Willison documented, GLM-5.2 tops the Artificial Analysis Intelligence Index v4.1 at 51, ahead of MiniMax-M3, DeepSeek V4 Pro (both 44) and Kimi K2.6 (43) — making it the strongest open-weight model on that leaderboard. Z.ai pitches it at agentic coding; VentureBeat reported Z.ai's claim that it beats GPT-5.5 on several long-horizon coding benchmarks at a fraction of the cost. Treat that last one as a vendor claim — on the head-to-head Code Arena WebDev board it lands #2, behind Claude Fable 5. Strong, not untouchable.

Most "point releases" are just more training. GLM-5.2's standout is architectural. Per Z.ai's technical blog (and summarized in latent.space's writeup), IndexShare reuses a single lightweight "indexer" across every four sparse-attention layers — the indexer runs once and its top-k token selections are reused for the next three layers. The payoff: a claimed 2.9× reduction in per-token compute (FLOPs) at the full 1M-token context, with the model trained this way from mid-training rather than bolted on after. A related tweak to the speculative-decoding (MTP) layer is claimed to raise acceptance length by up to 20%. In plain terms: this is co-design aimed squarely at making a million-token context affordable to serve — the kind of efficiency work that actually matters for long-horizon coding agents, not a benchmark-chasing gimmick.

What owners and reviewers actually find

The independent reception is warm but not uncritical. Simon Willison's vibe-tests cut both ways: his "pelican on a bicycle" SVG was "a very nice vector illustration… very impressive," while the same model's opossum was "such a step down from GLM-5.1!" — a useful reminder that a #1 index score doesn't mean every output lands. On Hacker News, the dominant note was gratitude to Chinese labs "for being open with their work," a recurring theme as proprietary releases tighten up.

For a hands-on read, AI-hardware reviewer Bijan Bowen put GLM-5.2 through a 33-minute coding session. His "browser-OS" and game builds were a highlight — a GTA-style "Gangster City" clone he called "arguably one of the most properly city-scaled results I've seen," complete with working police-chase logic and a slick WebGL effect that lifts every window into a 3D starfield. The catch he kept hitting: it's token-hungry and slow to finish — one build ran ~15 minutes, and GLM-5.2 burns roughly 43k output tokens per task (vs GLM-5.1's 26k), which matters whether you're paying per-token or waiting on local hardware.

One more thing the community flagged: using Z.ai's hosted API raises data-residency questions for some users. That's actually an argument for the open weights — running them on your own hardware is the privacy-clean way to use this model. Which brings us to the only question that matters for a local-AI site.

Can you actually run it? The honest hardware reality

This is where the romance meets the spec sheet. The full BF16 weights are 1.51 TB. Even heavily quantized, GLM-5.2 is not a "download and go" model for normal rigs:

QuantMemory neededWhat runs itReality
Q4_K_M (4-bit)~476 GBMulti-GPU server (2× A100 80GB / 4× RTX 6000 Ada)Datacenter only
2-bit dynamic (Unsloth UD-IQ2_XXS)~241 GB256GB+ unified-memory Mac Studio (M3/M4 Ultra)~3–9 tok/s
1-bit dynamic (UD-TQ1_0)~176 GBStill needs 256GB; a 128GB Strix Halo box can't hold itQuality falls off a cliff

So the practical local options are narrow, per Unsloth's GGUF notes:

  • If you want it local + private: a Mac Studio M3 Ultra with 256–512 GB of unified memory will hold the 2-bit dynamic quant and generate at roughly 3–9 tokens/sec — usable for async agent runs, painful for chat. It's the only single-box consumer machine that runs GLM-5.2 at all. Note even a 128GB Strix Halo box or a 24GB GPU is simply out — the weights don't fit at any usable quant.
  • For everyone else, renting is the honest answer. A model this size is the textbook case for cloud GPUs — rent the VRAM you need by the hour, or just hit the API. You give up the privacy edge, but you skip a five-figure machine to run a model you might only use occasionally.

Run the cost math before you commit. GLM-5.2's appetite cuts both ways: at roughly $4.40 per million output tokens and ~43k tokens per coding task, a heavy agent session is real money on the API; a 256GB+ Mac Studio M3 Ultra is a ~$9,500 outlay up front (a lot of API calls); and cloud rental sits in between at a few dollars an hour. Our buy-vs-rent-vs-API cost calculator will tell you where the break-even lands for your actual usage.

Not sure where your hardware lands? Run the numbers in our Can I run it? calculator, and use the quant picker to choose a GGUF that fits.

The bottom line

GLM-5.2 is a landmark: the most capable open-weight model yet by at least one credible measure, MIT-licensed, with a real efficiency innovation behind its million-token context. But "open" isn't the same as "runnable." Unless you own a 256GB+ Mac Studio — and can live with single-digit tokens per second at a 2-bit quant — this is a model you'll most sensibly rent or hit via API, not host at home. If you are shopping hardware to run frontier open models locally, the unified-memory Mac Studio is the realistic on-ramp, and it's the one machine here that clears the bar.

Who it's actually for: GLM-5.2 is built for agentic coding and long-horizon, long-context work — multi-file refactors, big-document reasoning, 8-hour autonomous runs. If that's your wheelhouse and you value privacy or independence from a hosted API, it's a serious tool worth the trouble. If you mostly want a fast local chat or coding assistant, you'll be far happier with a 30B-class model on a 24 GB card — quicker, cheaper, and genuinely good enough. Picking the biggest model on the leaderboard is rarely the right call for local use; picking the biggest one you can actually run well almost always is.

Sources & how we researched this

We have not run GLM-5.2 first-hand. This synthesizes Z.ai's model card and technical blog (specs, license, IndexShare); Simon Willison's independent write-up and the Artificial Analysis ranking; VentureBeat's reporting on the coding claims; latent.space on IndexShare; Unsloth's GGUF quant sizes; and Bijan Bowen's hands-on coding tests. Benchmark and parameter figures are the creators'/sources' claims; treat single-run results as directional.