testOrSync

621 posts

testOrSync banner
testOrSync

testOrSync

@testOrSync

☞ #непизди REFERRAL LINK: 🔗 https://t.co/qvYQkhoQaf https://t.co/zMkVi6EMFr

planet: Earth 🌎 ---- 💻 Tham gia Aralık 2020
315 Đang theo dõi25 Người theo dõi
Tweet ghim
testOrSync
testOrSync@testOrSync·
testOrSync tweet media
ZXX
0
0
0
103
testOrSync đã retweet
Ali Grids
Ali Grids@AliGrids·
reflective UI. such a cool idea from @jsngr
English
47
45
1.3K
110.5K
testOrSync đã retweet
Curiosity
Curiosity@CuriosityonX·
NASA's heat tiles so insanely effective, you could pull one straight out of a 2200°F furnace and hold it with your bare hands — while the inside was still glowing white-hot.
English
44
373
3.3K
156.7K
testOrSync đã retweet
The Astronomy Guy
The Astronomy Guy@astrooalert·
🚨 GENERAL ALERT! THE HIGHEST-QUALITY VIDEO OF THE MOON IN HISTORY HAS JUST BEEN UNVEILED 😱 IT'S SIMPLY SPECTACULAR.
English
115
1.9K
13.2K
267.5K
testOrSync đã retweet
All day Astronomy
All day Astronomy@forallcurious·
Moon stuns in the latest video released by NASA!
English
87
2.6K
17.8K
453.9K
testOrSync đã retweet
Mike Constantine
Mike Constantine@Moonpans·
Apollo 15 Lunar Rover Footage Upscaled and Interpolated to 60 FPS - Full video in comments Incredible footage from onboard the Apollo 15 Lunar Rover captured by Jim Irwin using the 16mm DAC camera. This footage has been upscaled and Interpolated to 60 FPS and synchronised to the mission audio by Moonpans Original footage source: Apollo Flight Journal Full video in comments
English
34
469
3.2K
178.8K
testOrSync đã retweet
Physics & Astronomy Zone
Physics & Astronomy Zone@zone_astronomy·
To think that we aren't just going "to the Moon," but rather traveling to meet it at an exact point in space... changes everything. ​It all comes down to orbital mechanics: arriving at the precise location, at the precise moment. ​One tiny error... and it simply doesn't happen
English
722
5.9K
36.3K
3.4M
testOrSync đã retweet
NASA Earth
NASA Earth@NASAEarth·
That's us! 🌍 The Artemis II crew captured beautiful, high-resolution images of our home planet during their journey to the Moon. As @Astro_Christina put it: "You guys look great."
NASA Earth tweet media
English
3K
43K
218.4K
8.7M
testOrSync đã retweet
80s Kidz
80s Kidz@80s_Kidz·
Love this😂
English
296
2.2K
13.1K
645.7K
testOrSync đã retweet
Nav Toor
Nav Toor@heynavtoor·
🚨 397 billion parameters. On a MacBook. No cloud. No GPU cluster. No data center. A laptop. Someone ran one of the largest AI models on Earth on a machine you can buy at the Apple Store. It's called flash-moe. A pure C and Metal inference engine that runs Qwen3.5-397B on a MacBook Pro with 48GB RAM. At 4.4 tokens per second. With tool calling. No Python. No PyTorch. No frameworks. Just raw C and hand-tuned Metal shaders. Here's why this should not be possible: → The model is 209GB. The laptop has 48GB of RAM. → It streams the entire model from the SSD in real time → Only loads the 4 experts needed per token out of 512 → Uses just 5.5GB of actual memory during inference → Production-quality output with full tool calling → 58 experiments. Hand-optimized Metal compute kernels. → The entire engine is ~7,000 lines of C and ~1,200 lines of Metal shaders Here's the wildest part: One person built this. A VP of AI at CVS Health. Not Google. Not OpenAI. A healthcare company executive. Side project. Used Claude Code as his coding partner. Built the entire engine in 24 hours. Running a 397B model on cloud GPUs costs hundreds of dollars per hour. Companies spend millions per year on inference infrastructure for models this size. This runs on a $3,499 laptop. Offline. Private. No API key. No monthly bill. Forever. Trending on GitHub. 332 points on Hacker News. 100% Open Source.
Nav Toor tweet media
English
115
343
2.6K
206.1K
testOrSync đã retweet
NASA
NASA@NASA·
Action. Wonder. Adventure. Artemis II has got it all. Don't miss the moment. Our crewed Moon mission will launch as early as April 1. Learn how to watch: nasa.gov/ways-to-watch/
English
1.6K
9.5K
39.6K
7.1M
testOrSync đã retweet
For All Mankind
For All Mankind@forallmankind_·
On Mars and beyond, the next great chapter begins. #ForAllMankind returns March 27.
English
237
925
6K
642.1K
testOrSync đã retweet
Today In History
Today In History@historigins·
When Nike planned a full day of filming for an advertisement, but Ronaldinho finished it in one take
English
47
819
24.7K
816.9K
testOrSync đã retweet
Apple TV
Apple TV@AppleTV·
#StarCity. Where reaching for space meant risking everything on Earth. Coming May 29 to Apple TV.
English
63
455
3.6K
377.9K
testOrSync đã retweet
RetroNewsNow
RetroNewsNow@RetroNewsNow·
📺DEBUT: 'Sliders' starring Jerry O'Connell premiered 31 years ago, March 22, 1995, on Fox
English
18
62
320
24.2K
testOrSync
testOrSync@testOrSync·
@maestro__dev I'm running this locally on a real Android device, and the app is painfully slow. It's nowhere near the speed you show in the videos.
English
1
0
0
81
Maestro
Maestro@maestro__dev·
A full purchase flow test in YAML 👇
English
5
3
69
8.1K
testOrSync đã retweet
Rock'n Roll of All
Rock'n Roll of All@rocknrollofall·
Whoever thought of merging the symbols is a genius. This would work btw.
English
112
918
21.1K
3.3M
testOrSync đã retweet
Vishakha Singhal
Vishakha Singhal@vishisinghal_·
Most people think using Claude Code is about writing better prompts. It’s not. The real unlock is structuring your repository so Claude can think like an engineer. If your repo is messy, Claude behaves like a chatbot. If your repo is structured, Claude behaves like a developer living inside your codebase. Your project only needs 4 things: • the why → what the system does • the map → where things live • the rules → what’s allowed / forbidden • the workflows → how work gets done I call this: The Anatomy of a Claude Code Project 👇 ━━━━━━━━━━━━━━━ 1️⃣ CLAUDE.md = Repo Memory (Keep it Short) This file is the north star for Claude. Not a massive document. Just three things: • Purpose → why the system exists • Repo map → how the project is structured • Rules + commands → how Claude should operate If CLAUDE.md becomes too long, the model starts missing critical signals. Clarity beats size. ━━━━━━━━━━━━━━━ 2️⃣ .claude/skills/ = Reusable Expert Modes Stop repeating instructions in prompts. Turn common workflows into reusable skills. Examples: • code review checklist • refactoring playbook • debugging workflow • release procedures Now Claude can switch into specialized modes instantly. Result: More consistent outputs across sessions and teammates. ━━━━━━━━━━━━━━━ 3️⃣ .claude/hooks/ = Guardrails Models forget. Hooks don’t. Use hooks for things that must always happen automatically. Examples: • run formatters after edits • trigger tests after core changes • block sensitive directories (auth, billing, migrations) Hooks turn AI workflows into reliable engineering systems. ━━━━━━━━━━━━━━━ 4️⃣ docs/ = Progressive Context Don’t overload prompts with information. Instead, let Claude navigate your documentation. Examples: • architecture overview • ADRs (engineering decisions) • operational runbooks Claude doesn’t need everything in memory. It just needs to know where truth lives. ━━━━━━━━━━━━━━━ 5️⃣ Local CLAUDE.md for Critical Modules Some areas of your system have hidden complexity. Add local context files there. Example: src/auth/CLAUDE.md src/persistence/CLAUDE.md infra/CLAUDE.md Now Claude understands the danger zones exactly when it works in them. This dramatically reduces mistakes. ━━━━━━━━━━━━━━━ Here’s the shift most people miss: Prompting is temporary. Structure is permanent. Once your repository is designed for AI: Claude stops acting like a chatbot... …and starts behaving like a project-native engineer. 🚀
Vishakha Singhal tweet media
English
114
565
4K
350.4K