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科技前沿

SpaceX is on track for record-setting Starlink deployments

SpaceX is currently ahead of last year's record-setting pace for Starlink satellite deployments. SpaceX launched 1,589 Starlink satellites into low-Earth orbit in the first half of 2026, according to launch data compiled by Jonathan McDowell's satellite tracker, compared to 1,489 satellites deployed at the same point in 2025. 2025 was already a record year for […]

2026-07-09 原文 →
AI 资讯

Show HN: Wyrm – Solve algebra by touch, built on an open-source soundness engine

There is a mobile game called DragonBox. It sort of tricks you into learning algebra by starting with very abstract manipulations of a puzzle that must follow rules... gradually the game teaches you more and more rules and also strips out the more abstract elements until on the last levels you are finally solving real equations. I loved it, it taught my kids algebra.... and it was just fun. Over the years I often thought that there should be a calculator for Algebra that works this way... someth

2026-07-09 原文 →
AI 资讯

San Francisco's Gravity Is Back: 366 of 477 YC 2026 Startups Are in One City

If you could pick only one counterintuitive number from the YC 2026 batches, make it this one: out of 477 real-ish company records, 366 list San Francisco as their location — roughly 77%. For comparison: New York City has 24. London 10. Boston 7. Los Angeles 4. Fully remote? 3 companies. Even if you add the 11 tagged "San Francisco + Remote", the conclusion doesn't budge: AI startups aren't spreading across the map. They're re-concentrating in one city. This isn't Bay Area nostalgia. It's industry structure casting a vote. Remote won work. It didn't win startup density. One of the most popular takes of the past few years: software teams can start anywhere, so companies no longer need the Bay Area. That take wasn't entirely wrong — tooling, cloud services, open models, and online fundraising genuinely lowered the barrier to starting a company. But the YC 2026 location data is a reminder that a lower barrier is not the same as a vanished advantage. Building an AI startup isn't just writing code. It runs on model gossip, talent flow, customer pilots, investor feedback, peer pressure, and extremely fast narrative iteration. Much of that works online. But the densest informal information still travels fastest offline. San Francisco's edge was never the office space — it's collision frequency. AI made same-city learning matter again In the classic SaaS era, most domain knowledge came from customers and product cycles were relatively stable. You could build a vertical software company in any city and grind toward PMF at your own pace. The AI era doesn't work like that. Model capabilities turn over every few months. Agent architectures keep getting rewritten. Inference costs, context windows, voice, tool calling, and eval infrastructure are all on rolling release. A seemingly minor technical shift can redraw your product's boundaries overnight. In that environment, whoever hears real feedback earlier, learns earlier what others tripped over, and understands earlier what inv

2026-07-09 原文 →
AI 资讯

Show HN: Getting GLM 5.2 running on my slow computer

A few days ago I found myself trying out GLM 5.2 and was really positively impressed. The capabilities and security I was getting from this LLM are similar to those I've gotten from models like Claude or GPT, and this really surprised me. But then I thought, "I wonder how it would work on a normal computer like mine," and above all, "I wonder if it would work without going into OOM on a computer like mine." So I started working with the help of agents to test this possibility. I started converti

2026-07-09 原文 →