An indie dev just went full mad scientist and built a full-stack, transformer-powered search engine—solo. They indexed 280 million pages from scratch with hundreds of crawlers, a fully sharded backend, and serious metal: 64 RocksDB nodes, 200 CPU cores, and 82 TB of SSD.
Under the hood: custom HTML parsers, sentence-level chunking labeled by a context-aware DistilBERT, and HNSW vector search sharded across in-memory nodes. The real kicker? A custom vector DB called CoreNN that runs live graph updates from disk—over 3 billion embeddings and counting.
Big shift: Forget bloated full-text indexes. This stack shows where things are headed—lean, LLM-native search on vector DBs tuned for disk, not RAM.
Let's keep in touch!
Stay updated with my latest posts and news. I share insights, updates, and exclusive content.
Unsubscribe anytime. By subscribing, you share your email with @faun and accept our Terms & Privacy.
Give a Pawfive to this post!
Only registered users can post comments. Please, login or signup.
Start writing about what excites you in tech — connect with developers, grow your voice, and get rewarded.
Join other developers and claim your FAUN.dev() account now!
The FAUN watches over the forest of developers. It roams between Kubernetes clusters, code caves, AI trails, and cloud canopies, gathering the signals that matter and clearing out the noise.
Developer Influence
3k
Influence
302k
Total Hits
3711
Posts
Hey, sign up or sign in to add a reaction to my post.
Join thousands of other developers, 100% free, leave anytime.
Hey there! 👋 I created FAUN.dev(), an effortless, straightforward way for busy developers to keep up with the technologies they love 🚀
Aymen @eon01
Founder of FAUN.dev()
Join thousands of developers and engineering teams who use FAUN.dev() to stay up-to-date with the technologies they love, without the overwhelm.