Ninsei Labs

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Ninsei Labs

Ninsei Labs

@NinseiLabs

Building AI infrastructure your business should already have. Operator notes from inside Ninsei Labs: Claude Code, agents, what actually ships.

United States Se unió Haziran 2025
38 Siguiendo53 Seguidores
Ninsei Labs
Ninsei Labs@NinseiLabs·
AI doesn't fix broken workflows. It scales them. The actual order: 1. Audit the workflow 2. Cut the obvious waste 3. Write the clean version down 4. Then automate the repeatable parts Skipping steps 1-3 is why half the "AI transformation" projects make things worse, faster.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Want to find more builders shipping real AI and automation work. 🤖 Agents and automations 🛠️ AI tools 🚀 Startups ⚙️ Products 🧠 Operators figuring it out What are you building right now?
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Running this as a one-person shop means the AI infrastructure has to actually run. This week: an agent that auto-drafts and schedules content across three brand accounts, no human in the loop. The stack decides, the guard holds.
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Ninsei Labs retuiteado
Simon@Twillot
Simon@Twillot@mytwillot·
@NinseiLabs Building an AI tool for X power users—Twillot backs up your bookmarks, likes & history, then uses AI classification to turn them into a searchable knowledge base so nothing gets lost. twillot.com/en
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Ninsei Labs
Ninsei Labs@NinseiLabs·
AI doesn't fix chaos. It scales whatever process you point it at. Audit the workflow first. Remove the waste. Write the clean version. Then automate the repeatable pieces. In that order. Always.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Open-source just caught the frontier. GLM 5.2 tops GPT and Gemini on benchmarks for 1/6 the price of GPT 5.5. Only Fable 5 outscored it. Stop running heavy models on light work. The budget line just moved.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Want to find more founders and operators building real AI products. 🤖 Agents and automations 📦 Products that ship 🔧 Internal tooling 🚀 Startups 📣 Go-to-market What are you building right now?
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Ninsei Labs retuiteado
FireLaunch
FireLaunch@JoinFireLaunch·
Firecrawl dropped its API key requirement. Scraping any site or parsing any PDF to markdown is now zero-friction. One less setup step if you're building RAG pipelines, web context, or any tool that needs raw page content. What are you building that this unblocks?
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Ninsei Labs retuiteado
FireLaunch
FireLaunch@JoinFireLaunch·
HeyGen open-sourced the engine that compiles HTML/CSS and animations into deterministic MP4s. Apache-2.0. Built specifically for agent pipelines where video output needs to be reproducible. What's in your stack for video right now? 👇
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Ninsei Labs retuiteado
Plug Your Build 💡
Plug Your Build 💡@PlugYourBuild·
Looking to connect with more indie makers putting real work into the world. 🛠️ Side projects 💡 SaaS 📦 Indie apps 🚀 Launches 🌐 Tools What are you shipping? Drop it below 👇
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Most people run Opus on everything. Here's what actually maps: Haiku: email routing, support triage, speed-critical UX. Sonnet: generative tasks, code, doc extraction. Opus: architecture decisions, hard synthesis. Stop paying Opus prices for tasks Haiku handles in milliseconds.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
GLM 5.2: MIT license, open weights. 753B parameters. Sits within 1 point of Opus 4.8 on long-horizon coding benchmarks. Costs a fraction of what closed-frontier APIs charge. Closed APIs carry a political dependency now. Open weights remove it.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
This is how I scope AI infrastructure work now. First call maps the workflow tip to tail. Find the one automation with the most value and least effort. Start there. Paid audit up front, credited toward month one. The client sees the thinking. No hard close.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Want to find more founders and operators actually building and shipping real things. 🤖 AI agents ⚙️ Automations 🛠️ Products 📊 Ops tooling 🚀 Startups What are you working on?
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Everyone talks about vector search for RAG. Nobody talks about BM25. A 30-year-old algorithm, no embeddings, no training. Still outperforms pure vector on exact-term queries. Hybrid is the production standard. Most builders stop before getting there.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
The most-distributed AI tooling right now isn't code. It's markdown files that change how agents behave. Spec-before-code rules. TDD enforcement. Task isolation. All plain text. The infrastructure is the instructions.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Built the loop pattern into my content pipeline this week. The fingerprint check is now a hybrid: hard rules catch definite fails, a thin Haiku call handles the soft ones. Spend the thinking before the tokens. Cache what repeats. Cheap model does cheap work.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Everyone talks about vector search for RAG. Nobody talks about BM25. A 30-year-old algorithm, no embeddings, no training. Still outperforms pure vector on exact-term queries. Hybrid is the production standard. Most builders stop before getting there.
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Want to find more founders in the trenches with AI and automation. 🤖 AI agents ⚙️ Automations 📦 Micro SaaS 🏗️ Products in progress 🧠 AI infrastructure What are you actually building right now?
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Ninsei Labs
Ninsei Labs@NinseiLabs·
Everyone talks about RAG retrieval architecture. Nobody talks about indexing chunk quality. One technique cut corpus size 40x, tokens per query 3x, relevance 2.3x. Same retrieval algo, same reranker, same embedding model. Fix the chunk before you tune the search.
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