Moe Saleh

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Moe Saleh

Moe Saleh

@moeinteractive

ai, adventure, art, investing. Making a better tomorrow, today. $btc

New York, NY Se unió Aralık 2013
7.4K Siguiendo2.2K Seguidores
Tim Cook
Tim Cook@tim_cook·
I want to thank everyone for the outpouring of love and thank you for believing in me to lead the company that has always put you at the center of our work. This is not goodbye. It’s a hello to John and I can’t wait for you to get to know him like I do! 🙏
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Avid
Avid@Av1dlive·
In 14 minutes, this Anthropic engineer who wrote "Building Effective Agents" will teach you more about building them right than most developers figure out on their own in months. Bookmark this for the weekend. Then read the builder's guide below.
Avid@Av1dlive

x.com/i/article/2044…

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basement.studio
basement.studio@basementstudio·
gm, today we're launching Shader Lab, like photoshop but for shaders • design slick layered shader compositions • export high-quality assets or shaders • OSS package to plug & play ↳ eng.basement.studio/tools/shader-l…
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Guillermo Rauch
Guillermo Rauch@rauchg·
This is what the future of design looks like. Not just this specific tool¹, but the fact that every team in the world is now is empowered to build their own 'design factory'. Shader Lab was built with Claude Code, @threejs, @nextjs, and @vercel. To the exact needs, vision, and specification of @basementstudio. Every time we work on a project with them, we get a glimpse of an arsenal of internal tools they've deployed. Some built specifically for a project, some more general purpose. It's now easier to generate software re-assembling powerful building blocks, than searching and procuring the right SaaS for the job. ¹ though it's a banger
basement.studio@basementstudio

gm, today we're launching Shader Lab, like photoshop but for shaders • design slick layered shader compositions • export high-quality assets or shaders • OSS package to plug & play ↳ eng.basement.studio/tools/shader-l…

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Vercel Developers
Vercel Developers@vercel_dev·
Your agent platform needs a database. One that's fully managed, Postgres-compatible, and handles both scale and just-in-time apps. Join us to learn more about how Aurora DSQL and Vercel fit this bill. vercel.fyi/xXhDdr9
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Guillermo Rauch
Guillermo Rauch@rauchg·
Today we're open sourcing open-agents.dev, a reference platform for cloud coding agents. You've heard that companies like Stripe (Minions), Ramp (Inspect), Spotify (Honk), Block (Goose), and others are building their own "AI software factories". Why? 1️⃣ On a technical level, off-the-shelf coding agents don't perform well with huge monorepos, don't have your institutional knowledge, integrations, and custom workflows. 2️⃣ On a business level, the moat of software companies will shift from 'the code they wrote', to the 'means of production' of that code. The alpha is in your factory. Open Agents deploys to our agentic infrastructure: Fluid for running the agent's brain, Workflow for its long-running durability, Sandbox for secure code execution, AI Gateway for multi-model tokens. (Because of our focus on Open SDKs and runtimes, this codebase is a gem even if you're not hosting on Vercel.) TL;DR: if you're building an internal or user-facing agentic coding platform, deploy this: vercel.com/templates/temp…
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Andrej Karpathy
Andrej Karpathy@karpathy·
Wow, this tweet went very viral! I wanted share a possibly slightly improved version of the tweet in an "idea file". The idea of the idea file is that in this era of LLM agents, there is less of a point/need of sharing the specific code/app, you just share the idea, then the other person's agent customizes & builds it for your specific needs. So here's the idea in a gist format: gist.github.com/karpathy/442a6… You can give this to your agent and it can build you your own LLM wiki and guide you on how to use it etc. It's intentionally kept a little bit abstract/vague because there are so many directions to take this in. And ofc, people can adjust the idea or contribute their own in the Discussion which is cool.
Andrej Karpathy@karpathy

LLM Knowledge Bases Something I'm finding very useful recently: using LLMs to build personal knowledge bases for various topics of research interest. In this way, a large fraction of my recent token throughput is going less into manipulating code, and more into manipulating knowledge (stored as markdown and images). The latest LLMs are quite good at it. So: Data ingest: I index source documents (articles, papers, repos, datasets, images, etc.) into a raw/ directory, then I use an LLM to incrementally "compile" a wiki, which is just a collection of .md files in a directory structure. The wiki includes summaries of all the data in raw/, backlinks, and then it categorizes data into concepts, writes articles for them, and links them all. To convert web articles into .md files I like to use the Obsidian Web Clipper extension, and then I also use a hotkey to download all the related images to local so that my LLM can easily reference them. IDE: I use Obsidian as the IDE "frontend" where I can view the raw data, the the compiled wiki, and the derived visualizations. Important to note that the LLM writes and maintains all of the data of the wiki, I rarely touch it directly. I've played with a few Obsidian plugins to render and view data in other ways (e.g. Marp for slides). Q&A: Where things get interesting is that once your wiki is big enough (e.g. mine on some recent research is ~100 articles and ~400K words), you can ask your LLM agent all kinds of complex questions against the wiki, and it will go off, research the answers, etc. I thought I had to reach for fancy RAG, but the LLM has been pretty good about auto-maintaining index files and brief summaries of all the documents and it reads all the important related data fairly easily at this ~small scale. Output: Instead of getting answers in text/terminal, I like to have it render markdown files for me, or slide shows (Marp format), or matplotlib images, all of which I then view again in Obsidian. You can imagine many other visual output formats depending on the query. Often, I end up "filing" the outputs back into the wiki to enhance it for further queries. So my own explorations and queries always "add up" in the knowledge base. Linting: I've run some LLM "health checks" over the wiki to e.g. find inconsistent data, impute missing data (with web searchers), find interesting connections for new article candidates, etc., to incrementally clean up the wiki and enhance its overall data integrity. The LLMs are quite good at suggesting further questions to ask and look into. Extra tools: I find myself developing additional tools to process the data, e.g. I vibe coded a small and naive search engine over the wiki, which I both use directly (in a web ui), but more often I want to hand it off to an LLM via CLI as a tool for larger queries. Further explorations: As the repo grows, the natural desire is to also think about synthetic data generation + finetuning to have your LLM "know" the data in its weights instead of just context windows. TLDR: raw data from a given number of sources is collected, then compiled by an LLM into a .md wiki, then operated on by various CLIs by the LLM to do Q&A and to incrementally enhance the wiki, and all of it viewable in Obsidian. You rarely ever write or edit the wiki manually, it's the domain of the LLM. I think there is room here for an incredible new product instead of a hacky collection of scripts.

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Moe Saleh
Moe Saleh@moeinteractive·
@karpathy I have been working on something that solves lots of this. Will have demo for the world soon.
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Andrej Karpathy
Andrej Karpathy@karpathy·
LLM Knowledge Bases Something I'm finding very useful recently: using LLMs to build personal knowledge bases for various topics of research interest. In this way, a large fraction of my recent token throughput is going less into manipulating code, and more into manipulating knowledge (stored as markdown and images). The latest LLMs are quite good at it. So: Data ingest: I index source documents (articles, papers, repos, datasets, images, etc.) into a raw/ directory, then I use an LLM to incrementally "compile" a wiki, which is just a collection of .md files in a directory structure. The wiki includes summaries of all the data in raw/, backlinks, and then it categorizes data into concepts, writes articles for them, and links them all. To convert web articles into .md files I like to use the Obsidian Web Clipper extension, and then I also use a hotkey to download all the related images to local so that my LLM can easily reference them. IDE: I use Obsidian as the IDE "frontend" where I can view the raw data, the the compiled wiki, and the derived visualizations. Important to note that the LLM writes and maintains all of the data of the wiki, I rarely touch it directly. I've played with a few Obsidian plugins to render and view data in other ways (e.g. Marp for slides). Q&A: Where things get interesting is that once your wiki is big enough (e.g. mine on some recent research is ~100 articles and ~400K words), you can ask your LLM agent all kinds of complex questions against the wiki, and it will go off, research the answers, etc. I thought I had to reach for fancy RAG, but the LLM has been pretty good about auto-maintaining index files and brief summaries of all the documents and it reads all the important related data fairly easily at this ~small scale. Output: Instead of getting answers in text/terminal, I like to have it render markdown files for me, or slide shows (Marp format), or matplotlib images, all of which I then view again in Obsidian. You can imagine many other visual output formats depending on the query. Often, I end up "filing" the outputs back into the wiki to enhance it for further queries. So my own explorations and queries always "add up" in the knowledge base. Linting: I've run some LLM "health checks" over the wiki to e.g. find inconsistent data, impute missing data (with web searchers), find interesting connections for new article candidates, etc., to incrementally clean up the wiki and enhance its overall data integrity. The LLMs are quite good at suggesting further questions to ask and look into. Extra tools: I find myself developing additional tools to process the data, e.g. I vibe coded a small and naive search engine over the wiki, which I both use directly (in a web ui), but more often I want to hand it off to an LLM via CLI as a tool for larger queries. Further explorations: As the repo grows, the natural desire is to also think about synthetic data generation + finetuning to have your LLM "know" the data in its weights instead of just context windows. TLDR: raw data from a given number of sources is collected, then compiled by an LLM into a .md wiki, then operated on by various CLIs by the LLM to do Q&A and to incrementally enhance the wiki, and all of it viewable in Obsidian. You rarely ever write or edit the wiki manually, it's the domain of the LLM. I think there is room here for an incredible new product instead of a hacky collection of scripts.
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Roan
Roan@RohOnChain·
This 2 hour Stanford lecture on AI careers will teach you more about winning in the AI race than every piece of AI content you have scrolled past this year. Bookmark this & give it 2 hours, no matter what. It'll be the most productive thing you could do this weekend.
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Boris Cherny
Boris Cherny@bcherny·
I wanted to share a bunch of my favorite hidden and under-utilized features in Claude Code. I'll focus on the ones I use the most. Here goes.
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cocktail peanut
cocktail peanut@cocktailpeanut·
> One CLI to coordinate any coding agent — Claude Code, Codex, OpenClaw, nanobot, and more Why would you build such a cool thing and name it "Claw"Team? It's literally one layer above all those agents. It's like inventing Kubernetes and calling it "DockerTeam".
Chao Huang@huang_chao4969

ClawTeam v0.2.0 is here. One CLI to coordinate any coding agent — Claude Code, Codex, OpenClaw, nanobot, and more — into a self‑organizing swarm that plans, builds, and ships together. What's new in v0.2.0: 1) - Gource Visualization — Watch your agent swarm’s Git activity in real time. Clear. Visual. Instant. Run: clawteam board gource --live See every commit, branch, and merge as it happens. Track what each agent is doing. 2) - Runtime Profiles — A provider‑aware configuration system. Switch between Claude, Kimi, and Gemini anytime. No need to edit environment variables. Run clawteam profile wizard. Follow the interactive setup. Done in minutes. 3) - Git-Based Context — Full worktree isolation with built‑in conflict detection and change tracking. Each agent works on its own branch, and the leader can see everything clearly in one place. 4) - Stability & Hardening — Spawn/workspace conflict fixes, improved tmux integration, message normalization, P2P liveness with lease-based detection. This release is about making the foundation rock-solid. --------------------------------------------------------- To show what a coordinated agent swarm can actually do, we ran 1 Claude Code orchestrating 8 Claude Code agents to build a robotics simulation system optimized for Apple Silicon — from scratch. 8 hours. 300+ PRs. One running simulator. Check the result: github.com/novix-science/… --------------------------------------------------------- Huge thanks to the open-source community for the feedback, issues, and PRs that shaped this release. ClawTeam is built in the open because we believe multi-agent coordination should be a shared primitive, not a proprietary moat. Try it: pip install clawteam Docs: clawteam.us GitHub: github.com/HKUDS/ClawTeam #ClawTeam #nanobot #AIAgents #openclaw #ClaudeCode #Cursor

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Morgan
Morgan@morganlinton·
I feel like I've been too excited about too many things today, but I guess that's just how it is. Not sure how you couldn't see this as a big deal.
Nav Toor@heynavtoor

🚨 OpenAI charges $0.006/minute. Google charges $0.024. AWS charges $0.024. Someone just open sourced a tool that does it for $0. And it's faster than all of them. It's called Insanely Fast Whisper. And that's not hype. That's the benchmark. 150 minutes of audio. 98 seconds to transcribe. On your own machine. No API key. No cloud. No per-minute billing. Here's what the numbers look like: → Whisper Large v3 + Flash Attention 2: 150 min of audio in 98 seconds → Distil Whisper + Flash Attention 2: 150 min in 78 seconds → Standard Whisper without optimization: 31 minutes for the same job → That's a 19x speedup. Same model. Same accuracy. Just faster. Here's what it does: → One command to transcribe any audio file or URL → Speaker diarization — knows WHO said WHAT → Transcription AND translation to other languages → Runs on NVIDIA GPUs and Mac (Apple Silicon) → Flash Attention 2 for maximum speed → Clean JSON output with timestamps → Works with every Whisper model variant Here's the wildest part: Otter.ai charges $100/year. Rev charges $1.50/minute. Descript charges $24/month. Enterprise transcription contracts cost thousands. Podcasters, journalists, researchers, lawyers, content creators — anyone still paying for transcription is lighting money on fire. 8.8K GitHub stars. 633 forks. MIT License. 100% Open Source. (Link in the comments)

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Moe Saleh
Moe Saleh@moeinteractive·
@garrytan Gary I hope to show you & the world what I am working on soon.
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Google Research
Google Research@GoogleResearch·
Introducing TurboQuant: Our new compression algorithm that reduces LLM key-value cache memory by at least 6x and delivers up to 8x speedup, all with zero accuracy loss, redefining AI efficiency. Read the blog to learn how it achieves these results: goo.gle/4bsq2qI
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