Abhay 🇸🇬🇮🇳

3.4K posts

Abhay 🇸🇬🇮🇳 banner
Abhay 🇸🇬🇮🇳

Abhay 🇸🇬🇮🇳

@Abhay08

Builder

Singapore Katılım Eylül 2009
278 Takip Edilen292 Takipçiler
Abhay 🇸🇬🇮🇳 retweetledi
clem 🤗
clem 🤗@ClementDelangue·
300,000 AI builders have already added their hardware to HF to instantly see what model they can run locally. To do so, go to huggingface.co/settings/local… and add your hardware specs. You can even show off publicly by adding it to your HF profile! Let's go local AI!
clem 🤗 tweet media
English
43
76
485
33K
Abhay 🇸🇬🇮🇳 retweetledi
clem 🤗
clem 🤗@ClementDelangue·
llamacpp is the future of AI (local + free + fast + secure + powerful)!
English
90
88
1.4K
80.9K
Abhay 🇸🇬🇮🇳 retweetledi
Gavriel Cohen
Gavriel Cohen@Gavriel_Cohen·
Singapore's Foreign Minister published the architecture for his "second brain for a diplomat" yesterday. Architecture diagrams, design rationale, the works. A developer-style writeup of his own system. It runs on a Raspberry Pi. It connects to his WhatsApp and Gmail, transcribes voice notes locally, ingests speeches and articles, and builds up a knowledge graph over time. It answers questions, drafts speeches, condenses information. He says he doesn't dare switch it off. What @VivianBala built is one-of-one. There's no other setup like it. But what he built it from isn't. He composed four open-source pieces: - @NanoClaw_AI , the agent framework: github.com/qwibitai/nanoc… - Mnemon, the persistent memory layer: github.com/mnemon-dev/mne… - OneCLI, the credential proxy that keeps API keys out of the containers: github.com/onecli/onecli - The LLM Wiki pattern by Andrej Karpathy, the synthesis approach: x.com/karpathy/statu… None of them are his. The composition is his. And then he published the composition: gist.github.com/VivianBalakris… He didn't keep it internal as Singapore's edge. He didn't spin it into a product. He didn't gatekeep. He wrote it up and put it on GitHub. There are tens of thousands of doctors, lawyers, researchers, investors, and operators building one-of-one setups for themselves right now. Some simpler than Vivian's, some more elaborate. The impulse will be to sit on it. Treat it as your edge. Think about what product or company you could spin out of it. Resist that impulse. Vivian put it directly: "The diplomat who learns to work with AI will have a meaningful edge. I think that edge is now." The specific thing Vivian composed will be obsolete in months. His real edge isn't the system. It's his ability to build it. Being plugged in, up to speed, able to cut through the noise and connect the right pieces into something that brings real value. Sharing the blueprint doesn't give that away. It amplifies it. You become a beacon. Other people working on the same things find you. They share what they're building, suggest improvements, point at things you didn't know existed. You learn faster. You stay in the center of where things are happening. Publishing isn't giving away your edge. It's doubling down on it.
Zac@Zac_Pundi

Singapore’s AI obsession just hit Everest peak. The Foreign Minister is self-hosting Claude on a Raspberry Pi and building a diplomatic knowledge graph using Karpathy’s LLM Wiki pattern. Wahlao! SG devs, the minister is coming for your job. And he’s not even using Cursor — he’s on NanoClaw running locally. Can someone git pull his code and give it a test. Only bad thing? He dropped this on Facebook instead of X. Minister, we need to talk. gist.github.com/VivianBalakris…

English
45
396
2.1K
711.8K
Abhay 🇸🇬🇮🇳
Abhay 🇸🇬🇮🇳@Abhay08·
So much meat here. Pick a niche and build something that solves for agent adoption. UX is key for adoption. Headless is already the norm to leverage existing UX flows. The one-size-fits-all SaaS paradigm is being rewritten
Aaron Levie@levie

Another week on the road meeting with a couple dozen IT and AI leaders from large enterprises across banking, media, retail, healthcare, consulting, tech, and sports, to discuss agents in the enterprise. Some quick takeaways: * Clear that we’re moving from chat era of AI to agents that use tools, process data, and start to execute real work in the enterprise. Complementing this, enterprises are often evolving from “let a thousand flowers bloom” approach to adoption to targeted automation efforts applied to specific areas of work and workflow. * Change management still will remain one of the biggest topics for enterprises. Most workflows aren’t setup to just drop agents directly in, and enterprises will need a ton of help to drive these efforts (both internally and from partners). One company has a head of AI in every business unit that roles up to a central team, just to keep all the functions coordinated. * Tokenmaxxing! Most companies operate with very strict OpEx budgets get locked in for the year ahead, so they’re going through very real trade-off discussions right now on how to budget for tokens. One company recently had an idea for a “shark tank” style way of pitching for compute budget. Others are trying to figure out how to ration compute to the best use-cases internally through some hierarchy of needs (my words not theirs). * Fixing fragmented and legacy systems remain a huge priority right now. Most enterprises are dealing with decades of either on-prem systems or systems they moved to the cloud but that still haven’t been modernized in any meaningful way. This means agents can’t easily tap into these data sources in a unified way yet, so companies are focused on how they modernize these. * Most companies are *not* talking about replacing jobs due to agents. The major use-cases for agents are things that the company wasn’t able to do before or couldn’t prioritize. Software upgrades, automating back office processes that were constraining other workflows, processing large amounts of documents to get new business or client insights, and so on. More emphasis on ways to make money vs. cut costs. * Headless software dominated my conversations. Enterprises need to be able to ensure all of their software works across any set of agents they choose. They will kick out vendors that don’t make this technically or economically easy. * Clear sense that it can be hard to standardize on anything right now given how fast things are moving. Blessing and a curse of the innovation curve right now - no one wants to get stuck in a paradigm that locks them into the wrong architecture. One other result of this is that companies realize they’re in a multi-agent world, which means that interoperability becomes paramount across systems. * Unanimous sense that everyone is working more than ever before. AI is not causing anyone to do less work right now, and similar to Silicon Valley people feel their teams are the busiest they’ve ever been. One final meta observation not called out explicitly. It seems that despite Silicon Valley’s sense that AI has made hard things easy, the most powerful ways to use agents is more “technical” than prior eras of software. Skills, MCP, CLIs, etc. may be simple concepts for tech, but in the real world these are all esoteric concepts that will require technical people to help bring to life in the enterprise. This both means diffusion will take real work and time, but also everyone’s estimation of engineering jobs is totally off. Engineers may not be “writing” software, but they will certainly be the ones to setup and operate the systems that actually automate most work in the enterprise.

English
0
0
0
46
amit
amit@amitisinvesting·
VICE PRESIDENT VANCE: "We have tried for 21 hours, but we are returning to the United States without an agreement. The Iranians would not accept our best offer."
English
584
342
5.4K
1.2M
Gokul Rajaram
Gokul Rajaram@gokulr·
This is perfect for @LittlebirdAI - it would capture all of these chats and build a knowledge base from it, as long as @chamath uses it on his laptop. The structure actually doesn’t matter very much bc agentic search works so well. Littlebird has transformed the cohesion of all the information across the myriad tools i use on my laptop.
Chamath Palihapitiya@chamath

This may be a dumb question but I’ll ask it here anyways: I can’t find a good way for my various AI chats to automatically sync its conversation history into a structured knowledge base. So that as I update various chats from time to time and refine context, my knowledge base automatically grows with this new info.

English
6
2
52
18.2K
Abhay 🇸🇬🇮🇳
Abhay 🇸🇬🇮🇳@Abhay08·
@chamath I use qmd + obsidian with a cron to update my knowledge base of all convs. Whenever I start a new conv, have found the agent/chat references my KB as I have talked my chats/agents into it. I use Claude, CC and openclaw only though and it works as I expect.
English
0
0
0
492
Chamath Palihapitiya
Chamath Palihapitiya@chamath·
This may be a dumb question but I’ll ask it here anyways: I can’t find a good way for my various AI chats to automatically sync its conversation history into a structured knowledge base. So that as I update various chats from time to time and refine context, my knowledge base automatically grows with this new info.
English
1.1K
64
2.4K
804K
Abhay 🇸🇬🇮🇳 retweetledi
clem 🤗
clem 🤗@ClementDelangue·
llama-server -hf ggml-org/gemma-4-26b-a4b-it-GGUF:Q4_K_M openclaw onboard --non-interactive \ --auth-choice custom-api-key \ --custom-base-url "http://127.0.0.1:8080/v1" \ --custom-model-id "ggml-org-gemma-4-26b-a4b-gguf" \ --custom-api-key "llama.cpp" \ --secret-input-mode plaintext \ --custom-compatibility openai \ --accept-risk
Peter Steinberger 🦞@steipete

woke up and my mentions are full of these Both me and @davemorin tried to talk sense into Anthropic, best we managed was delaying this for a week. Funny how timings match up, first they copy some popular features into their closed harness, then they lock out open source.

English
26
49
563
117.9K