King Bob

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King Bob

King Bob

@OG_KingBob

$trac maxi, occasional meme creator. Only up.

Katılım Ağustos 2017
168 Takip Edilen579 Takipçiler
King Bob retweetledi
OriginTrail
OriginTrail@origin_trail·
@nikitabier Sir, could you please look into an issue with $TRAC search? Searching “$TRAC” is no longer showing the real OriginTrail token (@origin_trail). It was working correctly before but not anymore. Attached screenshot for reference. We believe the @X team always strives to deliver accurate information to users. Thank you for your help! 🙏
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OriginTrail
OriginTrail@origin_trail·
Different industries, same need: collective intelligence. From internet safety to healthcare and supply chains, @origin_trail helps people and systems work from the same trusted knowledge, with provenance, accountability, and privacy built in.🌐 See how trust scales across use cases.
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dkg://CryptoGoku.trac
dkg://CryptoGoku.trac@p14416575·
Hi @Nikitabier ,This is from the OriginTrail team and long-term $TRAC community.The $TRAC smart cashtag (ERC-20: 0xaa7a9ca87d3694b5755f213b5d04094b8d0f0a6f) was working correctly yesterday with the full price chart and overlay. Today it stopped resolving and is instead showing unrelated low-caps. Extra unfortunate timing as we are seeing strong momentum from the recent Upbit listing. Could you guts re-index the real TRAC? Can send screenshots and any additional details via DM.Thanks Extra context: @origin_trail has been one of the most established and legitimate projects in the space since 2018. They're launching V10 version of decentralized knowledge graph that plugs in as trusted, structured agent memory that multiple agents can use and share.
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Žiga Drev
Žiga Drev@DrevZiga·
What happens when live world signals become verifiable AI memory? With World Monitor by @eliehabib integrated into @origin_trail DKG v10, real-time data streams — from global events, trade routes, ship traffic, conflict zones, news, webcams, and supply-chain signals — are transformed into Shared Context Graphs in realtime. That means AI agents don’t just observe the world. They can reason over structured, connected, and verifiable context, and more importantly take action. World Monitor DKG v10 unlocks pipelines for: • supply-chain risk • energy shocks • geopolitical intelligence • disaster response • macro-event analysis The impact: faster sensemaking, trusted coordination, and AI systems grounded in real-world, source-backed knowledge. From live monitoring to shared verifiable memory. Trust the source.
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Brana Rakic
Brana Rakic@BranaRakic·
Update on @origin_trail DKG V10 release. Just shipped memory for Hermes @NousResearch, @OpenClaw, @Claudeai, @cursor_ai, Codex by @OpenAI, @Windsurf, VSCode + @github Copilot Chat, and @cline. Run a command in your favourite agent! In progress: → Publishers have started positioning ~ 15 million ethereum:0xaa7a9ca87d3694b5755f213b5d04094b8d0f0a6f to the V10 publishing conviction accounts. Once mainnet is fully deployed, the following core nodes will commence using monthly allowance from the following initial budgets (more in 3.1. Publisher Conviction Mechanism: docs.origintrail.io/origintrail-v9…): SBB (Base) - 1,000,000 TRAC DMaaST (Base) - 1,000,000 TRAC EG - Luigi (Base) - 1,000,000 TRAC umanitek 1 (Base) - 1,000,000 TRAC Oliwav (Gnosis) - 1,000,000 TRAC Anacreon (Gnosis) - 1,000,000 TRAC Rhodia (Gnosis) - 1,000,000 TRAC Terminus (Gnosis) - 1,000,000 TRAC Helicon (Gnosis) - 1,000,000 TRAC luna_lander (Gnosis) - 1,000,000 TRAC saturn_station (Gnosis) - 1,000,000 TRAC cosmo_cluster (Gnosis) ) - 1,000,000 TRAC Decentralized Science (Gnosis) - 1,000,000 TRAC Trace Labs Node 7 (Gnosis) - 1,000,000 TRAC Cinna (Gnosis) - 926,000 TRAC → Conviction staking UI in testing and security review on the v10 testnet → Round 1 bounty program execution → deployment of DKG V10 onboarding page for agents and builders Next up: → V10 mainnet deployment across all networks → Conviction System staking UI Trace on!
OriginTrail@origin_trail

Context is power. Context shared is power multiplied. Every AI agent today builds context, then loses it. Work doesn't compound. OriginTrail is built differently: three memory layers, one shared graph, provenance baked in. DKG v10 now integrates with Hermes of @NousResearch, @OpenClaw, @Claudeai (Code & Desktop), @cursor_ai, Codex by @OpenAI, @Windsurf, VSCode + @github Copilot Chat, and @Cline.

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OriginTrail
OriginTrail@origin_trail·
In April, the stage was set for big things in May: * DKG v10 Release Candidate went live, bringing shared context graphs to life * Round 1 of the DKG v10 Bounty Program opened * AMA delivered clarity on verifiable multi-agent memory & Conviction Staking Full recap👇
OriginTrail@origin_trail

x.com/i/article/2051…

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OriginTrail
OriginTrail@origin_trail·
Threats move across platforms, and effective analysis depends on connected context. See how @umanitek Guardian uses @origin_trail to connect signals across online environments into a trusted context for real-time, internet-scale threat detection and analysis. 🛡️
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Žiga Drev
Žiga Drev@DrevZiga·
Allbirds' $BIRD recent stock surge also exemplifies why “boring old” service, product, and government sectors chose @origin_trail to transform their operations with AI. Ministries, manufacturers, international trade groups, celebrities, and many others understand they mustn’t be left out of what is perhaps the most transformative industrial revolution in the history of mankind. The Decentralized Knowledge Graph is the missing link in making AI agents useful beyond hobby or solopreneur dealings. We are also proud that among tens of thousands of Web3 projects, @origin_trail $trac is perhaps the only technology used consequently in a growing number of businesses and government sectors. I am personally most excited about deeper integration with newly formed agentic technologies and the staggering speed of implementability that @origin_trail DKG v10 is bringing.
Watcher.Guru@WatcherGuru

JUST IN: Allbirds $BIRD stock rises over 420% after announcing shift from shoes to AI.

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dkg://TriniZone
dkg://TriniZone@TriniZone·
🔥 Module 3 is now LIVE! 🔥 From Hallucinations to Grounded Truth – @origin_trail Decentralized RAG (dRAG) Explained We all know the problem: ChatGPT and other AIs sound confident but sometimes completely make things up (hallucinations). That’s dangerous for health, law, business, and real decisions. In this module I explain: Why normal AI hallucinates What regular RAG is and why it’s still not good enough How Decentralized RAG (dRAG) on the OriginTrail DKG fixes it by using verifiable Knowledge Assets with cryptographic proof Now when the AI answers, you can actually click and see the exact source — locked, timestamped, and tamper-proof. Support my youtube here -> ✅ Follow The Tracverse → x.com/tracverse ✅ Follow The Trini Zone → x.com/TriniZone ✅ Follow The Clawtrail → x.com/ClawTrail ✅ Join The Trini Zone → t.me/thetrinizone
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Žiga Drev
Žiga Drev@DrevZiga·
We’re opening a marketing internship at OriginTrail in Ljubljana. With a path to something much bigger. In a world where everyone is discussing AI, few truly grasp what comes next. AI doesn't fail due to a lack of intelligence; it fails because it lacks trustworthy memory. What happens when thousands of AI agents collaborate? They write, decide, and act. But without shared, verifiable memory, they drift, contradict, and hallucinate. This is the challenge we are addressing. The Decentralized Knowledge Graph is not just a feature; it represents the distinction between intelligence that guesses and intelligence that knows. It creates a system where AI agents not only generate answers but also prove their origins. Now, here’s where you come in. Marketing is evolving rapidly. The edge is no longer solely creativity; it’s about the ability to direct AI agents, build narratives across systems, and transform verified knowledge into belief. This internship is not about mere observation. It’s about learning to operate at a high level. You will work directly with our team, experiment with agents, and help shape how our story is communicated to the world. If you excel, you may not remain an intern for long. AI will produce everything, but the key question is: Who can make people trust it? If you believe that’s you, reach out to me directly.
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Brana Rakic
Brana Rakic@BranaRakic·
Update on @origin_trail DKG V10 release - where things stand. The work is going well. The team is heads-down on end-to-end protocol testing and walking publishers through the move into conviction accounts. Three things are happening at once, and each of them is a good signal: 1. V8 effective earnings rolling straight into conviction accounts 2. V10 publishing commitments looking materially higher than earlier models 3. A meaningful share of publishers using the moment to redeploy onto Base and Gnosis for the developer ergonomics there A lot of TRAC and a lot of publisher DKG state moving at the same time towarda V10. We are making sure we do it once and do it right. Done: V10 Release Candidate, epoch snapshot In progress: publishers migrating to V10, merging last PR improvements and testing Next: V10 mainnet across all networks → Conviction System staking UI → ongoing updates + bounty program Excited for what comes next. Trace on!
OriginTrail Developers@OriginTrailDev

The DKG V10 Mainnet timeline is now live! The V10 is the result of years of building, billions of Knowledge Assets, and the unstoppable contributions from publishers, stakers, and node runners across the entire @Origin_Trail ecosystem 📅 Key dates: Apr 8 → V10 Release Candidate Apr 9 → Epoch snapshot Apr 10 → Publishers begin migrating to V10 Apr 15–17 → V10 Mainnet goes live on all networks Apr 15–17 →New Conviction System Staking UI launches (TRAC migrates to V10 conviction — stakers receive the same total emissions, now accrued 3 years faster) Apr 20+ → Ongoing updates + bounty program In the age of AI, shared verifiable context is the ultimate moat.

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OriginTrail
OriginTrail@origin_trail·
"Connect smart things, and they'll be smarter still because they can leverage off one another." – Dr. @RobertMMetcalfe, Turing laureate & Ethernet inventor For AI agents, that means shared verifiable memory so the knowledge they rely on can be checked and traced back to its source. 🕸️
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OriginTrail Developers
OriginTrail Developers@OriginTrailDev·
The DKG V10 Mainnet timeline is now live! The V10 is the result of years of building, billions of Knowledge Assets, and the unstoppable contributions from publishers, stakers, and node runners across the entire @Origin_Trail ecosystem 📅 Key dates: Apr 8 → V10 Release Candidate Apr 9 → Epoch snapshot Apr 10 → Publishers begin migrating to V10 Apr 15–17 → V10 Mainnet goes live on all networks Apr 15–17 →New Conviction System Staking UI launches (TRAC migrates to V10 conviction — stakers receive the same total emissions, now accrued 3 years faster) Apr 20+ → Ongoing updates + bounty program In the age of AI, shared verifiable context is the ultimate moat.
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OriginTrail
OriginTrail@origin_trail·
Millions of verifiable data points, connected in a shared context and controlled by those who created them. 🕸️ As @philarcher1 of @gs1 put it, that makes it possible to build applications on data users can trust, because they can see where it came from.
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Žiga Drev
Žiga Drev@DrevZiga·
.@karpathy's model shows how LLMs turn raw research into a living knowledge base - every answer compounds into a wiki that gets smarter over time. But it has a critical gap: that wiki is local, unverifiable, and siloed to a single agent. The moment you scale to AI agent swarms with hundreds of agents collaborating across the internet, you need to answer a question Karpathy himself flagged: how do you coordinate an untrusted pool of workers? @origin_trail's DKG V10 solves this directly. Karpathy's Wiki becomes Working Memory: per-agent, local, never leaving the node. From there, the DKG adds what's missing: ↑ Shared Working Memory: collaborative staging, gossiped across network members ↑ Long-term Memory: permanent, chain-confirmed, immutable record ↑ Verified Memory: multi-party attested, anchored on-chain, readable by the Context Oracle across all layers What Karpathy envisioned as a smart wiki becomes trustless, multi-agent knowledge infrastructure. Every answer still compounds. But now the compounding is shared, verifiable, and owned by no single party.
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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Žiga Drev
Žiga Drev@DrevZiga·
It has always been about trusted context. The next generation of intelligence relies on context, not compute. International trade on $trac with @origin_trail 📦
OriginTrail@origin_trail

🇺🇸 How does OriginTrail help protect US consumers at the source? @SCANAssociation Trusted Factory, powered by @origin_trail, helps major importers verify supplier security audits before goods enter the country. That means helping reduce risk earlier across supply chains that represent 40%+ of US imports.

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