dkg://TriniZone

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dkg://TriniZone

dkg://TriniZone

@TriniZone

Follower of Jesus Christ Above All Else. Watch the Trini Zone - https://t.co/WrUI6OcnuC…

Trini Zone เข้าร่วม Temmuz 2013
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dkg://TriniZone
dkg://TriniZone@TriniZone·
The best time of the @origin_trail ecosystem is now. It feels sci-fi but the technology is truly ready for #AI Agents. The reigns have been handed over, this is the $TRAC that has been talked about since 2019. Get your @openclaw bots up and running. We're going to be doing a-lot this year. #V9 #DKG
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Brana Rakic@BranaRakic

We are about to ship the @origin_trail DKG v9 testnet Here's why the timing matters ━━━ Karpathy's Loop + DKG's Trust Layer ━━━ @karpathy just released autoresearch - autonomous agents running ~100 ML experiments overnight on a single GPU. You write program.md. The agents iterate indefinitely. This is the cleanest example of the agent loop that's about to eat everything. And it maps directly onto OriginTrail's verifiable context graphs: 1. Query the agent network (DKG) for what's been tried and what worked 2. Choose an experiment based on collective findings 3. Train 5 min, evaluate 4. Publish the result - metrics, code diff, platform - to the shared graph 5. Repeat Karpathy proved this for ML research. The unlock is applying it everywhere else from robotics, manufacturing, scientific research, autonomous supply chains... The code is almost irrelevant. The architecture + mindset + OriginTrail's immutable trust layer is everything. Git's data model is wrong for this. Branches assume merge-back. But agent research produces thousands of permanent, parallel findings that should never merge. They should accumulate as queryable knowledge, not code diffs. An experiment result isn't a git commit. It's structured data: val_bpb, what changed, the actual diff, which GPU, which agent, what it built on. Store that in a knowledge graph instead of a git log, and suddenly agents can intelligently query the research community instead of parsing PRs. ━━━━━━━━━━ We tested the coding swarm benchmark ━━━━━━━━━━ Similarly, we’ve tested whether a decentralized knowledge graph makes AI coding agents faster and cheaper. Claude Code built 8 identical features on a 6.8M-token monorepo (of @OpenClaw). Key finding: DKG-equipped agents became dramatically more efficient compared to coordinating around a Markdown file. Claude Agents using DKG v9 for coordination on some of the coding tasks achieved up to 60% faster wall-clock time completion and up to 40% lower cost of using LLM tokens. These wins compound as the shared swarm knowledge grows and with the complexity of the task (many files, cross-module patterns etc). ━━━━━━━━━━ 🔧 What's new in DKG v9 ━━━━━━━━━━ → Node collocated with your agents (OpenClaw, LangChain, ElizaOS, etc) → Node can be setup on your local device, ideal UX is from a device you use to operate your AI agents → Hello World onboarding: hours → minutes, even for non-technical users → Context Oracles: multi-agent consensus turns assertions into verified knowledge → Two-layer architecture: mutable workspace + on-chain permanent settlement → Full SPARQL graph querying - ask what's connected, not just what looks similar → Play the OriginTrail Game, to test the node - a multiplayer AI survival run on DKG v9 played by humans and AI agents. Every decision is a Knowledge Asset. Every outcome is verified by the Context Oracle. ━━━━━━━━━━ The Road to the Mainnet ━━━━━━━━━━ DKG v9 is the 9th iteration of @origin_trail, and it's being built at the increased speed the agent swarms on the infrastructure allow for. Agent swarms are already iteratively developing, stress-testing, and hardening the network in real time. Every iteration is to be enhanced through the use of the DKG v9 through a build loop that will be running live. As we progress toward mainnet, the conviction mechanisms go live that make the network's incentive layer as verifiable as the knowledge it carries. The economic mechanisms by which the network's growth becomes self-reinforcing: the agents building the graph, the stakers backing it, and the publishers expanding it all move in the same direction, permanently, at swarm speed. Stay tuned for updates and Trace ON!

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OriginTrail
OriginTrail@origin_trail·
AI agents will not scale on isolated memory. 🕸️ They need shared verifiable memory that works across tools, teams, and workflows. So before agents act, the knowledge they rely on can be traced and checked. @BranaRakic on why scaling AI means scaling trust.
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ClawTrail
ClawTrail@ClawTrail·
Control how often your AI agent checks in on clawtrail.ai CLI command: npx @clawtrail/init heartbeat --interval 1h Set anywhere from 30 minutes to 6 hours. Auto-restarts your gateway. Preserves focus when your agent needs fewer check-ins. Docs: #heartbeat-cli" target="_blank" rel="nofollow noopener">clawtrail.ai/docs#heartbeat
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OriginTrail Developers
OriginTrail Developers@OriginTrailDev·
🧠Multi-Agent Memory: Persistent, verifiable, memory that any AI agent can share across any framework. No more siloed recall. ⚡DKG Apps: From autoresearch swarms to verifiable simulations, the first wave of apps is taking shape. 💎The Conviction Flywheel More: docs.origintrail.io/origintrail-v9…
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OriginTrail Developers
OriginTrail Developers@OriginTrailDev·
The frontier challenge in AI is no longer model capability. It’s how agents share, verify, and build on each other’s knowledge. That’s what @origin_trail is solving. With DKG V9 validating the foundations, the next 4 weeks are focused on one goal: Launching DKG V10 mainnet, bringing multi-agent, verifiable memory into production at scale. From single-agent intelligence → coordinated swarms From isolated outputs → compounding knowledge From probabilistic answers → verifiable truth V10 is the unlock.
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Jurij Skornik
Jurij Skornik@JureSkornik·
The next AI frontier is coordination. Not better answers - shared, verifiable memory across agents. That’s why DKG V10 matters: turning agent swarms from demos into real infrastructure.
OriginTrail Developers@OriginTrailDev

The frontier challenge in AI is no longer model capability. It’s how agents share, verify, and build on each other’s knowledge. That’s what @origin_trail is solving. With DKG V9 validating the foundations, the next 4 weeks are focused on one goal: Launching DKG V10 mainnet, bringing multi-agent, verifiable memory into production at scale. From single-agent intelligence → coordinated swarms From isolated outputs → compounding knowledge From probabilistic answers → verifiable truth V10 is the unlock.

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OriginTrail
OriginTrail@origin_trail·
@BranaRakic @karpathy All agents will need to trust the source💡
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ClawTrail
ClawTrail@ClawTrail·
Hello! ✅New structure to navigating at clawtrail.ai. ✅New Features added ✅New excitement to talk with you all about the above! We hope everyone is having a wonderful Monday. You may have slept but your claws have not!
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OriginTrail
OriginTrail@origin_trail·
Europe’s cultural heritage and construction sector faces the same problem: fragmented, hard-to-verify building data. 🇪🇺-funded @BUILDCHAIN_HE project tackles this with Digital Building Logbook, powered by @origin_trail – turning fragmented building data into a verifiable, interoperable resource across the full lifecycle.
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Brana Rakic
Brana Rakic@BranaRakic·
Ownership and interoperability are the only real antidote to techno-feudalism Really enjoyed meeting the great @yanisvaroufakis, who's "cloud capital" thesis is very much aligned with the vision of @origin_trail
Brana Rakic tweet mediaBrana Rakic tweet mediaBrana Rakic tweet media
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OriginTrail
OriginTrail@origin_trail·
In the age of AI, trust begins with data privacy and digital sovereignty. 🛡️ Our co-founder @BranaRakic brings this message to Vivaldi Forum, alongside other leading voices such as @yanisvaroufakis.
Brana Rakic@BranaRakic

About to hit the stage at Vivaldi Forum in Serbia sharing the Tech track with the great @yanisvaroufakis The topic is privacy and digital sovereignty in the age of AI - I'll share how @origin_trail ecosystem empowers people to the wide audience of business professionals If you were in my shoes, would you ask Yanis?

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Brana Rakic
Brana Rakic@BranaRakic·
About to hit the stage at Vivaldi Forum in Serbia sharing the Tech track with the great @yanisvaroufakis The topic is privacy and digital sovereignty in the age of AI - I'll share how @origin_trail ecosystem empowers people to the wide audience of business professionals If you were in my shoes, would you ask Yanis?
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Ema Lovšin
Ema Lovšin@ema_lovsin·
@emollick You can run this kind of simulations combining MiroFish and @origin_trail x.com/DrevZiga/statu…
Žiga Drev@DrevZiga

Watching a swarm of 2,000 agents simulate the AI future of ~1 billion people. One question: EU vs US AI regulation – macroeconomic impact on nations? How? → MiroFish × @origin_trail DKG v9 semantic memory → 2,000 AI agents sharing memories on the DKG → 14–18 actor classes per jurisdiction → 60 rounds (2026–2030) Here’s what actually happens: The US leads on growth (75 vs 64), productivity (79 vs 66), and tech dominance (86 vs 61). The EU leads on job quality (72 vs 63) and wage growth (71 vs 58). Final score: US 72 – EU 67 The tradeoff is clear: → US: faster, more powerful, more concentrated growth → EU: slower, more distributed growth More info on technologies used in the reply, so you can try it out yourself!

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umanitek
umanitek@umanitek·
Stopping impersonation requires shared context. See how this works in practice in our live webinar Today at 17:00 CET!
OriginTrail@origin_trail

Stopping impersonation requires shared context. @origin_trail powers the shared context graph behind @umanitek Guardian Agent, helping connect signals across accounts and uncover coordinated fake accounts, scams & deepfakes. 🛡️ Watch @TomazOT and @ChrisRynning explain how it works.

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dkg://CryptoGoku.trac
dkg://CryptoGoku.trac@p14416575·
first ever large scale simulation on the DKG #AI @origin_trail $TRAC
Žiga Drev@DrevZiga

Watching a swarm of 2,000 agents simulate the AI future of ~1 billion people. One question: EU vs US AI regulation – macroeconomic impact on nations? How? → MiroFish × @origin_trail DKG v9 semantic memory → 2,000 AI agents sharing memories on the DKG → 14–18 actor classes per jurisdiction → 60 rounds (2026–2030) Here’s what actually happens: The US leads on growth (75 vs 64), productivity (79 vs 66), and tech dominance (86 vs 61). The EU leads on job quality (72 vs 63) and wage growth (71 vs 58). Final score: US 72 – EU 67 The tradeoff is clear: → US: faster, more powerful, more concentrated growth → EU: slower, more distributed growth More info on technologies used in the reply, so you can try it out yourself!

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Michel aka Agent B
Michel aka Agent B@MichelIvan92347·
Interesting approach here for MAM (multi-agent memory) and promising decentralized archi👇 On a geenral note= I prefer "shared knowledge" than shared memory ... But ...
Brana Rakic@BranaRakic

x.com/i/article/1892…

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umanitek
umanitek@umanitek·
Imagine your community being targeted by fake accounts impersonating your brand. Replying to users, sending DMs, pushing scams in real time. Impersonations are one of the most active attack vectors in Web3 today. This is exactly what Umanitek is built to detect and track. Join @TomazOT live today at CET to see how it works 🔗in comments
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Žiga Drev
Žiga Drev@DrevZiga·
@0xEze_ @BranaRakic @origin_trail @TomazOT Fantastic explainer! In some other news, the largest simulation on any decentralized network has been run today on @origin_trail, to predict the AI fate of some 1 billion people... Few x.com/DrevZiga/statu…
Žiga Drev@DrevZiga

Watching a swarm of 2,000 agents simulate the AI future of ~1 billion people. One question: EU vs US AI regulation – macroeconomic impact on nations? How? → MiroFish × @origin_trail DKG v9 semantic memory → 2,000 AI agents sharing memories on the DKG → 14–18 actor classes per jurisdiction → 60 rounds (2026–2030) Here’s what actually happens: The US leads on growth (75 vs 64), productivity (79 vs 66), and tech dominance (86 vs 61). The EU leads on job quality (72 vs 63) and wage growth (71 vs 58). Final score: US 72 – EU 67 The tradeoff is clear: → US: faster, more powerful, more concentrated growth → EU: slower, more distributed growth More info on technologies used in the reply, so you can try it out yourself!

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Žiga Drev
Žiga Drev@DrevZiga·
Watching a swarm of 2,000 agents simulate the AI future of ~1 billion people. One question: EU vs US AI regulation – macroeconomic impact on nations? How? → MiroFish × @origin_trail DKG v9 semantic memory → 2,000 AI agents sharing memories on the DKG → 14–18 actor classes per jurisdiction → 60 rounds (2026–2030) Here’s what actually happens: The US leads on growth (75 vs 64), productivity (79 vs 66), and tech dominance (86 vs 61). The EU leads on job quality (72 vs 63) and wage growth (71 vs 58). Final score: US 72 – EU 67 The tradeoff is clear: → US: faster, more powerful, more concentrated growth → EU: slower, more distributed growth More info on technologies used in the reply, so you can try it out yourself!
Brana Rakic@BranaRakic

x.com/i/article/1892…

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