Joob

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Joob

Joob

@Web3joob

content creator | exploring DeFi, AI and gaming ecosystems | airdrops explorer

เข้าร่วม Mayıs 2021
2K กำลังติดตาม2.5K ผู้ติดตาม
OCTO 🥷
OCTO 🥷@Octo0x·
It's time to change history Drop your wallet if I've replied to you, you're on the list Hurry up and save your @PenguishETH
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Lea
Lea@Lea_EFC·
Even if you have Zero Followers Say just Hello 👋 Ppl will follow you 💁‍♂️💁‍♀️
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Joob
Joob@Web3joob·
@7_Tolani for you way dey vacation?😂😂
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Alvin
Alvin@7_Tolani·
I like as everybody money don finish
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ONYEKA V ™
ONYEKA V ™@_Sironyeka·
Bro to Bro: build your x account now Just say “hello” and gain 400 mutuals here.
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BL3ED | Meraki
BL3ED | Meraki@BL3_EED·
Just saw a project raise $10M and I still can’t explain what the they actually do. It’s honestly insane when you sit with it. Everyone is building. Nobody is communicating. Right now I can easily find: >> 100 projects with genuinely good tech >> Maybe 5 that can explain what they do in one clear sentence >> Barely 2-3 that actually tell their story well The market doesn’t reward the best product. It rewards the best communicated product.
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𝗠𝗼𝘀𝗲𝘀🎒
gPerle Chat @PerleLabs is not just building a workflow, it’s architecting a compounding intelligence system designed for long term data excellence. At its core is a simple but powerful idea that human expertise should not be a one-off input but should be captured, verified, and continuously leveraged to improve systems over time. Here’s how the engine works: ➜ verified expert annotation ensures that every piece of data begins with domain level accuracy 
➜ human validated model inputs reduce noise and strengthen downstream performance 
➜ onchain reputation scoring tracks contributor reliability, consistency, and depth of expertise over time 
➜ reputation weighted task allocation ensures that the most capable contributors are matched with the most critical and complex tasks 
The cycle repeats each loop refining the system further but the real innovation lies in what happens over time. As contributors continue to participate, they build verifiable reputations. These reputations act as signals of trust, unlocking access to higher-value, more specialized work across domains. In a world increasingly driven by AI, the question is no longer just about access to data but about the quality, reliability, and evolution of that data over time. Perle Labs answers that question with a system where data quality doesn’t just scale, it compounds. #PerleAI #ToPerle — participating in @PerleLabs community campaign.
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Joob
Joob@Web3joob·
@Dasfruits 0xCeEf63384E7F3D4d4bE0caE4427D3D7bBF4Aa43b
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DD
DD@Dasfruits·
4 minutes 20 seconds wallets and debit card information GO
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Joob
Joob@Web3joob·
@Dasfruits 0xCeEf63384E7F3D4d4bE0caE4427D3D7bBF4Aa43b
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DD
DD@Dasfruits·
Who’s online? Drop a wallet 5 minutes GO
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Empress Dee
Empress Dee@IamEmpressdee·
"I can't tell you what I do because if I do, the two of us might be in danger" I should've known he was unemployed 😭 I wouldn't have minded 💔
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Tobi4real.brit | $BRIT $RFOR $CHULO
🚧 @BritCardMeme Progress Update 🇬🇧 Momentum is building behind the scenes and things are shaping up nicely 👇 ✅ Wallets currently in test mode..... development progressing smoothly 🎮 Game now in Phase 2 of 4 .... steady advancement toward launch 🛠️ Continuous background work ongoing to strengthen the ecosystem 💬 Community staying active and locked in We’re not here for noise — we’re building something that lasts. Stick with us… the wave is only getting started 🌊 $BRIT #BRIT #Crypto #GameFi #Memecoin
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pariaa.base.eth
pariaa.base.eth@chillparia·
.@ledger_business is pointing at a real shift Software security was always temporary and AI just made that obvious. the move from code to hardware might define the next decade 🔐 worth a deeper read ↓
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Pascal Gauthier @Ledger@_pgauthier

@blockworksDAS this week was all about security, but … "Probably secure" isn’t a strategy, it’s a liability. Software-only MPC was a bridge, but Tier-1 institutions need a Physical Root of Truth. Today, @ledger_business reclaims the hardware throne: Introducing Ledger Enterprise HSM On-Premise. ledger.com/blog-ledger-en…

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Merlin
Merlin@MerlinOnWeb3·
market crash looks so much better like that
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Mevieson 001♤♠︎
Mevieson 001♤♠︎@Methuselav001·
As a medical student, you start to realize that discovering something isn’t the hardest part… Getting it funded, recognized, and actually used in the real world is where things get complicated. A lot of valuable ideas never make it past that stage. What if that could change?
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Sardauna
Sardauna@Abdulla8187·
AI is quietly becoming one of the most critical pillars of national security ~ not just because of what models can do, but because of what they are trained on. Today, the global AI ecosystem is facing a data integrity crisis. Poisoned datasets, synthetic content loops, and opaque data supply chains are no longer theoretical risks ~ they are real challenges already shaping the reliability of AI systems. Agencies like DARPA have spent years researching adversarial data threats, while cybersecurity authorities continue to warn that manipulated or poorly verified data can undermine entire AI infrastructures. At the same time, we are approaching a tipping point. More models are being trained on AI-generated content derived from previous AI outputs. These feedback cycles gradually erode quality and introduce systemic errors, a phenomenon researchers increasingly describe as model collapse. This might be manageable in conversational tools where mistakes can be corrected. But as AI moves into physical and high-stakes environments ~ from logistics automation and surgical assistance to autonomous vehicles and defense systems ~ the tolerance for unreliable intelligence disappears. In these domains, bad data doesn’t just reduce performance. It introduces real-world risk. This is the context in which @PerleLabs is building what they describe as a sovereign intelligence layer for AI. Instead of relying on black-box pipelines, their approach focuses on expert-validated, human-verified datasets with on-chain auditability. The idea is simple but powerful: intelligence systems should be able to trace outputs back to credible human expertise. To coordinate this ecosystem, the introduction of the PRL token represents more than a typical crypto incentive model. It is designed as a mechanism to align contributors, validators, developers, and data consumers around a shared mission ~ establishing human-verified AI data as a foundational standard for the intelligence age. Participants earn tokens through meaningful activity such as contributing datasets, validating information, and building applications within the protocol. The tokenomics structure also emphasizes long-term alignment. A significant portion of supply is allocated to the community and ecosystem growth, while team and investor allocations follow strict vesting schedules with no accelerated unlocks or preferential carve-outs. This gradual release model helps prevent sudden market shocks and reinforces commitment to sustained network development. Beyond rewards, PRL is expected to unlock additional utility across the platform. Holding or staking tokens may provide priority access to premium tasks, early engagement with new product features, and preferential participation in enterprise-focused workflows. As the AI data landscape continues to evolve, token holders could also be positioned closer to emerging opportunities at the frontier of model training, data curation, and feedback optimization. With its contributor network expanding and enterprise integrations already underway, the launch of PRL appears to represent a final step in operationalizing a broader infrastructure vision. Trusted intelligence systems will not emerge accidentally ~ they will be built through transparent coordination between human expertise, robust incentives, and verifiable data pipelines. As the window to define credible AI data standards narrows, initiatives focused on accountability and provenance may play a decisive role in shaping how future intelligent systems are trusted and deployed. #PerleAI #ToPerle Participating in @PerleLabs community campaign
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ELIMØNI🤍
ELIMØNI🤍@elimoni200·
Most Web3 growth today is inflated. Bots, recycled engagement, and paid hype dominate the metrics. XOOB is taking a different route by focusing on verifiable, on-chain growth, where every action can actually be tracked and proven. That alone changes how projects measure success.
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Famernonso👩🏽‍🌾📈base.eth
Happy thursday, DeFi fam We still have a massive liquidity fragmentation problem. Assets & yield are scattered across chains. Liquidity gets stuck instead of flowing where it's needed. That’s where @RiverdotInc comes in. They are building a chain abstraction stablecoin system to connect liquidity across ecosystems. And this is what we actually need in our ecosystem. Then @River4fun adds the social layer. Earn RiverPts through real activity. Join campaigns. No complex setups. Tech added with community growth working in one loop. I actually feel this is a step toward a more connected, alive DeFi. Always DYOR.
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youn
youn@younweb3·
Average male: - gets a compliment - immediatly deflects it - walk away - think about it for three years - it was the nicest thing anyone ever said to you
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Joob
Joob@Web3joob·
𝗲𝘃𝗲𝗿𝘆𝘁𝗵𝗶𝗻𝗴 𝘆𝗼𝘂 𝗻𝗲𝗲𝗱 𝘁𝗼 𝗸𝗻𝗼𝘄 𝗮𝗯𝗼𝘂𝘁 @PerleLabs perle labs is basically bridging the missing ground between ai and trustworthy data. instead of relying on low quality datasets, they focus on human verified and onchain data to train ai more accurately. operating within the Solana ecosystem, they ensure every piece of data is transparent. at its core: ➜ it’s an ai data training protocol powered by real human input. ➜ contributors review and label data, and that process is recorded onchain. ➜ this creates verifiable, high quality datasets for better ai performance. why it matters: @PerleLabs is building infrastructure for reliable ai. in a space filled with recycled ideas and weak data, they focus on: ➜ reliability ➜ speed ➜ scalability their bigger vision: to remove friction between complex tech and real world use. they combine strong engineering, scalable design and built in security to support long term innovation. #PerleAI #ToPerle participating in @PerleLabs community campaign.
Joob@Web3joob

𝐭𝐡𝐞 𝐦𝐢𝐬𝐬𝐢𝐧𝐠 𝐥𝐚𝐲𝐞𝐫 𝐢𝐧 𝐚𝐢 𝐢𝐧𝐟𝐫𝐚𝐬𝐭𝐫𝐮𝐜𝐭𝐮𝐫𝐞 if you really understand what @PerleLabs is building, it’s actually very straightforward. ai is only as good as the data it learns from and right now, a lot of the data it learns from is unverified and generated by other ai. that might be fine for basic use cases until the decisions actually matter. think healthcare, robotics, defense, places where bad data doesn’t just affect a model, it affects real outcomes. 𝐭𝐡𝐢𝐬 𝐢𝐬 𝐰𝐡𝐞𝐫𝐞 @PerleLabs 𝐦𝐚𝐤𝐞𝐬 𝐭𝐡𝐞 𝐝𝐢𝐟𝐟𝐞𝐫𝐞𝐧𝐜𝐞 instead of relying on random crowd input, it relies on experts. the data isn’t just collected, it’s verified, tracked and made auditable onchain. with time, reputation is built around quality, so you know what you’re working with. every data has a clear root, real accountability and something most ai systems today lack trust. it also creates a two-sided system. on one side, you have companies that need reliable, compliant data. on the other, experts who can contribute, earn and build a reputation for their work. perle ties everything together, coordinating rewards with a structure that actually rewards long-term participation. so, this isn’t just about “better data. it’s about building the foundation that ai learns from in the first place. most people are focused on outputs but the real edge is in the inputs that shape them. #PerleAI #ToPerle participating in @PerleLabs community campaign.

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