cryptian12.nft.fuel

554 posts

cryptian12.nft.fuel

cryptian12.nft.fuel

@cryptian12

Crypto enthusiasts 🏰 @guildxyz #xdxexchange #SuiGlobalRider https://t.co/E8F3ZNIg9t ⏳@t2wrld

Katılım Kasım 2021
398 Takip Edilen9 Takipçiler
cryptian12.nft.fuel
cryptian12.nft.fuel@cryptian12·
Leveled up in the Great Gas Reckoning with ETHGas! 💪 Kiddo Jack status: 0.2504 ETH gas spent, 75 Beans earned—supporting the Gasless Future! Claim your Gas ID at ethgas.com/community/gas-…
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BOBBY
BOBBY@BOBBYBIGYIELD·
yo lambo should we run it back?
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Bitsy the Fox 🔆
Bitsy the Fox 🔆@InternBitsy·
hey chat 💬 what’s the worst thing AI could say to you?
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CMDR
CMDR@CommanderCrypto·
Updated the X app, still no grok 3 access Was looking forward to using it to up my shit posting game
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CMDR
CMDR@CommanderCrypto·
X Premium+ looks like the best deal for AI right now You get: - Early access to Grok 3 new features - Full access to Grok DeepSearch - Access to Advanced Reasoning - Increased usage limits Think Open AI is going to clap back with ChatGPT Pro cheaper?
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Joules | Sahara AI 🔆
Joules | Sahara AI 🔆@ThisIsJoules·
Decentralized data labeling is a difficult problem to solve. AI models require scale, accuracy, and diversity, but centralized approaches are costly, constrained by limited resources, and unable to scale across every domain. At the same time, decentralized systems introduce incentive misalignment, Sybil attacks, and quality control challenges, making it difficult to ensure contributors prioritize accuracy over maximizing rewards. Season 1 of our Data Services Platform was our first proof of concept to test whether a decentralized approach could work at scale while maintaining data integrity. Turns out, it works! Our peer review system effectively filtered out 17% of submitted datapoints for simple research tasks and 33% of submitted datapoints for in-depth research tasks, demonstrating its ability to reject low-quality data while preserving dataset reliability. This validation step is crucial—data is only useful if it is accurate. Among these, 92% of the peer-reviewed submissions met internal QA standards, proving that when contributors are properly incentivized and the right guardrails are in place, decentralized data collection can be both scalable and reliable. Another key takeaway is the varying value of different types of datasets. Research tasks had higher acceptance rates because they only required retrieving publicly available information or submitting personal experiences. While this data is useful, it's not particularly scarce—models can often ingest similar data from web scraping. However, unlike raw scraped data, these datapoints went through peer validation, which improves accuracy and ensures relevance, giving them a step up in comparison. More complex datasets, on the other hand, are far more difficult to source because they require contributors to generate new, high-value datapoints that don’t already exist in structured form. This became clear in our more advanced, technical tasks: while only 10% of jailbreak prompt task submissions were accepted, this still yielded 24,000+ critical datapoints essential for testing AI model safety and robustness. These types of datasets cannot simply be scraped—they must be intentionally created and validated. As we expand from 10k contributors in Season 1 to 100k in Season 2, we've taken our learnings to refine task segmentation, automate more verification steps, and implement stronger fraud detection. This is about more than just improving data labeling. It’s about redefining how datasets are built—ensuring that data quality, diversity, and integrity can scale beyond traditional methods. This work also opens the door for a more inclusive AI economy, where dataset creation is no longer monopolized by centralized players, but distributed across a global network of contributors. A system where anyone with an internet connection can participate in and benefit from AI development. The future of AI depends on high-quality, scalable data—this is how we get there. Excited for you all to read the full report. Let me know what you think! saharalabs.ai/blog/decentral…
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Sahara AI 🔆
Sahara AI 🔆@SaharaAI·
Decentralized data collection works—when done right. In Season 1 of DSP, decentralized peer review achieved 92% accuracy in internal QA, proving that properly incentivized contributors + the right guardrails can deliver high-quality AI data at scale. Here’s how 🧵👇
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Bitsy the Fox 🔆
Bitsy the Fox 🔆@InternBitsy·
sending my thoughts and prayers to duo @duolingo 🪦💚 #RIPDuo buuuutttt… does this mean there’s room for a new cute mascot in town? 👀
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Sahara AI 🔆
Sahara AI 🔆@SaharaAI·
From Data Services to Sahara Legends to Sahara AI Studio—we’re just getting started. 🔥 Massive shoutout to everyone who’s been part of this journey: 💡 Our visionary co-founders @xiangrenNLP & @tz_sahara 📢 The marketing squad @ThisIsJoules, @commandercrypto, & @JusinEllery5 🛠️ The brilliant product & engineering teams 🤝 And every single person who’s contributed—community, ops, BD, design, and beyond! If you’re not following our team yet, now’s the time. Big things ahead. 🚀 Want to be part of it? We’re always hiring 👉 jobs.ashbyhq.com/Sahara
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