AI’s Knowledge Layer turns human knowledge into on-chain assets with royalties. 1st @Binance Booster.

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Teaching a robot to pick up objects is hard. Teaching it to operate them is harder. Our Appliance-Knobs Dataset on @huggingface focuses specifically on this type of fine-grained interaction. It features detailed visual data tailored for capturing the subtle geometric and functional variations of rotary controls. What makes it different: 1️⃣ Multi-Angle Views: Paired images (front & side) for every knob, giving models the multi-perspective data needed for robust 3D shape estimation. 2️⃣ Specialized Focus: A deep dive into electrical appliance knobs—an underrepresented class crucial for fine-grained object understanding. 3️⃣ Precision Ready: Optimized for state recognition and exact knob angle/position estimation. Built for: Multi-View Object Recognition | 3D Shape Reconstruction | Generative AI Training. 🔗 Download the dataset: huggingface.co/datasets/Coda…
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Three questions the AI data industry hasn't answered well: 1. When crowdsourced data trains a model, does anyone besides the buyer own the outcome? 2. If a dataset's quality improves through ongoing human verification, who accumulates the credit? 3. When a licensed model gets deployed in production, does any value route back to the original contributors? Codatta is building the infrastructure to make these questions answerable — and the answers enforceable.
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Meet more judges of Bitget AI Hackathon S1! Built by teams shaping the future of AI and crypto infrastructure. 🥇 Builders know builders. 🏆 Compete for a $50,000 USDT prize pool Submit now: forms.gle/CEGB6fRtuobD3bCj8 CN: forms.gle/wemHkddKAxR3wFFz9 Luki Song (@ChainbaseHQ ) Vlad Komissarov (@EVEDEX ) Leo (@cysic_xyz ) Yi Zhang (@codatta_io )
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Robotics companies need training data that can't be scraped from the internet. Every motion sequence, grasp attempt, and navigation decision requires purpose-collected, human-labeled footage — verified to a standard where the output can actually be trusted in a physical environment. Codatta's Robotics frontier is where contributors build that dataset from the ground up. We've already open-sourced one: RoboManip-Traj-Demo — manipulation trajectories with fine-grained spatial and pose annotations, live on Hugging Face. Explore & download now 👇 huggingface.co/datasets/Coda…
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High-fidelity datasets are the foundation of next-generation embodied AI, robot learning, and physical intelligence and our partner @codatta_io is advancing the frontier of robotics data infrastructure on @huggingface as one of the core contributors. Its Manipulation Trajectory dataset captures fine-grained robot-object interactions with precise spatial and temporal annotations, enabling research in imitation learning, trajectory prediction, manipulation planning, and control. Complementing this, the Appliance Knobs dataset provides richly annotated multi-view observations of rotary controls to support 3D geometry understanding, state estimation, pose tracking, and interaction-aware perception. Together, these datasets help train the next generation of robotic foundation models capable of understanding and acting in the physical world. Explore Codatta's Manipulation Trajectory and Appliance Knobs datasets on Asmora today: asmora.io/mcp-detail/model.h… asmora.io/mcp-detail/model.h…
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Exchange hot wallets are some of the most active addresses onchain — and most of them sit unlabeled. Codatta's Cex Hot Wallet task lets contributors map them, address by address, and earn rewards for every verified submission. A cleaner map means better compliance and analytics downstream. Trade on a CEX? Start contributing: app.codatta.io/app/frontier/…
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Data work usually pays once. You label, you get paid, and the value you helped create moves on without you. Codatta is built around a different model — every contribution is fingerprinted onchain, turning it into an ownable asset. When that data earns downstream, smart contracts can route royalties back to the people who made it. Own what you contribute.
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Two Truths and a Lie — AI data edition. One of these is false. Which one? 1. A single mislabeled image can quietly degrade an entire model. 2. Most public AI datasets list who labeled them. 3. Codatta verifiers re-check contributions before they count. Drop your guess 👇
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Caught an AI getting it wrong? That's a Frontier contribution. Codatta's Correct LLM's Mistakes task: find a flawed model response, screenshot it, submit the correct answer. Earn up to 100 points per approved contribution. Tutorial below 👇
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AI training runs on human data. Contributors rarely get to prove — or own — what they gave. Codatta is building the missing layer: Proof of Contribution, on-chain. - every submission is fingerprinted and traceable - every contributor holds an Ownership Token - every use triggers royalties back to the source
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Ever thought about joining a Hackathon without any coding? Just describe your idea in natural language Bitget AI will turn it into a strategy and bring it live That’s the vibe of Bitget Hackathon S1 $50,000 USDT in prizes Register now:bitget.com/campaigns/d8a2a61…
Meet the judges for Hackathon S1! Backed by: @Bitget @alibaba_cloud @Alibaba_Qwen @mulerun_ai @ForesightVen @Foresight_News Get your build in front of the people backing Agentic Trading. $50,000 USDT for the grab. Register now! 👉bitget.com/campaigns/d8a2a61…
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Have you ever asked two AI models the same question and gotten different answers? That's exactly what this task is about. Find an objective question where two AI models give different answers. Submit both responses with screenshots, plus what you believe is the correct answer. Each valid submission helps pinpoint real knowledge gaps in today's top models — and earns you 100 points. Watch the tutorial 👇
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Most data pipelines give you a choice: accuracy or scale. High-quality labels? Slow and expensive. Fast, scalable collection? Noisy and unreliable. Codatta's hybrid validation doesn't ask you to pick. Every contribution goes through a transparent flow — contributor submits, verifier confirms, result gets recorded with a risk rating. Each step is traceable. Accuracy and scale. Both.
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Robotics Knowledge Quiz #04🤖 This robot arm is doing some serious work. Is it mobile or static? Drop your answer below! 👇
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💡 The Answer: STATIC! Look at the base — it's bolted directly to the workbench rail. The arm can't go anywhere. 🔩 Reminder: "mobile/static" = does the robot platform move from place to place? The arm itself can swing, extend, rotate — but if the base stays in one spot, it's static. Don't be fooled by all the movement! 🦾
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Annotate crypto addresses and earn rewards. Southeast Asia CEX Hot Wallet Collection — Indonesia · Thailand · Cambodia. Trade on a local CEX? This one's for you. Submit the exchange hot wallet addresses — 50 points each. app.codatta.io/app/frontier/…
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Learn how to complete the task and get rewarded. 👇
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Crypto address metadata is fragmented. Teams duplicate the same research. Centralized providers gate access. Data goes stale right when markets move fastest. Compliance, market analysis, trading — all running on incomplete maps. Codatta is building Crypto Address Annotation — a community-driven database where contributors enrich, verify, and update address data across chains. A shared intelligence layer for the whole crypto ecosystem. Open, current, community-built.
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Start here: CEX Hot Wallet Collection. Submit exchange hot wallet addresses. Annotate them. Earn rewards. 👉 app.codatta.io/app/frontier/…
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