Core Architecture & Key Functions

Key features

  • Dynamic Fractional NFTs (dfNFTs) for Computation, AI & Applications

    • Converts computing resources, AI models, and applications into dfNFTs, enabling fractional ownership, leasing, and efficient execution.

    • Provides interoperability across decentralized computing environments, ensuring seamless deployment of AI-powered workloads.

  • Smart Contract-Driven Resource Orchestration

    • Automates the allocation and execution of AI, applications, and computational tasks.

    • Uses predictive AI-based scheduling to enhance resource utilization and reduce inefficiencies.

  • Modular Computation & AI Integration

    • Supports decentralized execution of AI inference, model training, and dApp services.

    • Allows applications to access distributed computing resources on a pay-per-use basis.

  • Cloud-to-Edge AI Computing & Execution

    • Enables AI & application workloads to dynamically shift between cloud, fog, and edge layers.

    • Reduces latency for real-time AI model execution and decentralized application processing.

  • AI-Powered Security & Privacy Enhancements

    • Use zero-knowledge proof (ZKP) and homomorphic encryption for secure computation.

    • AI-driven anomaly detection enhances trust and security in decentralized networks.

  • Decentralized AI, Application & Computation Marketplace

    • Users can monetize computing, AI models, and application services.

    • Smart contracts facilitate trustless transactions and execution guarantees.

  • Decentralized Data Collection & Processing for AI

    • Data sources are tokenized and secured via smart contracts, ensuring privacy and trust.

    • AI models access real-time, distributed data for enhanced learning and adaptive intelligence.

    • Supports privacy-preserving machine learning (PPML), allowing AI models to train without compromising user data security.

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