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User Docs
  • 👋Welcome to LazAI
    • ⁉️AI Data Problem
    • 💡LazAI Solution
    • ✅DAT - Data Anchoring Token
    • ✅iDAO - Individual-centric DAO
    • ✅VC - Verified Computing
  • 👩‍💻How Does it Work?
  • Built on LazAI
  • 🙋‍♀️Alith - AI Agent Framework
  • Foundation for AI Ecosystem
    • 💠Introduction
    • 🤝Data Credibility
    • ⛏️Data Mining
    • ⚖️Governance & Incentive
    • 🛣️Roadmap
    • ⁉️FAQs
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  1. Welcome to LazAI

LazAI Solution

Aligning AI with Humanity

LazAI is a next-generation blockchain network and protocol designed to solve the AI data alignment problem by introducing new asset standards for AI data, model behavior, and agent interaction.

LazAI introduces a decentralized AI infrastructure, leveraging blockchain technology to redefine the ownership, governance, and execution of AI assets. By integrating cryptographic verification mechanisms, decentralized governance, and tokenized AI asset frameworks, LazAI creates a scalable and trust-driven AI network.

Key Pillars of LazAI as follows:

1. Decentralized Governance for AI Data & Models

LazAI introduces iDAOs (Individual-centric DAOs) that function as AI-native data curation & verification hub. iDAOs are governed by token-based Quorum Consensus, ensuring that every dataset, model, or agent is transparently reviewed, verified, and governed by its community.

  • iDAOs enable collective verification and incentivized curation of data and models.

  • Contributors govern over how their data is used and rewarded, making ownership programmable and enforceable on-chain.

2. Tokenized AI Asset Framework - Powered by DATs

At the core of LazAI lies the Data Anchoring Token (DAT) - a breakthrough primitive that transforms raw data, models, and agents into verifiable, ownable, and programmable AI assets.

  • Every contribution - be it a dataset, a model, or an inference node is minted as a DAT with embedded provenance and access control.

  • These tokenized assets can be traded, transferred, reused, and monetized across the ecosystem.

  • DATs enable transparent attribution, real-time royalty tracking, and fine-grained control over how AI assets are used - empowering contributors to benefit directly from the value their data creates

3. Verifiable AI Execution with Privacy Protection

AI model training and inference occur off-chain for scalability with results anchored on-chain for verifiability & auditability.

  • LazAI supports Zero-Knowledge Proofs (ZKPs) and Optimistic Proofs to validate AI computations without revealing private data.

  • Trusted Execution Environments (TEEs) offer secure, privacy-preserving runtime environments for sensitive operations.

  • Through this Verifiable Computing Framework, users can trust AI results without needing to trust centralized intermediaries.

4. Composable & Incentivized AI Economy

In LazAI, AI components become modular building blocks in a programmable economy:

  • Developers and data providers earn DAT rewards for contributing high-quality AI assets, ensuring an aligned incentive mechanism.

  • AI models, datasets, and computational resources can be composed into higher-order AI services, creating a liquid and programmable AI economy.

These core components enable LazAI to address the most pressing challenges in AI today, and transforms the centralized AI model into a decentralized, trustless, and verifiable ecosystem for the future of intelligent applications.

Moving Beyond Traditional AI Infrastructure

LazAI represents the next evolution of AI in the Web3 era - an ecosystem where AI datasets, models, and computations are governed by decentralized protocols, secured through cryptographic proofs, and monetized through trustless tokenized systems.

By combining AI, blockchain, and decentralized governance, LazAI is laying the foundation for a fair, transparent, and high-performance AI ecosystem that is scalable, inclusive, and resistant to centralized control.

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Last updated 20 days ago

For detailed technical information, please refer to the and .

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