Mingzhe Wang

@mzwang1030

hi

hi

Skill iconPython
Skill iconSolidity
Node.js
Skill iconTypeScript
Shell

Beijing, China

Devfolio stats

Devfolio stats

2

projects

2

2

prizes

2

2

hackathons

2

0

Hackathons org.

0

Top Projects

Top Projects

Project Image
ZKLife:zk-enhanced on-chain AI Gaming

A cutting-edge Game of Life version featuring on-chain cost-efficiency, AI opponents, and NFT rewards, safeguarded by zero-knowledge proofs (zkp)

Our solution addresses two critical pain points in current on-chain gaming: Cost Efficiency: On-chain gaming can be prohibitively expensive. To tackle this, we've adopted zero-knowledge proofs (zkp) to prove the entire evolution of the game. This significantly reduces costs while ensuring the game remains verifiable and fair. Enhanced Gameplay: Building upon the foundation of Conway's Game of Life, we've introduced two-player competitive versions and incorporated AI agents. This introduces exciting gameplay dynamics, including player-versus-AI matches, with NFT rewards upon victory. By addressing these issues, our on-chain game not only becomes more accessible due to reduced costs but also offers richer and more engaging gameplay experiences.

D

DamnFair

Team DamnFair, pioneering a verifiable benchmark to safeguard against MLaaS scams and ensure the integrity of machine learning services

Our Approach: Our solution is built upon a comprehensive architecture comprising four key modules: Decentralized Machine Learning Task Matching Platform: Leveraging AI algorithms, this module efficiently matches machine learning tasks with contributors possessing idle computational resources. Through intelligent task allocation, we optimize resource utilization. Zero-Knowledge Proof for Training Process: We integrate zero-knowledge proofs (zk) into the training process, ensuring cryptographic verification of accurate task execution without revealing sensitive data. This zk-proof technology guarantees task integrity while preserving user privacy and model confidentiality. On-Chain Verification and Payment Trigger: Utilizing Web3 and blockchain, we establish a transparent, tamper-proof ledger where zk-proofs are verified. When tasks are validated, predefined smart contracts trigger secure payments, ensuring trustless, automated, and instantaneous transactions. Incentive Mechanism within the Ecosystem: The ecosystem incorporates Web3 technology to create smart contracts governing incentives. Contributors are rewarded in cryptocurrency for their computational contributions, fostering a vibrant, self-sustaining community. By intertwining task matching, zero-knowledge proofs for task verification, blockchain-based transparency, and a robust incentive mechanism, our solution ensures a secure, efficient, and rewarding environment for users and contributors alike. This strategic integration of AI and Web3 technologies forms the backbone of our innovative approach, revolutionizing the landscape of decentralized machine learning tasks.