Everlyn AI Project Depth Research Report



Project Overview
Everlyn AI is a decentralized AI video generation infrastructure project founded by former Meta engineers, claiming to create "the world's first autonomous video decentralized infrastructure layer". The project focuses on its core competitive advantages of "15 seconds to generate vs industry 5 minutes" speed and blockchain-integrated proof of creation functionality.

Core Team and Background

Technical Features and Advantages
Speed and cost advantages
Generation Speed: 15 seconds vs Industry Standard 5 minutes

Cost Efficiency: 25 times cost reduction, 4 times speed increase

Technical implementation: Achieved through parallel processing, optimized diffusion, and customized GPU memory handling.

Core Technology Architecture
Everlyn-1 Model: The first open-source autoregressive foundational video model

Blockchain Integration: Each rendering is written to the blockchain, providing tamper-proof timestamp proof.

Decentralized Infrastructure: Self-developed Layer-1 Blockchain + Agent API Network

Financing and Partnerships
Funding support

Key partners
Aethir: Provides decentralized GPU computing power and a joint ecosystem fund

Xenea: Introduces video generation tools to a community of 4 million user wallets

Kaito: Points Activity System Integration

Business Model and Token Economics
Charging Model
Free version: No credit card required, unlimited image generation

Pro Version: Video rendering every 5 seconds segment $0.016

LYN Token Economy
Total Supply: 1 billion LYN tokens

Function: API calls, proxy operations, computing power leasing payment

Incentive mechanism: Nodes earn LYN tokens by running video inference or storage tasks.

Project Roadmap

Decentralized Infrastructure
Calculation Layer: Providing distributed inference computing power in collaboration with Aethir's DePIN GPU cloud.

Storage Layer: Integrated with Xenea to provide decentralized dynamic storage

Protocol Layer: Self-developed L1 Blockchain + Agent API Network

Current status
The LYN token has not yet officially launched its smart contract.

The mainnet and tokens are pending launch, currently mainly for testnet activities.

Collect seed users through the Kaito points activity.

Competitive Analysis
Main Competitors

Competitive Advantage
Technical Differentiation: Significant Speed and Cost Advantages

Open Source Strategy: Public code repository attracts Web3 developers

Blockchain Integration: Unique On-Chain Creation Proof Function

Team Background: Research Depth of Former Core Team of Meta AI

Risk Assessment
Main risk points
Capital Restriction: Currently, the capital base is limited (HKD 300,000 seed fund)

Technical validation: The "world's fastest" claim lacks third-party benchmarking.

Market Competition: Facing well-funded competitors like OpenAI and Adobe

Regulatory risks: Compliance issues of depth forgery technology

Points to Observe
The attitude of regulatory authorities towards on-chain video fingerprinting technology

The sustainability of the points economy and airdrop performance

Comparison and validation against products of mature competitors

Conclusion
Everlyn AI occupies a unique position in the AI video generation field with its technical background from the former Meta team, aggressive open-source decentralized positioning, and significant performance claims. The project's differentiation mainly lies in its verifiable generation speed, low cost, and token-driven proxy layer.
@Everlyn_ai
AGENT0.86%
ATH-4.74%
KAITO-5.9%
L1-0.3%
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