imajus / anonfund

Anonymus On-Chain Funding Platform

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

🥷 AnonFund is a platform for (1) anonymous (2) regulatory-friendly (3) cryptocurrency donations

Overview

AnonFund is a platform to support anonymous cryptocurrency donations.

Possible use cases:

  • Political or religious matters
  • Legal cases
  • Victim support
  • Health-related campaigns
  • ... practicaly any fund, which would benefit from the donations anonymity

Benefits:

  • Preserve donations anonymity
  • Hide the amount of assets the fund holds
  • Disclosure transaction details only to selected parties

Implementation

The platform is build on top of IronFish -- a L1 blockchain which preserves transactions anonymity by utilizing ZKP technology.

For each donation, a one-time use disposable IronFish account is used, which allows to preserve the transaction anonymity. The funds then are automatically transferred to the Company address on IronFish.

Both Donors and Campaign managers are able to export and share 🔑 View-Only Keys, allowing anyone else to view the details of the donation transactions. This helps verify the legitimacy of the source of funds.

The Sepolia ⇒ IronFish bridge is utilized to support donating with Ethereum assets by seamlessly bridging them onto the IronFish blockchain for donors. Once the Campaign is over, the owner has the option to utilize the bridge in the opposite direction, effectively transferring all campaign funds back onto the Ethereum blockchain, if desired

Sepolia Deposit address: 0x664b8b9892b7560b356ef0f8d44cbd1f6628e388

Sepolia WIRON address: 0x3dE166740d64d522AbFDa77D9d878dfedfDEEEDE

IronFish Bridge address: 1d1a1fb9fafd7de32c7f02115207d6fe9df1272f5b4bedbbfa1330eba88c5ce2

Links

IronFish whitepaper: https://ironfish.network/learn/whitepaper/introduction

Project at Circuit Breaker hackathon: https://ethglobal.com/showcase/anonfund-diog1

Live demo: https://anonfund.meteorapp.com

About

Anonymus On-Chain Funding Platform


Languages

Language:JavaScript 69.6%Language:HTML 30.4%