#78c09851-ddf4-4430-a911-2e4a1845f9bf
0
0

OpenAMM

dApps

By Ludovit Scholtz (@scholtz)Session 1 • Awarded 8/31/2023

About the Proposal

This grant proposal aims to advance the development and open source implementation of Automated Market Makers (AMMs) with concentrated liquidity. AMMs have emerged as a crucial component of decentralized finance (DeFi), providing efficient and decentralized mechanisms for trading digital assets. However, traditional AMMs suffer from certain limitations, such as inefficient capital utilization and vulnerability to impermanent loss. Concentrated liquidity models address these issues by allowing liquidity providers (LPs) to concentrate their funds within specific price ranges, thereby enhancing capital efficiency and reducing the risk of impermanent loss. This proposal seeks funding to support research, development, and implementation efforts focused on creating open source algorand AMM smart contract. By supporting this grant proposal, you will contribute to the advancement of decentralized finance by addressing the limitations of traditional AMMs and enhancing capital efficiency and risk management through the implementation of concentrated liquidity models. This research and development effort will foster innovation, attract liquidity providers, and improve the overall user experience in the rapidly evolving Algorand DeFi ecosystem.

Claim This Proposal

Checking Proposal Status
Verifying if this proposal has been claimed...

Progress Updates

Checking team membership...

Milestones

Proposal Planning

Define proposal scope and requirements

Completed: 12/24/2024

Phase 1

Implement core functionality for phase 1

Completed: 1/23/2025

Final Delivery

Complete all deliverables and documentation

Completed: 2/22/2025

Comments

Please sign in to leave a comment.

No comments yet. Be the first to comment!

Proposal Summary

Funding
200,000 ALGO
xGov Period
Session 1
Status
Completed
Completion
100%
Community Votes
0
0

Team

Ludovit Scholtz (@scholtz)

View all proposals by this team
Powered by VMkit