← Back to home

GoodPrompt

on-chain peer-review for AI teaching data --- > GoodPrompt: transparent, decentralized, peer-reviewed data submission

Screenshots

GoodPrompt screenshot 1
GoodPrompt screenshot 2
GoodPrompt screenshot 3
GoodPrompt screenshot 4

Problem Statement

We introduce an on-chain peer-review process for AI training data. The process enhances AI's transparency, privacy safeguards, accuracy, cost-efficiency, and trustworthiness. The peer-review process is similar to scientific publishing. First, an author submits a data object, which may contain an instructional prompt, context, licenses, and response. Then, reviewers can accept, refer to an expert, ask for improvement, or reject the data object. The final result is a dataset of peer-reviewed data objects transparently stored on a trusted infrastructure such as decentralized ledger. Compensation for authors and reviewers will be governed by a smart-contract based on the authors' and reviewers' reputation and the quality of the submitted objects.

Solution

React - solidity - umaauthor creates a data point by submitting a form in a web app that has instruction and response 2.the data point goes on-chainour smart contract posts the data point for a review onto uma v2 and v3people dispute or approve the data point on umaUI shows the dataset.

Hackathon

ETHOnline 2023

2023

Prizes

  • 🏆

    Best Use

    🏊‍♂️ UMA

Contributors