mirror of
https://github.com/privacy-scaling-explorations/pse.dev.git
synced 2026-01-13 08:08:02 -05:00
37 lines
2.1 KiB
TypeScript
37 lines
2.1 KiB
TypeScript
import { ProjectCategory, ProjectInterface, ProjectStatus } from "@/lib/types"
|
|
|
|
export const mpcStats: ProjectInterface = {
|
|
id: "mpc-stats",
|
|
image: "mpc-stats.png",
|
|
name: "MPCStats",
|
|
category: ProjectCategory.APPLICATION,
|
|
projectStatus: ProjectStatus.ACTIVE,
|
|
section: "pse",
|
|
content: {
|
|
en: {
|
|
tldr: "A framework for private and verifiable statistical analysis across multiple data providers.",
|
|
description: `
|
|
## Overview
|
|
MPCStats is a framework that enables data consumers to query statistical computations across multiple data providers while ensuring privacy and result correctness. By integrating privacy-preserving technologies such as ZKP, MPC, and FHE, our goal is to provide tools and guidance for integrating privacy-preserving analysis into their workflows. We also aim to identify real-world applications that can benefit from this framework.
|
|
## Features
|
|
- **Privacy-preserving and verifiable statistical analysis**: Allows data providers to keep their inputs confidential while giving data consumers the assurance that computations are performed accurately and securely.
|
|
- **Data validity**: Integrates TLSNotary to authenticate inputs from verified web sources, ensuring data consumers can trust that data inputs are genuine and accurate.
|
|
## Use Cases
|
|
- **Cross-department data sharing and surveys**: Enables secure, private data sharing across government departments for streamlined operations and collaborative analysis.
|
|
- **Healthcare research**: Aggregates data from sources such as fitness apps and sleep trackers, allowing researchers to uncover relationships between health factors, such as fitness and sleep patterns.
|
|
- **Salary survey**: A verifiable and anonymous alternative to platforms like Glassdoor, where users can contribute salary data with privacy guarantees.
|
|
`,
|
|
},
|
|
},
|
|
links: {
|
|
github: "https://github.com/ZKStats",
|
|
website: "https://t.me/mpcstats",
|
|
},
|
|
tags: {
|
|
keywords: ["MPC", "statistics", "data analysis"],
|
|
themes: ["build"],
|
|
types: ["Legos/dev tools", "Lego sets/toolkits"],
|
|
builtWith: ["MP-SPDZ", "tlsn", "python"],
|
|
},
|
|
}
|