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Vinted: Shop & sell pre-loved

Vinted: Shop & sell pre-loved

Vinted

Shopping免费v26.17.0Android
Google Play
评分

4.3

2,205,790 条评分

星级

★★★★☆

最近更新

2026年5月11日

发布日期

2021年10月10日

更新内容

v26.17.0

We’ve made some changes. Get the update now.<br>We’ve fine-tuned the app for a simpler experience. No overhauls here – just some tweaks to keep things running the way they should. Update to the latest version to experience a smooth ride from old to new again.

应用信息

开发者
Vinted
分类
Shopping
价格
免费
版本
26.17.0
安装量
100,000,000+
包名
fr.vinted

简介

The idea is simple: you sell your pre-loved stuff to other members who’ll love it again. They get the thrill of unboxing a great find, you get more space at home. It's look-good, do-good, feel-good, for everyone. Selling is easy and free Snap photos of your item, describe it, and set your price. You keep 100% of what you earn. • Cash in on your pre-loved clothes and more. • Watch your earnings grow. Send your money straight to your bank account. • Buyers cover shipping costs. You get prepaid labels that make things simple. Shop new-again finds Feel proud of your second-hand discoveries, from clothes to accessories. • Fast finds, long-lasting love. There’s a Vinted category for almost everything, use filters to speed up shopping. • We’ve got your back. When you buy on Vinted, we cover you with Buyer Protection. For a small fee, you’ll get a refund if your item is lost, damaged in delivery, or significantly not as described. • Choose a shipping carrier and have your order sent to your home or a convenient pickup location. There’s a diverse community of second-hand enthusiasts waiting to meet you. Chat with your fellow members, get updates, and manage your orders all in one place. Come join us TikTok: https://www.tiktok.com/@vinted Instagram: https://www.instagram.com/vinted Find out more in our Help Center: https://www.vinted.com/help

下载量预测

专业 · 预览

预估总下载量

163.4M110.3M315.1M
保守估计乐观估计

2.0M

低 / 月

2.9M

预估 / 月

5.6M

高 / 月

基于2,205,790 条评分
假设评分率1.4%
应用年龄56 个月

基于评分数量 ÷ 类别评分率估算,实际下载量误差可达 ±50%,与 Sensor Tower 方法一致。