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VERISCAN™ – Bullion Security

VERISCAN™ – Bullion Security

PAMP SA

Finance免费v6.0.1
App Store
评分

4.7

1,527 条评分

星级

★★★★★

最近更新

2026年4月22日

发布日期

2016年6月6日

更新内容

v6.0.1

New design with a refreshed, modern look & feel Enhanced user experience with more intuitive navigation Improved scanning with guided prompts for easier verification Simplified account creation and management, including password reset

应用信息

开发者
PAMP SA
分类
Finance
价格
免费
版本
6.0.1
App ID
1077336096

简介

VERISCAN™ is a free mobile app enabling the instant, secure and confidential authentication of any PAMP precious metals product bearing the VERISCAN logo on the product’s packaging or certificate. Just like a fingerprint, every bar is one of a kind. VERISCAN's advanced scanning technology captures this unique signature and matches it to its original record to instantly verify authenticity. Key features: - Instant authentication: Verify compatible PAMP products in seconds using your smartphone - Secure & non-invasive: Authenticate without opening or damaging the product or packaging - Works through packaging: Scan products directly in sealed CertiPAMP™ packaging - Easy to use: Clean, intuitive interface designed for fast verification - Free & unlimited – No fees, no limits 
 Supported products:
 VERISCAN works with any PAMP precious metals product bearing the VERISCAN logo on the product’s packaging or certificate. Compatible products can be verified within their sealed CertiPAMP™ packaging, or without. Larger bars can be identified on all six sides for enhanced authentication.
 Device compatibility: - Optimized for recent iPhone models and the latest iOS versions - Supports English, Arabic and Chinese 
 Developed by PAMP (‘Produits Artistiques Métaux Précieux’), one of the world’s most renowned bullion brands. Learn more: www.pamp.com/veriscan Use of the app is subject to the VERISCAN™ Software Agreement

下载量预测

专业 · 预览

预估总下载量

204K153K305K
保守估计乐观估计

1K

低 / 月

2K

预估 / 月

3K

高 / 月

基于1,527 条评分
假设评分率0.8%
应用年龄121 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。