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CURA App

CURA App

Ernestas Juskevicius

Health & Fitness免费v1.0
App Store
评分

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最近更新

2026年4月13日

发布日期

2026年4月13日

应用信息

开发者
Ernestas Juskevicius
分类
Health & Fitness
价格
免费
版本
1.0
App ID
6760614255

简介

CURA the AI Skin Analysis & Routine Tracker. The skincare app built for everyone. Your skin is trying to tell you something. Cura helps you listen. Cura uses advanced AI to analyse your skin, identify your triggers, build your personalised routine and track your progress all in one place. Whether you're dealing with acne, hyperpigmentation, dryness, sensitivity or just want to optimise your routine, Cura gives you the data and guidance to actually understand your skin. What your scan does: AI Skin Scanner, point your camera at your skin and get an instant analysis of your skin type, current concerns and what's driving them. Cura identifies acne, redness, dark spots, dehydration markers and barrier health in seconds. Trigger Tracking: Log your diet, sleep, stress and products. Cura's algorithm identifies the patterns connecting your lifestyle to your breakouts. Find out whether it's the dairy, the stress, the new serum or the sleep deprivation, with data, not guesswork. Personalised Routine Builder: Based on your skin analysis and tracked concerns, Cura builds a step-by-step routine using ingredients that work for your specific skin. Progress Photography: Track your skin journey with consistent comparison photos. See the difference your routine is making over weeks and months. Know what's working before you run out. Why Cura: Most people spend months and hundreds of pounds cycling through products that don't work, because they don't know their triggers, don't track their progress and don't know which ingredients their skin actually needs. Cura replaces guesswork with data and brings clarity to your routine. Clear skin isn't luck. It's information. Download Cura and start understanding your skin today.

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预估总下载量

000
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0

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0

预估 / 月

0

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基于0 条评分
假设评分率1.1%
应用年龄1 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。