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yap! Customer icon

How much does yap! Customer earn?

Android app from PT Bank Negara Indonesia (Persero) Tbk. · Finance

ML forecast ★ 3.1 · 3K Free

~501/mo

ML revenue forecast. Calibrated against 36598 apps in this category.

Confidence band
±15%
High — many comparable apps with verified data

At a glance

What the app looks like

Live screenshots from the Play Store, captured by our snapshot worker. Tap any image to enlarge.

yap! Customer screenshot 1 yap! Customer screenshot 2 yap! Customer screenshot 3

yap! Customer's revenue trajectory

Forecast revenue from snapshot history. Last 1 months.

Where yap! Customer sits in Finance

Revenue distribution of 36598 comparable apps. yap! Customer highlighted.

yap! Customer vs comparable apps

Revenue trajectory side-by-side. Bold = yap! Customer, ghosted = peers.

App spec

Version
Varies with device
Launched
Jan 19, 2018
Price
Free
Monetization
Free

What yap! Customer actually does (from store listing)

Yap! merupakan aplikasi mobile yang digunakan oleh Notaris untuk melakukan pembayaran PNBP yang terintegrasi langsung dengan sistem AHU Online. Fitur yang ada di aplikasi yap ini adalah: Simpan Kartu Debit Push Notification Single dan Bulk Payment PNBP

Comparable Android apps

The five apps in Finance with the closest revenue to yap! Customer. Click any to see its detail page.

AppRevenueRatingRatings
Pennyworth - Spending Tracker icon Pennyworth - Spending Tracker 501 ★ 4.8 11K
CorpLight Oschadbank icon CorpLight Oschadbank 501 ★ 4.0 5K
Intesa Sanpaolo Inbiz icon Intesa Sanpaolo Inbiz 501 ★ 4.0 7K
Timo icon Timo 501 ★ 3.6 9K
Virgin Money Credit Card icon Virgin Money Credit Card 501 ★ 3.7 53K
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How we calculated this

Each forecast combines App Store rating, ratings count, monetisation model, pricing tier, IAP signals and ad-supported flag. The base estimate is then multiplied by a per-category scaling factor learned from apps with founder-verified MRR. Every number on this page comes from public APIs and bumetric's own snapshot history.

Full methodology covers input variables, accuracy bands per category and how we treat apps without comparable anchors. See also the live data on yap! Customer's tracker page for current rating, reviews and snapshot timeline.

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