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How much does SwigL earn?

Android app from Swiggy · Education

ML forecast ★ 3.2 · 534 Free

~352/mo

ML revenue forecast. Calibrated against 120891 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.

SwigL screenshot 1 SwigL screenshot 2 SwigL screenshot 3 SwigL screenshot 4

SwigL's revenue trajectory

Forecast revenue from snapshot history. Last 1 months.

Where SwigL sits in Education

Revenue distribution of 120891 comparable apps. SwigL highlighted.

SwigL vs comparable apps

Revenue trajectory side-by-side. Bold = SwigL, ghosted = peers.

App spec

Version
1.12.10
Last update
Oct 30, 2024
Launched
May 24, 2019
Price
Free
Monetization
Free

What SwigL actually does (from store listing)

SwigL is a learning platform specially designed to enable everyone to perform their daily tasks in an effective manner. Swiggy is a leading food ordering and delivery start-up in India. It works as a single point of contact for ordering food from all restaurants that may be there at a particular location

Comparable Android apps

The five apps in Education with the closest revenue to SwigL. Click any to see its detail page.

AppRevenueRatingRatings
English to Nepali Dictionary icon English to Nepali Dictionary 352 0
Geography Form1-4 Notes IKcse icon Geography Form1-4 Notes IKcse 352 ★ 4.3 2K
Clique Escola icon Clique Escola 352 ★ 3.3 982
Learn Turkish Faster icon Learn Turkish Faster 352 ★ 4.3 537
Ling - Learn Persian Language icon Ling - Learn Persian Language 352 ★ 4.4 843
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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 SwigL's tracker page for current rating, reviews and snapshot timeline.

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