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Johns Hopkins Applied Physics Laboratory icon

How much does Johns Hopkins Applied Physics Laboratory earn?

YouTube channel from @jhuapl · YouTube Channels

✓ Verified MRR ★ 2.4 · 52K +90.7% MoM Free

~33/mo

Founder-verified via Stripe Connect or App Store Connect.

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

At a glance

Johns Hopkins Applied Physics Laboratory's revenue trajectory

Forecast revenue from snapshot history. Last 24 months.

Where Johns Hopkins Applied Physics Laboratory sits in YouTube Channels

Revenue distribution of 685093 comparable apps. Johns Hopkins Applied Physics Laboratory highlighted.

Johns Hopkins Applied Physics Laboratory vs comparable apps

Revenue trajectory side-by-side. Bold = Johns Hopkins Applied Physics Laboratory, ghosted = peers.

App spec

Launched
May 06, 2026
Price
Free
Monetization
Free

What Johns Hopkins Applied Physics Laboratory actually does (from store listing)

The Johns Hopkins Applied Physics Laboratory (APL) is a not-for-profit university-affiliated research center (UARC) that provides solutions to complex national security and scientific challenges with technical expertise and prototyping, research and development, and analysis.

Comparable YouTube channels

The five apps in YouTube Channels with the closest revenue to Johns Hopkins Applied Physics Laboratory. Click any to see its detail page.

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UKR.STREAM icon UKR.STREAM 33 ★ 2.0 12K
Exploring with subramani icon Exploring with subramani 33 ★ 2.7 227K
RobsonLima&Henrique icon RobsonLima&Henrique 33 ★ 1.5 1K
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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 Johns Hopkins Applied Physics Laboratory's tracker page for current rating, reviews and snapshot timeline.

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