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허수아비(scarecrow)Published at May 16, 2026 at 11:30 AM0:32
요즘 컴퓨터 부품 이름이 너무 길어서 짜증남 thumbnail

요즘 컴퓨터 부품 이름이 너무 길어서 짜증남

21 days agoLong-tail
컴퓨터메모리가격컴퓨터견적컴퓨터수리컴퓨터수리점shorts
Published time
May 16, 2026 at 11:30 AM
Duration
0:32
Video type
Science & Technology
Channel region
South Korea
Publish Timing Insight
Not enough timing data
This channel still lacks enough historical upload timing data. Let the channel accumulate more snapshots before evaluating the best timing.
Monetization Insight
No clear monetization tags yet
Focus on view growth, engagement quality, and topic competition to judge monetization potential.
Action Suggestion
Watch for sustained growth
The basic conditions are already in place. Keep watching 7-day views and revenue before deciding whether this topic should become a series.
Views
15.9K
Likes
126
Comments
6
Estimated Daily Revenue
$0.05 - $0.18
Estimated Total Revenue
$0.38 - $1.52
RPM Range
$0.02 - $0.1
1D Views Gain
0
7D Views Gain
0
1D Likes Gain
0
7D Likes Gain
0
1D Comments Gain
0
7D Comments Gain
0
Velocity Score
0%
Topic Cluster
컴퓨터
Video Description
https://www.youtube.com/watch?v=k92z-4xIrF4&t=1049s #컴퓨터부품 #이름이길어 #짜증나
Related Topics
Continue with closely related videos to judge topic depth and content format.
Topic: 컴퓨터
Not enough related-topic video data yet.
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Why are RPM and revenue numbers estimates?

Actual earnings depend on monetized playbacks, audience geography, seasonality, advertiser demand, and monetization status. CloutOrbit provides directional estimates for benchmarking, not exact payouts.

How should you use this page for content research?

Compare timing, topic tags, monetization signals, and adjacent videos from the same channel to spot formats, themes, and publishing patterns worth testing.