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有感筆電 Daptoper
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有感筆電 DaptoperPublished at February 19, 2026 at 08:17 PM5:27:40
全破Poppy Playtime第五章!原型體1006來了!紫色頭髮的新怪物會幫助我嗎!?🥺(結局太頂了)【有感筆電 直播】 thumbnail

全破Poppy Playtime第五章!原型體1006來了!紫色頭髮的新怪物會幫助我嗎!?🥺(結局太頂了)【有感筆電 直播】

3 months agoLong-tail
robloxbedwarsdaptoper有感筆電床戰poppy playtime 1006
Published time
February 19, 2026 at 08:17 PM
Duration
5:27:40
Video type
Gaming
Channel region
Taiwan
Publish Timing Insight
Not enough timing data
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Monetization Insight
No clear monetization tags yet
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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
427K
Likes
14.3K
Comments
881
Estimated Daily Revenue
-
Estimated Total Revenue
$281.84 - $1.6K
RPM Range
$0.66 - $3.85
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
roblox
Video Description
訂閱有感筆電【我會非常感謝你😆】 ➔ https://www.youtube.com/user/odavido12345?sub_confirmation=1 ▶ROBLOX《 [💥] 森林中的99夜🔦 99 Nights in the Forest》遊戲連結: https://www.roblox.com/games/79546208627805 時間戳記 Timestamp: 0:00 正式開始 16:32 失去了機械手臂 36:14 吉仔 1:27:54 查姆出現(超可愛) 2:24:29 進入角色回憶 3:48:06 莉莉出場 4:24:59 1006 正式登場 5:01:50 Kissy和Huggy 重逢 5:20:23 博士出現! (特別感謝 @daptoper811 提供本期的時間軸!) ▶我的IG追蹤: https://www.instagram.com/daptoper/ ▶我的Twitter推特:https://twitter.com/DaptoperYT ▶我的FB:https://www.facebook.com/daptoper ▶《有感筆電 軍團》Discord群組:https://discord.gg/daptoper 👉工商合作,請寄email:[email protected] #roblox #直播
Related Topics
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Topic: roblox
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