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中時新聞網Published at May 28, 2026 at 06:35 PM8:02
獨家/92歲資深氣象主播李富城碩士畢業了!平均科目95分 學用AI教授也驚呆 thumbnail

獨家/92歲資深氣象主播李富城碩士畢業了!平均科目95分 學用AI教授也驚呆

16 days agoLong-tail
中時cti新聞newsChinaTimes
Published time
May 28, 2026 at 06:35 PM
Duration
8:02
Video type
Comedy Movies
Channel region
Taiwan
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Views
14.1K
Likes
372
Comments
21
Estimated Daily Revenue
$4.63 - $27
Estimated Total Revenue
$9.32 - $54.37
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
中時
Video Description
92歲資深氣象主播李富城雖已退休多年,2024年重返校園,進入世新大學傳播管理學系碩士在職專班就讀,如今順利完成學業,於今年6月正式取得碩士學位。他以高齡重返教室、持續進修的行動,再度成為外界關注焦點,也被視為「活到老、學到老」的最佳典範。 李富城接受《中時新聞網》專訪坦言,碩士在職專班課程多集中於晚間,每週多達三天需上課至晚上10點,返家時間往往已接近深夜11點半。「上課的時候不能不專心,要全程貫注,又不能睡覺、不能缺席,這真的是一個很煎熬的事情。」他直言,對高齡學生而言,體力與專注力都是極大挑戰。 01:26 李富城兩年前重返校園,今年6月碩士班畢業概要 01:53 碩士班上課遇到艱難問題 02:57 平均科目95分、獲得師長肯定 04:14 完成碩士學位,人生獲新的體悟 05:05 送給自己的一句話 05:35 指導教授眼中的學生李富城 訂閱中時不會錯!時事猛料不漏勾🎉🎉 獨家》92歲李富城碩士畢業了! 平均科目95分學用AI教授也驚呆 https://www.chinatimes.com/realtimenews/20260528002846-260404 中時新聞網FB粉絲專頁👉http://bit.ly/2FIAjBe 中時新聞網官網👉http://bit.ly/2FGK7vO 加入【中時新聞網LINE】好友 👉https://lin.ee/s3kGEaD 追蹤【中時新聞網IG】👉http://bit.ly/314iSBQ #中時新聞網 #李富城 #氣象主播 #碩士 #畢業 #世新大學 #娛樂 #失智 #ai
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