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Gary Chen
@garytalksstuff
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Gary ChenPublished at May 21, 2026 at 03:02 PM13:27
Anthropic 工程師為什麼拋棄 Markdown 改用 HTML 跟 AI 工作? thumbnail

Anthropic 工程師為什麼拋棄 Markdown 改用 HTML 跟 AI 工作?

23 days agoLong-tail
AIAI workflowAnthropicClaudeHTMLanthropic markdown html
Published time
May 21, 2026 at 03:02 PM
Duration
13:27
Video type
Science & Technology
Channel region
Taiwan
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Views
50.8K
Likes
2.2K
Comments
160
Estimated Daily Revenue
-
Estimated Total Revenue
$33.56 - $195.75
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
AI
Video Description
加入我的 Patreon,查看完整文章還有提示詞模板:https://www.patreon.com/posts/158832327 -- Harvard Business Review 今年二月的研究指出:AI 工具導入後,工作量不減反增、認知疲勞加劇、決策品質下滑,最後是 burnout 跟離職。這支影片拆解這份研究、解釋為什麼 AI 越強你反而越累,並介紹 Anthropic 工程師正在用的下一代工作介面——HTML 工作頁。從拒絕 Markdown 到三個實際使用場景,再到 AI Builder 如何在這個時代真正脫穎而出。 📌 時間戳 0:00 AI 越強,人卻越累 2:12 三大變化 4:28 理解才稀缺 7:07 HTML 的崛起 9:02 HTML 三個用法 10:30 怎麼脫穎而出 📢 追蹤我的頻道 👍 覺得有幫助請按讚、訂閱、開小鈴鐺! reference: - https://hbr.org/2026/02/ai-doesnt-reduce-work-it-intensifies-it - https://x.com/trq212/status/2052809885763747935/?s=46&t=beGrCINggSRSldEc2339Ug&rw_tt_thread=True #AI #Anthropic #HTML #Markdown #AIWorkflow
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