@geekbb: AI + Traditional Chinese Medicine — Is There Potential?

X AI KOLs Timeline News

Summary

Exploring the possibilities and prospects of combining AI with Traditional Chinese Medicine.

AI + Traditional Chinese Medicine — Is There Potential? https://t.co/qPjIlpCqvB
Original Article
View Cached Full Text

Cached at: 06/23/26, 12:06 PM

AI + Traditional Chinese Medicine: Is it worth exploring? https://t.co/qPjIlpCqvB

Similar Articles

Oracle Board member breaks down the current state of AI

Reddit r/ArtificialInteligence

Oracle board member Kevin Hutchinson analyzes the development of AI, emphasizing its application in healthcare, especially using generative AI to analyze missed diagnoses in radiology reports, and distinguishes between generative AI, agentic AI, and artificial general intelligence.

@MindfulReturn: Today I saw an interview with Professor Huang Biwei (@huang_biwei) and learned about their new round of funding! After learning about the Aether AI solution and taking a closer look at their direction, let me share my thoughts: The next paradigm of AI is not bigger models, but causality. 1. Correlation Ceiling: Why the visuals are...

X AI KOLs Timeline

This article offers an in-depth analysis of the Causal World Model (CWM) proposed by Aether AI (原识之智), arguing that the next AI paradigm will shift from correlation to causation. It discusses the theoretical foundations, technical architecture, and potential impact on video generation and embodied intelligence.

@leslieloser_: Had the privilege of meeting @Zhm20220917, the best at AI transformation in Jiangsu, Zhejiang, and Shanghai, for a few hours. Became even more certain about the following --In the AI era, those closer to production who understand the industry will reap huge startup dividends; understanding AI and boundaries is 20%, understanding production and industry is 80% --Small teams refuse inno…

X AI KOLs Timeline

The article shares insights on entrepreneurial dividends in the AI era, emphasizing that understanding industry and production is more critical than mastering AI technology. Companies prioritize actual problem-solving capabilities over the models themselves.