Daniel Wu to Serve as First Digital Employee Recommendation Officer for Baidu Smart Cloud

Deep News
Aug 28

At the 2025 Baidu Cloud Intelligence Conference, Baidu Smart Cloud unveiled its visual model platform featuring compliance analysis capabilities. The system allows users to upload a standard operating procedure video and generate an SOP detection task within minutes, enabling AI agents to function like experienced "AI masters." This innovation addresses the real-world challenges of skilled worker shortages and knowledge transfer difficulties in industrial production lines, helping enterprises achieve genuine cost reduction and efficiency improvements through AI.

During the conference, Baidu Smart Cloud partnered with Yashi Education, an AI-focused educational company, to develop the "Daniel Wu Digital English Coach." This product leverages Baidu's proprietary end-to-end speech and semantic models, along with Huibo Star digital human capabilities and a comprehensive suite of AI technologies.

Baidu announced that Daniel Wu will officially serve as the first batch of digital employee recommendation officers for Baidu Smart Cloud, effective immediately.

Disclaimer: Investing carries risk. This is not financial advice. The above content should not be regarded as an offer, recommendation, or solicitation on acquiring or disposing of any financial products, any associated discussions, comments, or posts by author or other users should not be considered as such either. It is solely for general information purpose only, which does not consider your own investment objectives, financial situations or needs. TTM assumes no responsibility or warranty for the accuracy and completeness of the information, investors should do their own research and may seek professional advice before investing.

Most Discussed

  1. 1
     
     
     
     
  2. 2
     
     
     
     
  3. 3
     
     
     
     
  4. 4
     
     
     
     
  5. 5
     
     
     
     
  6. 6
     
     
     
     
  7. 7
     
     
     
     
  8. 8
     
     
     
     
  9. 9
     
     
     
     
  10. 10