The Next Big Questions in AI Research with Andrew Ng | ASK MORE OF AI with Clara Shih

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  • Опубліковано 5 вер 2024

КОМЕНТАРІ • 10

  • @salesforce
    @salesforce  11 місяців тому

    Everyone seems to be rushing into AI and asking questions later. We’ll give you the info you need to get this right: sforce.co/4486KzY

  • @benyawarath
    @benyawarath 8 місяців тому

    Thank you both so much! I really enjoyed hearing Dr. Ng's thoughts about the AI regulatory directions in the US (from min 33.00), how important teachers are, and how we should prepare kids for the future.

  • @HarpaAI
    @HarpaAI 10 місяців тому +3

    🎯 Key Takeaways for quick navigation:
    00:00 🧠 Andrew Ng's early career and research focus
    - Andrew Ng's early research focused on reinforcement learning and robotics.
    - He shifted to deep learning and perception research when faced with the challenge of getting robots to see.
    - Organized a workshop titled "Towards Human-Level AI" to discuss the long-term future of AI.
    02:29 🤖 Aspirations for human-level AI
    - Andrew Ng was motivated by the idea of achieving human-level AI throughout his career.
    - Initially believed that scaling up neural networks would lead to significant progress.
    - Acknowledged that the path to achieving artificial general intelligence was more challenging than anticipated.
    05:25 📊 Perceptions of AI progress
    - Andrew Ng didn't perceive the AI winter as a setback because he saw continuous year-on-year progress in the field.
    - Recognized that public perception of AI had its ups and downs, but the actual progress was consistent.
    - Highlighted the importance of market timing in technology adoption.
    08:54 🧠 Creativity and progress in technology
    - Discussed the idea that creative acts in technology often result from incremental progress over time.
    - Gave examples of how technological advancements may appear sudden to outsiders but are built on years of effort.
    - Emphasized the importance of persistence and patience in achieving success.
    11:53 🔄 Transition from reinforcement learning to deep learning
    - Andrew Ng initially combined reinforcement learning with small neural networks for robotics.
    - Explained his motivation for transitioning to deep learning, influenced by theories of intelligence.
    - Highlighted the focus on unsupervised learning in the early days and its evolving importance.
    15:52 🌐 Role of academia, large companies, and startups in AI research
    - Discussed the significance of different organizations in advancing AI research.
    - Acknowledged the distribution advantage of large companies in bringing technology to users.
    - Highlighted the speed of decision-making and innovation in startups.
    - Emphasized the continuous research contributions from academia and their importance.
    20:55 🤖 AI Research Directions
    - Andrew Ng discusses the most interesting questions in AI research today.
    - Highlights areas of excitement and potential in AI research.
    21:55 🧠 Unsupervised Learning and Vision Models
    - Andrew Ng expresses his continued excitement about unsupervised learning.
    - He mentions the challenges and opportunities in training large vision models.
    22:24 🤖 AI Agents
    - Andrew Ng discusses the challenges and potential of AI agents, especially in decision-making.
    - He acknowledges that this area is still evolving.
    23:27 🌐 Data-Centric AI and Edge Applications
    - Andrew Ng emphasizes the importance of data-centric AI for practical applications.
    - He predicts the growing significance of AI at the edge.
    27:59 🌍 AI Risks and Extinction
    - Andrew Ng discusses real AI risks such as bias, fairness, and inaccuracy.
    - He considers the idea of AI leading to human extinction as overblown and unlikely.
    29:32 🧠 Path to AI Smarter Than Humans
    - Andrew Ng talks about the challenges in achieving artificial general intelligence (AGI) and its timeline.
    - He reflects on the different paths to intelligence between digital and biological entities.
    31:32 🗣️ Voice Cloning and Trust
    - Andrew Ng shares his experience with voice cloning technology.
    - He discusses the importance of trust in audio and video interactions in the age of AI.
    33:04 📜 AI Regulation and Watermarking
    - Andrew Ng expresses concerns about AI regulation and regulatory capture.
    - He advocates for smarter regulation, including the use of watermarking to indicate AI-generated content.
    37:39 🌏 Upbringing and Thinking Differently
    - Andrew Ng reflects on how his upbringing in different places influenced his perspective and thinking.
    - He highlights the importance of thinking differently and being comfortable with contrarian ideas.
    39:39 📚 Education for an AI-Driven World
    - Andrew Ng discusses the importance of lifelong learning in a rapidly changing world.
    - He advocates for teaching everyone to code, given the increasing accessibility and importance of AI tools.
    42:12 🖥️ Learning to Code for Everyone
    - Andrew Ng advocates for a future where everyone learns to code, just like learning a first language.
    - He believes that coding in languages like Python is crucial for telling computers what you want unambiguously.
    - Lifelong learning is essential as technology evolves rapidly, and coding skills will empower individuals in an AI-driven world.
    45:22 🧠 Key Takeaways from the Discussion
    - Andrew Ng's interest in AI research started with flying helicopters.
    - He sees significant potential in unsupervised learning, image processing, and edge computing.
    - Those deeply involved in AI research never experienced an AI winter, as they continued to make remarkable discoveries in their field.
    Made with HARPA AI

    • @zepingluo694
      @zepingluo694 10 місяців тому +1

      Thanks for posting this nice summary

  • @th-shubham
    @th-shubham 8 місяців тому

    This guy is a gem 👏👏

  • @simonirimiya.fromnigeria
    @simonirimiya.fromnigeria 17 днів тому

    Very nice video 📸

  • @miladkhademinori2709
    @miladkhademinori2709 6 місяців тому

    Exactly 💯

  • @christine_california
    @christine_california 5 місяців тому

    Is AI speaking for Clara?

  • @darylallen2485
    @darylallen2485 4 місяці тому

    3:20 - I'm not sure she's grasped that LLMs aren't the same as human level ai.

  • @raghavendrasooda5368
    @raghavendrasooda5368 9 місяців тому

    We need to use AI to estimate poverty level of an individual or family that can be used by government to provide food, education, health care to poor people