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#129 Bayesian Deep Learning & AI for Science with Vincent Fortuin
- 2025/04/02
- 再生時間: 1 時間 3 分
- ポッドキャスト
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サマリー
あらすじ・解説
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- Intro to Bayes Course (first 2 lessons free)
- Advanced Regression Course (first 2 lessons free)
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Takeaways:
- The hype around AI in science often fails to deliver practical results.
- Bayesian deep learning combines the strengths of deep learning and Bayesian statistics.
- Fine-tuning LLMs with Bayesian methods improves prediction calibration.
- There is no single dominant library for Bayesian deep learning yet.
- Real-world applications of Bayesian deep learning exist in various fields.
- Prior knowledge is crucial for the effectiveness of Bayesian deep learning.
- Data efficiency in AI can be enhanced by incorporating prior knowledge.
- Generative AI and Bayesian deep learning can inform each other.
- The complexity of a problem influences the choice between Bayesian and traditional deep learning.
- Meta-learning enhances the efficiency of Bayesian models.
- PAC-Bayesian theory merges Bayesian and frequentist ideas.
- Laplace inference offers a cost-effective approximation.
- Subspace inference can optimize parameter efficiency.
- Bayesian deep learning is crucial for reliable predictions.
- Effective communication of uncertainty is essential.
- Realistic benchmarks are needed for Bayesian methods
- Collaboration and communication in the AI community are vital.
Chapters:
00:00 Introduction to Bayesian Deep Learning
06:12 Vincent's Journey into Machine Learning
12:42 Defining Bayesian Deep Learning
17:23 Current Landscape of Bayesian Libraries
22:02 Real-World Applications of Bayesian Deep Learning
24:29 When to Use Bayesian Deep Learning
29:36 Data Efficient AI and Generative Modeling
31:59 Exploring Generative AI and Meta-Learning
34:19 Understanding Bayesian Deep Learning and Prior Knowledge
39:01 Algorithms for Bayesian Deep Learning Models
43:25 Advancements in Efficient Inference Techniques
49:35 The Future of AI Models and Reliability
52:47 Advice for Aspiring Researchers in AI
56:06 Future Projects and Research Directions
Thank you to my Patrons for making this episode possible!
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