
#141 AI Assisted Causal Inference, with Sam Witty
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About this listen
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Takeaways:
- Causal inference is crucial for understanding the impact of interventions in various fields.
- ChiRho is a causal probabilistic programming language that bridges mechanistic and data-driven models.
- ChiRho allows for easy manipulation of causal models and counterfactual reasoning.
- The design of ChiRho emphasizes modularity and extensibility for diverse applications.
- Causal inference requires careful consideration of assumptions and model structures.
- Real-world applications of causal inference can lead to significant insights in science and engineering.
- Collaboration and communication are key in translating causal questions into actionable models.
- The future of causal inference lies in integrating probabilistic programming with scientific discovery.
Chapters:
05:53 Bridging Mechanistic and Data-Driven Models
09:13 Understanding Causal Probabilistic Programming
12:10 ChiRho and Its Design Principles
15:03 ChiRho’s Functionality and Use Cases
17:55 Counterfactual Worlds and Mediation Analysis
20:47 Efficient Estimation in ChiRho
24:08 Future Directions for Causal AI
50:21 Understanding the Do-Operator in Causal Inference
56:45 ChiRho’s Role in Causal Inference and Bayesian Modeling
01:01:36 Roadmap and Future Developments for ChiRho
01:05:29 Real-World Applications of Causal Probabilistic Programming
01:10:51 Challenges in Causal Inference Adoption
01:11:50 The Importance of Causal Claims in Research
01:18:11 Bayesian Approaches to Causal Inference
01:22:08 Combining Gaussian Processes with Causal Inference
01:28:27 Future Directions in Probabilistic Programming and Causal Inference
Thank you to my Patrons for making this episode possible!
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