
Probability Engineering for AI
A new paradigm for advancing deep learning systems
This research introduces Probability Engineering as a pragmatic approach to overcome limitations in traditional probabilistic modeling for modern AI systems.
- Treats probability distributions as engineered artifacts that can be modified and reinforced
- Provides a framework for managing high-dimensional parameter spaces and heterogeneous data
- Offers practical techniques to enhance model performance and reliability
- Positions engineering principles as central to advancing modern deep learning
For AI engineers, this paradigm shift provides actionable methods to improve model design, optimization, and deployment in complex real-world applications.
Advancing Deep Learning through Probability Engineering: A Pragmatic Paradigm for Modern AI