No Math AI

Generative Optimization

25 min · 23. apr. 2025
episode Generative Optimization cover

Description

In this episode of No Math AI, we're joined by Dr. Faez Ahmed, a professor at MIT and leader of the Design Computation and Digital Engineering Lab. He works at the fascinating intersection of generative AI, optimization, and engineering design, where he's redefining how we create everything from bicycles to next-generation aerospace systems. Together, Isha, Akash, and Faez discuss the future of engineering work, harnessing "generative optimization" to automate engineering design, balancing the needs for precision and creativity, and more.

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3 episodes

episode Why Inference-Time Scaling? artwork

Why Inference-Time Scaling?

In our first episode of No Math AI, Akash and Isha are joined by guest research engineers, Shivchander Sudalairaj, GX Xu, and Kai Xu, to discuss a crucial topic that’s making waves in AI performance: inference-time scaling. Simple put, inference-time scaling is a cost-effective method for improving AI model performance. Discover how this technique enhances reasoning in smaller language models, powers agentic AI, and ensures higher accuracy in mission-critical applications where precision is key. The discussion covers how inference-time scaling boosts model performance and decision-making in AI systems. Our guests also highlight a groundbreaking research paper that unveils how a probabilistic approach to selecting the best answers in reasoning models can significantly enhance accuracy. Read the research paper: https://probabilistic-inference-scaling.github.io/ [https://probabilistic-inference-scaling.github.io/] Guests: * Shivchander Sudalairaj * GX Xu * Kai Xu

18. mar. 202523 min