Intelligent content that gives practitioners, innovators and leaders an inside look at the present and future of ML & AI technologies.

LATEST
Play Video
EPISODE 760  |  
January 8, 2026
Today, we're joined by Nikita Rudin, co-founder and CEO of Flexion Robotics to discuss the gap between current robotic capabilities and what’s required to deploy fully autonomous robots in the real world. Nikita explains how reinforcement learning and simulation have driven rapid progress in robot locomotion—and why locomotion is still far from “solved.” We dig into the sim2real gap, and how adding visual inputs introduces noise and significantly complicates sim-to-real transfer. We also explore the debate between end-to-end models and modular approaches, and why separating locomotion, planning, and semantics remains a pragmatic approach today. Nikita also introduces the concept of "real-to-sim", which uses real-world data to refine simulation parameters for higher fidelity training, discusses how reinforcement learning, imitation learning, and teleoperation data are combined to train robust policies for both quadruped and humanoid robots, and introduces Flexion's hierarchical approach that utilizes pre-trained Vision-Language Models (VLMs) for high-level task orchestration with Vision-Language-Action (VLA) models and low-level whole-body trackers. Finally, Nikita shares the behind-the-scenes in humanoid robot demos, his take on reinforcement learning in simulation versus the real world, the nuances of reward tuning, and offers practical advice for researchers and practitioners looking to get started in robotics today.
RECENT
twiml-aakanksha-chowdhery-rethinking-pre-training-agentic-ai-sq
EPISODE 759  |  
December 17, 2025
twiml-munawar-hayat-why-vision-language-models-ignore-what-they-see-sq
EPISODE 758  |  
December 9, 2025
EPISODE 757  |  
December 2, 2025

INSIGHTS

LATEST REPORT

Retrieval-augmented generation promised to bring ChatGPT’s magic to enterprise data. But while organizations rushed to build chatbots, they often struggled to deliver real business value. This comprehensive guide reveals RAG’s full potential beyond conversational interfaces.

Community

The TWIML Community is a global network of machine learning, deep learning and AI practitioners and enthusiasts.

We organize ongoing educational programs including study groups for several popular ML/AI courses such as Fast.ai Deep Learning, Machine learning and NLP, Stanford CS224N, Deeplearning.ai and more. We also host several special interest groups focused on topics like Swift for Tensorflow, and competing in Kaggle competitions.

TWIML Community

Work with Us

TWIML creates and curates intelligent content that helps makers build better experiences for their users, and gives executives an inside look at the real-world application of intelligence technologies. We also build and support communities of innovators who are as excited about these technologies as we are. We advise a variety of leading organizations as well, helping to craft strategies for taking advantage of the vast opportunities created by ML and AI.