
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence) AI Trends 2026: OpenClaw Agents, Reasoning LLMs, and More with Sebastian Raschka - #762
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Feb 26, 2026 Sebastian Raschka, independent LLM researcher and author of books on building reasoning models. He breaks down 2026 trends: the move from scaling to reasoning-focused post-training and inference tricks. Talks practical agentic workflows and local agents like OpenClaw, tool integration vs model quality, architecture shifts (MOE, attention tweaks), long-context trade-offs, and challenges in continual learning.
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OpenClaw Sparked Local Agent Interest
- OpenClaw (formerly MoldBot) popularized local agent experimentation and excited non-experts about agent capabilities.
- Sebastian sees it as a demo platform for calendar/email automation but remains cautious about trust for personal finance/calendar control.
Retain Coding Skills To Use LLMs Effectively
- Keep coding fundamentals even with LLM help to be more efficient.
- Sebastian fixed a misaligned dark mode button faster by editing CSS himself than by iteratively prompting the LLM.
Verifiable Rewards Power Reasoning Training
- Verifiable rewards (math, code) enable large-scale RL-style post-training because correctness can be checked automatically.
- DeepMind/DeepSeq approaches use symbolic checks, compilers or test runners to score billions of generated answers cheaply.






