The thinking lever
Adaptive thinking and effort controls give developers a new decision: how much should Claude reason for a given task? This session covers thinking budgets, effort levels, and the cost, latency, and quality tradeoffs involved.

▶︎
Memory and dreaming for self learning agents

▶︎
The expanding toolkit

▶︎
14. Why Persistence is Required in LangGraph | Agentic Chatbot Part 2 | Agentic AI Course

▶︎
Inside How Anthropic Is Building the Next Claude | Alex Albert

▶︎
How AI agents & Claude skills work (Clearly Explained)

▶︎
How we Claude Code

▶︎
Stanford CS153 Frontier Systems | Jensen Huang from NVIDIA on the Compute Behind Intelligence

▶︎
Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

▶︎
Beyond the basics with Claude Code

▶︎
FULL Claude Tutorial For Beginners in 2026! (FULL COURSE)

▶︎
Demis Hassabis: Why AGI is Bigger than the Industrial Revolution & Where Are The Bottlenecks in AI

▶︎
Building with Claude on Google Cloud

▶︎
How AirOps chases friction to build AI products with Claude

▶︎
Claude Code best practices | Code w/ Claude

▶︎
Anthropic's Boris Cherny: Why Coding Is Solved, and What Comes Next

▶︎
CLAUDE CODE ADVANCED FULL COURSE (3 HOURS)

▶︎
Full Walkthrough: Workflow for AI Coding — Matt Pocock

▶︎
Tool, skill, or subagent? Decomposing an agent that outgrew its prompt

▶︎
Introducing Managed Deep Agents | Interrupt 26

▶︎
