Context Engineering for AI Agents with LangChain and Manus
Skills:
LLM Engineering90%
Key Takeaways
Applying context engineering strategies for AI agents using LangChain and Manus
Original Description
Join us for a deep dive into context engineering – the critical practice that determines how well your AI agents perform in production. Lance Martin from LangChain and Manus co-founder Yichao "Peak" Ji share battle-tested strategies for managing context windows, optimizing performance, and building agents that scale. Peak was recently named one of MIT's Innovators Under 35 for his work on AI agents. Here, we cover Manus's context engineering approach.
Strategies include:
(1) **Context reduction** via dual-form tool results (full/compact) with policy-based compaction and schema-driven summarization
(2) **Context offloading** through layered action spaces (function calling → sandbox utils → packages/APIs) with filesystem-based state management and shell utilities instead of vectorstore indexing
(3) **Context isolation** using minimal sub-agents (planner, knowledge manager, executor) with agent-as-tool paradigm and constrained decoding for schema-based inter-agent communication.
📊 Access the Presentations:
Lance Martin's slides (LangChain): https://docs.google.com/presentation/d/16aaXLu40GugY-kOpqDU4e-S0hD1FmHcNyF0rRRnb1OU/edit?slide=id.p#slide=id.p
Yichao "Peak" Ji's slides (Manus): https://drive.google.com/file/d/1QGJ-BrdiTGslS71sYH4OJoidsry3Ps9g/view?usp=sharing
Ready to start building reliable agents?
Sign up for LangSmith, our agent observability & evals platform: https://www.langchain.com/langsmith/?utm_medium=social&utm_source=youtube&utm_campaign=q4-2025_meetup-manus_co
Learn how to observe and evaluate agents on LangChain Academy:
https://academy.langchain.com/courses/quickstart-langsmith-essentials/?utm_medium=social&utm_source=youtube&utm_campaign=q4-2025_youtube-academy-links_aw
Chapters
0:01:00 Introduction to context engineering
0:12:00 Why context engineering in Manus
0:15:00 Context reduction in Manus
0:19:20 Context isolation in Manus
0:22:17 Context offloading in Manus
0:29:00 Avoid context over-engineering
0:31:00 Q&A: Explain sandbox util
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Chapters (7)
1:00
Introduction to context engineering
12:00
Why context engineering in Manus
15:00
Context reduction in Manus
19:20
Context isolation in Manus
22:17
Context offloading in Manus
29:00
Avoid context over-engineering
31:00
Q&A: Explain sandbox util
🎓
Tutor Explanation
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