Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      BrowserStack launches Figma plugin for detecting accessibility issues in design phase

      July 22, 2025

      Parasoft brings agentic AI to service virtualization in latest release

      July 22, 2025

      Node.js vs. Python for Backend: 7 Reasons C-Level Leaders Choose Node.js Talent

      July 21, 2025

      Handling JavaScript Event Listeners With Parameters

      July 21, 2025

      I finally gave NotebookLM my full attention – and it really is a total game changer

      July 22, 2025

      Google Chrome for iOS now lets you switch between personal and work accounts

      July 22, 2025

      How the Trump administration changed AI: A timeline

      July 22, 2025

      Download your photos before AT&T shuts down its cloud storage service permanently

      July 22, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      Laravel Live Denmark

      July 22, 2025
      Recent

      Laravel Live Denmark

      July 22, 2025

      The July 2025 Laravel Worldwide Meetup is Today

      July 22, 2025

      Livewire Security Vulnerability

      July 22, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      Galaxy Z Fold 7 review: Six years later — Samsung finally cracks the foldable code

      July 22, 2025
      Recent

      Galaxy Z Fold 7 review: Six years later — Samsung finally cracks the foldable code

      July 22, 2025

      Halo and Half-Life combine in wild new mod, bringing two of my favorite games together in one — here’s how to play, and how it works

      July 22, 2025

      Surprise! The iconic Roblox ‘oof’ sound is back — the beloved meme makes “a comeback so good it hurts” after three years of licensing issues

      July 22, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Machine Learning»Context Engineering for AI Agents: Key Lessons from Manus

    Context Engineering for AI Agents: Key Lessons from Manus

    July 22, 2025

    Building effective AI agents means more than just picking a powerful language model. As the Manus project discovered, how you design and manage the “context” – the information the AI processes to make decisions – is paramount. This “context engineering” directly impacts an agent’s speed, cost, reliability, and intelligence.

    Initially, the choice was clear: leverage the in-context learning of frontier models over slow, iterative fine-tuning. This allows for rapid improvements, shipping changes in hours instead of weeks, making the product adaptable to evolving AI capabilities. However, this path proved far from simple, leading to multiple framework rebuilds through what they affectionately call “Stochastic Graduate Descent” – a process of experimental guesswork.

    Here are the critical lessons learned at Manus for effective context engineering:

    1. Design Around the KV-Cache

    The KV-cache is vital for agent performance, directly affecting latency and cost. Agents continuously append actions and observations to their context, making the input significantly longer than the output. KV-cache reuses identical context prefixes, drastically reducing processing time and cost (e.g., a 10x cost difference with Claude Sonnet).

    To maximize KV-cache hits:

    • Stable Prompt Prefixes: Even a single-token change at the start of your system prompt can invalidate the cache. Avoid dynamic elements like precise timestamps.
    • Append-Only Context: Do not modify past actions or observations. Ensure deterministic serialization of data (like JSON) to prevent subtle cache breaks.
    • Explicit Cache Breakpoints: Some frameworks require manual insertion of cache breakpoints, ideally after the system prompt.

    2. Mask, Don’t Remove

    As agents gain more tools, their action space becomes complex, potentially “dumbing down” the agent as it struggles to choose correctly. While dynamic tool loading might seem intuitive, it invalidates the KV-cache and confuses the model if past context refers to undefined tools.

    Manus instead uses a context-aware state machine to manage tool availability by masking token logits during decoding. This prevents the model from selecting unavailable or inappropriate actions without altering the core tool definitions, keeping the context stable and the agent focused.

    3. Use the File System as Context

    Even with large context windows (128K+ tokens), real-world agentic observations (like web pages or PDFs) can easily exceed limits, degrade performance, and incur high costs. Irreversible compression risks losing crucial information needed for future steps.

    Manus treats the file system as the ultimate, unlimited context. The agent learns to read from and write to files on demand, using the file system as externalized, structured memory.Compression strategies are always designed to be restorable (e.g., keeping a URL but dropping page content), effectively shrinking context length without permanent data loss.

    4. Manipulate Attention Through Recitation

    Agents can lose focus or forget long-term goals in complex, multi-step tasks. Manus tackles this by having the agent constantly rewrite a todo.md file. By reciting its objectives and progress into the end of the context, the model’s attention is biased towards its global plan, mitigating “lost-in-the-middle” issues and reducing goal misalignment. This leverages natural language to bias the AI’s focus without architectural changes.

    5. Keep the Wrong Stuff In

    Agents will make mistakes – hallucinate, encounter errors, misbehave. The natural impulse is to clean up these failures. However, Manus found that leaving failed actions and observations in the context implicitly updates the model’s internal beliefs. Seeing its own mistakes helps the agent learn and reduces the chance of repeating the same error, making error recovery a key indicator of true agentic behavior.

    6. Don’t Get Few-Shotted

    While few-shot prompting is powerful for LLMs, it can backfire in agents by leading to mimicry and sub-optimal, repetitive behavior. When the context is too uniform with similar action-observation pairs, the agent can fall into a rut, leading to drift or hallucination.

    The solution is controlled diversity. Manus introduces small variations in serialization templates, phrasing, or formatting within the context. This “noise” helps break repetitive patterns and shifts the model’s attention, preventing it from getting stuck in a rigid imitation of past actions.

    In conclusion, context engineering is very new but a critical field for AI agents. It goes beyond raw model power, dictating how an agent manages memory, interacts with its environment, and learns from feedback. Mastering these principles is essential for building robust, scalable, and intelligent AI agents.


    Sponsorship Opportunity: Reach the most influential AI developers in US and Europe. 1M+ monthly readers, 500K+ community builders, infinite possibilities. [Explore Sponsorship]

    The post Context Engineering for AI Agents: Key Lessons from Manus appeared first on MarkTechPost.

    Source: Read More 

    Facebook Twitter Reddit Email Copy Link
    Previous ArticleBuilding a Versatile Multi‑Tool AI Agent Using Lightweight Hugging Face Models
    Next Article Beyond accelerators: Lessons from building foundation models on AWS with Japan’s GENIAC program

    Related Posts

    Machine Learning

    How to Evaluate Jailbreak Methods: A Case Study with the StrongREJECT Benchmark

    July 22, 2025
    Machine Learning

    Building a Smart Python-to-R Code Converter with Gemini AI-Powered Validation and Feedback

    July 22, 2025
    Leave A Reply Cancel Reply

    For security, use of Google's reCAPTCHA service is required which is subject to the Google Privacy Policy and Terms of Use.

    Continue Reading

    CVE-2025-38348 – “Intersil p54 WiFi Interface Buffer Overflow Vulnerability”

    Common Vulnerabilities and Exposures (CVEs)

    Amazon Q Developer gets new agentic coding experience in Visual Studio Code

    Tech & Work

    Data Structures and Algorithms (DSA): A Complete Tutorial

    Development

    How the Senate’s ban on state AI regulation imperils internet access

    News & Updates

    Highlights

    CVE-2025-20271: Cisco Meraki VPN Bug Exposes MX and Z Series Devices to Remote DoS Attacks

    June 19, 2025

    CVE-2025-20271: Cisco Meraki VPN Bug Exposes MX and Z Series Devices to Remote DoS Attacks

    Cisco has disclosed a vulnerability in its Meraki MX and Z Series devices, affecting the Cisco AnyConnect VPN service and allowing unauthenticated remote attackers to trigger a denial-of-service (DoS) …
    Read more

    Published Date:
    Jun 19, 2025 (4 hours, 49 minutes ago)

    Vulnerabilities has been mentioned in this article.

    CVE-2024-1244 – OSSEC HIDS Windows UNC Path Configuration Vulnerability

    June 11, 2025

    10 Amazing Web Developer Resume Examples for Different Web Dev Specializations

    July 16, 2025

    Xbox dominates April 2025 sales charts in the US as Oblivion Remastered sells far faster than the original game

    May 21, 2025
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.