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Reading / 2026-05/2026-05-18t221205-walkinglabslearn-harness-engineering

walkinglabs/learn-harness-engineering

A project-based course on building reliable AI coding agent environments, covering the five harness subsystems—instructions, state, verification, scope, and session lifecycle—that turn unreliable model output into dependable engineering results.

May 18, 2026 · tech · repository

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Topics

  • ai-assisted-coding
  • agentic-workflows
  • llm-engineering
  • context-engineering
  • ai-agents

Cited by

  • Agentic workflows

    Systems where AI agents execute multi-step tasks autonomously, raising interconnected questions about harness architecture, state management, reliability engineering, human oversight, and the organizational context those agents operate within.

  • AI agents

    Autonomous systems that plan, act, and verify across tool calls and multi-step workflows, with active debate over architecture choices, coordination costs, memory design, state management, and the governance infrastructure needed to make them reliable.

  • AI-assisted coding

    Using LLMs as coding collaborators spans a spectrum from inline suggestion to fully autonomous multi-agent pipelines, with active debate about reliability, skill atrophy, security exposure, and what human oversight must remain.

  • Context engineering

    Context engineering is the practice of deliberately constructing what an LLM receives in its context window — structuring, compressing, persisting, and retrieving information so agents produce reliable output across tasks and sessions.

  • LLM engineering

    LLM engineering spans the full stack of building with large language models: training, inference optimization, agent architecture, harness design, and the operational tradeoffs that determine whether model capability translates into reliable software.

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