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Prompt engineering may no longer be the real advantage in AI. A new idea called harness engineering is starting to take over, and it explains why the same model can become far more useful depending on the system built around it. Instead of only changing prompts, companies are now focusing on tools, memory, context, permissions, verification, recovery paths, and feedback loops that make AI agents work reliably over time.
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📌 What You’ll See:
Microsoft Research paper on Retrospective Harness Optimization for AI agents
SOURCE: https://arxiv.org/abs/2606.05922
Microsoft Work IQ and the new context layer for AI agents
SOURCE: https://www.microsoft.com/en-us/microsoft-365/blog/2026/06/02/announcing-the-new-work-iq-apis/
Meta AI chatbot breach showing why agent safeguards matter
SOURCE: https://www.reuters.com/legal/government/high-profile-meta-ai-chatbot-breach-spotlights-security-risks-automation-2026-06-03/
AI Harness Engineering as a runtime system for software agents
SOURCE: https://arxiv.org/abs/2605.13357
🚨 Why It Matters
Harness engineering could become one of the biggest advantages in the next phase of AI. As models become more similar, the real difference may come from the system around them: the tools, memory, checks, context, permissions, and workflows that turn raw intelligence into reliable work.
#ai #harness #openai



