The AI Agent Production Dilemma: How to Stop Manual Tuning and Embrace Continuous Improvement
Published:Jan 15, 2026 00:20
•1 min read
•r/mlops
Analysis
This post highlights a critical challenge in AI agent deployment: the need for constant manual intervention to address performance degradation and cost issues in production. The proposed solution of self-adaptive agents, driven by real-time signals, offers a promising path towards more robust and efficient AI systems, although significant technical hurdles remain in achieving reliable autonomy.
Key Takeaways
- •AI agents often degrade in production due to model updates, user behavior, and changing environments.
- •Manual prompt and tool tuning is a time-consuming and inefficient process for maintaining agent performance.
- •The author proposes a system where agents continuously improve themselves based on real-time feedback, evaluations, and costs.
Reference
“What if instead of manually firefighting every drift and miss, your agents could adapt themselves? Not replace engineers, but handle the continuous tuning that burns time without adding value.”