Performance optimization in production can feel like searching for a needle in a haystack. You know there are opportunities out there, but finding them efficiently is another story. That's exactly what I discovered when testing Hud's MCP integration with Augment - and the results were nothing short of impressive.
One of our customers was already using Augment as their coding agent, so we decided to put Hud's MCP integration through its paces. The onboarding process was refreshingly straightforward, and I immediately appreciated how Hud provided context about my application right from the start.
Data-driven insights are what get me excited about any tool, and Hud delivered on that front immediately.
Here's where things got interesting. I asked Augment to find performance opportunities in our production environment, and the integration between Augment and Hud worked seamlessly.
Augment was able to query Hud's data at multiple levels:
This dual-layer approach gave us a comprehensive view of where performance issues were hiding.
What really stood out was how Augment ranked the opportunities. Instead of just listing potential issues, it prioritized them based on:
This level of clarity was something I hadn't experienced with other agents so far (including Sonnet 4). It meant we could focus our efforts where they would have the most impact.
With clear priorities in hand, I moved forward to fix the top issue. The process was smooth, and I was able to get to a working PR quickly.
Hud's context engine visualizations were particularly helpful during this phase. They allowed me to monitor our progress in real-time and adjust my prompts accordingly. It was like having a performance dashboard that actually helped you make better decisions.
There was one feature I found myself missing: the ability to set granular permissions for the auto-agent mode. While fully manual mode can be tiring, I wanted the ability to approve MCP actions automatically in certain scenarios. I'm confident this is on their roadmap.
This experience transformed how I think about performance optimization. Instead of it being a time-consuming investigation, hunting for performance opportunities has become my new between-meetings hobby. The combination of Augment's intelligent analysis and Hud's comprehensive data made what used to be a tedious process into something genuinely enjoyable.
The integration between these tools represents a new paradigm in development workflow-one where AI agents can access real production data to provide actionable insights, and developers can act on those insights with confidence.
Ready to discover your own performance opportunities? The combination of intelligent coding agents and comprehensive observability data might just be the productivity boost your team needs.