DMARC is supposed to make domain protection and enforcement straightforward. But in reality, most teams spend more time interpreting reports than actually improving their policy posture.
That’s why we’re introducing DMARCeye MCP (Model Context Protocol): a new way to bring your DMARCeye data into LLMs (like ChatGPT), so you can ask questions in plain language and get answers grounded in what your domain is actually doing.
DMARCeye MCP lets you connect your DMARCeye account to ChatGPT and other LLMs, so that you can use natural-language prompts to explore and understand your DMARC data.
Instead of jumping between XML-derived dashboards, exports, and troubleshooting notes, you can ask direct questions like:
The goal is simple: turn DMARC reporting into actionable next steps with guidance that's personalized and domain-specific.
Mailbox providers deliver DMARC aggregate reports as XML. Those reports contain valuable signals, like who is sending on your behalf, whether SPF and DKIM are aligned, which streams are failing, and how much volume is involved.
But XML was never designed to help humans decide what to do next. Even with a DMARC report monitoring platform that parses the data and shows what's happening, many teams still don't know what to do next, or what's safe to change without breaking legitimate email. Here's the data that proves it:
In a snapshot of thousands of domains that DMARCeye has been monitoring since February of 2024:
In other words, most teams either stay in monitoring indefinitely, or they enforce in an “all or nothing” way, jumping straight to 100% enforcement without using DMARC’s built-in enforcement percentage mechanism.
This “all or nothing” approach increases the risk of disrupting legitimate email during policy changes. And the fact that it’s so common highlights the need for clearer, more personalized instruction when transitioning from monitoring to enforcement. DMARCeye MCP enables exactly this.
Connecting DMARCeye to ChatGPT, Claude, Gemini, or any other LLM will change your workflow from “analyze reports” to “ask and act.” Instead of manually digging through sources and authentication outcomes, you can describe what you want to understand, and then iterate until you have a plan you trust.
With MCP enabled, you can use ChatGPT to:
As of the date of this publication, we only support integration with ChatGPT. But support for Claude, Gemini, and other LLMs is coming soon, so you’ll be able to use DMARCeye MCP with the assistant you prefer.
For more information about practical use cases of DMARCeye MCP, see our other article: Use Cases: What You Can Do by Connecting DMARCeye to AI Chat
MCP integration is easy to set up for DMARCeye. It only takes a few minutes and you don't need to be a developer to do it.
DMARCeye hosts the MCP Server for your account, and you simply connect it to your AI assistant of choice. We’ll be expanding support for various LLMs over time, but the setup flow is the same: add the DMARCeye MCP Server, authorize access, then start asking questions.
We intentionally keep the step-by-step instructions inside DMARCeye, so they stay current as assistants evolve.
MCP is a major step forward in our broader promise: personalized DMARC guidance that lowers the barrier to DMARC management. But it’s only one part of what DMARCeye does.
Sign up for a free trial of DMARCeye today and start turning DMARC reports into clear, safer next steps.