Data quality is more central than ever to marketing strategies. Knowing how to interpret it accurately is therefore crucial to effectively guiding strategic decisions. But marketing professionals are now facing a new challenge: the biased interpretation of open rates. To address this issue, we’ve developed a feature that enhances the accuracy of email campaign analysis by detecting openings suspected to be generated by Apple Mail Privacy Protection bots.
We explain it all in this article.
An analysis that isn’t always accurate
With the introduction of Apple’s Mail Privacy Protection (MPP) feature, a new reality has emerged for marketers: emails can be “opened” automatically by intermediary servers, without any real human interaction. This results in artificially inflated open rates, which can distort the interpretation of campaign performance.
- This phenomenon has two direct effects:
It artificially increases open rates, making campaigns appear more successful than they really are.
- It disrupts automation scenarios triggered by an open (e.g., personalized follow-up), since they can be activated without the subscriber actually viewing the message.
To be able to properly adjust your campaigns, every interaction counts. This loss of accuracy negatively impacts decision-making and the effectiveness of marketing strategies.
What the feature enables
It allows you to easily isolate and filter out these suspicious openings to get a more accurate view of your recipients’ real behavior. Here are the main benefits:
- Smart detection
Suspected openings associated with IP addresses known to be used by Apple MPP servers are automatically identified and flagged as suspicious. - User control
The interface offers a simple checkbox that lets you include or exclude these openings in your analysis. This option is available directly within the analytics pages, with no technical setup required. - Adjustable reports
When exporting your reports in .xlsx format, you can choose whether or not to include this data, ensuring consistency between your internal dashboards and your exports. - Dynamic updates
An opening initially suspected to be automated can later be reclassified as human if a real interaction (such as a click) is detected from Apple Mail. This keeps your analysis dynamic and accurate.
Strategic benefits
While many platforms either completely remove these skewed openings from statistics or offer no visibility to users, our feature takes a transparency- and flexibility-focused approach.
- More reliable analysis: it distinguishes human behaviors from those attributed to Apple bots, in order to provide more reliable statistics.
- Stronger strategic decisions: by working with cleaner data, you can fine-tune your actions with greater accuracy.
- Ease of use: everything is integrated into the existing interface, with no need for technical support or complex setup.
- Increased transparency: you have the choice to include or exclude these openings depending on your analysis goals. The data is not imposed—it adapts to your needs.
A feature that stands out from the competition
While many platforms ignore these suspicious openings or offer no visibility to users, our feature takes a transparency- and flexibility-focused approach.
We don’t make the choice for you. You decide:
- What you want to display.
- How you want to interpret your data.
- How you adjust your strategies accordingly.
This ability to adapt is invaluable in a digital world where the rules evolve quickly and businesses need to maintain control over the quality of their analytics.
Two real-world use cases
Optimizing an automated scenario
Imagine a user analyzing a follow-up scenario triggered by email opens. By checking the “Exclude robot-generated openings” box, they observe a significant drop in open rates—but also a stronger correlation with click-through rates.
They realize their automation was partly triggered by false openings. They adjust their criteria to target only genuinely active subscribers, optimizing both resources and message relevance.
Comparing real engagement
A marketing team running a major campaign compares open rates with and without Apple openings included. The result is clear: the iOS segment appears highly active due to phantom opens.
By excluding this data, the team discovers that other segments—less exposed to bots—are actually more engaged. This insight helps them refine their targeting and redirect their next message to a more responsive audience.
In conclusion
With digital privacy becoming a core concern, marketing professionals must be able to adapt without sacrificing the reliability of their metrics.
With this feature, you have the tools to keep measuring, understanding, and acting effectively—while maintaining confidence in the true impact of your efforts.