Apple Mail / Gmail / Outlook split across opens. Drives template-testing decisions; Apple MPP inflates the open-rate signal.
At a glance
The distribution of opens across email clients, Apple Mail, Gmail, Outlook, and the rest, for the period. This card answers two practical questions at once. First, where do you need to render correctly? If 40 percent of your opens are Apple Mail and 35 percent Gmail, those two clients decide whether your template looks right for three-quarters of your audience, and they have very different rendering quirks (dark-mode handling, image blocking, CSS support). Second, how much of your open-rate signal is real? Apple Mail Privacy Protection auto-opens every message regardless of whether the recipient read it, so a large Apple share inflates your raw open rate and makes it a less trustworthy engagement metric. The client split is therefore both a QA input for the design team and a confound-sizing tool for anyone interpreting open rate.
| What it counts | The share of total opens attributable to each email client in the period, Apple Mail (iOS Mail and macOS Mail), Gmail, Outlook / Microsoft, Yahoo, and an “other” bucket. Reported as a distribution (shares summing to 100 percent), not as absolute open counts. |
| Why it matters for design | Email clients render the same HTML differently. Apple Mail and Gmail dominate most consumer lists and disagree on dark mode, image handling, and CSS support. Knowing your top two or three clients tells the design team exactly which clients to QA every template against before sending. |
| Why it matters for open-rate trust | Apple Mail Privacy Protection pre-fetches and auto-opens messages, registering an “open” whether or not the recipient looked. A high Apple share means a large slice of your open count is machine-generated, so raw open rate over-states real engagement. This card sizes that distortion. |
| What it is not | Not an engagement-quality metric in itself. A client with a high open share is not necessarily a high-value segment, especially Apple, whose opens are inflated. Read it as context for other metrics, not as a performance score. |
| Currency | n/a, this is a distribution of opens. |
| Time window | 30D (30-day rolling). The client mix is stable, so a rolling 30-day view is the right granularity; sudden shifts usually mean a tracking or audience change rather than genuine client migration. |
| Alert trigger | None. This is a context and QA card, not an alert. |
| Sentiment key | mc_top_email_clients |
| Roles | owner, marketing |
Calculation
Calculated automatically from your Mailchimp data. See the At a glance summary above for what the metric tracks and the worked example below for a typical reading.Worked example
A homeware brand on Shopify running Mailchimp Standard, consumer audience. Snapshot of open distribution for the 30-day window ending Wednesday 10 Jun 26.| Email client | Open share | Notes |
|---|---|---|
| Apple Mail (iOS + macOS) | 46% | MPP auto-opens included |
| Gmail | 33% | engagement-driven, more trustworthy |
| Outlook / Microsoft | 11% | rendering quirks, QA priority |
| Yahoo / AOL | 6% | |
| Other | 4% |
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Apple Mail at 46 percent is the single largest client, and the largest source of open-rate inflation. Nearly half of recorded opens come from a client that auto-opens via MPP. So the brand’s raw open rate substantially over-states genuine engagement. Implication: for executive reporting, lean on click-to-open rate and click rate rather than raw open rate, and use the MPP-adjusted open figure in
email-open-raterather than the raw number. - Apple and Gmail together are 79 percent of opens. These two clients decide whether the template looks right for four out of five engaged recipients. Design action: every template must be QA’d in both before send. They differ most on dark mode, Apple Mail aggressively inverts colours, which can break light-on-light logos and washed-out CTAs, while Gmail’s dark-mode handling is more conservative.
- Outlook at 11 percent punches above its weight as a QA priority. Outlook’s rendering engine is the most idiosyncratic of the major clients (limited CSS support, image-blocking by default for some configurations). Eleven percent of opens is too large to ignore; a template that looks great in Apple and Gmail can be visibly broken in Outlook. Design action: include Outlook in the QA pass even though it is third.
- The mix is stable and uncontroversial for a consumer brand. A consumer audience skewing Apple-and-Gmail-heavy is exactly what you would expect. A B2B audience would show a far larger Outlook share. If this brand’s Outlook share suddenly jumped, that would suggest an audience-composition change worth understanding, not a design problem.
- How to use this with open rate. Pair the 46 percent Apple share with the open-rate card: it tells you how much MPP adjustment is appropriate. A brand at 46 percent Apple should expect a meaningful gap between raw and MPP-adjusted open rate, and should treat the adjusted figure as the trustworthy one for trend and benchmark comparison.
- Set the template QA matrix. The top two or three clients by open share are the mandatory QA targets for every send.
- Calibrate open-rate interpretation. A high Apple share means raw open rate is inflated; weight click-based metrics for genuine engagement.
- Watch for mix shifts. A sudden change in the distribution usually signals an audience-composition change or a tracking issue, not real client migration.
- Inform dark-mode design. A high Apple share makes dark-mode QA non-optional, Apple’s colour inversion breaks more templates than any other single rendering behaviour.
| Focus | Action |
|---|---|
| Design QA | QA every template against the top clients by open share, Apple and Gmail at minimum, Outlook if its share is material. |
| Open-rate trust | Size the MPP confound from the Apple share; lean on click-based metrics where Apple share is high. |
| Audience monitoring | Treat a sudden mix shift as an audience or tracking change to investigate, not a design issue. |
| Dark mode | Make dark-mode QA mandatory when Apple share is high; its colour inversion is the most common template-breaker. |
Sibling cards merchants should reference together
| Card | Why merchants reach for it |
|---|---|
email-open-rate | The metric this card contextualises. A high Apple share tells you how much the raw open rate is MPP-inflated. |
click-to-open-rate | The MPP-resilient engagement metric. When the Apple share is high, lean on CTOR instead of opens. |
email-click-rate | Clicks are not auto-generated by MPP, so click metrics stay trustworthy regardless of client mix. |
inbox-placement-rate-deliverability | Placement problems are provider-specific; the client split helps confirm which provider’s recipients are going dark. |
email-health-kpis | The composite health score applies an MPP adjustment whose size depends on the Apple share this card reports. |
avg-member-engagement-score-1-5 | MPP-inflated opens can prop up engagement ratings; the client split keeps that confound in view. |
engagement-funnel | The open step of the funnel is the most MPP-distorted; the client split sizes the distortion. |
segments-overview | Client mix can vary by segment; useful when building device or client-specific test segments. |
Reconciling against Mailchimp
Where to look in Mailchimp’s own dashboard:- Mailchimp → Reports → All campaigns, open a campaign report, and find the email-client breakdown in the report’s analytics section. Mailchimp reports opens by client per campaign.
- Mailchimp → Reports → comparative or audience analytics for a cross-campaign client view where available.
- Per-campaign client breakdowns are the raw material; this card aggregates them across the 30-day window into a single distribution.
| Reason | Direction | What to do |
|---|---|---|
| Aggregate vs single campaign. Vortex IQ blends all sends in the window; Mailchimp shows one campaign at a time. | Not directly comparable | Weight per-campaign client splits by each campaign’s open volume to reproduce the aggregate. |
| MPP open inclusion. Both Mailchimp and Vortex IQ count MPP auto-opens as Apple opens. | Both inflated equally | The Apple share is genuinely high on both; this is not a discrepancy, it is the MPP reality. Interpret accordingly. |
| Client detection method. Client identification relies on open-tracking signals; some opens are unattributable and fall into “other”. | Vortex IQ “other” bucket may differ | The unattributable share varies with tracking; do not read the “other” bucket as a specific client. |
| Window alignment. Vortex IQ uses a 30-day rolling window; Mailchimp campaign reports use the campaign’s own window. | Either direction | Aggregate Mailchimp campaigns across the same 30 days for a like comparison. |
| Refresh lag. The distribution recalculates each sync; Mailchimp reports update as opens register. | Vortex IQ moves slowly | Wait for the next sync; check last_synced_at. |