GMV performance
The GMV performance chart plots your Gross Merchandise Value over time. You can switch between three time granularities using the Daily, Weekly, and Monthly toggle above the chart.Daily GMV performance
Daily GMV performance
The daily view gives you the most granular picture of revenue flow. For each day you can see:
daily_gmv— the total GMV generated that daydaily_orders— the number of orders placeddaily_aov— the average order value for that daydaily_subtotal,daily_tax, anddaily_shipping— a breakdown of where revenue came fromprev_day_gmvanddaily_gmv_growth_percent— the previous day’s GMV and the percentage change, so you can immediately see whether you are trending up or down
Weekly GMV performance
Weekly GMV performance
The weekly view aggregates data into entries anchored to the start of each week. The key fields are:
weekly_gmv— total GMV for the weekweekly_orders— total orders placed that weekweekly_aov— average order value across the weekprev_week_gmvandweekly_gmv_growth_percent— the prior week’s GMV and the week-over-week growth rate
Monthly GMV performance
Monthly GMV performance
The monthly view shows the broadest trend, anchored to the first day of each month. Fields include:
monthly_gmv— total GMV for the monthmonthly_orders— total orders placedmonthly_aov— average order value for the monthprev_month_gmvandmonthly_gmv_growth_percent— the prior month’s GMV and the month-over-month growth rate
Average order value
The average order value report tracks how much buyers are spending per order each day. Unlike the single AOV figure on the stat card, this report shows you the full distribution and daily movement.What the AOV report shows
What the AOV report shows
Each data point represents a single day and includes:
daily_aov— the mean order value for that daymedian_order_value— the median, which is less sensitive to outliers caused by a single very large or very small ordermin_orderandmax_order— the lowest and highest order values placed that dayorder_count— how many orders contributed to these figuresprev_day_aovandaov_growth_percent— the prior day’s AOV and the percentage change
daily_aov against median_order_value helps you tell whether a high or low average is driven by a few extreme orders or reflects what typical buyers actually spend.How to use the AOV report
How to use the AOV report
A rising AOV can indicate that promotions are working, upsells are landing, or higher-value buyers are returning. A falling AOV alongside growing order counts may mean buyers are splitting purchases into smaller baskets or that lower-price products are gaining share.Look at the
order_count alongside the AOV figures. A very high AOV on a day with only a handful of orders may be a statistical artefact rather than a real trend.New vs returning buyers
The new vs returning buyers report shows you the daily composition of your buyer base. It answers the question: are you growing through new customer acquisition, repeat purchases, or both?What the report tracks
What the report tracks
For each day, the report surfaces:
new_buyers— the count of buyers placing their first-ever order on that dayreturning_buyers— the count of buyers who have ordered beforetotal_buyers— the combined countnew_buyer_revenueandreturning_buyer_revenue— the revenue generated by each cohortnew_buyer_ratioandreturning_buyer_ratio— the proportional share of each cohort as a decimal
How to interpret the ratios
How to interpret the ratios
A high
new_buyer_ratio means most of your orders are coming from first-time customers. This is healthy if you are in a growth phase, but it can be a warning sign if your business relies on repeat purchases — it may mean retention is weak.A high returning_buyer_ratio signals strong loyalty and repeat behaviour. Monitor returning_buyer_revenue alongside this: if returning buyers generate a disproportionately high share of revenue, they are your most valuable segment and worth protecting with loyalty incentives.The revenue fields (
new_buyer_revenue and returning_buyer_revenue) let you calculate the lifetime value contribution of each cohort. If returning buyers consistently generate more revenue per head, that is a signal to invest more in retention programmes.Cart abandonment rate
The cart abandonment report shows you how many shopping sessions end without a completed purchase. You can filter the chart to the last 7, 30, or 90 days using the toggle above it.What the report tracks
What the report tracks
For each day, the report provides:
total_carts— all cart sessions started that daycarts_with_items— sessions where at least one item was addedconverted_carts— sessions that resulted in a completed orderabandoned_carts— sessions where items were added but no order was placedconversion_rate— the percentage of carts that converted to ordersabandonment_rate— the percentage of carts that were abandonedavg_cart_session_hours— the average duration of a cart session in hours
How to use the abandonment rate
How to use the abandonment rate
A rising abandonment rate is a signal that something in your checkout flow is causing buyers to drop off. Common causes include unexpected shipping costs appearing late in the checkout, friction in the payment step, or a confusing UI.Use
avg_cart_session_hours to understand buyer intent. Very short sessions paired with high abandonment suggest buyers are leaving quickly — possibly before they reach checkout. Longer sessions with high abandonment suggest buyers are reaching late stages but not completing, which may point to payment or pricing issues.Compare conversion_rate over consecutive periods after any checkout changes you make to measure the impact of your improvements.Cart abandonment rates vary significantly by industry and buyer segment. Focus on your own trend over time rather than absolute benchmarks — a consistent downward trend in
abandonment_rate is a reliable signal that your checkout experience is improving.Back to the dashboard overview
Dashboard overview
Return to the main dashboard to see headline stats, order status, payment health, and top products at a glance.