Early access open · Launching later this year

The reports your buyer, planner & founder actually open.

Reorder math, markdown plans, weekly trade briefings, and an AI Manager that points at specific SKUs — not generic dashboards. Built for the people making the buy decision.

Drop your email — we'll reach out as early access seats open.

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AI anomaly monitorAll clear

No revenue anomalies detected in the last 48 hours. Yesterday tracked with the same weekday across the prior four weeks.

AI Daily BriefJun 1, 7:00 AM

Revenue tracked 8% above your typical Tuesday at A$14,820. Camille Slip Dress drove the lift — reorder fires next; recommend 240 units to hit 8 weeks cover.

Revenue (30d)
A$48,210
↗ +12.4%
vs previous 30 days
New customers (30d)
197
↗ +100.0%
vs previous 30 days
Orders (lifetime)
318
— steady
all stores
Weeks of cover
6.2w
on target
across active SKUs
Under 5 min to first report10+ planning reports5 AI Manager surfacesZero hallucinated revenueBuilt for fashion, not generic e-commerce

Your AI Manager

Briefings that name the SKU, not the dashboard.

Most analytics tools tell you "revenue is down — go look at Best Sellers." Ours tells you exactly which product is driving the gap, what to do, and when. Four surfaces, delivered to your inbox at the hour you choose.

Daily Brief

Every morning at the time you pick

A 3-5 sentence summary of the last 7 days plus one focus for today. Reads like a memo from a chief-of-staff who already opened the dashboard.

Yesterday's Daily Brief — example

Revenue tracked 8% above your typical Tuesday at $14,820. Camille Slip Dress drove the lift (62 units, $4,940) — supplier MOQ of 100 means the reorder fires next; recommend 240 units to hit 8 weeks cover. Today's focus: confirm the fall delivery split with operations.

Anomaly alerts

Fires only when revenue actually breaks

Compares yesterday's revenue against a four-week rolling baseline for the same weekday. When it fires, the narrative names the SKU that drove the gap.

Anomaly — Monday 14 Oct

Revenue was down 38% vs your typical Monday, driven by Camille Slip Dress (XS / S) showing as sold out on the storefront. Worth a quick stock check on the warehouse split before the afternoon push.

Plan-the-Week memo

Sunday evening, ahead of the week

Forward-looking memo: what to buy, what to clear, what to watch. Cites specific SKUs from the reorder + markdown + anomaly layers.

Plan-the-Week — example

Three urgent reorders this week — Camille Slip Dress (8w cover), Pearl Pumps (6w), Naya Wrap Top (4w). Clearance pass: 17 SKUs over 12 weeks aged in the Dresses category; the Markdown Plan recommends starting with the four highest-value first. No anomalies fired last week — stay the course on the autumn launch cadence.

Weekly Trade Report

Monday at the time you pick

Last week's headline numbers + top 5 by revenue + top 5 by units + the action items that survived the week.

Weekly Trade — example

Last week: revenue $84,200 (+12% vs prior 7d), 412 orders, AOV $204. Camille Slip Dress led revenue ($12,400); Naya Wrap led units (88). Three needs-action items carried over — the highest-value is restocking Pearl Pumps before Friday's Instagram push.

Every AI generation is auditable.

The data block fed to the model is reproducible — no hidden prompts, no hallucinated revenue. Credits are metered per surface so spend is predictable.

Try it free

Planning suite

Reports the buy meeting will run on.

Reorder, Markdown, Allocation, Assortment Health, Size Curve, Weeks of Cover — six reports that move from "what happened?" to "what do we do next?". Every one respects season tags, supplier MOQs, and the cost data you actually have.

01

Reorder

Per-SKU buy quantity weighted against supplier MOQs, current cover, and lead-time demand. Group by supplier so one click = one PO.

02

Markdown Plan

Aging stock surfaced by category with cadence presets per season. Tells you what to discount this week vs the next four.

03

Allocation

Distribute units across stores by velocity, not by guess. New launches get a per-location split that reflects last season's pace.

04

Assortment Health

Per-category breakdown of healthy / at-risk / no-demand SKUs. Spot the dead weight before it ties up working capital.

05

Size Curve

Where your buy is over- or under-allocated vs actual demand. Fix the imbalance before the next PO drops.

06

Weeks of Cover

Cover position per product against the target you set. Below 2w shows up red; above 26w shows up as dead stock.

Built for the team

What you get on your first Monday.

Generic e-commerce dashboards tell everyone the same thing. We carve the surfaces by the decision you're making — founder, buyer, planner, ops.

Founders / business owners

You want to walk into the week knowing the headline number without opening the spreadsheet.

  • Daily Brief in your inbox at the hour you choose
  • Weekly Trade Report Monday morning
  • Anomaly alerts when yesterday actually broke

Buyers

You spend the week deciding what to reorder, how deep, and from which supplier.

  • Reorder report with supplier-MOQ-aware quantities
  • Group-by-supplier toggle for one-PO workflow
  • Per-row AI rationale you can paste into a supplier email

Planners

You decide which products live longer, which mark down, where the next allocation goes.

  • Plan-the-Week memo Sunday evening
  • Markdown Plan with category-level cadence
  • Allocation + Size Curve for the next drop

Merchandisers / ops

You keep the team aligned and the stakeholders briefed without becoming the reporting bottleneck.

  • Schedule branded PDFs to a recipient list on cadence
  • Per-role permissions and scoped store access
  • Sync history so you always know data is fresh

Built for fashion, not generic e-commerce

The details a fashion brand actually needs.

Season tags + cadence

Every report respects season tags. The Markdown Plan has cadence presets for SS / FW / Resort so the timing matches your calendar, not a generic e-commerce one.

Supplier MOQs

Reorder math considers minimum order quantities + values per supplier. Group by supplier and the buy plan rolls into a single PO that actually clears MOQ.

Cost coverage that's honest

Profit and margin numbers skip variants without cost data instead of pretending. When coverage is thin, a workspace fallback (% of price) lets reports work — and flags estimated rows so you don't mistake them for ground truth.

Size curves

Size Curve report shows where your buy was over- or under-allocated vs demand, per product, per size. The next PO fixes the imbalance instead of repeating it.

How it works

Five minutes to first report. Less to your first AI brief.

01

Connect Shopify

Paste a private-app access token. We never see a customer card or write to your store.

02

First sync runs

Streaming sync handles years of data without timing out — products, customers, orders, refunds, line items.

03

Reports + AI populate

Dashboard renders against the synced data. Tomorrow morning the first Daily Brief lands at your chosen hour.

Honest answers

Things people ask before signing up.

Will it work for a single-store brand?

Yes. Starter and Growth both work on one store. The Planning suite is the reason to go Scale — if you don't need supplier-MOQ reorder math or markdown cadence, Growth covers you.

Do I need to be on Shopify Plus?

No. The integration uses a standard private-app access token and works with every Shopify plan. We're conservative with the API budget so we don't trip your rate limit.

Where does my data live?

On our infrastructure, region of your choice (Mumbai by default, EU on request). We don't sell, share, or train models on your data. Disconnecting a store deletes the sync within 24 hours.

Can the AI Manager be wrong?

It cites real numbers from your store — no hallucinated revenue. Where it editorialises (likely driver, recommended action) the briefing is opinion grounded in the data block. We surface that block on every generation so you can verify.

Interested to join?

Leave your email and we'll reach out as early access seats open. Already on the list? Sign in below.