cash-flow-snapshot
Reads AR/AP, historical cash timing, and known fixed costs from QuickBooks, PayPal, Stripe, or Square — or a CSV upload — and produces a 30/60/90-day cash flow forecast with percentage-variance confidence bands and named risk flags. Delivers a chat summary and a downloadable XLSX. Use when the user asks "forecast my cash flow," "will I make payroll," mentions "runway," or says "cash crunch." Falls back to CSV upload when no connector is live.
How do I install this agent skill?
npx skills add https://github.com/anthropics/knowledge-work-plugins --skill cash-flow-snapshotIs this agent skill safe to install?
- Gen Agent Trust Hubpass
This skill provides financial forecasting by analyzing data from common accounting and payment platforms. It handles sensitive data appropriately within its defined scope as a reporting tool and includes safety reminders for the user.
- Socketpass
No alerts
- Snykpass
Risk: LOW · No issues
What does this agent skill do?
Cash Flow Snapshot
Produces a 30/60/90-day cash flow forecast with percentage-variance confidence bands and named risk flags. Delivers a two-part output: a concise chat summary and a downloadable XLSX workbook.
Quick start
"Will I make payroll next month?"
Claude pulls AR/AP and fixed costs from connected sources, calculates expected inflows and outflows across 30, 60, and 90-day windows, applies confidence bands based on each customer's historical payment variance, and flags specific risks by name.
Workflow
Step 1 — Identify available data sources
Check which connectors are live. Try in this order:
- QuickBooks — primary source for AR aging, AP, and fixed costs
- PayPal — transaction history and settlement timing
- Stripe — charge and payout history
- Square — sales and payout history
- CSV upload — fallback if no connector is connected
If no connector is live and no file is attached, ask the user to either connect a source or upload a CSV (income/expense tabular data, any reasonable format). Note which sources were used in the output — this affects confidence band width.
Step 2 — Pull the data
From QuickBooks:
- AR aging report: customer name, invoice amount, invoice date, due date, days outstanding
- AP: vendor name, amount due, due date
- Recurring fixed costs: rent, payroll, subscriptions (look for recurring transactions)
From PayPal / Stripe / Square:
- Settlement history: transaction date, amount, settlement date
- Use settlement lag (transaction date → payout date) to compute each source's average and variance payment delay
From CSV upload:
- Parse as income/expense tabular data
- Required columns (flexible naming): date, amount, type (income or expense), description
- If columns are ambiguous, show the header row and ask the user to confirm mapping
Step 3 — Compute historical payment timing
For each AR customer (or income source from CSV), calculate:
- Mean payment lag — average days from invoice/transaction date to receipt
- Payment variance — standard deviation of payment lag across last 6–12 payments
- Use variance to set confidence band width (see Step 4)
If fewer than 3 payments exist for a customer, use the population mean as the point estimate and apply a ±30% variance band as the default. When running on CSV data with sufficient history (≥3 payments per source), compute the band from the actual payment variance — do not assume ±30%.
Step 4 — Build the 30/60/90-day forecast
Produce three time windows: 0–30 days, 31–60 days, 61–90 days.
For each window, compute:
| Line | Method |
|---|---|
| Expected inflows | AR due in window, adjusted for mean payment lag |
| Expected outflows | AP due in window + fixed costs falling in window |
| Net cash position | Inflows − Outflows |
| Confidence band | ± weighted average payment variance as a % of expected inflows |
Confidence band formula:
band_pct = weighted_avg_stddev_days / avg_payment_lag_days
low = net_cash × (1 − band_pct)
high = net_cash × (1 + band_pct)
Round band_pct to one decimal place. Cap at ±50% — higher variance means the data is too thin to model; flag it instead (see Step 5).
Step 5 — Flag named risks
Scan for conditions that push the low-band estimate negative or create a liquidity crunch. For each risk found, produce a one-line flag:
- Late-payer risk: "Customer X historically pays 18 days late; that shifts their $8,400 invoice out of the 30-day window into day 48."
- Payroll crunch: "Payroll ($22,000) hits April 15. Low-band cash on hand April 14: $19,200. Shortfall risk: $2,800."
- Thin data warning: "Only 2 payments on record for Customer Y — confidence band set to default ±30%."
- No-connector warning: "Running on CSV data only — no real-time AP or recurring cost data. Confidence bands are wider than normal."
Limit to the top 5 risks by severity (largest dollar impact first).
Step 6 — Deliver outputs
Chat summary (always):
Cash Flow Snapshot — [date range]
Source(s): [connectors used]
Expected Low High
30-day net: $X,XXX $X,XXX $X,XXX
60-day net: $X,XXX $X,XXX $X,XXX
90-day net: $X,XXX $X,XXX $X,XXX
⚠ Risks flagged: [count]
• [risk 1]
• [risk 2]
...
XLSX workbook (always):
Read xlsx/SKILL.md before generating. Produce a workbook with three sheets:
-
Summary — the 30/60/90 forecast table with confidence bands. Beneath each window row, expand inline sub-rows showing the individual transactions that make up its inflows (green) and outflows (red). This makes the estimates auditable without leaving the Summary sheet.
-
Detail — all transactions grouped by window, sorted by date within each group. Include a running net column (cumulative inflows minus outflows within the window) and a subtotal row at the bottom of each window showing total inflows, total outflows, and net. Grey out past transactions in a separate section at the bottom for reference. Ensure all three windows have rows even if one is empty — show a "No transactions in this window" placeholder row.
-
Risks — the flagged risks with dollar impact and affected window.
Save as cash-flow-snapshot-[YYYY-MM-DD].xlsx.
Approval gates
No destructive actions — this skill is read-only. No approval gate required before generating the forecast.
Remind the user after delivery:
"This forecast is based on [sources listed]. It is not a substitute for accounting advice — verify with your bookkeeper before making financing decisions."
Reference files
| File | Load when |
|---|---|
reference/gotchas.md | When a connector returns unexpected data or variance is extreme |
reference/examples/worked-example.md | When modeling the output format for a new data shape |
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/anthropics/knowledge-work-plugins/cash-flow-snapshot">View cash-flow-snapshot on skillZs</a>