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---
name: xtb-wealthfolio-export
description: Use when converting XTB brokerage .xlsx exports to Wealthfolio-compatible CSV, validating Wealthfolio import rows, checking transaction activity mappings, or debugging exporter.py output.
---
# XTB Wealthfolio Export
Use this skill to create and validate Wealthfolio CSV files from XTB `Cash Operations` data from a copied skill folder. The skill bundles the required Python tools in `scripts/`, so it can run without the original repository as long as Python dependencies are installed.
## Workflow
1. Identify the target workbook. If omitted and exactly one non-lock `.xlsx` exists in the current working directory, the exporter can auto-detect it.
2. Ensure dependencies are available:
`<skill-folder>/scripts/setup-env.sh`
3. Validate the bundled tools:
`<skill-folder>/scripts/validate-export.sh`
4. Create the Wealthfolio CSV from the directory where outputs should be written:
`<skill-folder>/scripts/export-wealthfolio.sh <report.xlsx>`
5. If the user needs a custom path, run:
`<skill-folder>/scripts/export-wealthfolio.sh <report.xlsx> -o <output.csv>`
6. Inspect the generated CSV header and a sample of rows before saying it is import-ready.
7. If row classification looks suspicious, read `references/wealthfolio-csv.md` and compare activity mappings.
## Bundled Tools
- `scripts/exporter.py`: standalone XTB to Wealthfolio CSV exporter.
- `scripts/main.py`: shared XTB parsing helpers used by the exporter.
- `scripts/html_charts.py` and `scripts/assets/`: bundled because `main.py` imports the report helper.
- `scripts/export-wealthfolio.sh`: shell wrapper that runs the bundled exporter.
- `scripts/validate-export.sh`: dependency and schema smoke check.
- `scripts/setup-env.sh`: creates `.venv` in the current working directory and installs dependencies.
- `scripts/requirements.txt`: Python dependencies.
## References
- Read `references/wealthfolio-csv.md` for Wealthfolio schema, XTB activity mapping, and known XTB comment quirks.
## Guardrails
- Do not hand-edit exported CSV rows unless the user asks; prefer fixing `scripts/exporter.py` when mappings are wrong.
- Keep `BUY` and `SELL` trade rows with blank `amount`; Wealthfolio calculates trade amount from `quantity * unitPrice`.
- For pure cash activities, use `$CASH-<CCY>` and set `quantity = 1`, `unitPrice = 1`, and `amount` to the absolute cash value.
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# Wealthfolio CSV Mapping
Load this when validating or debugging XTB to Wealthfolio exports.
## Required Header
`date,symbol,quantity,activityType,unitPrice,currency,fee,amount`
## XTB To Wealthfolio Mapping
- `Stock purchase` or `OPEN BUY` -> `BUY`
- `Stock sale`, `CLOSE SELL`, or `OPEN SELL` -> `SELL`
- `Stock sell` with `CLOSE BUY` -> `SELL` because XTB can encode sale close legs this way
- `Deposit` -> `DEPOSIT`
- `Withdrawal` -> `WITHDRAWAL`
- `Dividend` -> `DIVIDEND`
- `Dividend tax` -> `TAX`
- `Free funds interest` -> `INTEREST`
- `Currency conversion` -> `FEE`
## Row Rules
- `BUY` and `SELL`:
- `symbol`: real ticker when available
- `quantity`: parsed share count
- `unitPrice`: parsed `@ price`
- `fee`: inline trading fee if supported by the exporter, otherwise `0.00`
- `amount`: blank
- Cash activities (`DEPOSIT`, `WITHDRAWAL`, `INTEREST`, `TAX`, `FEE`):
- `symbol`: `$CASH-<CCY>`
- `quantity`: `1`
- `unitPrice`: `1`
- `amount`: absolute cash value
- `DIVIDEND`:
- Keep the real security ticker when available
- Use `quantity = 1`, `unitPrice = 1`, and `amount` as the absolute dividend cash value
## Quantity Parsing
- For comments like `OPEN BUY 6 @ 301.50`, quantity is `6`.
- For split fills like `OPEN BUY 1/100 @ 14.3130`, quantity is the numerator `1`, not `0.01`.
- If no parseable quantity exists, the exporter may fall back to `abs(amount) / price`.
## Validation Commands
- Install dependencies:
`<skill-folder>/scripts/setup-env.sh`
- Validate bundled tools:
`<skill-folder>/scripts/validate-export.sh`
- Generate default CSV:
`<skill-folder>/scripts/export-wealthfolio.sh <report.xlsx>`
- If working inside the original project repository, full tests are also useful:
`.venv/bin/python -m pytest -q`
## Import Readiness Checks
- Header exactly matches the required schema.
- Activity types are among Wealthfolio-supported values used by the exporter.
- Trade rows have blank `amount`.
- Cash rows have nonblank positive `amount` and `$CASH-<CCY>` unless dividend ticker retention applies.
- `CLOSE BUY` stock-sale rows export as `SELL`.
- Split-fill rows use numerator quantity.
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#!/usr/bin/env bash
set -euo pipefail
SCRIPT_DIR="$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)"
if [[ -n "${PYTHON:-}" ]]; then
PYTHON_BIN="$PYTHON"
elif [[ -x ".venv/bin/python" ]]; then
PYTHON_BIN=".venv/bin/python"
else
PYTHON_BIN="python3"
fi
exec "$PYTHON_BIN" "$SCRIPT_DIR/exporter.py" "$@"
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"""XTB report → Wealthfolio CSV exporter.
Wealthfolio expects a CSV with this header:
date,symbol,quantity,activityType,unitPrice,currency,fee,amount
Activity-type mapping from an XTB "Cash Operations" sheet:
Stock purchase (OPEN BUY ...) -> BUY (qty=shares, unitPrice=price)
Stock sale (CLOSE SELL ...) -> SELL (qty=shares, unitPrice=price)
Stock sale (OPEN SELL ...) -> SELL (short open, qty=shares)
Deposit -> DEPOSIT
Withdrawal -> WITHDRAWAL
Dividend -> DIVIDEND
Dividend tax -> TAX
Free funds interest -> INTEREST
Currency conversion -> FEE
Cash activities (DEPOSIT/WITHDRAWAL/DIVIDEND/INTEREST/TAX/FEE) carry their
value in `amount` with `quantity=1`, `unitPrice=1`; `symbol` is `$CASH-<CCY>`
for pure-cash rows and the real ticker for dividends. The `fee` column is only
used for inline BUY/SELL commissions; trades leave `amount` blank (it is
auto-calculated as quantity * unitPrice by Wealthfolio).
Run:
python exporter.py # writes results/<stem>_wealthfolio.csv
python exporter.py -o my.csv EUR_xxx.xlsx
"""
import argparse
import csv
from pathlib import Path
import pandas as pd
import main
from main import (
CONVERSION_RE,
DEPOSIT_RE,
DIVIDEND_RE,
DIVIDEND_TAX_RE,
INTEREST_RE,
PRICE_RE,
TRADE_COMMENT_RE,
WITHDRAW_RE,
find_column,
parse_numeric,
)
FIELDS = ["date", "symbol", "quantity", "activityType", "unitPrice", "currency", "fee", "amount"]
# XTB trade comment captures both the action (OPEN/CLOSE) and side (BUY/SELL).
SHORT_OPEN_RE = __import__("re").compile(r"OPEN\s+SELL", __import__("re").IGNORECASE)
QTY_RE = __import__("re").compile(r"(?:OPEN|CLOSE)\s+(?:BUY|SELL)\s+([\d./]+)", __import__("re").IGNORECASE)
def _trade_quantity(comment: str, value: float, price: float) -> float:
"""Derive executed shares from an XTB trade comment.
XTB writes split fills as "N/M @ price" where N is this fill's share count
and M the parent order size (e.g. "1/100" = 1 share). Prefer the numerator;
fall back to cash / price.
"""
m = QTY_RE.search(comment)
if m:
token = m.group(1)
if "/" in token:
try:
numerator = float(token.split("/", 1)[0])
if numerator > 0:
return numerator
except ValueError:
pass
else:
try:
return float(token.replace(",", "."))
except ValueError:
pass
return round(abs(value) / price, 6) if price > 0 else 0.0
def classify(type_val: str, comment: str) -> str | None:
text = f"{type_val} {comment}".lower()
if DIVIDEND_TAX_RE.search(text):
return "TAX"
if DIVIDEND_RE.search(text):
return "DIVIDEND"
if INTEREST_RE.search(text):
return "INTEREST"
if CONVERSION_RE.search(text):
return "FEE"
if WITHDRAW_RE.search(text):
return "WITHDRAWAL"
if DEPOSIT_RE.search(text):
return "DEPOSIT"
if TRADE_COMMENT_RE.search(comment):
lowered_comment = comment.lower()
lowered_type = type_val.lower()
is_sell = (
"close sell" in lowered_comment
or SHORT_OPEN_RE.search(comment)
or ("close buy" in lowered_comment and "sell" in lowered_type)
)
return "SELL" if is_sell else "BUY"
return None
def _fmt_date(val) -> str:
dt = pd.to_datetime(val, errors="coerce")
if pd.isna(dt):
return ""
return dt.strftime("%Y-%m-%d")
def build_rows(
cash_ops: pd.DataFrame, currency: str
) -> list[dict[str, str | float]]:
type_col = find_column(cash_ops, ["type", "operation"], required=False)
ticker_col = find_column(
cash_ops, ["ticker", "symbol", "instrument", "market"], required=False
)
amount_col = find_column(
cash_ops, ["amount", "value", "net_amount", "cash", "change", "payment"],
required=False,
)
date_col = find_column(
cash_ops, ["time", "date", "operation_date", "booking_date", "transaction_date"],
required=False,
)
comment_col = find_column(cash_ops, ["comment", "description", "details"], required=False)
if not (type_col and amount_col):
return []
rows: list[dict[str, str | float]] = []
for _, row in cash_ops.iterrows():
type_val = str(row.get(type_col, "")).strip()
comment = str(row.get(comment_col, "")) if comment_col else ""
activity = classify(type_val, comment)
if activity is None:
continue
amount = float(parse_numeric(pd.Series([row[amount_col]])).iloc[0])
date = _fmt_date(row.get(date_col)) if date_col else ""
cash_sym = f"$CASH-{currency}"
ticker = str(row[ticker_col]).strip() if ticker_col and pd.notna(row.get(ticker_col)) else ""
if activity in ("BUY", "SELL"):
price = 0.0
m = PRICE_RE.search(comment)
if m:
price = float(parse_numeric(pd.Series([m.group(1)])).iloc[0])
quantity = _trade_quantity(comment, amount, price)
rows.append({
"date": date, "symbol": ticker or cash_sym, "quantity": quantity,
"activityType": activity, "unitPrice": round(price, 6),
"currency": currency, "fee": 0.0, "amount": "",
})
elif activity == "DIVIDEND":
rows.append({
"date": date, "symbol": ticker or cash_sym, "quantity": 1.0,
"activityType": activity, "unitPrice": 1.0,
"currency": currency, "fee": 0.0, "amount": round(abs(amount), 6),
})
elif activity in ("DEPOSIT", "WITHDRAWAL", "INTEREST", "TAX", "FEE"):
rows.append({
"date": date, "symbol": cash_sym, "quantity": 1.0,
"activityType": activity, "unitPrice": 1.0,
"currency": currency, "fee": 0.0, "amount": round(abs(amount), 6),
})
return rows
def export(
xlsx_path: Path | str | None = None,
output_path: Path | str | None = None,
) -> Path:
main.REPORT_FILE = main.resolve_report_file(xlsx_path)
currency = main.detect_currency()
_, cash_ops, _, _ = main.load_data()
rows = build_rows(cash_ops, currency)
if output_path:
out = Path(output_path)
else:
stem = main.REPORT_FILE.stem if main.REPORT_FILE else "portfolio"
out = main.RESULTS_DIR / f"{stem}_wealthfolio.csv"
out.parent.mkdir(parents=True, exist_ok=True)
with out.open("w", newline="", encoding="utf-8") as f:
writer = csv.DictWriter(f, fieldnames=FIELDS)
writer.writeheader()
for r in rows:
amt = r["amount"]
writer.writerow({
"date": r["date"],
"symbol": r["symbol"],
"quantity": f"{r['quantity']:.6f}".rstrip("0").rstrip("."),
"activityType": r["activityType"],
"unitPrice": f"{r['unitPrice']:.6f}".rstrip("0").rstrip("."),
"currency": r["currency"],
"fee": f"{r['fee']:.2f}",
"amount": "" if amt == "" else f"{amt:.6f}".rstrip("0").rstrip("."),
})
return out
def main_cli() -> None:
p = argparse.ArgumentParser(description="Export XTB xlsx to Wealthfolio CSV.")
p.add_argument("input", nargs="?", default=None,
help="Path to the XTB .xlsx report (auto-detected if omitted)")
p.add_argument("-o", "--output", default=None,
help="Output CSV path (default: results/<stem>_wealthfolio.csv)")
args = p.parse_args()
try:
out = export(args.input, args.output)
except (FileNotFoundError, ValueError) as exc:
p.error(str(exc))
print(f"Wrote {out.resolve()} ({out.stat().st_size} bytes)")
if __name__ == "__main__":
main_cli()
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"""Interactive Chart.js charts for the self-contained HTML report.
This module is the only place that knows about Chart.js. It reads the vendored
UMD bundle from assets/ and builds Chart.js config dicts (pure functions) plus
an HTML fragment that inlines the bundle, the data (JSON), and a render script.
"""
from __future__ import annotations
import json
from pathlib import Path
from typing import Any
import pandas as pd
ASSETS_DIR = Path(__file__).resolve().parent / "assets"
CHARTJS_PATH = ASSETS_DIR / "chartjs.umd.min.js"
CHARTJS_VERSION_PATH = ASSETS_DIR / "chartjs.VERSION"
def load_chartjs_inline() -> str:
"""Return the minified Chart.js UMD source, vendored under assets/."""
if not CHARTJS_PATH.exists():
raise FileNotFoundError(
f"Chart.js bundle not found at {CHARTJS_PATH}. "
"Re-vendor it (see assets/chartjs.VERSION)."
)
return CHARTJS_PATH.read_text(encoding="utf-8")
def _iso(value: Any) -> str:
if hasattr(value, "isoformat"):
return value.isoformat()[:10]
return str(value)
def _round_series(values) -> list[float]:
return [round(float(v), 2) for v in values]
def evolution_chart_config(evolution_df: pd.DataFrame, currency: str) -> dict | None:
"""Build a Chart.js line-chart config for cost vs value over time.
Returns None when there is no evolution data (caller omits the card).
"""
if evolution_df is None or evolution_df.empty:
return None
labels = [_iso(d) for d in evolution_df.index]
return {
"type": "line",
"data": {
"labels": labels,
"datasets": [
{
"label": "Cost (invested)",
"data": _round_series(evolution_df["cost"]),
"borderColor": "#6b7280",
"backgroundColor": "#6b7280",
"borderWidth": 2,
"fill": False,
"pointRadius": 0,
"tension": 0.1,
},
{
"label": "Value (realized + unrealized)",
"data": _round_series(evolution_df["total_value"]),
"borderColor": "#2c5282",
"backgroundColor": "#2c5282",
"borderWidth": 2,
"fill": False,
"pointRadius": 0,
"tension": 0.1,
},
{
"label": "Cumulative realized P/L",
"data": _round_series(evolution_df["realized_pl"]),
"borderColor": "#f39c12",
"backgroundColor": "#f39c12",
"borderWidth": 1.5,
"borderDash": [6, 4],
"fill": False,
"pointRadius": 0,
"tension": 0.1,
},
],
},
"options": {
"responsive": True,
"maintainAspectRatio": False,
"interaction": {"mode": "index", "intersect": False},
"plugins": {
"legend": {"position": "bottom",
"labels": {"boxWidth": 12, "font": {"size": 12}}},
},
"scales": {
"x": {"ticks": {"maxRotation": 45, "autoSkip": True}},
"y": {"beginAtZero": False},
},
},
}
DOUGHNUT_COLORS = [
"#2c5282", "#1f9d55", "#f39c12", "#3498db", "#9b59b6",
"#e67e22", "#16a085", "#34495e", "#e3342f", "#7f8c8d",
]
def review_charts_config(
holdings: pd.DataFrame,
flows: dict[str, float],
income_by_period: pd.Series,
currency: str,
) -> dict:
"""Build Chart.js configs for the three review charts.
Returns {'holdings': cfg|None, 'cashflows': cfg|None, 'income': cfg|None}.
Each is None when its source data is empty.
"""
holdings_cfg = _holdings_config(holdings)
cashflows_cfg = _cashflows_config(flows)
income_cfg = _income_config(income_by_period)
return {"holdings": holdings_cfg, "cashflows": cashflows_cfg, "income": income_cfg}
def _holdings_config(holdings: pd.DataFrame) -> dict | None:
if holdings is None or holdings.empty:
return None
alloc_col = "market_value" if "market_value" in holdings.columns else "cost_basis"
filtered = holdings.loc[holdings[alloc_col] > 0]
if filtered.empty:
return None
values = _round_series(filtered[alloc_col])
return {
"type": "doughnut",
"data": {
"labels": [str(t) for t in filtered["ticker"].tolist()],
"datasets": [{
"data": values,
"backgroundColor": [DOUGHNUT_COLORS[i % len(DOUGHNUT_COLORS)]
for i in range(len(values))],
}],
},
"options": {
"responsive": True,
"maintainAspectRatio": False,
"plugins": {"legend": {"position": "right",
"labels": {"boxWidth": 12, "font": {"size": 11}}}},
},
}
def _cashflows_config(flows: dict[str, float]) -> dict | None:
if not flows:
return None
items = {
"Deposits": float(flows["deposits"]),
"Withdrawals": -float(flows["withdrawals"]),
"Interest": float(flows["interest"]),
"Dividends": float(flows["dividends"]),
"Div.tax": float(flows["dividend_tax"]),
"Invested": -float(flows["invested"]),
"Proceeds": float(flows["proceeds"]),
"FX fees": float(flows["conversion_fees"]),
"Fees": -float(flows["fees"]),
}
items = {k: v for k, v in items.items() if abs(v) > 1e-9}
if not items:
return None
labels = list(items.keys())
values = _round_series(items.values())
colors = ["#2ecc71" if v >= 0 else "#e74c3c" for v in items.values()]
return {
"type": "bar",
"data": {"labels": labels,
"datasets": [{"label": "Cash flows", "data": values,
"backgroundColor": colors}]},
"options": {
"responsive": True,
"maintainAspectRatio": False,
"plugins": {"legend": {"display": False}},
"scales": {"x": {"ticks": {"maxRotation": 30, "autoSkip": False}},
"y": {"beginAtZero": True}},
},
}
def _income_config(income_by_period: pd.Series) -> dict | None:
if income_by_period is None or income_by_period.empty:
return None
return {
"type": "bar",
"data": {
"labels": [str(i) for i in income_by_period.index],
"datasets": [{"label": "Income",
"data": _round_series(income_by_period.tolist()),
"backgroundColor": "#3498db"}],
},
"options": {
"responsive": True,
"maintainAspectRatio": False,
"plugins": {"legend": {"display": False}},
"scales": {"x": {"ticks": {"maxRotation": 45, "autoSkip": False}},
"y": {"beginAtZero": True}},
},
}
_RENDER_SCRIPT = r"""
function _bootPortfolioCharts() {
var block = document.getElementById('chart-data');
if (!block) { return; }
var data = JSON.parse(block.textContent);
var ccy = data.currency || 'EUR';
function fmt(v) {
try { return new Intl.NumberFormat('en-US', {style: 'currency', currency: ccy}).format(v); }
catch (e) { return String(v); }
}
function applyTooltip(cfg) {
if (!cfg || !cfg.options) { return; }
cfg.options.plugins = cfg.options.plugins || {};
cfg.options.plugins.tooltip = cfg.options.plugins.tooltip || {};
cfg.options.plugins.tooltip.callbacks = cfg.options.plugins.tooltip.callbacks || {};
if (cfg.type === 'doughnut' || cfg.type === 'pie') {
cfg.options.plugins.tooltip.callbacks.label = function (ctx) {
var total = (ctx.dataset && ctx.dataset.data)
? ctx.dataset.data.reduce(function (a, b) { return a + (typeof b === 'number' ? b : 0); }, 0)
: 0;
var v = (typeof ctx.parsed === 'number') ? ctx.parsed : ctx.raw;
var pct = total > 0 ? (v / total * 100) : 0;
return (ctx.label ? ctx.label + ': ' : '') + fmt(v) + ' (' + pct.toFixed(1) + '%)';
};
return;
}
cfg.options.plugins.tooltip.callbacks.label = function (ctx) {
var label = (ctx.dataset && ctx.dataset.label) ? ctx.dataset.label : '';
var v = (ctx.parsed && Object.prototype.hasOwnProperty.call(ctx.parsed, 'y'))
? ctx.parsed.y : (typeof ctx.parsed === 'number' ? ctx.parsed : ctx.raw);
return label ? (label + ': ' + fmt(v)) : fmt(v);
};
}
function mount(id, cfg, plugins) {
if (!cfg) { return; }
var el = document.getElementById(id);
if (!el) { return; }
applyTooltip(cfg);
var config = {type: cfg.type, data: cfg.data, options: cfg.options};
if (plugins && plugins.length) { config.plugins = plugins; }
new Chart(el.getContext('2d'), config);
}
var gainLossPlugin = {
id: 'gainLoss',
beforeDatasetsDraw: function (chart) {
var ds = chart.data.datasets;
if (ds.length < 2) { return; }
var meta0 = chart.getDatasetMeta(0);
var meta1 = chart.getDatasetMeta(1);
var cost = ds[0].data;
var value = ds[1].data;
if (!meta0 || !meta1 || !meta0.data || !meta1.data) { return; }
var ctx = chart.ctx;
ctx.save();
for (var i = 0; i < value.length - 1; i++) {
var a0 = meta0.data[i], a1 = meta0.data[i + 1];
var b0 = meta1.data[i], b1 = meta1.data[i + 1];
if (!a0 || !a1 || !b0 || !b1) { continue; }
var gain = (value[i] >= cost[i] && value[i + 1] >= cost[i + 1]);
ctx.beginPath();
ctx.moveTo(a0.x, a0.y); ctx.lineTo(a1.x, a1.y);
ctx.lineTo(b1.x, b1.y); ctx.lineTo(b0.x, b0.y);
ctx.closePath();
ctx.fillStyle = gain ? 'rgba(31,157,85,0.25)' : 'rgba(227,52,47,0.25)';
ctx.fill();
}
ctx.restore();
}
};
mount('evolution-chart', data.evolution, [gainLossPlugin]);
mount('holdings-chart', data.holdings);
mount('cashflows-chart', data.cashflows);
mount('income-chart', data.income);
}
if (document.readyState !== 'loading') { _bootPortfolioCharts(); }
else { document.addEventListener('DOMContentLoaded', _bootPortfolioCharts); }
"""
def render_charts_block(
evolution_cfg: dict | None, review_cfg: dict, currency: str
) -> str:
"""Return the HTML fragment: canvases + inlined Chart.js + JSON + render script.
Returns "" when there is nothing to render.
"""
holdings_cfg = review_cfg.get("holdings") if review_cfg else None
cashflows_cfg = review_cfg.get("cashflows") if review_cfg else None
income_cfg = review_cfg.get("income") if review_cfg else None
if evolution_cfg is None and not any([holdings_cfg, cashflows_cfg, income_cfg]):
return ""
parts: list[str] = []
if evolution_cfg is not None:
parts.append(
"<div class='card chart full' id='charts'>\n"
" <h2>Portfolio Evolution — Cost vs Value</h2>\n"
" <div class='chart-wrap' style='height:380px'>"
"<canvas id='evolution-chart'></canvas></div>\n"
"</div>"
)
grid_cells = []
if holdings_cfg is not None:
grid_cells.append(
"<div><h3>Holdings Allocation</h3>"
"<div class='chart-wrap' style='height:300px'>"
"<canvas id='holdings-chart'></canvas></div></div>"
)
else:
grid_cells.append("<div><h3>Holdings Allocation</h3>"
"<p class='muted'>No open positions.</p></div>")
if cashflows_cfg is not None:
grid_cells.append(
"<div><h3>Cash Flows</h3>"
"<div class='chart-wrap' style='height:300px'>"
"<canvas id='cashflows-chart'></canvas></div></div>"
)
else:
grid_cells.append("<div><h3>Cash Flows</h3>"
"<p class='muted'>No cash flows.</p></div>")
# Income is optional: the income cell is omitted entirely when there is no
# income data, unlike holdings/cashflows which always render a cell with a
# muted fallback.
if income_cfg is not None:
grid_cells.append(
"<div><h3>Income Over Time</h3>"
"<div class='chart-wrap' style='height:300px'>"
"<canvas id='income-chart'></canvas></div></div>"
)
charts_id_attr = " id='charts'" if evolution_cfg is None else ""
parts.append(
f"<div class='card chart full'{charts_id_attr}>\n"
" <h2>Charts</h2>\n"
" <div class='chart-grid'>\n " +
"\n ".join(grid_cells) + "\n </div>\n"
"</div>"
)
payload = {
"currency": currency,
"evolution": evolution_cfg,
"holdings": holdings_cfg,
"cashflows": cashflows_cfg,
"income": income_cfg,
}
# Escape < and > so the JSON is always safe to inline inside a <script>
# block, even if a label ever contained the literal "</script>".
data_json = json.dumps(payload).replace("<", "\\u003c").replace(">", "\\u003e")
parts.append(
"<script>\n" + load_chartjs_inline() + "\n</script>\n"
"<script type='application/json' id='chart-data'>" + data_json + "</script>\n"
"<script>\n" + _RENDER_SCRIPT + "\n</script>"
)
return "\n".join(parts)
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@@ -0,0 +1,4 @@
pandas>=2.2,<4
numpy>=1.26,<3
openpyxl>=3.1,<4
yfinance>=0.2,<2
+15
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#!/usr/bin/env bash
set -euo pipefail
SCRIPT_DIR="$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)"
VENV_DIR="${VENV_DIR:-.venv}"
PYTHON_BOOTSTRAP="${PYTHON:-python3}"
if [[ ! -x "$VENV_DIR/bin/python" ]]; then
"$PYTHON_BOOTSTRAP" -m venv "$VENV_DIR"
fi
"$VENV_DIR/bin/python" -m pip install --upgrade pip
"$VENV_DIR/bin/python" -m pip install -r "$SCRIPT_DIR/requirements.txt"
echo "Environment ready: $VENV_DIR"
+35
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@@ -0,0 +1,35 @@
#!/usr/bin/env bash
set -euo pipefail
SCRIPT_DIR="$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)"
if [[ -n "${PYTHON:-}" ]]; then
PYTHON_BIN="$PYTHON"
elif [[ -x ".venv/bin/python" ]]; then
PYTHON_BIN=".venv/bin/python"
else
PYTHON_BIN="python3"
fi
"$PYTHON_BIN" - <<PY
import importlib.util
import sys
from pathlib import Path
script_dir = Path("$SCRIPT_DIR")
sys.path.insert(0, str(script_dir))
for module in ("pandas", "openpyxl"):
if importlib.util.find_spec(module) is None:
raise SystemExit(
f"Missing dependency: {module}. Install with: "
f"{sys.executable} -m pip install -r {script_dir / 'requirements.txt'}"
)
import exporter
required = ["date", "symbol", "quantity", "activityType", "unitPrice", "currency", "fee", "amount"]
if exporter.FIELDS != required:
raise SystemExit(f"Unexpected Wealthfolio fields: {exporter.FIELDS}")
print("XTB Wealthfolio export skill tools are importable.")
PY