Funk-lab/tools/finlab/dashboard/server.py
alkatrazz efec4a5dfe feat(finlab): import déterministe d'un relevé de compte Revolut → positions
Procédure de mise à jour du portefeuille « à chaque trade » à partir des relevés
Revolut, sans IA (exact).

- finlab/revolut.py : reconstruit les positions depuis le « trading account
  statement » (toutes transactions) par COÛT MOYEN (achats − ventes, PRU pondéré),
  mappe les tickers Revolut→Yahoo (ASME→ASML.AS, TOTB→TTE.PA, BNP→BNP.PA, AXA→CS.PA,
  FTE→ORA.PA, AIR1→AI.PA) et vérifie les cours. Idempotent, ne touche qu'un compte,
  préserve les autres comptes/cash/commentaires (round-trip ruamel.yaml)
- CLI : python -m finlab.cli import-revolut <csv> [--write] [--account]
- Dashboard : le bouton « Importer un relevé » accepte les CSV → endpoints
  /api/revolut/preview (aperçu) + /api/revolut/apply (écrit), avec garde anti-évasion
  de chemin ; le front affiche les positions + bouton « Appliquer »
- portfolio.yaml : compte Revolut reconstruit depuis l'historique complet → ajoute
  AMAT (achetée le 29/06, manquait) ; valeurs alignées au centime
- requirements : + ruamel.yaml ; persona console + admin/ia/finlab.md documentés

Validé sur l'historique réel : 11 positions reconstruites = portfolio.yaml existant
(cours vérifiés, 0 warning) + AMAT. Flux dashboard upload→preview→apply testé
(TestClient), JS OK.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-30 16:26:26 +02:00

278 lines
10 KiB
Python

"""FinLab Dashboard — interface web (graphiques marché, portefeuille, watchlists, actions).
Backend FastAPI exposant les données finlab en JSON. **Aucun LLM, aucune clé API** : c'est de
la donnée et de l'analyse technique pure. La partie conversationnelle/agentique vit dans la
console Claude Code (bouton « Console IA » → /console).
Lancement : uvicorn dashboard.server:app --host 0.0.0.0 --port 8800
"""
from __future__ import annotations
import datetime as dt
import math
from pathlib import Path
import pandas as pd
import yaml
from fastapi import FastAPI, File, Request, UploadFile
from fastapi.responses import FileResponse, JSONResponse
from fastapi.staticfiles import StaticFiles
from finlab import (
alerts,
data,
digest as digest_mod,
fundamental,
indicators as ind,
plan as plan_mod,
scanner,
technical,
tracker,
)
app = FastAPI(title="FinLab Dashboard")
STATIC = Path(__file__).resolve().parent / "static"
# ── Helpers ───────────────────────────────────────────────────────────────────
def _clean(obj):
"""Rend un objet JSON-safe (NaN/inf → None, types numpy → natifs)."""
if isinstance(obj, float):
return None if (math.isnan(obj) or math.isinf(obj)) else obj
if isinstance(obj, dict):
return {k: _clean(v) for k, v in obj.items()}
if isinstance(obj, (list, tuple)):
return [_clean(v) for v in obj]
if hasattr(obj, "item"): # numpy scalar
return _clean(obj.item())
return obj
def _records(df: pd.DataFrame):
return _clean(df.where(pd.notna(df), None).to_dict(orient="records"))
@app.exception_handler(Exception)
async def _on_error(request: Request, exc: Exception):
# Un échec ponctuel (ticker introuvable, Yahoo bridé...) ne doit pas casser le front.
return JSONResponse(status_code=500, content={"error": str(exc)})
# ── API ───────────────────────────────────────────────────────────────────────
@app.get("/healthz")
def healthz():
return {"ok": True}
def _positions_of(df, base):
return [
{
"ticker": r["ticker"], "secteur": r["secteur"], "qte": r["qté"],
"cours": r["cours"], "dev": r["dev"],
"valeur": r[f"valeur_{base}"], "pru": r[f"PRU_{base}"],
"pnl": r[f"P&L_{base}"], "pnl_pct": r["P&L_%"], "poids": r.get("poids_%"),
}
for r in df.to_dict(orient="records")
]
@app.get("/api/portfolio")
def api_portfolio():
per, gagg = tracker.build_all(with_sector=True)
base = gagg["base"]
accounts = [
{
"name": a["name"], "type": a["type"],
"total": a["agg"]["total"], "cash": a["agg"]["cash"], "invested": a["agg"]["invested"],
"pnl_total": a["agg"]["pnl_total"], "pnl_pct": a["agg"]["pnl_pct"],
"by_sector": a["agg"]["by_sector"].to_dict(),
"positions": _positions_of(a["df"], base),
}
for a in per
]
return _clean({
"base": base, "total": gagg["total"], "cash": gagg["cash"], "invested": gagg["invested"],
"pnl_total": gagg["pnl_total"], "pnl_pct": gagg["pnl_pct"],
"by_sector": gagg["by_sector"].to_dict(),
"accounts": accounts,
})
@app.get("/api/themes")
def api_themes():
themes = yaml.safe_load(open(scanner.WATCHLISTS_FILE, encoding="utf-8"))["themes"]
return {"themes": themes}
@app.get("/api/scan")
def api_scan(theme: str = "all", target: float = 5.0, bullish: bool = False):
df = scanner.scan_theme(theme, target, bullish_only=bullish)
return {"theme": theme, "target": target, "rows": _records(df)}
# Couches de la chaîne de valeur IA/datacenter, de l'électron au logiciel.
LAYER_ORDER = ["energy_power", "chips", "datacenter_infra", "cables_optical_network", "software_cloud"]
@app.get("/api/layers")
def api_layers(target: float = 5.0):
"""Watchlists regroupées par couche de la chaîne IA, avec biais/signal par titre."""
themes = yaml.safe_load(open(scanner.WATCHLISTS_FILE, encoding="utf-8"))["themes"]
order = LAYER_ORDER + [k for k in themes if k not in LAYER_ORDER]
layers = []
for key in order:
if key not in themes:
continue
df = scanner.scan(themes[key], target)
layers.append({"key": key, "tickers": _records(df)})
return {"layers": layers}
@app.get("/api/ohlc")
def api_ohlc(ticker: str, period: str = "6mo"):
df = data.history(ticker, period=period)
idx = [d.strftime("%Y-%m-%d") for d in df.index]
candles = [
{"time": t, "open": round(float(o), 2), "high": round(float(h), 2),
"low": round(float(l), 2), "close": round(float(c), 2)}
for t, o, h, l, c in zip(idx, df["Open"], df["High"], df["Low"], df["Close"])
]
volume = [
{"time": t, "value": float(v), "color": "#2a9d8f88" if c >= o else "#e76f5188"}
for t, v, o, c in zip(idx, df["Volume"], df["Open"], df["Close"])
]
def line(series):
return [
{"time": t, "value": round(float(x), 2)}
for t, x in zip(idx, series) if pd.notna(x)
]
try:
tech = technical.analyze(ticker, period="1y")
except Exception:
tech = None
return _clean({
"ticker": ticker, "period": period, "candles": candles, "volume": volume,
"ma50": line(ind.sma(df["Close"], 50)), "ma200": line(ind.sma(df["Close"], 200)),
"technical": tech,
})
@app.get("/api/alerts")
def api_alerts(watch: str = "all"):
return {"watch": watch, "hits": _clean(alerts.run(watch))}
@app.get("/api/plan")
def api_plan(ticker: str, capital: float = 1427.0):
p = plan_mod.plan(ticker, capital)
return _clean({"plan": p, "render": plan_mod.render(p)})
# ── Analyses rapides (boutons one-click, finlab pur) ──────────────────────────
@app.get("/api/digest")
def api_digest(theme: str = "all", target: float = 5.0):
return {"text": digest_mod.build(theme, target)}
@app.get("/api/fundamentals")
def api_fundamentals(ticker: str):
return _clean({"snapshot": fundamental.snapshot(ticker)})
@app.get("/api/analyze")
def api_analyze(ticker: str, capital: float = 1427.0):
"""Analyse one-click d'une action : technique + fondamental + plan R:R (finlab pur)."""
out = {"ticker": ticker}
try:
out["technical"] = technical.analyze(ticker)
except Exception as e:
out["technical"] = {"error": str(e)}
try:
out["fundamental"] = fundamental.snapshot(ticker)
except Exception as e:
out["fundamental"] = {"error": str(e)}
try:
p = plan_mod.plan(ticker, capital)
out["plan"] = p
out["plan_render"] = plan_mod.render(p)
except Exception as e:
out["plan"] = {"error": str(e)}
return _clean(out)
# ── Import de relevés ─────────────────────────────────────────────────────────
# • Image → scannée par la Console IA (vision, abonnement).
# • CSV Revolut (account statement) → reconstruit déterministe (aperçu + appliquer), sans IA.
IMPORTS_DIR = data.ROOT / "imports"
_IMG_EXT = {".png", ".jpg", ".jpeg", ".webp", ".gif"}
_CSV_EXT = {".csv"}
def _safe_import(name: str) -> Path:
"""Résout un nom de fichier dans imports/ (refuse l'évasion de chemin)."""
p = (IMPORTS_DIR / Path(name).name)
if p.resolve().parent != IMPORTS_DIR.resolve():
raise ValueError("chemin invalide")
return p
@app.post("/api/import")
async def api_import(file: UploadFile = File(...)):
"""Enregistre un relevé dans le workspace (imports/). Image → Console IA ; CSV → import Revolut."""
ext = Path(file.filename or "").suffix.lower()
kind = "image" if ext in _IMG_EXT else ("csv" if ext in _CSV_EXT else None)
if kind is None:
return JSONResponse(status_code=400, content={"error": f"format non supporté: {ext or '?'} (image ou .csv)"})
IMPORTS_DIR.mkdir(parents=True, exist_ok=True)
ts = dt.datetime.now().strftime("%Y%m%d-%H%M%S")
name = f"releve-{ts}{ext}"
_safe_import(name).write_bytes(await file.read())
return {"saved": name, "rel": f"imports/{name}", "kind": kind}
@app.get("/api/revolut/preview")
def api_revolut_preview(file: str, account: str = "Revolut"):
"""Aperçu des positions reconstruites depuis un relevé de compte Revolut (sans écrire)."""
from finlab import revolut
path = _safe_import(file)
if not path.exists():
return JSONResponse(status_code=404, content={"error": "fichier introuvable"})
positions, warns = revolut.to_positions(revolut.reconstruct(revolut.parse_statement(path)))
return _clean({"account": account, "positions": positions, "warnings": warns})
@app.post("/api/revolut/apply")
def api_revolut_apply(file: str, account: str = "Revolut"):
"""Applique le relevé Revolut → met à jour le compte dans portfolio.yaml (autres comptes préservés)."""
from finlab import revolut
path = _safe_import(file)
if not path.exists():
return JSONResponse(status_code=404, content={"error": "fichier introuvable"})
positions, warns = revolut.to_positions(revolut.reconstruct(revolut.parse_statement(path)))
revolut.update_portfolio(positions, account=account)
return _clean({"account": account, "positions": positions, "warnings": warns, "applied": True})
@app.get("/api/imports")
def api_imports():
if not IMPORTS_DIR.exists():
return {"imports": []}
files = sorted((f for f in IMPORTS_DIR.iterdir() if f.suffix.lower() in _IMG_EXT),
key=lambda f: f.stat().st_mtime, reverse=True)
return {"imports": [f.name for f in files]}
# ── Statique ──────────────────────────────────────────────────────────────────
@app.get("/")
def index():
return FileResponse(STATIC / "index.html")
app.mount("/static", StaticFiles(directory=STATIC), name="static")
if __name__ == "__main__":
import uvicorn
uvicorn.run(app, host="0.0.0.0", port=8800)