Corin1998's picture
Upload 15 files
ff2c62b verified
import pandera as pa
from pandera import Column, DataFrameSchema, Check
import pandas as pd
from pathlib import Path
import shutil, tempfile, os, zipfile
FIN_REQUIRED = ["year","quarter","revenue","ebit","net_income","total_assets","total_equity"]
ESG_REQUIRED = ["year","metric","value","unit","scope","notes"]
ALIASES = {
"revenue": ["revenue","sales","売上","売上高"],
"ebit": ["ebit","operating_income","営業利益"],
"net_income": ["net_income","純利益","profit"],
"total_equity": ["total_equity","shareholders_equity","自己資本"],
}
def normalize_columns(df: pd.DataFrame, required: list) -> pd.DataFrame:
cols = {c.lower(): c for c in df.columns}
# 別名を正規化
for key, names in ALIASES.items():
if key not in df.columns:
for n in names:
if n in df.columns or n in cols:
src = n if n in df.columns else cols.get(n)
df = df.rename(columns={src: key})
break
missing = [c for c in required if c not in df.columns]
if missing:
raise ValueError(f"必須列不足: {missing}")
return df
fin_schema = DataFrameSchema({
"year": Column(int, Check.ge(1900)),
"quarter": Column(str),
"revenue": Column(float, Check.ge(0)),
"ebit": Column(float),
"net_income": Column(float),
"total_assets": Column(float, nullable=True),
"total_equity": Column(float, nullable=True),
})
esg_schema = DataFrameSchema({
"year": Column(int, Check.ge(1900)),
"metric": Column(str),
"value": Column(float),
"unit": Column(str, nullable=True),
"scope": Column(str, nullable=True),
"notes": Column(object, nullable=True),
})
def validate_financials(df: pd.DataFrame) -> pd.DataFrame:
df = normalize_columns(df, FIN_REQUIRED)
return fin_schema.validate(df, lazy=True)
def validate_esg(df: pd.DataFrame) -> pd.DataFrame:
df = normalize_columns(df, ESG_REQUIRED)
return esg_schema.validate(df, lazy=True)
def build_or_update_index(zip_path, index_dir="index"):
"""
アップロードされた Zip を展開して、簡易インデックス(=展開フォルダ)を作るデモ実装。
app.py からは build_or_update_index(rzip, index_dir=...) と呼ばれます。
"""
index_dir = Path(index_dir)
if index_dir.exists():
shutil.rmtree(index_dir)
index_dir.mkdir(parents=True, exist_ok=True)
with zipfile.ZipFile(zip_path, "r") as zf:
zf.extractall(index_dir)
# 本格的なベクトル検索は未実装。ここではファイルリストを返すだけ。
docs = [str(p) for p in index_dir.glob("**/*") if p.is_file()]
return docs
def answer_with_context(query: str, index_dir="index"):
"""
デモ実装: インデックス内のファイル名を列挙して返すだけ。
将来はここでベクトル検索→上位文書を取り出し、LLM に投げて回答を組み立てます。
"""
index_dir = Path(index_dir)
if not index_dir.exists():
return "インデックスが存在しません。まず Zip をアップロードしてください。"
files = [p.name for p in index_dir.glob("**/*") if p.is_file()]
head = ", ".join(files[:5]) if files else "(なし)"
return f"[RAGデモ] 質問: {query}\n参照候補: {head}"
# ここでは単純に最初の文書を返す(本来はベクトル検索など)
context = docs[0]["content"] if docs else "文書がありません。"
if llm:
return llm.generate_with_context(query, context)
else:
return f"【疑似回答】質問: {query}\n関連情報: {context[:200]}..."