squid_dataset / logbook_availability_query.py
mengxaingshuo's picture
Upload logbook_availability_query.py
d49c7d9 verified
Raw
History Blame Contribute Delete
6.26 kB
import pandas as pd
import os
from datetime import datetime
# ============================
# 自动定位项目路径
# ============================
BASE_DIR = os.path.dirname(
os.path.dirname(
os.path.abspath(__file__)
)
)
DATA_PATH = os.path.join(
BASE_DIR,
"data",
"logbook_availability.csv"
)
OUTPUT_DIR = os.path.join(
BASE_DIR,
"output"
)
# ============================
# markdown生成函数
# 替代 pandas.to_markdown()
# ============================
def dataframe_to_markdown(df, max_rows=10):
if df.empty:
return "暂无数据"
df=df.head(max_rows)
columns=df.columns.tolist()
md="| " + " | ".join(columns)+" |\n"
md+="| "+" | ".join(
["---"]*len(columns)
)+" |\n"
for _,row in df.iterrows():
md+="| "+" | ".join(
str(x)
for x in row.tolist()
)+" |\n"
return md
# ============================
# 参数检查
# ============================
def check_year(value,name):
if value is None:
return None
try:
return int(value)
except:
raise ValueError(
f"{name}必须是年份数字,例如2020"
)
# ============================
# 主查询函数
# ============================
def query_logbook_availability(
region=None,
year_start=None,
year_end=None,
species=None,
data_type=None,
output_format="markdown"
):
"""
查询logbook数据可用性
返回:
summary
records
preview_markdown
csv_path
excel_path
source_files
"""
try:
# ------------------
# 参数校验
# ------------------
year_start = check_year(
year_start,
"year_start"
)
year_end = check_year(
year_end,
"year_end"
)
if year_start and year_end:
if year_start > year_end:
return {
"summary":
"错误:开始年份不能大于结束年份",
"records":[]
}
# ------------------
# 文件检查
# ------------------
if not os.path.exists(DATA_PATH):
return {
"summary":
f"找不到数据文件:{DATA_PATH}",
"records":[]
}
# ------------------
# 读取数据
# ------------------
df=pd.read_csv(
DATA_PATH
)
# year强制转换
if "year" in df.columns:
df["year"]=pd.to_numeric(
df["year"],
errors="coerce"
)
result=df.copy()
# ------------------
# 条件过滤
# ------------------
if region:
result=result[
result["region"]
.astype(str)
.str.contains(
region,
na=False
)
]
if species:
result=result[
result["species"]
.astype(str)
.str.contains(
species,
na=False
)
]
if data_type:
result=result[
result["data_type"]
.astype(str)
.str.contains(
data_type,
na=False
)
]
if year_start:
result=result[
result.year>=year_start
]
if year_end:
result=result[
result.year<=year_end
]
# ------------------
# 无结果
# ------------------
if result.empty:
return {
"summary":
"没有找到符合条件的logbook数据",
"records":[],
"preview_markdown":
"暂无数据",
"source_files":
[
DATA_PATH
]
}
# ------------------
# 统计信息
# ------------------
summary={
"records_count":
len(result),
"year_range":
[
int(result.year.min()),
int(result.year.max())
],
"regions":
result.region.unique().tolist(),
"species":
result.species.unique().tolist()
}
# ------------------
# 输出文件
# ------------------
os.makedirs(
OUTPUT_DIR,
exist_ok=True
)
timestamp=datetime.now()\
.strftime("%Y%m%d_%H%M%S")
csv_path=None
excel_path=None
if output_format in [
"csv",
"excel"
]:
csv_path=os.path.join(
OUTPUT_DIR,
f"logbook_{timestamp}.csv"
)
result.to_csv(
csv_path,
index=False,
encoding="utf-8-sig"
)
if output_format=="excel":
excel_path=os.path.join(
OUTPUT_DIR,
f"logbook_{timestamp}.xlsx"
)
result.to_excel(
excel_path,
index=False
)
# ------------------
# Agent标准返回
# ------------------
return {
"summary":
summary,
"records":
result.to_dict(
orient="records"
),
"preview_markdown":
dataframe_to_markdown(
result
),
"csv_path":
csv_path,
"excel_path":
excel_path,
"source_files":
[
DATA_PATH
]
}
except Exception as e:
return {
"summary":
f"查询失败:{str(e)}",
"records":[]
}