Приведенная ниже функция позволяет автоматически устанавливать "автофильтры" столбцов, адаптировать ширину столбцов под ширину данных или ширину имени столбца и "замораживать" верхние строки и/или левые столбцы:
from pathlib import Path
import pandas as pd
def df_to_excel_auto_fmt(
df,
fn,
max_col_width=30,
autofilter=True,
freeze_panes=(1, 0),
fmt_int="#,##0",
fmt_float="#,##0.00",
fmt_date="yyyy-mm-dd",
fmt_datetime="yyyy-mm-dd hh:mm:ss",
**kwargs):
"""
Export / save Pandas.DataFrame to an Excel file with automatically adjusted column's widths.
It can also add Excel column "autofilters" and freeze panes (top rows and left columns).
Cell values will be formatted according to "fmt_*" parameters.
:param df: DataFrame to be exported to Excel
:param fn: output Excelfile name. NOTE: the extension will be changed to ".xlsx"
:param max_col_width: maximum column width in Excel. Default: 30
:param autofilter: boolean - whether add Excel autofilter or not. Default: True
:param freeze_panes: tuple of int (length 2).
Specifies the one-based bottommost row and rightmost column
that is to be frozen.
:param fmt_int: Excel format for integer numbers
:param fmt_float: Excel format for float numbers
:param fmt_date: Excel format for dates
:param fmt_datetime: Excel format for datetime's
:param kwargs: additional arguments to pass to df.to_excel(filename, **kwargs)
:return: None
"""
file = Path(fn).with_suffix(".xlsx")
# get default parameters
first_col = int(kwargs.get("index", True))
sheet_name = kwargs.get("sheet_name", "Sheet1")
if "freeze_panes" not in kwargs:
kwargs["freeze_panes"] = freeze_panes
writer = pd.ExcelWriter(
file.with_suffix(".xlsx"),
engine="xlsxwriter",
date_format=fmt_date,
datetime_format=fmt_datetime)
df.to_excel(writer, sheet_name=sheet_name, **kwargs)
workbook = writer.book
worksheet = writer.sheets[sheet_name]
int_fmt = workbook.add_format({'num_format': fmt_int})
float_fmt = workbook.add_format({'num_format': fmt_float})
for xl_col_no, dtyp in enumerate(df.dtypes, first_col):
col_no = xl_col_no - first_col
width = max(df.iloc[:, col_no].astype(str).str.len().max(),
len(df.columns[col_no]) + 6)
width = min(max_col_width, width)
# print(f"column: [{df.columns[col_no]}]\twidth:\t[{width}]")
if np.issubdtype(dtyp, np.integer):
worksheet.set_column(xl_col_no, xl_col_no, width, int_fmt)
elif np.issubdtype(dtyp, np.floating):
worksheet.set_column(xl_col_no, xl_col_no, width, float_fmt)
else:
worksheet.set_column(xl_col_no, xl_col_no, width)
if autofilter:
worksheet.autofilter(0, 0, 0, df.shape[1] + first_col)
writer.save()
writer.close()
Пример использования:
fn = r"c:\download\file.csv"
df = pd.read_csv(fn, sep=";")
df_to_excel_auto_fmt(
df,
fn,
max_col_width=30,
fmt_datetime="dd.mm.yy hh:mm",
index=False)