


Writing to an Excel Spreadsheet in Python
For Python programmers, there are various methods available to write data to Excel spreadsheets. However, the best approach depends on specific requirements and program characteristics.
One highly recommended option is to use pandas, a versatile Python library tailored for data manipulation. This method involves converting data into a DataFrame and subsequently exporting it to an Excel file.
Here's an illustrative example:
from pandas import DataFrame l1 = [1, 2, 3, 4] l2 = [1, 2, 3, 4] df = DataFrame({'Stimulus Time': l1, 'Reaction Time': l2}) df.to_excel('test.xlsx', sheet_name='sheet1', index=False)
This code creates a DataFrame from two lists, 'l1' and 'l2', representing 'Stimulus Time' and 'Reaction Time', respectively. It then exports this DataFrame to an Excel file named 'test.xlsx' with a worksheet named 'sheet1', excluding the index column.
To ensure compatibility, note that both lists must have equal lengths. If values are missing, you can substitute them with 'None' to prevent errors.
Regarding cell formatting, you can specify the format for specific cells or columns using pandas' DataFrame.style module. This allows you to apply formatting such as scientific or number format to specific values, ensuring that they are displayed as desired in Excel.
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