library(tidyverse)
library(readxl)
path = "Excel/700-799/782/782 Align.xlsx"
input = read_excel(path, range = "A2:C12")
test = read_excel(path, range = "E2:F12")
result = c(input$Bird1, input$Bird2, input$Bird3) %>%
data.frame(Col = .) %>%
na.omit() %>%
filter(Col != "Quantity") %>%
mutate(type = ifelse(str_detect(Col, "\\d+"), 'num', 'text')) %>%
mutate(number = row_number(), .by = type) %>%
pivot_wider(names_from = type, values_from = Col) %>%
mutate(num = as.numeric(num)) %>%
select(Birds = text, Quantity = num)
all.equal(result, test, check.attributes = FALSE)
# > [1] TRUEExcel BI - Excel Challenge 782
excel-challenges
excel-formulas
🔰 Answer Expected Bird1 Bird2 Bird3 Birds Quantity Dove Goose Peacock Duck

Challenge Description
🔰 Answer Expected Bird1 Bird2 Bird3 Birds Quantity Dove Goose Peacock Duck
Solutions
- Logic: Read the workbook ranges needed for the challenge; Derive the required intermediate columns; Aggregate or rank the data at the required grouping level; Reshape the result into the workbook output format.
- Strengths: The reshaping step mirrors the workbook output closely instead of forcing extra post-processing.
- Areas for Improvement: The solution assumes the workbook layout and selected ranges remain stable, so any structural change in the sheet would require small adjustments.
- Gem: The last reshape turns a raw transformation into something that already looks like a report.
import pandas as pd
path = "700-799/782/782 Align.xlsx"
input = pd.read_excel(path, usecols="A:C", skiprows=1, nrows=11)
test = pd.read_excel(path, usecols="E:F", skiprows=1, nrows=11)
input2 = pd.concat([input[col] for col in input.columns], ignore_index=True)
input2 = input2.dropna()
input2 = input2[input2 != "Quantity"].reset_index(drop=True)
text_values = input2[input2.astype(str).str.match(r'^[A-Za-z ]+$')].reset_index(drop=True)
numeric_values = input2[input2.astype(str).str.match(r'^\d+(\.\d+)?$')].reset_index(drop=True)
result = pd.DataFrame({'Birds': text_values, 'Quantity': numeric_values})
print((result == test).all().all())The Python version keeps the algorithm explicit, which helps when the challenge depends on a greedy or iterative rule.
Difficulty Level
Medium
The individual steps are manageable, but the correct transformation pattern is not obvious from the raw data.