library(tidyverse)
library(readxl)
path = "Excel/705 Swap Alphabets and Numbers.xlsx"
input = read_excel(path, range = "A1:A10")
test = read_excel(path, range = "B1:B10")
result = input %>%
mutate(rn = row_number()) %>%
separate_rows(Words, sep = "") %>%
filter(Words != "") %>%
mutate(dig_alpha = ifelse(str_detect(Words, "[0-9]"), -1, 1)) %>%
mutate(char_index = row_number(), .by = c("rn", "dig_alpha")) %>%
mutate(
rematch_index = char_index * dig_alpha,
rematch_index2 = char_index * dig_alpha * -1
)
r1 = result %>%
left_join(
result,
by = c(
"rematch_index" = "rematch_index2",
"char_index" = "char_index",
"rn" = "rn"
)
) %>%
summarise(
Words = paste(Words.x, collapse = ""),
Words2 = paste(Words.y, collapse = ""),
.by = c("rn")
)
all.equal(r1$Words2, test$`Answer Expected`)
#> TrueExcel BI - Excel Challenge 705
excel-challenges
excel-formulas
🔰 Words Answer Expected b7 7b Z1e6 1Z6e 123abc abc123 2gL71Q g27LQ1

Challenge Description
🔰 Words Answer Expected b7 7b Z1e6 1Z6e 123abc abc123 2gL71Q g27LQ1
Solutions
- Logic: Read the workbook ranges needed for the challenge; Derive the required intermediate columns; Parse the packed text or string structure; Aggregate or rank the data at the required grouping level.
- Strengths: The code maps the workbook rule into a compact, reproducible pipeline.
- 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 elegant part is how little code is needed once the correct intermediate representation is chosen.
import pandas as pd
import re
path = "705 Swap Alphabets and Numbers.xlsx"
input = pd.read_excel(path, usecols="A", nrows=10, names=["Words"])
test = pd.read_excel(path, usecols="B", nrows=10, names=["Answer Expected"])
result = (
input.assign(rn=range(1, len(input) + 1))
.assign(Words=input["Words"].str.split(""))
.explode("Words")
.query("Words != ''")
.assign(
dig_alpha=lambda df: df["Words"].apply(lambda x: -1 if re.match(r"[0-9]", x) else 1)
)
.assign(char_index=lambda df: df.groupby(["rn", "dig_alpha"]).cumcount() + 1)
.assign(
rematch_index=lambda df: df["char_index"] * df["dig_alpha"],
rematch_index2=lambda df: df["char_index"] * df["dig_alpha"] * -1
)
)
r1 = (
result.merge(
result,
left_on=["rematch_index", "char_index", "rn"],
right_on=["rematch_index2", "char_index", "rn"],
suffixes=(".x", ".y")
)
.groupby("rn")
.agg(
Words=("Words.x", lambda x: "".join(x)),
Words2=("Words.y", lambda x: "".join(x))
)
.reset_index()
)
print(r1['Words2'].equals(test['Answer Expected'])) # TrueThe Python version follows the same grouped logic and keeps the transformation explicit in a dataframe pipeline.
Difficulty Level
Easy / Medium
The business rule is clear, though the workbook still needs a few transformation steps to reach the expected output.