# Formulas and formatted numbers

## Preliminaries

Load googlesheets and dplyr, from which we use the %>% pipe operator and which gives us nicer printing of data frames (tbl_dfs)

library(googlesheets)
suppressMessages(library(dplyr))

## TL;DR

To see how your data comes in as a data frame without numeric formatting, try this:

gs_read(..., literal = FALSE)

The googlesheets package comes with functions to access a public Sheet with formulas and formatted numbers. Visit it in the browser or check out this screenshot.

We use it to demo the effect of literal in gs_read(). First we accept the default, which is literal = TRUE.

gs_ff() %>%
#> Accessing worksheet titled 'Sheet1'.
#> Parsed with column specification:
#> cols(
#>   number_formatted = col_character(),
#>   number_rounded = col_double()
#> )
#> # A tibble: 5 x 2
#>   number_formatted number_rounded
#>   <chr>                     <dbl>
#> 1 654,321                    1.23
#> 2 12.34%                     2.35
#> 3 1.23E+09                   3.46
#> 4 3 1/7                      4.57
#> 5 $0.36 5.68 See the problem? Numeric formatting causes the first column to come in as character. Try again with literal = FALSE: gs_ff() %>% gs_read(literal = FALSE, range = cell_cols("B:C")) #> Accessing worksheet titled 'Sheet1'. #> Parsed with column specification: #> cols( #> number_formatted = col_double(), #> number_rounded = col_double() #> ) #> # A tibble: 5 x 2 #> number_formatted number_rounded #> <dbl> <dbl> #> 1 654321 1.23 #> 2 0.123 2.35 #> 3 1234567890 3.46 #> 4 3.14 4.57 #> 5 0.36 5.68 Fixed it! First column is numeric. And we’ve also gained precision in the second column, previously lost to rounding. If you want full access to cell contents, use gs_read_cellfeed(..., literal = FALSE) to get a data frame with one per cell. Then take your pick from value, input_value, and numeric_value. Here’s an example with lots of formulas: gs_ff() %>% gs_read_cellfeed(range = cell_cols("E")) %>% select(-cell_alt, -row, -col) %>% knitr::kable() #> Accessing worksheet titled 'Sheet1'. cell value input_value numeric_value E1 formula formula NA E2 Google =HYPERLINK(“http://www.google.com/”,“Google”) NA E3 1,271,591.00 =sum(R[-1]C[-4]:R[3]C[-4]) 1271591.0 E4 =IMAGE(“https://www.google.com/images/srpr/logo3w.png”) NA E5$A$1 =ADDRESS(1,1) NA E6 =SPARKLINE(R[-4]C[-4]:R[0]C[-4]) NA Read on if you want to know more. ## Different notions of cell contents When working with Google Sheets via the cell feed, there are three ways to define cell contents: • Literal value. This is what hits your eyeballs when you view a Sheet in the browser. It’s what googlesheets returns by default, because it’s what the API returns by default. • API docs: “The literal value of the cell element is the calculated value of the cell, without formatting applied. If the cell contains a formula, the calculated value is given here. The Sheets API has no concept of formatting, and thus cannot manipulate formatting of cells.” • Google describes this as “the calculated value of the cell, without formatting applied” but that is misleading. The only formatting they mean to exclude here is decorative stuff, e.g., font size or cell background color. Numeric formatting is very much in force. • If cell contains a formula, this is the calculated result. Examples: an average of some other cells, a live hyperlink specified via =HYPERLINK(), an image specified via =IMAGE(). • If cell contains formatted numeric data, this is the formatted result. Examples: 2.35E+05, 12.34%,$112.03.
• If cell contains a formatted numeric formula, this is the calculated, formatted result.
• Input value. This is what was entered in the cell, with one gotcha.
• API docs: “The inputValue attribute of a cell entry always contains the value that a user would otherwise type into the Google Sheets user interface to manipulate the cell (i.e. either a literal value or a formula).”
• If cell contains a formula, this is the formula. If cell contains a string, this is the string. Easy.
• If cell contains a number, this generally contains the number. Exception: a number formatted as a percentage. In this case Google assumes you know the spreadsheet data entry trick in which you type 0.12345% to simultaneously enter the numeric value 0.12345 and format it as a percentage. Therefore, the numeric value 0.12345 will have input value 0.12345% if formatted as a percentage and 0.12345 otherwise. Why, Google, why?
• Empirically, input value seems to be what is displayed in the formula bar to the right of the $$f_{x}$$ when you visit a cell in the browser.
• Numeric value.
• API docs: “The numericValue attribute of a cell entry, when present, indicates that the cell was determined to have a numeric value, and its numeric value is indicated with this attributed [sic].”
• If cell contains a number, this is that number.
• If cell contains a numeric formula, this is the calculated numeric result.
• Otherwise, the numericValue attribute doesn’t even exist in the underlying XML and it will be an NA in any object googlesheets creates from reading the Sheet.

### Vocabulary: there’s formatting and then there’s formatting

Click on the Format menu in Google Sheets and you’ll gain access to a “Number” sub-menu and … lots of other stuff. Let’s agree that “formatting” can mean two different things:

• Decoration. Font, font size, font color, bold, italic, cell background, text alignment, etc.
• Numeric formatting. Meaning this:
• UNformatted: 123456 or 32.61 or 0.53
• Formatted: 123,456 or $32.61 or 53% Decorative formatting is completely invisible to the Sheets API. It is also a terrible idea to encode data in decorative formatting, though it can be used to visually reinforce information that is properly stored in data (Google Sheets is capable of conditional formatting). Nothing in googlesheets or the rest of this vignette addresses decorative formatting. We shall not speak of it again. From now on, “formatting” means numeric formatting. ## A worthy challenge We’ve created a formula and formatting nightmare sampler Sheet. Go visit it in the browser!. Or check out this screenshot. It’s one of the built-in example sheets. Access it with various functions that start with gs_ff. Here’s how it comes in as a data frame by default: you get “literal values” (suppressing a boring column in order to show the interesting ones). gs_ff() %>% gs_read() %>% select(-integer) #> Accessing worksheet titled 'Sheet1'. #> Parsed with column specification: #> cols( #> integer = col_double(), #> number_formatted = col_character(), #> number_rounded = col_double(), #> character = col_character(), #> formula = col_character(), #> formula_formatted = col_character() #> ) #> # A tibble: 5 x 5 #> number_formatted number_rounded character formula formula_formatted #> <chr> <dbl> <chr> <chr> <chr> #> 1 654,321 1.23 one Google 3.18E+05 #> 2 12.34% 2.35 <NA> 1,271,591.00 52.63% #> 3 1.23E+09 3.46 three <NA> 0.22 #> 4 3 1/7 4.57 four$A$1 123,456.00 #> 5$0.36                      5.68 five      <NA>         317,898

What if you want unformatted numbers? What if you want the actual formulas? You can now get them the cell feed, which, in googlesheets, means you must use gs_read_cellfeed(). You can cause gs_read() to consult the cell feed by specifying literal = FALSE.

## The cell feed

Default methods of reading Sheet data assume that the data occupies a neat rectangle in the upper left corner, that you want all of it, and that you want the literal values.

What if you need more control over which cells? What if you want input or numeric values? Use the cell feed via gs_read_cellfeed(). Under the hood, gs_read() will use the cell feed whenever a cell range is provided, i.e. when the call is like gs_read(..., range = "B4:D9") or gs_read(..., range = cell_cols(4:6)), or when the new argument literal = FALSE.

gs_read_cellfeed() has been extended. As before, we return a data frame with one row per cell, but now we return all 3 notions of cell contents:

• value: The variable previously known as cell_text. Described as “literal value”, what you see in the browser, and what is returned by all other methods of reading.
• input_value: What you would have typed into the cell (if you are a total spreadsheet nerd, when it comes to percentages).
• numeric_value: The actual number, if such exists.
cf <- gs_read_cellfeed(gs_ff())
#> Accessing worksheet titled 'Sheet1'.
cell value input_value numeric_value
A1 integer integer NA
A2 123456 123456 123456.0
A3 345678 345678 345678.0
A4 234567 234567 234567.0
A6 567890 567890 567890.0
B1 number_formatted number_formatted NA
B2 654,321 654321 654321.0
B3 12.34% 12.34% 0.1234
B4 1.23E+09 1234567890 1.23456789E9
B5 3 1/7 3.14159265359 3.14159265359

#### Rounded numbers

Column 3, number_rounded, holds numbers with four decimal places, rounded to show just two. Here we want numeric_value.

cf %>%
filter(row > 1, col == 3) %>%
select(value, input_value, numeric_value) %>%
#> Parsed with column specification:
#> cols(
#>   value = col_double(),
#>   input_value = col_double(),
#>   numeric_value = col_double()
#> )
#> # A tibble: 5 x 3
#>   value input_value numeric_value
#>   <dbl>       <dbl>         <dbl>
#> 1  1.23        1.23          1.23
#> 2  2.35        2.35          2.35
#> 3  3.46        3.46          3.46
#> 4  4.57        4.57          4.57
#> 5  5.68        5.68          5.68

#### Formulas

Column 5, formula, holds various formulas, not necessarily numeric. Note we had to truncate input_value for printing purposes.

• value is what you want … except for the formula which evaluates to numeric and is formatted.
• input_value holds the actual formulas.
• numeric_value is what you want for the single formula that is numeric.
cf %>%
filter(row > 1, col == 5) %>%
select(value, input_value, numeric_value) %>%
mutate(input_value = substr(input_value, 1, 43)) %>%
#> Parsed with column specification:
#> cols(
#>   value = col_character(),
#>   input_value = col_character(),
#>   numeric_value = col_double()
#> )
#> # A tibble: 5 x 3
#>   value        input_value                                   numeric_value
#>   <chr>        <chr>                                                 <dbl>
#> 2 1,271,591.00 =sum(R[-1]C[-4]:R[3]C[-4])                          1271591
#> 4 $A$1         =ADDRESS(1,1)                                            NA
#> 5 <NA>         =SPARKLINE(R[-4]C[-4]:R[0]C[-4])                         NA

#### Numeric formulas, formatted

Column 6, formula_formatted, holds formatted numeric formulas:

• value (default) will come in as character.
• input_value holds the actual formulas.
• numeric_value (what you usualy want, when it exists) holds the calcuated numbers.
cf %>%
filter(row > 1, col == 6) %>%
select(value, input_value, numeric_value) %>%
#> Parsed with column specification:
#> cols(
#>   value = col_character(),
#>   input_value = col_character(),
#>   numeric_value = col_double()
#> )
#> # A tibble: 5 x 3
#>   value      input_value                   numeric_value
#>   <chr>      <chr>                                 <dbl>
#> 1 3.18E+05   =average(R[0]C[-5]:R[4]C[-5])    317898.
#> 2 52.63%     =R[-1]C[-5]/R[1]C[-5]                 0.526
#> 3 0.22       =R[-2]C[-5]/R[2]C[-5]                 0.217
#> 4 123,456.00 =min(R[-3]C[-5]:R[1]C[-5])       123456
#> 5 317,898    =average(R2C1:R6C1)              317898.

## Logic for cell contents when literal = FALSE

Based on the above examples (and more), here’s the current logic for which cell contents are used in gs_read(..., literal = FALSE) and gs_reshape_cellfeed(..., literal = FALSE). The goal is to create an input that gives the desired result most often with default behavior of readr::type_convert(). If you think this is wrong, please discuss in an issue.

• Create an indicator for: does numeric_value exist?
• Create an indicator for: does this look like an integer that is at risk of looking like a double if we take numeric_value?
• Create putative cell content like so:
• if numeric_value does not exist, use value (business as usual)
• else if it’s an “at risk” integer, use input_value
• else use numeric_value
• Isolate, reshape and type convert THAT