The goal here is to outline in a couple of paragraphs and few lines
of code some simple ways in which we can use the Windsor.ai API and R package
googleadsR to gain insights into marketing campaign
performance in Google Ads. The nice thing about Windsor.ai is that you
can have all of your marketing channels aggregating in a single place
and then access all data at once using this package. In this case,
however, the package is focused on getting data from Google Ads
campaigns. Of course, once the data is in R you can do much
more than the examples below, and work on analysis, predictions or
dashboards.
After we create an account at Windsor.ai and obtain an API key, collecting our data from Windsor to R is as easy as:
library(googleadsR)
my_data_googleads <-
fetch_googleads(
api_key = "your api key")
)Lets take a look at the data we just downloaded to get a better idea about the structure and type of information included.
str(my_data_googleads)
#> 'data.frame': 1676 obs. of 6 variables:
#> $ campaign : chr "(ID)<00_mat>[id-cat]{eb}: mattress" "(ID)<00_mat>[emma mattress]{eb}: emma mattress" "Kampanja #1" "Myyntipäälliköksi Iponille" ...
#> $ clicks : int 0 0 0 0 0 0 0 0 0 0 ...
#> $ spend : chr "0" "0" "0" "0" ...
#> $ medium : chr "Unknown" "Unknown" "Unknown" "Unknown" ...
#> $ source : chr "google" "google" "google" "google" ...
#> $ googlesheets: chr "'spreadsheet_id'" "'spreadsheet_id'" "'spreadsheet_id'" "'spreadsheet_id'" ...First, lets try to find the campaigns with most clicks. To do this,
we’ll filter only those rows that have clicks, then group the dataset by
campaign (campaign column) and sum up the click count per
campaign.
library(dplyr)
#> Warning: package 'dplyr' was built under R version 4.2.2
#>
#> Attaching package: 'dplyr'
#> The following objects are masked from 'package:stats':
#>
#> filter, lag
#> The following objects are masked from 'package:base':
#>
#> intersect, setdiff, setequal, union
library(ggplot2)
#> Warning: package 'ggplot2' was built under R version 4.2.2
top_10 <-
my_data_googleads %>%
filter(clicks > 0) %>%
group_by(campaign) %>%
summarise(n_clicks = sum(clicks)) %>%
ungroup %>%
arrange(desc(n_clicks)) %>%
slice_head(n = 10)
knitr::kable(top_10)| campaign | n_clicks |
|---|---|
| AO_Smart_Shopping_Running_Jogging | 56670 |
| city_display_awareness_hyd_april_2021 | 54711 |
| AO_Dynamic_Remarketing_Cart_Abandoners | 54089 |
| AO_Dynamic_Remarketing_Cart_Abandoners_Website | 39969 |
| AO_Smart_Shopping_Yoga | 27551 |
| AO_Search_Brand_Exact | 24535 |
| AO_UAC_app_install | 21958 |
| AO_UAC_app_install_Hyd | 20155 |
| AO_Shopping_Cycling | 18852 |
| AO_UAC_app_install_chennai | 16905 |
Thereafter we can quickly visualize our data using
ggplot2
ggplot(top_10, aes(x = n_clicks, y = campaign)) +
geom_col()We can apply the same type of data manipulation and plotting to check
the spend values.
my_data_googleads %>%
filter(clicks > 0) %>%
group_by(campaign) %>%
summarise(sum_spend = sum(as.numeric(spend))) %>%
ungroup %>%
arrange(desc(sum_spend)) %>%
slice_head(n = 10) %>%
ggplot(aes(x = sum_spend, y = campaign)) +
geom_col()Finally, for a direct comparison, we can aggregate both the clicks and spending per ad campaign and plot them jointly:
library(tidyr)
my_data_googleads %>%
filter(clicks > 0) %>%
group_by(campaign) %>%
summarise(n_clicks = sum(clicks), sum_spend = sum(as.numeric(spend))) %>%
arrange(desc(sum_spend)) %>%
slice_head(n = 10) %>%
pivot_longer(cols = c("n_clicks", "sum_spend"), names_to = "aggreg", values_to = "values") %>%
ggplot(aes(x = values, y = campaign, fill = aggreg)) +
geom_col() +
facet_wrap("aggreg", ncol = 2) +
theme(legend.position="bottom")