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## %######################################################%## | |
# # | |
#### Letter case - your turn #### | |
# # | |
## %######################################################%## | |
# Import the Marine Protected Areas dataset (MPAS-your.csv) | |
# Summarize the number of Marine Protected Areas by country (Country full). |
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third_grade_math_proficiency_18_19 <- read_excel(path = here("data", "math-scores-18-19.xlsx")) %>% | |
filter(student_group == "Total Population (All Students)") %>% | |
filter(grade_level == "Grade 3") %>% | |
select(school_id, contains("number")) %>% | |
pivot_longer(cols = contains("number"), | |
names_to = "proficiency_level", | |
values_to = "number_proficient") %>% | |
mutate(number_proficient = na_if(number_proficient, "*")) %>% | |
mutate(number_proficient = na_if(number_proficient, "--")) %>% | |
mutate(number_proficient = as.numeric(number_proficient)) %>% |
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Hi Expensify, | |
Don’t hire me. I don’t have the background you’re expecting. At all. | |
I’ve never done “customer service.” I’ve never worked in a business. I’ve never used Expensify. | |
My career stops have included: second grade teacher, PhD in anthropology, college professor, and researcher at a foundation. | |
So I’m seriously probably the worst candidate you could ever imagine. |
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iris %>% | |
group_by(Species) %>% | |
summarize(mean_petal_width = mean(Petal.Width)) %>% | |
ungroup() %>% | |
ggplot(aes(Species, mean_petal_width, | |
fill = Species)) + | |
geom_col(show.legend = FALSE) + | |
theme_ipsum() + | |
scale_fill_manual(values = c("setosa" = "lightgray", | |
"versicolor" = "lightgray", |
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iris %>% | |
group_by(Species) %>% | |
summarize(mean_petal_width = mean(Petal.Width)) %>% | |
ungroup() %>% | |
ggplot(aes(Species, mean_petal_width)) + | |
geom_col() + | |
theme_ipsum() + | |
labs(x = NULL, | |
y = NULL, | |
title = "Average petal width of irises by species") |
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Name | Upward Mobility: Percent of People from Low-Income Families (25th Percentile) who Grow up to be High Income (Top 20%)* | |
---|---|---|
Baker County, OR | 12.00% | |
Benton County, OR | 13.41% | |
Clackamas County, OR | 13.21% | |
Clatsop County, OR | 12.26% | |
Columbia County, OR | 11.11% | |
Coos County, OR | 9.70% | |
Crook County, OR | 10.75% | |
Curry County, OR | 10.36% | |
Deschutes County, OR | 11.08% |
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outputs <- read_excel(path = "data-raw/outputs_profservcices.xlsx") %>% | |
mutate(hours_counted = case_when( | |
activity == "Output" ~ hours, | |
activity == "A la Carte Referral" & prosper_approved == "Yes" ~ hours, | |
activity == "SBLC Referral" & accepted == "Yes" ~ hours, | |
activity == "MFS Referral" & accepted == "Yes" ~ hours, | |
activity == "MarketLink Referral" & accepted == "Yes" ~ hours | |
)) %>% | |
mutate(activity_categorized = case_when( | |
activity == "Output" ~ "Output", |
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library(tidyverse) | |
diamonds_summary <- diamonds %>% | |
count(cut) %>% | |
mutate(cut = factor(cut, levels = c("Fair", | |
"Good", | |
"Very Good", | |
"Premium", | |
"Ideal"))) %>% | |
mutate(cut = fct_rev(cut)) |
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dk_summarize_with_totals <- function(.data, group_by_var, mean_var){ | |
groups_summary <- .data %>% | |
dplyr::group_by({{ group_by_var }}) %>% | |
dplyr::summarize(mean = mean({{ mean_var }})) %>% | |
dplyr::rename("group" = {{ group_by_var }} ) | |
overall_summary <-.data %>% | |
dplyr::summarize(mean = mean({{ mean_var }})) %>% | |
dplyr::mutate(group = "Total") |
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ggplot(sleep_by_gender, | |
aes(gender, | |
avg_sleep, | |
fill = gender)) + | |
geom_col() |
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