Inline R Code
This lesson is called Inline R Code, part of the Going Deeper with R course. This lesson is called Inline R Code, part of the Going Deeper with R course.
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---
title: "Portland Public Schools Math Proficiency Report"
format:
html:
toc: true
toc-location: left
toc-depth: 1
fig-height: 10
fig-width: 5
execute:
echo: false
warning: false
message: false
---
```{r}
library(tidyverse)
library(here)
library(flextable)
library(gt)
library(scales)
library(marquee)
library(ggrepel)
```
# Introduction
{width=300px fig-align="center" fig-alt="Portland Public Schools logo"}
This is a report on math proficiency results in [Portland Public Schools (PPS)](https://www.pps.net/). The PPS mission statement is as follows:
> We provide rigorous, high-quality academic learning experiences that are inclusive and joyful. We disrupt racial inequities to create vibrant environments for every student to demonstrate excellence.^[https://www.pps.net/about/portland-public-schools-information/overview]
# Plot
```{r}
third_grade_math_proficiency <-
read_rds(here("data/third_grade_math_proficiency.rds")) |>
select(
academic_year,
school,
school_id,
district,
proficiency_level,
number_of_students
) |>
mutate(
is_proficient = case_when(
proficiency_level >= 3 ~ TRUE,
.default = FALSE
)
) |>
group_by(academic_year, school, district, school_id, is_proficient) |>
summarize(number_of_students = sum(number_of_students, na.rm = TRUE)) |>
ungroup() |>
group_by(academic_year, school, district, school_id) |>
mutate(
percent_proficient = number_of_students /
sum(number_of_students, na.rm = TRUE)
) |>
ungroup() |>
filter(is_proficient == TRUE) |>
select(academic_year, school, district, percent_proficient) |>
rename(year = academic_year)
```
```{r}
theme_dk <- function() {
theme_minimal(base_family = "Geist") +
theme(
axis.title = element_blank(),
legend.position = "none",
panel.grid = element_blank(),
plot.title = element_marquee(width = 1),
plot.title.position = "plot"
)
}
```
```{r}
#| fig-alt: Chart showing growth in math proficiency for PPS schools from 2018-2019 to 2021-2022
#| fig-cap: Chart showing growth in math proficiency for PPS schools from 2018-2019 to 2021-2022
top_growth_school <-
third_grade_math_proficiency |>
filter(district == "Portland SD 1J") |>
group_by(school) |>
mutate(
growth_from_previous_year = percent_proficient - lag(percent_proficient)
) |>
ungroup() |>
slice_max(
order_by = growth_from_previous_year,
n = 1
) |>
pull(school)
plot_title <-
marquee_glue(
"{.orange **{top_growth_school}**} showed large growth
in math proficiency over the last two years"
)
third_grade_math_proficiency |>
filter(district == "Portland SD 1J") |>
mutate(
highlight_school = case_when(
school == top_growth_school ~ "Y",
.default = "N"
)
) |>
mutate(
school = fct_relevel(
school,
top_growth_school,
after = Inf
)
) |>
mutate(
percent_proficient_formatted = percent(percent_proficient, accuracy = 1)
) |>
mutate(
percent_proficient_formatted = case_when(
highlight_school == "Y" & year == "2021-2022" ~
str_glue(
"{percent_proficient_formatted} of students
were proficient
in {year}"
),
highlight_school == "Y" & year == "2018-2019" ~
percent_proficient_formatted
)
) |>
ggplot(
aes(
x = year,
y = percent_proficient,
color = highlight_school,
group = school,
label = percent_proficient_formatted
)
) +
geom_line() +
geom_text_repel(
hjust = 0,
lineheight = 0.9,
direction = "x",
family = "Geist"
) +
scale_color_manual(
values = c(
"Y" = "orange",
"N" = "gray80"
)
) +
scale_x_discrete(
expand = expansion(add = c(0, 0.5))
) +
scale_y_continuous(
labels = percent_format(),
limits = c(0, 1)
# expand = expansion(add = c(0.1, 0.2))
) +
annotate(
geom = "text",
x = 2.02,
y = 0.6,
hjust = 0,
lineheight = 0.9,
color = "gray70",
label = str_glue(
"Each gray line
represents one
school"
)
) +
labs(
title = plot_title
) +
theme_dk()
```
```{r}
third_grade_math_proficiency_wide <-
read_rds(here("data/third_grade_math_proficiency_dichotomous.rds")) |>
filter(district == "Portland SD 1J") |>
filter(
school %in%
c(
"Abernethy Elementary School",
"Ainsworth Elementary School",
"Alameda Elementary School",
"Arleta Elementary School",
"Atkinson Elementary School"
)
) |>
select(year, school, percent_proficient) |>
arrange(school) |>
pivot_wider(
id_cols = school,
names_from = year,
values_from = percent_proficient
)
```
# Table
The following table shows math proficiency in 2018-2019 and 2021-2022 for all PPS schools. If you want to see `r top_growth_school`, you can use the search bar to find it.
```{r}
third_grade_math_proficiency_wide_full <-
read_rds(here("data/third_grade_math_proficiency_dichotomous.rds")) |>
filter(district == "Portland SD 1J") |>
select(year, school, percent_proficient) |>
arrange(school) |>
pivot_wider(
id_cols = school,
names_from = year,
values_from = percent_proficient
)
```
```{r}
third_grade_math_proficiency_wide_full |>
gt() |>
cols_label(school = "School") |>
fmt_percent(
columns = 2:3,
decimals = 0
) |>
opt_interactive(
use_search = TRUE,
use_highlight = TRUE
)
```
Your Turn
Add a line to your report that uses inline R code.
Have any questions? Put them below and we will help you out!
Course Content
44 Lessons
1
Downloading and Importing Data
08:13
2
Overview of Tidy Data
05:03
3
Tidy Data Rule #1: Every Column is a Variable
06:26
4
Tidy Data Rule #3: Every Cell is a Single Value
09:27
5
Tidy Data Rule #2: Every Row is an Observation
04:05
6
Changing Variable Types
05:13
7
Dealing With Missing Data
04:41
8
Advanced Summarizing
07:52
9
Binding Data Frames
06:56
10
Functions
11:59
11
Data Merging
09:24
12
Exporting Data
04:20
13
Bring It All Together (Advanced Data Wrangling)
14:22
1
Best Practices in Data Visualization
03:38
2
Tidy Data
02:25
3
Pipe Data in ggplot
08:18
4
Reorder Plots to Highlight Findings
03:50
5
Line Charts
04:13
6
Use Color to Highlight Findings
08:23
7
Declutter
07:53
8
Add Descriptive Labels to Your Plots
09:18
9
Use Titles to Highlight Findings
08:30
10
Use Annotations to Explain
06:35
11
Tweak Spacing
05:36
12
Create a Custom Theme
03:20
13
Customize Your Fonts
04:42
14
Try New Plot Types
03:24
15
Bring it All Together (Advanced Data Visualization)
11:04
1
Advanced Markdown
07:10
2
Tables
15:48
3
Advanced YAML and Code Chunk Options
05:42
4
Inline R Code
03:42
5
Making Your Reports Shine: Word Edition
05:08
6
Making Your Reports Shine: PDF Edition
07:37
7
Making Your Reports Shine: HTML Edition
06:08
8
Presentations
11:12
9
Dashboards
06:20
10
Websites
08:11
11
Publishing Your Work
02:37
12
Quarto Extensions
06:38
13
Parameterized Reporting, Part 1
07:02
14
Parameterized Reporting, Part 2
04:03
15
Parameterized Reporting, Part 3
06:22
16
Wrapping up Going Deeper with R
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