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--- | |
title: "Test" | |
output: html_document | |
--- | |
```{r setup, include=FALSE} | |
plot(mtcars$mpg) | |
``` |
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# Inspired by Nadieh Bremer's lasso annotations here: https://twitter.com/NadiehBremer/status/1277622602735865856 | |
# h/t Cedric Scherer: https://twitter.com/CedScherer/status/1278351840074240001 | |
library(ggplot2); library(ggforce) | |
add_lasso_layer <- function(x1, x2, y) { | |
width = x2 - x1 | |
space = width * 0.05 | |
lasso_points = data.frame( |
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devtools::install_github("coolbutuseless/poissoned") | |
library(poissoned) | |
# v1 | |
poisson_disc(ncols = 100, nrows = 50, cell_size = 10) %>% | |
as_tibble() %>% | |
arrange(y) %>% | |
mutate(rando = runif(n()), | |
visibility = case_when( | |
y >= 300 ~ (500-y)/200, |
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library(tidyverse) | |
example_df <- tribble( | |
~Year, ~Category, ~Name, | |
2015, "A", "1", | |
2015, "A", "3", | |
2015, "A", "5", | |
2015, "C", "2", | |
2015, "C", "4", | |
2016, "A", "1", |
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library(palmerpenguins) | |
library(tidyverse) | |
library(umap) | |
library(gganimate) | |
penguins_clean <- penguins %>% filter(!is.na(bill_length_mm), !is.na(sex)) | |
penguinos <- function(neigh = 13) { | |
penguins_clean %>% | |
select(bill_length_mm:body_mass_g) %>% | |
scale() %>% |
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library(tidyverse) | |
library(fable) | |
library(gganimate) | |
set.seed(1) | |
df <- data.frame(x = 1:365, | |
y = cumsum(runif(365, min = -1))) | |
smoothy <- function(alpha1) { | |
df %>% | |
as_tsibble(index = x) %>% |
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dog_moves <- readr::read_csv('https://raw.githubusercontent.com/rfordatascience/tidytuesday/master/data/2019/2019-12-17/dog_moves.csv') | |
dog_travel <- readr::read_csv('https://raw.githubusercontent.com/rfordatascience/tidytuesday/master/data/2019/2019-12-17/dog_travel.csv') | |
dog_descriptions <- readr::read_csv('https://raw.githubusercontent.com/rfordatascience/tidytuesday/master/data/2019/2019-12-17/dog_descriptions.csv') | |
library(tidyverse) | |
library(tidytext) | |
library(lubridate) | |
doggo_names <- dog_descriptions %>% | |
select(name, breed_primary, size, sex, size, contact_state, contact_zip, posted) |
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# Some ideas to try out on the data from: | |
# https://gist.github.com/brooke-watson/ccf3d1b1f4449ab55a72f7835a52e599 | |
# 0. Let's describe what type of data in each row | |
sw1_annotated <- starwars_garbage_data1 %>% | |
# Counting each new group of data | |
mutate(group = cumsum(v1 == "Character Name")) %>% | |
# Assign rows within each group |
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# https://twitter.com/jonlovett/status/1191490424965218304 | |
# What I'm curious about is how we're distributed inside of our time zones, because the further east you are inside of a time zone, the harder standard time hits. Boston's sunset is 4:34pm today. Brutal. Detroit's sunset, on the other side of the same time zone, is 5:22pm. | |
# I'm a big fan of Jon Lovett's podcasts, and I love trying new things in R, so it was Game On when I saw the tweet above. I googled around and combined a few data sources to get US counties' populations, coordinates, sunsets, and time zones. From those you can see who has it worst in the evenings when standard time kicks in. | |
# Curiously, big cities in the US tend to be on the east, "darker evening" end of their time zones. | |
####### Libraries ##### |
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library(rtweet) | |
library(tidyverse) | |
library(tidytext) | |
library(ggforce) | |
sw <- search_tweets("Rogue, IV", n = 90000, include_rts = FALSE) | |
sw_clean <- sw %>% | |
unnest_tokens(word, text, drop = F, to_lower = T) %>% | |
filter(word %in% c("i", "ii", "iii", "iv", "v", "vi", |
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