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Day3_activities_answer_key.R
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Day3_activities_answer_key.R
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# Day 3 Activities - Answer Key
## Reading in and inspecting data
# 2. Read the csv file into your environment and assign it to a variable called `animals`. Be sure to check that your row names are the different animals.
animals <- read.csv("data/animals.csv")
# 3. Check to make sure that `animals` is a dataframe.
class(animals)
# 4. How many rows are in the `animals` dataframe? How many columns?
nrow(animals)
ncol(animals)
## Data wrangling
# 1. Extract the `speed` value of 40 km/h from the `animals` dataframe.
animals[1,1]
animals[which(animals$speed == 40), 1]
animals[which(animals$speed == 40), "speed"]
animals$speed[which(animals$speed == 40)]
# 2. Return the rows with animals that are the `color` Tan.
animals[c(2,5),]
animals[which(animals$color == "Tan"),]
# 3. Return the rows with animals that have `speed` greater than 50 km/h and output only the `color` column. Keep the output as a data frame.
animals[which(animals$speed > 50), "color", drop =F]
# 4. Change the color of "Grey" to "Gray".
animals$color[which(animals$color == "Grey")] <- "Gray"
animals[which(animals$color == "Grey"), "color"] <- "Gray"
# 5. Create a list called `animals_list` in which the first element contains the speed column of the `animals` dataframe and the second element contains the color column of the `animals` dataframe.
animals_list <- list(animals$speed, animals$color)
# 6. Give each element of your list the appropriate name (i.e speed and color).
names(animals_list) <- colnames(animals)
## The %in% operator, reordering and matching
# 2. How many of the control samples are also in the `proj_summary` dataframe? Use the %in% operator to check.
length(which(rownames(ctrl_samples) %in% rownames(proj_summary)))
# 3. Keep only the rows in `proj_summary` which correspond to control samples. Do this with the %in% operator. Save it to a variable called `proj_summary_ctrl`.
proj_summary_ctrl <- proj_summary[which(rownames(proj_summary) %in% rownames(ctrl_samples)),]
# 4. We would like to add in the batch information for the samples in `proj_summary_ctrl`. Find the rows that match in `ctrl_samples`.
m <- match(rownames(proj_summary_ctrl), rownames(ctrl_samples))
# 5. Use `cbind()` to add a column called `batch` to the `proj_summary_ctrl` dataframe. Assign this new dataframe back to `proj_summary_ctrl`.
proj_summary_ctrl <- cbind(proj_summary_ctrl, batch=ctrl_samples[m,])
## BONUS: Using `map_lgl()`
# 1. Subset `proj_summary` to keep only the "high" and "low" samples based on the treament column. Save the new dataframe to a variable called `proj_summary_noctl`
proj_summary_noctl <- proj_summary[which(proj_summary$treatment != "control"),]
# 2. Further subset the dataframe to remove the non-numeric columns "Quality_format", and "treatment". Try to do this using the `map()` function in addition to `is.numeric()`. Save the new dataframe back to `proj_summary_noctl`
keep <- map_lgl(proj_summary_noctl, is.numeric)
proj_summary_noctl <- proj_summary_noctl[,keep]