Here's the slow, step-by-step version.

This is your data.

```
population_mean <- 0
population_sd <- 1
n <- 1000
x <- rnorm(n, population_mean, population_sd)
```

These are some `x`

coordinates for drawing a curve. Notice the use of `qnorm`

to get lower and upper quantiles from a normal distribution.

```
population_x <- seq(
qnorm(0.001, population_mean, population_sd),
qnorm(0.999, population_mean, population_sd),
length.out = 1000
)
```

In order to convert from density to counts, we need to know the binwidth. This is easiest if we specify it ourselves.

```
binwidth <- 0.5
breaks <- seq(floor(min(x)), ceiling(max(x)), binwidth)
```

Here's our histogram.

```
hist(x, breaks)
```

The count curve is the normal density times the number of data points divided by the binwidth.

```
lines(
population_x,
n * dnorm(population_x, population_mean, population_sd) * binwidth,
col = "red"
)
```

Let's see that again with the sample distribution rather than the population distribution.

```
sample_mean <- mean(x)
sample_sd <- sd(x)
sample_x <- seq(
qnorm(0.001, sample_mean, sample_sd),
qnorm(0.999, sample_mean, sample_sd),
length.out = 1000
)
lines(
population_x,
n * dnorm(sample_x, sample_mean, sample_sd) * binwidth,
col = "blue"
)
```