Depending on what format you input file is in you can use `read.csv("scores.txt")`

. You can change the separator with `read.csv("scores.txt", sep="\t")`

. If you data doesn't have a header, you can use the option `header=F`

.

I am going to use a `,`

since it is easier to read here.

INPUT FILE

```
Score,Frequency
100,10
200,30
300,40
```

R Source Code

```
x <- read.csv("scores.txt")
mean(x$Score)
median(x$Score)
var(x$Score)
mean(x$Score)
sd(x$Score)
```

R Output

```
> mean(x$Score)
[1] 200
> median(x$Score)
[1] 200
> var(x$Score)
[1] 10000
> mean(x$Score)
[1] 200
> sd(x$Score)
[1] 100
```

If you want to include the frequency.

R Source Code

```
x <- read.csv("scores.txt")
mean(rep(x$Score, x$Frequency))
median(rep(x$Score, x$Frequency))
var(rep(x$Score, x$Frequency))
mean(rep(x$Score, x$Frequency))
sd(rep(x$Score, x$Frequency))
```

R Output

```
> mean(rep(x$Score, x$Frequency))
[1] 237.5
> x <- read.csv("scores.txt")
> mean(rep(x$Score, x$Frequency))
[1] 237.5
> median(rep(x$Score, x$Frequency))
[1] 250
> var(rep(x$Score, x$Frequency))
[1] 4905.063
> mean(rep(x$Score, x$Frequency))
[1] 237.5
> sd(rep(x$Score, x$Frequency))
[1] 70.03616
```