Here are a few options:

```
library(ggplot2)
library(scales)
library(dplyr)
## Fake data
set.seed(2)
dat = data.frame(score=c(rnorm(130,40,10), rnorm(130,80,5)))
```

Here's how to plot the ECDF if you have the raw data:

```
# Base graphics
plot(ecdf(dat$score))
# ggplot2
ggplot(dat, aes(score)) +
stat_ecdf(aes(group=1), geom="step")
```

Here's one way to plot the ECDF if you have only summary data:

First, let's group the data into bins, similar to what you have in your question. We use the `cut`

function to create the bins and then create a new `pct`

column to calculate each bins fraction of the total number of scores. We use the `dplyr`

chaining operator (`%>%`

) to do it all in one "chain" of functions.

```
dat.binned = dat %>% count(Marks=cut(score,seq(0,100,5))) %>%
mutate(pct = n/sum(n))
```

Now we can plot it. `cumsum(pct)`

calculates the cumulative percentages (like `cumFreq`

in your question). `geom_step`

creates step plot with these cumulative percentages.

```
ggplot(dat.binned, aes(Marks, cumsum(pct))) +
geom_step(aes(group=1)) +
scale_y_continuous(labels=percent_format())
```

Here's what the plots look like:

`cdf`

, you mean you want a stepwise function that starts at 0 and increases to 1 for the last value, increasing at each unique range?