I'd like to do the following plot using ggplot:

Here is an example of the structure of my df (sort of, draw not to scale with the data):

```
example.df = data.frame(mean = c(0.3,0.8,0.4,0.65,0.28,0.91,0.35,0.61,0.32,0.94,0.1,0.9,0.13,0.85,0.7,1.3),
std.dev = c(0.01,0.03,0.023,0.031,0.01,0.012,0.015,0.021,0.21,0.13,0.023,0.051,0.07,0.012,0.025,0.058),
class = c("1","2","1","2","1","2","1","2","1","2","1","2","1","2","1","2"),
group = c("group1","group2","group1","group2","group1","group2","group1","group2","group1","group2","group1","group2","group1","group2","group1","group2"))
```

This data frame consists of 16 replicates, each with a given mean and a given standard deviation.

For each replicate I'd like to plot the confidence intervals, where the big dot in my figure example is the mean estimate, and the length of the bar is twice the standard deviation.

Also I'd like to plot two different replicates in the same line but with different coloring, coloring it by class, red is class 1 and blue is class 2.

Finally, I'd like to divide the whole plot into two panels (in the same row) corresponding to the two different groups.

I tried looking into this site, http://www.cookbook-r.com/Graphs/Plotting_means_and_error_bars_(ggplot2)/ but couldn't figure out how to automate this for any data frame of this structure, with X number of groups (in this case 2), and K replicates per group (in this case 8, 4 of class 1 and 4 of class 2).

Is there a good way to do this using ggplot or standard r pkg libraries?