# Plot time data in R to various resolutions (to the minute, to the hour, to the second, etc.)

I have some data in CSV like:

``````"Timestamp", "Count"
"2009-07-20 16:30:45", 10
"2009-07-20 16:30:45", 15
"2009-07-20 16:30:46", 8
"2009-07-20 16:30:46", 6
"2009-07-20 16:30:46", 8
"2009-07-20 16:30:47", 20
``````

I can read it into R using read.cvs. I'd like to plot:

1. Number of entries per second, so:
```"2009-07-20 16:30:45", 2
"2009-07-20 16:30:46", 3
"2009-07-20 16:30:47", 1
```
2. Average value per second:
```"2009-07-20 16:30:45", 12.5
"2009-07-20 16:30:46", 7.333
"2009-07-20 16:30:47", 20
```
3. Same as 1 & 2 but then by Minute and then by Hour.

Is there some way to do this (collect by second/min/etc & plot) in R?

## 2 Answers

Read your data, and convert it into a zoo object:

``````R> X <- read.csv("/tmp/so.csv")
R> X <- zoo(X\$Count, order.by=as.POSIXct(as.character(X[,1])))
``````

Note that this will show warnings because of non-unique timestamps.

Task 1 using `aggregate` with `length` to count:

``````R> aggregate(X, force, length)
2009-07-20 16:30:45 2009-07-20 16:30:46 2009-07-20 16:30:47
2                   3                   1
``````

Task 2 using `aggregate`:

``````R> aggregate(X, force, mean)
2009-07-20 16:30:45 2009-07-20 16:30:46 2009-07-20 16:30:47
12.500               7.333              20.000
``````

Task 3 can be done the same way by aggregating up to higher-order indices. You can call `plot` on the result from aggregate:

``````plot(aggregate(X, force, mean))
``````
• Nice! I had to add the Zoo package in the Package Manager and call "library(zoo)" first. – ayman Aug 10 '09 at 21:03
• Yes, that's how it works with packages. For your hourly etc indices, use the 'parsed time' (here: index(X) after zoo object has been created) and created an 'aggregation index vector' that you use in aggregate: R> aggind <- format(index(X), "%Y%m%d %H%m") R> aggregate(X, aggind, mean) 20090720 1607 11.17 Exactly the same works for other indices (change the formatting rule) and functions (replace mean by whatever you need). – Dirk Eddelbuettel Aug 10 '09 at 21:07
• Again, nice! I noticed, when I make an aggregation index vector like: R> aggind <- format(index(hx), "%Y-%m-%d %H%M") I can only plot via boxplot(aggregate(X, aggind, mean)) and not via plot(aggregate(X, aggind, mean)). plot(...) returns "Error in plot.window(...) : need finite 'xlim' values". – ayman Aug 10 '09 at 21:59
• Assign the temp. result to a variable and run summary() over it -- you may have NAs which throws some of the plotting off. – Dirk Eddelbuettel Aug 10 '09 at 22:18

Averaging the data is easy with the plyr package.

``````library(plyr)
Second <- ddply(dataset, "Timestamp", function(x){
c(Average = mean(x\$Count), N = nrow(x))
})
``````

To do the same thing by minute or hour, then you need to add fields with that info.

``````library(chron)
dataset\$Minute <- minutes(dataset\$Timestamp)
dataset\$Hour <- hours(dataset\$Timestamp)
dataset\$Day <- dates(dataset\$Timestamp)
#aggregate by hour
Hour <- ddply(dataset, c("Day", "Hour"), function(x){
c(Average = mean(x\$Count), N = nrow(x))
})
#aggregate by minute
Minute <- ddply(dataset, c("Day", "Hour", "Minute"), function(x){
c(Average = mean(x\$Count), N = nrow(x))
})
``````