5Can anyone give me a hint to speed up the following program? Situation: I have a huge amount of measurement data. I need to extract data for "10 minutes stable operation conditions" of 5 parameters i.e. column values.

Here is my (working, but really slow) solution: - Take the first 10 rows from the dataframe - Compare the min and max of each column to the first value of the column - If at least one column min or max is not within tolerance, delete the first row, repeat - If they are within tolerance, calculate the mean of the results, store them, delete 10 rows, repeat. - break when the dataframe has less than 10 rows

Since I am using a repeat loop, this takes 30min to extract 610 operation points from 86.220 minutes of data.

Any help is appreciated. Thanks!

edit: I created some code to explain. Please note that I deleted the checking routines for na values and standby operation (values around 0):

```
n_cons<-5 # Number of consistent minutes?
### Function to check wheter a value is within tolerance
f_cons<-function(min,max,value,tol){
z<-max > (value + tol) | min < (value - tol);
return(z)
}
# Define the +/- tolerances
Vu_1_tol<-5 # F_HT
Vu_2_tol<-5 # F_LT
# Create empty result map
map<-c(rep(NA,3))
dim(map)<- c(1,3)
colnames(map)<-list("F_HT","F_LT","Result")
system.time(
repeat{
# Criteria to break
if(nrow(t6)<n_cons){break}
# Subset of the data to check
t_check<-NULL
t_check<-cbind(t6$F_HT[1:n_cons],
t6$F_LT[1:n_cons]
)
# Check for consistency
if(f_cons(min(t_check[,1]),max(t_check[,1]),t_check[1,1],Vu_1_tol)){t6<-t6[-1,]
next}
if(f_cons(min(t_check[,2]),max(t_check[,2]),t_check[1,2],Vu_2_tol)){t6<-t6[-1,]
next}
# If the repeat loop passes the consistency check, store the means
attach(t6[1:n_cons,])
# create a new row wih means of steady block
new_row<-c(mean(F_HT),mean(F_LT),mean(Result))
new_row[-1]<-round(as.numeric(new_row[-1]),2)
map<-rbind(map,new_row) # attach new steady point to the map
detach(t6[1:n_cons,])
t6<-t6[-(1:n_cons),] # delete the evaluated lines from the data
}
)
```

The data I am using looks like this

```
t6<-structure(list(F_HT = c(1499.71, 1500.68, 1500.44, 1500.19, 1500.31,
1501.76, 1501, 1551.22, 1500.01, 1500.52, 1499.53, 1500.78, 1500.65,
1500.96, 1500.25, 1500.76, 1499.49, 1500.24, 1500.47, 1500.25,
1735.32, 2170.53, 2236.08, 2247.48, 2250.71, 2249.59, 2246.68,
2246.69, 2248.27, 2247.79), F_LT = c(2498.96, 2499.93, 2499.73,
2494.57, 2496.94, 2507.71, 2495.67, 2497.88, 2499.63, 2506.18,
2495.57, 2504.28, 2497.38, 2498.66, 2502.17, 2497.78, 2498.38,
2501.06, 2497.75, 2501.32, 2500.79, 2498.17, 2494.82, 2499.96,
2498.5, 2503.47, 2500.57, 2501.27, 2501.17, 2502.33), Result = c(9125.5,
8891.5, 8624, 8987, 9057.5, 8840.5, 9182, 8755.5, 9222.5, 9079,
9175.5, 9458.5, 9058, 9043, 9045, 9309, 9085.5, 9230, 9346, 9234,
9636.5, 9217.5, 9732.5, 9452, 9358, 9071.5, 9063.5, 9016.5, 8591,
8447.5)), .Names = c("F_HT", "F_LT", "Result"), row.names = 85777:85806, class = "data.frame")
```

With this code and data, I get 3 steady operation points, which is what I want, but which is very slow.

Hopefully, this helps to better explain my problem.

`mean->mean+(v_{n+1}-v_1)/n)`

– Itamar Aug 7 '13 at 11:02`package(zoo); rollmean; rollmax`

and that family of functions? Another possibility (again, posting your code would help) is to convert from a`dataframe`

to a`matrix`

. BTW, it's not how many "minutes" your data cover, it's how many rows are in the array. – Carl Witthoft Aug 7 '13 at 11:30