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I currently use the following code to input a csv file, plot the data points based off one column and store a CpK number to a variable. This code works to calculate the CpK for the entire data set and the graph works as well. I am now looking to calculate the CpK number for each month in the dataset (graphing is not necessary). I looked through the data.table documentation as well as other R documentation, but I having a tough time selecting only the data for each month.

Current Code:(I could have calculated the CpK in one formula, but I have it broken up purposely)

mydf <- read.csv('ID35.csv', header = TRUE, sep=",")
date <- strptime(mydf$DATETIME, "%Y/%m/%d %H:%M:%S")
plot(date,mydf$AVG,xlab='Date',ylab='AVG',main='Data')
abline(h=mydf$MIN,col=3,lty=1)
abline(h=mydf$MAX,col=3,lty=1)
grid(NULL,NULL,col="black")
legend("topright", legend = c(" ", " "), text.width = strwidth("1,000,000"), lty = 1:2, xjust = 1, yjust = 1, title = "Points")
myavg <-mean(mydf$AVG, na.rm=TRUE)
newds <- (mydf$AVG - myavg)^2
newsum <- sum(newds, na.rm=TRUE)
N <- length(mydf$AVG) - 1
newN <- 1/N
total <- newN*newsum
sigma <- total^(1/2)
USL <- mean(mydf$MAX, na.rm=TRUE)
LSL <- mean(mydf$MIN, na.rm=TRUE)
cpk <- min(((USL-myavg)/(3*sigma)),((myavg-LSL)/(3*sigma)))
cpk

Here is what the dataset looks like(date formatting is already done):

mydf(only 24/1000 rows):

Code           DATETIME AVG MIN TARG_AVG MAX
N9 2012/04/10 14:03:37   0.2647     0.22     0.25     0.27
NA 2012/03/30 07:48:17   0.2589     0.22     0.25     0.27
NB 2012/03/24 19:23:08   0.2912     0.22     0.25     0.27
NB 2012/03/25 16:10:17   0.2659     0.22     0.25     0.27
NC 2012/04/10 00:58:29   0.2622     0.22     0.25     0.27
ND 2012/04/14 18:32:52   0.2600     0.22     0.25     0.27
NG 2012/04/21 14:47:47   0.2671     0.22     0.25     0.27
NH 2012/04/09 20:31:17   0.2648     0.22     0.25     0.27
NL 2012/04/24 07:28:17   0.2527     0.22     0.25     0.27
NP 2012/04/23 13:26:50   0.2640     0.22     0.25     0.27
NQ 2012/04/14 20:30:42   0.2590     0.22     0.25     0.27
NS 2012/05/02 09:09:52   0.2651     0.22     0.25     0.27
NU 2012/05/04 13:07:49   0.2688     0.22     0.25     0.27
NV 2012/05/19 23:07:08   0.2716     0.22     0.25     0.27
NX 2012/05/03 02:00:13   0.2670     0.22     0.25     0.27
NY 2012/05/04 12:56:52   0.2680     0.22     0.25     0.27
NZ 2012/05/06 10:05:38   0.2697     0.22     0.25     0.27
O0 2012/05/07 22:01:11   0.2675     0.22     0.25     0.27
O3 2012/06/21 18:09:47   0.2606     0.22     0.25     0.27
04 2012/06/21 18:47:36   0.2545     0.22     0.25     0.27
51 2012/07/24 21:13:08   0.2541     0.22     0.25     0.27
O5 2012/07/26 16:54:09   0.2575     0.22     0.25     0.27
O6 2012/07/20 02:42:29   0.2603     0.22     0.25     0.27
OD 2012/08/25 20:56:55   0.2559     0.22     0.25     0.27
OH 2012/08/28 10:30:11   0.2372     0.22     0.25     0.27

From the table above the only two columns I care about are the DATETIME and the AVG. Once I have the new "myavg" variable for each month I can use the same formula to calculate the CpK number. I am thinking the variable name could be something like' 2012/08' I think the code should go something like:

for(each month mydf$DATETIME) (date like 2012/04*,2012/05*)
monthavg <-(mydf$AVG, na.rm=TRUE)

Is there a way to store the CpK number for each month in variables I can access?

share|improve this question
    
Perhaps you missed the conveniently named months function? (It has methods for both Date and POSIX formats I believe.) –  joran Aug 31 '12 at 15:00
    
@joran Is it this one here? –  Jonny Aug 31 '12 at 15:02
    
That one might help too, but I was thinking of the plain old, base R function found in ?months. No special package needed. –  joran Aug 31 '12 at 15:07
    
@joran I have looked up the documentation, but am confused on the implementation of it. Do you have an example, specifically how to use it in a for loop? (I will continue to look for one in the mean time). –  Jonny Aug 31 '12 at 15:16
2  
(1) Create new variable via months(DATETIME). (2) Write a function that accepts a portion of your dataframe and calculates CpK. (3) Use ddply, data.table, aggregate, by, etc. –  joran Aug 31 '12 at 15:19

1 Answer 1

up vote 1 down vote accepted
aggregate(mydf$AVG, list(month=months(as.Date(mydf$DATETIME))), mean)

#    month         x
# 1  April 0.2618125
# 2 August 0.2465500
# 3   July 0.2573000
# 4   June 0.2575500
# 5  March 0.2720000
# 6    May 0.2682429
share|improve this answer
    
Nice, I modified it a tiny bit to exclude the NAs aggregate(mydf$AVG, na.rm=TRUE, list(month=months(as.Date(mydf$DATETIME))), mean). Are these values assigned to variables then? So I can access them later? –  Jonny Aug 31 '12 at 16:20
    
The statement returns a dataframe, up to you what you do with it. –  Andy Aug 31 '12 at 16:20
    
Perfect. Thanks! –  Jonny Aug 31 '12 at 16:21

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