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I am trying to import some data (below) and checking to see if I have the appropriate number of rows for later analysis.

repexample <- structure(list(QueueName = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 
1L, 1L, 1L, 3L, 3L, 3L, 3L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L, 2L
), .Label = c(" Overall", "CCM4.usci_retention_eng", "usci_helpdesk"
), class = "factor"), X8Tile = structure(c(1L, 2L, 3L, 4L, 5L, 
6L, 7L, 8L, 9L, 1L, 2L, 3L, 4L, 1L, 2L, 3L, 4L, 5L, 6L, 7L, 8L, 
9L), .Label = c(" Average", "1", "2", "3", "4", "5", "6", "7", 
"8"), class = "factor"), Actual = c(508.1821504, 334.6994838, 
404.9048759, 469.4068667, 489.2800416, 516.5744106, 551.7966176, 
601.5103783, 720.9810622, 262.4622533, 250.2777778, 264.8281938, 
272.2807882, 535.2466968, 278.25, 409.9285714, 511.6635101, 553, 
641, 676.1111111, 778.5517241, 886.3666667), Calls = c(54948L, 
6896L, 8831L, 7825L, 5768L, 7943L, 5796L, 8698L, 3191L, 1220L, 
360L, 454L, 406L, 248L, 11L, 9L, 94L, 1L, 65L, 9L, 29L, 30L), 
Pop = c(41L, 6L, 5L, 5L, 5L, 5L, 5L, 5L, 5L, 3L, 1L, 1L, 
1L, 11L, 2L, 2L, 2L, 1L, 1L, 1L, 1L, 1L)), .Names = c("QueueName", 
"X8Tile", "Actual", "Calls", "Pop"), class = "data.frame", row.names = c(NA, 
-22L))

The data gives 5 columns and is one example of some data that I would typically import (via a .csv file). As you can see there are three unique values in the column "QueueName". For each unique value in "QueueName" I want to check that it has 9 rows, or the corresponding values in the column "X8Tile" ( Average, 1, 2, 3, 4, 5, 6, 7, 8). As an example the "QueueName" Overall has all of the necessary rows, but usci_helpdesk does not.

So my first priority is to at least identify if one of the unique values in "QueueName" does not have all of the necessary rows.

My second priority would be to remove all of the rows corresponding to a unique "QueueName" that does not meet the requirements.

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up vote 0 down vote accepted

Both these priorities are easily addressed using the Split-Apply-Combine paradigm, implemented in the plyr package.

Priority 1: Identify values of QueueName which don't have enough rows

require(plyr)

# Make a short table of the number of rows for each unique value of QueueName
rowSummary <- ddply(repexample, .(QueueName), summarise, numRows=length(QueueName))
print(rowSummary)

If you have lots of unique values of QueueName, you'll want to identify the values which are not equal to 9:

rowSummary[rowSummary$numRows !=9, ] 

Priority 2: Eliminate rows for which QueueNamedoes not have enough rows

repexample2 <- ddply(repexample, .(QueueName), transform, numRows=length(QueueName))
repexampleEdit <- repexample2[repexample2$numRows ==9, ]
print(repxampleEdit)

(I don't quite understand the meaning of 'check that it has 9 rows, or the corresponding values in the column "X8Tile"). You could edit the repexampleEdit line based on your needs.

share|improve this answer

This is an approach that makes some assumptions about how your data are ordered. It can be modified (or your data can be reordered) if the assumption doesn't fit:

## Paste together the values from your "X8tile" column
##   If all is in order, you should have "Average12345678"
##   If anything is missing, you won't....
myMatch <- names(
  which(with(repexample, tapply(X8Tile, QueueName, FUN=function(x) 
    gsub("^\\s+|\\s+$", "", paste(x, collapse = "")))) 
        == "Average12345678"))

## Use that to subset...
repexample[repexample$QueueName %in% myMatch, ]
#                  QueueName   X8Tile   Actual Calls Pop
# 1                  Overall  Average 508.1822 54948  41
# 2                  Overall        1 334.6995  6896   6
# 3                  Overall        2 404.9049  8831   5
# 4                  Overall        3 469.4069  7825   5
# 5                  Overall        4 489.2800  5768   5
# 6                  Overall        5 516.5744  7943   5
# 7                  Overall        6 551.7966  5796   5
# 8                  Overall        7 601.5104  8698   5
# 9                  Overall        8 720.9811  3191   5
# 14 CCM4.usci_retention_eng  Average 535.2467   248  11
# 15 CCM4.usci_retention_eng        1 278.2500    11   2
# 16 CCM4.usci_retention_eng        2 409.9286     9   2
# 17 CCM4.usci_retention_eng        3 511.6635    94   2
# 18 CCM4.usci_retention_eng        4 553.0000     1   1
# 19 CCM4.usci_retention_eng        5 641.0000    65   1
# 20 CCM4.usci_retention_eng        6 676.1111     9   1
# 21 CCM4.usci_retention_eng        7 778.5517    29   1
# 22 CCM4.usci_retention_eng        8 886.3667    30   1

Similar approaches can be taken with aggregate+merge and similar tools.

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