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I have length(Date_List) number of days for which I have info on length(ISIN_Table$ID) items. For each Day (loop in j) I create a dataframe of zeroes that can hold all items (length(ISIN_Table$ID)), and some columns (4).

Each item will be a row in every matrix, but depending on the date will have different filling.

#create list that will hold matrices
df.list<-vector("list", length(Dates_List))
for (j in 1:(length(Dates_List))){
  df.list[[j]] <- data.frame(matrix(0, nrow = length(ISIN_Table$ID),ncol=4))
}

#Loop over number of days
for (j in 1:(length(Dates_List))){
  date<-Dates_List[j]
  #create empty dataframe 
  df.list[[j]] <- data.frame(matrix(0, nrow=length(ISIN_Table$ID), ncol=4))

  #loop over every item
  for (i in 1:(length(ISIN_Table$ID))){
    #check whether item is known at date
    if (nrow(data.raw[data.raw$ID==i & data.raw$Date==date,]) < 1){
      ID<-i
      df.list[[j]][i,1]<-date
      df.list[[j]][i,2]<-ID     #fill up the row
    }
    else{
      #fill up the row
      df.list[[j]][i,]<-c(
        as.character(data.raw[data.raw$ID==i & data.raw$Date==date,"Date"]),
        (data.raw[data.raw$ID==i & data.raw$Date==date,"ID"]),
        (data.raw[data.raw$ID==i & data.raw$Date==date,"Bid.Price"]),
        (data.raw[data.raw$ID==i & data.raw$Date==date,"Ask.Price"]))
    }
  }
} 

The code gives me the exact output I want, it it incredibly slow however. I would appreciate any comments on how to improve speed, current version is not workable.

UPDATE:

# create dummy data:

Dates_List<-c("2007-01-02", "2007-01-03")
ISIN_Table<-data.frame(c(1,2,3))
colnames(ISIN_Table)<-"ID"
ID<-rep(1:2, len=2, each=1)
Date<-c("2007-01-02","2007-01-02","2007-01-03", "2007-01-03")
Bid.Price<-rep(100,4)
Ask.Price<-rep(100,4)
data.raw<-data.frame(ID, Date, Bid.Price, Ask.Price)

Asking for df.list[[1]] returns:

          X1 X2  X3  X4
1 2007-01-02  1 100 100
2 2007-01-02  2 100 100
3 2007-01-02  3   0   0
share|improve this question
    
for loops in R are slow. you can try apply family functions. Also without reproducible data, it's hard to answer such a question. –  Chinmay Patil Mar 8 '13 at 14:46
    
looks like you are just trying to split the data.raw by dates and if you don't have any particular ID for any particular date you are populating it with 0 –  Chinmay Patil Mar 8 '13 at 14:52
6  
for loops are not slow. Creating and subsetting data.frames is slow. –  Roland Mar 8 '13 at 14:53
    
@Roland I meant there are much better way of getting work done in R than using for loops :) –  Chinmay Patil Mar 8 '13 at 14:54
2  
@Smackboyg, it is better if you edit your question to explain your problem (rather than asking to fix your code), by providing sample data (what is data.raw for example?) and showing us the output you require. You'll get better solutions. As such the question is not constructive (or too localised) and if it remains so, after a while, I'll vote to close. –  Arun Mar 8 '13 at 14:56
show 7 more comments

1 Answer

UPDATE As per @Arun's suggestion, you can add missing rows before splitting and avoid mapply altogether

Dates_List <- c("2007-01-02", "2007-01-03")
ISIN_Table <- data.frame(c(1, 2, 3))
colnames(ISIN_Table) <- "ID"
ID <- rep(1:2, len = 2, each = 1)
Date <- c("2007-01-02", "2007-01-02", "2007-01-03", "2007-01-03")
Bid.Price <- rep(100, 4)
Ask.Price <- rep(100, 4)
data.raw <- data.frame(ID, Date, Bid.Price, Ask.Price)

temp <- expand.grid(Dates_List, ISIN_Table$ID)
names(temp) <- c("Date", "ID")

data.raw <- merge(temp, data.raw, all.x = TRUE)
data.raw[is.na(data.raw)] <- 0
data.raw
##         Date ID Bid.Price Ask.Price
## 1 2007-01-02  1       100       100
## 2 2007-01-02  2       100       100
## 3 2007-01-02  3         0         0
## 4 2007-01-03  1       100       100
## 5 2007-01-03  2       100       100
## 6 2007-01-03  3         0         0


splitdata <- split(data.raw, data.raw$Date)

splitdata
## $`2007-01-02`
##         Date ID Bid.Price Ask.Price
## 1 2007-01-02  1       100       100
## 2 2007-01-02  2       100       100
## 3 2007-01-02  3         0         0
## 
## $`2007-01-03`
##         Date ID Bid.Price Ask.Price
## 4 2007-01-03  1       100       100
## 5 2007-01-03  2       100       100
## 6 2007-01-03  3         0         0

OLD ANSWER

You can use split to split data by dates and then nifty use of mapply and merge to get row for even the IDs which doesn't have any data on given date.

Dates_List <- c("2007-01-02", "2007-01-03")
ISIN_Table <- data.frame(c(1, 2, 3))
colnames(ISIN_Table) <- "ID"
ID <- rep(1:2, len = 2, each = 1)
Date <- c("2007-01-02", "2007-01-02", "2007-01-03", "2007-01-03")
Bid.Price <- rep(100, 4)
Ask.Price <- rep(100, 4)
data.raw <- data.frame(ID, Date, Bid.Price, Ask.Price)

splitdata <- split(data.raw, data.raw$Date)

mapply(FUN = function(x, date) merge(x, 
                          data.frame(ID = ISIN_Table$ID, 
                                     Date = rep(date, length(ISIN_Table$ID))), 
                                 all.y = TRUE), 
       splitdata, t(names(splitdata)), SIMPLIFY = FALSE)

## $`2007-01-02`
##   ID       Date Bid.Price Ask.Price
## 1  1 2007-01-02       100       100
## 2  2 2007-01-02       100       100
## 3  3 2007-01-02        NA        NA
## 
## $`2007-01-03`
##   ID       Date Bid.Price Ask.Price
## 1  1 2007-01-03       100       100
## 2  2 2007-01-03       100       100
## 3  3 2007-01-03        NA        NA
share|improve this answer
    
(+1) Very nice use of expand.grid and merge! –  Arun Mar 8 '13 at 17:10
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