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# Slow data.frame filling

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"]),
}
}
}
``````

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)
``````

``````          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
``````
-
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
`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
@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

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)
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
## 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`
## 1 2007-01-02  1       100       100
## 2 2007-01-02  2       100       100
## 3 2007-01-02  3         0         0
##
## \$`2007-01-03`
## 4 2007-01-03  1       100       100
## 5 2007-01-03  2       100       100
## 6 2007-01-03  3         0         0
``````

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)
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`
(+1) Very nice use of `expand.grid` and `merge`! – Arun Mar 8 '13 at 17:10