# Optimizing search in time series data frame

I have a data frame of 50 columns by 2.5 million rows in R, representing a time series. The time column is of class POSIXct. For analysis, I repeatedly need to find the state of the system for a given class at a particular time.

My current approach is the following (simplified and reproducible):

set.seed(1)
N <- 10000
.time <- sort(sample(1:(100*N),N))
class(.time) <- c("POSIXct", "POSIXt")
df <- data.frame(
time=.time,
distance1=sort(sample(1:(100*N),N)),
distance2=sort(sample(1:(100*N),N)),
letter=sample(letters,N,replace=TRUE)
)

# state search function
time.state <- function(df,searchtime,searchclass){
# find all rows in between the searchtime and a while (here 10k seconds)
# before that
rows <- which(findInterval(df$time,c(searchtime-10000,searchtime))==1) # find the latest state of the given class within the search interval return(rev(rows)[match(T,rev(df[rows,"letter"]==searchclass))]) } # evaluate the function to retrieve the latest known state of the system # at time 500,000. df[time.state(df,500000,"a"),]  However, the call to which is very costly. Alternatively, I could first filter by class and then find the time, but that doesn't change the evaluation time much. According to Rprof, it's which and == that cost the majority of the time. Is there a more efficient solution? The time points are sorted weakly increasing. - i think this is pretty efficient already. complexity of which and == is linear. – Aditya Sihag Jan 31 '13 at 15:27 With 1M rows and 1000 unique letter values this takes only a view ms on my system. Why do you need to optimize it? – Roland Jan 31 '13 at 15:36 The call to findInterval takes about 70ms for 2.5M rows (linear with the number of rows). I have to call this function 100k-1M times, which makes any optimization very welcome. If you say there is none, I'll start looking for workarounds. – roelandvanbeek Feb 1 '13 at 10:26 I managed to find a workaround that works quite well, see my answer. – roelandvanbeek Feb 1 '13 at 12:16 add comment ## 1 Answer Because which, == and [ are all linear with the size of the data frame, the solution is to generate subset data frames for bulk operations, as follows: # function that applies time.state to a series of time/class cominations time.states <- function(df,times,classes,day.length=24){ result <- vector("list",length(times)) day.end <- 0 for(i in 1:length(times)){ if(times[i] > day.end){ # create subset interval from 1h before to 24h after day.begin <- times[i]-60*60 day.end <- times[i]+day.length*60*60 df.subset <- df[findInterval(df$time,c(day.begin,day.end))==1,]
}
# save the resulting row from data frame
result[[i]] <- df.subset[time.state(df.subset,times[i],classes[i]),]
}
return(do.call("rbind",result))
}


With dT=diff(range(df\$times)) and dT/day.length large, this reduces the evaluation time with a factor of dT/(day.length+1).

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