# Can we do binary search in data.table with OR select queries

Following the previous question using `data.table`

``````DT = data.table(x=sample(letters,1e7,T),y=sample(1:25,1e7,T),rnorm(1e7))
setkey(DT,x,y)
``````

Can we use binary search to find

``````DT[x=='a' | y==25]
``````

Remember that `DT[J('a',25)] == DT[x=='a' & y==25]`

-
SMALL reproducible example! 1e7 random draws from sample * 3?!! :-) –  Simon O'Hanlon Mar 24 '13 at 14:51
It takes 0.5 second on my 3 years old laptop... –  statquant Mar 24 '13 at 19:23
@statquant, I think Simon was alluding to the fact that if 1e7 is a small sample, how big must the actual data be! ;) –  Ricardo Saporta Mar 24 '13 at 19:25

Yes:
In order to do a binary serach, we need the appropriate indices.

``````  indx <- rbind(DT[y==25, list(y=25), by=x], DT[.("a"), list(x="a"), by=y], use.names=TRUE)
indx <- setdiff(indx, setdiff(indx, unique(DT[, key(DT), with=FALSE])))
indx

DT[.(indx)]
``````

Benchmarking:
This gives us more than a 10x improvement over vectorized serach.

``````  identical(setkey(DT[.(indx)]), setkey(DT[x=="a" | y == 25]))
# [1] TRUE

library(microbenchmark)
microbenchmark(UsingIndx = DT[.(indx)],  UsingVecSearch = DT[x=="a" | y == 25], times=100 )

Unit: milliseconds
expr       min        lq    median        uq      max
1      UsingIndx  34.27562  41.70119  48.13215  49.29752 231.1669
2 UsingVecSearch 506.62670 545.85673 636.67701 680.93894 802.0842
``````

For convenience, we can wrap the "creating the index" portion of the code into a nice function, so that we can then call it in a single line. For example:

``````DT[.(OrIndx("a", 25, DT))]
``````

Where `OrIndx()` is defined as follows:

``````OrIndx <- function(xval, yval, DT)  {
# TODO: Allow for arbitrary columns and column names
if(!is.data.table(DT))
stop("DT is not a data.table")

# create all appropriate combinations
indx <- rbind(DT[y==yval, list(y=yval), by=x], DT[.(xval), list(x=xval), by=y], use.names=TRUE)

# take out any combinations in indx that are not actually present in DT and return
return( setdiff(indx, setdiff(indx, unique(DT[, key(DT), with=FALSE]))) )
}
``````

## Explanation:

The idea here is that performing an "or" serach requires some form of combination.
In a standard vector search, this combination is of the results of each individual vector serach.

data.table offers some great speed improvements by allowing seraches such as

`````` DT[.(c("cdf", "tmb"), c(25, 3))]
``````

Therefore, a natural solution to the question would be to use:

`````` DT[.(c(<all values of x>, "a"), c(25, <all values of y>))]
``````

The only problem is that the recycling would not line up properly.
It would be ideal to have an option like

`````` DT[.(  list( c(unique(x), y=25), c(x="a", y=unique(y) )  )]
``````

But as far as I can tell that has not been implemented (yet!)
So instead, we can take appropriate combinations.
The function `OrIndx` above does exactly that. (it s quick & dirty and there are more efficient ways of creating the index)

As per @Aruns suggestion, we include

``````rbind(DT[J("a")], DT[J(setdiff(unique(x), "a"), 25)])
rbindlist(list( DT[J("a")], DT[J(setdiff(unique(x), "a"), 25)] ))
``````

Tested on 1e6 and 1e7 rows:

``````  ## Using 1 Million rows
> microbenchmark(Using_Indx = DT[.(indx)], Using_RbindList = rbindlist(list(DT[J("a")], DT[J(setdiff(unique(x), "a"), 25)])), Using_Rbind = rbind(DT[J("a")], DT[J(setdiff(unique(x), "a"), 25)]),  Using_VecSearch = DT[x=="a" | y == 25], times=70L )
Unit: milliseconds
expr       min        lq    median        uq        max
1      Using_Indx  4.865089  5.755615  5.813938  5.957352   6.880743
2     Using_Rbind 42.657953 49.239558 49.682407 50.505977 139.770670
3 Using_RbindList 36.319170 44.169151 44.484350 45.279158 155.361338
4 Using_VecSearch 49.003307 64.030384 64.443666 65.123886 150.099946

## Using 10 Milliion rows
Unit: milliseconds
expr       min       lq   median        uq      max
1      Using_Indx  33.71108  47.5402  48.7574  50.75285 122.0950
2     Using_rbind 492.38244 535.6062 565.8623 590.92841 727.3907
3 Using_RbindList 436.29325 478.3626 507.4665 525.25980 657.6639
4 Using_VecSearch 511.86248 607.8046 643.9822 688.36733 765.3997

# Making sure all the same results:
> identical(setkey(DT[.(indx)]), setkey(DT[x=="a" | y == 25]))
[1] TRUE
> identical(setkey(DT[.(indx)]), setkey(rbind(DT[J("a")], DT[J(setdiff(unique(x), "a"), 25)])))
[1] TRUE
``````

Note that for SMALL tabbles (less than `15K` rows), vector search is faster (for really small tables, about twice as fast)

``````  ## Using  100 Rows
> microbenchmark(Using_Indx = DT[.(indx)], Using_RbindList = rbindlist(list(DT[J("a")], DT[J(setdiff(unique(x), "a"), 25)])), Using_rbind = rbind(DT[J("a")], DT[J(setdiff(unique(x), "a"), 25)]),  Using_VecSearch = DT[x=="a" | y == 25], times=150L )
Unit: microseconds
expr      min       lq    median       uq      max
1      Using_Indx  884.819  901.854  917.3715  933.642 9740.046
2     Using_rbind 2385.842 2424.893 2462.5210 2502.704 4266.637
3 Using_RbindList 1962.504 2005.594 2027.4085 2069.516 4238.146
4 Using_VecSearch  386.867  401.328  407.5730  420.647 2908.090
``````

This pattern holds until about 10,000 rows, at which point we start to see the gains:

``````  ## 10,000 Rows
Unit: microseconds
expr      min       lq    median       uq      max
1      Using_Indx  891.374  921.784  931.6585  956.737 3780.971
4 Using_VecSearch  796.316  815.965  824.1480  845.151 2531.314

## 15,000 Rows
Unit: microseconds
expr      min       lq   median       uq      max
1      Using_Indx  913.963  939.198  954.518  986.609 2900.174
4 Using_VecSearch 1018.830 1041.449 1053.098 1072.188 8418.470

## 30,000 Rows
Unit: microseconds
expr      min       lq   median       uq       max
1      Using_Indx  964.402  995.883 1018.535 1045.908  5999.390
4 Using_VecSearch 1649.231 1709.090 1801.760 1927.976  8868.470

## 100,000 Rows
Unit: milliseconds
expr      min       lq   median       uq       max
1      Using_Indx 1.142318 1.181023 1.198611 1.268417  3.611945
4 Using_VecSearch 4.663948 4.763179 5.052995 6.058354 12.133510

## 10,000,000 Rows   (only ran 30 reps for this one)
Unit: milliseconds
expr       min        lq    median        uq      max
1      Using_Indx  33.95004  42.24995  48.90363  50.15424 177.0991
2 Using_VecSearch 512.34760 557.02867 622.37670 662.14323 861.3465
``````
-
@Arun, yes of course, but that is essentially as slow as a vector search. –  Ricardo Saporta Mar 24 '13 at 16:50
Your `identical()` gives `FALSE` (I guess floating point issue). –  Arun Mar 24 '13 at 16:51
How is it vector search? I'm subsetting by key column? I'll post a benchmark. –  Arun Mar 24 '13 at 16:51
It's alright. I see what you did there now. Really nice! (+1). I'd still use `rbindlist` instead of `rbind`. –  Arun Mar 24 '13 at 17:23
@Arun, I added benchmarks for `rbindlist` as well (about a 10% improvement over `rbind`) –  Ricardo Saporta Mar 24 '13 at 17:44