Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a large data frame (~200,000 rows) that contains X-Y coordinates, e.g.:

points <- data.frame(X = c(1,3,2,5,4), Y = c(4,3,2,2,1))

And another large data frame (~1,000,000 rows) that contains the corner cells of a spatial (rectangular) grid, e.g.:

MINX <- rep(0.5:5.5,6)
MINY <- rep(0.5:5.5,each=6)
grid <- data.frame(GridID = 1:36, MINX, MINY, MAXX = MINX+1, MAXY = MINY+1)

I would like to add a column to the "points" data frame that identified the ID of the grid the point is located in:

X Y GridID
1 4     19
3 3     15
2 2      8
5 2     11
4 1      4

I can think of several ways to do this, using loops, using combinations of apply and match, even pulling out some big spatial gun from sp or maptools. But all are prohibitively slow. I have a hunch there's some data.table() one liner that could pull this off in reasonable time. Do any gurus have an idea?

(For the record, this is how I got the grid cell ID's above:

pt.minx <- apply(points,1, 
             function(foo) max(unique(grid)$MINX[unique(grid)$MINX < foo[1]]))
pt.miny <- apply(points,1, 
             function(foo) max(unique(grid)$MINY[unique(grid)$MINY < foo[2]]))
with(grid, GridID[match(pt.minx+1i*pt.miny, MINX + 1i*MINY)])

I can't tell from here whether it's slick or hideous - either way the apply function is way too slow for the complete data frame.)

share|improve this question
If your grid is rectangular and regular, you could use findInterval (and wouldn't need MAXX and MAXY). – Roland Aug 6 '13 at 7:25
Your input and output X and Y don't match. – Hong Ooi Aug 6 '13 at 7:26
@Hong Sorry - fixed now. – elzizi Aug 6 '13 at 7:44
up vote 1 down vote accepted

You just need two merges with rolling:

grid = data.table(grid, key = 'MINX')
points = data.table(points, key = 'X')

# first merge to find correct MAXX
intermediate = grid[points, roll = Inf][, list(MAXX, X = MINX, Y)]

# now merge by Y
setkey(intermediate, MAXX, Y)
setkey(grid, MAXX, MINY)
grid[intermediate, roll = Inf][, list(X, Y = MINY, GridID)]
#   X Y GridID
#1: 1 4     19
#2: 2 2      8
#3: 3 3     15
#4: 4 1      4
#5: 5 2     11
share|improve this answer
Brilliant. 3.4 seconds to obtain the grid-cells for the complete data. – elzizi Aug 7 '13 at 3:08

Doing it the SQL[df] way:

sqldf("select X, Y, GridID from grid, pts
       where MINX < X and X < MAXX and MINY < Y and Y < MAXY")

Expanding on @Roland's comment, you can use findInterval here:

MINX <- MINY <- 0.5:5.5
x <- findInterval(pts$X, MINX)
y <- findInterval(pts$Y, MINY)
grid$GridID[match(MINX[x]+1i*MINY[y], grid$MINX+1i*grid$MINY)]

Nice trick to coerce to complex for 2-dimensional matching, btw.

share|improve this answer
Nice, thanks for super-fast responses. I like the "chatty" sql syntax (I've never used if before)... It is still pretty slow: i.e. a heavily truncated dataset where grid had 1892 rows, and points has 60000 rows took 3 minutes. But with some heavy chunking of the data, this could work. Will play with this more tomorrow. – elzizi Aug 6 '13 at 7:50

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.