Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to find a simple way to use something like Perl's hash functions in R (essentially caching), as I intended to do both Perl-style hashing and write my own memoisation of calculations. However, others have beaten me to the punch and have packages for memoisation. The more I dig, the more I find, e.g.memoise and R.cache, but differences aren't readily clear. In addition, it's not clear how else one can get Perl-style hashes (or Python-style dictionaries) and write one's own memoization, other than to use the hash package, which doesn't seem to underpin the two memoization packages.

Since I can find no information on CRAN or elsewhere to distinguish between the options, perhaps this should be a community wiki question on SO: What are the options for memoization and caching in R, and what are their differences?


As a basis for comparison, here is a list of the options I've found. Also, it seems to me that all depend on hashing, so I'll note the hashing options as well. Key/value storage is somewhat related, but opens a huge can of worms regarding DB systems (e.g. BerkeleyDB, Redis, MemcacheDB and scores of others).

It looks like the options are:

Hashing

  • digest - provides hashing for arbitrary R objects.

Memoization

  • memoise - a very simple tool for memoization of functions.
  • R.cache - offers more functionality for memoization, though it seems some of the functions lack examples.

Caching

  • hash - Provides caching functionality akin to Perl's hashes and Python dictionaries.

Key/value storage

These are basic options for external storage of R objects.

Checkpointing

Other

  • Base R supports: named vectors and lists, row and column names of data frames, and names of items in environments. It seems to me that using a list is a bit of a kludge. (There's also pairlist, but it is deprecated.)
  • The data.table package supports rapid lookups of elements in a data table.

Use case

Although I'm mostly interested in knowing the options, I have two basic use cases that arise:

  1. Caching: Simple counting of strings. [Note: This isn't for NLP, but general use, so NLP libraries are overkill; tables are inadequate because I prefer not to wait until the entire set of strings are loaded into memory. Perl-style hashes are at the right level of utility.]
  2. Memoization of monstrous calculations.

These really arise because I'm digging in to the profiling of some slooooow code and I'd really like to just count simple strings and see if I can speed up some calculations via memoization. Being able to hash the input values, even if I don't memoize, would let me see if memoization can help.


Note 1: The CRAN Task View on Reproducible Research lists a couple of the packages (cacher and R.cache), but there is no elaboration on usage options.

Note 2: To aid others looking for related code, here a few notes on some of the authors or packages. Some of the authors use SO. :)

  • Dirk Eddelbuettel: digest - a lot of other packages depend on this.
  • Roger Peng: cacher, filehash, stashR - these address different problems in different ways; see Roger's site for more packages.
  • Christopher Brown: hash - Seems to be a useful package, but the links to ODG are down, unfortunately.
  • Henrik Bengtsson: R.cache & Hadley Wickham: memoise -- it's not yet clear when to prefer one package over the other.

Note 3: Some people use memoise/memoisation others use memoize/memoization. Just a note if you're searching around. Henrik uses "z" and Hadley uses "s".

share|improve this question
    
It would probably be good to add a real use case or two so the methods can be compared... –  Tommy Aug 31 '11 at 19:55
    
@Tommy: Thanks, I'll do that! –  Iterator Aug 31 '11 at 19:56
    
Puzzled about your comments re: environments. If you create a new environment it will be hashed. ?environment e.g., env.profile(new.env())$size # [1] 29 –  BondedDust Aug 31 '11 at 20:01
    
@DWin: You are correct. I only mention it as an option for a hash capability. –  Iterator Aug 31 '11 at 20:05
1  
This post, by the author of 'R in a Nutshell' includes speed tests of several different options for looking up objects, including putting them in an environment (where lookup uses hashed names) broadcast.oreilly.com/2010/03/lookup-performance-in-r.html . Don't know if it's useful to you, but thought I'd tack it on to this post for anyone else that comes along. –  Josh O'Brien Nov 3 '11 at 15:42

1 Answer 1

For simple counting of strings (and not using table or similar), a multiset data structure seems like a good fit. The environment object can be used to emulate this.

# Define the insert function for a multiset
msetInsert <- function(mset, s) {
    if (exists(s, mset, inherits=FALSE)) {
        mset[[s]] <- mset[[s]] + 1L
    } else {
        mset[[s]] <- 1L 
    }
}

# First we generate a bunch of strings
n <- 1e5L  # Total number of strings
nus <- 1e3L  # Number of unique strings
ustrs <- paste("Str", seq_len(nus))

set.seed(42)
strs <- sample(ustrs, n, replace=TRUE)


# Now we use an environment as our multiset    
mset <- new.env(TRUE, emptyenv()) # Ensure hashing is enabled

# ...and insert the strings one by one...
for (s in strs) {
    msetInsert(mset, s)
}

# Now we should have nus unique strings in the multiset    
identical(nus, length(mset))

# And the names should be correct
identical(sort(ustrs), sort(names(as.list(mset))))

# ...And an example of getting the count for a specific string
mset[["Str 3"]] # "Str 3" instance count (97)
share|improve this answer

Your Answer

 
discard

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.