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What is the most efficient way to check if two hashes h1 and h2 have the same set of keys disregarding the order? Could it be made faster or more concise with close efficiency than the answer that I post?

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Did you compare that with h1.keys.sort == h2.keys.sort? –  Sergio Tulentsev Dec 9 '12 at 10:21
I did with a limited example. h1.keys.sort == h2.keys.sort was a bit slower. But I am not sure if this is the case in general. –  sawa Dec 9 '12 at 10:22
I think you should mention that in the question. And also I would post the solution as part of the question, not as an answer. –  Sergio Tulentsev Dec 9 '12 at 10:25
I think that it's pure convenience. You write "could it be easier than my answer"? Now I have to scroll down, parse answers and find yours. It's extra work for me for no reason. –  Sergio Tulentsev Dec 9 '12 at 10:29
A little off-topic question: is it for pure fun or do you have VERY large hashes (and you have profiled your code) and improving this part of code will give you HUGE performance boost? –  Tomasz Wałkuski Dec 9 '12 at 10:52

6 Answers 6

up vote 3 down vote accepted


# Check that both hash have the same number of entries first before anything
if h1.size == h2.size
    # breaks from iteration and returns 'false' as soon as there is a mismatched key
    # otherwise returns true
    h1.keys.all?{ |key| !!h2[key] }


worse case scenario, you'd only be iterating through the keys once.

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Even better, h2.include?(key). –  akuhn Dec 9 '12 at 11:49
I did some benchmarks and it seems that this answer is a clear winner so far. Using Hash#include? doesn't bring any improvements to performance but it's surely a good step forward in terms of readability. –  Jan Dec 9 '12 at 11:51
if a then b end -> a && b –  tokland Dec 9 '12 at 12:01
=) @akuhn thanks I didn't know #include? was that smart –  freemasonjson Dec 9 '12 at 12:11
@akuhn, that's what my benchmark showed. It came as a surprise but when I gave it a thought it makes sense. Unlike other answers this solution doesn't create many additional objects in the memory. As a result it's GC-friendly, which in the light of MRI's GC's performance is a huge benefit. –  Jan Dec 9 '12 at 12:34

Alright, let's break all rules of savoir vivre and portability. MRI's C API comes into play.

/* Name this file superhash.c. An appropriate Makefile is attached below. */
#include <ruby/ruby.h>

static int key_is_in_other(VALUE key, VALUE val, VALUE data) {
  struct st_table *other = ((struct st_table**) data)[0];
  if (st_lookup(other, key, 0)) {
    return ST_CONTINUE;
  } else {
    int *failed = ((int**) data)[1];
    *failed = 1;
    return ST_STOP;

static VALUE hash_size(VALUE hash) {
  if (!RHASH(hash)->ntbl)
    return INT2FIX(0);
  return INT2FIX(RHASH(hash)->ntbl->num_entries);

static VALUE same_keys(VALUE self, VALUE other) {
  if (CLASS_OF(other) != rb_cHash)
    rb_raise(rb_eArgError, "argument needs to be a hash");
  if (hash_size(self) != hash_size(other))
    return Qfalse;
  if (!RHASH(other)->ntbl && !RHASH(other)->ntbl)
    return Qtrue;
  int failed = 0;
  void *data[2] = { RHASH(other)->ntbl, &failed };
  rb_hash_foreach(self, key_is_in_other, (VALUE) data);
  return failed ? Qfalse : Qtrue;

void Init_superhash(void) {
  rb_define_method(rb_cHash, "same_keys?", same_keys, 1);

Here's a Makefile.

CFLAGS=-std=c99 -O2 -Wall -fPIC $(shell pkg-config ruby-1.9 --cflags)
LDFLAGS=-Wl,-O1,--as-needed $(shell pkg-config ruby-1.9 --libs)
superhash.so: superhash.o
    $(LINK.c) -shared $^ -o $@

An artificial, synthetic and simplistic benchmark shows what follows.

require 'superhash'
require 'benchmark'
n = 100_000
h1 = h2 = {a:5, b:8, c:1, d:9}
Benchmark.bm do |b|
  # freemasonjson's state of the art.
  b.report { n.times { h1.size == h2.size and h1.keys.all? { |key| !!h2[key] }}}
  # This solution
  b.report { n.times { h1.same_keys? h2} }
#       user     system      total        real
#   0.310000   0.000000   0.310000 (  0.312249)
#   0.050000   0.000000   0.050000 (  0.051807)
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Well done, sir! –  akuhn Dec 9 '12 at 12:58
woah thats awesome! I def gotta go back to knowing C –  freemasonjson Dec 9 '12 at 17:31
Thanks for the detail. –  sawa Dec 10 '12 at 6:54

Combining freemasonjson's and sawa's ideas:

h1.size == h2.size and (h1.keys - h2.keys).empty?
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This is also interesting. –  sawa Dec 10 '12 at 6:55

It depends on your data.

There is no general case really. For example, generally retrieving the entire keyset at once is faster than checking inclusion of each key seperately. However, if in your dataset, the keysets differ more often than not, then a slower solution which fails faster might be faster. For example:

h1.size == h2.size and h1.keys.all?{|k|h2.include?(k)}

Another factor to consider is the size of your hashes. If they are big a solution with higher setup cost, like calling Set.new, might pay off, if however they are small, it won't:

h1.size == h2.size and Set.new(h1.keys) == Set.new(h2.keys)

And if you happen to compare the same immutable hashes over and over again, it would definitely pay off to cache the results.

Eventually only a benchmark will tell, but, to write a benchmark, we'd need to know more about your use case. For sure, testing a solution with synthetic data (as for example, randomly generated keys) will not be representative.

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Just for the sake of having at least a benchmark on this question...

require 'securerandom'
require 'benchmark'

a = {}
b = {}

# Use uuid to get a unique random key
(0..1_000).each do |i|
  key = SecureRandom.uuid
  a[key] = i
  b[key] = i

Benchmark.bmbm do |x|
  x.report("#-") do
    1_000.times do
      (a.keys - b.keys).empty? and (a.keys - b.keys).empty?

  x.report("#&") do
    1_000.times do
      computed = a.keys & b.keys
      computed.size == a.size

  x.report("#all?") do
    1_000.times do
      a.keys.all?{ |key| !!b[key] }

  x.report("#sort") do
    1_000.times do
      a_sorted = a.keys.sort
      b_sorted = b.keys.sort
      a == b

Results are:

Rehearsal -----------------------------------------
#-      1.000000   0.000000   1.000000 (  1.001348)
#&      0.560000   0.000000   0.560000 (  0.563523)
#all?   0.240000   0.000000   0.240000 (  0.239058)
#sort   0.850000   0.010000   0.860000 (  0.854839)
-------------------------------- total: 2.660000sec

            user     system      total        real
#-      0.980000   0.000000   0.980000 (  0.976698)
#&      0.560000   0.000000   0.560000 (  0.559592)
#all?   0.250000   0.000000   0.250000 (  0.251128)
#sort   0.860000   0.000000   0.860000 (  0.862857)

I have to agree with @akuhn that this would be a better benchmark if we had more information on the dataset you are using. But that being said, I believe this question really needed some hard fact.

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I'd recommend adding the name of the benchmark to the report method as a parameter. That will enable adding the name to the result report, making it a lot easier to read. –  the Tin Man Dec 9 '12 at 16:02

This is my try:

(h1.keys - h2.keys).empty? and (h2.keys - h1.keys).empty?
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