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I have a dataset of 20 million people whose location is known. In near realtime, I want to know if the query I receive is in this set or not, and if it is, the actual location. Essentially, I want a large hash table. Paying for a network round-trip for Redis/Memcached is out of the question, due to the volume (many thousands of queries per second).

Is there a data structure that can provide very fast membership test, and data retrieval? A small amount of error is acceptable.

Some of the locations are more popular than others. For example, "USA, New York, New York" appears much more frequently than "USA, Alaska, Anchorage".

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5 Answers 5

"20 million" - "I want a large hash table" - It sounds like you already have your answer. A hash map containing 20 million items will easily fit in the memory used by a single process on a single machine.

  • C++: std::unordered_map<Key, Value>
  • C#: System.Collections.Generic.Dictionary<Key, Value>
  • Java: java.util.HashMap<Key, Value>
  • Scala: HashMap[Key, Value]

If you tell us what language you're using, we can point you to the exact type for that language.

Additionally - although I think this might be overkill - you could use an auxiliary Bloom filter (rampion's idea - not mine - just including it here for completeness) to potentially speed up membership tests in the case where the given person (key) is not in the hash map.

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std::map is not backed by a hash table but by a balanced binary search tree. In C++11 you have the hash table backed std::unordered_map. –  Eugen Constantin Dinca May 22 '13 at 2:18
@EugenConstantinDinca haha wooops - it's been a long day. :) –  Timothy Shields May 22 '13 at 2:19
My current implementation targets Scala/Java, but anything that can talk to RabbitMQ is fine. –  François Beausoleil May 22 '13 at 2:26
@FrançoisBeausoleil Oh - now I see that the person who answered somehow guessing you needed Scala was in fact you. I'm not familiar with RabbitMQ. Scala has a HashMap type, as does Java (updated answer). You could use one of those. It should be more space efficient than a tree-based map. –  Timothy Shields May 22 '13 at 2:31

One option is to use a plain and simple map:

// Scala
val locations: Map[String, Geo] = Map.empty
def location(id: String): Option[Geo] = locations.get(id)

That costs a lot of memory though.

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You could use a Bloomier filter:

A Bloom filter [...] is a space-efficient probabilistic data structure that is used to test whether an element is a member of a set. False positive retrieval results are possible, but false negatives are not; i.e. a query returns either "inside set (may be wrong)" or "definitely not in set". Elements can be added to the set, but not removed (though this can be addressed with a counting filter). The more elements that are added to the set, the larger the probability of false positives.


Chazelle et al. (2004) designed a generalization of Bloom filters that could associate a value with each element that had been inserted, implementing an associative array. Like Bloom filters, these structures achieve a small space overhead by accepting a small probability of false positives. In the case of "Bloomier filters", a false positive is defined as returning a result when the key is not in the map. The map will never return the wrong value for a key that is in the map.

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A Judy Array

is a data structure that has high performance, low memory usage and implements an associative array.

Judy arrays apparently compress very well, and are fast.

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up vote 0 down vote accepted

Using a sorted Array and doing binary searches is another option:

val ids: Array[Long] = new Array(30000000)
val values: Array[Int] = new Array(30000000)
var lookups = Map.empty[String, Int]

// populate ids with sorted array read from disk
Source.fromFile("sorted.csv").map(_.split("\t")).zipWithIndex.foreach {
    case (Array(id, value), index) =>
        ids[index] = id.toLong
        values[index] = lookups.get(value) match {
            case Some(valueIndex) => valueIndex
            case None =>
              val valueIndex = values.size + 1
              lookups = lookups.updated(value, valueIndex)

// Flip lookups around: value becomes key, key becomes value
val realLookup = lookups.foldLeft(Map.empty[Int, String]) {
    case (memo, (value, index)) => memo.updated(index, value)

// Usage:
Source.fromFile("ids.csv").foreach {
    idStr =>
        val id = idStr.toLong
        val index = java.util.Arrays.binarySearch(ids, id)
        if (index < 0) {
            // Unknown -- check javadoc
        } else {
            // Known
            println(id + "\t" + realLookup(values(index))
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This uses the minimal amount of memory: one long and one int per entry. For 50M entries, I consume about 3.5 GiB of RAM. With a HashMap, I consume over 6 GiB and keels my process over. Runtime is excellent and very stable: the 99th percentile is very stable. –  François Beausoleil May 31 '13 at 15:34

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