Implementation of various data structures in Go.
###Containers
All data structures implement the container interface with the following methods:
type Interface interface {
Empty() bool
Size() int
Clear()
Values() []interface{}
}
Container specific operations:
// Returns sorted container's elements with respect to the passed comparator.
// Does not effect the ordering of elements within the container.
// Uses timsort.
func GetSortedValues(container Interface, comparator utils.Comparator) []interface{} {
####Sets
A set is a data structure that can store elements and no repeated values. It is a computer implementation of the mathematical concept of a finite set. Unlike most other collection types, rather than retrieving a specific element from a set, one typically tests an element for membership in a set. This structed is often used to ensure that no duplicates are present in a collection.
All sets implement the set interface with the following methods:
type Interface interface {
Add(elements ...interface{})
Remove(elements ...interface{})
Contains(elements ...interface{}) bool
containers.Interface
// Empty() bool
// Size() int
// Clear()
// Values() []interface{}
}
#####HashSet
This structure implements the Set interface and is backed by a hash table (actually a Go's map). It makes no guarantees as to the iteration order of the set, since Go randomizes this iteration order on maps.
This structure offers constant time performance for the basic operations (add, remove, contains and size).
package main
import "github.com/emirpasic/gods/sets/hashset"
func main() {
set := hashset.New() // empty
set.Add(1) // 1
set.Add(2, 2, 3, 4, 5) // 3, 1, 2, 4, 5 (random order, duplicates ignored)
set.Remove(4) // 5, 3, 2, 1 (random order)
set.Remove(2, 3) // 1, 5 (random order)
set.Contains(1) // true
set.Contains(1, 5) // true
set.Contains(1, 6) // false
_ = set.Values() // []int{5,1} (random order)
set.Clear() // empty
set.Empty() // true
set.Size() // 0
}
#####TreeSet
This structure implements the Set interface and is backed by a red-black tree to keep the elements sorted with respect to the comparator.
This implementation provides guaranteed log(n) time cost for the basic operations (add, remove and contains).
package main
import "github.com/emirpasic/gods/sets/treeset"
func main() {
set := treeset.NewWithIntComparator() // empty (keys are of type int)
set.Add(1) // 1
set.Add(2, 2, 3, 4, 5) // 1, 2, 3, 4, 5 (in order, duplicates ignored)
set.Remove(4) // 1, 2, 3, 5 (in order)
set.Remove(2, 3) // 1, 5 (in order)
set.Contains(1) // true
set.Contains(1, 5) // true
set.Contains(1, 6) // false
_ = set.Values() // []int{1,5} (in order)
set.Clear() // empty
set.Empty() // true
set.Size() // 0
}
####Lists
A list is a data structure that can store elements and may have repeated values. There is no ordering in a list. The user can access and remove an element by the index position.
All lists implement the list interface with the following methods:
type Interface interface {
Get(index int) (interface{}, bool)
Remove(index int)
Add(elements ...interface{})
Contains(elements ...interface{}) bool
Sort(comparator utils.Comparator)
Swap(index1, index2 int)
containers.Interface
// Empty() bool
// Size() int
// Clear()
// Values() []interface{}
}
#####ArrayList
This structure implements the List interface and is backed by a dynamic array that grows and shrinks implicitly (by 100% when capacity is reached).
Direct access method Get(index) is guaranteed a constant time performance. Remove is of linear time performance. Checking with Contains() is of quadratic complexity.
package main
import (
"github.com/emirpasic/gods/lists/arraylist"
"github.com/emirpasic/gods/utils"
)
func main() {
list := arraylist.New()
list.Add("a") // ["a"]
list.Add("c", "b") // ["a","c","b"]
list.Sort(utils.StringComparator) // ["a","b","c"]
_, _ = list.Get(0) // "a",true
_, _ = list.Get(100) // nil,false
_ = list.Contains("a", "b", "c") // true
_ = list.Contains("a", "b", "c", "d") // false
list.Swap(0, 1) // ["b","a",c"]
list.Remove(2) // ["b","a"]
list.Remove(1) // ["b"]
list.Remove(0) // []
list.Remove(0) // [] (ignored)
_ = list.Empty() // true
_ = list.Size() // 0
list.Add("a") // ["a"]
list.Clear() // []
}
#####SinglyLinkedList
This structure implements the List interface and is a linked data structure where each element points to the next in the list.
Direct access method Get(index) and Remove() are of linear performance. Append and Prepend are of constant time performance. Checking with Contains() is of quadratic complexity.
package main
import (
sll "github.com/emirpasic/gods/lists/singlylinkedlist"
"github.com/emirpasic/gods/utils"
)
func main() {
list := sll.New()
list.Add("a") // ["a"]
list.Add("c", "b") // ["a","c","b"]
list.Sort(utils.StringComparator) // ["a","b","c"]
_, _ = list.Get(0) // "a",true
_, _ = list.Get(100) // nil,false
_ = list.Contains("a", "b", "c") // true
_ = list.Contains("a", "b", "c", "d") // false
list.Swap(0, 1) // ["b","a",c"]
list.Remove(2) // ["b","a"]
list.Remove(1) // ["b"]
list.Remove(0) // []
list.Remove(0) // [] (ignored)
_ = list.Empty() // true
_ = list.Size() // 0
list.Add("a") // ["a"]
list.Clear() // []
}
#####DoublyLinkedList
This structure implements the List interface and is a linked data structure where each element points to the next and previous element in the list.
Direct access method Get(index) and Remove() are of linear performance. Append and Prepend are of constant time performance. Checking with Contains() is of quadratic complexity.
package main
import (
dll "github.com/emirpasic/gods/lists/doublylinkedlist"
"github.com/emirpasic/gods/utils"
)
func main() {
list := dll.New()
list.Add("a") // ["a"]
list.Add("c", "b") // ["a","c","b"]
list.Sort(utils.StringComparator) // ["a","b","c"]
_, _ = list.Get(0) // "a",true
_, _ = list.Get(100) // nil,false
_ = list.Contains("a", "b", "c") // true
_ = list.Contains("a", "b", "c", "d") // false
list.Swap(0, 1) // ["b","a",c"]
list.Remove(2) // ["b","a"]
list.Remove(1) // ["b"]
list.Remove(0) // []
list.Remove(0) // [] (ignored)
_ = list.Empty() // true
_ = list.Size() // 0
list.Add("a") // ["a"]
list.Clear() // []
}
####Stacks
The stack interface represents a last-in-first-out (LIFO) collection of objects. The usual push and pop operations are provided, as well as a method to peek at the top item on the stack, a method to check whether the stack is empty and the size (number of elements).
All stacks implement the stack interface with the following methods:
type Interface interface {
Push(value interface{})
Pop() (value interface{}, ok bool)
Peek() (value interface{}, ok bool)
containers.Interface
// Empty() bool
// Size() int
// Clear()
// Values() []interface{}
}
#####LinkedListStack
This stack structure is based on a linked list, i.e. each previous element has a point to the next.
All operations are guaranted constant time performance, except Values(), which is as always of linear time performance.
package main
import lls "github.com/emirpasic/gods/stacks/linkedliststack"
func main() {
stack := lls.New() // empty
stack.Push(1) // 1
stack.Push(2) // 1, 2
stack.Values() // 2, 1 (LIFO order)
_, _ = stack.Peek() // 2,true
_, _ = stack.Pop() // 2, true
_, _ = stack.Pop() // 1, true
_, _ = stack.Pop() // nil, false (nothing to pop)
stack.Push(1) // 1
stack.Clear() // empty
stack.Empty() // true
stack.Size() // 0
}
#####ArrayStack
This stack structure is back by ArrayList.
All operations are guaranted constant time performance.
package main
import "github.com/emirpasic/gods/stacks/arraystack"
func main() {
stack := arraystack.New() // empty
stack.Push(1) // 1
stack.Push(2) // 1, 2
stack.Values() // 2, 1 (LIFO order)
_, _ = stack.Peek() // 2,true
_, _ = stack.Pop() // 2, true
_, _ = stack.Pop() // 1, true
_, _ = stack.Pop() // nil, false (nothing to pop)
stack.Push(1) // 1
stack.Clear() // empty
stack.Empty() // true
stack.Size() // 0
}
####Maps
Structure that maps keys to values. A map cannot contain duplicate keys and each key can map to at most one value.
All maps implement the map interface with the following methods:
type Interface interface {
Put(key interface{}, value interface{})
Get(key interface{}) (value interface{}, found bool)
Remove(key interface{})
Keys() []interface{}
containers.Interface
// Empty() bool
// Size() int
// Clear()
// Values() []interface{}
}
#####HashMap
Map structure based on hash tables, more exactly, Go's map. Keys are unordered.
All operations are guaranted constant time performance, except Key() and Values() retrieval that of linear time performance.
package main
import "github.com/emirpasic/gods/maps/hashmap"
func main() {
m := hashmap.New() // empty
m.Put(1, "x") // 1->x
m.Put(2, "b") // 2->b, 1->x (random order)
m.Put(1, "a") // 2->b, 1->a (random order)
_, _ = m.Get(2) // b, true
_, _ = m.Get(3) // nil, false
_ = m.Values() // []interface {}{"b", "a"} (random order)
_ = m.Keys() // []interface {}{1, 2} (random order)
m.Remove(1) // 2->b
m.Clear() // empty
m.Empty() // true
m.Size() // 0
}
#####TreeMap
Map structure based on our red-black tree implementation. Keys are ordered with respect to the passed comparator.
Put(), Get() and Remove() are guaranteed log(n) time performance.
Key() and Values() methods return keys and values respectively in order of the keys. These meethods are quaranteed linear time performance.
package main
import "github.com/emirpasic/gods/maps/treemap"
func main() {
m := treemap.NewWithIntComparator() // empty (keys are of type int)
m.Put(1, "x") // 1->x
m.Put(2, "b") // 1->x, 2->b (in order)
m.Put(1, "a") // 1->a, 2->b (in order)
_, _ = m.Get(2) // b, true
_, _ = m.Get(3) // nil, false
_ = m.Values() // []interface {}{"a", "b"} (in order)
_ = m.Keys() // []interface {}{1, 2} (in order)
m.Remove(1) // 2->b
m.Clear() // empty
m.Empty() // true
m.Size() // 0
}
####Trees
A tree is a widely used data data structure that simulates a hierarchical tree structure, with a root value and subtrees of children, represented as a set of linked nodes; thus no cyclic links.
All trees implement the tree interface with the following methods:
type Interface interface {
containers.Interface
// Empty() bool
// Size() int
// Clear()
// Values() []interface{}
}
#####RedBlackTree
A red–black tree is a binary search tree with an extra bit of data per node, its color, which can be either red or black. The extra bit of storage ensures an approximately balanced tree by constraining how nodes are colored from any path from the root to the leaf. Thus, it is a data structure which is a type of self-balancing binary search tree.
The balancing of the tree is not perfect but it is good enough to allow it to guarantee searching in O(log n) time, where n is the total number of elements in the tree. The insertion and deletion operations, along with the tree rearrangement and recoloring, are also performed in O(log n) time.Wikipedia
package main
import (
"fmt"
rbt "github.com/emirpasic/gods/trees/redblacktree"
)
func main() {
tree := rbt.NewWithIntComparator() // empty(keys are of type int)
tree.Put(1, "x") // 1->x
tree.Put(2, "b") // 1->x, 2->b (in order)
tree.Put(1, "a") // 1->a, 2->b (in order, replacement)
tree.Put(3, "c") // 1->a, 2->b, 3->c (in order)
tree.Put(4, "d") // 1->a, 2->b, 3->c, 4->d (in order)
tree.Put(5, "e") // 1->a, 2->b, 3->c, 4->d, 5->e (in order)
tree.Put(6, "f") // 1->a, 2->b, 3->c, 4->d, 5->e, 6->f (in order)
fmt.Println(m)
//
// RedBlackTree
// │ ┌── 6
// │ ┌── 5
// │ ┌── 4
// │ │ └── 3
// └── 2
// └── 1
_ = tree.Values() // []interface {}{"a", "b", "c", "d", "e", "f"} (in order)
_ = tree.Keys() // []interface {}{1, 2, 3, 4, 5, 6} (in order)
tree.Remove(2) // 1->a, 3->c, 4->d, 5->e, 6->f (in order)
fmt.Println(m)
//
// RedBlackTree
// │ ┌── 6
// │ ┌── 5
// └── 4
// │ ┌── 3
// └── 1
tree.Clear() // empty
tree.Empty() // true
tree.Size() // 0
}
#####BinaryHeap
A binary heap is a heap data structure created using a binary tree. It can be seen as a binary tree with two additional constraints:
-
Shape property:
A binary heap is a complete binary tree; that is, all levels of the tree, except possibly the last one (deepest) are fully filled, and, if the last level of the tree is not complete, the nodes of that level are filled from left to right.
-
Heap property:
All nodes are either greater than or equal to or less than or equal to each of its children, according to a comparison predicate defined for the heap. Wikipedia
package main
import (
"github.com/emirpasic/gods/trees/binaryheap"
"github.com/emirpasic/gods/utils"
)
func main() {
// Min-heap
heap := binaryheap.NewWithIntComparator() // empty (min-heap)
heap.Push(2) // 2
heap.Push(3) // 2, 3
heap.Push(1) // 1, 3, 2
heap.Values() // 1, 3, 2
_, _ = heap.Peek() // 1,true
_, _ = heap.Pop() // 1, true
_, _ = heap.Pop() // 2, true
_, _ = heap.Pop() // 3, true
_, _ = heap.Pop() // nil, false (nothing to pop)
heap.Push(1) // 1
heap.Clear() // empty
heap.Empty() // true
heap.Size() // 0
// Max-heap
inverseIntComparator := func(a, b interface{}) int {
return -utils.IntComparator(a, b)
}
heap = binaryheap.NewWith(inverseIntComparator) // empty (min-heap)
heap.Push(2) // 2
heap.Push(3) // 3, 2
heap.Push(1) // 3, 2, 1
heap.Values() // 3, 2, 1
}
Various helper functions used throughout the library.
Some data structures (e.g. TreeMap, TreeSet) require a comparator function to sort their contained elements. This comparator is necessary during the initalization.
Comparator is defined as:
Return values:
-1, if a < b
0, if a == b
1, if a > b
Comparator signature:
type Comparator func(a, b interface{}) int
Two common comparators are included in the library:
#####IntComparator
func IntComparator(a, b interface{}) int {
aInt := a.(int)
bInt := b.(int)
switch {
case aInt > bInt:
return 1
case aInt < bInt:
return -1
default:
return 0
}
}
#####StringComparator
func StringComparator(a, b interface{}) int {
s1 := a.(string)
s2 := b.(string)
min := len(s2)
if len(s1) < len(s2) {
min = len(s1)
}
diff := 0
for i := 0; i < min && diff == 0; i++ {
diff = int(s1[i]) - int(s2[i])
}
if diff == 0 {
diff = len(s1) - len(s2)
}
if diff < 0 {
return -1
}
if diff > 0 {
return 1
}
return 0
}
#####CustomComparator
package main
import (
"fmt"
"github.com/emirpasic/gods/sets/treeset"
)
type User struct {
id int
name string
}
// Comparator function (sort by IDs)
func byID(a, b interface{}) int {
// Type assertion, program will panic if this is not respected
c1 := a.(User)
c2 := b.(User)
switch {
case c1.id > c2.id:
return 1
case c1.id < c2.id:
return -1
default:
return 0
}
}
func main() {
set := treeset.NewWith(byID)
set.Add(User{2, "Second"})
set.Add(User{3, "Third"})
set.Add(User{1, "First"})
set.Add(User{4, "Fourth"})
fmt.Println(set) // {1 First}, {2 Second}, {3 Third}, {4 Fourth}
}
Sort uses timsort for best performance on real-world data. Lists have an in-place Sort() method. All containers can return their sorted elements via GetSortedValues() call.
Internally they use the utils.Sort() method:
package main
import "github.com/emirpasic/gods/utils"
func main() {
strings := []interface{}{} // []
strings = append(strings, "d") // ["d"]
strings = append(strings, "a") // ["d","a"]
strings = append(strings, "b") // ["d","a",b"
strings = append(strings, "c") // ["d","a",b","c"]
utils.Sort(strings, utils.StringComparator) // ["a","b","c","d"]
}
Collections and data structures found in other languages: Java Collections, C++ Standard Template Library (STL) containers, Qt Containers, etc.
Fast algorithms:
- Based on decades of knowledge and experiences of other libraries mentioned above.
Memory efficient algorithms:
- Avoiding to consume memory by using optimal algorithms and data structures for the given set of problems, e.g. red-black tree in case of TreeMap to avoid keeping redundant sorted array of keys in memory.
Easy to use library:
- Well-structued library with minimalistic set of atomic operations from which more complex operations can be crafted.
Stable library:
- Only additions are permitted keeping the library backward compatible.
Solid documentation and examples:
- Learning by example.
Production ready:
- Still waiting for the project to mature and be used in some heavy back-end tasks.
There is often a tug of war between speed and memory when crafting algorithms. We choose to optimize for speed in most cases within reasonable limits on memory consumption.
Thread safety is not a concern of this project, this should be handled at a higher level.
go test -v -bench . -benchmem -benchtime 1s ./...
Biggest contribution towards this library is to use it and give us feedback for further improvements and additions.
For direct contributions, branch of from master and do pull request.
This library is distributed under the BSD-style license found in the LICENSE file.
TimSort copied from https://github.com/psilva261/timsort with MIT LICENSE file.