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114 lines
No EOL
3.1 KiB
Markdown
114 lines
No EOL
3.1 KiB
Markdown
---
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date: 2022-11-12 21:27:42-05:00
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draft: false
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math: false
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medium_enabled: true
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medium_post_id: ddffc5b14ef9
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tags:
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- Functional Programming
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- Scala
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title: Immutable Traversals with Unfold
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---
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Let's consider the following binary tree:
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```goat
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a
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/ \
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/ \
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b d
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\
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\
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c
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```
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We can encode this with the following Scala code:
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```scala
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final case class BinNode(
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val label: String,
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val left: Option[BinNode],
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val right: Option[BinNode]
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)
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// Leaf Nodes
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val c_node = BinNode("c", None, None)
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val d_node = BinNode("d", None, None)
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// Rest of nodes
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val b_node = BinNode("b", None, Some(c_node))
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val a_node = BinNode("a", Some(b_node), Some(d_node))
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```
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For depth first search, an intuitive immutable implementation would be a recursive function.
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```scala
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// Using Preorder traversal
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def DFS(node: BinNode): Iterator[BinNode] =
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lazy val left_side = node.left.fold(Iterator.empty[BinNode])(DFS)
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lazy val right_side = node.right.fold(Iterator.empty[BinNode])(DFS)
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Iterator(node) ++ left_side ++ right_side
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```
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Let's evaluate this using our example above:
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```scala
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DFS(a_node).toList.map(_.label)
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// List(a, b, c, d)
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```
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The recursive implementation inherently uses the system stack to keep track of the nodes. This means that the last element gets evaluated in each step. Otherwise called last-in-first-out (LIFO). Breadth first search, however, uses a queue based approach where the first one added to the data structure is the first one considered (FIFO).
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To preserve immutability in our code, we can use `unfold`. Here our state is the queue of nodes.
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```scala
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def BFS(node: BinNode): Iterator[BinNode] =
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Iterator.unfold(List(node))(q =>
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if q.isEmpty then
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None
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else
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val crnt_node = q.head
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val next_q = q.tail ++ crnt_node.left ++ crnt_node.right
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Some(crnt_node, next_q)
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)
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```
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Evaluating on our example:
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```scala
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BFS(a_node).toList.map(_.label)
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// List(a, b, d, c)
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```
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We can also use `unfold` for the depth first search approach as well. We can replace the list used with a stack.
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```scala
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import scala.collection.mutable.Stack
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def DFS2(node: BinNode): Iterator[BinNode] =
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Iterator.unfold(Stack(node))(s =>
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if s.isEmpty then
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None
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else
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val crnt_node = s.pop()
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s.pushAll(crnt_node.right)
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s.pushAll(crnt_node.left)
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Some(crnt_node, s)
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)
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```
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Using a stack introduces some mutability. We can use the immutable list data structure instead, as long as we satisfy the LIFO ordering.
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```scala
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def DFS3(node: BinNode): Iterator[BinNode] =
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Iterator.unfold(List(node))(s =>
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if s.isEmpty then
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None
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else
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val crnt_node = s.last
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val next_s = s.init ++ crnt_node.right ++ crnt_node.left
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Some(crnt_node, next_s)
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)
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``` |