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Introduction to Data Structures

Authors: Darren Yao, Benjamin Qi, Allen Li, Neo Wang

Contributors: Nathan Wang, Abutalib Namazov

What a data structure is, (dynamic) arrays, pairs, and tuples.

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A data structure determines how data is organized so that information can be used efficiently. Each data structure supports some operations efficiently, while other operations are either inefficient or not supported at all. Since different operations are supported by each data structure, you should carefully evaluate which data structure will work best for your particular problem.

C++

The C++ standard library data structures are designed to store any type of data. We put the desired data type within the <> brackets when declaring the data structure, as follows:

vector<string> v;

This creates a vector structure that only stores objects of type string.

For our examples below, we will primarily use the int data type, but note that you can use any data type including string and user-defined structures.

Nearly every standard library data structure supports the size() method, which returns the number of elements in the data structure, and the empty() method, which returns true if the data structure is empty, and false otherwise.

Java

Python

C++

Arrays

Warning!

One can solve all Bronze problems without using anything from this module aside from arrays. The rest of this module isn't strictly necessary for Bronze (although it is highly recommended).

You already know one of the simplest data structures: the array! In C++11, in addition to normal arrays, there exists an array class in the STL. For example, an array of 25 ints can be initialized using the following line of code:

array<int, 25> arr;

The array class supports STL operations (such as .empty() or .size()) as well as the normal square-bracket access operator:

arr[5] // accesses the element at the 5th index

In C++, arrays initialized locally using either the default syntax (i.e. int arr[25]; ) or the array class are initialized to random numbers because C++ doesn't have built-in memory management. In order to initialize an array to zero, you have several options:

Warning!

memset(arr, 0, sizeof arr) will also zero-initialize an array. However, it's important to note that memset treats the value that is passed to it as an unsigned char. So for an array of 32-bit integers, memset(arr, -1, sizeof arr) will set each element to 1-1, as you might expect. On the other hand, memset(arr, 1, sizeof arr) will set each element to 1+28+216+224=168430091+2^8+2^{16}+2^{24}=16843009, not 11.

Dynamic Arrays

Resources
IUSACO

module is based off this

CPH

vectors, strings

PAPS
LCPP

Dynamic arrays (vector in C++) support all the functions that a normal array does, and can resize itself to accommodate more elements. In a dynamic array, we can also add and delete elements at the end in O(1)\mathcal{O}(1) time.

For example, the following code creates a dynamic array and adds the numbers 11 through 1010 to it:

vector<int> v;
for (int i = 1; i <= 10; i++) { v.push_back(i); }

g++ will allow you to create an array of variable length:

int n;
cin >> n;
int v[n];

However, variable-length arrays are not part of the C++ standard. We recommend that you use a vector for this purpose instead:

// one way
vector<int> v(n);
// another way
vector<int> v;
v.resize(n);

In array-based contest problems, we'll use one-, two-, and three-dimensional static arrays much of the time. However, we can also have dynamic arrays of dynamic arrays (e.g. vector<vector<int>>) static arrays of dynamic arrays (e.g. array<vector<int>,5>), dynamic arrays of static arrays (e.g. vector<array<int,5>>), and so on.

Iterating

One way to iterate through all elements of a static or dynamic array is to use a regular for loop.

vector<int> v{1, 7, 4, 5, 2};
for (int i = 0; i < int(size(v)); i++) { cout << v[i] << " "; }
cout << endl;

Optional

std::vector (and all the other standard library containers) support bounds-checked accesses as mentioned here.

We can also use iterators. An iterator allows you to traverse a container by pointing to an object within the container. However, they are not the same thing as pointers.

For example, v.begin() or begin(v) returns an iterator pointing to the first element of the vector v. Apart from the standard way of traversing a vector (by treating it as an array), you can also use iterators:

for (vector<int>::iterator it = v.begin(); it != v.end(); ++it) {
cout << *it << " "; // prints the values in the vector using the iterator
}

Here is another way to write this. auto (since C++11) automatically infers the type of an object:

vector<int> v{1, 7, 4, 5, 2};
for (auto it = begin(v); it != end(v); it = next(it)) {
cout << *it << " "; // prints the values in the vector using the iterator
}

We can also use a for-each loop.

for (int element : v) {
cout << element << " "; // prints the values in the vector
}

Inserting and Erasing

Keep in mind that insertion and erasure in the middle of a vector are O(n)\mathcal{O}(n).

vector<int> v;
v.push_back(2); // [2]
v.push_back(3); // [2, 3]
v.push_back(7); // [2, 3, 7]
v.push_back(5); // [2, 3, 7, 5]
v[1] = 4; // sets element at index 1 to 4 -> [2, 4, 7, 5]
v.erase(v.begin() + 1); // removes element at index 1 -> [2, 7, 5]
// this remove method is O(n); to be avoided
v.push_back(8); // [2, 7, 5, 8]
v.erase(v.end() - 1); // [2, 7, 5]

Strings

Resources
LCPP

Goes over the basics of strings

CPP

C++ Reference for std::string

Introductory problems might involve doing some things with strings, such

  • Reading in strings from standard input
  • Knowing how to use getline and cin together (more rare; refer to LCPP resource above)
  • Knowing how to sort strings, concatenate strings, loop through a string's characters
  • Get the ith character of a string
  • Know how to get substrings with string::substr

Java

Arrays

Java default Collections data structures are designed to store any type of object. However, we usually want our data structures to only store one type of data, like integers or strings. We do this by putting the desired data type within the <> brackets when declaring the data structure, as follows:

ArrayList<String> list = new ArrayList<String>();

This creates an ArrayList structure that only stores objects of type String.

For our examples below, we will primarily use the Integer data type, but note that you can have Collections of any object type, including Strings, other Collections, or user-defined objects.

Collections data types always contain an add method for adding an element to the collection, and a remove method which removes and returns a certain element from the collection. They also support the size() method, which returns the number of elements in the data structure, and the isEmpty() method, which returns true if the data structure is empty, and false otherwise.

Dynamic Arrays

Dynamic arrays (ArrayList in Java) that support all the functions that a normal array does, and can repeatedly reallocate storage to accommodate more elements as they are added.

In a dynamic array, we can also add and delete elements at the end in O(1)\mathcal{O}(1) time. For example, the following code creates a dynamic array and adds the numbers 11 through 1010 to it:

ArrayList<Integer> list = new ArrayList<Integer>();
for (int i = 1; i <= 10; i++) { list.add(i); }

In array-based contest problems, we'll use one-, two-, and three-dimensional static arrays most of the time. However, we can also have static arrays of dynamic arrays, dynamic arrays of static arrays, and so on. Usually, the choice between a static array and a dynamic array is just personal preference.

Iterating

To iterate through a static or dynamic array, we can use either the regular for loop or the for-each loop.

ArrayList<Integer> list = new ArrayList<Integer>();
list.add(1);
list.add(7);
list.add(4);
list.add(5);
list.add(2);
int[] arr = {1, 7, 4, 5, 2};
for (int i = 0; i < list.size(); i++) { // regular
System.out.println(list.get(i));
}
for (int element : arr) { // for-each
System.out.println(element);
}

Adding and Removing

We can add and remove at any index of a dynamic array in O(n)\mathcal{O}(n) time.

ArrayList<Integer> list = new ArrayList<Integer>();
list.add(2); // [2]
list.add(3); // [2, 3]
list.add(7); // [2, 3, 7]
list.add(5); // [2, 3, 7, 5]
list.set(1, 4); // sets element at index 1 to 4 -> [2, 4, 7, 5]
list.remove(1); // removes element at index 1 -> [2, 7, 5]
// this remove method is O(n); to be avoided
list.add(8); // [2, 7, 5, 8]
list.remove(list.size() - 1); // [2, 7, 5]
// here, we remove the element from the end of the list; this is O(1)
System.out.println(list.get(2)); // 5

Python

Lists

The default way to store data in Python is using a list, which can automatically resize itself to accommodate more elements. We can add and delete elements at the end in O(1)\mathcal{O}(1) time. A list can be initialized as follows:

arr = []

Python lists are generic. This means that they can store any kind of data type, including objects. For example, the following code creates a dynamic array and adds the numbers 11 through 1010 to it:

for i in range(1, 11): # Note that range(i, j) includes i, but does not include j
arr.append(i)

In Python, we can give a dynamic array an initial size. The code below creates a dynamic array with 3030 zeroes.

arr = [0] * 30

Iterating

We can use a regular for loop to iterate through all elements of a list.

arr = [1, 7, 4, 5, 2]
for i in range(len(arr)):
print(arr[i], end=" ")
print()
for element in arr:
print(element, end=" ")
print()

We can also use iterators. An iterator allows you to traverse a container by pointing to an object within the container. iter(arr) returns an iterator pointing to the first element of the list arr.

arr = [4, 2, 0, 0, 5]
it = iter(arr)
print(next(it)) # 4
print(next(it)) # 2
print(next(it)) # 0

Inserting and Erasing

arr = []
arr.append(2) # [2]
arr.append(3) # [2, 3]
arr.append(7) # [2, 3, 7]
arr.append(5) # [2, 3, 7, 5]
arr[1] = 4
# sets element at index 1 to 4 -> [2, 4, 7, 5]
arr.pop(1) # removes element at index 1 -> [2, 7, 5]
# this remove method is O(n); to be avoided
arr.append(8) # [2, 7, 5, 8]

List Comprehensions

List comprehensions are extremely useful for simplifying a python for loop that modifies/creates a list into one expression. The general syntax is: [ expression for item in list if conditional ]

An example is provided in the code block below.

# If a number is odd, add the number times 2 into the array
old_list = [2, 5, 3, 1, 6]
new_list = []
for i in old_list:
if i % 2 == 1:
new_list.append(i * 2)
print(new_list) # [10, 6, 2]
# Simplified one liner with list comprehension
# Recall the form [ expression for item in list if conditional ]
# expression: i * 2
# list: old_list
# conditional: i % 2 == 1 (only include item i if it satisfies the conditional)
new_list = [i * 2 for i in old_list if i % 2 == 1]
print(new_list) # [10, 6, 2]

A very applicable use of list comprehensions for competitive programming in particular is creating an integer list from space separated input:

# Example input: 5 3 2 6 8 1
# Note that the conditional in the list comprehension is optional, and defaults to True if not provided
arr = [int(x) for x in input().split()]
print(arr) # [5, 3, 2, 6, 8, 1]

For more information on list comprehensions, including nesting them to create multidimensional lists, refer to the below resources.

Resources
PythonForBeginnersBasic list comprehension tutorial
GFGNesting list comprehensions

Pairs

If we want to store a collection of points on the 2D plane, then we can use a dynamic array of pairs.

C++

Both vector<vector<int>> and vector<array<int,2>> would suffice for this case, but a pair can also store two elements of different types.

C++ Pairs

  • pair<type1, type2> p: Creates a pair p with two elements with the first one being of type1 and the second one being of type2.
  • make_pair(a, b): Returns a pair with values a, b.
  • {a, b}: With C++11 and above, this can be used as to create a pair, which is easier to write than make_pair(a, b).
  • pair.first: The first value of the pair.
  • pair.second: The second value of the pair.

Demo

#include <iostream>
#include <vector>
using namespace std;
/**
* Output:
* Testing 123
* It is possible to edit pairs after declaring them 123
* Testing curly braces

C++ Tuples

We can hold more than two values with something like pair<int, pair<int, int>>, but it gets messy when you need a lot of elements. In this case, using tuples might be more convenient.

  • tuple<type1, type2, ..., typeN> t: Creates a tuple with N elements, i'th one being of typei.

  • make_tuple(a, b, c, ..., d): Returns a tuple with values written in the brackets.

  • get<i>(t): Returns the i'th element of the tuple t. Can also be used to change the element of a tuple.

    This operation only works for constant i. Namely, it is not allowed to do something like the following since i is not constant:

    tuple<int, int, int> t{3, 4, 5};
    int i = 1;
    cout << get<i>(t) << endl; // not allowed!
  • tie(a, b, c, ..., d) = t: Assigns a, b, c, ..., d to the elements of the tuple tt accordingly.

Demo

#include <iostream>
#include <tuple>
using namespace std;
/**
* Output:
* 3 4 5
* 7 4 5
* Hello world 100

Java

Although pairs and tuples aren't available in Java, we can make our own with classses and generic types.

import java.io.*;
/**
* Output:
* 5 hello
* 1234 hello
*/
public class PairDemo {
public static void main(String[] args) throws IOException {
Pair<Integer, String> p = new Pair<>(5, "hello");

Python

While Python doesn't have a specific class just for pairs, 2-element tuples give nearly the exact same functionality. The only issue is that you can't modify the elements since tuples are immutable.

On the other hand, Python has built-in comparison support for tuples. When comparing, it looks at the first elements of each pair, then the second, and so on and so forth.

"""
Output:
(5, 'asdf')
5
True
"""
p1 = (5, "asdf")
print(p1)
print(p1[0]) # access the first element of the tuple
p2 = (6, "asdf")
print(p1 < p2)

Memory Allocation

One thing to keep in mind when using arrays is the memory limit. Usually the USACO memory limit is 256 MB. To estimate how many values can be stored within this limit:

  1. Calculate the total memory size in bytes: for 256 MB, that's 256106256\cdot 10^6.
  2. Divide by the size, in bytes, of an int (4), or a long long (8), etc. For example, the number of ints that you are able to store is bounded above by 2561064=64106\frac{256\cdot 10^6}{4}=64\cdot 10^6.
  3. Be aware that program overhead (which can be very significant, especially with recursive functions) will reduce the amount of memory available.

Quiz

C++

How do you count the number of items in an std::vector? Suppose we named the vector v.

Question 1 of 3

Java

How do you count the number of items in an ArrayList? Suppose we named it list.

Question 1 of 2

Python

How do you count the number of items in a list? Suppose we named the list l.

Question 1 of 3

Problems

Nothing to see here! To reiterate, arrays of fixed size should suffice for essentially every Bronze problem, but dynamic arrays, pairs, and tuples can greatly simplify implementation at times. You'll see some examples of these in the following module.

Module Progress:

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