Space and Time Complexity

Space complexity refers to the amount of memory used by an algorithm to complete its execution, as a function of the size of the input. The space complexity of an algorithm can be affected by various factors such as the size of the input data, the data structures used in the algorithm, the number and size of temporary variables, and the recursion depth. Time complexity refers to the amount of time required by an algorithm to run as the input size grows. It is usually measured in terms of the "Big O" notation, which describes the upper bound of an algorithm's time complexity.

Why do you think a programmer should care about space and time complexity?

  • A programmer should want to optimize both time and space. Take the least time and space, but still have a viable result. Big O

    - O(n) is the complexity representation for algorithms

Take a look at our lassen volcano example from the data compression tech talk. The first code block is the original image. In the second code block, change the baseWidth to rescale the image.

from IPython.display import Image, display
from pathlib import Path 

# prepares a series of images
def image_data(path=Path("images/"), images=None):  # path of static images is defaulted
    for image in images:
        # File to open
        image['filename'] = path / image['file']  # file with path
    return images

def image_display(images):
    for image in images:  
        display(Image(filename=image['filename']))

if __name__ == "__main__":
    lassen_volcano = image_data(images=[{'source': "Peter Carolin", 'label': "Lassen Volcano", 'file': "lassen-volcano.jpg"}])
    image_display(lassen_volcano)
    
from IPython.display import HTML, display
from pathlib import Path 
from PIL import Image as pilImage 
from io import BytesIO
import base64

# prepares a series of images
def image_data(path=Path("images/"), images=None):  # path of static images is defaulted
    for image in images:
        # File to open
        image['filename'] = path / image['file']  # file with path
    return images

def scale_image(img):
    baseWidth = 625
    #baseWidth = 1250
    #baseWidth = 2500
    # baseWidth = 5000 # see the effect of doubling or halfing the baseWidth 
    # baseWidth = 10000 
    # baseWidth = 20000
    # baseWidth = 40000
    scalePercent = (baseWidth/float(img.size[0]))
    scaleHeight = int((float(img.size[1])*float(scalePercent)))
    scale = (baseWidth, scaleHeight)
    return img.resize(scale)

def image_to_base64(img, format):
    with BytesIO() as buffer:
        img.save(buffer, format)
        return base64.b64encode(buffer.getvalue()).decode()
    
def image_management(image):  # path of static images is defaulted        
    # Image open return PIL image object
    img = pilImage.open(image['filename'])
    
    # Python Image Library operations
    image['format'] = img.format
    image['mode'] = img.mode
    image['size'] = img.size
    image['width'], image['height'] = img.size
    image['pixels'] = image['width'] * image['height']
    # Scale the Image
    img = scale_image(img)
    image['pil'] = img
    image['scaled_size'] = img.size
    image['scaled_width'], image['scaled_height'] = img.size
    image['scaled_pixels'] = image['scaled_width'] * image['scaled_height']
    # Scaled HTML
    image['html'] = '<img src="data:image/png;base64,%s">' % image_to_base64(image['pil'], image['format'])


if __name__ == "__main__":
    # Use numpy to concatenate two arrays
    images = image_data(images = [{'source': "Peter Carolin", 'label': "Lassen Volcano", 'file': "lassen-volcano.jpg"}])
    
    # Display meta data, scaled view, and grey scale for each image
    for image in images:
        image_management(image)
        print("---- meta data -----")
        print(image['label'])
        print(image['source'])
        print(image['format'])
        print(image['mode'])
        print("Original size: ", image['size'], " pixels: ", f"{image['pixels']:,}")
        print("Scaled size: ", image['scaled_size'], " pixels: ", f"{image['scaled_pixels']:,}")
        
        print("-- original image --")
        display(HTML(image['html'])) 

Do you think this is a time complexity or space complexity or both problem?

  • Both, space---> number of pixels, time---> time it took to run and get the image.

Big O Notation

  • Constant O(1): Constant
  • Linear O(n): As n increases so will time
  • Quadratic O(n^2): 2 loops nested inside of eachother (i loop & j loop)
  • Logarithmic O(logn):
  • Exponential (O(2^n))
numbers = list(range(1000))
print(numbers)

Constant O(1)

Time

An example of a constant time algorithm is accessing a specific element in an array. It does not matter how large the array is, accessing an element in the array takes the same amount of time. Therefore, the time complexity of this operation is constant, denoted by O(1).

#prints the number at index 263
print(numbers[263])     

ncaa_bb_ranks = {1:"Alabama",2:"Houston", 3:"Purdue", 4:"Kansas"}
#look up a value in a dictionary given a key
print(ncaa_bb_ranks[1])      

Space

This function takes two number inputs and returns their sum. The function does not create any additional data structures or variables that are dependent on the input size, so its space complexity is constant, or O(1). Regardless of how large the input numbers are, the function will always require the same amount of memory to execute.

# Start with 2 numbers, then creating a third that needs a place to be stored
#function that takes the sum of two numbers
def sum(a, b): 
  return a + b

print(sum(90,88))
print(sum(.9,.88))

Linear O(n)

Time

An example of a linear time algorithm is traversing a list or an array. When the size of the list or array increases, the time taken to traverse it also increases linearly with the size. Hence, the time complexity of this operation is O(n), where n is the size of the list or array being traversed.

for i in numbers:
    print(i)

#just 1 for loop

Space

This function takes a list of elements arr as input and returns a new list with the elements in reverse order. The function creates a new list reversed_arr of the same size as arr to store the reversed elements. The size of reversed_arr depends on the size of the input arr, so the space complexity of this function is O(n). As the input size increases, the amount of memory required to execute the function also increases linearly.

def reverse_list(arr):
    n = len(arr) 
    reversed_arr = [None] * n #create a list of None based on the length or arr
    for i in range(n):
        reversed_arr[n-i-1] = arr[i] #stores the value at the index of arr to the value at the index of reversed_arr starting at the beginning for arr and end for reversed_arr 
    return reversed_arr

print(numbers)
print(reverse_list(numbers))

#started with og list, created new reverse list
#new list needs space

Quadratic O(n^2)

Time

An example of a quadratic time algorithm is nested loops. When there are two nested loops that both iterate over the same collection, the time taken to complete the algorithm grows quadratically with the size of the collection. Hence, the time complexity of this operation is O(n^2), where n is the size of the collection being iterated over.

for i in numbers:
    for j in numbers:
        print(i,j)

#2 loops
# 1000*1000

Space

This function takes two matrices matrix1 and matrix2 as input and returns their product as a new matrix. The function creates a new matrix result with dimensions m by n to store the product of the input matrices. The size of result depends on the size of the input matrices, so the space complexity of this function is O(n^2). As the size of the input matrices increases, the amount of memory required to execute the function also increases quadratically.

def multiply_matrices(matrix1, matrix2):
    m = len(matrix1) 
    n = len(matrix2[0])
    result = [[0] * n] * m #this creates the new matrix based on the size of matrix 1 and 2
    for i in range(m):
        for j in range(n):
            for k in range(len(matrix2)):
                result[i][j] += matrix1[i][k] * matrix2[k][j]
    return result

print(multiply_matrices([[1,2],[3,4]], [[3,4],[1,2]]))
[[18, 28], [18, 28]]

Logarithmic O(logn)

Time

An example of a log time algorithm is binary search. Binary search is an algorithm that searches for a specific element in a sorted list by repeatedly dividing the search interval in half. As a result, the time taken to complete the search grows logarithmically with the size of the list. Hence, the time complexity of this operation is O(log n), where n is the size of the list being searched.

def binary_search(arr, low, high, target):
    while low <= high:
        mid = (low + high) // 2 #integer division
        if arr[mid] == target:
            return mid
        elif arr[mid] < target:
            low = mid + 1
        else:
            high = mid - 1

target = 263
result = binary_search(numbers, 0, len(numbers) - 1, target)

print(result)
263

Space

The same algorithm above has a O(logn) space complexity. The function takes an array arr, its lower and upper bounds low and high, and a target value target. The function searches for target within the bounds of arr by recursively dividing the search space in half until the target is found or the search space is empty. The function does not create any new data structures that depend on the size of arr. Instead, the function uses the call stack to keep track of the recursive calls. Since the maximum depth of the recursive calls is O(logn), where n is the size of arr, the space complexity of this function is O(logn). As the size of arr increases, the amount of memory required to execute the function grows logarithmically.

Exponential O(2^n)

Time

An example of an O(2^n) algorithm is the recursive implementation of the Fibonacci sequence. The Fibonacci sequence is a series of numbers where each number is the sum of the two preceding ones, starting from 0 and 1. The recursive implementation of the Fibonacci sequence calculates each number by recursively calling itself with the two preceding numbers until it reaches the base case (i.e., the first or second number in the sequence). The algorithm takes O(2^n) time in the worst case because it has to calculate each number in the sequence by making two recursive calls.

def fibonacci(n):
    if n <= 1:
        return n
    else:
        return fibonacci(n-1) + fibonacci(n-2)

#print(fibonacci(5))
#print(fibonacci(10))
#print(fibonacci(20))
#print(fibonacci(30))
print(fibonacci(40))

#algorithm where you have to start over from beginning each time
102334155

Space

This function takes a set s as input and generates all possible subsets of s. The function does this by recursively generating the subsets of the set without the first element, and then adding the first element to each of those subsets to generate the subsets that include the first element. The function creates a new list for each recursive call that stores the subsets, and each element in the list is a new list that represents a subset. The number of subsets that can be generated from a set of size n is 2^n, so the space complexity of this function is O(2^n). As the size of the input set increases, the amount of memory required to execute the function grows exponentially.

def generate_subsets(s):
    if not s:
        return [[]]
    subsets = generate_subsets(s[1:])
    return [[s[0]] + subset for subset in subsets] + subsets

print(generate_subsets([1,2,3,]))
print(generate_subsets([1,2,3,4,5,6]))
#print(generate_subsets(numbers))
#huge difference (large growth)
import time

start_time = time.time()
print(fibonacci(34))
end_time = time.time()

total_time = end_time - start_time
print("Time taken:", total_time, "seconds")

start_time = time.time()
print(fibonacci(35))
end_time = time.time()

total_time = end_time - start_time
print("Time taken:", total_time, "seconds")
5702887
Time taken: 4.936901330947876 seconds
9227465
Time taken: 7.153420686721802 seconds

Hacks

  • Record your findings when testing the time elapsed of the different algorithms.
  • Although we will go more in depth later, time complexity is a key concept that relates to the different sorting algorithms. Do some basic research on the different types of sorting algorithms and their time complexity.
  • Why is time and space complexity important when choosing an algorithm?
    • If an algorithm takes too long or if it takes too much space, it is not an efficient way to solve the given problem. An effective algorithm should take a realistic amount of time and space (given the circumstances). For example, if
  • Should you always use a constant time algorithm / Should you never use an exponential time algorithm? Explain?
    • No. Depends on what kind of inputs will be used. In general, exponential algorithms work well when the inputs are small.
  • What are some general patterns that you noticed to determine each algorithm's time and space complexity?
    • Look for nested loops. Nested loops usually increase time/complexity. See what output is generated. If the output is a single variable/new value that is O(n).

Complete the Time and Space Complexity analysis questions linked below. Practice

Research+Notes

1. Constant O(1)

2. Linear O(n)

3. Quadratic O(n^2)

4. Logarithmic O(logn)

5. Exponential O(2^n)

Answering Code Questions

#1
a = 0
b = 0
for i in range(N):
   a = a + random()
 
for i in range(M):
   b= b + random()

#2
a = 0;
for i in range(N):
  for j in reversed(range(i,N)):
    a = a + i + j;

#3
k = 0;
for i in range(n//2,n):
  for j in range(2,n,pow(2,j)):
        k = k + n / 2;

#4: What does it mean when we say that an algorithm X is asymptotically more efficient than Y?

#5
a = 0
i = N
while (i > 0):
  a += i
  i //= 2
} 

#6: Which of the following best describes the useful criterion for comparing the efficiency of algorithms?
# Time
# Memory
# Both of the above
# None of the above

#7 How is time complexity measured?

# By counting the number of algorithms in an algorithm.
# By counting the number of primitive operations performed by the algorithm on a given input size.
# By counting the size of data input to the algorithm.
# None of the above

#8
for i in range(n):
  i=i*k

#9
value = 0;
for i in range(n):
  for j in range(i):
    value=value+1

#10: Algorithm A and B have a worst-case running time of O(n) and O(logn), respectively. Therefore, algorithm B always runs faster than algorithm A.
  1. O(N + M) time, O(1) space

    • 2 loops that are independent from eachother (not nested), therefore just add
    • only singular variables are created--> constant space taken
  2. O(N*N)

    • loop inside of a loop (nested) therefore n^2
  3. O(N log N)

    • j will double until it is less than or equal to n. Less than n means also less than long(n)
  4. I do not know

    • Answer: X will always be a better choice for large inputs
    • "In asymptotic analysis, we consider the growth of the algorithm in terms of input size. An algorithm X is said to be asymptotically better than Y if X takes smaller time than y for all input sizes n larger than a value n0 where n0 > 0"
  5. O(N / 2)

    • Correct answer: O(log N)
    • "We have to find the smallest x such that ‘(N / 2^x )< 1 OR 2^x > N’ = log(N)"
  6. Both of the above

    • Both managing time and space are neccesary for a good algorithm
  7. By counting the number of primitive operations performed by the algorithm on a given input size.

    • number of operation the algorithm needs to perform based on the size of the input, wll show efficiency and complexity.
  8. O(lognk)

    • i increases by i*k each time, it will loop for K^(n-1). Convert into log form
  9. n(n-1)

    • i loop will run for n times & j be run for (n-1) times
  10. False

    • Not for all values of n