Lab 8: Midterm Review
Due at 11:59pm on Friday, 03/22/2019.
Starter Files
Download lab08.zip. Inside the archive, you will find starter files for the questions in this lab, along with a copy of the Ok autograder.
Submission
By the end of this lab, you should have submitted the lab with
python3 ok --submit
. You may submit more than once before the
deadline; only the final submission will be graded.
Check that you have successfully submitted your code on
okpy.org.
- In order to facilitate midterm studying, solutions to this lab were released with the lab. We encourage you to try out the problems and struggle for a while before looking at the solutions!
Linked Lists
Q1: Deep Linked List Length
A linked list that contains one or more linked lists as elements is called a
deep linked list. Write a function deep_len
that takes in a (possibly deep)
linked list and returns the deep length of that linked list. The deep length of
a linked list is the total number of non-link elements in the list, as well as the
total number of elements contained in all contained lists. See the function's doctests
for examples of the deep length of linked lists.
Hint: Use
isinstance
to check if something is an instance of an object.
def deep_len(lnk):
""" Returns the deep length of a possibly deep linked list.
>>> deep_len(Link(1, Link(2, Link(3))))
3
>>> deep_len(Link(Link(1, Link(2)), Link(3, Link(4))))
4
>>> levels = Link(Link(Link(1, Link(2)), \
Link(3)), Link(Link(4), Link(5)))
>>> print(levels)
<<<1 2> 3> <4> 5>
>>> deep_len(levels)
5
"""
"*** YOUR CODE HERE ***"
if lnk is Link.empty:
return 0
elif not isinstance(lnk, Link):
return 1
else:
return deep_len(lnk.first) + deep_len(lnk.rest)
# Video Walkthrough: https://youtu.be/pbMeCRUU7yw?t=2m28s
Use Ok to test your code:
python3 ok -q deep_len
Q2: Linked Lists as Strings
Kevin and Jerry like different ways of displaying the linked list
structure in Python. While Kevin likes box and pointer diagrams,
Jerry prefers a more futuristic way. Write a function
make_to_string
that returns a function that converts the
linked list to a string in their preferred style.
Hint: You can convert numbers to strings using the str
function,
and you can combine strings together using +
.
>>> str(4)
'4'
>>> 'cs ' + str(61) + 'a'
'cs 61a'
def make_to_string(front, mid, back, empty_repr):
""" Returns a function that turns linked lists to strings.
>>> kevins_to_string = make_to_string("[", "|-]-->", "", "[]")
>>> jerrys_to_string = make_to_string("(", " . ", ")", "()")
>>> lst = Link(1, Link(2, Link(3, Link(4))))
>>> kevins_to_string(lst)
'[1|-]-->[2|-]-->[3|-]-->[4|-]-->[]'
>>> kevins_to_string(Link.empty)
'[]'
>>> jerrys_to_string(lst)
'(1 . (2 . (3 . (4 . ()))))'
>>> jerrys_to_string(Link.empty)
'()'
"""
"*** YOUR CODE HERE ***"
def printer(lnk):
if lnk is Link.empty:
return empty_repr
else:
return front + str(lnk.first) + mid + printer(lnk.rest) + back
return printer
# Video Walkthrough: https://youtu.be/pbMeCRUU7yw?t=14m22s
Use Ok to test your code:
python3 ok -q make_to_string
Trees
Q3: Tree Map
Define the function tree_map
, which takes in a tree and a
one-argument function as arguments and returns a new tree which is the
result of mapping the function over the entries of the input tree.
def tree_map(fn, t):
"""Maps the function fn over the entries of t and returns the
result in a new tree.
>>> numbers = Tree(1,
... [Tree(2,
... [Tree(3),
... Tree(4)]),
... Tree(5,
... [Tree(6,
... [Tree(7)]),
... Tree(8)])])
>>> print(tree_map(lambda x: 2**x, numbers))
2
4
8
16
32
64
128
256
>>> print(numbers)
1
2
3
4
5
6
7
8
"""
"*** YOUR CODE HERE ***"
if t.is_leaf():
return Tree(fn(t.label), [])
mapped_subtrees = [tree_map(fn, b) for b in t.branches]
return Tree(fn(t.label), mapped_subtrees)
# Alternate solution
def tree_map(fn, t):
return Tree(fn(t.label), [tree_map(fn, b) for b in t.branches])
# Video Walkthrough: https://youtu.be/pbMeCRUU7yw?t=26m47s
Use Ok to test your code:
python3 ok -q tree_map
Q4: Long Paths
Implement long_paths
, which returns a list of all paths in a tree with
length at least n
. A path in a tree is a linked list of node values that
starts with the root and ends at a leaf. Each subsequent element must be from a
child of the previous value's node. The length of a path is the number of
edges in the path (i.e. one less than the number of nodes in the path).
Paths are listed in order from left to right. See the doctests for some
examples.
def long_paths(tree, n):
"""Return a list of all paths in tree with length at least n.
>>> t = Tree(3, [Tree(4), Tree(4), Tree(5)])
>>> left = Tree(1, [Tree(2), t])
>>> mid = Tree(6, [Tree(7, [Tree(8)]), Tree(9)])
>>> right = Tree(11, [Tree(12, [Tree(13, [Tree(14)])])])
>>> whole = Tree(0, [left, Tree(13), mid, right])
>>> for path in long_paths(whole, 2):
... print(path)
...
<0 1 2>
<0 1 3 4>
<0 1 3 4>
<0 1 3 5>
<0 6 7 8>
<0 6 9>
<0 11 12 13 14>
>>> for path in long_paths(whole, 3):
... print(path)
...
<0 1 3 4>
<0 1 3 4>
<0 1 3 5>
<0 6 7 8>
<0 11 12 13 14>
>>> long_paths(whole, 4)
[Link(0, Link(11, Link(12, Link(13, Link(14)))))]
"""
"*** YOUR CODE HERE ***"
paths = []
if n <= 0 and tree.is_leaf():
paths.append(Link(tree.label))
for b in tree.branches:
for path in long_paths(b, n - 1):
paths.append(Link(tree.label, path))
return paths
Use Ok to test your code:
python3 ok -q long_paths
Orders of Growth
Q5: Finding Orders of Growth
Use Ok to test your knowledge with the following questions:
python3 ok -q growth -u
Be sure to ask a lab assistant or TA if you don't understand the correct answer!
What is the order of growth of is_prime
in terms of n
?
def is_prime(n):
for i in range(2, n):
if n % i == 0:
return False
return True
Explanation: In the worst case, n is prime, and we have to execute the loop n - 2 times. Each iteration takes constant time (one conditional check and one return statement). Therefore, the total time is (n - 2) x θ(1), or simply θ(n).
What is the order of growth of bar
in terms of n
?
def bar(n):
i, sum = 1, 0
while i <= n:
sum += biz(n)
i += 1
return sum
def biz(n):
i, sum = 1, 0
while i <= n:
sum += i**3
i += 1
return sum
Explanation: The body of the while loop in bar
is executed n
times. Each iteration, one call to biz(n)
is made. Note that n never
changes, so this call takes the same time to run each iteration. Taking a look at
biz
, we see that there is another while loop. Be careful to note that
although the term being added to sum
is cubed (i**3
), i
itself is only
incremented by 1 in each iteration. This tells us that this while loop also
executes n times, with each iteration taking constant time , so the total
time of biz(n)
is n x θ(1), or θ(n). Knowing the runtime of
biz(n)
, we can conclude that each iteration of the while loop in bar
takes
θ(n). Therefore, the total runtime of bar(n)
is n x θ(n).
What is the order of growth of foo
in terms of n
, where n
is the length
of lst
? Assume that slicing a list and calling len
on a list can both be
done in constant time.
def foo(lst, i):
mid = len(lst) // 2
if mid == 0:
return lst
elif i > 0:
return foo(lst[mid:], -1)
else:
return foo(lst[:mid], 1)
Explanation: A single recursive call is made in the body of foo
on half the
input list (either the first half or the second half depending on the input
flag i
). The base case is executed when the list either is empty or has only
one element. We start with an n element list and halve the list until there
is at most 1 element, which means there will be log(n) total calls. Each
call, constant work is done if we ignore the recursive call. The total runtime
is then log(n) * θ(1).
Note: We simplified this problem by assuming that slicing a list takes constant time. In reality, this operation is a bit more nuanced and may take linear time. As an additional exercise, try determining the order of growth of this function if we assuming slicing takes linear time.
Recursion & Tree Recursion
Q6: Subsequences
A subsequence of a sequence S
is a sequence of elements from S
, in the same
order they appear in S
, but possibly with elements missing. Thus, the lists
[]
, [1, 3]
, [2]
, and [1, 2, 3]
are some (but not all) of the
subsequences of [1, 2, 3]
. Write a function that takes a list and returns a
list of lists, for which each individual list is a subsequence of the original
input.
In order to accomplish this, you might first want to write a function insert_into_all
that takes an item and a list of lists, adds the item to the beginning of nested list,
and returns the resulting list.
def insert_into_all(item, nested_list):
"""Assuming that nested_list is a list of lists, return a new list
consisting of all the lists in nested_list, but with item added to
the front of each.
>>> nl = [[], [1, 2], [3]]
>>> insert_into_all(0, nl)
[[0], [0, 1, 2], [0, 3]]
"""
"*** YOUR CODE HERE ***"
return [[item] + lst for lst in nested_list]
def subseqs(s):
"""Assuming that S is a list, return a nested list of all subsequences
of S (a list of lists). The subsequences can appear in any order.
>>> seqs = subseqs([1, 2, 3])
>>> sorted(seqs)
[[], [1], [1, 2], [1, 2, 3], [1, 3], [2], [2, 3], [3]]
>>> subseqs([])
[[]]
"""
"*** YOUR CODE HERE ***"
if not s:
return [[]]
else:
subset = subseqs(s[1:])
return insert_into_all(s[0], subset) + subset
Use Ok to test your code:
python3 ok -q subseqs
Q7: Increasing Subsequences
Now, we wish to find subsequences subject to another condition: we only want the
subsequences for which consecutive elements are nondecreasing. For example, [1, 3, 2]
is a
subsequence of [1, 3, 2, 4]
, but since 2 < 3, this subsequence would not
be included in our result.
Fill in the blanks to complete the implementation of the inc_subseqs
function. You may assume that the input list only contains positive elements.
You may use the helper function insert_into_all
you defined in the previous part.
def inc_subseqs(s):
"""Assuming that S is a list, return a nested list of all subsequences
of S (a list of lists) for which the elements of the subsequence
are strictly nondecreasing. The subsequences can appear in any order.
>>> seqs = inc_subseqs([1, 3, 2])
>>> sorted(seqs)
[[], [1], [1, 2], [1, 3], [2], [3]]
>>> inc_subseqs([])
[[]]
>>> seqs2 = inc_subseqs([1, 1, 2])
>>> sorted(seqs2)
[[], [1], [1], [1, 1], [1, 1, 2], [1, 2], [1, 2], [2]]
"""
def subseq_helper(s, prev):
if not s:
return ____________________
return [[]] elif s[0] < prev:
return ____________________
return subseq_helper(s[1:], prev) else:
a = ______________________
a = subseq_helper(s[1:], s[0]) b = ______________________
b = subseq_helper(s[1:], prev) return insert_into_all(________, ______________) + ________________
return insert_into_all(s[0], a) + b return subseq_helper(____, ____)
return subseq_helper(s, 0)
Use Ok to test your code:
python3 ok -q inc_subseqs
Q8: Number of Trees
How many different possible full binary tree (each node has two branches or 0, but never 1) structures exist that have exactly n leaves?
For those interested in combinatorics, this problem does have a closed form solution):
def num_trees(n):
"""How many full binary trees have exactly n leaves? E.g.,
1 2 3 3 ...
* * * *
/ \ / \ / \
* * * * * *
/ \ / \
* * * *
>>> num_trees(1)
1
>>> num_trees(2)
1
>>> num_trees(3)
2
>>> num_trees(8)
429
"""
"*** YOUR CODE HERE ***"
if n == 1:
return 1
return sum(num_trees(k) * num_trees(n-k) for k in range(1, n))
Use Ok to test your code:
python3 ok -q num_trees
Objects
Q9: Keyboard
We'd like to create a Keyboard
class that takes in an arbitrary
number of Button
s and stores these Button
s in a dictionary. The
keys in the dictionary will be ints that represent the postition on the
Keyboard
, and the values will be the respective Button
. Fill out
the methods in the Keyboard
class according to each description,
using the doctests as a reference for the behavior of a Keyboard
.
class Keyboard:
"""A Keyboard takes in an arbitrary amount of buttons, and has a
dictionary of positions as keys, and values as Buttons.
>>> b1 = Button(0, "H")
>>> b2 = Button(1, "I")
>>> k = Keyboard(b1, b2)
>>> k.buttons[0].key
'H'
>>> k.press(1)
'I'
>>> k.press(2) #No button at this position
''
>>> k.typing([0, 1])
'HI'
>>> k.typing([1, 0])
'IH'
>>> b1.times_pressed
2
>>> b2.times_pressed
3
"""
def __init__(self, *args):
"*** YOUR CODE HERE ***"
self.buttons = {}
for button in args:
self.buttons[button.pos] = button
def press(self, info):
"""Takes in a position of the button pressed, and
returns that button's output"""
"*** YOUR CODE HERE ***"
if info in self.buttons.keys():
b = self.buttons[info]
b.times_pressed += 1
return b.key
return ''
def typing(self, typing_input):
"""Takes in a list of positions of buttons pressed, and
returns the total output"""
"*** YOUR CODE HERE ***"
accumulate = ''
for pos in typing_input:
accumulate+=self.press(pos)
return accumulate
class Button:
"""
Represents a single button
"""
def __init__(self, pos, key):
"""
Creates a button
"""
self.pos = pos
self.key = key
self.times_pressed = 0
Use Ok to test your code:
python3 ok -q Keyboard
Nonlocal
Q10: Advanced Counter
Complete the definition of make_advanced_counter_maker
,
which creates a function that creates counters. These counters can not
only update their personal count, but also a shared count for all
counters. They can also reset either count.
def make_advanced_counter_maker():
"""Makes a function that makes counters that understands the
messages "count", "global-count", "reset", and "global-reset".
See the examples below:
>>> make_counter = make_advanced_counter_maker()
>>> tom_counter = make_counter()
>>> tom_counter('count')
1
>>> tom_counter('count')
2
>>> tom_counter('global-count')
1
>>> jon_counter = make_counter()
>>> jon_counter('global-count')
2
>>> jon_counter('count')
1
>>> jon_counter('reset')
>>> jon_counter('count')
1
>>> tom_counter('count')
3
>>> jon_counter('global-count')
3
>>> jon_counter('global-reset')
>>> tom_counter('global-count')
1
"""
"*** YOUR CODE HERE ***"
global_count = 0
def make_counter():
count = 0
def counter(msg):
nonlocal global_count, count
if msg == 'count':
count += 1
return count
elif msg == 'reset':
count = 0
elif msg == 'global-count':
global_count += 1
return global_count
elif msg == 'global-reset':
global_count = 0
return counter
return make_counter
Use Ok to test your code:
python3 ok -q make_advanced_counter_maker
Mutable Lists
Q11: Environment Diagram
Draw an environment diagram for the following program.
Some things to remember:
- When you mutate a list, you are changing the original list.
- When you concatenate two lists, you are creating a new list.
- When you assign a name to an existing object, you are creating another reference to that object rather than creating a copy of that object.
def got(lst, el, f):
welcome = []
for e in lst:
if e == el:
el = f(lst[1:], 2, welcome)
return lst[3:] + welcome
def avocadis(lst, i, lst0):
lst0.append(lst.pop(i))
return len(lst0)
bananis = [1, 6, 1, 6]
n = bananis[3]
we = got(bananis, n, avocadis)
You can check your solution here. If you get stuck, ask a Lab Assistant or TA for help before checking the solution! There is nothing to submit for this problem.
Q12: Trade
In the integer market, each participant has a list of positive integers to trade. When two participants meet, they trade the smallest non-empty prefix of their list of integers. A prefix is a slice that starts at index 0.
Write a function trade
that exchanges the first m
elements of list first
with the first n
elements of list second
, such that the sums of those
elements are equal, and the sum is as small as possible. If no such prefix
exists, return the string 'No deal!'
and do not change either list. Otherwise
change both lists and return 'Deal!'
. A partial implementation is provided.
Hint: You can mutate a slice of a list using slice assignment. To do so, specify a slice of the list
[i:j]
on the left-hand side of an assignment statement and another list on the right-hand side of the assignment statement. The operation will replace the entire given slice of the list fromi
inclusive toj
exclusive with the elements from the given list. The slice and the given list need not be the same length.>>> a = [1, 2, 3, 4, 5, 6] >>> b = a >>> a[2:5] = [10, 11, 12, 13] >>> a [1, 2, 10, 11, 12, 13, 6] >>> b [1, 2, 10, 11, 12, 13, 6]
Additionally, recall that the starting and ending indices for a slice can be left out and Python will use a default value.
lst[i:]
is the same aslst[i:len(lst)]
, andlst[:j]
is the same aslst[0:j]
.
def trade(first, second):
"""Exchange the smallest prefixes of first and second that have equal sum.
>>> a = [1, 1, 3, 2, 1, 1, 4]
>>> b = [4, 3, 2, 7]
>>> trade(a, b) # Trades 1+1+3+2=7 for 4+3=7
'Deal!'
>>> a
[4, 3, 1, 1, 4]
>>> b
[1, 1, 3, 2, 2, 7]
>>> c = [3, 3, 2, 4, 1]
>>> trade(b, c)
'No deal!'
>>> b
[1, 1, 3, 2, 2, 7]
>>> c
[3, 3, 2, 4, 1]
>>> trade(a, c)
'Deal!'
>>> a
[3, 3, 2, 1, 4]
>>> b
[1, 1, 3, 2, 2, 7]
>>> c
[4, 3, 1, 4, 1]
"""
m, n = 1, 1
"*** YOUR CODE HERE ***"
equal_prefix = lambda: sum(first[:m]) == sum(second[:n])
while m < len(first) and n < len(second) and not equal_prefix():
if sum(first[:m]) < sum(second[:n]):
m += 1
else:
n += 1
if False: # change this line!
if equal_prefix(): first[:m], second[:n] = second[:n], first[:m]
return 'Deal!'
else:
return 'No deal!'
Use Ok to test your code:
python3 ok -q trade
More Orders of Growth
Q13: Boom
What is the order of growth in time for the following function boom? Use big-θ notation.
def boom(n):
sum = 0
a, b = 1, 1
while a <= n*n:
while b <= n*n:
sum += (a*b)
b += 1
b = 0
a += 1
return sum
Use ok to test your understanding:
python3 ok -q boom -u
θ(n4)
We can come to this answer by noticing that either b = 0
or b = 1
when we start the while b <= n * n
loop, and we increase b
by 1 every time, so this loop takes about n * n
time. Thus, the body of the while a <= n * n
loop takes n * n
time, and therefore the whole function takes n * n * n * n
time, or θ(n4)
Q14: Zap
What is the order of growth in time for the following function zap
? Use
big-θ notation.
def zap(n):
i, count = 1, 0
while i <= n:
while i <= 5 * n:
count += i
print(i / 6)
i *= 3
return count
Use ok to test your understanding:
python3 ok -q zap -u
θ(log n)
Here, the stopping condition of both loops rely on the same variable i
.
You might notice that completion of the inner loop will guarantee completion
of the outer loop; after all, if i
is greater than 5 * n
,
then it will be greater than n
. Therefore, the overall runtime is just the runtime
of the inner loop. Since i
begins at 1 and is multiplied by 3 at every
iteration of the inner loop, the inner loop will have log n
iterations overall. Each
iteration does constant work, so the overall runtime will be log n
.