Tkinter Insert outputting as [list] after "".join() - python-3.x

I am making a python program that converts numbers to binary with a tkinter GUI. When using e.insert on a entry it will return a normal string:
0101010011
as
[0, 1, 0, 1...]
The function which converts a number to binary. I am aware the bin() alternative exists, I just wanted to create my own.
def dec2bin(decnum):
binarylist = []
while (decnum > 0):
binarylist.append(decnum % 2)
decnum = decnum // 2
binarylist.reverse()
binarylist = str(binarylist)
return "".join(binarylist)
The function that is called when a button in the tkinter gui is pressed which is intended to replace one of the entry box's text with the binary output.
def convert():
decimal = entrydec.get()
decimal = int(decimal)
entrybin.delete(0, END)
entrybin.insert(0, dec2bin(decimal))
I expect the output of 010101, but the actual output is [0, 1, 0, 1, 0, 1]

You can't use str() on list - str([0, 1, 0, 0]) to get list with strings - ["0", "1", "0", "0"]
You can use list comprehension:
binarylist = [str(x) for x in binarylist]
or map() :
binarylist = map(str, binarylist)
Or you have to convert numbers 0 ,1 to string when you add to list:
binarylist.append( str(decnum % 2) )
And later you can use join()
def dec2bin(decnum):
binarylist = []
while (decnum > 0):
binarylist.append( str(decnum % 2) ) # <-- use str()
decnum = decnum // 2
binarylist.reverse()
#binarylist = str(binarylist) # <-- remove it
return "".join(binarylist)
dec2bin(12)
Result:
"1100"

Related

Need to fetch 1st value from the dictionary from all the preferred keys in python [duplicate]

What is an efficient way to find the most common element in a Python list?
My list items may not be hashable so can't use a dictionary.
Also in case of draws the item with the lowest index should be returned. Example:
>>> most_common(['duck', 'duck', 'goose'])
'duck'
>>> most_common(['goose', 'duck', 'duck', 'goose'])
'goose'
A simpler one-liner:
def most_common(lst):
return max(set(lst), key=lst.count)
Borrowing from here, this can be used with Python 2.7:
from collections import Counter
def Most_Common(lst):
data = Counter(lst)
return data.most_common(1)[0][0]
Works around 4-6 times faster than Alex's solutions, and is 50 times faster than the one-liner proposed by newacct.
On CPython 3.6+ (any Python 3.7+) the above will select the first seen element in case of ties. If you're running on older Python, to retrieve the element that occurs first in the list in case of ties you need to do two passes to preserve order:
# Only needed pre-3.6!
def most_common(lst):
data = Counter(lst)
return max(lst, key=data.get)
With so many solutions proposed, I'm amazed nobody's proposed what I'd consider an obvious one (for non-hashable but comparable elements) -- [itertools.groupby][1]. itertools offers fast, reusable functionality, and lets you delegate some tricky logic to well-tested standard library components. Consider for example:
import itertools
import operator
def most_common(L):
# get an iterable of (item, iterable) pairs
SL = sorted((x, i) for i, x in enumerate(L))
# print 'SL:', SL
groups = itertools.groupby(SL, key=operator.itemgetter(0))
# auxiliary function to get "quality" for an item
def _auxfun(g):
item, iterable = g
count = 0
min_index = len(L)
for _, where in iterable:
count += 1
min_index = min(min_index, where)
# print 'item %r, count %r, minind %r' % (item, count, min_index)
return count, -min_index
# pick the highest-count/earliest item
return max(groups, key=_auxfun)[0]
This could be written more concisely, of course, but I'm aiming for maximal clarity. The two print statements can be uncommented to better see the machinery in action; for example, with prints uncommented:
print most_common(['goose', 'duck', 'duck', 'goose'])
emits:
SL: [('duck', 1), ('duck', 2), ('goose', 0), ('goose', 3)]
item 'duck', count 2, minind 1
item 'goose', count 2, minind 0
goose
As you see, SL is a list of pairs, each pair an item followed by the item's index in the original list (to implement the key condition that, if the "most common" items with the same highest count are > 1, the result must be the earliest-occurring one).
groupby groups by the item only (via operator.itemgetter). The auxiliary function, called once per grouping during the max computation, receives and internally unpacks a group - a tuple with two items (item, iterable) where the iterable's items are also two-item tuples, (item, original index) [[the items of SL]].
Then the auxiliary function uses a loop to determine both the count of entries in the group's iterable, and the minimum original index; it returns those as combined "quality key", with the min index sign-changed so the max operation will consider "better" those items that occurred earlier in the original list.
This code could be much simpler if it worried a little less about big-O issues in time and space, e.g....:
def most_common(L):
groups = itertools.groupby(sorted(L))
def _auxfun((item, iterable)):
return len(list(iterable)), -L.index(item)
return max(groups, key=_auxfun)[0]
same basic idea, just expressed more simply and compactly... but, alas, an extra O(N) auxiliary space (to embody the groups' iterables to lists) and O(N squared) time (to get the L.index of every item). While premature optimization is the root of all evil in programming, deliberately picking an O(N squared) approach when an O(N log N) one is available just goes too much against the grain of scalability!-)
Finally, for those who prefer "oneliners" to clarity and performance, a bonus 1-liner version with suitably mangled names:-).
from itertools import groupby as g
def most_common_oneliner(L):
return max(g(sorted(L)), key=lambda(x, v):(len(list(v)),-L.index(x)))[0]
What you want is known in statistics as mode, and Python of course has a built-in function to do exactly that for you:
>>> from statistics import mode
>>> mode([1, 2, 2, 3, 3, 3, 3, 3, 4, 5, 6, 6, 6])
3
Note that if there is no "most common element" such as cases where the top two are tied, this will raise StatisticsError on Python
<=3.7, and on 3.8 onwards it will return the first one encountered.
Without the requirement about the lowest index, you can use collections.Counter for this:
from collections import Counter
a = [1936, 2401, 2916, 4761, 9216, 9216, 9604, 9801]
c = Counter(a)
print(c.most_common(1)) # the one most common element... 2 would mean the 2 most common
[(9216, 2)] # a set containing the element, and it's count in 'a'
If they are not hashable, you can sort them and do a single loop over the result counting the items (identical items will be next to each other). But it might be faster to make them hashable and use a dict.
def most_common(lst):
cur_length = 0
max_length = 0
cur_i = 0
max_i = 0
cur_item = None
max_item = None
for i, item in sorted(enumerate(lst), key=lambda x: x[1]):
if cur_item is None or cur_item != item:
if cur_length > max_length or (cur_length == max_length and cur_i < max_i):
max_length = cur_length
max_i = cur_i
max_item = cur_item
cur_length = 1
cur_i = i
cur_item = item
else:
cur_length += 1
if cur_length > max_length or (cur_length == max_length and cur_i < max_i):
return cur_item
return max_item
This is an O(n) solution.
mydict = {}
cnt, itm = 0, ''
for item in reversed(lst):
mydict[item] = mydict.get(item, 0) + 1
if mydict[item] >= cnt :
cnt, itm = mydict[item], item
print itm
(reversed is used to make sure that it returns the lowest index item)
Sort a copy of the list and find the longest run. You can decorate the list before sorting it with the index of each element, and then choose the run that starts with the lowest index in the case of a tie.
A one-liner:
def most_common (lst):
return max(((item, lst.count(item)) for item in set(lst)), key=lambda a: a[1])[0]
I am doing this using scipy stat module and lambda:
import scipy.stats
lst = [1,2,3,4,5,6,7,5]
most_freq_val = lambda x: scipy.stats.mode(x)[0][0]
print(most_freq_val(lst))
Result:
most_freq_val = 5
# use Decorate, Sort, Undecorate to solve the problem
def most_common(iterable):
# Make a list with tuples: (item, index)
# The index will be used later to break ties for most common item.
lst = [(x, i) for i, x in enumerate(iterable)]
lst.sort()
# lst_final will also be a list of tuples: (count, index, item)
# Sorting on this list will find us the most common item, and the index
# will break ties so the one listed first wins. Count is negative so
# largest count will have lowest value and sort first.
lst_final = []
# Get an iterator for our new list...
itr = iter(lst)
# ...and pop the first tuple off. Setup current state vars for loop.
count = 1
tup = next(itr)
x_cur, i_cur = tup
# Loop over sorted list of tuples, counting occurrences of item.
for tup in itr:
# Same item again?
if x_cur == tup[0]:
# Yes, same item; increment count
count += 1
else:
# No, new item, so write previous current item to lst_final...
t = (-count, i_cur, x_cur)
lst_final.append(t)
# ...and reset current state vars for loop.
x_cur, i_cur = tup
count = 1
# Write final item after loop ends
t = (-count, i_cur, x_cur)
lst_final.append(t)
lst_final.sort()
answer = lst_final[0][2]
return answer
print most_common(['x', 'e', 'a', 'e', 'a', 'e', 'e']) # prints 'e'
print most_common(['goose', 'duck', 'duck', 'goose']) # prints 'goose'
Simple one line solution
moc= max([(lst.count(chr),chr) for chr in set(lst)])
It will return most frequent element with its frequency.
You probably don't need this anymore, but this is what I did for a similar problem. (It looks longer than it is because of the comments.)
itemList = ['hi', 'hi', 'hello', 'bye']
counter = {}
maxItemCount = 0
for item in itemList:
try:
# Referencing this will cause a KeyError exception
# if it doesn't already exist
counter[item]
# ... meaning if we get this far it didn't happen so
# we'll increment
counter[item] += 1
except KeyError:
# If we got a KeyError we need to create the
# dictionary key
counter[item] = 1
# Keep overwriting maxItemCount with the latest number,
# if it's higher than the existing itemCount
if counter[item] > maxItemCount:
maxItemCount = counter[item]
mostPopularItem = item
print mostPopularItem
Building on Luiz's answer, but satisfying the "in case of draws the item with the lowest index should be returned" condition:
from statistics import mode, StatisticsError
def most_common(l):
try:
return mode(l)
except StatisticsError as e:
# will only return the first element if no unique mode found
if 'no unique mode' in e.args[0]:
return l[0]
# this is for "StatisticsError: no mode for empty data"
# after calling mode([])
raise
Example:
>>> most_common(['a', 'b', 'b'])
'b'
>>> most_common([1, 2])
1
>>> most_common([])
StatisticsError: no mode for empty data
ans = [1, 1, 0, 0, 1, 1]
all_ans = {ans.count(ans[i]): ans[i] for i in range(len(ans))}
print(all_ans)
all_ans={4: 1, 2: 0}
max_key = max(all_ans.keys())
4
print(all_ans[max_key])
1
#This will return the list sorted by frequency:
def orderByFrequency(list):
listUniqueValues = np.unique(list)
listQty = []
listOrderedByFrequency = []
for i in range(len(listUniqueValues)):
listQty.append(list.count(listUniqueValues[i]))
for i in range(len(listQty)):
index_bigger = np.argmax(listQty)
for j in range(listQty[index_bigger]):
listOrderedByFrequency.append(listUniqueValues[index_bigger])
listQty[index_bigger] = -1
return listOrderedByFrequency
#And this will return a list with the most frequent values in a list:
def getMostFrequentValues(list):
if (len(list) <= 1):
return list
list_most_frequent = []
list_ordered_by_frequency = orderByFrequency(list)
list_most_frequent.append(list_ordered_by_frequency[0])
frequency = list_ordered_by_frequency.count(list_ordered_by_frequency[0])
index = 0
while(index < len(list_ordered_by_frequency)):
index = index + frequency
if(index < len(list_ordered_by_frequency)):
testValue = list_ordered_by_frequency[index]
testValueFrequency = list_ordered_by_frequency.count(testValue)
if (testValueFrequency == frequency):
list_most_frequent.append(testValue)
else:
break
return list_most_frequent
#tests:
print(getMostFrequentValues([]))
print(getMostFrequentValues([1]))
print(getMostFrequentValues([1,1]))
print(getMostFrequentValues([2,1]))
print(getMostFrequentValues([2,2,1]))
print(getMostFrequentValues([1,2,1,2]))
print(getMostFrequentValues([1,2,1,2,2]))
print(getMostFrequentValues([3,2,3,5,6,3,2,2]))
print(getMostFrequentValues([1,2,2,60,50,3,3,50,3,4,50,4,4,60,60]))
Results:
[]
[1]
[1]
[1, 2]
[2]
[1, 2]
[2]
[2, 3]
[3, 4, 50, 60]
Here:
def most_common(l):
max = 0
maxitem = None
for x in set(l):
count = l.count(x)
if count > max:
max = count
maxitem = x
return maxitem
I have a vague feeling there is a method somewhere in the standard library that will give you the count of each element, but I can't find it.
This is the obvious slow solution (O(n^2)) if neither sorting nor hashing is feasible, but equality comparison (==) is available:
def most_common(items):
if not items:
raise ValueError
fitems = []
best_idx = 0
for item in items:
item_missing = True
i = 0
for fitem in fitems:
if fitem[0] == item:
fitem[1] += 1
d = fitem[1] - fitems[best_idx][1]
if d > 0 or (d == 0 and fitems[best_idx][2] > fitem[2]):
best_idx = i
item_missing = False
break
i += 1
if item_missing:
fitems.append([item, 1, i])
return items[best_idx]
But making your items hashable or sortable (as recommended by other answers) would almost always make finding the most common element faster if the length of your list (n) is large. O(n) on average with hashing, and O(n*log(n)) at worst for sorting.
>>> li = ['goose', 'duck', 'duck']
>>> def foo(li):
st = set(li)
mx = -1
for each in st:
temp = li.count(each):
if mx < temp:
mx = temp
h = each
return h
>>> foo(li)
'duck'
I needed to do this in a recent program. I'll admit it, I couldn't understand Alex's answer, so this is what I ended up with.
def mostPopular(l):
mpEl=None
mpIndex=0
mpCount=0
curEl=None
curCount=0
for i, el in sorted(enumerate(l), key=lambda x: (x[1], x[0]), reverse=True):
curCount=curCount+1 if el==curEl else 1
curEl=el
if curCount>mpCount \
or (curCount==mpCount and i<mpIndex):
mpEl=curEl
mpIndex=i
mpCount=curCount
return mpEl, mpCount, mpIndex
I timed it against Alex's solution and it's about 10-15% faster for short lists, but once you go over 100 elements or more (tested up to 200000) it's about 20% slower.
def most_frequent(List):
counter = 0
num = List[0]
for i in List:
curr_frequency = List.count(i)
if(curr_frequency> counter):
counter = curr_frequency
num = i
return num
List = [2, 1, 2, 2, 1, 3]
print(most_frequent(List))
Hi this is a very simple solution, with linear time complexity
L = ['goose', 'duck', 'duck']
def most_common(L):
current_winner = 0
max_repeated = None
for i in L:
amount_times = L.count(i)
if amount_times > current_winner:
current_winner = amount_times
max_repeated = i
return max_repeated
print(most_common(L))
"duck"
Where number, is the element in the list that repeats most of the time
numbers = [1, 3, 7, 4, 3, 0, 3, 6, 3]
max_repeat_num = max(numbers, key=numbers.count) *# which number most* frequently
max_repeat = numbers.count(max_repeat_num) *#how many times*
print(f" the number {max_repeat_num} is repeated{max_repeat} times")
def mostCommonElement(list):
count = {} // dict holder
max = 0 // keep track of the count by key
result = None // holder when count is greater than max
for i in list:
if i not in count:
count[i] = 1
else:
count[i] += 1
if count[i] > max:
max = count[i]
result = i
return result
mostCommonElement(["a","b","a","c"]) -> "a"
The most common element should be the one which is appearing more than N/2 times in the array where N being the len(array). The below technique will do it in O(n) time complexity, with just consuming O(1) auxiliary space.
from collections import Counter
def majorityElement(arr):
majority_elem = Counter(arr)
size = len(arr)
for key, val in majority_elem.items():
if val > size/2:
return key
return -1
def most_common(lst):
if max([lst.count(i)for i in lst]) == 1:
return False
else:
return max(set(lst), key=lst.count)
def popular(L):
C={}
for a in L:
C[a]=L.count(a)
for b in C.keys():
if C[b]==max(C.values()):
return b
L=[2,3,5,3,6,3,6,3,6,3,7,467,4,7,4]
print popular(L)

How to loop through a constantly updating list?

for i in range(0, len(list_stops)):
for j in range(1, len(list_stops[i])):
current = stops_from_stop(list_stops[i][j])
list_stops.extend(current)
for k in range(0, len(current)):
for m in range(0, len(current[k])):
list_stops_x.extend([current[k][m]])
if id_b in list_stops_x:
#rest of code
list_stops is a list of lists. Eg [[1,2,3], [4,5,6]]
list_stops_x is a single list of all the numbers in list_stops. Eg [1,2,3,4,5,6]. Basically used as a condition to enter the rest of the code with a return statement at the end, so the loop does not repeat.
I find that the loop ends after reaching the final index of the first version of list_stops, but I am constantly extending list_stops and want the loop to carry on into the extensions. So for example if I extend [7,8,9] to list_stops in the loop, if id_b is not found I still want it to loop through [7,8,9], but it stops at 6.
Note: This is only a section of the entire function, but I am quite sure the problem lies here. This is also for an introductory programming course, so a simple solution will do :) The full code is below
def find_path(stops, routes, stop_a, stop_b):
id_a = stop_a[0]
id_b = stop_b[0]
unused = unused_stops()
if id_b in list(unused):
return []
total_route = list()
all_stops = stops_from_stop(id_a)
list_stops_x = stops_from_stop_x(id_a)
list_stops = stops_from_stop(id_a)
for index in range(0, len(all_stops)):
if id_b in all_stops[index]:
return find_route(stops, routes, stop_a, stop_b)
for i in range(0, len(list_stops)):
for j in range(1, len(list_stops[i])):
current = stops_from_stop(list_stops[i][j])
list_stops.extend(current)
for k in range(0, len(current)):
for m in range(0, len(current[k])):
list_stops_x.extend([current[k][m]])
if id_b in list_stops_x:
stops_used_rev = [id_b]
last_route = list_stops[len(list_stops) - 1]
current_stop = last_route[0]
stops_used_rev += [current_stop]
for i in range(0, len(list_stops)):
if (current_stop in list_stops[i]) and (list_stops[i][0] == id_a):
stops_used_rev += [id_a]
break
elif current_stop in list_stops[i]:
current_stop = last_route[0]
stops_used_rev += [current_stop]
stops_used = stops_used_rev[::-1]
for index in range(0, len(stops_used) - 1):
total_route.extend(find_route(stops, routes, stops[stops_used[index]], stops[stops_used[index + 1]]))
return total_route
stops_from_stop finds the list stops accessible from the current stop and appends to another list. stops_from_stops_x does the same but extends instead
So the issue is that we use the range(0, len(list_stops)) if we instead use enumerate in the following way, BEWARE INFINITE LOOP, due too we keep adding elements to the list. So be careful, but this should give the desired result. I have changed some part of the code so I could run it.
Enumerate makes it possible to both get the item of the list (val) and the index that we are currently at.
list_stops = [[1,2,3], [4,5,6]]
list_stops_x = [1,2,3,4,5,6]
newer = [[7, 8, 9], [10, 11, 12]]
id_b = 9
for i, val in enumerate(list_stops):
print(val)
for j in range(1, len(list_stops[i])):
current = newer
list_stops.extend(current)
for k in range(0, len(current)):
for m in range(0, len(current[k])):
list_stops_x.extend([current[k][m]])
# if id_b in list_stops_x:
# print("id_b in")
# break
EDIT 1
in your code that was in the edit suggestion you have loops that look like the following:
for i in range(0, len(list_stops)):
...
These should be replace with the following to fix the issue
for i, val in enumerate(list_stops):
...
I have a difficult time of testing the code, but try replace the for loops with the type that i provided and let me know
Edit 2
If we keep adding to the list ofcourse it will loop infinitely unless we exit somewhere. You can see this example that I add elements to list a from list b and then remove the item. As you see from the output we loop eight times so we know it works, you should reflect such changes in your code
a = [1, 2, 3, 4]
b = [5, 6, 7, 8]
for idx, val in enumerate(a):
print("Loop Count: " + str(idx))
if b:
a.append(b[0])
b.remove(b[0])
Loop Count: 0
Loop Count: 1
Loop Count: 2
Loop Count: 3
Loop Count: 4
Loop Count: 5
Loop Count: 6
Loop Count: 7

It the any proper way how to take a two byte elemetns from list, concat them, and convert them to integer

I have a list with 4 element which contain integers
data = [134, 2, 4, 170]
hexdata = [0x86, 0x2, 0x4, 0xAA]
i need to get hex data from two last elements eg. (0x04 and 0xAA)
concatenate them to this view 0x04AA and convert to int
in the end i need to get integer with value = 1194.
i am stuck in this task/
data = [134, 2, 4, 170]
for x in data:
print("0x%x" % (x), end=" ")
print()
c = "0x%x%x" % (data[2], data[3])
print(c)
print(int(c))
Traceback (most recent call last):
File "123.py", line 7, in <module>
print(int(c))
ValueError: invalid literal for int() with base 10: '0x4aa'
You don't need to bother with string formatting here - use int.from_bytes instead, eg:
data = [134, 2, 4, 170]
res = int.from_bytes(data[-2:], 'big')
# 1194
data = [134, 2, 4, 170]
result = data[-2] << 8 | data[-1]
Simply multiply the 4 accordingly and add it up? No need to go hex on it ...
data = [134, 2, 4, 170]
rv = data[2]*256 + data[3] # 0x04AA == 0x04*256 + 0xAA
print(rv)
Output:
1194

Ugly 2 dimensional list. Why?

I'm trying to figure out why my list looks ugly when printed:
alfa = []
alfa.append([])
alfa.append([])
a = 0
a = float(a)
print("Input the points, one per line as x,y.\nStop by entering an empty line.")
while a == 0:
start = input()
if start == '':
a = a + 1
else:
alfa[0].append(start.split(",")[0:1])
alfa[1].append(start.split(",")[1:2])
print(alfa)
with input of:
2,3
12,56
1,2
a
I get this:
[[['2'], ['12'], ['1']], [['3'], ['56'], ['2']]]
While if i try this simple Program found online:
elements = []
elements.append([])
elements.append([])
elements[0].append(1)
elements[0].append(2)
elements[1].append(3)
elements[1].append(4)
print(elements[0][0])
print(elements)
I get this:
[[1, 2], [3, 4]]
Why is this result much tidier than mine?
Try:
alfa[0].append(int(start.split(",")[0]))
alfa[1].append(int(start.split(",")[1]))
>>>[[2, 12, 1], [3, 56, 2]]
You're getting the quote marks because input() is interpreting the input as a string. It doesn't know that you want what you've typed to be a number, so it has to handle it in a default way. You have to tell the code that the input should be interpreted as an int.
Secondly, you're slicing the arrays when you use [0:1] to get an array consisting of the entries from 0 to 0, which is the same as getting element 0 directly, except you get an array with one element rather than just the element you want. Essentially, you are inserting [2] rather than 2.
The data from your input is strings, as shown by the quotation marks. Cast your strings to integers after the input. If you want to have the [1, 2] formatting without the extra brackets then you need to place numbers in alfa[0] and alfa[1] etc..
alfa = []
alfa.append([])
alfa.append([])
a = 0
a = float(a)
print("Input the points, one per line as x,y.\nStop by entering an empty line.")
while a == 0:
start = input()
if start == '':
a = a + 1
else:
alfa[0].append(int(start.split(",")[0]))
alfa[1].append(int(start.split(",")[1]))
print(alfa)
Oh, I see #Andrew McDowell has beat me to this. Well here you go anyway...

The error message TypeError: 'int' object does not support item assignment

factor = int(input("Which table would you like: "))
timestable = ([0,0])
for count in range(1,13):
timestable.append([0,0])
result = factor * count
timestable[count][0] = count
timestable [count][1] = result
for row in timestable:
print(row)
This is a program that allows a user to enter in a times table and prints out 1 * the number to 12 * the number. But whenever I go to run the code, I get this error message:
timestable[count][0] = count
TypeError: 'int' object does not support item assignment
Does anyone know what I have to change in my code?
As noted in comments, the problem is that the line timestable = ([0,0]) initializes timestable as just [0, 0]. Thus, after your first append, timestable looks like this: [0, 0, [0, 0]] instead of [[0, 0], [0, 0]], and the value behind timestable[count] is not the newly appended [0,0] but just the second 0 from initialization.
Maybe you wanted to create a one-tuple holding a list, but then you'd have to use ([0,0],) (note the trailing comma), but this won't do you any good, either, as you can not append to tuples. Instead, you should initialize it as a nested list. Also, you can shorten the body of the loop by not first appending zeros and then overwriting those zeros, but appending the correct values directly.
timestable = [[0,0]]
for count in range(1, 13):
timestable.append([count, factor * count])
However, you do not need the separate initialization and loop at all; you an just create timestable in a single list comprehension (note that here, the range starts from 0):
timestable = [[count, factor * count] for count in range(0, 13)]

Resources