程序代写代做代考 python data structure ISYS90088

ISYS90088
Introduction to Application

Development

Week 8 – Contd. from week 6: tuples & Dictionaries
Semester 2 , 2018

Dr Antonette Mendoza

s

1

2

Objectives

After completing this lecture, you will be able
to:

•  Work with Tuples
•  Work with Dictionaries

 

3

Lists, tuples and Dictionaries

•  A list allows the programmer to manipulate
a sequence of data values of any types
-  Indicate by enclosing its elements in []

4

Lists, tuples and Dictionaries

•  A list allows the programmer to manipulate
a sequence of data values of any types
-  Indicate by enclosing its elements in []

•  A tuple resembles a list, but is immutable
– Indicate by enclosing its elements in ()

5

Tuples

•  A tuple resembles a list, but is immutable
– Indicate by enclosing its elements in ()

•  The differences between tuples and lists are:
–  the tuples cannot be changed unlike lists
–  tuples use parentheses, whereas lists use square

brackets

•  Creating a tuple is as simple as putting different
comma-separated values.

Fundamentals of
Python: First Programs 6

Tuples
•  Lists can be converted to tuples; two sets of tuples

can be concatenated
•  For example:

•  Most of the operators and functions used with lists

can be used in a similar fashion with tuples

7

Tuples
•  Most of the operators and functions used with

lists can be used in a similar fashion with tuples:
– The empty tuple is written as two parentheses
containing nothing

 
 
  tup1 = ();

 
 
-­‐
 To write a tuple containing a single value you have to
include a comma, even though there is only one value

 
 
 
 tup1 = (50,);

8

Tuples
•  Most of the operators and functions used with

lists can be used in a similar fashion with tuples:
– The empty tuple is written as two parentheses
containing nothing

 
 
  tup1 = ();
 for lists: list1 = []
-­‐
 To write a tuple containing a single value you have to
include a comma, even though there is only one value

 
 
 
 tup1 = (50,);
For lists: list1 = [50]

9

Tuples
•  Like string indices, tuple indices start at 0. The operations

performed are: concatenation, iteration, in, slicing and indexing

•  Accessing Values in Tuples: use the square brackets for slicing
along with the index or indices to obtain value available at that
index.

•  Updating Tuples – Tuples are immutable which means you

cannot update or change the values of tuple elements.

•  Delete Tuple Elements – Removing individual tuple elements is

not possible.

10

Tuples
Ø  To explicitly remove an entire tuple, just use the del statement. For

example:

tuple1 = (‘physics’, ‘chemistry’, 1997, 2000)
print (tuple1)
del tuple1
print (“After deleting tuple : “)
print (tuple1)

 

•  This produces the following result (check example). Note an exception
raised, this is because after del tup tuple does not exist any more.

Example:
>>>tuple3 = (1,2,3)
>>>list(tuple3)
[1,2,3]

 

11

Tuples

Built-in Tuple Functions can be used:
## length, max and min in a tuple

tuple1, tuple2 = (‘zar’, ‘xyz’, ‘zara’), (100, 500, 20)
print (“Max value element : “, max(tuple1))
print (“Max value element : “, max(tuple2))
print (“Min value element : “, min(tuple1))
print (“Min value element : “, min(tuple2))
print (“First tuple length : “, len(tuple1))
print (“Second tuple length : “, len(tuple2))

#convert a list of items into tuples
Listofitems = [23, ‘years’, ‘dogs’, ‘cats’];
toaTuple = tuple(Listofitems)
print (“Tuple elements : “, toaTuple)

Difference between lists and tuples
•  Lists are mutable. Lists however have this method called append. In order

for most of your appends to be fast, python will actually create a larger
array in memory just in case you append. 

•  This way, when you do append, it does not have to recreate a list every
time. You can add items to the list .How would it know that you don’t
want to maybe add a 4th 5th 6th element? To play safe, we assume you
might want more in the memory

•  On the other hand, by using tuples, it tells python that you want an
immutable structure. Give me space for 3 things, fill those slots up, and
move on.

•  Since tuples are immutable, this means that tuples are fixed. We can’t do
anything to them in memory.

•  Performance: processing of tuples is said to be faster than list processing
•  Using tuples is safe: Since they are immutable, we cant change content of

the tuple. This can be useful when you don’t want any data modified by
your code

12

13

Lists, tuples and Dictionaries

•  A list allows the programmer to manipulate a
sequence of data values of any types
-  Indicate by enclosing its elements in []

•  A tuple resembles a list, but is immutable
–  Indicate by enclosing its elements in ()

•  A dictionary organizes data values by association
with other data values rather than by ‘sequential
position’

•  Lists and dictionaries provide powerful ways to

organize data in useful and interesting applications

Fundamentals of Python: First Programs 14

Dictionaries

•  A dictionary organizes information by
association, not position
– Example: When you use a dictionary to look up the

definition of “Mammal,” you don’t start at page 1;
instead, you turn to the words beginning with “M”

•  Data structures organized by association are also
called tables or association lists

•  In Python, a dictionary associates a set of keys
with data values

Fundamentals of Python: First Programs 15

Dictionary Literals

•  A Python dictionary is written as a sequence of key/
value pairs separated by commas

– Pairs are sometimes called entries
– Enclosed in curly braces ({ and })
– A colon (:) separates a key and its value

•  Examples:
{‘Sarah’:’476-3321′, ‘Nathan’:’351-7743′} #A Phone book
{‘Name’:’Molly’, ‘Age’:18} # Personal information
{} #An empty dictionary

Mixing data types in a dictionary

•  Keys in a dictionary are immutable but their associated values can be
of any type. For example, the values can be lists.

d1 = {‘matt’: [23, 2000, 2010], ‘anne’: [25, 2545, 2012], ‘jack’:
[34, 2500, 2011]}

•  The values stored in a single dictionary can be of different types. For

example one element in the dictionary can be a string, another an
integer, another a float etc..

Example:
>>> employee_record = {‘name’:’kevin’, ‘Age’: 43,
‘ID’:23145, ‘payrate’:24.99}
>>>employee_record
{‘Age’: 43, ‘name’: ‘kevin’, ‘ID’: 23145,
‘payrate’: 24.99}

Properties of Dictionary Keys

 Dictionary values have no restrictions. However, same is
not true for the keys. There exists a mapping between keys
and the values. There are two important points to
remember about dictionary keys −

(a) More than one entry per key not allowed. Which means
no duplicate key is allowed. When duplicate keys
encountered during assignment, the last assignment wins.
For example −

>>>dict = {‘Name’: ’Anne’, ‘Age’: 10, ‘Name’: ’Jack’}
>>> print (“dict[‘Name’]: “, dict[‘Name’])

When the above code is executed, it produces the following
result −

dict[‘Name’]: ‘jack’ => Why?

Dictionaries: as hash tables to explain
immutability

(b) Keys are immutable. For example, when you insert a
key into a hash table, the hash table asks the key for its
hash code, and remembers it along with the key itself and
the associated value. When you later perform a lookup,
the hash table asks the key you’re looking for its hash
code, and can very quickly find all the keys in the table
that have the same hash code.
•  If a key is mutable, then finding the value associated

with the unique key is not possible – the hash table
would be messed up as you wont know accurately the
associated value to the specific key.

Fundamentals of Python: First Programs 19

Adding Keys and Replacing Values

•  Add a new key/value pair to a dictionary using []:

•  Example:

•  Use [] to replace a value at an existing key:

Fundamentals of Python: First Programs 20

Accessing Values

•  Use [] to obtain the value associated with a key
–  If key is not present in dictionary, an error is raised

•  If the existence of a key is uncertain, test for it using the
dictionary method get

21

Deleting elements

•  To delete an existing key-value pair from a dictionary,
use the del statement. After the statement is executed,
the key and its associated value will be deleted from the
dictionary.

•  If the key does not exist, a KeyError exception is raised.
Syntax:

del dictionary_name[key]

Note: To prevent the KeyError from being raised, use the in
opeartor to determine whether the key exists before you try to
delete it and its associated value.

Dict: Del and Clear

>>>dict = {‘Name’: ’Anne’, ‘Age’: 10, ‘Class’:
’Third’}

>>>del dict[‘Name’]; # remove entry with key
‘Name’

What is the output?

>>>dict.clear(); # remove all entries in dict

What is the output?

>>>del dict ; # delete entire dictionary

What is the output?

Using in and not in operators to test
for a value in a Dictionary

#illustrate in operator to find a value in dict
phonebook = {‘jack’:’0423123′, ‘jill’:’2345433′,
‘jane’:’3334444′}

if ‘jack’ in phonebook:
print(phonebook[‘jack’])
else:
print(‘not found’)

# to illustrate not in operator to find a value in
dictionary
if ‘jacky’ not in phonebook:
print(‘not found’)

Using the for loop to iterate over a
Dictionary – traverse thru’ a dictionary

for var in :
statement
statement


Example:
employee_record = {‘name’:’kevin’, ‘Age’: 43,
‘ID’:23145, ‘payrate’:24.99}
for key in employee_record:
print(key)

Note: when the dict is printed, the order is different from the initial
order in the dict. This means accessing elements using an index is not
possible in dictionaries.

25

Traversing a Dictionary

•  To print all of the keys and their values:
info = {‘apple’: ‘jack’, ‘banana’:’jill’, ‘pears’: ‘brad’}

•  Alternative: Use the dictionary method items()

–  Entries are represented as tuples within the list

•  You can sort the list first:

Assessing information: check this!

>>> d1 = {‘matt’: [23, 2000, 2010],
‘anne’: [25, 2545, 2012], ‘jack’:
[34, 2500, 2011]}

>>> if ‘jack’ in d1:
print(d1[‘jack’])

[34, 2500, 2011]
>>> d1[‘jack’][2]
2011

Example code : check this out!

info = {‘apple’: [‘jack’, ‘jane’], ‘banana’:
[‘jill’], ‘pears’: [‘brad’, ‘sally’]}
keylist = list (info.keys())
keylist.sort() #sorted this list
for key in keylist:
print(key, info[key])
print(key, info[key][0])

What does this output?

Try this – dictionary with a list of values
for a key

list1 = []
d1 = {‘matt’: [23, 2000, 2010], ‘anne’:
[25, 2545, 2012], ‘jack’:
[34, 2500, 2011]}
for list1 in d1[‘matt’]:

print(list1)

What is the output?

Getting the number of elements in a
dictionary using len

•  Use the built in method called len

Example:

>>> employee_record = {‘name’:’kevin’,
‘Age’: 43, ‘ID’:23145, ‘payrate’:24.99}
>>>len(employee_record)
4

Other Dictionary methods: clear

•  Use the built in method called clear
Syntax:

dictionary_name.clear()

Example:
>>> employee_record = {‘name’:’kevin’,
‘Age’: 43, ‘ID’:23145, ‘payrate’:24.99}
>>> employee_record.clear()
>>> employee_record
{}

Other Dictionary methods: get

•  Use the built in method called get
•  When executed, this methods outputs the value associated with

the key that is searched. If not present, will output the default
value as shown in the example.

Syntax:
dictionary_name.get(key, default)

Example:

>>> employee_record = {‘name’:’kevin’, ‘Age’:
43, ‘ID’:23145, ‘payrate’:24.99}
>>> employee_record.get(‘name’, ‘not found’}
‘kevin’
>>> employee_record.get(‘dob’, ‘not found’)
‘not found’

Other Dictionary methods: items

•  Use the built in method called items
•  When executed, it outputs all the key-value pairs in a

dictionary view.
Syntax:

dictionary_name.items()

Example:

>>> employee_record = {‘name’:’kevin’,
‘Age’: 43, ‘ID’:23145, ‘payrate’:24.99}
>>> employee_record.items()
dict_items([(‘payrate’, 24.99), (‘name’,
‘kevin’), (‘ID’, 23145), (‘Age’, 43)])

Other Dictionary methods: keys

•  Use the built in method called keys
•  When executed, it outputs all the keys
Syntax:

dictionary_name.keys()

Example:

>>> employee_record = {‘name’:’kevin’,
‘Age’: 43, ‘ID’:23145, ‘payrate’:24.99}
>>> employee_record.keys()
ID
payrate
name
Age

Other Dictionary methods: values

•  Use the built in method called values
•  When executed, it outputs all the values in the dict
Syntax:

dictionary_name.values()

Example:

>>> employee_record = {‘name’:’kevin’,
‘Age’: 43, ‘ID’:23145, ‘payrate’:24.99}
>>> employee_record.values()
24.99
kevin
23145
43

Other Dictionary methods: pop and
popitem

•  Use the built in method called pop
•  When executed, it outputs the value associated with the

specific key and removes it from the dict.
Syntax:

dictionary_name.pop(key, default)

Example:
>>> employee_record = {‘name’:’kevin’, ‘Age’: 43,
‘ID’:23145, ‘payrate’:24.99}
>>> employee_record.pop(‘name’)
‘kevin’
>>> employee_record
{‘payrate’: 24.99, ‘ID’: 23145, ‘Age’: 43}
>>>

Other Dictionary methods: pop and
popitem

•  Use the built in method called popitem
•  When executed, it outputs a key-value pair, and it removes that

key-value pair from the dict. (front of the list/dict – last in first
out)

Syntax:
dictionary_name.popitem()

Example:
>>> employee_record
{‘payrate’: 24.99, ‘name’: ‘kevin’, ‘ID’: 23145, ‘Age’:
45}
>>> employee_record.popitem()
(‘payrate’, 24.99)
>>> employee_record.popitem()
(‘name’, ‘kevin’)
>>> employee_record.popitem()
(‘ID’, 23145)
>>>

Fundamentals of Python: First Programs 37

Traversing: using list and dict methods

>>> employee_record = {‘name’:’kevin’,
‘Age’: 43, ‘ID’:23145, ‘payrate’:24.99}
>>> list(employee_record.keys())
[‘payrate’, ‘name’, ‘ID’, ‘Age’]
>>> list(employee_record.values())
[24.99, ‘kevin’, 23145, 43]
>>> >>> list(employee_record.items())
[(‘payrate’, 24.99), (‘name’, ‘kevin’),
(‘ID’, 23145), (‘Age’, 43)]
>>>

Example: creating a dict from a list
from collections import defaultdict
employee_list = [(‘yosh’,23,2001),
(‘farah’, 22, 2010), (‘matt’, 34, 2000)]

#you can take a list of tuples and make it
#into a dict with key-value pairs
#start with an empty dict, start a for
loop #and append values to a key

d1 = defaultdict(list)
for key, age, start_date in employee_list:

d1[key].append(age)
d1[key].append(start_date)

print(d1, d1.items(), d1.values())