Monday, June 26, 2017

Summer of code 2017: Python, Day 9 Collections: list, dictionary and set


As explained in my Summer of code 2017: Python post I decided to pick up Python

This is officially day 9, today, I looked at Collections in Python, here are my notes

Lists


Lists are mutable sequences, typically used to store collections of homogeneous items

Lists may be constructed in several ways:

  • Using a pair of square brackets to denote the empty list: [] 
  • Using square brackets, separating items with commas: [a], [a, b, c] 
  • Using a list comprehension: [x for x in iterable] 
  • Using the type constructor: list() or list(iterable) 

Lists implement all of the common and mutable sequence operations. Lists also provide the following additional method: sort

Here is what a list looks like in Python before and after the sort method is called

>>> a = [ [2],[4], [1]]
>>> a
[[2], [4], [1]]
>>> a.sort()
>>> a
[[1], [2], [4]]
>>> 

I also played around with making copies of lists

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>>> a = [[1], [2], [4]]
>>> a
[[1], [2], [4]]

>>> b =a[0:1]
>>> b
[[1]]

>>> b =a[0:2]
>>> b
[[1], [2]]

>>> b=a[:]
>>> b
[[1], [2], [4]]

>>> a is b
False

>>> a == b
True

>>> a[0]
[1]

>>> b[0]
[1]

>>> a[0] is b[0]
True

>>> a[2].append(9)
>>> a
[[1], [2], [4, 9]]

>>> b
[[1], [2], [4, 9]]
>>> 


Here is what is going on (I added line numbers so it is easier to look at the code)
On line 1 made a new list a
On line 5 I made a list b with 1 element of list a
On line 9 I made list b have the first 2 elements of list a
On line 13 I made list be be a copy of list a by supplying just the colon
On line 17 you will see that list a and b are not the same, on line 29 you will see that the first element of both lists are the same
If I now append 9 to the 3 rd element of the list, you will see that both list a and b now have the same 3rd element. The reason for this is that the copies are shallow


I decided to try some more things, this time I created a list of words

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>>> l ="SpaceX successfully launches and recovers second Falcon 9 in 48 hours".split()
>>> l
['SpaceX', 'successfully', 'launches', 'and', 'recovers', 'second', 'Falcon', '9',
 'in', '48', 'hours']

>>> i=l.index('Falcon')
>>> i
6

>>> 'launches' in l
True

>>> l.reverse()
>>> l
['hours', '48', 'in', '9', 'Falcon', 'second', 'recovers', 'and', 'launches',
 'successfully', 'SpaceX']

>>> l.sort()
>>> l
['48', '9', 'Falcon', 'SpaceX', 'and', 'hours', 'in', 'launches', 'recovers', 
'second', 'successfully']

>>> l.sort(reverse=True)
>>> l
['successfully', 'second', 'recovers', 'launches', 'in', 'hours', 'and', 'SpaceX', 
'Falcon', '9', '48']
>>> 

On line 1 I created a list by using the split method on a function
On line 6 I am grabbing the index of the item with the value Falcon
On line 10 I am checking if the value launches is part of this list
On line 13 I am reversing the list
On Line 18 I am sorting the list
On Line 23 I am sorting the list in reversed order

Make sure to type True and not true, otherwise you will get the error NameError: name 'true' is not defined
Here is what the error looks like in the console

>>> l.sort(reverse=true)
Traceback (most recent call last):
  File "", line 1, in 
    l.sort(reverse=true)
NameError: name 'true' is not defined





I then decided to play around with deleting items from the list

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>>> l ="SpaceX successfully launches and recovers second Falcon 9 in 48 hours".split()
>>> l
['SpaceX', 'successfully', 'launches', 'and', 'recovers', 'second', 'Falcon', '9',
 'in', '48', 'hours']
>>> del l[1]
>>> l
['SpaceX', 'launches', 'and', 'recovers', 'second', 'Falcon', '9', 'in', '48', 
'hours']
>>> l.remove('recovers')
>>> l
['SpaceX', 'launches', 'and', 'second', 'Falcon', '9', 'in', '48', 'hours']

On line 5 I deleted an item by supplying the index
On line 9 I removed an item by supplying the value

What would happen if the same value is more than once in the list and I removed it by supplying the value?
Let's take a look

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>>> x = ['and', 'and', 'and','boo']
>>> x
['and', 'and', 'and', 'boo']
>>> x.count('and')
3
>>> x.remove('and')
>>> x
['and', 'and', 'boo']
>>> x.count('and')
2
>>> 

On line 1 I created a list with a value of and 3 times
On line 4 we count this value and it returns 3
On line 6 we call the remove method
On line 9 we call count again and the count is now 2, only 1 item got removed.

Here is what the docs have to say

s.remove(x)
remove the first item from s where s[i] == x

As you can see, only the first item will be removed, not all of them with that value


You can grab the last element of a list by using -1

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>>> l ="SpaceX successfully launches and recovers second Falcon 9 in 48 
hours".split()
>>> l
['SpaceX', 'successfully', 'launches', 'and', 'recovers', 'second', 'Falcon', '9', 
'in', '48', 'hours']
>>> l[0]
'SpaceX'
>>> l[-1]
'hours'
>>> 

As you can see, on line 8 we use [-1] and the last element from the list is returned

To insert an item into a list at a specific place, you can use insert

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>>> l ="SpaceX successfully and recovers second Falcon 9 in 48 hours".split()
>>> l
['SpaceX', 'successfully', 'and', 'recovers', 'second', 'Falcon', '9', 'in', 
'48', 'hours']
>>> l.insert(2, 'launches')
>>> l
['SpaceX', 'successfully', 'launches', 'and', 'recovers', 'second', 'Falcon', '9', 
'in', '48', 'hours']
>>> 

As you can see from line 5, we are inserting the value launches as the 3rd item (0 based, so index =2). now the whole list makes sense again


Dict


I also took a look at dictionaries/dicts, a dict in other languages is an associative array. Most likely you will think of dicts as key value pairs

Let's take a look what it looks like, I created a dictionary of stocks with tickers and prices

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>>> stocks ={
'TGT' :  '51.33', 
'AAPL': '147.48',
'MSFT':  '71.49',
'F'   :  '11.12', 
'INTC':  '34.37'}

>>> stocks
{'TGT': '51.33', 'AAPL': '147.48', 'MSFT': '71.49', 'F': '11.12', 'INTC': '34.37'}

>>> stocks['AAPL']
'147.48'

>>> stocks.update({'AAPL': '147.25', 'MSFT': '71.45'})

>>> stocks['AAPL']
'147.25'

>>> stocks['MSFT']
'71.45'
>>> 


On lines 1 till 6 I created a dictionary with 5 items
On line 8 I wanted to see what would be returned if I asked back for it
On line 11 I just asked for the value of key AAPL
On line 15 I updated the value of key AAPL and MSFT
On lines 16 and 19 I asked for the values that I just updated and you can see the values have changed

I also decided to print the dictionary, here is what that looks like

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>>> stocks ={
'TGT' :  '51.33', 
'AAPL': '147.48',
'MSFT':  '71.49',
'F'   :  '11.12', 
'INTC':  '34.37'}

>>> for key in stocks:
    print("{key} = {value}".format(key=key, value=stocks[key]))

    
TGT = 51.33
AAPL = 147.48
MSFT = 71.49
F = 11.12
INTC = 34.37
>>> 


Python also includes a module for pretty printing pprint, I played around with pprint and wrote a separate post about it here: Summer of code 2017: Python, Pretty printing with pprint in Python

Sets


A set is an unordered collection of unique, immutable objects
A set is delimited by { and }

>>> s ={1, 2, 3, 4, 5}
>>> print(s)
{1, 2, 3, 4, 5}

If you just do something like {} it will actually be a dict

>>> y ={}
>>> type(y)
<class 'dict'>
>>> 

To create an empty set use the set() constructor.

>>> x =set()
>>> x
set()
>>> print(x)
set()
>>> type(x)
<class 'set'>

>>> x.add(1)
>>> x
{1}


Printing an empty set just prints set()
As you can see from the output you can use add to add an item to a set


Sets are unique, to quickly remove duplicates, you can convert it to a set

Here is an example

>>> t =[1, 2, 2, 2, 2, 3, 4, 5]
>>> set(t)
{1, 2, 3, 4, 5}

Adding the same value to a set will just ignore it

>>> x={1}
>>> x
{1}
>>> x.add(2)
>>> x
{1, 2}
>>> x.add(2)
>>> x
{1, 2}


To remove items from a set you can user remove or discard, remove will throw an error if the item doesn't exist, discard will not throw an error

Here is an example

>>> x={1}
>>> x
{1}
>>> x.discard(3)
>>> x.remove(3)
Traceback (most recent call last):
  File "", line 1, in 
    x.remove(3)
KeyError: 3
>>> x.discard(3)
>>> 

Set Algebra

If you come from the database/SQL world, the following will look very familiar to you

Here is what sets support

union
Return a new set with elements from the set and all others

intersection
Return a new set with elements common to the set and all others

difference
Return a new set with elements in the set that are not in the others

symmetric_difference
Return a new set with elements in either the set or other but not both

issubset
Test whether every element in the set is in other

issuperset
Test whether every element in other is in the set

isdisjoint

Return True if the set has no elements in common with other. Sets are disjoint if and only if their intersection is the empty set

Here is some code that shows some of these

>>> s1 = {1,2,3,4,5}
>>> s2 = {3,4,5}
>>> s1.union(s2)
{1, 2, 3, 4, 5}
>>> s1.intersection(s2)
{3, 4, 5}
>>> s1.difference(s2)
{1, 2}
>>> s1.symmetric_difference(s2)
{1, 2}
>>> s1.issubset(s2)
False
>>> s1.issuperset(s2)
True
>>> s1.isdisjoint(s2)
False

We need to create some more examples for disjoint and symmetric_difference with different values so you can see what is returned

>>> s1 = {1,2,3,4,5}
>>> s2 ={0,8}
>>> s1.isdisjoint(s2)
True

>>> s1 = {1,2,3,4,5}
>>> s2 ={4,5,6,7}
>>> s1.symmetric_difference(s2)
{1, 2, 3, 6, 7}


That is all for this post... next time I will take a look at are exceptions


Summer of code 2017: Python, Pretty printing with pprint in Python


As explained in my Summer of code 2017: Python post I decided to pick up Python

This post is about using pprint to pretty print.


The pprint module provides a capability to “pretty-print” arbitrary Python data structures in a form which can be used as input to the interpreter. The formatted representation keeps objects on a single line if it can, and breaks them onto multiple lines if they don’t fit within the allowed width. Construct PrettyPrinter objects explicitly if you need to adjust the width constraint.

Let's take a look at a dictionary

First we do a regular print

>>> stocks ={
'TGT' :  '51.33', 
'AAPL': '147.48',
'MSFT':  '71.49',
'F'   :  '11.12', 
'INTC':  '34.37'}
>>> print(stocks)
{'TGT': '51.33', 'AAPL': '147.48', 'MSFT': '71.49', 'F': '11.12', 'INTC': '34.37'}


As you can see everything is printed on one line


You can print on multiple lines by using a loop and format

stocks ={
'TGT' :  '51.33', 
'AAPL': '147.48',
'MSFT':  '71.49',
'F'   :  '11.12', 
'INTC':  '34.37'}
>>> for key in stocks:
    print("{key} = {value}".format(key=key, value=stocks[key]))

    
TGT = 51.33
AAPL = 147.48
MSFT = 71.49
F = 11.12
INTC = 34.37


Finally let's take a look at what pprint does

>>> stocks ={
'TGT' :  '51.33', 
'AAPL': '147.48',
'MSFT':  '71.49',
'F'   :  '11.12', 
'INTC':  '34.37'}
>>> from pprint import pprint as pp
>>> pp(stocks)
{'AAPL': '147.48',
 'F': '11.12',
 'INTC': '34.37',
 'MSFT': '71.49',
 'TGT': '51.33'}


As you can see, each key value pair is on one line


What about lists?

A list of integers looks pretty much the same

>>> a =  [ [2],[4], [1]]
>>> print(a)
[[2], [4], [1]]
>>> pp(a)
[[2], [4], [1]]


A list of strings is a different story

>>> l ="SpaceX successfully launches and recovers second Falcon 9 in 48 hours".split()
>>> print(l)
['SpaceX', 'successfully', 'launches', 'and', 'recovers', 'second', 'Falcon', '9',
 'in', '48', 'hours']
>>> pp(l)
['SpaceX',
 'successfully',
 'launches',
 'and',
 'recovers',
 'second',
 'Falcon',
 '9',
 'in',
 '48',
 'hours']
>>> 

As you can see that prints the elements on a separate line



The pprint module also supports some keyword parameters like indent, width, depth, let's take a look at indent



>>> import pprint
>>> l ="SpaceX successfully launches and recovers second Falcon 9 in 48 hours".split()
>>> pp = pprint.PrettyPrinter(indent=6)
>>> 
>>> pp.pprint(l)
[     'SpaceX',
      'successfully',
      'launches',
      'and',
      'recovers',
      'second',
      'Falcon',
      '9',
      'in',
      '48',
      'hours']
>>> 

As you can see the values are moved to the right by 6 spaces


Make sure to look at the examples in the docs online to see what other things pprint supports


 

Saturday, June 24, 2017

Summer of code 2017: Python, Day 7 Collections: tuple, str and range


As explained in my Summer of code 2017: Python post I decided to pick up Python

This is officially day 7, today, I looked at Collections in Python, here are my notes

Tuples


 A tuple is a heterogeneous immutable sequence


  • A tuple is delimited by parentheses
  • Items in a tuple are separated by commas
  • Element access in a tuple is done with square brackets and zero-based index t[index]
  • To get the number of elements in a tuple, use len(t)
  • Iterate over a tuple by using a for loop


Here is an example of what I described above

>>> t = ("Denis", "looks", "at", "tuples", 1, 66.100,5)
>>> len(t)
7
>>> t[2]
'at'
>>> t[6]
5
>>> for item in t:
 print(item)

 
Denis
looks
at
tuples
1
66.1
5
>>> 


  • Concatenation of tuples with + operator
  • Repetition of tuples with * operator


Here is an example of the  + operator as well as the * operator


>>> t = ("Denis", 1, 66.100)
>>> t + (3,2)
('Denis', 1, 66.1, 3, 2)
>>> t * 5
('Denis', 1, 66.1, 'Denis', 1, 66.1, 'Denis',
 1, 66.1, 'Denis', 1, 66.1, 'Denis', 1, 66.1)
>>> 

Tuples can contain any type of object
You can nest tuples
You access inner elements by using chain square-brackets indexing

>>> t = (("Denis", "looks") , (1,2), (5.1, 6.1))
>>> t[2][1]
6.1
>>> t[0][1]
'looks'
>>> t[0][0]
'Denis'
>>> 


Min and max functions can be used

>>> z = (1,2,4,7,9)
>>> min(z)
1
>>> max(z)
9

You don't need parentheses when creating tuples, you can ommit them

>>> x =1,4,7,9
>>> min(x)
1
>>> max(x)
9
>>> x
(1, 4, 7, 9)

However when printing the tuple to the console, the parentheses are displayed


Swapping
a, b = b, a is the idiomatic Python swap
Here is what it looks like

>>> x = 'ice'
>>> y = 'cream'
>>> x, y = y, x
>>> x
'cream'
>>> y
'ice'
>>> 

Tuple(iterable) constructor to create tuples from iterable series of objects

>>> tuple("abcdefg")
('a', 'b', 'c', 'd', 'e', 'f', 'g')
>>> 

This can be handy to find the min and max character from a string

>>> x = tuple("abcdefgdddzyyyaaa")
>>> min(x)
'a'
>>> max(x)
'z'
>>> 

To test for membership, you can use in and not in

>>> x = tuple("abcdefgdddzyyyaaa")
>>> "z" in(x)
True
>>> "m" in(x)
False
>>> "m" not in(x)
True
>>> "z" not in(x)
False
>>> 

And that's it for tuples

str

I will use str and string interchangeably in this post
a str is an immutable sequence of Unicode characters

len
Len gives you the number of characters in a str

>>> s = "abc"
>>> len(s)
3
>>> s = "  b  "
>>> len(s)
5
>>> 

As you can see, spaces are counted unlike the LEN function is SQL Server where spaces are trimmed from the end and start of a string

You can concatenate strings by using the + operator but just like in other language this is not efficient because it will create a new object

>>> s ="Den"
>>> s += "is"
>>> s
'Denis'
>>> 

What you should do is use join

Here is an example where we concatenate is to the string y

>>> y ="Den"
>>> ''.join([y,'is'])
'Denis'

As you can see Denis is printed to the console

Partition
The partition() method divides a string into three pieces around a separator: prefix, separator, suffix
In the code below, you can see that firstname and lastname have the values we want after we used partition with the separator

firstname, separator, lastname= "Michael:Jackson".partition(':')
>>> firstname
'Michael'
>>> lastname
'Jackson'

Use an underscore as a dummy name for the separator, this is also used by the many Python tools

>>> firstname, _, lastname= "Michael:Jordan".partition(':')
>>> firstname
'Michael'
>>> lastname
'Jordan'
>>> 

Format
Use format() to insert values into strings, replacement fields are delimited by { and }
Here is an example

>>> 
"My name is {0}, {1} {0}".format("Bond", "James")
'My name is Bond, James Bond'
>>> 


Range


A range is an arithmetic progression of integers, you can specify where to start, where to end and what the step is. A range is half-open, start is included but stop is not

ConstructorArguments Result
range(6) stop 0, 1, 2, 3, 4, 5
range(6, 10) start, stop 6, 7, 8, 9
range(10, 20, 2) start, stop, step10, 12, 14, 16, 18

Here is what it looks like in the console, range(5) will hold numbers between 0 and 4

>>> x = range(5)
>>> x
range(0, 5)
>>> for item in x:
 print(item)

 
0
1
2
3
4
>>> 



Here is what it looks like in the console, range(0, 10) will hold numbers between 0 and 9

>>> x = range(0,10)
>>> for item in x:
 print(item)

 
0
1
2
3
4
5
6
7
8
9



Here is what it looks like in the console, range(0, 10, 2) will hold numbers between 0 and 9, but because step 2 was supplied, it will be on the numbers 0,2,4,6 and 8

>>> x = range(0,10,2)
>>> x
range(0, 10, 2)
>>> for item in x:
 print(item)

 
0
2
4
6
8
>>> 




That it is for today..I will continue with collections and I will look at list, dict and set

Thursday, June 22, 2017

Summer of code 2017: Python, Day 5 Objects


As explained in my Summer of code 2017: Python post I decided to pick up Python

Today is officially day 5, today, I looked at objects in Python, here are my notes

if you do something like this

x = 1000

Python creates an int object with a value of 1000, x now points to this object with a value of 1000
if you now do this
x = 500

Python will not change the value of the object from 1000 to 500 but will instead create another object with a value of 500 and z will now point to that object. The garbage collector will destroy the object with a value of 1000. This all happens because in Python objects are immutable, they cannot change


If you assign  1000 to x, then assign 500 to y, then assign x to y, both are pointing to the same object. You can prove that by using the id() function

In this example below, you will see that after we assign x to y, bot x and y point to the same object with id 50127440


>>> x = 1000
>>> y = 500
>>> y =x
>>> y
1000
>>> x
1000
>>> id(x)
50127440
>>> id(y)
50127440
>>> 


What if you have two variables and assign the same value?

>>> a = 1
>>> b =1
>>> id(a)
499688544
>>> id(b)
499688544
>>> 


As you can see, those also point to the same object

You can also us is to see if 2 objects are the same, so if you do x is y, you will get back True or False


>>> x = 5
>>> y = 5
>>> x is y
True
>>> 



If you do math against a variable, the id will also change

>>> z = 5
>>> id(z)
499688672
>>> z +=2
>>> id(z)
499688736
>>> 



With list it works like this

if you have a list d [1, 2, 3], now you add list e with the values of list d, now both d and e are [1, 2, 3]. If you now modify the list for e to be [1, 1000, 3],  both  e and d are now [1, 1000, 3]. This is because you modified the list object from [1, 2, 3] to [1, 1000, 3] and both d and e point to this list object

Here is what it looks like in IDLE

>>> d = [1, 2, 3]
>>> d
[1, 2, 3]
>>> e = d
>>> e
[1, 2, 3]
>>> e[1] = 1000
>>> e
[1, 1000, 3]
>>> d
[1, 1000, 3]
>>> e is d
True
>>> 


What will happen if we create 2 lists with the same values by assign the values to each list. Now the values are the same

>>> f = [1, 2]
>>> g = [1, 2]
>>> f == g
True
>>> f is g
False
>>> f == f
True


With integers, both is and  == return true

>>> x = 1
>>> y = 1
>>> x == y
True
>>> x  is y
True
>>> 


The is operator determines equality of identity, == determines equivalence


So even though people call these object variables in Python, these are really named references to objects


I also learned about the dir built-in function

Without arguments, return the list of names in the current local scope. With an argument, attempt to return a list of valid attributes for that object.

The default dir() mechanism behaves differently with different types of objects, as it attempts to produce the most relevant, rather than complete, information:


  • If the object is a module object, the list contains the names of the module’s attributes.
  • If the object is a type or class object, the list contains the names of its attributes, and recursively of the attributes of its bases.
  • Otherwise, the list contains the object’s attributes’ names, the names of its class’s attributes, and recursively of the attributes of its class’s base classes.


So for example if we call dir on the math object, it will return all the functions available

>>> import math
>>> type(math)

>>> dir(math)
['__doc__', '__loader__', '__name__', '__package__', '__spec__', 'acos', 'acosh',
 'asin', 'asinh', 'atan', 'atan2', 'atanh', 'ceil', 'copysign', 'cos', 'cosh', 
'degrees', 'e', 'erf', 'erfc', 'exp', 'expm1', 'fabs', 'factorial', 'floor', 'fmod', 
'frexp', 'fsum', 'gamma', 'gcd', 'hypot', 'inf', 'isclose', 'isfinite', 'isinf', 'isnan', 
'ldexp', 'lgamma', 'log', 'log10', 'log1p', 'log2', 'modf', 'nan', 'pi', 'pow', 'radians', 
'sin', 'sinh', 'sqrt', 'tan', 'tanh', 'tau', 'trunc']
>>> math.pi
3.141592653589793
>>> math.pow(2,4)
16.0
>>> 

So this is a quick way to get all the available methods/functions from a class

Tuesday, June 20, 2017

Summer of code 2017: Python local help files


As explained in my Summer of code 2017: Python post I decided to pick up Python

I noticed that Python ships with a help file in chm format ( Compiled HTML Help)



Microsoft Compiled HTML Help is a Microsoft proprietary online help format, consisting of a collection of HTML pages, an index and other navigation tools. The files are compressed and deployed in a binary format with the extension .CHM, for Compiled HTML. The format is often used for software documentation.


I haven't used a chm file since SQL Server 2000 within Query Analyzer. I prefer these files over online files for multiple reason

You don't have to be online to access the help file, you can be coding in a cave without connectivity and you can still pull up help

You can bookmark pages you want to get back to over and over again, these will be in the favorites tab



There is an index tab, this is like the back of a book, it is in alphabetical order and you can quickly find stuff
I typed in string, hit enter and saw the following


Then I clicked on method and was presented with the page you see



Do you use the local help file or do you use the online documentation?


Monday, June 19, 2017

Summer of code 2017: Python, Day 2


As explained in my Summer of code 2017: Python post I decided to pick up Python

Today is officially day 2

I decided to do a lunch and learn today and continue with the PluralSight course: Python Fundamentals

The course continued with Strings. Strings are very similar as strings in other languages

Here are some of the notes for myself of what I learned today


You can use single or double quotes with strings

Universal Newlines, you can use "\n" and it will be a newline on all platforms, this is also part of PEP 278

Multi-line strings are created by using triple quotes

For example

>>> x = """fdfdfdf
dfd
fdf
df
dfdf"""
>>> x
'fdfdfdf\ndfd\nfdf\ndf\ndfdf'
>>> 

As you can see, when the console prints the string, you will see the \n escape characters

Here are some of these escape characters

Escape SequenceMeaningNotes
\newlineBackslash and newline ignored
\\Backslash (\)
\'Single quote (')
\"Double quote (")
\aASCII Bell (BEL)
\bASCII Backspace (BS)
\fASCII Formfeed (FF)
\nASCII Linefeed (LF)
\rASCII Carriage Return (CR)
\tASCII Horizontal Tab (TAB)
\vASCII Vertical Tab (VT)
\oooCharacter with octal value ooo
\xhhCharacter with hex value hh



Escape sequences only recognized in string literals are:

Escape SequenceMeaningNotes
\N{name}Character named name in the Unicode database
\uxxxxCharacter with 16-bit hex value xxxx
\UxxxxxxxxCharacter with 32-bit hex value xxxxxxxx




Formatted String Literals
A formatted string literal or f-string is a string literal that is prefixed with 'f' or 'F'. These strings may contain replacement fields, which are expressions delimited by curly braces {}. While other string literals always have a constant value, formatted strings are really expressions evaluated at run time.

Here is an example

>>> name = "Denis"
>>> f"He said his name is {name!r}."
"He said his name is 'Denis'."
>>> 

Strings are unicode and encoded in UTF-8

After strings, the course continued with bytes, lists, dictionaries and loops




Modularity
This was the next part of this course
Named functions are defned with the def keyword

def function_name(arg1, argn):


For example

>>> def sumvalues(x,y):
    return x + y

>>> sumvalues(4,5)
9
>>> 

If you use a return without a value, the function will return None, but remember that None is not printed from the REPL

If you were to save this function into a file and then import it, it would execute immediately

Python has special attributes that start and end with double underscores, we will look at __main__ and  __name__

'__main__' is the name of the scope in which top-level code executes. A module’s __name__ is set equal to '__main__' when read from standard input, a script, or from an interactive prompt.
A module can discover whether or not it is running in the main scope by checking its own __name__, which allows a common idiom for conditionally executing code in a module when it is run as a script or with python -m but not when it is imported:

Here is an example of that

>>> 
def sumvalues(x,y):
    return x + y

    if __name__ == "__main__":
        sumvalues(x,y)

>>> sumvalues(1,2)
3
>>> 

More here: https://docs.python.org/3/library/__main__.html


I also learned about setting up a main() function
Command line arguments are accessible via sys.argv



This module also covered documenting your code by using docstrings. 
Docstrings are standalone literal strings which are the fist statement
of a function or module


If you have this function

>>> def fib2(n):  # return Fibonacci series up to n
    """Return a list containing the Fibonacci series up to n."""
    result = []
    a, b = 0, 1
    while a < n:
        result.append(a)    # see below
        a, b = b, a+b
    return result
Now if you do a help(fib2) command, you will see the following

>>> help(fib2)
Help on function fib2 in module __main__:

fib2(n)
    Return a list containing the Fibonacci series up to n.

>>> 


I feel I need to spend more time with __main__ and __name__.  
I will do that the next couple of days

Sunday, June 18, 2017

Summer of code 2017: Python, Day 1


As explained in my Summer of code 2017: Python post I decided to pick up Python

Today is officially day 1... but I really started yesterday

I decided to start with the PluralSight course: Python Fundamentals

This course is presented by  Austin Bingham and Robert Smallshire

This is the description for that course

Python Fundamentals gets you started with Python, a dynamic language popular for web development, big data, science, and scripting. What’s so great about Python? Python is powerful. The Python language is expressive and productive, it comes with a great standard library, and it’s the center of a huge universe of wonderful third-party libraries. With Python you can build everything from simple scripts to complex applications, you can do it quickly, and you can do it with fewer lines of code than you might think possible. But for many people those reasons take back-seat to something more important: Python is fun! Python’s readable style, quick edit-and-run development cycle, and “batteries included” philosophy mean that you can sit down and enjoy writing code rather than fighting compilers and thorny syntax. As your experiments become prototypes and your prototypes become products, Python makes the experience of writing software not just easier but truly enjoyable. In the words of Randall Munroe, "Come join us! Programming is fun again!"

Long integers
Python supports really long integers, most languages I worked with support up to 64 bit integers

In Python you can store 2 to the power of 900 in an integer without a problem

That looks like this in scientific notation

8.452712498170644e+270

Or if you were to print this out as an integer

8452712498170643941637436558664265704301557216577944354047371344426782440907597751590676094202515006314790319892114058862117560952042968596008623655407033230534186943984081346699704282822823056848387726531379014466368452684024987821414350380272583623832617294363807973376

That is 271 digits

Here is what it looks like in the console

>>> x = math.pow(2,900)
>>> print ( int(x))
84527124981706439416374365586642657043015572
16577944354047371344426782440907597751590676
09420251500631479031989211405886211756095204
29685960086236554070332305341869439840813466
99704282822823056848387726531379014466368452
68402498782141435038027258362383261729436380
7973376
>>> print ( len(str(x)))
22
>>> print ( len(str(int(x))))
271
>>> 




Python Enhancement Proposal (PEP)

Python's development is conducted largely through the Python Enhancement Proposal (PEP) process. The PEP process is the primary mechanism for proposing major new features, for collecting community input on an issue, and for documenting the design decisions that have gone into Python.

And index with all the PEPs can be found here: https://www.python.org/dev/peps/

PEP number 8 Style Guide for Python Code is an important one, all Python developers should keep that in mind. In this PEP you will see that you should use spaces not tabs for indentation, You should use 4 spaces per indentation level.


Zen of Python

This is another PEP, the Zen of Python is PEP number 20

The Zen of Python is a collection of 20 software principles that influences the design of Python Programming Language, 19 of these are written down, you can see them by entering the statement import this in the Python interpreter


>>> import this
The Zen of Python, by Tim Peters

Beautiful is better than ugly.
Explicit is better than implicit.
Simple is better than complex.
Complex is better than complicated.
Flat is better than nested.
Sparse is better than dense.
Readability counts.
Special cases aren't special enough to break the rules.
Although practicality beats purity.
Errors should never pass silently.
Unless explicitly silenced.
In the face of ambiguity, refuse the temptation to guess.
There should be one-- and preferably only one --obvious way to do it.
Although that way may not be obvious at first unless you're Dutch.
Now is better than never.
Although never is often better than *right* now.
If the implementation is hard to explain, it's a bad idea.
If the implementation is easy to explain, it may be a good idea.
Namespaces are one honking great idea -- let's do more of those!
>>>

That output is the Zen of Python


None

The equivalent of NULL in languages like c#, Java or SQL Server in Python is None

If you assign the None value to a variable and then tried to print it, you won't get anything back

You can however check if a variable has no value by checking for None


>>> y = None
>>> y

>>> 
if y == None:
    print("is none")
else:
    print("is none")
    
is none


I also messed around and struggled to install PyGame, at the end it was pretty simple, you can read that here:  Installing Pygame on windows