Learning Python: From Zero to Hero
This post was originally published at TK's Blog.
First of all, what is Python? According to its creator, Guido van Rossum, Python is a:
“high-level programming language, and its core design philosophy is all about code readability and a syntax which allows programmers to express concepts in a few lines of code.”
For me, the first reason to learn Python was that it is, in fact, a beautiful programming language. It was really natural to code in it and express my thoughts.
Another reason was that we can use coding in Python in multiple ways: data science, web development, and machine learning all shine here. Quora, Pinterest and Spotify all use Python for their backend web development. So let’s learn a bit about it.
You can think about variables as words that store a value. Simple as that.
In Python, it is really easy to define a variable and set a value to it. Imagine you want to store number 1 in a variable called “one.” Let’s do it:
How simple was that? You just assigned the value 1 to the variable “one.”
And you can assign any other value to whatever other variables you want. As you see in the table above, the variable “two” stores the integer 2, and “some_number” stores 10,000.
Besides integers, we can also use booleans (True / False), strings, float, and so many other data types.
2. Control Flow: conditional statements
“If” uses an expression to evaluate whether a statement is True or False. If it is True, it executes what is inside the “if” statement. For example:
2 is greater than 1, so the “print” code is executed.
The “else” statement will be executed if the “if” expression is false.
1 is not greater than 2, so the code inside the “else” statement will be executed.
You can also use an “elif” statement:
3. Looping / Iterator
In Python, we can iterate in different forms. I’ll talk about two: while and for.
While Looping: while the statement is True, the code inside the block will be executed. So, this code will print the number from 1 to 10.
The while loop needs a “loop condition.” If it stays True, it continues iterating. In this example, when
11 the loop condition equals
Another basic bit of code to better understand it:
The loop condition is
True so it keeps iterating — until we set it to
For Looping: you apply the variable “num” to the block, and the “for” statement will iterate it for you. This code will print the same as while code: from 1 to 10.
See? It is so simple. The range starts with
1 and goes until the
11th element (
10 is the
List: Collection | Array | Data Structure
Imagine you want to store the integer 1 in a variable. But maybe now you want to store 2. And 3, 4, 5 …
Do I have another way to store all the integers that I want, but not in millions of variables? You guessed it — there is indeed another way to store them.
List is a collection that can be used to store a list of values (like these integers that you want). So let’s use it:
It is really simple. We created an array and stored it on my_integer.
But maybe you are asking: “How can I get a value from this array?”
List has a concept called index. The first element gets the index 0 (zero). The second gets 1, and so on. You get the idea.
To make it clearer, we can represent the array and each element with its index. I can draw it:
Using the Python syntax, it’s also simple to understand:
Imagine that you don’t want to store integers. You just want to store strings, like a list of your relatives’ names. Mine would look something like this:
It works the same way as integers. Nice.
We just learned how
Lists indices work. But I still need to show you how we can add an element to the
List data structure (an item to a list).
The most common method to add a new value to a
append. Let’s see how it works:
append is super simple. You just need to apply the element (eg. “The Effective Engineer”) as the
Well, enough about
Lists. Let’s talk about another data structure.
Dictionary: Key-Value Data Structure
Now we know that
Lists are indexed with integer numbers. But what if we don’t want to use integer numbers as indices? Some data structures that we can use are numeric, string, or other types of indices.
Let’s learn about the
Dictionary data structure.
Dictionary is a collection of key-value pairs. Here’s what it looks like:
The key is the index pointing to the value. How do we access the
Dictionary value? You guessed it — using the key. Let’s try it:
I created a
Dictionary about me. My name, nickname, and nationality. Those attributes are the
As we learned how to access the
List using index, we also use indices (keys in the
Dictionary context) to access the value stored in the
In the example, I printed a phrase about me using all the values stored in the
Dictionary. Pretty simple, right?
Another cool thing about
Dictionary is that we can use anything as the value. In the
Dictionary I created, I want to add the key “age” and my real integer age in it:
Here we have a key (age) value (24) pair using string as the key and integer as the value.
As we did with
Lists, let’s learn how to add elements to a
Dictionary. The key pointing to a value is a big part of what
Dictionary is. This is also true when we are talking about adding elements to it:
We just need to assign a value to a
Dictionary key. Nothing complicated here, right?
Iteration: Looping Through Data Structures
As we learned in the Python Basics, the
List iteration is very simple. We
Python developers commonly use
For looping. Let’s do it:
So for each book in the bookshelf, we (can do everything with it) print it. Pretty simple and intuitive. That’s Python.
For a hash data structure, we can also use the
for loop, but we apply the
This is an example how to use it. For each
key in the
dictionary , we
key and its corresponding
Another way to do it is to use the
We did name the two parameters as
value, but it is not necessary. We can name them anything. Let’s see it:
We can see we used attribute as a parameter for the
key, and it works properly. Great!
Classes & Objects
A little bit of theory:
Objects are a representation of real world objects like cars, dogs, or bikes. The objects share two main characteristics: data and behavior.
Cars have data, like number of wheels, number of doors, and seating capacity They also exhibit behavior: they can accelerate, stop, show how much fuel is left, and so many other things.
We identify data as attributes and behavior as methods in object-oriented programming. Again:
Data → Attributes and Behavior → Methods
And a Class is the blueprint from which individual objects are created. In the real world, we often find many objects with the same type. Like cars. All the same make and model (and all have an engine, wheels, doors, and so on). Each car was built from the same set of blueprints and has the same components.
Python Object-Oriented Programming mode: ON
Python, as an Object-Oriented programming language, has these concepts: class and object.
A class is a blueprint, a model for its objects.
So again, a class it is just a model, or a way to define attributes and behavior (as we talked about in the theory section). As an example, a vehicle class has its own attributes that define what objects are vehicles. The number of wheels, type of tank, seating capacity, and maximum velocity are all attributes of a vehicle.
With this in mind, let’s look at Python syntax for classes:
We define classes with a class statement — and that’s it. Easy, isn’t it?
Objects are instances of a class. We create an instance by naming the class.
car is an object (or instance) of the class
Remember that our vehicle class has four attributes: number of wheels, type of tank, seating capacity, and maximum velocity. We set all these attributes when creating a vehicle object. So here, we define our class to receive data when it initiates it:
We use the
init method. We call it a constructor method. So when we create the vehicle object, we can define these attributes. Imagine that we love the Tesla Model S, and we want to create this kind of object. It has four wheels, runs on electric energy, has space for five seats, and the maximum velocity is 250km/hour (155 mph). Let’s create this object:
Four wheels + electric “tank type” + five seats + 250km/hour maximum speed.
All attributes are set. But how can we access these attributes’ values? We send a message to the object asking about them. We call it a method. It’s the object’s behavior. Let’s implement it:
This is an implementation of two methods: number_of_wheels and set_number_of_wheels. We call it
setter. Because the first gets the attribute value, and the second sets a new value for the attribute.
In Python, we can do that using
decorators) to define
setters. Let’s see it with code:
And we can use these methods as attributes:
This is slightly different than defining methods. The methods work as attributes. For example, when we set the new number of wheels, we don’t apply two as a parameter, but set the value 2 to
number_of_wheels. This is one way to write
But we can also use methods for other things, like the “make_noise” method. Let’s see it:
When we call this method, it just returns a string “VRRRRUUUUM.”
Encapsulation: Hiding Information
Encapsulation is a mechanism that restricts direct access to objects’ data and methods. But at the same time, it facilitates operation on that data (objects’ methods).
“Encapsulation can be used to hide data members and members function. Under this definition, encapsulation means that the internal representation of an object is generally hidden from view outside of the object’s definition.” — Wikipedia
All internal representation of an object is hidden from the outside. Only the object can interact with its internal data.
First, we need to understand how
non-public instance variables and methods work.
Public Instance Variables
For a Python class, we can initialize a
public instance variable within our constructor method. Let’s see this:
Within the constructor method:
Here we apply the
first_name value as an argument to the
public instance variable.
Within the class:
Here, we do not need to apply the
first_name as an argument, and all instance objects will have a
class attribute initialized with
Cool. We have now learned that we can use
public instance variables and
class attributes. Another interesting thing about the
public part is that we can manage the variable value. What do I mean by that? Our
object can manage its variable value:
Set variable values.
Person class in mind, we want to set another value to its
There we go. We just set another value (
kaio) to the
first_name instance variable and it updated the value. Simple as that. Since it’s a
public variable, we can do that.
Non-public Instance Variable
We don’t use the term “private” here, since no attribute is really private in Python (without a generally unnecessary amount of work). — PEP 8
public instance variable , we can define the
non-public instance variable both within the constructor method or within the class. The syntax difference is: for
non-public instance variables , use an underscore (
_) before the
“‘Private’ instance variables that cannot be accessed except from inside an object don’t exist in Python. However, there is a convention that is followed by most Python code: a name prefixed with an underscore (e.g.
_spam) should be treated as a non-public part of the API (whether it is a function, a method or a data member)” — Python Software Foundation
Here’s an example:
Did you see the
non-public variable :
We can access and update it.
Non-public variablesare just a convention and should be treated as a non-public part of the API.
So we use a method that allows us to do it inside our class definition. Let’s implement two methods (
update_email) to understand it:
Now we can update and access
non-public variables using those methods. Let’s see:
- We initiated a new object with
- Printed the email by accessing the
non-public variablewith a method
- Tried to set a new
- We need to treat
non-publicpart of the API
- Updated the
non-public variablewith our instance method
- Success! We can update it inside our class with the helper method
public methods, we can also use them out of our class:
Let’s test it:
Great — we can use it without any problem.
non-public methods we aren’t able to do it. Let’s implement the same
Person class, but now with a
non-public method using an underscore (
And now, we’ll try to call this
non-public method with our object:
We can access and update it.
Non-public methodsare just a convention and should be treated as a non-public part of the API.
Here’s an example for how we can use it:
Here we have a
non-public method and a
public method. The
show_age can be used by our object (out of our class) and the
_get_age only used inside our class definition (inside
show_age method). But again: as a matter of convention.
With encapsulation we can ensure that the internal representation of the object is hidden from the outside.
Inheritance: behaviors and characteristics
Certain objects have some things in common: their behavior and characteristics.
For example, I inherited some characteristics and behaviors from my father. I inherited his eyes and hair as characteristics, and his impatience and introversion as behaviors.
In object-oriented programming, classes can inherit common characteristics (data) and behavior (methods) from another class.
Let’s see another example and implement it in Python.
Imagine a car. Number of wheels, seating capacity and maximum velocity are all attributes of a car. We can say that an ElectricCar class inherits these same attributes from the regular Car class.
Our Car class implemented:
Once initiated, we can use all
instance variables created. Nice.
In Python, we apply a
parent class to the
child class as a parameter. An ElectricCar class can inherit from our Car class.
Simple as that. We don’t need to implement any other method, because this class already has it (inherited from Car class). Let’s prove it:
We learned a lot of things about Python basics:
- How Python variables work
- How Python conditional statements work
- How Python looping (while & for) works
- How to use Lists: Collection | Array
- Dictionary Key-Value Collection
- How we can iterate through these data structures
- Objects and Classes
- Attributes as objects’ data
- Methods as objects’ behavior
- Using Python getters and setters & property decorator
- Encapsulation: hiding information
- Inheritance: behaviors and characteristics
- Big-O Notation For Coding Interviews and Beyond
- Learn Python from Scratch
- Learn Object-Oriented Programming in Python
- Data Structures in Python: An Interview Refresher
- Data Structures and Algorithms in Python
- Data Structures for Coding Interviews in Python
- One Month Python Course
Congrats! You completed this dense piece of content about Python.
If you want a complete Python course, learn more real-world coding skills and build projects, try One Month Python Bootcamp. See you there ☺
For more stories and posts about my journey learning & mastering programming, follow my publication The Renaissance Developer.
Have fun, keep learning, and always keep coding.