Python Syntax: Difference between revisions
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'''Berk Tunctan - Spring 2024''' | |||
==The Main Idea== | |||
===Python=== | |||
Python is an interpreted, high-level programming language. As a general-purpose language, it is used for a variety of applications, which makes it an obvious choice for computational physics models, considering its shallow learning curve and syntactically simplistic features. It is also OS-independent, allowing it to be run on virtually any machine. Python has a unique design through its emphasis on code readability by having a notable use of significant indentation. | |||
Python is primarily used for web development, software development, mathematics, and system scripting. Some more things python can do are: | |||
* Be used on a server to create web applications. | |||
* Be used alongside software to create a workflow. | |||
* Connect to database systems to read and modify files. | |||
* Handle big data and perform complex math operations. | |||
* Be used for rapid prototyping, otherwise known as production-ready software development. | |||
Python is used over other languages for many various reasons. Its simple syntax allows developers to write programs with fewer lines than some other programming languages. It also runs on an interpreter system, allowing for code to be executed as soon as it is written. | |||
===VPython=== | |||
VPython is an extension of the Python programming language that contains a 3D graphics module called Visual, which allows users to create simple simulations of physics problems. It allows its users to create objects such as spheres and cones and displays these objects in another window. Its primary use is for educational purposes, although it has been used in research before in the past. Although VPython slightly differs from the actual Python programming language, the majority of the functionality remains the same, including all syntax. For the sole purpose of this class, however, it is functionally equivalent to Python, which is why it is imperative to understand the underlying Python language. Most of the labs done this year (which includes any labs requiring the construction of a physics simulation model) will be done using the VPython. | |||
===Glowscript=== | |||
GlowScript is a programming environment for making 3D models and simulations using VPython. Unlike traditional desktop applications, GlowScript runs in the web browser, allowing you to write and run your VPython scripts online without needing to install any software on your computer. | |||
===Python in Physics=== | |||
Python helps with people's understanding of physics concepts and systems through modeling. Python makes it easier for physicists to do calculations with vectors, matrices, and graphs. It is also an easy language that has a fast compiling speed. Creating these computational models help students visualize what is going on in the system. In higher-level physics classes, we will often use python to build computation models for labs and use it to calculate and show concepts such as electric fields, magnetic fields, magnetic forces, and magnet dropping. | |||
==Downloading/Installation== | |||
===Versions=== | |||
Python has two major versions: Python 2 and 3 | |||
However, on January 1st, 2020, version 2.x was officially deprecated and no longer officially supported by the Python Foundation. As a result, the majority of the Python community has already migrated away from the dying version. In any case, Python 2.x has significant syntactical differences that Python 3.x is not backward-compatible with (hence, the major version change), which is why this course will be attempting to adhere to the guidelines set by Python 3. The most current version of Python is Python 3.11.3, which was released on October 24, 2022. | |||
===Downloading=== | |||
The latest stable version of Python 3 available is [https://www.python.org/downloads/ 3.11.3] (as of April 2023). | |||
Older versions of Python 3 can be found at [https://www.python.org/downloads/ https://www.python.org/downloads/]. | |||
For the purposes of this class, it is not necessary to download and install VPython, as we will be working with VPython through the virtual [https://www.glowscript.org/ GlowScript] environment. | |||
<!--==Downloading== | |||
In all cases you will need to have Python 2.7.9 installed. Future versions may also work, but be warned that it may cause VPython to behave erratically. | |||
[http://vpython.org/contents/download_windows.html For Windows] | |||
[http://vpython.org/contents/download_mac.html For Mac] | |||
[http://vpython.org/contents/download_linux.html For Linux] | |||
Note for Linux: You can only install Classic VPython, which is no longer supported and may be missing some features and bug fixes that are present in the current version of VPython. | |||
Alternatively, you can use GlowScript, a virtual environment that allows you to execute VPython code in your browser. You can create an account at [http://www.glowscript.org/ http://www.glowscript.org/]. Although this is useful, keep in mind that not all labs can be completed through GlowScript.--> | |||
=Python Basics= | |||
==Syntax== | |||
One of the most important components of Python syntax is indentation. Indentation refers to the spaces at the beginning of a line of code, which can also be achieved by using the tab button. While in some programming languages indentation is only used for aesthetic purposes, indentation is necessary for the functionality of code in Python. The number of spaces needed is up to you as the programmer, but it must be at least one. If the indentation is skipped, Python will give the user an error message, and the code will not be able to run. The indentation will be necessary for your if-conditions, for-loops, while-loops, and more. | |||
==Comments== | |||
== | Comments are useful when you want to include a note or a quick explanation in your code that will make it easier to understand later. Comments are sections of code that the computer will skip in execution, so it will not actually be executed when your program runs. There are two types of comments that Python uses, single-line comments and multi-line comments. | ||
===Single Line Comments=== | |||
To create a single-line comment (the most common comment in Python) type a hash character (#) at the beginning of anything you would like to comment out. Note, when "#" is in a line of code, the rest of the code following the # will be ignored by the computer when your code runs. | |||
# This is a comment. | |||
a = 4 # and so is this | |||
# b = 4 # and so is this entire line, be careful! | |||
Here is an example of comment use that you might see in a lab: | |||
myTemp = 4 #This is the temperature in Celsius. | |||
===Multi-line Comments=== | |||
To create a multi-line comment (usually reserved for longer explanations or instructions that cannot fit on one line) type three quotation marks (single or double), like so: | |||
""" this | |||
is | |||
a | |||
multi-line | |||
comment """ | |||
""" this is also an example, but on only one line""" | |||
''' | |||
this | |||
is also | |||
a | |||
multi-line | |||
comment! | |||
''' | |||
Be careful! Unlike the single line comments, multi-line comments require a start and a stop (if you forget to close your comment or forget the third quotation mark then that will cause an error in your code). | |||
===Main Uses=== | |||
- Longer variable explanation (units, where the data comes from, etc) | |||
- Comment out code (to save for later, instead of deleting it) | |||
- Instructions | |||
- Notes to self | |||
==Variables== | |||
Variables in Python are named items/containers that allow data to be stored. The variables are only stored during the execution of the program; after the program finishes, the variables are no longer retained. Python is an Object-Oriented Programming (OOP) language, which means that variables can be thought of as "objects" or abstract data types representing various forms of information. | |||
===Declaring a Variable=== | |||
Python has no specific command for declaring a variable. Instead, a variable is created the moment a user assigns a value to it. Variables are assigned with an <code>=</code> (equals) operator. Unlike other programming languages, Python does not require explicit types to be defined when declaring variables. The types are inferred during runtime, as it is an interpreted language. Hence, the only information needed for the assignment is the variable name and data to assign. Python variables can have any name, but they must start with a letter or underscore. It's important to note that the underscore is generally reserved for library variables, so it is best to stick with letters. It also can only contain alphanumeric characters and underscores (<code>A-z</code>, <code>0-9</code>, and <code>_</code>). Here are a few examples of variable assignments: | |||
x = 7 | |||
long_variable_name = [0, 1, 2, 3, 4] | |||
CAPITAL_VARIABLE_NAME = {'apple', 'orange', 'banana'} | |||
_starts_with_underscore = {'yes': 1.0, 'no': 0.0} # Try to avoid this type of naming if possible! | |||
It is possible to assign a new variable to a variable that has already been assigned as well. The new variable will store the information that the original variable was already assigned. | |||
x = 7 | |||
reassigned_variable = x # Final value of reassigned_variable is 7, because x is 7 | |||
==Data Types== | |||
Variables can be of different types that determine their behavior. | |||
===Numerical Data Types=== | |||
Numerical data types represent numbers and can be to perform mathematical calculations. | |||
'''Integer''' | |||
An integer is a whole number. It can be positive or negative but cannot contain any decimals. Integers have unlimited length. | |||
Examples of integers are: | |||
x = 1 | |||
y = 3452374791834 | |||
z = -289 | |||
'''Float''' | |||
A float, also known as a "floating point number," is a number that contains one or more decimal. A float can be either positive or negative. | |||
Examples of floats are: | |||
w = 24e4 | |||
x = 10.2 | |||
y = 1.0 | |||
z = -23.9 | |||
Note that a whole number can be made a float by adding a <code>.0</code> at the end of the number. Floats can also be scientific numbers with an "e" to indicate a power of 10. | |||
'''Complex''' | |||
Complex numbers are numbers that be expressed in the form a + bi, where a and b are real numbers, and i is a symbol representing the imaginary unit. The imaginary unit satisfies the equation <math>i^2=-1</math>. In python, complex numbers are written with a "j" to represent the imaginary part. | |||
Examples of complex numbers are: | |||
x = 3+5j | |||
y = 5j | |||
z = -8j | |||
'''Boolean''' | |||
Booleans represent one of two values: <code>True</code> or <code>False</code>. They are a powerful tool to allow the user to control the flow of their code. Comparisons are often evaluated to return a Boolean answer. Some examples of comparisons are: | |||
10 > 9 # True | |||
10 == 9 # False | |||
10 < 9 # False | |||
Note that <code>==</code> is used when seeing if two integers are the same or not. This is because <code>=</code> is reserved for declaring variables. Be careful to not use <code>=</code> in a comparison. | |||
Equivalence in Python is dependent on the value and type of the compared items. The types must correlate for the equivalence to hold true, (i.e., numerical data types must correlate to other numerical data types even if the values appear to be the same). | |||
4 == 4 # True | |||
18 == 18.0 # True | |||
Comparing elements of different types results in false: | |||
a = "9" | |||
b = 9 | |||
a == b # False | |||
Booleans in Python are numerical data types, meaning that they represent numbers. They are special type of integer value and can be used to perform arithmetic operations. <code>True == 1</code> and <code>False == 0</code>. | |||
True + True # 2 | |||
True + False # 1 | |||
Note that in Python, any data type can be interpreted as a boolean. For example, numerical data types are interpreted as <code>False</code> if they are equivalent to <code>0</code> and true otherwise. | |||
31234 == True # True | |||
0 == True # False | |||
0 == False # True | |||
Collections of data are interpreted as <code>False</code> if they are empty and <code>True</code> otherwise. | |||
[0,1,3,4,5] == True # True | |||
[] == False # True | |||
===Iterable Data Types=== | |||
'''String''' | |||
Strings are sequences of characters, including alphabetical characters and numerical ones. They are surrounded by either single, double, or triple quotation marks. Strings are immutable, meaning that once they are defined, they cannot be changed. Only certain Python methods such as <code>replace()</code>, <code>join()</code>, or <code>split()</code> can modify strings. | |||
Examples of strings are: | |||
a = "hello" | |||
b = 'c' | |||
c = '934' | |||
Note that while the variable c appears to be made up of numbers, it is still a string because of the quotation marks. Because of this, it is treated as purely text and does not contain any numerical or mathematical data. Therefore, it cannot be used in mathematical operations until it is converted to a numeric type. | |||
Strings can be indexed <em>see List</em>. | |||
'''List''' | |||
Lists in Python can be used to store multiple items in a single variable. They are created using square brackets and can contain different data types. Lists are mutable, meaning that the user can change, add, and remove items in the list even after it has been created. They may contain any data type, including other lists. | |||
Examples of lists are: | |||
my_list = ["dog", "cat", "bird"] | |||
number_list = [9, 0, 3, 4] | |||
mixed_list = ["tree", 2, 0, "frog"] | |||
list_list = [[1,2,3],[4,5,6],[7,8,9]] | |||
To access specific elements of the list, Python uses indexing. By indexing into a list, the user can get the data at a specific spot. Note that indexing starts at the number 0, meaning that the first item in the list can only be accessed by using the number 0. | |||
my_list[0] # "dog" | |||
number_list[1] # 0 | |||
mixed_list[3] # "frog" | |||
list_list[0] # [1,2,3] | |||
To | To access the last element of a list, use <code>-1</code> when indexing. | ||
my_list[-1] # "bird" | |||
number_list[-1] # 4 | |||
In lists containing lists, you may double index, treating the list as a 2d array. Treat the first index as the row and the second index as the column. | |||
list_list[0][0] # 1 | |||
list_list[2][2] # 9 | |||
Since lists are mutable, they can be updated without having to reassign the list. | |||
num_list = [] | |||
num_list.append(1) | |||
num_list.append(2) | |||
num_list.append(3) | |||
print(num_list) # [1, 2, 3] | |||
'''Tuple''' | |||
Like lists, tuples are also used to store multiple items in a single variable. However, unlike lists, tuples are immutable, meaning that they cannot be changed once created. Tuples are created using parentheses. A comma is necessary in the creation of a tuple. Therefore, to create one item, you have to add a comma after the item, otherwise, Python will not recognize it as a tuple. | |||
Examples of tuples are: | |||
my_tuple = ("cookies", "cake", 1912) | |||
boolean_tuple = (True, False, True) | |||
single_tuple = (5,) | |||
Tuples can also be indexed into like lists. | |||
===Misc. Data Types=== | |||
'''Dictionaries''' | |||
Dictionairies are collections of key-value pairs. Keys are used to access elements, but instead of using numbers, the user may use any value. Each key must be unique and is used to store and retrieve the corresponding value. Dictionaries are mutable, which means that you can add, remove, or modify entries after the dictionary has been created. Dictionaries in Python are written with curly braces, with keys and values separated by a colon. | |||
Examples of dictionaries are: | |||
my_dict = {"name": "Alice", "age": 25} | |||
book_info = {"title": "1984", "author": "George Orwell", "published": 1949} | |||
ball = {"mass": 10, "speed": 40} | |||
You can access the value associated with a specific key using the key name inside square brackets: | |||
my_dict["name"] # Alice | |||
===Type Conversion=== | |||
Some data types in Python can be converted from one type into another with certain methods. It's important to use the same type when using operations in Python. Only numeric data types can be used in mathematical operations. It is possible to convert a string into a number data type with type conversion. | |||
To | To convert from one type into another, use <code>int()</code> or <code>float()</code> methods. | ||
x = 3 # int | |||
y = 2.9 # float | |||
z = "4" # string | |||
# convert from int to float: | |||
a = float(x) | |||
# convert from float to int: | |||
b = int(y) | |||
# convert from string to int: | |||
c = int(z) | |||
Note that you can only convert strings if they only contain numerical digits. | |||
my_string = "four" | |||
my_num = int(my_string) # ERROR | |||
==Operators== | |||
Operators are symbols used to transform data. | |||
===Arithmetic Operators=== | |||
Mathematical operations include: | |||
# Addition: | |||
1 + 2 # This will equal 3 | |||
# Subtraction: | |||
2 - 1 # This will equal 1 | |||
# Multiplication: | |||
2 * 1 # This will equal 2 | |||
# Division: | |||
2 / 1 # This will equal 2 | |||
# Exponentiation: | |||
2 ** 2 # This will equal 4 | |||
# Remainder: | |||
5 % 4 # This will equal 1 | |||
Methods | |||
# Absolute value: | |||
abs(-3) # This will equal 3 | |||
===Assignment Operators=== | |||
The equal sign <code>=</code> is used to assign a value to a variable and allows it to be reused. The value on the left is the variable, and one on the right is the value to be assigned to the variable. Operation may be used in the assignment of variables. | |||
x = 3 | |||
y = 4 | |||
z = y + x # z is 7 | |||
To update a variable, the variable must be reassigned with the <code>=</code> operator. However, the variable itself may be used in the reassignment. This can be used to perform the specified mathematical operation on a variable, and then store the resulting value back into the variable. In order to use assignment operators, you must specify the variable name, followed by the operator symbol with an <code>=</code> (equals sign), and finally the value. | |||
x = x + 3 # adding 3 to x | |||
When using arithmetic operators, for for ease of convience, this statement could be simplified into: | |||
x += 3 # equivalent to x = x + 3 | |||
This will be frequently used in physics simulation models, as variables often needed to be updated in this format. | |||
===String Concatenation=== | |||
Strings of text can be combined using the <code>+</code> operator. | |||
a = "hello " | |||
b = "world" | |||
c = a + b # combines to "hello world" | |||
Note that text containing numbers will not be added together. Instead, they will be attached. | |||
a = "5" | |||
b = "1" | |||
c = a + b # combines to "51", not "6" | |||
===Comparison=== | |||
Comparing elements in Python uses the <code>==</code> operator. | |||
x = 1 | |||
y = 1 | |||
x == y # outputs True because x equals y | |||
y == 5 # outputs False because y does not equal 5 | |||
== | CAUTION: <code>==</code> and <code>=</code> are not interchangeable and using them as such will lead to errors. <code>==</code> is used only for comparison and checking equivalence while <code>=</code> is used only for assignment. | ||
===Boolean Operators=== | |||
Booleans are a data type that represent truth values. Boolean logic is the chaining of truth values can be represented in Python using the <code>and</code> and <code>or</code> operators. | |||
====and==== | |||
The <code>and</code> operator is used to check if all inputted values are <code>True</code>. | |||
True and True # outputs True because both values are true | |||
If a single input is <code>False</code>, then the entire statement will be <code>False</code>: | |||
True and False # False | |||
False and False # False | |||
====or==== | |||
The <code>or</code> operator is used to check any inputted value is <code>True</code>. | |||
True or True # True | |||
True or False # True | |||
False or False or False or False or False or True # True | |||
If there is not a single input is <code>True</code>, then the entire statement will be <code>False</code>: | |||
False or False # False | |||
Boolean Operators can also be used inconditional expressions. | |||
x = 1 | |||
y = 2 | |||
(x == 1) and (y == 2) # outputs True because both conditions are true | |||
x = 2 | |||
y = 3 | |||
(x == 1) or (y == 2) # outputs False because neither condition is true | |||
==Print Function== | |||
In order to see any of the information we’ve listed above, you have to actually print it. For example, the code below will run but will not provide you with an output. | |||
x = 1 + 1 | |||
Instead, you have to print this information in order to see the answer when the code is finished running. You can do this in two ways. First, you can directly embed the code in your print statement. | |||
print(1 + 1) | |||
Or, you can create the variable and then print the variable. | |||
x = 1 + 1 | |||
print(x) | |||
Either one is valid! | |||
If you would like to print something other than a variable, include quotations around it. For example, if you wanted to print the typical <code>'Hello, world!'</code>, you would code: | |||
print('Hello, world!') | |||
The quotations are the important takeaway here. | |||
Another common use case for the print statement is to display a hard-coded string along with a variable. This can be done by casting the variable to a string and "adding" it to the hardcoded string: | |||
s = 'Hello, world #' | |||
number = 3 | |||
print(s + str(number) + '!') # Hello, world #3! | |||
===Uses=== | |||
Printing is incredibly useful in debugging code. If you are getting an unexpected result, it can be quite difficult to tell what is going on as your code is running. With `print()`, it becomes easier to track what the code is doing and what variables equal at various points in the code's execution. | |||
==Conditional== | |||
===if statement=== | |||
A conditional involves an “if” statement. “If this thing is true, do this”, for example. Conditionals are useful in physics if you want to perform different things on a variable, depending on certain conditions. | |||
if x > 1: | |||
print("x is greater than 1") | |||
===else statement=== | |||
If the if condition is <code>False</code>, we can use an <code>else</code> keyword to run code if and only if the if conditional fails. | |||
if x > 1: | |||
print("x is greater than 1") | |||
else: | |||
print("x is NOT greater than 1") | |||
===elif statement=== | |||
To chain multiple conditionals, we can use the <code>elif</code> keyword, (i.e., <em>else if</em>). | |||
if x > 2: | |||
print("x is greater than 2") | |||
elif x == 1: | |||
print("x is equal to 1") | |||
elif x == 0: | |||
print("x is equal to 0") | |||
else: | |||
print("x is less than 2 and not equal to 1 or 0") | |||
Notice the conditional starts with an <code>if</code> statement, followed by a colon. The code inside of the <code>if</code> statement tells the code what to do if the <code>if</code> statement is <code>True</code> and must be indented. If the condition is not met and the if does not equal <code>True</code>, it moves on to the <code>elif</code> statement. <code>elif</code> statements should only used after <code>if</code> statements, and cannot be used independently. There can be any number of <code>elif</code> statements, but only one <code>if</code> statement. Notice this uses the same syntax as the regular if statement. Lastly, if neither the <code>if</code> nor the <code>elif</code> statement(s) are <code>True</code>, there is an <code>else</code> statement. There can also be only one <code>else</code> statement, though it is not required. | |||
Another important issue regarding <code>if</code> and other statements is the code block formatting. Code within the conditional block must be indented. | |||
==Loop== | |||
Loops are powerful tools that are used to repeated run a block of code without having to rewrite it. | |||
===While Loops=== | |||
A <code>while</code> loop is similar to a repeated <code>if</code> statement. It repeatedly executes a piece of code until a certain condition no longer holds true. In physics, they are most often used to update an object over a certain amount of time. | |||
ball.pos.x = 5 # ball's x position | |||
t = 0 | |||
deltat = 0.1 | |||
while t < 1: | |||
ball.pos.x += 1 # ball's x position increases by 1 every 0.1 seconds | |||
t += deltat | |||
===For Loops=== | |||
A <code>for</code> loop is used when iterating over an iterable sequence, such as a list, tuple, or string. When using <code>for</code>, the program iterates through each element of the sequence | |||
To print each component of a list of animals: | |||
animals = ["dog", "cat", "bird"] | |||
for animal in animals: | |||
print(animal) | |||
To print each letter in the word "yellowjackets": | |||
for character in "yellowjackets": | |||
print(character) | |||
To print each number in a range from [0, 5): | |||
for i in range(5): | |||
print(i) | |||
===Nested Loops=== | |||
A loop may contain loops within them. A loop that contains another loop inside it is called a nested loop. Here is an example of a nested loop: | |||
students = ["Sam","Joe","Fred"] | |||
snacks = ["cookies","chips","candy"] | |||
for student in students: | |||
for snack in snacks: | |||
print(student + " got " + snack) | |||
This nested for-loop goes through every element of both of the lists and gives each snack to each student. | |||
==Functions== | |||
Functions are code blocks that take in an input and execute some code. They help you organize your code and reduce repetition. | |||
A simple example of a function is: | |||
def currentYear(): | |||
print("2022") | |||
currentYear() # This line calls the function to be executed | |||
Functions always start with the <code>def</code> keyword. Once the function is created, it can be reused over and over again. A function must be created before it can be used. An example of that is the print function. | |||
The example below is a function that takes in the parameters x and y. | |||
def add(x, y): | |||
sum = x + y | |||
print(sum) | |||
This example contains two functions: <code>mult(x, y)</code> and <code>print()</code> | |||
====Return Variables==== | |||
Functions can be used to output a value using the <code>return</code> keyword. This is the output of the function. This value can then be used elsewhere. One common application is to use the <code>print()</code> function to show what is returned. | |||
def mult(x, y): | |||
return x * y | |||
product = mult(5, 5) | |||
print(product) # will print 25 | |||
In this example, <code>product</code> stores the return value of the function mult(x, y). | |||
==Error Handling== | |||
"Ask for forgiveness, not permission". The try and except statement handles exceptions. Exceptions are errors that happen when you run a program. Sometimes, we want to execute code when an error occurs, and for this, we can use a try and except statement to solve the problems. | |||
===Exceptions=== | |||
Python has built-in exceptions such as the <code>FileNotFoundError</code>, <code>ImportError</code>, and <code>ZeroDivisionError</code>, If an exception occurs, one of the exceptions will be thrown. Developers will need to deal with the exceptions thrown or the program will crash. This is when the <code>try-catch</code> block is used. | |||
Here is a sample structure of the <code>try-except</code> block: | |||
try: | |||
<do something> | |||
except Exception: | |||
<handle the exception> | |||
<code>try</code>: the code that may have an exceptions. If an exception is raised, this block of code immediately terminates and jumps straight into the except block | |||
<code>except</code>: this block of code executes only if the try block raises an exception. It cannot be on its own and requires a try block before it. | |||
<code>else</code>: this block is only executed if no exceptions are raised in the try block. | |||
<code>finally</code>: the code in this block is always executed at the end whether the try block raises an exception or not. | |||
Here is some example code: | |||
def fail(): | |||
1 / 0 # this raises an exception because a number cannot divide by 0 | |||
try: | |||
fail() | |||
except ZeroDivisionError: | |||
print("cannout divide by 0") | |||
finally: | |||
print("continue") | |||
The output of this code is as follows: | |||
exception occurred | |||
continue | |||
==Import== | |||
Import is a special keyword in Python that allows us to external libraries into our code. A library is a collection of functions and other components that can be used to extend the functionality of Python. VPython is an example of such external library. | |||
===<code>math</code> module=== | |||
The <code>math</code> module is the one of the most commonly used modules in Python development as it allows you to use more complex math equations. Importing the math module is as follows: | |||
import math | |||
Once imported, you can access all of its functions by prefixing them with <code>math.</code>. | |||
Here are some of the most commonly used functions provided by the math module: | |||
math.sqrt(x): Returns the square root of x. | |||
math.pow(x, y): Returns x raised to the power of y. | |||
math.sin(x): Returns the sine of x (x in radians). | |||
math.cos(x): Returns the cosine of x (x in radians). | |||
math.factorial(x): Returns the factorial of x. | |||
math.log(x, base]): Returns the logarithm of x to the given base, uses the natural logarithm if no base is specified. | |||
math.pi: The mathematical constant π. | |||
math.e: The mathematical constant e, which is the base of natural logarithms. | |||
Here’s a simple example demonstrating how to use some functions from the math module: | |||
import math | |||
# Calculate the square root | |||
print("Square root of 16 is:", math.sqrt(16)) | |||
# Calculate power | |||
print("3 raised to the power of 4 is:", math.pow(3, 4)) | |||
# Trigonometric functions | |||
angle = math.pi / 4 # 45 degrees in radians | |||
print("Cosine of 45 degrees is:", math.cos(angle)) | |||
print("Sine of 45 degrees is:", math.sin(angle)) | |||
# Logarithm | |||
print("Natural logarithm of 10 is:", math.log(10)) | |||
print("Logarithm base 10 of 100 is:", math.log(100, 10)) | |||
# Constants | |||
print("Mathematical constant pi:", math.pi) | |||
print("Mathematical constant e:", math.e) | |||
==Examples== | |||
This is an example of using Python to implement a mathematical model. | |||
For the gravitational principle, it is known that the force of gravity is: | |||
<math>|F_{G}| = G \frac{M_{1} M_{2}}{R^{2}}</math> | |||
We can use this knowledge to create a variable called <code>gravitational_force</code>, and assign it the magnitude of the gravitational force between objects <math>M_{1}</math> and <math>M_{2}</math>. Given variables <code>m1</code>, <code>m2</code>, and <code>r</code>, the Python code would be: | |||
gravitational_force = 6.67 * 10 ** -11 * m1 * m2 / (r ** 2) | |||
Normally, in a Python physics model, we would have an outer loop that updates the variables and values for each iteration, which is where an update statement such as this would go. This could be used to determine the variable gravitational force on a skydiver jumping from a great height, as the force would not remain constant. In a finalized GlowScript model, this would look like this: | |||
= | [https://trinket.io/embed/glowscript/7615a48c5f?start=result GlowScript Simulation] | ||
== | =Connectedness= | ||
As a high-level and syntactically simple language, Python is an excellent choice for the development of complex systems. Proficient knowledge of Python is critical to implementing scientific models, machine learning algorithms, and much more. | |||
=History= | |||
The concept of the Python programming language was developed in the late 1980s. In 1991, Guido van Rossum created the first version of the Python programming language, releasing it with the original intent of code readability (thanks to its use of whitespace and indentation). | |||
In 2000, Python 2 was released which contained several new backwards-incompatible features, such as list comprehension and a garbage collection system. | |||
The first version of Python 3 was released in 2008, while Python 2 was still in use, creating a rift between Python developers on version usage. | |||
Finally, on January 1st, 2020, Python 2 reached its end-of-life date, no longer officially supported by the Python Software Foundation. | |||
=See also= | |||
* [http://www.physicsbook.gatech.edu/VPython VPython] describes the basics of VPython and using it to create 3D models | |||
* The [http://www.physicsbook.gatech.edu/GlowScript GlowScript] wiki page provides detailed instructions for how to use VPython on the GlowScript website | |||
==Further reading== | |||
* These [https://wiki.python.org/moin/IntroductoryBooks Introductory Books] are a great resource for beginners looking to learn Python | |||
* [https://www.freecodecamp.org/news/what-can-you-do-with-python-the-3-main-applications-518db9a68a78/ What exactly can you do with Python? Here are Python's 3 main applications]: This article provides several examples of industry applications of Python | |||
* [https://towardsdatascience.com/how-to-build-your-own-neural-network-from-scratch-in-python-68998a08e4f6 How to build your own Neural Network from scratch in Python] gives a comprehensive guide on applying Python to machine learning | |||
==External links== | |||
* For a more comprehensive guide with getting Python set up, go to [https://www.python.org/about/gettingstarted/ https://www.python.org/about/gettingstarted/] | |||
* The [https://pypi.org/ Python Package Index] (PyPI) is a repository of community-created Python software packages that can be easily installed and used with Python code | |||
==References== | ==References== | ||
* [https://www.python.org/about/ https://www.python.org/about/] | |||
* [https://www.glowscript.org/docs/VPythonDocs/index.html https://www.glowscript.org/docs/VPythonDocs/index.html] | |||
* [https://www.geeksforgeeks.org/history-of-python/ https://www.geeksforgeeks.org/history-of-python/] | |||
* [https://docs.python.org/3/tutorial/ https://docs.python.org/3/tutorial/] | |||
*[https://pythonbasics.org/ https://pythonbasics.org/] | |||
*[http://websites.umich.edu/~mejn/cp/chapters/programming.pdf http://websites.umich.edu/~mejn/cp/chapters/programming.pdf] |
Latest revision as of 14:06, 20 April 2024
Berk Tunctan - Spring 2024
The Main Idea
Python
Python is an interpreted, high-level programming language. As a general-purpose language, it is used for a variety of applications, which makes it an obvious choice for computational physics models, considering its shallow learning curve and syntactically simplistic features. It is also OS-independent, allowing it to be run on virtually any machine. Python has a unique design through its emphasis on code readability by having a notable use of significant indentation.
Python is primarily used for web development, software development, mathematics, and system scripting. Some more things python can do are:
- Be used on a server to create web applications.
- Be used alongside software to create a workflow.
- Connect to database systems to read and modify files.
- Handle big data and perform complex math operations.
- Be used for rapid prototyping, otherwise known as production-ready software development.
Python is used over other languages for many various reasons. Its simple syntax allows developers to write programs with fewer lines than some other programming languages. It also runs on an interpreter system, allowing for code to be executed as soon as it is written.
VPython
VPython is an extension of the Python programming language that contains a 3D graphics module called Visual, which allows users to create simple simulations of physics problems. It allows its users to create objects such as spheres and cones and displays these objects in another window. Its primary use is for educational purposes, although it has been used in research before in the past. Although VPython slightly differs from the actual Python programming language, the majority of the functionality remains the same, including all syntax. For the sole purpose of this class, however, it is functionally equivalent to Python, which is why it is imperative to understand the underlying Python language. Most of the labs done this year (which includes any labs requiring the construction of a physics simulation model) will be done using the VPython.
Glowscript
GlowScript is a programming environment for making 3D models and simulations using VPython. Unlike traditional desktop applications, GlowScript runs in the web browser, allowing you to write and run your VPython scripts online without needing to install any software on your computer.
Python in Physics
Python helps with people's understanding of physics concepts and systems through modeling. Python makes it easier for physicists to do calculations with vectors, matrices, and graphs. It is also an easy language that has a fast compiling speed. Creating these computational models help students visualize what is going on in the system. In higher-level physics classes, we will often use python to build computation models for labs and use it to calculate and show concepts such as electric fields, magnetic fields, magnetic forces, and magnet dropping.
Downloading/Installation
Versions
Python has two major versions: Python 2 and 3
However, on January 1st, 2020, version 2.x was officially deprecated and no longer officially supported by the Python Foundation. As a result, the majority of the Python community has already migrated away from the dying version. In any case, Python 2.x has significant syntactical differences that Python 3.x is not backward-compatible with (hence, the major version change), which is why this course will be attempting to adhere to the guidelines set by Python 3. The most current version of Python is Python 3.11.3, which was released on October 24, 2022.
Downloading
The latest stable version of Python 3 available is 3.11.3 (as of April 2023).
Older versions of Python 3 can be found at https://www.python.org/downloads/.
For the purposes of this class, it is not necessary to download and install VPython, as we will be working with VPython through the virtual GlowScript environment.
Python Basics
Syntax
One of the most important components of Python syntax is indentation. Indentation refers to the spaces at the beginning of a line of code, which can also be achieved by using the tab button. While in some programming languages indentation is only used for aesthetic purposes, indentation is necessary for the functionality of code in Python. The number of spaces needed is up to you as the programmer, but it must be at least one. If the indentation is skipped, Python will give the user an error message, and the code will not be able to run. The indentation will be necessary for your if-conditions, for-loops, while-loops, and more.
Comments
Comments are useful when you want to include a note or a quick explanation in your code that will make it easier to understand later. Comments are sections of code that the computer will skip in execution, so it will not actually be executed when your program runs. There are two types of comments that Python uses, single-line comments and multi-line comments.
Single Line Comments
To create a single-line comment (the most common comment in Python) type a hash character (#) at the beginning of anything you would like to comment out. Note, when "#" is in a line of code, the rest of the code following the # will be ignored by the computer when your code runs.
# This is a comment. a = 4 # and so is this # b = 4 # and so is this entire line, be careful!
Here is an example of comment use that you might see in a lab:
myTemp = 4 #This is the temperature in Celsius.
Multi-line Comments
To create a multi-line comment (usually reserved for longer explanations or instructions that cannot fit on one line) type three quotation marks (single or double), like so:
""" this is a multi-line comment """
""" this is also an example, but on only one line"""
''' this is also a multi-line comment! '''
Be careful! Unlike the single line comments, multi-line comments require a start and a stop (if you forget to close your comment or forget the third quotation mark then that will cause an error in your code).
Main Uses
- Longer variable explanation (units, where the data comes from, etc)
- Comment out code (to save for later, instead of deleting it)
- Instructions
- Notes to self
Variables
Variables in Python are named items/containers that allow data to be stored. The variables are only stored during the execution of the program; after the program finishes, the variables are no longer retained. Python is an Object-Oriented Programming (OOP) language, which means that variables can be thought of as "objects" or abstract data types representing various forms of information.
Declaring a Variable
Python has no specific command for declaring a variable. Instead, a variable is created the moment a user assigns a value to it. Variables are assigned with an =
(equals) operator. Unlike other programming languages, Python does not require explicit types to be defined when declaring variables. The types are inferred during runtime, as it is an interpreted language. Hence, the only information needed for the assignment is the variable name and data to assign. Python variables can have any name, but they must start with a letter or underscore. It's important to note that the underscore is generally reserved for library variables, so it is best to stick with letters. It also can only contain alphanumeric characters and underscores (A-z
, 0-9
, and _
). Here are a few examples of variable assignments:
x = 7 long_variable_name = [0, 1, 2, 3, 4] CAPITAL_VARIABLE_NAME = {'apple', 'orange', 'banana'} _starts_with_underscore = {'yes': 1.0, 'no': 0.0} # Try to avoid this type of naming if possible!
It is possible to assign a new variable to a variable that has already been assigned as well. The new variable will store the information that the original variable was already assigned.
x = 7 reassigned_variable = x # Final value of reassigned_variable is 7, because x is 7
Data Types
Variables can be of different types that determine their behavior.
Numerical Data Types
Numerical data types represent numbers and can be to perform mathematical calculations.
Integer
An integer is a whole number. It can be positive or negative but cannot contain any decimals. Integers have unlimited length.
Examples of integers are:
x = 1 y = 3452374791834 z = -289
Float
A float, also known as a "floating point number," is a number that contains one or more decimal. A float can be either positive or negative.
Examples of floats are:
w = 24e4 x = 10.2 y = 1.0 z = -23.9
Note that a whole number can be made a float by adding a .0
at the end of the number. Floats can also be scientific numbers with an "e" to indicate a power of 10.
Complex
Complex numbers are numbers that be expressed in the form a + bi, where a and b are real numbers, and i is a symbol representing the imaginary unit. The imaginary unit satisfies the equation [math]\displaystyle{ i^2=-1 }[/math]. In python, complex numbers are written with a "j" to represent the imaginary part.
Examples of complex numbers are:
x = 3+5j y = 5j z = -8j
Boolean
Booleans represent one of two values: True
or False
. They are a powerful tool to allow the user to control the flow of their code. Comparisons are often evaluated to return a Boolean answer. Some examples of comparisons are:
10 > 9 # True 10 == 9 # False 10 < 9 # False
Note that ==
is used when seeing if two integers are the same or not. This is because =
is reserved for declaring variables. Be careful to not use =
in a comparison.
Equivalence in Python is dependent on the value and type of the compared items. The types must correlate for the equivalence to hold true, (i.e., numerical data types must correlate to other numerical data types even if the values appear to be the same).
4 == 4 # True 18 == 18.0 # True
Comparing elements of different types results in false:
a = "9" b = 9 a == b # False
Booleans in Python are numerical data types, meaning that they represent numbers. They are special type of integer value and can be used to perform arithmetic operations. True == 1
and False == 0
.
True + True # 2 True + False # 1
Note that in Python, any data type can be interpreted as a boolean. For example, numerical data types are interpreted as False
if they are equivalent to 0
and true otherwise.
31234 == True # True 0 == True # False 0 == False # True
Collections of data are interpreted as False
if they are empty and True
otherwise.
[0,1,3,4,5] == True # True [] == False # True
Iterable Data Types
String
Strings are sequences of characters, including alphabetical characters and numerical ones. They are surrounded by either single, double, or triple quotation marks. Strings are immutable, meaning that once they are defined, they cannot be changed. Only certain Python methods such as replace()
, join()
, or split()
can modify strings.
Examples of strings are:
a = "hello" b = 'c' c = '934'
Note that while the variable c appears to be made up of numbers, it is still a string because of the quotation marks. Because of this, it is treated as purely text and does not contain any numerical or mathematical data. Therefore, it cannot be used in mathematical operations until it is converted to a numeric type.
Strings can be indexed see List.
List
Lists in Python can be used to store multiple items in a single variable. They are created using square brackets and can contain different data types. Lists are mutable, meaning that the user can change, add, and remove items in the list even after it has been created. They may contain any data type, including other lists.
Examples of lists are:
my_list = ["dog", "cat", "bird"] number_list = [9, 0, 3, 4] mixed_list = ["tree", 2, 0, "frog"] list_list = [[1,2,3],[4,5,6],[7,8,9]]
To access specific elements of the list, Python uses indexing. By indexing into a list, the user can get the data at a specific spot. Note that indexing starts at the number 0, meaning that the first item in the list can only be accessed by using the number 0.
my_list[0] # "dog" number_list[1] # 0 mixed_list[3] # "frog" list_list[0] # [1,2,3]
To access the last element of a list, use -1
when indexing.
my_list[-1] # "bird" number_list[-1] # 4
In lists containing lists, you may double index, treating the list as a 2d array. Treat the first index as the row and the second index as the column.
list_list[0][0] # 1 list_list[2][2] # 9
Since lists are mutable, they can be updated without having to reassign the list.
num_list = [] num_list.append(1) num_list.append(2) num_list.append(3) print(num_list) # [1, 2, 3]
Tuple
Like lists, tuples are also used to store multiple items in a single variable. However, unlike lists, tuples are immutable, meaning that they cannot be changed once created. Tuples are created using parentheses. A comma is necessary in the creation of a tuple. Therefore, to create one item, you have to add a comma after the item, otherwise, Python will not recognize it as a tuple.
Examples of tuples are:
my_tuple = ("cookies", "cake", 1912) boolean_tuple = (True, False, True) single_tuple = (5,)
Tuples can also be indexed into like lists.
Misc. Data Types
Dictionaries
Dictionairies are collections of key-value pairs. Keys are used to access elements, but instead of using numbers, the user may use any value. Each key must be unique and is used to store and retrieve the corresponding value. Dictionaries are mutable, which means that you can add, remove, or modify entries after the dictionary has been created. Dictionaries in Python are written with curly braces, with keys and values separated by a colon.
Examples of dictionaries are:
my_dict = {"name": "Alice", "age": 25} book_info = {"title": "1984", "author": "George Orwell", "published": 1949} ball = {"mass": 10, "speed": 40}
You can access the value associated with a specific key using the key name inside square brackets:
my_dict["name"] # Alice
Type Conversion
Some data types in Python can be converted from one type into another with certain methods. It's important to use the same type when using operations in Python. Only numeric data types can be used in mathematical operations. It is possible to convert a string into a number data type with type conversion.
To convert from one type into another, use int()
or float()
methods.
x = 3 # int y = 2.9 # float z = "4" # string # convert from int to float: a = float(x) # convert from float to int: b = int(y) # convert from string to int: c = int(z)
Note that you can only convert strings if they only contain numerical digits.
my_string = "four" my_num = int(my_string) # ERROR
Operators
Operators are symbols used to transform data.
Arithmetic Operators
Mathematical operations include:
# Addition: 1 + 2 # This will equal 3 # Subtraction: 2 - 1 # This will equal 1 # Multiplication: 2 * 1 # This will equal 2 # Division: 2 / 1 # This will equal 2 # Exponentiation: 2 ** 2 # This will equal 4 # Remainder: 5 % 4 # This will equal 1
Methods
# Absolute value: abs(-3) # This will equal 3
Assignment Operators
The equal sign =
is used to assign a value to a variable and allows it to be reused. The value on the left is the variable, and one on the right is the value to be assigned to the variable. Operation may be used in the assignment of variables.
x = 3 y = 4 z = y + x # z is 7
To update a variable, the variable must be reassigned with the =
operator. However, the variable itself may be used in the reassignment. This can be used to perform the specified mathematical operation on a variable, and then store the resulting value back into the variable. In order to use assignment operators, you must specify the variable name, followed by the operator symbol with an =
(equals sign), and finally the value.
x = x + 3 # adding 3 to x
When using arithmetic operators, for for ease of convience, this statement could be simplified into:
x += 3 # equivalent to x = x + 3
This will be frequently used in physics simulation models, as variables often needed to be updated in this format.
String Concatenation
Strings of text can be combined using the +
operator.
a = "hello "
b = "world"
c = a + b # combines to "hello world"
Note that text containing numbers will not be added together. Instead, they will be attached. a = "5" b = "1" c = a + b # combines to "51", not "6"
Comparison
Comparing elements in Python uses the ==
operator.
x = 1 y = 1 x == y # outputs True because x equals y y == 5 # outputs False because y does not equal 5
CAUTION: ==
and =
are not interchangeable and using them as such will lead to errors. ==
is used only for comparison and checking equivalence while =
is used only for assignment.
Boolean Operators
Booleans are a data type that represent truth values. Boolean logic is the chaining of truth values can be represented in Python using the and
and or
operators.
and
The and
operator is used to check if all inputted values are True
.
True and True # outputs True because both values are true
If a single input is False
, then the entire statement will be False
:
True and False # False False and False # False
or
The or
operator is used to check any inputted value is True
.
True or True # True True or False # True False or False or False or False or False or True # True
If there is not a single input is True
, then the entire statement will be False
:
False or False # False
Boolean Operators can also be used inconditional expressions.
x = 1 y = 2 (x == 1) and (y == 2) # outputs True because both conditions are true x = 2 y = 3 (x == 1) or (y == 2) # outputs False because neither condition is true
Print Function
In order to see any of the information we’ve listed above, you have to actually print it. For example, the code below will run but will not provide you with an output.
x = 1 + 1
Instead, you have to print this information in order to see the answer when the code is finished running. You can do this in two ways. First, you can directly embed the code in your print statement.
print(1 + 1)
Or, you can create the variable and then print the variable.
x = 1 + 1 print(x)
Either one is valid!
If you would like to print something other than a variable, include quotations around it. For example, if you wanted to print the typical 'Hello, world!'
, you would code:
print('Hello, world!')
The quotations are the important takeaway here.
Another common use case for the print statement is to display a hard-coded string along with a variable. This can be done by casting the variable to a string and "adding" it to the hardcoded string:
s = 'Hello, world #' number = 3 print(s + str(number) + '!') # Hello, world #3!
Uses
Printing is incredibly useful in debugging code. If you are getting an unexpected result, it can be quite difficult to tell what is going on as your code is running. With `print()`, it becomes easier to track what the code is doing and what variables equal at various points in the code's execution.
Conditional
if statement
A conditional involves an “if” statement. “If this thing is true, do this”, for example. Conditionals are useful in physics if you want to perform different things on a variable, depending on certain conditions.
if x > 1: print("x is greater than 1")
else statement
If the if condition is False
, we can use an else
keyword to run code if and only if the if conditional fails.
if x > 1: print("x is greater than 1") else: print("x is NOT greater than 1")
elif statement
To chain multiple conditionals, we can use the elif
keyword, (i.e., else if).
if x > 2: print("x is greater than 2") elif x == 1: print("x is equal to 1") elif x == 0: print("x is equal to 0") else: print("x is less than 2 and not equal to 1 or 0")
Notice the conditional starts with an if
statement, followed by a colon. The code inside of the if
statement tells the code what to do if the if
statement is True
and must be indented. If the condition is not met and the if does not equal True
, it moves on to the elif
statement. elif
statements should only used after if
statements, and cannot be used independently. There can be any number of elif
statements, but only one if
statement. Notice this uses the same syntax as the regular if statement. Lastly, if neither the if
nor the elif
statement(s) are True
, there is an else
statement. There can also be only one else
statement, though it is not required.
Another important issue regarding if
and other statements is the code block formatting. Code within the conditional block must be indented.
Loop
Loops are powerful tools that are used to repeated run a block of code without having to rewrite it.
While Loops
A while
loop is similar to a repeated if
statement. It repeatedly executes a piece of code until a certain condition no longer holds true. In physics, they are most often used to update an object over a certain amount of time.
ball.pos.x = 5 # ball's x position t = 0 deltat = 0.1 while t < 1: ball.pos.x += 1 # ball's x position increases by 1 every 0.1 seconds t += deltat
For Loops
A for
loop is used when iterating over an iterable sequence, such as a list, tuple, or string. When using for
, the program iterates through each element of the sequence
To print each component of a list of animals:
animals = ["dog", "cat", "bird"] for animal in animals: print(animal)
To print each letter in the word "yellowjackets":
for character in "yellowjackets": print(character)
To print each number in a range from [0, 5):
for i in range(5): print(i)
Nested Loops
A loop may contain loops within them. A loop that contains another loop inside it is called a nested loop. Here is an example of a nested loop:
students = ["Sam","Joe","Fred"] snacks = ["cookies","chips","candy"] for student in students: for snack in snacks: print(student + " got " + snack)
This nested for-loop goes through every element of both of the lists and gives each snack to each student.
Functions
Functions are code blocks that take in an input and execute some code. They help you organize your code and reduce repetition.
A simple example of a function is:
def currentYear(): print("2022") currentYear() # This line calls the function to be executed
Functions always start with the def
keyword. Once the function is created, it can be reused over and over again. A function must be created before it can be used. An example of that is the print function.
The example below is a function that takes in the parameters x and y.
def add(x, y): sum = x + y print(sum)
This example contains two functions: mult(x, y)
and print()
Return Variables
Functions can be used to output a value using the return
keyword. This is the output of the function. This value can then be used elsewhere. One common application is to use the print()
function to show what is returned.
def mult(x, y): return x * y product = mult(5, 5) print(product) # will print 25
In this example, product
stores the return value of the function mult(x, y).
Error Handling
"Ask for forgiveness, not permission". The try and except statement handles exceptions. Exceptions are errors that happen when you run a program. Sometimes, we want to execute code when an error occurs, and for this, we can use a try and except statement to solve the problems.
Exceptions
Python has built-in exceptions such as the FileNotFoundError
, ImportError
, and ZeroDivisionError
, If an exception occurs, one of the exceptions will be thrown. Developers will need to deal with the exceptions thrown or the program will crash. This is when the try-catch
block is used.
Here is a sample structure of the try-except
block:
try: <do something> except Exception: <handle the exception>
try
: the code that may have an exceptions. If an exception is raised, this block of code immediately terminates and jumps straight into the except block
except
: this block of code executes only if the try block raises an exception. It cannot be on its own and requires a try block before it.
else
: this block is only executed if no exceptions are raised in the try block.
finally
: the code in this block is always executed at the end whether the try block raises an exception or not.
Here is some example code:
def fail(): 1 / 0 # this raises an exception because a number cannot divide by 0 try: fail() except ZeroDivisionError: print("cannout divide by 0") finally: print("continue")
The output of this code is as follows:
exception occurred continue
Import
Import is a special keyword in Python that allows us to external libraries into our code. A library is a collection of functions and other components that can be used to extend the functionality of Python. VPython is an example of such external library.
math
module
The math
module is the one of the most commonly used modules in Python development as it allows you to use more complex math equations. Importing the math module is as follows:
import math
Once imported, you can access all of its functions by prefixing them with math.
.
Here are some of the most commonly used functions provided by the math module:
math.sqrt(x): Returns the square root of x. math.pow(x, y): Returns x raised to the power of y. math.sin(x): Returns the sine of x (x in radians). math.cos(x): Returns the cosine of x (x in radians). math.factorial(x): Returns the factorial of x. math.log(x, base]): Returns the logarithm of x to the given base, uses the natural logarithm if no base is specified. math.pi: The mathematical constant π. math.e: The mathematical constant e, which is the base of natural logarithms.
Here’s a simple example demonstrating how to use some functions from the math module:
import math # Calculate the square root print("Square root of 16 is:", math.sqrt(16)) # Calculate power print("3 raised to the power of 4 is:", math.pow(3, 4)) # Trigonometric functions angle = math.pi / 4 # 45 degrees in radians print("Cosine of 45 degrees is:", math.cos(angle)) print("Sine of 45 degrees is:", math.sin(angle)) # Logarithm print("Natural logarithm of 10 is:", math.log(10)) print("Logarithm base 10 of 100 is:", math.log(100, 10)) # Constants print("Mathematical constant pi:", math.pi) print("Mathematical constant e:", math.e)
Examples
This is an example of using Python to implement a mathematical model. For the gravitational principle, it is known that the force of gravity is:
[math]\displaystyle{ |F_{G}| = G \frac{M_{1} M_{2}}{R^{2}} }[/math]
We can use this knowledge to create a variable called gravitational_force
, and assign it the magnitude of the gravitational force between objects [math]\displaystyle{ M_{1} }[/math] and [math]\displaystyle{ M_{2} }[/math]. Given variables m1
, m2
, and r
, the Python code would be:
gravitational_force = 6.67 * 10 ** -11 * m1 * m2 / (r ** 2)
Normally, in a Python physics model, we would have an outer loop that updates the variables and values for each iteration, which is where an update statement such as this would go. This could be used to determine the variable gravitational force on a skydiver jumping from a great height, as the force would not remain constant. In a finalized GlowScript model, this would look like this:
Connectedness
As a high-level and syntactically simple language, Python is an excellent choice for the development of complex systems. Proficient knowledge of Python is critical to implementing scientific models, machine learning algorithms, and much more.
History
The concept of the Python programming language was developed in the late 1980s. In 1991, Guido van Rossum created the first version of the Python programming language, releasing it with the original intent of code readability (thanks to its use of whitespace and indentation).
In 2000, Python 2 was released which contained several new backwards-incompatible features, such as list comprehension and a garbage collection system.
The first version of Python 3 was released in 2008, while Python 2 was still in use, creating a rift between Python developers on version usage.
Finally, on January 1st, 2020, Python 2 reached its end-of-life date, no longer officially supported by the Python Software Foundation.
See also
- VPython describes the basics of VPython and using it to create 3D models
- The GlowScript wiki page provides detailed instructions for how to use VPython on the GlowScript website
Further reading
- These Introductory Books are a great resource for beginners looking to learn Python
- What exactly can you do with Python? Here are Python's 3 main applications: This article provides several examples of industry applications of Python
- How to build your own Neural Network from scratch in Python gives a comprehensive guide on applying Python to machine learning
External links
- For a more comprehensive guide with getting Python set up, go to https://www.python.org/about/gettingstarted/
- The Python Package Index (PyPI) is a repository of community-created Python software packages that can be easily installed and used with Python code