What is Python?
Python is one of the most popular programming languages in the world. Created in the early 1990s, Python can be employed for a wide range of uses, from automating repetitive tasks and writing web apps to building machine learning models and implementing neural networks. Researchers, mathematicians, and data scientists in particular like Python because of its rich and easy to understand syntax and the wide range of open-source packages available. Packages are shared code libraries that are freely available for anyone to use.
Python has a simple, easy to learn syntax, which emphasizes readability. Applications written in Python can run on almost any computer, including those running Windows, macOS, and popular distributions of Linux. Furthermore, the ecosystem contains a rich set of development tools for writing, debugging, and publishing Python applications.
Finally, Python is supported by an active user community that is eager to help new programmers learn the Pythonic way, where you don't just get the syntax right, but use the language the way it was intended.
Running Python code
Python is an interpreted language, which reduces the edit-test-debug cycle because there's no compilation step required. In order to run Python apps, you need a runtime environment/interpreter to execute the code.
Most of the runtime environments support two ways to execute Python code:
- Interactive mode: In this mode, each command you type is interpreted and executed immediately, and you see the results each time you press ENTER. The interactive mode is the default mode if you don't pass a filename to the interpreter.
- Script mode: In script mode, you put a set of Python statements into a text file with a .py extension. You then run the
python
interpreter and point it at the file. The program is executed line by line, and the output is displayed. There's no compilation step, as shown in the following diagram:
Note
Most Python implementations partially compile scripts, turning the source code into byte code, which can run on any supported platform. This partial compile is done to improve performance for subsequent runs of the script and happens automatically. You can also generate a "compiled" version of the script and distribute an app without providing the full source code.
Python implementations
Python is licensed under the OSI open-source license, and there are several implementations available depending on your needs. Here are a few of the options available:
CPython, the reference implementation: The most popular is the reference implementation (CPython), available from the Python website. CPython is commonly used for web development, application development, and scripting. There are install packages for Windows and macOS. Linux users can install Python using built-in package managers such as apt, yum, and Zypper. There's also an online playground where you can try Python statements right on the website. Finally, the complete source code is available, allowing you to build your own version of the interpreter.
Anaconda: Anaconda is a specialized Python distribution tailored for scientific programming tasks, such as data science and machine learning. Check out more details on Anaconda here.
Iron Python: Iron Python is an open-source implementation of Python built on the .NET runtime. Learn more about IronPython.
Jupyter Notebook: Jupyter Notebook is a web-based interactive programming environment that supports various programming languages, including Python. Jupyter Notebooks are widely used in research and academia for mathematical modeling, machine learning, statistical analysis, and for teaching and learning how to code. Install Jupyter notebooks.
You'll use the Azure Cloud Shell to develop with Python in this module, but the summary has links to download and install Python on your local computer once you've completed this module.