Is Python Good for AI and Machine Learning?

Artificial Intelligence
Written by:
App Academy
Published on:
July 10, 2023
python code on a computer screen

Explore why Python is a top choice for artificial intelligence and machine learning, with several compelling reasons highlighting its suitability and the advantages of using Python in these fields.

Artificial intelligence (AI) is a growing field of software development, and machine learning (ML) is part of AI – machine learning takes data and algorithms and uses them to help AI learn and improve.

When it comes to programming for AI and ML, Python is a powerful and versatile language. Thanks to human-friendly syntax, Python has become one of the top coding languages for ML and AI.

If you’re ready to take your programming career to the next level and be part of the evolving world of machine learning and artificial intelligence, then learning Python is one of the best things you can do for yourself.

But what makes Python so good for AI? Let’s take a look at how it works.

Is Python Good for AI?

Yes! Python is powerful, scalable, and readable, making it almost tailor-made for complex AI and ML models. Unlike traditional software projects, AI programs and ML algorithms require a unique technology stack, specialized skills, and extensive research. Python empowers developers to go further, from development to deployment and maintenance.

Reasons Python is a Good Programming Language for AI

As a coding language, Python offers many advantages to its users. Those advantages translate into making it one of the best, most powerful, and most popular programming languages for AI and ML.

Great Libraries

Python works so well for AI and ML thanks in no small part to its exceptional library ecosystem. These libraries, offered by sources like PyPi, contain pre-written code modules that eliminate the need for developers to start from scratch each time they write a new program. Python’s enormous library system facilitates the development process, allowing users to focus on ML and AI functionality rather than writing repetitive code.

This becomes especially valuable in ML, where continuous data processing is essential to functionality. With Python, the ML and AI possibilities are endless, as the language offers a library for almost every action developers require in their AI and ML endeavors. Some popular ML and AI libraries and their functions include:

  • NumPy, a numerical library and probably one of the most popular libraries for writing Python for AI
  • SciPy, for scientific and technical AI computing
  • Theano, based on NumPy and used to construct deep learning models
  • Pandas, for data analysis
  • PyBrain, for ML tasks

Of course, many more Python libraries are available that cater specifically to AI and ML coders. The ones listed here are just a few examples of how programmers can find the necessary tools.

Flexible

One of Python’s trademark qualities is its flexibility. That flexibility offers developers the freedom to choose between object-oriented programming (OOP) and scripting. This also allows Python to integrate seamlessly with other languages; for example, you can write part of your code in Python and the rest in C++.

Python empowers developers to choose from various programming styles based on their specific needs. This versatility gives Python an edge as the language of choice for AI and ML, enabling developers to create impactful applications easily. Some common Python styles include:

  • Imperative: good for making sure code is executed according to a desired flow and actions are performed in sequence
  • Object-oriented: good for modeling real-world entities, such as a banking system
  • Functional: good for concurrent programming
  • Procedural: good for using Python to automate tasks

Readable

Thanks to its understandable syntax, Python allows for seamless collaboration and rapid development among ML and AI programmers. Python code is easily understood, modified, and copied. There’s little (if any) confusion or conflicting paradigms, thereby allowing a more efficient exchange of algorithms, ideas, tools, and more between programmers. Even when joining an ongoing project, developers can quickly grasp what’s going on. Additionally, Python offers optimization capabilities for testing, debugging, and streamlining the development process.

Scalability

Python is simple enough to build an AI or ML platform on a small scale and then make it bigger and more complex as the need arises. This way, developers can write and test their work quickly before adding on. The entire development process becomes more efficient because problems are solved on a smaller scale, which is ideal for AI or ML projects requiring a fast turnaround.

Versatile & Platform Independent

The term “platform independence” refers to a programming language or framework that allows developers to implement things on one machine and use them on another device without any (or with minimal) modifications. Unlike some programming languages, Python seamlessly operates across various platforms, including Unix, Linux, macOS, and Windows. This allows developers from different platforms to collaborate, execute code, and implement changes within the program.

Platform independence in Python for AI and ML means the ability to implement attributes on one machine and seamlessly transfer them to another without any (or with few) modifications. Python’s wide-ranging platform independence makes it an ideal choice for ML programmers and builders because they can leverage diverse computing resources while maintaining consistency and compatibility.

Community Support

Python is an open-source language with built-in community support. For new Python coders, resources are available to help them find information and solve problems. As ML and AI grow in popularity, community forums allow Python users to exchange information and collaborate on projects. Learning Python means being at the forefront of ML and AI innovations because you have a robust global community.

Easy to Learn

Python is a popular first coding language because of its simple syntax, making it one of the easiest programming languages to learn and master very quickly. Even non-coders coming into the field for the first time generally find Python to be a solid first language. Because of this, it’s also a popular language for ML and AI. The low barrier to entry makes it simple for anyone to start coding complex algorithms and programs almost immediately. For those who have never written a single line of code before and who are interested in programming AI or ML, Python is the quickest way to get started.

Good Visualization Options

Despite the complex backend of AI and ML, humans still need to be able to read and understand the outcome. Python’s library modules allow developers to create optimized visualizations for human users, like charts and reports. AI and ML become more user-friendly, making it easier to expand AI and ML usage across industries and tasks.

Get Started Learning Python with App Academy

While App Academy’s bootcamps do not directly prepare students for a career in machine learning, we can help you take the important first step of learning Python and other important technical and soft skills that can help you along your journey. From there, you can work to acquire any additional skills needed along the path toward your dream career.

Schedule a call with an App Academy admissions counselor to find out how we can help you learn Python quickly and easily, so you can take the first step toward a new and exciting career in machine learning! And, if you’re ready to dig in deeper, start exploring our programs to see which one might be a good fit for you!

LEARN TO CODE FOR FREE

CODING COURSES

SHARE THIS

Don’t miss a beat with The Cohort!

We’ll send you the latest Tech industry news, SWE career tips and student stories each month.

You can unsubscribe at any time. View our Privacy Policy.
Thank you! You've now been subscribed to The Cohort.
There has been an error. Please try again.

Interested in an App Academy Bootcamp?

One of our coding bootcamps, prep course or free online coding platform (App Academy Open) could be the next step you need to make a lasting career change!