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Python for Backend Development. Is it still relevant in the era of Go-lang/NodeJS Dominance?

Summary

Back-end technologies form the fundamental backbone of every tech stack. Though the back end of any application remains invisible to the users and that’s where all the magic happens. It’s no secret that Python is one of the friendliest and preferred open-source languages with an emphasis on code readability.

Let’s have a quick look at a few of the key reasons why Python is referred to as an ever-green coding language for all backend developers and has held the number one position as the ‘Most Popular Coding Language’ since its nativity in 1991.

1. Ease of work

Python is renowned for its simple syntax and shortcode length. This, paired with the fact that there are ample tutorials available on its usage, makes it fairly easy to learn. Moreover, Python being extremely well-designed and versatile is a platform-independent language and can be used on a wide variety of operating systems. This means the programmers can spend a lot of time figuring out the code and how it works on their particular development project.

Python is therefore an ideal backend language due to its simplicity and consistency, where the developers are able to write reliable systems with a vast set of libraries belonging to Machine Learning, Keras, TensorFlow, and Scikit-learn. Python’s extensive set of libraries and frameworks can be extremely useful and time-saving, which results in quicker turnover times and more productivity. Data analysis and business analytics using Python have gathered a lot of interest recently.

2. Ample web application frameworks

Python’s countless resources come in many forms, including a wide variety of web application frameworks. Here are just some you can choose from depending on the needs of your web apps such as Django, Flask, and others such as Bottle, Tornado, Hug, and CherryPy.

Also, the prominent use cases of Python are Web Development, Artificial Intelligence, Machine learning and its subfields, Data Science, Big Data, the Internet of things, Embedded systems, Fastapi, and Ethical Hacking. The list is huge!

3. Code Readability & Lesser number of lines

Python reduces the coding load around 4 times by diminishing the coding lines tremendously, say we are using Java for printing a simple ‘Hello World’, we would need to type the following code lines:

class HelloWorld {
public static void main(String[] args) {
System.out.println("Hello, World!");
}
}


whereas, in Python, the code changes to a single line as follows:

print("hello world!")

The codes in Python are very easy to understand with proper indentation and the language resembles plain English.

4. Dynamic Typing

In Python, we don’t have to pull our hair and worry about whether the value shall be string, int, float, and more. All we need is a simple, dynamic variable, to begin with!

5. Ease of Learning

One of the primary reasons Python is highly appreciated is that it’s instinctive and quite easy to learn, compared to all other programming languages. According to Lifehacker’s poll, it’s the #1 most popular programming language for first-time learners.

But Python doesn’t just facilitate the learning process, its readability also makes communication among programmers working on the same project later a smoother experience. This means that if another programmer works on later additions to the code, they would face no problem understanding and working with the original code. Although Python is deemed to be slow when compared with other backend languages, like C++ or Java, this fact has not actually slowed down its growth.

6. A Myth that Python is Slower

As Python is an interpreted language. Also, if we run your server on a 1980s computer then we shall consider Python slower. However, Python is way faster now with Python 3.x performance improvement.

Python vs Golang vs Node

There are a few things to be considered when selecting which might be right for us.

1. Scalability

Golang was created keeping scalability in mind. It comes with an in-built concurrency to handle multiple tasks at a particular time. Python uses concurrency but it is not inbuilt as it implements parallelism through threads. This implies if we are going to work with large data sets, then Golang would seem to be a more suitable choice.

Node.js spares the need to create a large monolithic core as we can easily create a set of microservices and modules and each of them shall communicate through a lightweight mechanism and run its very process. This in return helps to easily add an extra microservice and module, resulting in a flexible development process.

Also, any Node.js web app can be easily scaled both horizontally and vertically. To scale it horizontally, we need to add new nodes to the system whereas to scale it vertically, all we need to do is add extra resources to these nodes.

And finally, in terms of typing, we have more options in Node.js than in Python so it’s up to us to use weakly-typed JavaScript or strongly-typed TypeScript.

2. Performance

Python is referred to as both CPU and memory unfriendly but with a huge number of libraries, Python performs efficiently all the basic development tasks. Golang comes with inbuilt features and is more suitable for microservices software architectures.

3. Applications

Python outshines when used to write codes for artificial intelligence, data analytics, deep learning, and web development, whereas Golang is mostly preferred for system programming and is loved by developers for cloud computing and cluster computing applications.

4. Community & Library

One of the major advantages of Python is its wide number of libraries and its large supporting community. As we know Golang is still a growing language and does not have the number of libraries and community support that Python commands, but its adoption quality and rate of growth are commendable. It still is expanding every day!

In Node.js, libraries and packages are managed by NPM (Node Package Manager), which is one of the biggest repositories of software libraries. NPM is fast, well-documented, and easy to learn to work with, whereas, in Python, packages, and libraries are managed by Pip, which stands for ‘Pip installs Python’ and is reliable, easy to use, and very fast, so developers find it handy to work with.

5. Execution

When speed is the name you ask for, then Golang wins by a mile. Also, since JavaScript code in Node.js is interpreted with the V8 engine (in which Google invests heavily), Node.js’s performance is remarkable. And finally, single module caching is enabled in Node.js, which reduces app loading time and makes it more responsive.

As we know most startups have a limited budget when time is important and is also connected with money. A startup needs to find its supporting investors quickly and craves the best way to grow. Also, since they act in an environment of total uncertainty, hence flexibility matters. While testing out new ideas, a company needs to be ready to implement any changes as dictated by the current demand from the market. Python is often considered one of the best choices for startups for building the MVP as quickly as possible to attract investments and test the hypotheses as implementing new features becomes easy, creating iterations, and scaling the business becomes faster. Also, integrating with other software related to the product becomes easy and effective, even after the product released.

Go-lang or NodeJS or Python, it’s like choosing between the top 3 restaurants to eat at in our city. Depending on the current need of the situation, we can choose any of the three. Python can lead to a longer delivery roadmap but when considered from a management perspective, this turns out to be the correct decision when considering the long-term benefits.

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