Is Julia Set to Take Over Python the Same Way Python Took Over JAVA?

James Warner
5 min readDec 4, 2019

The programming language Python has come a long way since its inception in the 1990s. Little did Guido Van Rossum know when he developed Python that it would become one of the most popular languages in the world.

Today, Python is one of the most widely used programming languages on the planet and implemented for more than a few applications. Be it enterprise-level applications, machine learning, artificial intelligence models, or data science jobs, Python is excessively being used in almost every industry and field that is thriving.

Python’s Current Scenario

A Look at the Thriving Landscape of Python in Today’s Technology Scene

There are more than 8 million Python developers across the world who use Python religiously for a variety of purposes. Due to its dynamic nature and ease of scalability, Python has already turned into the developer’s preferred language.

And it is the reason why Python has been able to beat JAVA, which has been the developer’s language of choice for the longest time. But it can also be due to the natural aging process of a language that JAVA is nearing the end.

Most new languages are designed to solve modern challenges. While languages developed long ago are most efficient in the problems of their age, it becomes extremely difficult for them to stay relevant to changing industries and scenarios.

Python being an open-source language with such a large and supportive community, continues to stay relevant and at its peak even today. Its abundant libraries and in-built functions make it a popular choice among organizations, enterprises, developers, and data scientists. Even though JAVA is still being used by the java application development company for enterprise development, its relevancy in other fields is close to none.

If you look around, you won’t find a machine learning expert designing and training models on JAVA. But, despite this fact. JAVA stands as the second most popular language among developers across the globe.

How Python Took Over JAVA?

Python has been successfully able to take over JAVA in most of the spheres. When it comes to enterprise development, JAVA is facing threats from Google’s new programming language, Go.

However, as we progress into the future, the need for high-performance computing keeps on increasing more than ever. It is the need of the hour for data science and artificial intelligence models. Even though one might think that the deployment of extreme GPU might help gain speed and efficiency, the reality is far off. It doesn’t serve the purpose of processing needs. Instead, cutting-edge applications need other dependencies to perform optimally and help scientists and developers accomplish the desired goals.

Ultimately, this is ushering organizations and research institutions to look for robust programming languages designed for a niche task and deliver speed.

Entering the World of Julia — A Trending Technology

Having said that, the world is entering an age where everyone’s favorite Python is facing threats from a new entrant in the world of programming languages- Julia. Viral Shah, the CEO of Julia Computing, points out that in the early 2000s, developers preferred to use C language for system programming, JAVA development for enterprise applications, SaaS for analytics, and MATLAB for scientific calculations.

However, today’s developers are using Rust for system programming, Go for enterprise development, Python/R for analytics, along with Julia for scientific calculations.

This wasn’t the exact scenario a few years earlier. With Julia nowhere in the picture, the transition from MATLAB was to Python. Since machine learning started being used in almost every application that we know and Python libraries facilitated the much easier implementation of ML models, people switched to Python.

Earlier, MATLAB was the best option for the task and helped in analytics as well as scientific calculations. But, it was obvious that people looked fit easy-to-implement solutions that were easily understood, fast, high-performing, and scalable. Thus, Python filled into both JAVA’s and MATLAB’s shoes perfectly.

Comparing Julia and Python Which One Reigns Supreme?

One of the key differences between Julia and Python is the way both approach a particular problem. While Julia is purposefully built to mitigate the challenges around high-performance computing, Python has evolved into this role. Even though Python has till now been able to assert to the challenges of the industry, let’s accept that it wasn’t designed for the job. Developers and researchers have been lucky to let and watch Python evolve into a fast computation language.

On the other hand, Julia is quintessentially designed with high speed in mind. It’s barely a few months old and has already started generating buzz among researchers and data scientists.

A stable version of Julia called 1.8.5 was released a month ago and has already been further improved to effectively handle resource-intensive data science projects. Right now, the language has over 5000 developers contributing to Github and helping it become the go-to language.

However, Java is capable of developing almost any kind of application your business needs. So, if you are using java as a primary language for your project, you may find the detailed guide on How to Speed Up Java Enterprise Application Development helpful. Make sure you read it too.

Conclusion

Being a resource and speed intensive, two months old Julia is already giving the three-decade-old Python a tough battle. Even though it might be difficult to say whether it will completely take over Python or not, it will surely have an impact on the world with its features that are designed to handle complex computations.

Furthermore, as problems become resource-intensive and require rigorous computation, Julia may be able to become everyone’s favorite due to its high-performance capabilities. Unless Python wants to have a fate like JAVA, it would have to up the game and try to optimize its libraries for speed and efficiency.

It might not have to do with just launching new updates but completely transforming the engine to make it a more CPU-friendly language.

An advantage that Python already has over Julia is its abundant libraries. Since it is just in its infancy stage, it will take Julia a long time to come up with efficient and dynamic libraries and functions like Python. The fight between the two languages has just begun, but it is already turning into an advantage for researchers and scientists who require fast and efficient tools to achieve their goals.

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James Warner

Business Intelligence Analyst with Excellent knowledge on Hadoop/Big data analysis at NEX SoftSys.