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Learn moreR Algorithms in AI and computing forces working together: A small industry insight
When it comes to understanding computing processes, especially in today’s front end and backend development world, most of the times everything revolves heavily around analyzing the algorithmic architecture in tools, applications, or more complex pieces of software.
In fact, a thorough analysis of what concerns the algorithmic side of things within the computing processing industry has led to a common conclusion— algorithmic functions are moving with architectural rendering languages to build much more complex tools.
Let’s analyze some of these.
Algorithmic Retargeting in R and Python
The biggest Python application currently available for the mass market is the one related to front-end tools installed on enterprise sites.
This includes tools related to the web personalization industry, retargeting, remarketing, and Big Data manipulation, which are, in fact, a massive part of this statement.
The way these tools work is by restructuring a catalog onto specific user preferences.
This is done with the combination of Python features and R-rendering algorithms.
Python scripts are gathering big data from specific landing pages, which are then stored into a Javascript (generally) container.
After this is done, R algorithms are set up to render automatically the data, via (generally) AngularJS-coded scripts.
In this particular case, R functions are simply acting as a processing functionality.
Which Rendering Languages are Used
The above-mentioned process (gathering via Python, processed in R, and then exported in JS) is pretty common in a variety of architecture and, depending on the usage, the only variable for what concerns which programming languages are used is related to the “export” side of the matter.
To better explain this, let’s analyze the most common programming languages— JavaScript and C#.
JavaScript exports are common within CMS-based tools (the ones, to reference, installed on architecture like WordPress, Magento, Shopify, etc) given the easiness of its application to these very portals.
C#, on the other hand, is used when the tool (or software) is native and, therefore, the rendering langue used to print the pieces of information must be tailored onto the building architecture.
Why is this Considered AI?
Although for many, the matter could sound a bit dark and complicated, the combination of R algorithms to rendering languages (and computing power in general) could be aggregated within the AI sphere.
This is possible because, technically, those features (data gathering, processing, and printing) are related to AI as a whole.
Artificial pieces of intelligence in 2019 have moved, in fact, to this very matter: fast processing, personalization, and projections tailored onto Big Data, automatically gathered without any human input.
Futuristic projections of AI controlling our lives still live in science fiction and sometimes, given how they’re covered in many technology blogs/newspapers, these statements are extremely downgrading for an industry that is moving massively for what concerns both development and business awareness.
The Market Value
Pieces of software that are combining R algorithms and rendering languages as well as data automation have been covered by a variety of industry analysts.
These industry analysts have pointed out how they are building a futuristic architecture that is very likely to dominate the way we perceive data processing.
On top of everything that was said above, there is a significant part of the mobile market which is approaching the matter.
As we know, mobile has definitely become quite important, both from a development point of view (with new applications) and a purely business-related one (with many investors and new startups becoming enterprises).
Any app developers who have pointed out how algorithmic features within complex builds (especially on iOS) are now being embraced in the UK, which was recently selected as the European technological powerhouse.
We can safely say that this will become the industry standard in the near future.
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