When we talk about the present, we don’t realize that we are actually talking about yesterday’s future. And one such futuristic technologies to talk about is Machine learning app development or use of AI in mobile app development services. Your next seven minutes will be spent on learning how Machine Learning technology is disrupting today’s mobile app development industry.
“Signature-based malware detection is dead. Machine learning based Artificial Intelligence is the most potent defence the next-gen adversary and the mutating hash.”
― James Scott, Senior Fellow, Institute for Critical Infrastructure Technology
The time of generic services and simpler technologies is long gone and today we’re living in a highly machine-driven world. Machines which are capable of learning our behaviors and making our daily lives easier than we ever imagined possible.
If we go deeper into this thought, we’ll realize, how sophisticated a technology has to be for learning on its own any behavioral patterns that we subconsciously follow. These are not simple machines, these are more than advanced.
Technological realm today is fast-paced enough to quickly switch between Brands and Apps and technologies if one happens to not fulfill their needs in the first five minutes of them using it. This is also a reflection upon the competition this fast pace has led to. Mobile app development companies simply cannot afford to be left behind in the race of forever evolving technologies.
Today, if we see, there is machine learning incorporated in almost every mobile application we decide to use. For instance, our food delivery app will show us the restaurants which deliver the kind of food we like to order, our on-demand taxi applications show us the real-time location of our rides, time management applications tell us what is the most suitable time for to complete a task and how to prioritize our work. The need of worrying over simple, even complicated things is ceasing to exist because our mobile applications and our smartphone devices are doing that for us.
Looking at the stats, they will show us that
The idea behind any kind of business is to make profits and that can only be done when they gain new users and retain their old users. It might be a bizarre thought for mobile app developers but it is as true as it can be that Machine learning app development has the potential of turning your simple mobile apps into gold mines. Let us see how:
Based on all of this information, you can classify your customer behaviors and use that classification for target marketing. To put simply, ML will allow you to provide your customers and potential customers with more relevant and enticing content and put up an impression that your mobile app technologies with AI are customized especially for them.
To look at a few examples of big brands using machine learning app development to their benefits,
Upgrades, such as voice search or gestural search can be incorporated for a better performing application.
Amazon’s suggestion mechanism and Netflix’s recommendation works on the same principle that ML aids in creating customized recommendations for each individual.
And not only Amazon and Netflix but mobile apps such as Youbox, JJ food service and Qloo entertainment adopt ML to predict the user preferences and build the user profile according to that.
“Most analogue marketing hits the wrong people or the right people at the wrong time. Digital is more efficient and more impactful because it can hit only the right people, and only at the right time.” – Simon Silvester, Executive Vice President Head of Planning at Y&R EMEA
According to a report by The Relevancy group, 38% of executives are already using machine learning for mobile apps as a part of their Data Management Platform (DMP) for advertising.
With the help of integrating machine learning in mobile apps, you can avoid debilitating your customers by approaching them with products and services that they have no interest in. Rather you can concentrate all your energy towards generating ads that cater to each user’s unique fancies and whims.
Mobile app development companies today can easily consolidate data from ML that will in return save the time and money went into inappropriate advertising and improve the brand reputation of any company.
For instance, Coca-Cola is known for customizing its ads as per the demographic. It does so by having information about what situations prompt customers to talk about the brand and has, hence, defined the best way to serve advertisements.
Apps such as ZoOm Login and BioID use machine learning for mobile apps to allow users to use their fingerprints and Face IDs to set up security locks to various websites and apps. In fact, BioID even offers a periocular eye recognition for partially visible faces.
ML even prevents malicious traffic and data from reaching your mobile device. Machine Learning applications algorithms detect and ban suspicious activities.
After learning that what is machine learning app, let us take a look at the advantages of AI powered mobile apps which are never-ending for Users as well as for mobile app developers. One of the most sustainable uses for developers is that they can create hyper-realistic apps using Artificial Intelligence.
The best usages can be:
Machine learning empowers an optical character recognition (OCR) application to identify and remember the characters which might have been skipped from the developer’s end.
The concept of machine learning also stands true for Natural Language Processing (NLP) apps. So besides reducing the development time and efforts, the combination of AI and Quality Assurance also reduces the update and testing time phases.
Like any other technology, there is always a series of challenges attached to machine learning as well. The basic working principle behind machine learning is the availability of enough resource data as a training sample. And as a benchmark of learning, the size of training sample data should be large enough so as to ensure a fundamental perfection in machine learning algorithm.
In order to avoid the risks of misinterpretation of visual cues or any other digital information by the machine or mobile application, following are the various methods which can be used:
Some of the most popular apps such as Netflix, Tinder, Snapchat, Google maps and Dango are using AI technology in mobile apps and machine learning business applications for giving their users a highly customised and personalised experience.
Machine learning to benefit mobile apps is the way to go today because it loads your mobile app with enough personalization options to make it more usable, efficient and effective. Having a great concept and UI is one pole of the magnet but incorporating machine learning is going a step forward to provide your users with the best experiences.
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