Machine Learning Apps: Why Should You Integrate ML Into Your Mobile App?

Machine Learning Apps: Why Should You Integrate ML Into Your Mobile App?

Aamir Qutub
Aamir Qutub
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Machine Learning Apps are fast invading into our everyday lives as the technology is progressing towards delivering smarter mobile-centric solutions.

Embedding mobile apps with Machine Learning, a promising segment of AI, is spelling out a lot of advantages for the adopting companies to stand out amidst the clutter and rake in sizeable profits.

Many organizations are investing heavily in Machine Learning to reap its benefits. Based on a prediction, Machine Learning as a service market will touch $5,537 million by 2023 while growing at a CAGR of 39 per cent from 2017-2023.

 

What Are Machine Learning Apps?

Machine Learning Applications refer to a set of apps with Artificial Intelligence mechanisms that are designed to create a universal approach throughout the web to solve similar problems. The ML apps are based on a continuous learning process and provide end users with the exceptional user experience.

Machine Learning is implemented as a piece of software, which is specifically developed to improve its own behaviour and predictions by learning from the data it collects.

 

Basic Principle Behind ML

The functionality of ML is quite similar to the human central nervous system in nature.

In order to transmit every piece of information to the brain, the neural networks within one’s nervous system generate electrical impulses and quickly pass on the simplest signals, one neuron to another.

Machine Learning is based on the implementation of these very fundamentals and any project based on it goes through a very similar workflow.

 

ml-workflow

 

Machine Learning empowers an app to recognize patterns and apply its learning to continually improve the user experience and eliminate friction.

Most of the modern apps that are poised for success have embedded this Artificial Intelligence mechanism, working in the background.

 

Let’s look at some of the ways Machine Learning can benefit your mobile application:

 

How is Machine Learning Benefiting the Applications?

Machine Learning holds the potential to improve outcomes for mobile apps in the following ways –

 

a) Lend A Touch of Personalization into your App

In today’s world of limited product differentiation, personalization is one of the key ways to stand out amidst target groups.

Machine Learning facilitates the app functionality customizations for different users by analyzing the revealed data from their behaviour.

This helps in serving the most customized options and even the most relevant ads, optimizing marketing costs.

 

b) Provides an Efficient Searching Experience for Applications

With the data led world progressing at a high speed, efficient searching has gained even more importance in creating a good user experience.

Today, when users search for their queries on the internet, they expect the results to be closely aligned with their search intent.

Machine Learning apps make this extremely relevant, seamless and quick to achieve.

 

c) Provides Way To Detect And Control Fraud through Applications

 

fraud-prevention-using-ml

 

Machine Learning helps to gauge if the app is vulnerable to security threats and hence plays a vital role in preventing frauds.

The analysis of GPS traces and usage patterns by means of ML tools assist a great deal in uncovering various suspicious activities.

This way, by analysis, continuous learning and automation, Machine Learning helps applications to adhere to and implement the high level of security standards.

 

d) Supports Applications with Visual and Auto Recognition

By means of neural networks, applications with  Machine Learning integration, detect various faces and recognize different words for enabling the translation.

This is largely helpful in making the experience seamless and less time-consuming for the end users.

 

e) Helps Applications with Advanced Data Mining

The applicability of Big Data is uncontested and multifold. However, to process the huge amount of the raw data, a lot of effort is required to analyze and categorize the information.

Machine Learning is equipped to process multiple profiles at once and hence helps to create well-aligned strategies for an app that is backed by robust data.

With all these promising features, it’s time to adapt to their world-class applications across various industries.

 

Most Successful Industrial Applications Of Machine Learning

Owing to its myriad advantages, Machine Learning has been applied by various industries to augment the performance and usefulness of their apps, both for the end-users and the business itself.

 

Here are some successful applications of the same in different industries –

 

Ecommerce Machine Learning Apps

Machine Learning has benefited many e-commerce giants such as  Amazon, Alibaba and eBay. As such, e-commerce stores need to have a fat advertising budget for acquiring their customers.

The retention of their acquired customers and improving the lifetime value of each customer acquired is essential to provide a boost to their bottom line.

Machine Learning techniques have really helped with this objective by simplifying cross-selling and upselling.

It basically enables an inbuilt mechanism to fetch the best product recommendations that align with a customer’s preferences, which makes cross-selling and upselling far more successful.

Moreover, Machine Learning has helped e-commerce operators in the following aspects:

  1. Shipping Cost Optimization
  2. Supply Prediction
  3. Demand Prediction
  4. Fraud Prevention

 

personalised-customer-experience

Machine Learning Enables Personalization Of Shopping Experience (Source)

On the other hand, customers who are using ML-based e-commerce apps, seem to be enjoying the more personalized shopping experience with recommendations.

It is consuming the least of their time and helping them make the best purchase based on their preferences.

 

Fitness & Health Machine Learning Apps

Machine Learning has been driving significant results in the fitness industry. It has enabled fitness providers to roll out personalized services for their users.

For instance, ML empowers coaches to auto-curate a workout routine that is client-focused as per their fitness goals and body capabilities. It has helped to save a lot of time for users to improve on their form and technique.

As a prominent example, the Optimize Fitness app is one that is empowered by Machine Learning. It helps its users gain access to a personalized workout routine with videos of the most relevant exercises for them.

Personalising fitness app using ML

Personalized Suggestions Given By Optimize Fitness App

Machine Learning has been useful in reducing the cycle time of lengthy and expensive drug discovery processes. It has been deployed to determine genetic markers and genes to offer patients a personalized treatment.

Machine Learning is also being used to aid in the speedy diagnosis of diseases, and to maintain smart electronic health records.

 

Taxi and Food Delivery Machine Learning Apps

The applicability of Machine Learning has also brought great results in delivery services and cab aggregation.

World’s most popular cab service, Uber, has created a great user experience for its active app users – both riders and drivers by relying on Machine Learning.

Uber app works with ML tools at the backend to help the riders with an accurate Estimated Time Of Arrival (ETA) and cost based on their trip details, factoring in the real-time traffic.

For the drivers, it presents optimized route information in real-time. Moreover, in order to arrest fraudulent transaction, Uber is relying on ML via practices like facial recognition, or detecting the usage of stolen credit cards.

In fact, Uber has also integrated ML to its venture Uber Eats. It is providing its users with customized recommendations and precise ETA for their food deliveries.

 

Entertainment Machine Learning Apps

Machine Learning is also making the entertainment world more fun with endless personalizations.

Among the entertainment applications, Netflix is one that deserves a mention. When it comes to watching online movies and TV Shows, Netflix is indeed the most trending app for all age groups. Its rising popularity and viewership retention strategies depends a lot on its personalized shows and movies recommendations.

Netflix has saved about one million dollars on account of the automated and personalized recommendations that its platform furnishes for the users. 80 percent of the recommendations the app gives out can be attributed to its Machine Learning backend.

Snapchat has also garnered significant popularity owing to its filters that help its app users spice up their photos with interesting options. With Machine Learning, the app has been made capable to perform face recognition, localize features and add the filters very accurately.

 

face-recognition

The Snapchat App Face Detection Capability Rests On Machine Learning (Source)

 

Education Machine Learning Apps

Machine Learning apps enabled chatbots to answer student’s queries in real-time, assess their assignments and provide unbiased grading as per their performance.

It has witnessed a tremendous response in the education sector. It has helped both students and teachers fair better in the knowledge exchange process.

Teachers as human beings will naturally have to go through a time limitation to analyze multiple students in detail and recommend better learning techniques or provide career guidance. ML powered chatbots are seamlessly stepping in right here to help students.

 

Finance Machine Learning Apps

Machine Learning apps have also been helping financial organizations with significant optimisation. It’s turning out to be very helpful for banking and finance companies to scrutinize transactions of customers, social media activities and browsing history to arrive at accurate credit ratings. This done correctly has clear implications for profitability.

More importantly, Machine Learning is being deployed to prevent frauds by analyzing transaction behaviour and also offering personalized customer services.

Machine Learning has also been bringing in real benefits for personal finances.

For example, the Oval Money application works with ML techniques to help people budget and save optimally by analyzing their spending habits along with that of the wider community.

This way, by automatically understanding behaviour and patterns on a large scale, the app is meting out a flexible and completely automated saving method to meet one’s financial goals.

 

Machine Learning principles of Oval Money App

Oval Money App Works On Machine Learning Principles (Source)

 

In short, the applications of ML have reached across various industry verticals to cultivate meaningful benefits.

 

Now comes the question, how to proceed with the implementation of ML in your app?
Is it that complicated? Well, with all the available open source libraries, it’s not.

 

How To Go Ahead With The Implementation of Machine Learning?

There are several open source ML libraries available for the app developers to embed in their applications. Many trusted companies are providing it, to enable seamless adoption of this technology.

 

Five such well-known libraries are –

 

I. TensorFlow

It is an open source ML library by Google Brain Team. It is helpful for numerical computation by means of using data flow graphs. It enables to execute computations to numerous CPUS/GPUS in any device via a single API.

 

II. Core ML

It is specifically meant for iOS app developers, and it helps them to integrate ML models in their applications. Core ML is well known to provide a boost to both app performance and efficiency.

 

III. Microsoft Cognitive Services

Microsoft Cognitive Services enable the developers to build apps that are smart. It empowers the apps to be able to see, hear, comprehend and converse using natural means of communication.

 

IV. Amazon Machine Learning Services

Machine Learning Services from Amazon enables developers to build ML models by means of using visualization tools and wizards. It also provides a mechanism to obtain predictions for mobile application without administration of any infrastructure.

For example, it can be used for forecasting of demand, prediction of frauds and the number of clicks.

 

V. Ignio

It is an ML-based self-learning platform by TCS. It is designed to automate and optimize IT operations. It is quite powerful in terms of grabbing environmental information and also resolving common errors by itself. In case of inability to resolve, it passes on the problem to the human and trains itself for the future.

 

To sum up, Machine Learning is among the most striking avenues of AI. It has massive potential in improving outcomes of mobile applications.

With its several advantages, it’s making applications user-friendly, full of utilities and also beneficial for the company that owns the app. It’s due to the same reason, that the most disruptive and popular apps have already adopted the technology and many others are fast adopting.

If you wish to build an app that creates real value for your user and your business, Machine Learning can be a safe bet to embed, so as to contribute towards your goal.

Have an amazing app idea? Can’t wait to put it out there?

Book a FREE consultation with one of the best app makers in Australia.

Want to explore more? Check out our guide on How to Choose Right App Developers in Australia?

Aamir Qutub
Aamir Qutub
Aamir is an award-winning CEO and founder at Enterprise Monkey that has recently been voted as Australian Smartest Innovation of the year. Aamir is passionate about helping Small to Medium Businesses, Startups and Large organisations. He has recently been appointed the Director and CTO of Composeright. The Minister of Planning has also appointed Aamir the Member of Geelong Authority. He is also the founding Secretary of Pivot Summit- an international digital conference.
Aamir Qutub
Aamir Qutub
Aamir is an award-winning CEO and founder at Enterprise Monkey that has recently been voted as Australian Smartest Innovation of the year. Aamir is passionate about helping Small to Medium Businesses, Startups and Large organisations. He has recently been appointed the Director and CTO of Composeright. The Minister of Planning has also appointed Aamir the Member of Geelong Authority. He is also the founding Secretary of Pivot Summit- an international digital conference.

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