1 / 16

Machine Learning App Development

In this blog, Iu2019ve covered the step-by-step guide for machine learning app development. Each step is significant in developing the perfect architecture of a successful machine learning project. Also, it is essential to follow each of the mentioned steps in the same order as presented above.

11470
Download Presentation

Machine Learning App Development

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. The Complete Guide For Machine Learning App Development NIMBLE APPGENIE LLP

  2. INDEX • What is Machine Learning? • Market Scenario of Machine Learning • Approaches for Machine Learning App Development • States of AI Powered Mobile Apps • Why Should you Integrate AI into Mobile Apps? • Step Wise for Machine Learning App Development • Three Primary Ways to Implements AI • How to Starts Implementation of AI into Apps? • Top 5 AI Integrated Apps • Conclusion

  3. WHAT IS MACHINE LEARNING? • Machine Learning is the science of getting computers trained and understanding and acting as humans do. • When people think about machine learning (ML), they think of logistics, forums, calculus figures in the air, lots of numbers, and almost every important, relevant thing. • The Machine learning algorithms used in machine learning app development could be divided into three ways:

  4. TYPES OF MACHINE LEARNING

  5. MARKET SCENARIO OF MACHINE LEARNING • Machine learning is a digital transformation, and by the end of 2021, is estimated to have received USD 58 billion in cumulative investment. • The (machine learning) ML industry growth is predicted to reach around USD 9 billion in the latter part of 2022 at a compound annual growth rate (CAGR) of approximately 42%. • According to Markets And Markets, the Artificial Neural Network Market size grew from $117 million in 2019 to $296 million by 2024, at a CAGR (Compound Annual Growth Rate) of 20.5%.

  6. STATS OF AI-POWERED MOBILE APPS • According to research by Gartner, AI implementation was rare; only 10% – 15% of enterprises had deployed AI or would do so shortly. But now, in 2021 around 37% of organizations have implemented AI, which is a 270% increase in four years. • According to Microsoft, around 44% of organizations fear that they’ll lose out to startups if they’re too slow to implement AI. • According to the Street Wall Journal, from now until 2030, AI advancements can increase Gross Domestic Product (GDP) by 14% across the globe. • According to research, GrandViewResearch foretells that USD 25.0647 billion is the anticipated value of the global AI market by 2028 at a CAGR of 40.2%.

  7. APPROACHES FOR MACHINE LEARNING APP DEVELOPMENT Focus on Native Development Use Pre-Built Models Conversion Between Model Formats In machine learning app development, always adopt a step-by-step approach where each model used in the ML (machine learning) module is converted from one format to another. To show similar results on multiple platforms, keep checking out suitable converters that enable the model conversion. It is a tip that will become handy in your development process. •  Machine learning and Artificial Intelligence technology provide efficient and proficient services based on its search from the data set.  • Native applications are rapid, responsive, and offer a significant user experience. • Using pre-built models is a shortcut way of building machine learning apps. • As you can not set the foundation of your machine learning app on a weaker model because it would collapse. • The reason is that they know what and how to fix and optimize everything to provide you with good functionality and the best results.

  8. STEPWISE GUIDE FOR MACHINE LEARNING APP DEVELOPMENTS • Selection and Formulation of Problem Statement • Developing and Strategizing Plan • Gathering Data • Preparing and Analyzing Data-Sets • Pre-processing Datasets • Constructing Structure • Developing Machine Learning Model • Train The Machine Learning Model • Test The Created Model • Deployment of The Model

  9. WHY SHOULD YOU INTEGRATE AI INTO MOBILE APPS? • Personalization- Any AI algorithm attached to your mobile application can analyze several sources of information, from social media activities to credit ratings and also provide recommendations to every user device. • Advanced Search- The algorithms learn from the different queries asked by customers and prioritize the results accordingly. Modern mobile applications and search algorithms enable you to collect all the user data, including typical actions and search histories.  • Predicting User Behavior- The significant advantage for marketers of AI-based machine learning iOS app developmentand android app development, is that they understand the preferences of the user and behavior patterns. 

  10. CONTINUE……… • Improved Security Level- Artificial Intelligence can make a very effective marketing tool for mobile apps to secure app authentication and streamline the process. • More Relevant Ads- Many industry experts have said that if you want to move forward in this never-ending consumer market, it can only be achieved by personalizing every experience for every customer.  • User Engagement- The Artificial Intelligence (AI) development services and solutions engage companies to offer a span of features and balanced customer support. 

  11. THREE PRIMARY WAYS TO IMPLEMENT AI Behavioral Reasoning Recommendation The technology based on the customer’s preferences then suggests the most popular options in their watch playlist or that individuals with similar tastes have watched. This is an amazingly popular technology for streaming services and is currently being executed into various applications. • Every time someone tries to impersonate an online transaction and takaes your data via fraudulent activities without your knowledge, the AI system can track the uncommon behavior and stop the transaction then and there only. • AI is a very proficient technology that absorbs the power of reasoning for solving queries. • For example, applications like Google Maps, Zomato, Uber, and many more individuals travel to different areas often change the course or route according to traffic conditions.

  12. HOW TO START IMPLEMENTATION OF AI INTO APPS?

  13. TOP 5 AI-INTEGRATED APPS • Siri- As Siri is very popular, I don’t think it needs any introduction. Indeed, it is a virtual voice assistant app by Apple.It is available on all iOS devices.  • Cortana- Cortana is another innovative and best AI-powered app launched by Microsoft, and it is also a virtual voice assistant AI mobile app.  • Google Assistant- Google Assistant is the most advanced and used virtual voice assistant AI mobile app launched by Google.  • Alexa- Alexa is commonly known as Amazon Alexa because it is an AI-powered app launched by Amazon.  • Elsa- Elsa is an AI-powered app that helps users to learn how to speak English. Through this app, users can learn the pronunciation and meaning of the words.

  14. CONCLUSION I’ve covered the step-by-step guide for machine learning app development. Each step is significant in developing the perfect architecture of a successful machine learning project. Also, it is essential to follow each of the mentioned steps in the same order as presented above. I hope now it’s clear to you how to implement mobile apps, and it is time to apply the top-notch performance and quality for AI to bring out the best in the application. AI is becoming the future of the advancement of mobile app development.

More Related