woosquare
domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init
action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home2/magnimin/public_html/magnimind_academy/wp-includes/functions.php on line 6114wpforms
domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init
action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home2/magnimin/public_html/magnimind_academy/wp-includes/functions.php on line 6114wordpress-seo
domain was triggered too early. This is usually an indicator for some code in the plugin or theme running too early. Translations should be loaded at the init
action or later. Please see Debugging in WordPress for more information. (This message was added in version 6.7.0.) in /home2/magnimin/public_html/magnimind_academy/wp-includes/functions.php on line 6114As<\/em> the world started to acknowledge the true importance of artificial intelligence <\/strong><\/em><\/a>and machine learning<\/strong><\/em><\/a>, tech giants<\/span> <\/strong><\/a><\/em>across the globe are riding this emerging tech wave.<\/span> At some point of time, it was commonly believed that only smaller startups are generally more innovative and more dynamic than established and giant market leaders, but today this isn\u2019t the case with artificial intelligence<\/strong> and machine learning<\/strong>. The main reason is that the development of innovative services and products is usually very expensive, and only companies with a great number of resources can afford to try that process out.<\/p>\n As a matter of fact, those, who\u2019re making the most of technologies like artificial intelligence<\/strong> and machine learning<\/strong>, are the tech giants<\/strong>. The finest examples of fruitful, profitable use of these technologies are none other than Facebook, Google, Netflix, Amazon, Apple, NASA<\/em>, just to name a few. For all these tech leaders, artificial intelligence<\/strong> and machine learning<\/strong> form the core of all their strategic decisions.<\/span> Here, we\u2019ve put together some of the tech giants<\/strong> that are leveraging the power of these technologies to a great extent.<\/p>\n <\/p>\n According<\/em> to experts, Google is one of the most advanced tech giants<\/strong> in the fields of artificial intelligence<\/strong> and machine learning<\/strong>.<\/span> Fundamentally, Google\u2019s core search business is based on machine learning<\/strong> and predictive analysis to deliver search results which are monetized through advertising. It uses artificial intelligence<\/strong> in a number of its products and services like image recognition for Google Photos, speech recognition for Google Home and Google Assistant, and more.<\/p>\n When it comes to tools, Google developed TensorFlow \u2013 a machine learning<\/strong> system free to anyone.<\/span> However, probably the strongest point of the tech giant<\/strong> in these technologies is the diverse range of its cloud-based services offered to developers, like the Google Cloud AI machine learning<\/strong> tools.<\/p>\n <\/p>\n It\u2019s<\/em> a widely-known fact that Recommendations Systems are used by Netflix<\/strong><\/em><\/a> for suggesting shows or movies to its customers. It makes use of the watching history of other viewers with similar tastes to recommend what you might be most interested to watch next so that you can stay engaged and continue with your subscription.<\/p>\n Some other lesser-known features powered by artificial intelligence<\/strong> and machine learning<\/strong><\/em><\/a> include personalization and auto-generation of thumbnails, improved streaming quality, optimized stages of production, among others. Machine learning<\/strong> models are leveraged by the tech giant<\/strong> to create relationships between unstructured data and turn that into numbers. Netflix has surely accomplished a phenomenal job of implementing artificial intelligence<\/strong>, machine learning<\/strong>, and data science the right way to develop a product-based approach.<\/span><\/p>\n <\/p>\n While<\/em> the tech giant<\/strong> may have lagged its other peers in terms of artificial intelligence<\/strong> investments, it uses the technology to support a huge range of its applications \u2013 from optimizing battery usage in the devices to fraud detection and Siri. Today, millions of users talk to Siri<\/strong> <\/em><\/a>and the tech giant<\/strong> is looking to extend its talking assistant\u2019s application through its advanced smart home device, the HomePod.<\/p>\n The company has also allocated a significant amount of resources for the development of its machine learning<\/strong> systems, the majority of which are available via its developer program. In addition, it has made stakes in artificial intelligence<\/strong> startups. Some of these include Vocal IQ \u2013 a platform for voice interfaces, Emotient \u2013 it develops facial recognition technology, among others.<\/p>\n <\/p>\n The<\/em> tech giant<\/strong> has been quietly developing one of the most respectable portfolios of artificial intelligence<\/strong> powered applications, platforms, tools, and services. It employs artificial intelligence<\/strong> across its product portfolio in a large number of ways like building apps in Azure, chatbots in Skype, powering search results in Bing, automatic text transcription in Teams, among others.<\/p>\n It also offers a large portfolio of tools and platforms on Windows, Visual Studio, and Azure for developers. In the machine learning<\/strong> space, Microsoft\u2019s most significant acquisition was Maluuba, which is famous for offering natural language understanding technology.<\/p>\n <\/p>\n In<\/em> the social media landscape, Pinterest holds a curious place with its primary goal of curating existing content. And it invests in technologies to make the process more effective. Kosei, a machine learning<\/strong> company was acquired by this tech giant<\/strong> in 2015.<\/p>\n Today, virtually every aspect of Pinterest is touched by machine learning<\/strong> \u2013 from content discovery, advertising monetization, spam moderation to business operations, and more.<\/p>\n <\/p>\n Google<\/em> isn\u2019t the only tech giant that\u2019s exploring machine learning<\/strong> for its search feature. Baidu, the Chinese search engine, is also investing significantly in the applications of artificial intelligence<\/strong>. One of the most innovative developments of this company is Deep Voice<\/strong><\/em><\/a>.<\/p>\n It\u2019s a deep neural network<\/strong><\/em><\/a> that\u2019s capable of generating entirely synthetic human voices which are highly difficult to distinguish from actual human speech. Based on machine learning<\/strong> as its underlying technology, this innovation can offer major benefits for voice search applications and lots of other potential uses like biometric security and real-time translation.<\/p>\n <\/p>\n Sometimes<\/em> back, the leading American space agency notified the world about the discovery of Kepler-90i utilizing Google machine learning<\/strong>. Machine learning<\/strong> was used by NASA to help identify planets which were missed by the previous searches of Kepler data. <\/span><\/p>\n It\u2019s also researching to develop more distortion free and efficient communication networks by using an artificial intelligence<\/strong> based cognitive radio which would minimize noise distortion and increase reliability.<\/p>\n <\/p>\n As<\/em> expected, the world\u2019s leading sales platform is one of the major buyers of artificial intelligence<\/strong> companies over the last few years. One of its most highlighted machine learning<\/strong> systems is the so-called Einstein technology. It\u2019s said to have enabled Salesforce users to develop much more detailed customers\u2019 profiles.<\/p>\n <\/p>\n One<\/em> of the world\u2019s oldest and largest legacy technology companies, IBM has successfully managed to transition from earlier business models to modern revenue streams \u2013 consider Watson, one of the tech giant\u2019s<\/strong> renowned product powered by artificial intelligence<\/strong>. Watson has been successfully deployed in several medical centers and hospitals in recent years, where it demonstrated its skills for making accurate recommendations to a great extent. Watson machine learning<\/strong> technology is now being offered by IBM on a license basis \u2013 one of the frontline examples of an artificial intelligence<\/strong> application being offered in such a manner.<\/p>\n <\/p>\n It\u2019s<\/em> now evident that those who\u2019re making most of the advanced fields like artificial intelligence<\/strong> and machine learning<\/strong> are the tech giants<\/strong> like the above ones. Here, we\u2019re going to examine the key factors that make these tech leaders actually able to leverage these technologies on an entirely different level. Let\u2019s have a look at them.<\/p>\n <\/p>\n All<\/em> these tech giants<\/strong> can access may be more data compared to any other organization in the history of the tech world. There\u2019re lots of reasons behind this including lots of users, lots of traffic, presence on digital platforms, and the culture of connectivity. If you consider the above companies, you can find that most of them were born for the internet age with a clear understanding that systems have to be connected.<\/p>\n You may often hear things like \u2018digitizing\u2019 mentioned by numerous organizations. What makes these tech giants<\/strong> apart from the pack is that they\u2019re not concerned about digitizing because they were born digital.<\/p>\n <\/p>\n When<\/em> it comes to tech giants<\/strong>, the appeal that they possess in terms of talent, are some of the finest and hottest in today\u2019s tech landscape. So, they\u2019re naturally able to attract tremendous talents with fattier pay packets.<\/p>\n <\/p>\n We\u2019ve<\/em> seen some older technological trends that are obsolete now. So, you may ask why should you learn artificial intelligence<\/strong> and machine learning<\/strong>? Unlike other technologies, both of these two technologies have the ability to transform the future, especially if you consider the massive amounts of data being generated every single day. We can expect to see artificial intelligence<\/strong> deployments that have the ability to recognize, modify based on their internal architecture with minimum human supervision in sometime soon.<\/p>\n If you consider Baidu from the above list of tech giants<\/strong><\/em><\/a>, in near future we may not be able to distinguish the difference at all. Advancements in generative modeling will lead to increasingly sophisticated voices, images, among others. Apart from these, artificial intelligence<\/strong> and machine learning<\/strong> have many other advanced applications that we may be able to experience in the future. If you still haven\u2019t given joining the fields of artificial intelligence<\/strong> and machine learning<\/strong> a thought, probably this is the best time to do it.<\/p>\n <\/p>\n If<\/em> you consider the most impactful technological developments in recent tech history, artificial intelligence<\/strong> and machine learning<\/strong> have to be among them. Few fields come into existence with an objective of disrupting human lives, and these two surely belong to them.<\/p>\n To transform the future for good, tech giants are looking for people with skills, talent and development experience in the fields of artificial intelligence<\/strong><\/em><\/a> as well its branches like machine learning, deep learning<\/strong><\/em><\/a> etc. <\/span>By investing a small amount of time, money and effort, you can become a part of these tech giants<\/strong> and the upcoming exciting future.<\/p>\n1- Google<\/em><\/strong><\/h3>\n
2- Netflix<\/em><\/strong><\/h3>\n
3- Apple<\/em><\/strong><\/h3>\n
4- Microsoft<\/em><\/strong><\/h3>\n
5- Pinterest<\/em><\/strong><\/h3>\n
6- Baidu<\/em><\/strong><\/h3>\n
7- NASA<\/em><\/strong><\/h3>\n
8- Salesforce<\/em><\/strong><\/h3>\n
9- IBM<\/em><\/strong><\/h3>\n
10- Factors that help these tech giants to make most of artificial intelligence and machine learning<\/em><\/strong><\/h3>\n
10.1- Data<\/em><\/h4>\n
10.2- Talent<\/em><\/h4>\n
11- What\u2019s in it for you?<\/em><\/strong><\/h3>\n
In conclusion<\/em><\/strong><\/h3>\n