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Application of AI in Streaming Platforms

The gaming industry is undergoing a remarkable evolution driven by three important trends: <br>u2022 Explosive growth of esports <br>u2022 The rise of virtual reality (VR) experiences. <br>u2022 The arrival of next-generation game consoles <br>Esports, or competitive video gaming, has leapt from a niche hobby to a global phenomenon. With packed arenas and millions of people watching online, esports events can rival traditional sporting events in both viewership and revenue. Gaming tournaments have evolved into full-fledged leagues and are attracting investment from mainstream media companies and advertisers looking t

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Application of AI in Streaming Platforms

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  1. Application of AI in Streaming Platforms To gain an edge over the competition, streaming platforms are focusing on providing high-quality streaming services powered by AI and machine learning technology. Check outthis :Media Entertainment Business Review The pandemic has had a huge impact on the entertainment industry. In the future, people will spend more money on online streaming services than on TV set-top boxes. Therefore, the audience of these platforms has increased by orders of magnitude in recent years. Still, the streaming market is more competitive than ever. To personalize your viewing experience, all streaming providers use artificial intelligence. The pandemic has had a huge impact on the entertainment industry. In the future, more people will pay for online streaming services rather than TV set-top boxes. Therefore, the audience of these platforms has increased by orders of magnitude in recent years. Still, the streaming market is more competitive than ever. To personalize your viewing experience, all streaming providers use artificial intelligence. Benefits of AI in streaming services: customized thumbnail Streaming services need to convince viewers that their titles are worth watching. One option is to use a good thumbnail to describe the title. Still, it’s hard to find images that are relevant and reflect the nature of the title. Netflix uses Contextual Bandits to solve this problem.

  2. The term “contextual bandit” refers to a type of online learning system. We select the best artwork that appeals to consumers specializing in different genres. For example, the platform takes into account various audience characteristics, such as the title clicked, the genre of the title, the observer’s interaction with a single tag, country, language preference, etc. From live to streaming Imagine watching a live cricket match and the only thing you notice about a player taking a high-flying shot is a pixelated catch-out. This malicious network will infuriate many sports fans. Adaptive Bitrate (ABR) streaming aims to eliminate this. If a user is watching a video at 1080 pixels and the internet speed suddenly drops, ABR will automatically adjust to 480 pixels. Besides ABR, many of his OTT platform owners are working on improving streaming.

  3. Deep learning is one of his ways to accomplish this. The system is fed with data from mobile network statistics and the video environment. By adapting to pixel reduction, the system can provide users with a more immersive experience. Content quality optimization Videos that aren’t optimized can ruin the experience for your viewers. Therefore, it is important to ensure that your video, audio, and text are of high quality. Netflix’s quality control process is divided into two categories: automatic inspection and manual inspection. Automatic checks are performed before and after the encryption process. By feeding data from recent manual QC tests, automated inspection incorporates supervised machine learning (ML) techniques. Then use that data to train a predictive quality control model that predicts whether the test will pass or fail. This model is primarily aimed at identifying robust assets, which requires additional manual testing.

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