Top 123 Generative AI Applications & Real-Life Examples

Applications of AI


Based on our analysis of 30+ case studies and 10 benchmarks, where we tested and compared over 40 products, we identified 120 generative AI use cases across the following categories:

For other applications of AI for requests where there is a single correct answer (e.g., prediction or classification), check out AI applications.

You can also see generative AI applications, use cases, and real-life examples in a list that you can filter based on various criteria such as business function or industry.

General GenAI Applications

> Video Applications

1. Video generation

AI-powered video production tools, including AI video generators, content creation platforms, and editing solutions, enable businesses to produce high-quality videos, personalize content, and optimize performance. These tools help reduce costs, manage production, and allow for dynamic, abstract visuals in just minutes.

We assessed leading AI video generation tools to determine their effectiveness in creating high-quality product demonstration videos for eCommerce.

Each AI tool was tested using stock images and scored out of 10 based on Prompt Compliance (accuracy in following instructions), Physical Accuracy (realistic physics and interactions), and Product Integrity (consistency in appearance and details). Here are some of our observations:

  • Common issues: Many AI tools struggled with accurately conveying product details, maintaining brand-specific features, and ensuring prompt compatibility.
  • Key findings: AI-generated videos are not yet fully reliable for eCommerce product visualization without further refinement. Enhancing prompts and fine-tuning AI models may improve results.

Despite offering creative breakthroughs, AI video generation presents a double-edged sword for the entertainment industry, raising ethical concerns about deepfakes, consent violations, and intellectual property theft.

Disney exemplifies this dilemma. The company abandoned an 18-month project to create an AI deepfake of Dwayne Johnson for the “Moana” film due to legal uncertainties over data ownership.

Despite AI’s potential to cut production costs by millions, Disney maintains strict internal controls and has sued AI companies for copying its characters.

While competitors like Lionsgate embrace AI partnerships, Disney prioritizes protecting its extensive character portfolio, the intellectual assets that have anchored its market position for nearly a century.

Real-life example: Netflix used generative AI for the first time in a TV show, adding AI-generated footage to the Argentinian sci-fi series “El Eternauta”. Co-CEO Ted Sarandos said AI helped VFX teams create complex scenes, such as a collapsing building, much faster and at lower cost than traditional methods, making the production financially possible.

Although the move has raised concerns about job losses in the entertainment industry, Sarandos said AI is meant to support human creators rather than replace them.

Check out AI job loss to learn more about recent predictions on how AI will affect the job market.

2. Video prediction

A GAN-based video prediction system:

  • Comprehends both temporal and spatial elements of a video 
  • Generates the next sequence based on that knowledge (See the figure below) 
  • Distinguishes between probable and non-probable sequences

GAN-based video predictions can help detect anomalies that are crucial in a wide range of sectors, including security and surveillance.

Real-life example: Lucid Dream Network enhanced its video production by utilizing Pictory’s script-to-video tool, which offered pre-built templates and smooth integration of music and visuals.

This innovation helped the company boost its productivity by 350% and amplified its social media reach and engagement by 500%.

3. AI video editing and animation

Beyond generation, generative AI can help with editing, storyboarding, and animation. These tools automate camera motion, lip-syncing, and scene transitions.

Applications include:

  • Automated corporate training videos
  • Social media video summarization
  • Style-transfer for animated storytelling

Real-life example: Runway Gen-3 enables text-driven video editing with scene consistency and motion control, reducing post-production time by over 70% for marketing teams.

> Image Applications

4. Image generation

With generative AI, users can transform text into images and generate realistic images based on a specified setting, subject, style, or location. Therefore, it is possible to generate the needed visual material quickly and simply. 

It is also possible to use these visual materials for commercial purposes, making AI-generated image creation a valuable element in media, design, advertising, marketing, education, and other fields. For example, an image generator can help a graphic designer create whatever image they need (See the figure below).