Top 100+ Generative AI Applications Use Cases in 2023

Top 100+ Generative AI Applications Use Cases in 2023

Gen AI use cases by type and industry Deloitte US

These models can be trained on data from the machines themselves, like temperature, vibration, sound, etc. As these models learn this data management, they can generate predictions about potential failures, allowing for preventative maintenance and reducing downtime. Intonation, cadence and volume variations are all becoming more realistic, subtle and flexible. As with image synthesis, this improvement in quality is also increasing the threat of deepfake audio. ChatGPT, Dall-E and other tools are already employed in generating conceptual art to guide scenario and environment development and are expected to be used to generate full environments in the future.

generative ai examples

In this area, research is still in the making to create high-quality 3D versions of objects. Using GAN-based shape generation, better shapes can be achieved in terms of their resemblance to the original source. In addition, detailed shapes can be generated and manipulated to create the desired shape. ChatGPT and other tools like it are trained on large amounts of publicly available data.

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These tools can be used in live chat boxes for real-time conversations with customers or to create product descriptions, articles, and social media content. Generative AI works by using deep learning to build models from a given set of training data. These models are trained to recognize patterns in the data and then generate new data based on those patterns.

generative ai examples

Datasets created in this way can also be easily customized to fit the needs of different customers around the world. Modern artificial intelligence (AI) works by recognizing patterns in data and using it to answer questions or predict what comes next. In the case of generative AI like Open AI‘s ChatGPT, it uses it to create more data that follows the rules of the data it’s trained on. You probably know that the new generation of generative AI tools that have exploded onto the scene can generate words, pictures and even videos that closely resemble those created by humans. The implications of generative AI are wide-ranging, providing new avenues for creativity and innovation.

#9. Synthetic data generation and augmentation

This is data created by machines and closely resembles real-world data that can be used for many of the same purposes. Think about a dataset comprising thousands of human faces, for example – as used to train facial recognition algorithms. You have to find and photograph thousands of people and then get their permission to store and use their data. Then, myriad checks and balances must be followed to ensure your data isn’t harmfully biased. Wordtune is powered by natural language understanding and generation technologies developed by AI21 Labs.

Manufacturers can utilize it to generate prototypes, quick mockups, and visualizations without the necessity of physical samples. AdCreative.ai is a generative AI app that quickly generates conversion-focused ad creatives and social media posts. With the ability to specify the target audience and platform, it selects the ideal message aligned with specific business goals.

Yakov Livshits
Founder of the DevEducation project
A prolific businessman and investor, and the founder of several large companies in Israel, the USA and the UAE, Yakov’s corporation comprises over 2,000 employees all over the world. He graduated from the University of Oxford in the UK and Technion in Israel, before moving on to study complex systems science at NECSI in the USA. Yakov has a Masters in Software Development.

Synthetic data can generate images of objects that do not exist in the real world, such as a new type of car or a fictional creature. For example, Dall-E uses multiple models, including a transformer, a latent representation model(LRM), and CLIP, to translate English phrases into code. Synthetic data generation involves creating unique data from the input of the original dataset. This is useful when there is not enough data to train a machine-learning model or when it is difficult to obtain new data.

  • Understanding the search intent behind a query is crucial in creating content that accurately and effectively addresses the needs of the customers, which can lead to higher engagement and conversions.
  • Such tools are giving you “not information but information-shaped sentences,” as author Neil Gaiman put it.
  • This network takes as input 100 random numbers drawn from a uniform distribution (we refer to these as a code, or latent variables, in red) and outputs an image (in this case 64x64x3 images on the right, in green).

Dall-E and its many competitors have taken a huge leap forward, in both their image quality and their ability to translate arbitrary text into images. For example, in a few months they overcame severe shortcomings, such as an inability to generate realistic human hands. Such systems are finding their way into advertising, product design, set design, film and other industries. The discriminator gets better at identifying fakes, as it’s told which images were created by the generator. The generator gets better at creating realistic photos, as it’s told which fakes the discriminator successfully identified.

You can also manually watch for clues that a text is AI-generated—for example, a very different style from the writer’s usual voice or a generic, overly polite tone. Eliminate grammar errors and improve your writing with our free AI-powered grammar checker. Compare your paper to billions of pages and articles with Scribbr’s Turnitin-powered plagiarism checker. Generative AI can be used for creating job descriptions that accurately reflect the required skills and qualifications for a particular position.

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When Priya Krishna asked DALL-E 2 to come up with an image for Thanksgiving dinner, it produced a scene where the turkey was garnished with whole limes, set next to a bowl of what appeared to be guacamole. For its part, ChatGPT seems to have trouble counting, or solving basic algebra problems—or, indeed, overcoming the sexist and racist bias that lurks in the undercurrents of the internet and society more broadly. Tools called AI detectors are designed to label text as AI-generated or human. AI detectors work by looking for specific characteristics in the text, such as a low level of randomness in word choice and sentence length.

As you can see above most Big Tech firms are either building their own generative AI solutions or investing in companies building large language models. As we continue to advance these models and scale up the training and the datasets, we can expect to eventually generate samples that depict entirely plausible images or videos. This may by itself find use in multiple applications, such as on-demand generated art, or Photoshop++ commands such Yakov Livshits as “make my smile wider”. Additional presently known applications include image denoising, inpainting, super-resolution, structured prediction, exploration in reinforcement learning, and neural network pretraining in cases where labeled data is expensive. Image Generation is a process of using deep learning algorithms such as VAEs, GANs, and more recently Stable Diffusion, to create new images that are visually similar to real-world images.