Generative AI Application for Business & Enterprise: Use Cases, Examples 2023

Doug I. Jones

Doug I. Jones

Lorem ipsum dolor sit amet, cons the all tetur adiscing elit

GoogleCloudPlatform generative-ai: Sample code and notebooks for Generative AI on Google Cloud

This allows teams to automate code creation, API calls, and database management with ease. A. Generative AI examples encompass text chatbots, video summarizers, image and music generators, and code generators. The code generator powered by generative AI is a transformative tool that automates the procedure of producing code snippets, scripts, and entire programs.

generative ai example

For example, using your proprietary data, a generative AI model can craft specific questionnaires for your  CRM platforms to gather user feedback. Insurance companies use applications of Generative AI to stay ahead as the industry gets more competitive. Bot or application help create policy documents, making the process smoother and faster. It makes Yakov Livshits personalized quotes by analyzing individual details, helping clients make informed decisions. Moreover, it compares diverse insurance products, simplifying choices for customers. Such synthetically created data can help in developing self-driving cars as they can use generated virtual world training datasets for pedestrian detection, for example.

#7. Text-to-Speech generation (TTS)

By creating a full-face picture of a passenger from photos taken from different angles, the technology can make it easier to identify and verify the identity of travelers. Generative AI can accurately convert satellite images into map views, enabling the exploration of previously unknown locations. This can be especially useful for logistics and transportation companies looking to navigate new areas. Learn more about the capabilities of Code Conductor and experience the power of no-code development in the world of generative AI. It’s not surprising that generative AI is a crucial tool that organizations across industries must adopt.

The tricky ethics of AI in the lab – Chemical & Engineering News

The tricky ethics of AI in the lab.

Posted: Mon, 18 Sep 2023 05:12:32 GMT [source]

Despite being a relatively young technology, there are already plenty generative AI examples making a significant difference to the way people live and work. Over 7 years of work we’ve helped over 150 companies to build successful mobile and web apps. If you can apply existing models with minimal fine-tuning — it’s usually a preferable approach.

Awesome and Free AI Tools You Should Know

The service is being rolled out by the University of Kansas Health System and has the potential to serve over 1,500 physicians across more than 140 locations. Generative AI is lauded for its potential to help us get work done faster, and achieve more complex outcomes than we might be able to as ‘mere’ humans. But it is also the subject of much discussion around ‘existential threat’ – the potential for AI to go off and make decisions of its own, act on those decisions, and in doing so present a threat to humanity.

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.

Generative AI has opened up new avenues for transforming text into images and generating realistic images based on specific settings, subjects, styles, or locations. This allows users to quickly and easily generate visual material that can be used for various purposes, such as media, design, advertising, marketing, education, and more. Generative AI, a technology that utilizes AI and ML algorithms to create new videos, text, images, audio, or code, is one such smart machine. Driven primarily by these algorithms, it has the ability to identify underlying patterns in input and generate superior-quality outputs that are similar. A neural network is a type of model, based on the human brain, that processes complex information and makes predictions.

Our Product

Conversational AI tools can be trained on a variety of languages, and it can translate messages from one language to another in real-time. By learning from images of products in the past and identifying those that were defective, generative AI tools can generate a model to predict whether a newly manufactured product is likely to be defective. Generative AI models can generate realistic test data based on the input parameters, Yakov Livshits such as creating valid email addresses, names, locations, and other test data that conform to specific patterns or requirements. Generative AI can be used in sentiment analysis by generating synthetic text data that is labeled with various sentiments (e.g., positive, negative, neutral). This synthetic data can then be used to train deep learning models to perform sentiment analysis on real-world text data.

These models can predict if a new claim has a high chance of being fraudulent, thereby saving the company money. It is also possible to use these visual materials for commercial purposes that make AI-generated image creation a useful element in media, design, advertisement, marketing, education, etc. An image generator, for example, can help a graphic designer create whatever image they need (See the figure below). Machine learning is the ability to train computer software to make predictions based on data.

While GANs can provide high-quality samples and generate outputs quickly, the sample diversity is weak, therefore making GANs better suited for domain-specific data generation. It uses generative AI technology to generate text responses for human prompts. There are powerful generative AI tools that media houses and entertainment companies use to generate original content automatically. Company used technology to create a unique piece of art called “The Ultimate AI Masterpiece” to project it onto its 8 Series Gran Coupe line. The project involved training an AI algorithm with 50,000 images of artwork spanning 900 years of history to create a new, one-of-a-kind design.

generative ai example

In fact, some experts believe that AI-generated art could even challenge our understanding of what it means to be creative and artistic. No need to spend hours training the chatbot to understand the difference between data and provide a specific response. Just connect your data, and use your own ChatGPT, which could do things like generate rap out of your FAQs.