Predictive AI vs Generative AI: The Differences and Applications

What is generative AI, what are foundation models, and why do they matter?

The ability for generative AI to work across types of media (text-to-image or audio-to-text, for example) has opened up many creative and lucrative possibilities. No doubt as businesses and industries continue to integrate this technology into their research and workflows, many more use cases will continue to emerge. Many generative AI systems are based on foundation models, which have the ability to perform multiple and open-ended tasks. When it comes to applications, the possibilities of generative AI are wide-ranging, and arguably, many have yet to be discovered, let alone implemented. However, there’ll be a lot of sophisticated, ethical considerations related to content creation and data privacy because of generative AI.

ai vs. generative ai

For both traditional and generative AI, there is so much untapped potential – and the journey should start with your data. AI-based chat, and the chatbots it powers, appears to be the app that has finally taken AI into the mainstream. Systems such as ChatGPT and others are introducing chat into untold numbers of applications.

Practical Applications Of Generative AI

OpenAI has provided a way to interact and fine-tune text responses via a chat interface with interactive feedback. ChatGPT incorporates the history of its conversation with a user into its results, simulating a real conversation. After the incredible popularity of the new GPT interface, Microsoft announced a significant new investment into OpenAI and integrated a version of GPT into its Bing search engine. Clients receive 24/7 access to proven management and technology research, expert advice, benchmarks, diagnostics and more. The net change in the workforce will vary dramatically depending on such factors as industry, location, size and offerings of the enterprise. Your workforce is likely already using generative AI, either on an experimental basis or to support their job-related tasks.

Google the topic of artificial intelligence, and you’re likely to be taken down a deep, winding rabbit hole. If you venture only a little under the surface, you will encounter fantastical terms like perceptron, sigmoid neuron, and nonlinearly separable classifications. To save you from falling into that hole, this article will give a short, clear explanation of AI vs. generative AI. We’ll also touch on three other common types of AI, giving you just enough information to understand the basics without feeling like you need a master’s degree in AI development. However, by focusing almost exclusively on large organizations, the company might be limiting its growth compared to Nvidia.

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  • Because while generative AI is an awesome new capability, it is still an emerging technology that is best suited for use cases around content generation and summarization or extending the capabilities of traditional chat bots.

The field saw a resurgence in the wake of advances in neural networks and deep learning in 2010 that enabled the technology to automatically learn to parse existing text, classify image elements and transcribe audio. But it was not until 2014, with the introduction of generative adversarial networks, or GANs — a type of machine learning algorithm — that generative AI could create convincingly authentic images, videos and audio of real people. The next generation of text-based machine learning models rely on what’s known as self-supervised learning. This type of training involves feeding a model a massive amount of text so it becomes able to generate predictions. For example, some models can predict, based on a few words, how a sentence will end. With the right amount of sample text—say, a broad swath of the internet—these text models become quite accurate.

Quick Glossary: Big Data

Techniques used by Generative AI are Generative Adversarial Networks (GAN), Transformers, and Variational auto-encoders. GAN uses two neural networks called discriminators and generators that mine contrary to each other to search for symmetry among the networks. Transformers in Generative AI are trained to educate about the image, audio, text, language, and also about the classification of data. The transformers including Wu-Dao, GPT-3, and LAMDA quantify differently based on the significance of input data.

One early tester of Google’s LaMDA chatbot even created a stir when he publicly declared it was sentient. Despite their promise, the new generative AI tools open a can of worms regarding accuracy, trustworthiness, bias, hallucination and plagiarism — ethical issues that likely will take years to sort out. Microsoft’s first foray into chatbots in 2016, called Tay, for example, had to be turned off after it started spewing inflammatory rhetoric on Twitter.

Because it not only saves your time but also saves you from unnecessary expenses. You might also be thinking about which AI subfield suits your business. You need to think quickly because, in this digital age, those who are quick and up-to-date Yakov Livshits about the latest technologies thrive. “We continue to respond to the needs of our clients who seek trusted, enterprise AI solutions, and we are particularly excited about the response to the recently launched Watsonx AI platform.

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.

BERT is designed to understand bidirectional relationships between words in a sentence and is primarily used for task classification, question answering and named entity recognition. GPT, on the other hand, is a unidirectional transformer-based model primarily used for text generation tasks such as language translation, summarization, and content creation. Generative AI is used to create new content, using deep Yakov Livshits learning and machine learning to generate content. As good as these new one-off tools are, the most significant impact of generative AI will come from embedding these capabilities directly into versions of the tools we already use. In 2017, Google reported on a new type of neural network architecture that brought significant improvements in efficiency and accuracy to tasks like natural language processing.

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Companies looking to put generative AI to work have the option to either use generative AI out of the box, or fine-tune them to perform a specific task. Building a generative AI model has for the most part been a major undertaking, to the extent that only a few well-resourced tech heavyweights have made an attempt. OpenAI, the company behind ChatGPT, former GPT models, and DALL-E, has billions in funding from boldface-name donors.

Is Generative AI Art Actually Art, or Randomly Generated Content?

Researchers have been creating AI and other tools for programmatically generating content since the early days of AI. The earliest approaches, known as rules-based systems and later as “expert systems,” used explicitly crafted rules for generating responses or data sets. Generative AI starts with a prompt that could be in the form of a text, an image, a video, a design, musical notes, or any input that the AI system can process. Various AI algorithms then return new content in response to the prompt. Content can include essays, solutions to problems, or realistic fakes created from pictures or audio of a person.

The breakthrough approach, called transformers, was based on the concept of attention. Moreover, innovations in multimodal AI enable teams to generate content across multiple types of media, including text, graphics and video. This is the basis for tools like Dall-E that automatically create images from a text description or generate text captions from images. ChatGPT can produce what one commentator called a “solid A-” essay comparing theories of nationalism from Benedict Anderson and Ernest Gellner—in ten seconds. It also produced an already famous passage describing how to remove a peanut butter sandwich from a VCR in the style of the King James Bible. Other generative AI models can produce code, video, audio, or business simulations.

Conversational AI is a technology that helps machines interact and engage with humans in a more natural way. The interactions are like a conversation with back-and-forth communication. This technology is used in applications such as chatbots, messaging apps and virtual assistants. Examples of popular conversational AI applications include Alexa, Google Assistant and Siri. As we continue to explore the immense potential of AI, understanding these differences is crucial. Both generative AI and traditional AI have significant roles to play in shaping our future, each unlocking unique possibilities.

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It’s fair to say that many, if not most, video game companies are involved in some form of Generative AI. One reason why the game companies are usually not mentioned is because they’ve relied heavily on human artists to create much of what we see on the screen. While they’ve been leaders in creating extensive graphics algorithms for rendering the scenes, most of the details were ultimately directed by humans. The generative AI story started 80 years ago with the math of a teenage runaway and became a viral sensation late last year with the release of ChatGPT. Innovation in generative AI is accelerating rapidly, as businesses across all sizes and industries experiment with and invest in its capabilities. But along with its abilities to greatly enhance work and life, generative AI brings great risks, ranging from job loss to, if you believe the doomsayers, the potential for human extinction.

ai vs. generative ai

The models do this by incorporating machine learning techniques known as neural networks, which are loosely inspired by the way the human brain processes and interprets information and then learns from it over time. Generative AI (GenAI) is a type of Artificial Intelligence that can create a wide variety of data, such as images, videos, audio, text, and 3D models. It does this by learning patterns from existing data, then using this knowledge to generate new and unique outputs. GenAI is capable of producing highly realistic and complex content that mimics human creativity, making it a valuable tool for many industries such as gaming, entertainment, and product design. Recent breakthroughs in the field, such as GPT (Generative Pre-trained Transformer) and Midjourney, have significantly advanced the capabilities of GenAI. These advancements have opened up new possibilities for using GenAI to solve complex problems, create art, and even assist in scientific research.