Generative AI is a steadily growing form of artificial intelligence that can create a variety of content in a matter of seconds. Learn more about how to start down a generative AI learning path and begin your educational journey on this rising technology.
Generative artificial intelligence (AI) is a form of technology that allows computer systems to create entirely new concepts based on various examples fed to the program. These new concepts present themselves as several different outputs, such as images, audio, or video, with the help of large language models.
specialization
Unlock your potential with AI. Build job-ready AI skills to enhance your career. Everyone welcome. No prior AI background required.
4.7
(3,686 ratings)
42,656 already enrolled
Beginner level
Average time: 1 month(s)
Learn at your own pace
Skills you'll build:
Artificial Intelligence (AI), ChatGPT, Large Language Models (LLM), Natural Language Generation, Generative AI, Customer Service, Chatbot Building, AI ethics, Natural Language Processing, Machine Learning, Artificial Intelligence, Prompt Engineering, prompt patterns
Generative artificial intelligence falls under the umbrella of machine learning, which uses data and algorithms to allow computers to learn things similarly to humans. Generative AI achieves this through a variety of frameworks to increase solutions.
Frequently used forms of generative artificial intelligence such as ChatGPT—which provides detailed answers to your questions and instructions—and DALL-E—which produces images based on your instructions—allow you to request content that can sometimes be indistinguishable from human-made work through a combination of data and algorithms. A generative AI learning path can come in the form of online courses, training materials, and readings that can help you discover this largely growing technology.
Online courses and workshops exist to aid in understanding the complexities of generative AI and educate you on why it is important to modern-day society. Before pursuing one of these courses, it may be useful to identify what problem generative AI can assist you in solving or how generative AI can help organizations and businesses. For instance, you may be interested in learning how generative AI can save money and time for companies by creating content and business models. Alternatively, you may want to know how generative AI can assist in creative projects, marketing tactics, and research.
Artificial intelligence relies on professionals who can understand computer technology and effectively program artificial intelligence. This is why a generative AI learning path is so beneficial—artificial intelligence thrives on human understanding. Follow these steps to begin your generative AI learning path.
While generative AI and machine learning differ in certain aspects, they overlap in algorithms and data. Generative AI is a specific type of machine learning model that creates new data rather than predicting existing data. Understanding the differences between supervised, unsupervised, and reinforcement learning can help you understand how this type of technology assists generative AI.
Deep learning is a form of machine learning that uses neural networks to create original content from its programming. Generative AI uses generative adversarial networks, a type of deep learning that consists of generators and discriminators to sort through the given data. These neural networks require a large amount of resources and data to create results similar to those given. Deep learning is a major foundation for all forms of artificial intelligence, including those that produce everyday products, so educating yourself on the technology behind it is essential.
Read more: AI vs. Deep Learning: What’s the Difference?
Several programs are effective in creating generative AI applications. Many available learning paths on generative artificial intelligence will begin a course by reviewing these programs and how they work. Python is one of the most popular systems that creates generative AI applications and includes several libraries that are major contributors to training generative models and creating frameworks. Some examples of these generative AI libraries and frameworks are:
TensorFlow
PyTorch
Transformers
JAX
LangChain
PEFT
OpenLLM
Diffusers
These libraries require data preparation, model selection, training, and evaluation to be effective.
Generative artificial intelligence has many different applications and functions. When exploring a generative AI learning path, it may be beneficial to understand how this form of artificial intelligence presents itself and which area you may want to explore more. Common models include generative adversarial networks (GANs), autoencoders, and diffusion models. These models allow different applications to exist within generative AI, such as:
Generative artificial intelligence has the ability to analyze waveforms, frequency, and amplitude of a given example to produce original music, speech, and other forms of audio. Audio applications also can create text-to-speech or speech-to-text tools.
Text-to-image conversion allows artificial intelligence programs to complete images, achieve super-resolution, and manipulate images. Simply entering a prompt into one of the many generative AI sources allows for this result. Improved quality, content variety, and automated generation emerge.
Generative AI techniques help enhance software development by allowing you to enter instructions for the desired outcome and effectively create a code that coincides, which increases efficiency. This artificial intelligence also can translate code from one programming language to another.
You can gather original text from generative artificial intelligence in various formats, styles, and lengths by entering specific prompts and requests. This technology allows you to direct programs to generate an informed answer to almost any question in a matter of seconds.
With the help of generative artificial intelligence, video creation becomes easier and more efficient. Simply typing a short description into a program prompts an original video output closely matching the description. This technology can allow digital creators to save time in the workplace. The ability for AI to generate videos also extends to video editing software, which produces high-quality video output.
Many companies offer introductory-level courses on generative AI learning paths. These courses start with the foundations of how generative AI is practical in and outside the workplace. They provide a combination of technical skills and general skills to provide you with the best possible outcome. No-cost options are available for beginners in the field with little to no knowledge of generative artificial technology systems, which provide accessible learning for a range of individuals. Some courses you can get started with include:
Google Cloud's Introduction to Generative AI (free)
Google Cloud's Introduction to Generative AI Studio (free)
Vanderbilt University's Prompt Engineering for ChatGPT
University of Michigan's Generative AI Essentials: Overview and Impact
Badges and certificates are available for you to receive digital recognition of your education. These certificates can range from learning the basic functions of generative artificial intelligence to more targeted approaches, such as discussing large learning models and fundamentals of AI. These courses can also provide information on specific applications, such as Azure OpenAI, allowing for a more engaged approach. These courses can also assist in applying this technology, such as using generative AI to produce creative solutions and minimize risk in a business. Examples of specialized topics you can pursue depending on your interests or career include:
DeepLearning.AI’s AI for Good Specialization
Vanderbilt University’s Generative AI for Leaders
Vanderbilt University’s Innovative Teaching with ChatGPT
Many online courses, books, articles, and videos exist to assist you in your generative AI learning path. You can learn about the basics of generative artificial intelligence on Coursera with DeepLearning.AI's Generative AI for Everyone. This course outlines the limitations of this technology, the risks that may arise in corporations using AI, and an explanation of how to work through an artificial intelligence life cycle. You can also learn more about Generative AI with Large Language Models with AWS, which is a more thorough analysis of how generative artificial intelligence works.
Editorial Team
Coursera’s editorial team is comprised of highly experienced professional editors, writers, and fact...
This content has been made available for informational purposes only. Learners are advised to conduct additional research to ensure that courses and other credentials pursued meet their personal, professional, and financial goals.