What is generative AI? Meaning and examples in business

Generative AI (GenAI) rapidly transforms complex data into clear, useful content, accelerating business productivity and efficiency – and making it a powerful addition to your team.

For hundreds of years, revolutionary industrial inventions were bulky and formidable, forged of iron and steel. Today, however, the most transformative enterprise technologies are invisible – residing within the digital foundations that power modern business. Generative AI is just such a tool. And the secret to getting the most out of it is recognizing that it’s just that: a tool. It’s not a magic bullet – and like any good tool, it is ideally suited for some purposes and not others. So, while GenAI is no replacement for human creativity or strategy, its instant and awe-inspiring ability to deliver useful output from information, patterns, and disparate data sets make it a boundlessly powerful business asset. Especially in the hands of experienced teams and creatives who know how to leverage it with care and skill.

Generative AI meaning and definition

Generative AI is a subset of artificial intelligence that is specifically designed to produce new content – including text, images, videos, code, and audio – by learning patterns from vast amounts of existing data. Unlike traditional AI systems, which primarily focus on analyzing or interpreting existing information, generative AI actively creates new outputs based on its learned understanding of data structures and relationships. 

The difference between AI and generative AI

These two types of AI are similar in structure but are built for different roles. Traditional enterprise AI excels at analysis, prediction, and automation. Generative AI extends these capabilities, producing content rather than simply interpreting data. Here's how the two compare:

Traditional AI

Traditional AI, also known as predictive AI, uses structured data for analyzing data, making predictions, or automating processes. This could be anything from optimizing manufacturing workflows to catching fraud or security risks.

Generative AI

Generative AI moves beyond analysis and prediction to actively create new content. It is not inventing new ideas but rather, it can summarize and leverage existing content to create output that is sophisticated and highly useful.

How does generative AI work?

GenAI systems learn by studying enormous amounts of existing data such as text, images, audio, or code. This information is then stored within its neural network. And it’s no coincidence that the term “neural network” sounds a bit eerily human because in fact, this computational model was indeed inspired by our own brain structures. The AI neural network consists of interconnected layers of artificial “neurons” that process and input all the data that is taken in. 

Depending on the nature and purpose of the GenAI tool, there can be various algorithmic models used in this process. But in a nutshell, as the AI goes through repeated learning cycles, it increasingly recognizes various patterns and relationships. Throughout this iterative process, these networks learn to adjust and refine their connections, leading to their ability craft accurate better and better outputs over time. And when a GenAI model has training that includes a deep dive into your industry or company, it can be prompted to help you create things like product manuals or visual training simulations – the potential is practically endless.

Generative AI models and architecture

Generative AI is an amalgamation of several sophisticated techniques and models. While there are many approaches, these three models are currently among the most influential and commonly used:

  • Large language models (LLMs):
    These models, like ChatGPT, analyze extensive volumes of text data from diverse sources. They use a powerful form of neural network known as a transformer. This gives them the ability understand context and generate highly coherent writing. Businesses use LLMs for tasks such as drafting emails, summarizing reports, or developing product specs and manuals.
  • Diffusion models:
    Diffusion models excel at tasks like creating realistic product images or automatically designing variations of existing visuals. These models work by refining and re-refining random noise until the AI can eliminate extraneous components and become as accurate as possible. This makes them very useful for generating visuals from text prompts.
  • Multimodel transformer models:
    These models go beyond text and can process and generate across multiple types of input—like text, images, audio, and video. They form the basis of AI systems that can “see,” “listen,” and “talk.”

Benefits of enterprise generative AI in businesses

Today’s best companies have learned that the benefits of GenAI emerge most strongly when it’s used as a partner for experienced professionals. Below are some examples of how GenAI can speed up and augment a number of business processes:

Accelerated content creation

In the hands of skilled creatives, GenAI has the power to significantly accelerate and inform their prep and foundational work. In the stages of ideation and of creating outlines, storyboards, or sample visuals, GenAI can help to cut down on the time, resources, and costs devoted to these preliminary tasks.

Personalization at scale

Generative AI can craft highly personalized experiences. This includes individualized customer interactions, marketing messages, and tailored recommendations. The ability to quickly customize can help strengthen your customer relationships and improve engagement and loyalty.

Reduced admin and increased productivity

Generative AI can amalgamate and meaningfully summarize long reports and research materials. This reduces the amount of time your teams spend trying to organize and present data. And it increases their ability to craft actionable reports that drive success and add value.

Improved decision-making and insights

By summarizing vast amounts of data quickly and accurately, generative AI gives leaders clear, concise insights that inform better, faster decisions. Whether it’s highlighting key points in lengthy reports or forecasting market trends, GenAI helps boost confidence and reduce guesswork.

Document creation at scale

Its output can lack depth and originality, so GenAI is not, on its own, an ideal generator of editorial, conversational, or thought leadership content. But it quickly delivers complex and voluminous documents such as product overviews, compliance reports, catalogs, and much more.

Enterprise generative AI use cases

Generative AI has a secret superpower that is often overlooked: its ability to show you how to best integrate it into your existing workflows and processes. You can literally ask GenAI how best to make it help you, and it will guide you through, step by step.

  • Internal knowledge sharing
    Employees often spend hours digging through internal documentation, project notes, or knowledge bases. Generative AI can instantly produce clear, concise summaries of extensive documents, quickly giving teams the essential information they need to make informed decisions and get back to productive work.
  • Content creation and automation
    Assisted text authoring supports diverse teams, from product teams creating item descriptions for an international market to distributors generating shipment communications. Generative AI automates the creation, summarization, and translation of these materials, improving accuracy, ensuring brand consistency, and reducing manual effort. 
  • Application and product development
    Engineering teams routinely expend considerable effort on repetitive coding and documentation tasks. Generative AI efficiently produces boilerplate code, software documentation, and even automated testing scripts. This lets developers concentrate on complex problem-solving and innovative features, significantly accelerating product development timelines.
  • Customer support and service
    With the limited resources of human customer care teams, many companies took the less-than-ideal route of sending customers to libraries of FAQs or pre-prepared answers. But with generative AI, this experience can now become interactive, with customers being able to ask AI questions specific to their unique use cases and getting answers that reflect their needs. 
  • Operational efficiency
    Many routine business processes involve repetitive tasks like data entry, report generation, and workflow management that consume valuable employee time. Generative AI automates these tasks by generating accurate documents, analyzing operational data, and orchestrating workflows. This reduces errors, speeds up processes, and frees staff to focus on higher-value activities that drive innovation and growth.

Generative AI examples in different industries

Generative AI is transforming industries by addressing specific, sector-unique challenges – enhancing efficiency and productivity in targeted, impactful ways. Here’s a look at just a few use cases for GenAI across these example industries:

Healthcare

Generative AI in healthcare can rapidly analyze large amounts of patient and clinical data, instantly summarizing patient histories, ongoing treatments, and administrative documentation – and streamlining operations. 

Industrial manufacturing

By summarizing performance metrics, equipment efficiency, and predictive maintenance alerts, GenAI helps manufacturers address bottlenecks proactively – anticipating maintenance needs and improving productivity.

Aerospace and defense

Generative AI can create clear executive summaries from detailed project data. It can highlight things like budget overruns or timeline delays – minimizing risks, boosting efficiency, and supporting project management.

Automotive

GenAI automates precise translations and adaptations of critical operational documents, ensuring consistent and clear messaging across international teams. This significantly reduces both errors and risks.

High tech

GenAI can automate the creation of technical, support, and training materials. This ensures consistency, accelerates product deployment, and enhances customer support and internal knowledge sharing.

Challenges, risks, and GenAI ethics

Like anything powerful, GenAI must be treated with care and respect. Today’s most responsible companies are getting out in front of AI evolution and ensuring that they have clearly stated practices in place. Below are a few of the areas that most typically require attention:

Accuracy and reliability

GenAI content can be very confidently presented but factually incorrect – a phenomenon called "AI hallucination." This is particularly risky if employees are impressed by such content but lack the subject expertise to spot its flaws.

Privacy and security

Businesses should seek specialized support to help them define access permissions and security protocols – and set up a robust and detailed set of guidelines and regulations for a wide range of possible scenarios.

Bias and fairness

Selecting unbiased and clean training data is a skill that is not as simple as it sounds. Companies using GenAI can be at risk from the effects of bias if they don’t invest in and prioritize the management of this issue.

Transparency

For content that contains subjective opinions or deeper thoughts and ideas, it’s always best practice to be transparent with your customers if copy or visuals that “seem” human are in fact AI-generated.

IP and copyright

Clear policies must be established and communicated to clarify ownership of AI-generated materials and ensure compliance with existing intellectual property frameworks.

How to get started with generative AI tools and solutions

Generative AI’s benefits are clear and impressive, but moving from understanding the technology to practically adopting it in your enterprise requires careful planning. Here are several strategic, constructive steps to help your business successfully begin its generative AI journey:

  1. Identify clear use cases
    Get started with well-defined, high-impact scenarios within your business where generative AI can deliver the most obvious benefit. This may include summarizing large volumes of data, developing maintenance schedules based on IoT data analytics, or preparing scenario templates to help your customer service teams navigate any type of potential issue.  
  2. Assess your data readiness
    You wouldn’t expect good long-term health feeding a human a diet of junk food and sugar. Nor will your GenAI tools perform well on a diet of junk data. That is their food and what will eventually comprise the outcomes they give you. It is essential to invest carefully in the step of data collection and preparation – and to ensure you are using best practice protocols at every stage. 
  3. Start with focused pilot projects
    In addition to starting with more obviously GenAI-suited projects, you should dip your toe in with a few pilot projects at first. This will let you focus attention on the outcomes and learnings from these pilots without spreading yourself too thin. It also makes it easier to demonstrate value to stakeholders, building buy-in and momentum for broader adoption.
  4. Choose the right platforms and tools
    Today’s best enterprise cloud solutions focus on ease of cross-system integration. So it should be with your GenAI technology. Evaluate potential platforms based on criteria such as ease of integration, security features, scalability, usability, and alignment with your enterprise’s specific needs and existing technology stack.
  5. Train and empower your teams
    You can’t just send your teams off for a few hours on a training day and call it done. GenAI is one of the most powerful and potentially disruptive tools you will bring into your company’s tech stack. For the best outcomes for your business, your teams, and your customers, it’s essential that GenAI training becomes an embedded part of your operational protocols.
  6. Monitor, iterate, and scale up
    Once your initial pilots are live, regularly measure their performance and gather feedback from users. And remember: Generative AI is always learning. It’s essential that all these insights are gathered and used to iteratively refine your generative AI applications, steadily scaling successful implementations throughout your enterprise.

Conclusion

When it comes to generative AI, there’s a big digital elephant in the room which is the fact that it’s actually kind of awesome and terrifying. Most of us use it (intentionally or unintentionally) several times a day. And we quite rightly love the convenience and flexibility it brings to our lives. But underneath all that is a technology with the power to not only emulate us down to the letter, but do so faster and more accurately than we could ever hope to do ourselves. For today’s businesses, this brings with it enormous opportunity – and likewise – enormous responsibility. To compete, you don’t have a choice but to lean into and leverage this new tool. But to care for your teams and your customers, it’s also essential that you approach this amazing new frontier with respect and a commitment to good stewardship.

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