Generative AI is here: How tools like ChatGPT could change your business (2024)

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In the spirit of this article’s topic, we asked ChatGPT—a generative AI language model that can create original content in response to a user prompt—how it would set the context. Our prompt to the system:

Write the opening paragraph for an article about how transformative generative AI will be for business, in the style of McKinsey & Company.

ChatGPT’s response:

The rise of generative AI has the potential to be a major game-changer for businesses. This technology, which allows for the creation of original content by learning from existing data, has the power to revolutionize industries and transform the way companies operate. By enabling the automation of many tasks that were previously done by humans, generative AI has the potential to increase efficiency and productivity, reduce costs, and open up new opportunities for growth. As such, businesses that are able to effectively leverage the technology are likely to gain a significant competitive advantage.

Not perfect but overwhelmingly impressive.

For us and many executives we’ve spoken to recently, entering one prompt into ChatGPT, developed by OpenAI, was all it took to see the power of generative AI. In the first five days of its release, more than a million users logged into the platform to experience it for themselves. OpenAI’s servers can barely keep up with demand, regularly flashing a message that users need to return later when server capacity frees up.

Products like ChatGPT and GitHub Copilot, as well as the underlying AI models that power such systems (Stable Diffusion, DALL·E 2, GPT-3, to name a few), are taking technology into realms once thought to be reserved for humans. With generative AI, computers can now arguably exhibit creativity. They can produce original content in response to queries, drawing from data they’ve ingested and interactions with users. They can develop blogs, sketch package designs, write computer code, or even theorize on the reason for a production error.

This latest class of generative AI systems has emerged from foundation models—large-scale, deep learning models trained on massive, broad, unstructured data sets (such as text and images) that cover many topics. Developers can adapt the models for a wide range of use cases, with little fine-tuning required for each task. For example, GPT-3.5, the foundation model underlying ChatGPT, has also been used to translate text, and scientists used an earlier version of GPT to create novel protein sequences. In this way, the power of these capabilities is accessible to all, including developers who lack specialized machine learning skills and, in some cases, people with no technical background. Using foundation models can also reduce the time for developing new AI applications to a level rarely possible before.

Generative AI promises to make 2023 one of the most exciting years yet for AI. But as with every new technology, business leaders must proceed with eyes wide open, because the technology today presents many ethical and practical challenges.

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What CEOs need to know about generative AI

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Pushing further into human realms

More than a decade ago, we wrote an article in which we sorted economic activity into three buckets—production, transactions, and interactions—and examined the extent to which technology had made inroads into each. Machines and factory technologies transformed production by augmenting and automating human labor during the Industrial Revolution more than 100 years ago, and AI has further amped up efficiencies on the manufacturing floor. Transactions have undergone many technological iterations over approximately the same time frame, including most recently digitization and, frequently, automation.

Until recently, interaction labor, such as customer service, has experienced the least mature technological interventions. Generative AI is set to change that by undertaking interaction labor in a way that approximates human behavior closely and, in some cases, imperceptibly. That’s not to say these tools are intended to work without human input and intervention. In many cases, they are most powerful in combination with humans, augmenting their capabilities and enabling them to get work done faster and better.

Generative AI is also pushing technology into a realm thought to be unique to the human mind: creativity. The technology leverages its inputs (the data it has ingested and a user prompt) and experiences (interactions with users that help it “learn” new information and what’s correct/incorrect) to generate entirely new content. While dinner table debates will rage for the foreseeable future on whether this truly equates to creativity, most would likely agree that these tools stand to unleash more creativity into the world by prompting humans with starter ideas.

Business uses abound

These models are in the early days of scaling, but we’ve started seeing the first batch of applications across functions, including the following (exhibit):

  • Marketing and sales—crafting personalized marketing, social media, and technical sales content (including text, images, and video); creating assistants aligned to specific businesses, such as retail
  • Operations—generating task lists for efficient execution of a given activity
  • IT/engineering—writing, documenting, and reviewing code
  • Risk and legal—answering complex questions, pulling from vast amounts of legal documentation, and drafting and reviewing annual reports
  • R&D—accelerating drug discovery through better understanding of diseases and discovery of chemical structures
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Excitement is warranted, but caution is required

The awe-inspiring results of generative AI might make it seem like a ready-set-go technology, but that’s not the case. Its nascency requires executives to proceed with an abundance of caution. Technologists are still working out the kinks, and plenty of practical and ethical issues remain open. Here are just a few:

  • Like humans, generative AI can be wrong. ChatGPT, for example, sometimes “hallucinates,” meaning it confidently generates entirely inaccurate information in response to a user question and has no built-in mechanism to signal this to the user or challenge the result. For example, we have observed instances when the tool was asked to create a short bio and it generated several incorrect facts for the person, such as listing the wrong educational institution.
  • Filters are not yet effective enough to catch inappropriate content. Users of an image-generating application that can create avatars from a person’s photo received avatar options from the system that portrayed them nude, even though they had input appropriate photos of themselves.
  • Systemic biases still need to be addressed. These systems draw from massive amounts of data that might include unwanted biases.
  • Individual company norms and values aren’t reflected. Companies will need to adapt the technology to incorporate their culture and values, an exercise that requires technical expertise and computing power beyond what some companies may have ready access to.
  • Intellectual-property questions are up for debate. When a generative AI model brings forward a new product design or idea based on a user prompt, who can lay claim to it? What happens when it plagiarizes a source based on its training data?

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Initial steps for executives

In companies considering generative AI, executives will want to quickly identify the parts of their business where the technology could have the most immediate impact and implement a mechanism to monitor it, given that it is expected to evolve quickly. A no-regrets move is to assemble a cross-functional team, including data science practitioners, legal experts, and functional business leaders, to think through basic questions, such as these:

  • Where might the technology aid or disrupt our industry and/or our business’s value chain?
  • What are our policies and posture? For example, are we watchfully waiting to see how the technology evolves, investing in pilots, or looking to build a new business? Should the posture vary across areas of the business?
  • Given the limitations of the models, what are our criteria for selecting use cases to target?
  • How do we pursue building an effective ecosystem of partners, communities, and platforms?
  • What legal and community standards should these models adhere to so we can maintain trust with our stakeholders?

Meanwhile, it’s essential to encourage thoughtful innovation across the organization, standing up guardrails along with sandboxed environments for experimentation, many of which are readily available via the cloud, with more likely on the horizon.

The innovations that generative AI could ignite for businesses of all sizes and levels of technological proficiency are truly exciting. However, executives will want to remain acutely aware of the risks that exist at this early stage of the technology’s development.

Generative AI is here: How tools like ChatGPT could change your business (2024)

FAQs

How generative AI could change your business? ›

In some cases, companies are developing custom generative AI model applications by fine-tuning them with proprietary data. The benefits businesses can realize utilizing generative AI include: Expanding labor productivity. Personalizing customer experience.

How does ChatGPT impact business? ›

Enhances decision-making: The real-time data analysis that ChatGPT provides can help businesses make informed decisions and stay ahead of the curve. Reduces response times: ChatGPT provides 24/7 assistance, reducing response times and improving the overall customer experience.

How is AI changing the business industry? ›

AI is causing business leaders to prioritize communication, emotional intelligence, and related attributes more than ever, and it's similarly identifying these characteristics in job seekers. As AI's capabilities progress, most business leaders will revise jobs rather than eliminate them.

What is the main goal of generative AI? ›

The main goal of Generative AI is to generate new data instances that can mimic the style, patterns, or characteristics of a given dataset, often with the aim of creating realistic or useful outputs.

What is an example of a generative AI application in everyday business? ›

But some of the most common generative AI examples include: Research and writing assistance. Copywriting for websites and product descriptions. Image creation for marketing and sales campaigns.

How will ChatGPT change business? ›

Chat GPT generates valuable data on customer interactions, preferences, and pain points. Businesses can leverage this data to gain insights into customer behavior, identify trends, and make informed business decisions.

How can ChatGPT help my business? ›

Businesses can employ ChatGPT to enhance email and communication processes personalized to customers, leading to more effective and efficient internal and external correspondence. By using ChatGPT, employees can quickly draft, edit, and proofread emails, ensuring they are polished and professional.

How will generative AI change the world? ›

Radical change for consumers

We estimate that by 2030, generative AI could save doctors three hours a day, which would allow them to serve an additional 500 million patients globally per year (assuming the productivity gains go to serving more patients).

What is the downside of generative AI? ›

One of the foremost challenges related to generative AI is the handling of sensitive data. As generative models rely on data to generate new content, there is a risk of this data including sensitive or proprietary information.

What is the difference between generative AI and AI? ›

Traditional AI excels at analyzing data and performing specific tasks, while generative AI focuses on creating new content like text, images, and music.

How generative AI holds much promise for businesses? ›

The Promise of Generative AI for Business Innovation

From generating new product concepts to designing unique marketing campaigns, generative AI has the ability to augment human creativity and provide businesses with a competitive edge.

What is the next best action in generative AI? ›

At the center of generative AI and predictive AI applications is the advisor's next best action for clients. The automated next best action is positioned to transform how advice is optimized and delivered.

How to use AI to grow your business? ›

5 ways to use AI to grow your business
  1. Automate repetitive tasks. ...
  2. Improve customer engagement with AI-powered chatbots. ...
  3. Create content to support your marketing efforts. ...
  4. Analyze customer data. ...
  5. Deliver a personalized customer experience. ...
  6. AI tools for customer support tools. ...
  7. AI tools for marketing.

How will AI affect small businesses? ›

Empowering Decisions: AI Support Systems

This empowers small businesses to optimize pricing strategies, improve resource allocation, and adopt informed marketing campaigns and product development decisions. The implementation of AI promptly makes them more competitive. Every penny counts for small businesses.

What is the potential impact of generative AI on industries? ›

With its ability to analyze vast datasets and generate diverse content, Generative AI promises to unlock new possibilities and transform industries, paving the way for a future marked by innovation and efficiency.

How can generative AI change the world? ›

Generative AI is changing industries by being a super creative helper. It's making art, writing, and even coming up with new ideas. For example, in art, it can create paintings that look like they were made by famous artists. In writing, it helps make interesting stories or even helpful articles.

How will generative AI impact marketing? ›

With generative AI, you can save significant time and resources by automating marketing tasks such as content creation, campaign optimization, and customer segmentation. This increased efficiency allows marketing teams to focus on high-value strategic initiatives rather than repetitive manual tasks.

Where can generative AI be used in business? ›

Generative AI can be used in several business and employee coaching scenarios. For example, contact center call documentation and summarization, when combined with sentiment analysis, gives managers the information they need to assess current customer service rep outreach calls and coach employees on ways to improve.

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