As we become a more developed, techno-savvy world, businesses increasingly adopt generative AI to their processes. Generative AI is not just a technology. It is a powerful tool that can turn the whole world on its head. It goes beyond usual combinations of current information, creating original content customized for the user.
McKinsey and Company stated in a report, “Generative AI’s impact on productivity could add trillions of dollars in value to the global economy.” Businesses can benefit not only in terms of resources but also in terms of cost. From programming to customer support to data analytics—generative AI in business can do it all. Its ability to immediately generate tailored, high-quality content with just user prompts enables companies to unleash new prospects for innovation and enhance their operations by automating their processes.
While generative AI’s impact on the business landscape is undeniable, it is still crucial to have a comprehensive understanding of this technology before using it. If you want to learn more about adopting generative AI for business, this blog is for you.
Below, we will explain generative AI, explore its benefits for companies, and share generative AI enterprise use cases. We’ll also share the challenges and limitations associated with its use so you are aware of both sides of generative AI before making any decision.
Generative AI in a Nutshell
Commonly called GenAI, generative AI is a kind of artificial intelligence that can craft seemingly new, realistic content like text, audio, images, and video, similar to what we can create. It is a set of algorithms that uses training data to create this content and perform several kinds of tasks like recognizing patterns, features, and structures and classifying and reorganizing data. Its unmatched ability to compose music, write text, and create art has turned heads and made ventures use generative AI business ideas.
Generative AI text models can be utilized for generating texts based on natural language instructions, such as:
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Shortening long documents
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Searching internal documents to augment knowledge transfer within a business
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Summing up text to allow detailed listening
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Providing conversational SMS support with no waiting time
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Producing job descriptions and marketing copy
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Searching for common bugs in a code
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Writing scripts for testing code
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Creating software
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Tracking consumer feedback
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Evaluating large amounts of data
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Conducting data entry
Generative AI business is formed using huge machine learning models that identify patterns in massive datasets and form novel content from the recognized relationships and patterns. The best GenAI algorithms are trained on a large quantity of unclassified data in a self-supervised manner to identify underlying patterns for numerous tasks.
For instance, GPT-3.5 is a foundation model trained on huge volumes of text that can be used for sentiment analysis, text summarization, and answering questions. Another multimodal foundation model named DALL-E is a text-to-image model capable of creating images, creating variations of existing paintings, and expanding pictures beyond their size.
Models such as GPT-3.5, Bard, and DALL-E are potent enough to substantially boost the adoption of generative AI for business intelligence, even in companies that lack deep data science or AI proficiency. Even though remarkable modifications require expertise, adopting a generative model for a particular task can be attained by low data quantities, prompt engineering, or via APIs.
Now, if you are wondering about the technology behind generative AI, it’s not that complicated. As its name suggests, generative AI allows computers to produce content based on machine learning and artificial intelligence algorithms applied to numerous data sources. These models use a wide variety of techniques like variational auto-encoders, generative adversarial networks (GANs), and transformer models.
Benefits of Generative AI in Business
Numerous generative AI ideas are beneficial not only for companies but also for their employees due to the extent to which they help a business prosper. Mentioned below are some of the key benefits of generative AI for business.
Enhanced Creativity and Innovation
As stated earlier, generative AI is capable of creating images from text, which is beneficial for product design. In fact, GenAI can craft unique, new outputs across a range of modalities, such as video advertisement.
Generative AI solutions generate growth and revenue by creating new products and boosting their market introduction. The technology encourages creativity within product development teams, further avoiding any downturns. According to research by Thoughtworks, the generative AI business is capable of streamlining the entire process of product development, from defining the product to its launch to evolution.
Additionally, some examples of AI-generated art, music, and content are given below:
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Art: DALL-E and DeepArt can form original visual art pieces, usually combining elements and styles that may be difficult or unexpected for human artists to imagine.
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Music: If you are wondering how are companies using generative AI, look no further. AI programs such as OpenAI’s MuseNet and Jukedeck can compose unique music in various genres, forming everything from contemporary pop tracks to classical symphonies. Businesses can use these pieces for customer engagement, branding, and marketing without hiring traditional composers.
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Content: Copy.ai and Jasper can craft high-quality written content, like social media updates, blog posts, and even novels.
Efficiency and Productivity Improvements
Generative AI can augment the efficiency of various industries exponentially. A study by Nielsen Norman Group found that technology enhanced employee productivity by 66%. In addition to this, it is capable of:
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Automating Repetitive Tasks and Processes: Generative AI business use cases involve accelerating repetitive or manual, time-consuming tasks, like summarizing lengthy documents, coding, data entry, report generation, customer service responses, and writing emails. This helps employees focus on more creative and strategic tasks, resulting in better productivity.
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Streamlining Operations and Reducing Costs: GenAI can recognize inefficiencies and recommend improvements. This can save costs, particularly in industries where operational efficiency is necessary.
Personalization and Customer Experience
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Tailoring Products and Services: GenAI can analyze customer data to comprehend behaviors and preferences, enabling businesses to offer highly customized products and services. This can result in better customer loyalty and satisfaction.
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Enhancing Customer Interactions: AI can offer real-time insights during customer interactions, allowing companies to create a more satisfying and engaging customer experience, solve problems faster, and provide more relevant recommendations. This is particularly impactful in sales, marketing, and customer support.
Data-Driven Decision Making
Generative AI for business intelligence is extremely helpful for strategic decisions, predictive analysis, and forecasting. By providing predictive modeling and data-driven insights and automating complex data analysis, GenAI boosts the process of decision-making. It unleashes underlying trends and patterns and offers reliable forecasting, allowing businesses to plan for growth, manage risks, optimize inventory, predict market changes, and thus make better decisions.
5 Key Generative AI Business Use Cases
Generative AI business applications span numerous industries, including entertainment, education, finance, banking, retail, and healthcare. All sectors can benefit from generative AI for particular use cases, like scenario modeling, data analysis, content creation, and personalized customer experiences.
Marketing and Advertising
Generative AI tools introduce a faster option to produce product images and write product descriptions in the marketing and e-commerce industries. For instance, Copy.ai, as mentioned earlier, provides bulk content production and customization at scale. Additionally, Synthesia enables businesses to generate marketing videos.
Overall, generative AI enterprise use cases for marketing and advertising include:
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Performing rapid, accurate, and comprehensive market research to aid in a business’s overall stance and marketing strategy
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Producing informative web content with consistency, making sure that the website is always updated, further improving search engine ranking
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Crafting brand-compliant and engaging social media posts to boost frequency and enhance quality, leading to audience engagement.
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Writing SEO-optimized blog posts on topics related to the business’s target audience
Thus, using generative AI, companies can maintain an engaging and consistent online presence. Apart from this, generative AI can also analyze customer data to curate tailored ad campaigns that relate to specific audiences. It can create personalized content for social media posts and email marketing campaigns, sum up the present state of the market, and keep the ads updated with the transforming market. By offering personalized content, ventures can boost their conversion rates.
Product Design and Development
Due to the technology’s ability to create unique content, other generative AI business applications include product design and development. It can bring new perspectives to product designs, enabling manufacturing teams to explore options further and speed up prototyping.
As a matter of fact, GenAI can form detailed models and prototypes, which leads to faster product iterations and marketing. Real-time feedback from these tools aids in the quick detection of the strengths and weaknesses of these prototypes. This is why product designers are increasingly adopting generative AI for designing concepts.
In consumer goods, automotive, and fashion industries, GenAI can drive innovation by crafting new product features, materials, and designs. This allows companies to stay ahead of trends and ever-rising consumer demands.
Customer Support and Engagement
Generative AI-powered chatbots trained on real-world encounters can help deliver customized customer support experiences across sectors. When you look up generative AI use cases by industry, you will find that GenAI for customer support is used across all industries adopting this technology. The reason is that these AI agents can engage in conversations like humans, understand customer needs, and provide customized real-time solutions.
Furthermore, generative AI chatbots provide round-the-clock availability and can possess multilingual capabilities. This makes them an ideal addition for ventures in the education, healthcare, finance, and retail sectors seeking the enhancement of user experience and planning to reach people across the globe.
You may be wondering why GenAI chatbots if AI chatbots already exist. Other than engaging in a conversation with the customer, GenAI can automate customer service and support tasks entirely, tailoring to the customers’ needs, modeling complex situations, and enhancing businesses’ analytics capabilities. These advancements help the chatbots indulge in conversations that flow naturally and allow them to comprehend nuance and context, just like human customer representatives.
Finance and Risk Management
Among the several generative AI enterprise use cases are finance and risk management. GenAI can augment the intelligence and security of data analytics by generating synthetic data (deepfake technology) that takes care of statistical features. This is priceless when a business owner has to conduct data analysis on sensitive information while ensuring privacy.
For example, if a company is a part of the finance industry, generative AI can form synthetic transaction data that maintains actual consumer behavior patterns, enabling the company to train its AI models for detecting fraud without compromising customer information. If you’re planning to build a superior AI model, consider these 5 must-follow steps.
Apart from detecting fraud and preventing it, GenAI can aid enterprises in the following ways:
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Generative AI businesses can rapidly draft reports and update content to improve and manage investor relations. It can automate reporting for internal controls and document creation like receipts, purchase orders, and invoices. This helps improve the financial analyst team’s productivity.
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Generative AI can manage contracts with suppliers. This will ensure compliance with any obligations and reduce the risk of potential legal issues and disputes. Not only will this save the company time and resources, it will also enhance accountability and transparency.
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GenAI can generate financial scenarios and forecasts more frequently than the analysts’ team and keep them up to date according to new data.
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Lastly, generative AI for business intelligence is also useful for recognizing market trends from external sources of data for risk management as well as financial planning.
Healthcare and Pharmaceuticals
Similar to the finance industry, generative AI’s capability to produce synthetic transaction data is beneficial for the healthcare industry, where the confidentiality of data is a top priority. In addition to this, generative AI business use cases in healthcare and pharmaceuticals also surpass human ability in the following ways:
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Drug Discovery and Development: Generative AI can substantially boost the drug discovery process by anticipating molecular structures, identifying potential individuals for novel medications, and simulating biological interactions. What’s more, GenAI can produce data on millions of candidate molecules for a specific disease and test their application. This will significantly accelerate research and development cycles and reduce the cost and time it takes to introduce new drugs.
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Personalized Medicine and Treatment Plans: GenAI can recognize and evaluate patient data to create customized treatment plans personalized to a person’s unique lifestyle, medical history, and genetic formation. Such an approach improves the effectiveness of treatment and reduces the possibility of adverse reactions.
Challenges and Limitations of Generative AI
Today, the adoption of generative AI in business is becoming increasingly popular. However, like any other technology, generative AI has its challenges and limitations. From data to data management – risks associated with GenAI keep increasing exponentially.
As businesses continue to adopt generative AI, new challenges continue to emerge. Some ventures have opened new positions for chief customer protection officers to stay ahead of potential risk scenarios.
If you are a business owner considering generative AI ideas, you might already be convinced about adopting GenAI. However, before you make the final decision, we would like to share some of the challenges and limitations of generative AI. While these may differ from one company to another, most apply to all generative AI enterprise use cases.
Technical Challenges
Two significant technical challenges associated with generative AI are:
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Data Quality and Availability Issues: Generative AI domain models need massive amounts of data for effective training. Collecting or acquiring data can be challenging, limiting the model’s effectiveness and scope. Additionally, high-quality data may be limited, noisy, and biased, and incomplete data may result in poor accuracy and performance. Thus, businesses must consider the quality and availability of data to operate and train GenAI systems.
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Computational Requirements and Scalability: The necessity for technical expertise is a key barrier to adopting generative AI for business. Forming AI models is a complex process that requires expert skills in the sector. Training generative AI models, particularly deep learning models, requires substantial resources and computer power. This can be highly time-consuming and costly, especially for ventures that need to scale their solutions across complex issues or large datasets.
Implementation Barriers
Adopting generative AI in established business systems requires considerable resources and effort. The organization is required to ensure system compatibility and data quality for maximum AI performance. The key implementation barriers associated with introducing GenAI are:
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Integrating Generative AI into Existing Systems: Inculcating generative AI business into established technology stacks and workflows can be challenging. Possible disruptions to ongoing operations, custom integration requirements, and compatibility issues can lead to significant complexities while implementing GenAI. Which technologies must be in place to use large-scale generative AI for business?
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APIs and Integration tools
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DevOps and MLOps Tools
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Security and Privacy Technologies
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Data Management and Governance Tools
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Machine Learning Frameworks
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Data Infrastructure
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GPUs and TPUs
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Scalable Cloud Platforms
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Cost and Resource Considerations: Generally, the deployment of GenAI solution requires significant financial investment, including skilled personnel, hardware, and software. Furthermore, existing costs regarding updates, training, and maintenance can be huge. This can be a barrier for small businesses with limited resources and budgets.
Ethical and Societal Concerns
Generative AI is trained on existing data based on availability. Any inaccuracy and bias in the training data can amplify or perpetuate the output, resulting in unsafe, legally risky, or discriminatory outcomes. Moreover, incorrect answers due to irrelevant or outdated data can result in unanticipated consequences.
The key ethical considerations for using generative AI comprise avoiding bias in AI models, safeguarding user privacy, prioritizing data protection, ensuring generated content accuracy, enforcing strict measures related to cybersecurity, and following industry norms.
Wrapping Up
Generative AI’s ability to streamline business processes and create new, unique content has grabbed people’s attention. From designing artwork to producing blogs, GenAI can do it all. Its benefits for organizations encompass improved efficiency and productivity, enhanced innovation and creativity, personalized customer experience, and data-driven decision-making.
Hence, generative AI business applications include marketing and advertising, product design and development, customer support and engagement, finance and risk management, and healthcare and pharmaceuticals. Nevertheless, like all other technologies, GenAI has its challenges, like implementation barriers, technological challenges, and ethical and societal concerns.
If you want to stay competitive and innovative in today’s business landscape, adopting generative AI is a must. If you are unsure how to get started, LITSLINK is here for you. We are experts in AI that can help your business to build and adopt AI solutions. What are you waiting for? Try our AI services today!