The use of generative AI in corporate processes and workflows has swiftly established itself as a valued tool. This holds regardless of whether a company utilizes ChatGPT Enterprise or one of the expanding number of generative AI tools and applications.
Staff members may manage their current task loads with the help of generative AI, and in some situations, these models can be trained to take on new duties and types of labor. In each of these situations, generative AI is assisting companies in streamlining and automating their operations in ways that are repeatable, scalable, and supportive of long-term business objectives.
Generative AI can assist your operations in several ways, depending on your business priorities and needs. Continue reading to discover some of the most typical applications of generative AI in business today. It’s also crucial to educate yourself on the best ways to use generative AI, as doing so will enable you to expand your company’s success.
Top 7 Applications of Generative AI in Business
Industry-specific enterprise use cases for generative AI models span from straightforward coaching and customer service help to more intricate jobs like medical imaging and drug discovery.
But regardless of the size or industry of the organization, generative AI can also be trained to undertake more general business activities. Here are seven of the most beneficial ways that business executives may employ generative AI in their operations today:
1) Intelligent, safe data analytics Data analytics solutions powered by generative AI make data analysis more intelligent, quick, scalable, and safe. You can utilize generative AI to create synthetic data for more secure and compliant data analysis and QA testing practices, depending on the model type and size you choose. Additionally, there are two significant ways that generative AI might democratize data analytics: Users of generative AI models can provide narrative explanations of their data, making it simpler for people who aren’t data scientists to comprehend the information they are presented with. Common data solutions like Power BI now include generative AI assistants that help non-technical users understand complex datasets and produce accurate data visualizations and reports. SparkBeyond Discovery, Dremio, Narrative BI, and Power BI Copilot are some examples of solutions.
2) User experience and customer service Customer service is a feature of most firms that might be enhanced with more consistent training, customer-first communication, and customer-first designs. With chatbots, speech generation technologies, and AI-powered search engines that are created with customer queries and natural language requirements in mind, a range of generative AI tools are emerging to teach your current customer service employees and, in some cases, replace them. Generative AI can also be applied in highly specialized businesses, like insurance, to more accurately assess risk and produce the best results for clients’ plan rates and claims. Examples of remedies include Zendesk Advanced AI, Gridspace, IBM Watson Assistant, UltimateGPT, and Forethought SupportGPT.
3) Product design and assistive coding Generative AI can be used to help with coding and quality assurance tests for the creation of digital products, regardless of the amount of technical competence on your tech teams. Bug fixing, creating test code, and creating program documentation are all capabilities of generative AI models like ChatGPT. The ability of generative AI models to assist developers of all experience levels in problem-solving—even non-technical team members can produce code using natural language queries—may be the most significant benefit. Solutions such as Code Snippets AI, ChatGPT, Google Bard, Tabnine, MOSTLY AI, and Stability AI are examples.
4) Content Development Generative AI models have already demonstrated their capacity to produce natural language material at scale and promptly, which has made these models very alluring for businesses looking to outsource content creation. Based on straightforward cues, several generative AI systems may generate blog and social media material. Others are made to produce more specialized information, such as marketing brochures or legal documents. However, multimedia content, which uses AI models to produce material like marketing videos with AI-generated voices and avatars, is the area of generative AI content development that is expanding the fastest. Jasper, Notion AI, Phrasee, and HubSpot Content Assistant are some examples of solutions.
5) Document Synthesis Summarising extensive and complex papers is a straightforward but efficient application of generative AI in business. In a lengthy contract, legal document, chat transcript, or other long-form content type, this might be a quick and simple way to pinpoint the key elements. Others are integrated into tools for project management and routine business operations, while some generative AI technologies are standalone content summary tools. For instance, Notion users can swiftly summarise project notes and sales call transcripts thanks to the Notion AI tool. Examples of responses: PatentPal, AI21 Studio, Cohere Summarise, and Anthropic Claude.
6) Workflow and Project Management Several of the most well-known project management platforms already include generative AI assisting capabilities in their feature lists or are currently implementing them. These assistants can assist with administrative duties including taking notes during meetings, composing emails, and summarising documents, freeing up your staff members’ time to concentrate on more strategic activities. Technically speaking, these AI assistants may also optimize process builds, suggest tasks, and aid with data integration projects. Process Street, Wrike, Notion AI, ClickUp, and Asana are some examples of solutions.
7) Cybersecurity Administration Even though generative AI can seriously compromise cybersecurity postures, these AI tools are useful for streamlining enterprise cybersecurity management processes and managing data security standards. Businesses frequently use contextualized security environment suggestions, attack simulations, improved threat intelligence and hunting, and other forms of generative AI in cybersecurity. While many of these new generative AI security technologies are either new features or add-on items for current cybersecurity systems, others of them are standalone products. Examples of remedies: Microsoft Security Copilot, CrowdStrike Charlotte AI, Google Cloud Security AI Workbench, and ThreatGPT from Airgap Networks