Recommendation engines
AI recommendation engines assess current situations against historical data to identify common factors and provide guidance. They can be used in many industries to deliver real-time suggestions for action.
Clalit Health Services recently established an advanced AI platform based on Red Hat AI to process historical medical data and train a LLM to identify patients at risk for preventive care and medication. The solution then provides recommendations on courses of action for patient treatment through a chatbot-like experience. Clalit is also using this platform to build learning processes and algorithms to identify new trends, patient and disease behavior patterns, and more.
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Automated, self-service AI workflows
AI model and application development can be complicated. Automated AI pipelines and self-service operations can streamline this process while improving security and compliance.
Data scientists working at DenizBank wanted to convert its existing workflow into a less manual process with a more standardized approach. The bank’s IT subsidiary, Intertech, provided a model development environment with automated pipelines and standards to improve productivity and time to market for customer loan identification and fraud detection. As a key improvement, Intertech adopted Red Hat AI for its self-service capabilities and capacity to scale model serving and improve operational efficiency. The bank’s more than 100 data scientists can now focus on building models that are more robust and secure than ever.
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Automated service ticket routing
Organizations in the public and private sectors use ticketing systems to serve citizens, customers, and employees. AI-based assessment can help them rapidly route incoming tickets to the right teams. And some tickets can even be automatically handled to accelerate resolution and user satisfaction.
Uruguay’s Agency for Electronic Government and Information and Knowledge Society (AGESIC) adopted Red Hat AI to extend, scale, and standardize AI across government agencies. This solution empowers AGESIC to build, train, tune, and deploy models efficiently, fostering closer collaboration between data scientists, developers, and IT operations. For example, AGESIC built and deployed a series of models to automatically classify and route 2,000 citizen claims per month to the right team, reducing routing time from 1 hour to only seconds.
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Customer support and content creation
Quality customer support is critical for delivering high-value user experiences. AI can help support teams improve troubleshooting, summarize information and tickets, and create tailored content based on existing documentation.
We use Red Hat AI within our own organization to increase the efficiency and scalability of customer and technical support services for our customer base. The Experience Engineering team at Red Hat developed, tested, and deployed 4 solutions powered by AI, all with the goal of simplifying IT support for our customers and support associates. These tools improve self-service, increase efficiency, and help bring about a faster response to support cases. For example, we increased the availability of knowledge content and minimized repetitive tasks for IT support associates that handle 30,000 new cases each month. And our AI-powered initiatives have shown the cost-saving potential of these solutions: We saved an estimated US$1.5 million in support costs in only 10 months, with a projected savings of more than US$5 million overall.
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Virtual assistants and chatbots
AI-based chatbots and assistants continue to improve in response quality and accuracy. They often serve as the interaction point for advanced AI solutions and can be applied across industries in a multitude of use cases from customer service to information delivery to content creation.
The City of Vienna wanted to improve employees' productivity and satisfaction. The city developed a virtual assistant for supporting employees in their daily work by providing instant answers to work-related questions and helping them respond with more accuracy to citizen inquiries and requests. With OpenShift AI on Red Hat OpenShift, the city can innovate faster, provide new services and functionality to the public, and maintain frequent release cycles.
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