Generative AI Use Cases: By Industry
40% of all tasks across all industries are
likely to
be
automated,
increasing
productivity and efficiency.
Here are some of the most popular use-cases by industry.
Banking
- Compliance
- Investment analysis
- Risk assessment
- Customer service Enhancement
Healthcare
- Medical coding
- Diagnosis
- Personalised patient care
- Enhancing patient advocacy
Retail
- Enhance customer service
- Personalised product recommendations
- Automated smart responses to customer queries
Insurance
- Faster claim processing
- Fraud detection
- Assisting agents
- Customer service
Manufacturing
- Improving the environment safety
- Streamlining processes
- Product design
- Better quality control
Media, Entertainment and Gaming
- Realistic game environments
- Advanced visual effects
- Voice synthesis
- Avatar creation
Generative AI Use Cases: By Function
Finance
- Fraud detection and Risk analysis
- Investment strategy optimization
- Building accurate financial model
Human Resource Management
- Analyzing employee feedback
- Personalizing training and development programs
- Screening resumes and identifying suitable candidates
Research and Development
- Drug discovery
- Generative design of parts
- Simulation and modeling
- Synthetic data creation
Information Technology
- Writing codes and report
- Generating/auto-completing data tables
- Automating testing tasks
Legal
- Identifying potential threats by generating risk scenarios
- Drafting, reviewing, and analyzing contracts and compliance documents
- Outlining and highlighting revisions in documents
Marketing, Sales & Operations
- Deep personalisation & segmentation
- Faster content creation
- Creating and upgrading customer service chatbots
- Faster product design, development & GTM
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