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Model Description
In the US, approximately 92% of legal problems experienced by low-income people receive no meaningful help from a lawyer. For middle-income Americans (over 50% of the population), obtaining affordable legal help also presents a great challenge with an estimated 129 million legal problems going unresolved each year.
Technology provides at least one potential solution to the ever-growing civil justice gap. Specifically, generative AI holds great promise because it bridges expert legal knowledge and can make it accessible to a layperson who needs help with a legal issue.
This model is an attempt to empower Tennessee residents to tackle relevant legal issues individually. This model is specifically for aiding Tennesseeans in the area of Advanced Directives and End of Life Care.
- Developed by: The Vanderbilt Data Science Institute and the Vanderbilt AI and Law Lab
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