Skip to content

Latest commit

 

History

History
27 lines (21 loc) · 2.05 KB

README.md

File metadata and controls

27 lines (21 loc) · 2.05 KB

Smart BU Hackathon (1285)

Problem Statement

AI-powered Legal Documentation Assistant

Description

Legal documentation can be a complicated and time-consuming process, especially for individuals and small businesses who may not have access to legal resources. In addition, the language and jargon used in legal documents can be difficult for non-lawyers to understand, which can lead to errors and misunderstandings.

Objective

The objective of this hackathon challenge is to develop an AI-powered solution that can simplify legal documentation for individuals and small businesses in India, by automatically drafting legal documents in plain language and using easy-to-understand terms

Potential Features

  1. User-friendly interface for inputting relevant information such as parties involved, terms of the agreement, and other necessary details.
  2. AI-powered document generation that automatically drafts legal documents in plain language and using easy-to-understand terms.
  3. Ability to customize legal documents based on the specific needs of the user.
  4. Integration with existing legal resources and databases to ensure accuracy and completeness of the legal documents.
  5. Option for users to seek legal advice from an expert in case of complex legal issues.

Impact

The proposed solution can greatly benefit individuals and small businesses in India, who often face challenges with legal documentation due to limited access to legal resources. By simplifying legal documentation, this solution can potentially save time, reduce errors, and increase access to justice.

Data

Participants can use publicly available legal databases and resources to train the AI model for document generation.

Deliverables

  1. A working prototype of the AI-powered legal documentation assistant, demonstrating its functionality and ease of use.
  2. A presentation outlining the features and potential impact of the solution, as well as its technical architecture and data requirements.
  3. Code and documentation for the solution, along with instructions for deployment and maintenance.