About Us

The team behind the Legal AI Use Case Radar

Who are we?

The team behind the Legal AI Use Case Radar consists of an interdisciplinary research team under the direction of Prof. Dr. Florian Matthes, who heads the Chair of Software Engineering for Business Information Systems (sebis) at the Technical University of Munich in Germany. Working under Prof. Matthes are Juraj Vladika, Stephen Meisenbacher, and Nektarios Machner, full-time Research Associates focusing their research in various aspects of Natural Language Processing (NLP). Together, their combined expertise in NLP and common interest in Legal Technologies have fueled the work behind the Legal AI Use Case Radar.

What is our goal?

In the rapid-paced world of AI, the possibilities in the legal domain continue to advance everyday. In this sea of opportunities, however, it may become increasingly difficult to discern the tangible use cases of such technologies. Furthermore, the gap between research and practice may not always been apparent -- promising results in the academic literature often does not translate to immediate practical adoption. With our Legal AI Use Case Radar, we aim to give a structured, unbiased, and up-to-date overview of the status quo in Legal AI, centered around the concrete use cases for such technology. In this, we hope to provide clarity on the current state-of-the-art, as well as to facilitate informed adoption and innovation.

Definitions

Before you dive into our Legal AI Use Case Radar, it is important that we provide some definitions:
  • Legal AI: we define Legal AI to be the utilization of Artificial Intelligence in any form (Machine Learning, Natural Language Processing, etc.) to automate the work of legal professionals in their daily work. Besides restricting to the legal domain, we make no further distinctions between the individual subfields of legal work.
  • Use Case: a case use is distinct usage of Legal AI for a particular task or process. We group use cases into Use Case Categories, which unite similar use cases. Furthermore, Use Case Instances describe concrete real-world examples where a use case comes to life.
  • Radar: well, not exactly a definition, but the usage of the radar visualization was chosen to help practitioners and researchers alike navigate the landscape of Legal AI, with the primary advantage of gauging the relative relevance, maturity, or riskiness of a given use case in comparison to others.

Navigating our Site

Our site consists of two major components: the Legal AI Use Case Radar and the Wiki. Read below to find out more!
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Legal AI Use Case Radar

The Use Case Radar visualizes multidimensional data, from Legal AI use cases, evaluation according to our three metrics, and mapping to NLP technology.

You can hover over categories or items to see their related technolgies and evaluation score in our three metrics, Legal Relevance, Academic Interest, ELSA Concerns, and Number of Experience Reports. To discover more, click Explore to view the Tech Radar in full detail.

Explore

NLP x Legal AI Use Case Wiki

In our Wiki-style pages, you can learn about each use case or technology, as well as find related literature and the complete evaluation results.

On Wiki pages, you will also be able to discover the relationship amongst various elements, for example:

  • use cases or NLP technologies under the same category
  • use case instances where the technology you are browsing is applied
  • and technologies which can assist in a particular use case

Click Explore to browse the Wiki!

Explore
Wiki Screenshot

Acknowledgements

The authors would like to thank Martina Preis, Yanjie Li, and Benedikt Thiess for their incredibly valuable contributions to this project. Your hard work made the website and report possible!

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