ABSTRACT
A model capable of explaining the different factors that impact the price point is essential for the needs of the market. It can also inspire confidence in buyers and sellers about the price point offered. To achieve these objectives, we have been working with the team at MartEye, a startup based in Portershed in Galway City, Ireland. Through this paper, we report our work-in-progress research towards building a smart video analytic platform, leveraging Explainable AI techniques.
- Finale Doshi-Velez and Been Kim. 2017. Towards A Rigorous Science of Interpretable Machine Learning. arxiv:1702.08608 [stat.ML]Google Scholar
Recommendations
Methods and standards for research on explainable artificial intelligence: Lessons from intelligent tutoring systems
AbstractThe DARPA Explainable Artificial Intelligence (AI) (XAI) Program focused on generating explanations for AI programs that use machine learning techniques. This article highlights progress during the DARPA Program (2017‐2021) relative to research ...
Lessons learned in the work on intelligent tutoring systems that apply to system design in Explainable AI. image image
DevOps patterns to scale web applications using cloud services
SPLASH '13: Proceedings of the 2013 companion publication for conference on Systems, programming, & applications: software for humanityScaling a web applications can be easy for simple CRUD software running when you use Platform as a Service Clouds (PaaS). But if you need to deploy a complex software, with many components and a lot users, you will need have a mix of cloud services in ...
Revolution of Retail Industry: From Perspective of Retail 1.0 to 4.0
AbstractWhen Industry 4.0 was first introduced in 2010, it also brought the retail industry into the fourth revolution. Retail 4.0, on the other hand, appears to be a novel concept for retailers worldwide. When Industry 4.0 technologies such as the ...
Comments