Research Papers
Dive into our latest Research Papers and stay updated with Industry Trends
Follow us on:

xai_evals : A Framework for Evaluating Post-Hoc Local Explanation Methods
xai_evals is a comprehensive Python package designed to facilitate the generation, benchmarking, and evaluation of model explanations.

Bridging the Gap in XAI—The Need for Reliable Metrics in Explainability and Compliance
This position paper highlights the lack of standardized, reliable XAI metrics, undermining its practical value, trustworthiness, and regulatory compliance.

Is Explainability critical for your AI solutions?
Schedule a demo with our team to understand how AryaXAI can make your mission-critical 'AI' acceptable and aligned with all your stakeholders.