NeFut Logo NeFut
Admin Login

[CS.AI] Charlie: On-Premise Multi-Agent RAG System for Forensic Evidence Reasoning

Published at: 2026-07-09 22:00 Last updated: 2026-07-10 03:14
#algorithm #AI #Open Source

We present Charlie, an on-premise multi-agent Retrieval-Augmented Generation (RAG) system for structured evidential processing in digital forensic environments. Contemporary forensic workflows must handle large volumes of heterogeneous and unstructured documents under strict requirements of traceability, confidentiality, and legal compliance. Charlie addresses this challenge through a controlled agent architecture that combines local retrieval, task decomposition, structured memory, and verification mechanisms. Unlike cloud-based systems, it operates entirely within institutional infrastructure, preserving data sovereignty and evidential integrity.

We describe the system's architecture, including its transition from classical RAG to agent-based orchestration, and demonstrate its application in real-world forensic scenarios. Case studies show that Charlie enables scalable multi-document data extraction and supports longitudinal forensic intelligence generation while maintaining traceability and auditability. Our results indicate that agent-orchestrated, on-premise RAG architectures can effectively support evidential workflows without compromising legal and institutional constraints. Charlie provides a practical and reproducible blueprint for deploying AI systems in high-stakes forensic environments.

Blogger's Review: The Charlie system, with its innovative local and multi-agent architecture, offers robust support for evidence processing in forensic science, especially in a landscape where compliance and data security are increasingly critical. Its effectiveness in real-world cases sets a new standard for future forensic intelligence systems.

Original Source: https://arxiv.org/abs/2607.05428

[h] Back to Home