Dr. Manoj Sharma
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Research contributor
Globally, the integration of Artificial Intelligence (AI) is fundamentally transforming the paradigms of criminal justice, forensic science, and the management of electronic proof. Law enforcement agencies, intelligence organizations, and judicial bodies are increasingly incorporating sophisticated algorithmic systems to address the geometric expansion of electronic data generated by modern society. Technologies such as deep-learning-based facial recognition, automated text processing via Natural Language Processing (NLP), predictive policing algorithms, machine learning behavioral models, and automated digital forensics tools are rapidly transitioning from conceptual experiments into core operational infrastructure. These innovations offer unprecedented advancements in processing velocities, pattern-matching accuracy, and proactive crime prevention strategies. However, this algorithmic revolution is not without critical points of friction. The pervasive deployment of autonomous and semi-autonomous systems within the criminal justice apparatus introduces severe systemic risks. These encompass profound constitutional and ethical challenges, including the erosion of individual privacy rights, the weaponization of mass state surveillance, the persistence of socio-economic and racial biases within algorithmic training datasets, an absolute lack of transparency in "black-box" decision-making architectures, and the subsequent threat to due process and fundamental human rights. This comprehensive analysis deconstructs the structural, operational, statutory, and ethical dimensions of AI's burgeoning role in digital evidence management and criminal investigations, evaluating both its disruptive potential and the urgent necessity for robust human-centric regulatory frameworks.
Paper outline
Author
Research contributor
Dr. Manoj Sharma. (2026). COMPREHENSIVEANALYSIS:THEROLE OF ARTIFICIAL INTELLIGENCE IN DIGITAL EVIDENCE AND CRIMINALINVESTIGATION. Journal of Multidisciplinary Legal Research, Volume 3, Issue 2, 1-12. https://doi.org/doi.org/10.5281/zenodo.20722634