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Project Trinetra: AI Predictive Policing

Kartavya Desk Staff

Context: Project Trinetra, launched by the Akola Police in Maharashtra, has drawn national attention for pioneering the use of artificial intelligence (AI) and data analytics in predictive policing.

About Project Trinetra: AI Predictive Policing

What It Is? Project Trinetra (Targeted Risk-based Insights for Next-crime Estimation & Tactical Resource Allocation) is India’s first AI-driven predictive policing initiative, designed to anticipate repeat crimes using data analytics and machine learning.

• Project Trinetra (Targeted Risk-based Insights for Next-crime Estimation & Tactical Resource Allocation) is India’s first AI-driven predictive policing initiative, designed to anticipate repeat crimes using data analytics and machine learning.

Launched By: Initiated by the Akola Police, under the leadership of Superintendent of Police Archit Chandak.

• To predict and prevent repeat crimes through data-based offender risk assessment. To shift policing from reactive to preventive, enhancing efficiency in resource deployment. To build ethical, transparent, and citizen-centric law enforcement systems aligned with national governance reforms.

• To predict and prevent repeat crimes through data-based offender risk assessment.

• To shift policing from reactive to preventive, enhancing efficiency in resource deployment.

• To build ethical, transparent, and citizen-centric law enforcement systems aligned with national governance reforms.

Key Features:

Repeat Offender Risk Scoring (RORS): Uses machine learning to assign probability scores to repeat offenders based on conviction type, crime trajectory, and spatio-temporal proximity. Granular Dashboard: Provides real-time station-wise, section-wise, and region-wise risk visualisation for targeted patrolling. Ethical Safeguards: Focus only on prior offenders — no profiling based on caste, religion, or geography. Transparent scoring algorithm, internal audits, and citizen feedback integration (via Project Raksha). Human-in-the-loop approach ensures predictions guide action, not replace judgment.

Repeat Offender Risk Scoring (RORS): Uses machine learning to assign probability scores to repeat offenders based on conviction type, crime trajectory, and spatio-temporal proximity.

Granular Dashboard: Provides real-time station-wise, section-wise, and region-wise risk visualisation for targeted patrolling.

Ethical Safeguards: Focus only on prior offenders — no profiling based on caste, religion, or geography. Transparent scoring algorithm, internal audits, and citizen feedback integration (via Project Raksha). Human-in-the-loop approach ensures predictions guide action, not replace judgment.

• Focus only on prior offenders — no profiling based on caste, religion, or geography.

• Transparent scoring algorithm, internal audits, and citizen feedback integration (via Project Raksha).

• Human-in-the-loop approach ensures predictions guide action, not replace judgment.

Relevance in UPSC Examination Syllabus:

GS Paper II – Governance, Polity & Social Justice: Project Trinetra exemplifies the use of data-driven governance and ethical artificial intelligence in public administration. It highlights how citizen-centric policing and institutional accountability can modernise law enforcement while upholding democratic values.

• Project Trinetra exemplifies the use of data-driven governance and ethical artificial intelligence in public administration.

• It highlights how citizen-centric policing and institutional accountability can modernise law enforcement while upholding democratic values.

GS Paper IV (Ethics, Integrity & Aptitude): Trinetra integrates ethical safeguards into technology-led governance by ensuring transparency, preventing algorithmic bias, and maintaining a human-in-the-loop approach.

• Trinetra integrates ethical safeguards into technology-led governance by ensuring transparency, preventing algorithmic bias, and maintaining a human-in-the-loop approach.

AI-assisted content, editorially reviewed by Kartavya Desk Staff.

About Kartavya Desk Staff

Articles in our archive published before our editorial team was expanded. Legacy content is periodically reviewed and updated by our current editors.

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