This article is part of the Hardwiring Justice series on Artificial Intelligence and the Justice System. This is Part 3D in the series examining how AI is shaping policing, prosecution, defense practice, and the courts.*
An Introduction for Judges Navigating a Changing System
Artificial intelligence (AI) is embedded in the daily operations of most courts. AI in court administration now functions within case management platforms, scheduling tools, drafting assistance programs, and risk assessment reports that shape how information reaches the bench.[1] Judges frequently rely on these tools in their routine workflow without recognizing them as applications of AI.
For judges who have not focused closely on these technologies, that is entirely understandable. AI has entered the justice system gradually, typically through administrative modernization rather than deliberate judicial policy choices. Few judges or court administrators voted to adopt AI, and only a small percentage of courts have implemented formal AI training for their personnel.[2] Training, however, is essential. While judges should not be expected to master coding, they are responsible for understanding how AI tools may influence the operations of their courts.
What Do We Mean by AI in Courts?
In the court context, AI in court administration generally refers to software systems that analyze data and generate outputs based on patterns learned from that data[3]. These tools appear within case management platforms, [4] scheduling systems, drafting assistance programs, and risk assessment reports prepared for the court.
Unlike traditional software that simply stores information, AI systems identify patterns and generate outputs such as predictions, classifications, or suggested language. These systems do not “think” in a human sense, [5] but they structure information in ways that influence decisions. Judges do not need to fully understand these systems to be affected by them.
Case Management Systems: AI in Court Administration and the Modern Docket
Most courts rely on case management systems to process filings, assign cases, and track procedural steps.[6] Increasingly, these systems use automated rules and analytics to prioritize matters, categorize cases, and flag procedural issues.[7]These features improve efficiency, reduce backlog, and promote consistency. But they also shape what reaches the bench and how it is framed. When one category of case is accelerated over another, the system influences workflow and perception.[8]
Many judges and court administrators did not select these systems; they inherited them. Nonetheless, the design of these platforms affects what appears on the docket and how it appears. Efficiency is valuable, but it is not always neutral.
Modern tools estimate hearing length, predict continuances or no-shows, and optimize calendars based on historical data.[9] What appears to be routine administrative improvement can influence how justice unfolds. A five-minute hearing conveys something different than a thirty-minute one, and a docket organized by risk categories can frame expectations before a case is called. If the underlying data reflects past disparities, those patterns may persist. Judges see the schedule, not the assumptions driving it. Understanding how the system works is essential to fairness.
Drafting Assistance: When Software Suggests Language
Administrative systems shape timing and exposure, but AI’s influence does not end with the docket; it can extend into the language of judicial decisions. Many chambers now use drafting assistance tools.[10] These tools may summarize motions, identify relevant precedents, or suggest language for routine orders.[11] Some rely on large language models trained on extensive bodies of legal text.[12] Used carefully, these tools can reduce clerical burden and increase efficiency. They can help manage heavy dockets. But judicial writing is not merely administrative output. It is the public articulation of reasoning. Findings of fact, conclusions of law, and discretionary explanations form the backbone of judicial legitimacy.
Judges must remain the authors of their decisions. Drafting tools can assist. They cannot replace independent reasoning. Over reliance risks standardizing language in ways that obscure nuance or embed prior biases contained in the training data. The responsibility for the order remains with the judge, regardless of how it was drafted.
Risk Scores in Hearings: Understanding the Anchor Effect
Beyond influencing how decisions are written, AI appears directly in the courtroom through quantitative risk assessments that frame how parties and facts are perceived. Pretrial services, probation departments, and correctional agencies may generate scores predicting failure to appear, recidivism, or supervision violations.[13]
These scores often appear in pretrail or probation reports before the court.[14] They may be described as advisory. Nonetheless, a numerical score can anchor perception. Behavioral research consistently shows that initial numerical references influence subsequent judgments, even among experienced professionals[15]. A label such as “high risk” can narrow attention and shape expectations. Judges do not need to reject risk tools outright. But they must understand their limitations. Risk scores are not objective facts; they are outputs of design choices.
The Judge as the Last Line of Governance
The judiciary holds a unique institutional role. Administrative systems may influence cases, but judicial rulings confer legitimacy. When a court relies on a record shaped by automated tools, it effectively endorses that structure.
For this reason, “we did not adopt it” is no longer a sufficient answer. Courts may encounter AI after it has shaped charging decisions, supervision conditions, scheduling priorities, or risk framing. The judge becomes the final checkpoint.
Judicial oversight does not require technical expertise in computer science. It requires principled inquiry and institutional awareness. Judges must be prepared to ask:
- What tool generated this output?
- How was it integrated into the report before the court?
- Has the defendant had an opportunity to challenge it?
- Is there transparency regarding methodology and validation?
These are not abstract concerns. They are core elements of due process.
Education as Judicial Responsibility
Artificial intelligence in court administration is not a distant policy debate. It is a present operational reality. Judges who are unfamiliar with these systems are not behind; they are in the same position as many across the country. The pace of technological adoption has outstripped formal training.
The solution is not resistance to innovation. It is informed engagement through education and training.
Understanding how AI in court administration shapes records, schedules, language, and risk framing is now part of safeguarding judicial independence. The court is not merely deciding cases. It is ensuring that the systems structuring those cases operate consistently with constitutional principles.
* This article was edited with the assistance of AI in the form of a large language model. It was used solely for grammar, editing, and footnote support. All substantive content and conclusions reflect human authorship.
[1] Nat’l Ctr. for State Cts., Guidance for Implementing AI in Courts (last visited Feb. 26, 2026).
[2] Thomson Reuters Inst., Courts Confront Staffing Crisis Amid Growing Caseloads (last visited Feb. 26, 2026).
[3] Nat’l Ctr. for State Cts., Guidance for Implementing AI in Courts, supra note 1.
[4] Vasiliy A. Laptev & Daria R. Feyzrakhmanova, Application of Artificial Intelligence in Justice: Current Trends and Future Prospects, 4 Hum.-Centric Intelligent Sys. 394 (2024).
[5] Id.
[6] Case Management and Judicial Efficiency, Crim. Just. iResearchNet (last visited Feb. 26, 2026).
[7] Id.
[8] Dovilė Barysė & Roee Sarel, Algorithms in the Court: Does It Matter Which Part of the Judicial Decision-Making Is Automated?, 32 Artif. Intell. & L. 1 (2023).
[9] Nat’l Ctr. for State Cts., Performance Measurement, (last visited Feb. 26, 2026).
[10] Aleeza Furman, AI Opinion-Drafting Tools Are Emerging, but Will They Gain Traction with Judges?, Legal Tech News (Sept. 24, 2025).
[11] Id.
[12] Id.
[13] Francesco Borgesano et al., Artificial Intelligence and Justice: A Systematic Literature Review and Future Research Perspectives on Justice 5.0, 39 Int’l Rev. L. & Econ. ___ (2025).
[14] Id.
[15] Pamela M. Casey, Kevin S. Burke & Steve Leben, Minding the Court: Enhancing the Decision-Making Process, 50 Court Rev. 76 (2014).
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