Advanced search engine that understands natural legal language and can find cases using party names, case numbers, judges, attorneys, or descriptive keywords across all U.S. jurisdictions.
Automated monitoring system that alerts users to new filings, case updates, hearings, and decisions for specific cases, parties, or legal topics they're following.
AI algorithms that transform unstructured court documents and docket entries into organized, searchable data fields including parties, attorneys, judges, dates, and case outcomes.
Visual analytics interface showing litigation trends, judge ruling patterns, attorney success rates, case duration statistics, and settlement likelihood indicators.
REST API that allows legal tech developers and enterprise systems to programmatically access court data and integrate it with case management, billing, and practice management software.
Aggregates data from federal, state, and administrative courts across all 50 U.S. states, including trial and appellate levels, with consistent data formatting.
Law firms use Unicourt to track ongoing cases involving their clients, opposing parties, and relevant legal issues. By setting up automated alerts for new filings and case developments, attorneys stay informed about procedural changes, motion rulings, and settlement activities without manual daily checking. This enables proactive case strategy adjustments and ensures timely responses to court actions, improving client outcomes and reducing missed deadlines.
During mergers, acquisitions, or investments, corporate legal teams use Unicourt to investigate litigation history of target companies. They can quickly identify pending lawsuits, regulatory actions, and historical legal disputes that might impact valuation or deal terms. The platform's comprehensive search across all jurisdictions ensures no hidden litigation risks are overlooked, while analytics help assess the severity and potential financial impact of discovered cases.
In-house counsel at corporations use Unicourt to monitor litigation involving competitors, industry peers, and market entrants. By analyzing case patterns, settlement amounts, and legal strategies employed by similar companies, legal departments can benchmark their own litigation approaches and identify emerging legal risks in their industry. This intelligence informs both defensive legal strategies and potential offensive litigation opportunities.
Insurance companies utilize Unicourt to verify claims history and identify potential fraud by checking for patterns of litigation among claimants and healthcare providers. Adjusters can quickly access court records related to previous claims, identify attorneys who frequently represent certain types of claimants, and spot suspicious litigation patterns. This accelerates claims processing while improving fraud detection accuracy.
Legal researchers, academics, and policy analysts use Unicourt's analytics tools to study litigation trends, judge behavior, and the impact of legal reforms. By analyzing large datasets of case outcomes across jurisdictions and time periods, researchers can identify patterns in how laws are being interpreted and applied. This supports academic research, amicus brief preparation, and evidence-based policy recommendations.
Legal professionals use Unicourt to research opposing counsel's track record, litigation style, and success rates before cases begin. Similarly, they can analyze judges' ruling patterns, preferences for certain procedures, and tendencies in specific case types. This intelligence helps attorneys tailor their arguments, anticipate likely rulings, and develop more effective litigation strategies based on historical data rather than anecdotal impressions.
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15Five operates in the people analytics and employee experience space, where platforms aggregate HR and feedback data to give organizations insight into their workforce. These tools typically support engagement surveys, performance or goal tracking, and dashboards that help leaders interpret trends. They are intended to augment HR and management decisions, not to replace professional judgment or context. For specific information about 15Five's metrics, integrations, and privacy safeguards, you should refer to the vendor resources published at https://www.15five.com.
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