Robin AI is a leader in legal AI. Our Legal AI Assistant is used by hundreds of businesses globally to harness the power of generative AI for legal. We empower legal teams and lawyers to make contract processes effortless.
Pincites makes contract negotiations faster and more consistent for legal teams. Using advanced language models, Pincites allows legal teams to build robust contract playbooks that any internal team can apply consistently within Microsoft Word.
ThoughtRiver was founded in 2016 to transform third-party contract review. Over the past nine years, we’ve become a leader in the Legal Tech space, working with some of the world’s top legal teams and organizations. Our success is built on integrating human-led, legally trained data into our own LLM, ensuring accuracy and relevance in contract analysis.
Our AI-powered litigation tools open up a dialogue with your data, so your legal team can focus on what they do best: thinking.
Beagle is transforming how law firms, corporate legal teams, and eDiscovery service providers handle document review and eDiscovery. Our AI-powered platform delivers faster, more accurate results, streamlining processes and reducing costs to help you uncover key data quickly and efficiently.
Casetext is a legal research platform that uses artificial intelligence to help lawyers and legal professionals find relevant case law, statutes, and other legal materials efficiently. It was particularly known for its AI-powered tool, CARA (Case Analysis Research Assistant), which allowed users to upload legal documents and receive highly relevant case law recommendations.
Cardozo Law Review's empirical research demonstrates how AI hiring algorithms trained on predominantly male datasets systematically replicate gender bias, as seen in Amazon's algorithm that downgraded women candidates. The analysis reveals fundamental measurement challenges in employment AI unlike medical AI, where researchers cannot easily determine if rejected female candidates would outperform hired males. This academic study exposes the technical limitations of bias auditing in hiring contexts and calls for structural reforms to prevent AI from codifying historical workplace discrimination.
Comprehensive analysis of 13 global AI laws reveals unprecedented regulatory activity with U.S. states introducing 400+ AI bills in 2024, six times more than 2023, while the EU AI Act creates binding requirements for high-risk hiring systems. The research highlights critical compliance challenges as NYC's bias audit requirements, Colorado's impact assessments, and India's anti-discrimination mandates create a complex patchwork of overlapping obligations. HR professionals must navigate ADA accommodations, Title VII compliance, and emerging state-specific AI regulations while ensuring algorithmic fairness across diverse jurisdictions.
Oxford Journal's research reveals how AI developers have become increasingly secretive about training datasets as copyright litigation intensifies, prompting global calls for mandatory transparency requirements. The analysis examines the EU AI Act's groundbreaking training data disclosure mandates and G7 principles requiring transparency to protect intellectual property rights. This scholarly assessment demonstrates how transparency obligations could enable rightsholder enforcement while balancing innovation needs, offering a potential regulatory solution to the copyright-AI training data conflict.
Civil rights firm's analysis exposes how AI bias in hiring systematically discriminates against marginalized groups, with nearly 80% of employers now using AI recruitment tools despite documented gender and racial discrimination like Amazon's scrapped recruiting engine. The EEOC's new initiative to combat algorithmic discrimination reflects mounting legal challenges as biased datasets perpetuate workplace inequality across healthcare, employment, and lending. This practitioner perspective emphasizes the urgent need for human oversight and ethical AI frameworks to prevent civil rights violations in an increasingly automated hiring landscape.
USC's legal analysis explores landmark AI copyright litigation including Authors Guild v. OpenAI and NYT v. Microsoft, where publishers claim AI training violates copyright through unauthorized use of millions of articles. The piece contrasts China's progressive stance recognizing AI-generated content copyright with the U.S.'s unresolved fair use debates, highlighting how courts must balance AI innovation against creator rights. As proposed federal legislation like the Generative AI Copyright Disclosure Act advances, this analysis illuminates the critical legal battles shaping AI's future in creative industries.
The EU AI Act becomes enforceable law spanning 180 recitals and 113 articles, imposing maximum penalties of €35 million or 7% of worldwide annual turnover for non-compliance. The regulation's phased implementation begins with prohibited AI practices in February 2025, followed by transparency requirements for general-purpose AI models and full enforcement by August 2026. This comprehensive framework establishes the legal foundation for AI governance across all 27 EU member states, creating immediate compliance obligations for any organization deploying AI systems that impact EU markets.