Huski.ai is a company that leverages AI to assist IP lawyers and brand professionals with trademark clearance, watching, and enforcement. It aims to streamline brand protection and growth using cutting-edge AI technology.
PatSnap, a company specializing in innovation intelligence and patent analytics. PatSnap, founded in 2007 and headquartered in Beijing, offers an AI-powered platform that assists various industries in the ideation to commercialization process. The platform analyzes patents, R&D insights, and competitive landscapes. PatSnap's technology helps innovation professionals uncover emerging trends, identify risks, and find opportunities.
IPRally is a company specializing in AI-driven patent search and analysis tools. It offers a web application that uses knowledge graphs and supervised deep learning AI to provide semantic and technical understanding of patent literature. The company aims to increase the productivity of inventors and patent professionals by offering a search tool that functions like a patent expert.
EvenUp is a venture-backed generative AI startup that focuses on ensuring injury victims receive the full value of their claims. It achieves this by using AI to analyze medical documents and case files, turning them into comprehensive demand packages for injury lawyers. EvenUp aims to provide equal access to justice in personal injury cases, regardless of a person's background, income, or access to quality representation.
Harvey is a suite of AI tools designed for legal professionals, offering solutions for drafting, research, and document analysis. Developed by experts in artificial intelligence, Harvey utilizes advanced natural language processing to assist legal experts in their work.
Canarie is developing a compliance platform that uses AI and ML to automate the creation, review, and revision of disclosures and policies for financial institutions.
Bloomberg Law's comprehensive analysis examines how generative AI technologies can help legal teams solve common contract workflow challenges including slow drafting processes, inefficient storage systems, and communication difficulties. The assessment details how AI contract management technology solutions improve contract performance, fulfill professional obligations, and mitigate risks while automating routine tasks throughout the contract lifecycle. This authoritative legal technology analysis emphasizes that while contract management tools can incorporate AI for automation, successful implementation requires strategic integration with existing workflows and proper understanding of AI capabilities versus human legal expertise requirements.
BMC Medical Ethics' comprehensive analysis examines the disruptive potential of AI in healthcare while addressing the lack of professional training in AI usage, providing ethical and legal frameworks for healthcare professionals navigating the AI transformation. The research analyzes literature on healthcare AI ethics and law, creating categories of frequently cited issues while proposing improvements to help professionals manage AI implementation challenges. This peer-reviewed biomedical ethics study emphasizes how classical legal regimes struggle to incorporate AI realities and require constant adaptation, highlighting risk-based regulatory approaches like the EU AI Act as potential solutions to balance innovation promotion with harm prevention.
Microsoft Research's expert panel discussion features bioethicist Vardit Ravitsky, Stanford physician-scientist Dr. Roxana Daneshjou, and NAM advisor Laura Adams examining responsible AI implementation in medicine from governance and fairness perspectives. The analysis highlights critical bias mitigation work, including research showing how large language models propagate race-based medicine and dermatology AI performance disparities across skin tones. This cutting-edge healthcare AI ethics discussion emphasizes the need for proactive bioethics guidance as AI reshapes healthcare relationships while acknowledging AI's potential to address healthcare system inefficiencies and physician burnout despite bias and hallucination challenges.
SSRN's academic analysis explores how AI technologies including machine learning algorithms and smart contracts challenge traditional legal principles in contract formation, interpretation, performance, and enforcement while introducing complexities around legal responsibility. The research discusses AI's capacity for autonomous negotiation, impartial contract interpretation, and blockchain-enabled agreement enforcement, proposing frameworks to integrate AI into contract law while ensuring fairness and accountability. This scholarly legal analysis emphasizes the crucial balance between technological advancement and legal principles as AI continues evolving, demonstrating how emerging technologies require adaptive regulatory approaches to maintain contract law effectiveness.
AMA's analysis reveals growing physician acceptance of AI while emphasizing the need for responsible, transparent development as the Trump administration shifts toward deregulation and Congress considers a 10-year moratorium on state AI regulation. The assessment highlights federal gaps filled by state action and details AMA policy recommendations for ethical, equitable AI implementation in healthcare settings. This medical profession perspective demonstrates the tension between innovation promotion and regulatory oversight as physicians call for mandatory transparency requirements and proper regulation beyond voluntary standards to ensure AI tools serve patient care effectively.
Holland & Knight's regulatory analysis tracks federal and state efforts to regulate AI deployment in healthcare utilization management and prior authorization processes, with CMS clarifying that Medicare Advantage plans cannot rely solely on AI for medical necessity determinations. The assessment details Colorado's Consumer Protections Act and various state healthcare AI bills while emphasizing that AI can assist coverage decisions but requires human oversight and clinical judgment. This specialized healthcare law analysis provides crucial compliance guidance for managed care plans and utilization management organizations navigating the evolving regulatory landscape around AI in healthcare coverage decisions.