NLPatent is an industry leading AI-based patent search and analytics platform trusted by Fortune 500 companies, Am Law 100 firms, and research universities around the world. The platform takes an AI-first approach to patent search; it's built from a proprietary Large Language Model trained on patent data to truly understand the language of patents and innovation.
PQAI stands for Patent Quality Artificial Intelligence. It is a free, open-source, natural language-based patent search platform developed by AT&T and the Georgia Intellectual Property Alliance. PQAI is designed as a collaborative initiative to build a shared AI-based tool for prior art searching.
Solve Intelligence is an AI-powered platform designed for intellectual property legal professionals, specializing in streamlining the patenting process. Founded in 2023 and based in San Francisco, the company develops AI tools specifically for patent attorneys, focusing on user-centric design and practical application.
Amplified AI is an intellectual property (IP) technology company offering AI-powered search and collaboration tools. It helps researchers and innovators research, document, and share technical intelligence within their teams by organizing and curating global patent and scientific information.
Ambercite AI is a patent search tool that utilizes artificial intelligence (AI) and network analytics to identify patents similar to a given set of starting patents. It differs from traditional patent searching methods that rely on keywords and patent class codes by using citation patterns, patent text, and metadata to find relevant patents and reduce false positives.
PatentPal is an AI-powered platform designed to streamline the patent drafting process for legal professionals. It utilizes generative AI to automate the creation of patent applications, including generating descriptions, figures, and supporting documents from a set of claims. PatentPal aims to save time for patent attorneys and agents, allowing them to focus on higher-value aspects of their work. It can export drafts into formats like Word, Visio, or PowerPoint.
Reuters legal analysis examines how deepfake technology using deep learning neural networks creates realistic synthetic media that challenges existing legal frameworks around consent, privacy, defamation, and accountability. The assessment details how celebrities and public figures face heightened risks due to available training data while highlighting inadequacies in current defamation and false light laws that focus on statements rather than images and videos. This specialized legal journalism emphasizes the perfect storm created by definitional clarity gaps, anonymity ease, and enforcement difficulties as emerging apps lower technical barriers, making AI-generated impersonation accessible to users with minimal knowledge.
National Law Review's comprehensive expert survey presents 65 predictions from federal judges, startup founders, and AmLaw firm AI practice leaders on 2025 legal AI trends including sophisticated generative tools for drafting and litigation outcome prediction. The analysis reveals growing adoption across legal sectors with substantial startup investments and rising state-level regulations while highlighting the emergence of 'x10 lawyers' who masterfully wield AI to multiply capabilities. This authoritative industry forecast emphasizes transformational changes in legal workflows through AI integration in discovery, billing, and routine tasks while noting accelerating pressure for AI practice regulation and adoption of uniform artificial practice frameworks.
Thomson Reuters' comprehensive analysis examines how deepfakes created through generative adversarial networks pose significant risks including defamation, IP infringement, fraud, and election interference while tracking federal legislation like the DEEPFAKES Accountability Act and DEFIANCE Act. The assessment details state-level responses to high-profile incidents like the Pope Francis puffer coat deepfake and Taylor Swift explicit images while emphasizing business protection strategies against AI-enabled phishing and social engineering attacks. This authoritative regulatory analysis demonstrates the evolving legal landscape as governments seek to balance free expression with protection against digital forgeries that threaten democracy and individual rights.
Proskauer's analysis examines agentic AI's emergence as technology enabling AI-based tools to take autonomous actions on behalf of users, raising fundamental questions about user liability and existing legal framework applicability to AI-assisted transactions. The assessment explores how intelligent electronic assistants evolved from narrow-capability tools like Alexa to sophisticated agents capable of independent transaction initiation, examining UCC, UETA, and E-SIGN provisions for electronic records and signatures. This cutting-edge legal analysis addresses crucial questions about contract formation when AI agents act autonomously, highlighting how traditional agency law concepts require reexamination in the context of AI-powered decision-making and transaction execution.
American Action Forum's policy analysis warns that state AI healthcare restrictions risk creating difficult-to-navigate regulatory patchworks that could stifle beneficial AI applications for patient care. The assessment details federal activity including Congressional hearings and class action lawsuits against Cigna and UnitedHealth over algorithmic claim denials, while tracking state legislation in Georgia, Illinois, Maine, and Massachusetts. This policy research perspective emphasizes the tension between protecting patient health and privacy versus enabling AI innovation, demonstrating how fragmented state approaches may inadvertently prevent adoption of promising healthcare technologies that could improve patient outcomes.
Thomson Reuters' white paper analysis reveals that contract inefficiencies cause 57% of business development leaders to experience slower revenue while 50% report missing business opportunities, making AI-powered solutions critical for in-house legal departments. The assessment details how AI tools automate routine contract tasks, highlight key data extraction, and enable lawyers to focus on strategic client work rather than time-consuming manual processes. This legal technology perspective demonstrates how machine learning applications of best practices from trial and error can transform contract review workflows, with research showing contracting inefficiencies significantly impact organizational success and revenue generation.