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.
Covington's analysis examines the October 2024 National Security Memorandum requiring AISI to conduct voluntary preliminary testing of frontier AI models for national security threats including offensive cyber operations, biological/chemical weapons development, and autonomous malicious behavior. The assessment details new requirements for agencies to implement AI risk management practices, testing protocols, and classified evaluations while building on NIST's dual-use foundation model guidelines. This authoritative national security law analysis demonstrates how the Biden administration's AI NSM establishes comprehensive governance frameworks for military and intelligence AI deployment while requiring private sector cooperation in threat assessment and mitigation strategies.
This Harvard Law Review chapter tackles the “amoral drift” in AI corporate governance, warning that traditional tools—like board oversight and shareholder limits—fail to prevent companies like OpenAI and Anthropic from slipping toward profit-driven motives. It introduces the concept of “superstakeholders”—key talent and Big Tech backers whose equity-based influence can undermine an organization’s prosocial mission. The article also examines co-governance parallels, advocating democratic oversight structures that could anchor AI firms to ethical and societal objectives. Legal professionals and corporate counsel will want to dive into this piece to understand innovative governance mechanisms that balance existential AI risks with accountability.
This NCSL overview analyzes the surge of AI legislation across U.S. states in 2025, reporting on dozens of bills and task forces addressing everything from algorithmic bias to election disinformation. Legal practitioners will find this essential, as it synthesizes how states are shaping AI governance—providing insight into fast-moving, jurisdiction-specific trends and emerging compliance triggers. Click through to explore the full toolkit, tracked bills, and strategic guidance for navigating the evolving state-level legal landscape.
This Harvard Law Review “Developments in the Law” chapter examines the “creative double bind” that generative AI imposes on artists—offering powerful new tools while simultaneously threatening traditional copyright frameworks. It explores how this tension manifests differently across creative communities—from screenwriters to choreographers—depending on their varying attachments to existing IP protections. The piece spotlights how strategies like private negotiations, as seen in the WGA writers’ strike, could provide models for adapting copyright rules to balance innovation and protection . IP practitioners and policy experts will find this essential reading for its nuanced analysis and practical roadmap for navigating AI’s impact on creative industries—click through to explore its compelling doctrinal insights.
This Harvard Law Review article argues that current antidiscrimination laws—built for human decision-making—are ill-suited to handle algorithmic bias in the age of AI. It critiques the limitations of intent-based frameworks and disparate impact analysis under Supreme Court precedents, urging a doctrinal reset to ensure fairness in AI‑driven decision systems. The piece proposes modernizing legal tools—such as recalibrating Title VII and equal protection tests—to oversee AI outputs and mandate transparent auditing, empowering attorneys and regulators to combat hidden model unfairness. Legal professionals will want to read the full article to explore concrete strategies for integrating algorithmic accountability into established civil rights regimes.
The Harvard Law Review article advocates a co-governance model for AI regulation that involves governments, industry, civil society, and impacted communities working collaboratively. It argues traditional top-down rules fall short for AI’s complexity and urges transparency, inclusivity, and shared responsibility. This approach aims to balance innovation with accountability, embedding ethical oversight and continuous stakeholder dialogue. Legal professionals and policymakers will find this framework essential for crafting adaptable, equitable AI governance in an evolving tech landscape.