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The Artificial Intelligence Underwriting Company launches with $15M to help enterprises deploy AI with confidence

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Insurance built the modern world. It will unlock AI’s future progress.

SAN FRANCISCO, July 23, 2025 /PRNewswire/ — Superintelligence is within reach. In just five years, AI has advanced from preschool-level capabilities to systems that can reason and act with the skill of an undergraduate. Proof of concepts are emerging across industries—from finance and legal to healthcare, drug discovery, and frontier technologies—but enterprises hesitate to deploy AI agents that feel like black boxes. They don’t know which tools they can trust or who will be accountable if something goes wrong. There’s a fear that hallucinated responses or unsafe outputs could lead to customer harm, revenue loss, regulatory risk, or reputational fallout.

Today, the Artificial Intelligence Underwriting Company (AIUC) launches to unlock the next wave of AI progress by building the confidence infrastructure for AI agents. The company also announces a $15 million seed round led by Nat Friedman at NFDG, with participation from Emergence, Terrain and others including Ben Mann, co-founder of Anthropic; and former chief information security officers at Google Cloud and MongoDB.

Enterprises are walking a tightrope. On the one hand, they face an “adopt or die” moment as their industries are transforming overnight. On the other hand, when AI fails spectacularly, the consequences are steep and customer trust is breached. AIUC gives enterprises a way to adopt AI with confidence, before their competitors do it faster.

This playbook is time-tested throughout American history. In the 18th century, Benjamin Franklin responded to the fires ravaging Philadelphia not with bans, but with the country’s first mutual fire insurance company. In the 19th century, when electricity posed new threats, insurance companies built UL Labs to test and certify the new technology. In the 20th century, as cars shaped modern life, insurers created safety standards and crash tests. Each time, insurance has made bold progress possible, before regulators could catch up.

To help enterprises deploy AI agents with confidence, AIUC is structured around three pillars:

  • Standards. AIUC-1 is a security and risk framework built specifically for AI agents. Think of it as “SOC-2 for AI agents.” The standard is designed to speed up enterprise adoption by addressing the technical, legal and operational safeguards that matter most to enterprise buyers. AIUC-1 builds on existing trusted frameworks, including the NIST’s AI Risk Management Framework, the EU AI Act, and MITRE’s ATLAS–and goes further by defining clear, auditable requirements. That means AI companies can be certified against it, giving enterprises a concrete signal of safety and trust.

  • Audits. For AI agents, independent audits give enterprises the confidence to adopt these systems. AIUC conducts rigorous testing of AI agents against the AIUC-1 standard. These audits identify vulnerabilities, quantify risk, and give enterprises a clear view of the AI systems they are evaluating, before actually deploying. This process is structured to be objective, repeatable, and aligned with enterprise-grade expectations for safety and trust.

  • Insurance. AIUC offers liability coverage for AI vendors and their customers in case an agent fails. The cost and availability of insurance are tied directly to audit results: safer systems are offered better terms. This aligns incentives for builders, buyers and insurers, making it easier for enterprises to adopt new technology with confidence.



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Ethereum Foundation Bets Big on AI Agents with New Research Team

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TLDR

  • Ethereum Foundation launches new dAI Team led by research scientist Davide Crapis to connect blockchain and AI economies
  • Team focuses on enabling AI agents to make payments and coordinate without intermediaries on Ethereum
  • Group continues work on ERC-8004 standard for proving AI agent identity and trust
  • Initiative aims to make Ethereum the settlement layer for autonomous machine transactions
  • Foundation hiring AI researcher and project manager to staff the new specialized unit

The Ethereum Foundation has formed a specialized artificial intelligence research team to position Ethereum as the foundation for autonomous machine transactions. Research scientist Davide Crapis announced the new dAI Team on Monday, outlining plans to merge blockchain technology with AI systems.

The team will pursue two main goals according to Crapis. First, enabling AI agents to conduct payments and coordinate activities without human intermediaries. Second, building a decentralized AI infrastructure that reduces dependence on major technology companies.

Crapis leads the new unit and will connect its work with the Foundation’s protocol development group and ecosystem support division. The team has begun hiring for an AI researcher position and a project manager role to drive coordination efforts.

The dAI Team builds on existing work around ERC-8004, a proposed Ethereum standard co-authored by Crapis. This standard aims to establish identity and reputation systems for autonomous AI agents. The protocol would allow these agents to prove their trustworthiness and coordinate activities without centralized oversight.

AI Agent Infrastructure Development

The Ethereum Foundation sees growing demand for settlement systems as AI agents begin conducting more transactions. Crapis stated that intelligent agents need neutral infrastructure for handling value transfers and reputation management. Ethereum’s censorship resistance and verifiability make it suitable for these functions.

Current blockchain activity supports this vision of expanded use cases. CryptoQuant data shows Ethereum processed 12 million daily smart contract calls on Thursday. The analytics firm noted that network activity remains in expansion mode with record transaction volumes and active addresses.



AI agents operate as programs that make decisions with minimal human supervision. They can execute transactions and perform tasks on behalf of their programmers. Blockchains with programmable features like smart contracts provide suitable environments for these autonomous systems.

The Foundation restructured in 2025 to handle Ethereum’s growth through specialized units. The dAI Team represents part of this shift toward addressing emerging technologies. Previous focus areas included layer-2 scaling solutions and zero-knowledge proof development.

Decentralized AI Stack Goals

Multiple blockchain projects are working to integrate AI and distributed ledger technology. Matchain launched a decentralized AI blockchain in 2024. KiteAI announced an AI-driven blockchain in the Avalanche ecosystem in February 2025.

The Ethereum Foundation’s approach differs by focusing on standards and infrastructure rather than creating new blockchains. The dAI Team will support public goods and projects that combine AI with existing Ethereum capabilities.

Crapis emphasized the mutual benefits of linking AI and Ethereum. He stated that Ethereum makes AI more trustworthy while AI makes Ethereum more useful. This relationship could expand as more autonomous agents require blockchain services.

The team operates under Ethereum’s decentralized acceleration philosophy. This approach prioritizes open and verifiable AI development while maintaining human oversight of intelligent systems. The Foundation aims to prevent AI infrastructure lock-in by major technology companies.

Industry experts see potential for AI agents and blockchain technology to reshape digital commerce. The combination could enable new forms of autonomous economic activity without traditional intermediaries.

The Ethereum Foundation has begun publishing resources for the new team according to Crapis. He stated the Foundation will work with urgency to connect AI developers with the Ethereum ecosystem and accelerate research between the two fields.





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Gachon University launched the “AI and Computing Research Institute” in earnest to strengthen global..

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Convergence of AI, semiconductors, batteries, and bio-integrated AI education to leap forward as a global research hub

The opening ceremony of the AI and Computing Research Institute. Courtesy of Gachon University

Gachon University launched the “AI and Computing Research Institute” in earnest to strengthen global competitiveness in the field of artificial intelligence.

Gachon University held the opening ceremony of the AI and Computing Research Institute at the Gachon Convention Center on the 16th and began its official activities. The event was held in the order of introducing the achievements of the university, awarding an appointment letter, and presenting the researcher’s vision.

With artificial intelligence as its core axis, the AI and Computing Research Institute promotes convergence research in various ICT fields such as △6G network △ cloud and edge computing △ quantum computing △ physical AI △ new drug development. It plans to actively hold joint projects, discussions, and international events with academia, industry, public institutions, leading overseas universities and research institutes, and Hallimwon to strengthen the industry-academic cooperation system and lead the establishment of an AI+X ecosystem and enhance national competitiveness.

Starting next year, various research and industry-academia cooperation programs such as the Global AI and Computing Symposium, the hosting of IEEE-level international academic conferences, the establishment of an international joint research center, and AI-based regional innovation projects will also be promoted in earnest.

Lee Won-jun, a professor at Korea University, was appointed as the first researcher on this day. Professor Lee is a professor of computer science at Korea University and the Graduate School of Information Protection, and has achieved global research achievements in the fields of wired and wireless communication networking systems, AI-based cloud-edge computing, and wireless security, and was selected as IEEE Fellow, an authority in computing and networking in 2021.

Gachon University has already led AI innovation in overall education, including establishing the first artificial intelligence department in Korea in 2020 and △ mandatory basic AI education for all students △ expanding AI convergence research linked to medicine, pharmaceuticals, and bio △ establishing AI specialized courses for each major △ establishing the first AI humanities university in Korea.

The launch of this research institute is a strategic step to leap into a global research base based on educational achievements.

Lee Gil-yeo, president of Gachon University, said, “Gachon University has been leading AI education by opening the nation’s first artificial intelligence department. Now, we have launched a researcher to prepare a new electricity in research, he said. “In particular, the unexpected recruitment of Professor Lee Won-jun reflects the will to grow the researcher into a global hub and develop it to a world-class level through strategic convergence with the semiconductor, battery, and bio (BBC) fields.”



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How AI Is Transforming Disease Research and Drug Discovery

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What if the cure for cancer, Alzheimer’s, or genetic disorders was hidden in plain sight, buried within mountains of data too vast for any human to process? In an era where scientific progress is often limited by the sheer volume of information, artificial intelligence is stepping in as a fantastic option. Enter Sam Rodriques, a scientist at the forefront of this revolution, whose work explores how AI can transform disease research. In this thought-provoking exchange with Freethink, Rodriques sheds light on the innovative tools reshaping medicine, from multi-agent AI systems to new applications in drug discovery. Could AI not only accelerate research but also redefine how we approach the most complex biological puzzles?

Below Freethink uncover how AI is addressing the limitations of human cognition, automating labor-intensive processes, and fostering collaboration across disciplines. Rodriques offers a rare glimpse into the development of specialized AI agents like Crow and Phoenix, each designed to tackle specific stages of research, from synthesizing literature to planning experiments. But this isn’t just about technology; it’s about the human ingenuity guiding these tools and the ethical questions they raise. Whether you’re curious about the future of medicine or the role of AI in shaping it, this dialogue promises to challenge assumptions and inspire new ways of thinking about scientific discovery. What happens when machines and minds work together to unlock the secrets of life itself?

AI Transforming Scientific Research

TL;DR Key Takeaways :

  • AI is transforming scientific research by automating complex tasks, generating data-driven hypotheses, and integrating knowledge across disciplines, particularly in biology and medicine.
  • Multi-agent AI systems, such as Crow, Falcon, Finch, Owl, and Phoenix, collaborate to streamline workflows, enhance precision, and accelerate research processes.
  • AI-driven research emphasizes transparency and traceability, making sure findings are grounded in empirical data and fostering trust within the scientific community.
  • Real-world applications, such as AI-generated hypotheses for treating diseases like age-related macular degeneration, demonstrate AI’s potential to bridge theoretical insights and practical outcomes.
  • While AI offers fantastic potential, it requires human oversight to address challenges like ethical considerations, data limitations, and context-dependent scenarios, making sure responsible and effective use in research.

The Growing Need for AI in Science

Modern research generates an overwhelming volume of data, making it increasingly challenging for researchers to synthesize information and extract actionable insights. AI offers a powerful solution by automating repetitive tasks such as literature reviews, data analysis, and hypothesis generation. These tools are not designed to replace human expertise but to complement it, allowing researchers to explore scientific questions more efficiently and comprehensively.

For example, AI can integrate findings from diverse disciplines to propose innovative approaches to treating diseases or understanding complex biological systems. This capability is particularly valuable in addressing challenges such as drug discovery, where identifying potential compounds and predicting their effects require analyzing massive datasets. Similarly, AI is instrumental in unraveling the intricacies of genetic disorders, where patterns in genomic data may hold the key to new treatments.

Multi-Agent AI Systems: A Collaborative Approach

One of the most promising advancements in AI-driven research is the development of multi-agent systems. These platforms consist of specialized AI agents, each designed to excel in a specific task, working together to automate complex workflows. By delegating tasks among these agents, researchers can achieve faster and more accurate results. Key examples of these agents include:

  • Crow: A general-purpose agent that synthesizes literature-informed science, providing a broad foundation for research.
  • Falcon: Specializes in conducting deep literature searches and performing meta-analyses to uncover hidden connections.
  • Finch: Focused on data analysis and hypothesis testing, making sure that conclusions are grounded in robust evidence.
  • Owl: Conducts precedent searches to evaluate the novelty and feasibility of new ideas.
  • Phoenix: Excels in experimental planning, particularly in chemistry, by designing experiments that maximize efficiency and accuracy.

These agents operate collaboratively, with each contributing its expertise to different stages of the research process. For instance, one agent might analyze existing literature to identify gaps in knowledge, while another designs experiments to address those gaps. This division of labor not only accelerates the research process but also enhances the precision and reliability of the outcomes.

Sam Rodriques on AI’s Potential to Cure Cancer and Alzheimer’s

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Transparency and Traceability in AI-Driven Research

In scientific research, transparency and traceability are critical for making sure trust and reliability. AI systems address these requirements by providing detailed reasoning, citations, and traceable workflows. As a researcher, you can review the evidence and logic behind AI-generated conclusions, making sure that findings are grounded in empirical data and aligned with established scientific principles.

This level of transparency reduces the risk of errors and enhances confidence in AI-driven discoveries. It also allows researchers to scrutinize and validate AI outputs, maintaining the rigor of the scientific process even as automation takes on a larger role. By allowing traceability, AI systems ensure that every step of the research process can be reviewed and replicated, fostering accountability and trust within the scientific community.

Real-World Applications and Success Stories

AI is already demonstrating its potential to drive tangible advancements in scientific research. One notable example is the use of AI to propose a novel hypothesis involving the application of ROCK inhibitors for treating age-related macular degeneration (AMD). This hypothesis, generated through AI analysis, was subsequently tested in wet lab experiments, bridging the gap between theoretical insights and practical applications.

Such success stories highlight the ability of AI to accelerate the pace of discovery by identifying promising research directions that might otherwise go unnoticed. By integrating AI with laboratory work, researchers can streamline the transition from hypothesis generation to experimental validation, ultimately reducing the time required to achieve meaningful results.

Challenges and Limitations of AI in Research

Despite its fantastic potential, AI is not a universal solution to all scientific challenges. Certain bottlenecks, such as the time required for clinical trials or the ethical considerations surrounding experimental research, cannot be resolved by AI alone. Additionally, AI systems may encounter difficulties in scenarios where data is limited, ambiguous, or highly context-dependent, necessitating human judgment and expertise.

Your role as a researcher remains indispensable in guiding AI systems, interpreting their outputs, and making informed decisions. While AI can automate many aspects of the research process, it still relies on human oversight to ensure that its conclusions are accurate, relevant, and aligned with broader scientific goals.

Open Science and Collaborative Innovation

The development of AI in science aligns closely with the principles of open science and collaboration. Open source tools provide widespread access to access to advanced technologies, allowing researchers from diverse backgrounds and institutions to contribute to and benefit from AI-driven discoveries. However, balancing the ideals of open science with the need for intellectual property protection, particularly in fields like biotechnology, remains a complex challenge.

By fostering collaboration while respecting commercial interests, the scientific community can maximize the impact of AI on research. Open science initiatives also promote transparency, allowing researchers to build on each other’s work and accelerate progress. This collaborative approach ensures that the benefits of AI are distributed widely, driving innovation across disciplines and regions.

Shaping the Future of Scientific Discovery

The ultimate vision for AI in research is the creation of a fully integrated virtual laboratory where AI agents collaborate seamlessly to automate complex workflows. Such a system could transform science by eliminating intelligence bottlenecks and allowing faster, more informed discoveries. As AI continues to evolve, its role in hypothesis generation, experimental planning, and data analysis will expand, offering new opportunities to address pressing challenges such as curing diseases, combating climate change, and extending human lifespan.

By embracing the potential of AI while addressing its limitations, researchers can harness this technology to push the boundaries of what is possible in science. The integration of AI into research holds immense promise for tackling some of humanity’s most critical issues, paving the way for a future where scientific discovery is faster, more efficient, and more impactful than ever before.

Media Credit: Freethink

Filed Under: AI, Top News





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