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Daniel Herrmann

TeamIndividual
Individual

Daniel Herrmann is an Assistant Professor in the Department of Philosophy at the University of North Carolina at Chapel Hill, where he is also Core Faculty in the Philosophy, Politics, and Economics program. He holds a PhD in Logic and Philosophy of Science from the University of California, Irvine, and conducted postdoctoral research at the University of Groningen. His research specializes in decision theory, formal epistemology, and the philosophy of artificial intelligence, with a focus on mathematical and computational models of optimal reasoning and learning as applied to artificial agents and self-reasoning systems. He was a fellow at PIBBSS (Program for Integrated Research in Alignment), and received funding from the Long-Term Future Fund to support the final year of his PhD research on embedded agency, a core topic in AI alignment concerning how agents reason about themselves as part of the world they act in. His work on the Alignment Forum includes co-authored research on subjective naturalism in decision theory and puzzles related to wireheading and utility functions for embedded agents.

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Showing 3101-3150 of 3951 results

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I'm writing a research paper that introduces an instruction-following generalization benchmark and I need compute funds

Team?
Project

I'm writing a research paper that introduces an instruction-following generalization benchmark and I need compute funds

Led byJoshua Clymer
Endorsed by-
SE

Susan Etlinger

TeamIndividual
Individual

Susan Etlinger is a senior fellow at CIGI and Director of AI and Innovation at Microsoft, where she leads work on the business and societal impacts of artificial intelligence, data and technology ethics.

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RH

Rose Hadshar

TeamIndividual
Individual

No summary available yet.

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Deleted

Team?
ProjectFundraisingManifund

Deleted

Led byFazlBarez
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MB

Matthias Bachmann

TeamIndividual
IndividualManifund

No summary available yet.

Endorsed by-
FN

Faith Nkatha Gitonga

TeamIndividual
Individual

No summary available yet.

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WW

William Wang

TeamIndividual
Individual

William Wang is a Professor in the Department of Computer Science at the University of California, Santa Barbara, the Mellichamp Endowed Chair in Mind and Machine Intelligence, Director of UC Santa Barbara’s Natural Language Processing Group, and the founding Director of the Center for Responsible Machine Learning.

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ML

Marisa Lino

TeamIndividual
Individual

No summary available yet.

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RC

Rowland Chen

TeamIndividual
Individual

No summary available yet.

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FM

Felix Michalak

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IndividualManifund

No summary available yet.

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DM

Dominik Mate Kovacs

TeamIndividual
Individual

No summary available yet.

Endorsed by-

Jay Bailey

TeamIndividual
IndividualManifund

Jay Bailey is a former software engineer from Brisbane, Australia who transitioned into AI safety research after several years working in software. He participated in the SERI MATS Summer 2022 cohort, studying mechanistic interpretability under Neel Nanda, and subsequently received grants to upskill in ML for AI safety and to collaborate with Joseph Bloom on the Decision Transformer Interpretability project, co-authoring work on feature representations in memory-augmented gridworld agents. After struggling with direct research contributions, he leveraged his engineering background to accelerate his collaborator's research. Recognizing a stronger theory of change in evaluations as governments and labs committed to AI red-teaming, he joined the UK AI Safety Institute (AISI) as a Research Engineer, spending approximately 18 months doing frontier LLM evaluation. He currently works at Arcadia Impact as Head of Technology and Standards, where he contributes to technical AI safety efforts and supports researchers transitioning into the field.

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AK

Amba Kak

TeamIndividual
Individual

No summary available yet.

Endorsed by-

6-month salary to build experience in AI interpretability research before PhD applications

Team?
Project

6-month salary to build experience in AI interpretability research before PhD applications

Led byZach Furman
Endorsed by-

Support for living expenses while doing PhD in AI safety - technical research and community building work

Team?
Project

Support for living expenses while doing PhD in AI safety - technical research and community building work

Led byFrancis Rhys Ward
Endorsed by-
DW

Dave Willner

TeamIndividual
Individual

No summary available yet.

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PQ

Paula Quigley

TeamIndividual
Individual

Paula Quigley is a Community Researcher with the Ada Lovelace Institute, working with communities to explore public perspectives on artificial intelligence and its societal impacts. She designs and facilitates workshops that bring diverse and underrepresented voices into AI policy conversations and governance, drawing on senior leadership experience across housing, social enterprise and community development in Northern Ireland.

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JL

Jordan Lee

TeamIndividual
Individual

No summary available yet.

Endorsed by-
AR

Andrew Rzepa

TeamIndividual
Individual

No summary available yet.

Endorsed by-

Formal Certification Technologies for AI Safety

Team?
ProjectFundraisingManifund

Developing the software infrastructure to make AI systems safe, with formal guarantees

Led byMirco Giacobbe
Endorsed by-
CM

Community Member

TeamIndividual
IndividualThink TankClaimed

Community member bio

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SR

Sumeet Ramesh Motwani

TeamIndividual
Individual

Machine learning PhD student at the University of Oxford whose research focuses on reasoning, multi-agent systems, post-training and AI safety, and a co-author on work with Contramont Research on cryptographic backdoors in language models accepted at NeurIPS 2024.

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AB

Asher Brass

TeamIndividual
Individual

Heron co-founder and senior AI security and policy researcher at the Institute for AI Policy and Strategy (IAPS).

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Shane Tews

TeamIndividual
Individual

Shane Tews is a nonresident senior fellow at the American Enterprise Institute, where she focuses on cybersecurity, internet governance, and technology and innovation policy, and president of Logan Circle Strategies, advising clients on global public policy for information and communications technologies.

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YD

Yangbo Du

TeamIndividual
Individual

No summary available yet.

Endorsed by-

David Quarel

TeamIndividual
Individual

David Quarel is a PhD student at the Australian National University (ANU), supervised by Marcus Hutter, where he researches AI safety, Universal Artificial Intelligence, and Mechanistic Interpretability. He holds a BSc in Physics and Mathematics and an MComp specialising in AI and Machine Learning. He co-authored the textbook "An Introduction to Universal Artificial Intelligence" (Routledge, 2024) alongside Marcus Hutter and Elliot Catt. Quarel serves as Head TA at ARENA, an AI safety education programme run by the London Initiative for Safe AI (LISA), where he develops course content and teaches technical AI safety topics. He previously worked as a research assistant at the Krueger AI Safety Lab (KASL) at the University of Cambridge, and received funding to support that residency period. He has several years of teaching experience at ANU across mathematics, theoretical computer science, and digital hardware design.

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JB

Jazear Brooks

TeamIndividual
IndividualManifund

No summary available yet.

Endorsed by-
BC

Bhaskar Chaturvedi

TeamIndividual
Individual

No summary available yet.

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YL

Yann LeCun

TeamIndividual
Individual

French-American computer scientist and pioneer of deep learning; Turing Award laureate and professor at New York University, known for work in artificial intelligence, machine learning, computer vision, robotics and image compression.

Endorsed by-

Alan Chan

TeamIndividual
Individual

Alan Chan is a Research Fellow at the Centre for the Governance of AI (GovAI) in London, where he focuses on AI agent governance, transparency, and technical AI governance more broadly. He completed his PhD in Computer Science at Université de Montréal / Mila (Quebec AI Institute) in 2024, advised by Nicolas Le Roux and David Krueger, and holds an MSc and BSc from the University of Alberta. During his doctoral work, he conducted a research visit with David Krueger at Cambridge focused on evaluating non-myopia in language models and RLHF systems, work motivated by the view that non-myopia is a precursor to dangerous emergent properties like deceptive alignment. His research spans development alignment evaluations (cooperativeness, corrigibility), capability evaluations (non-myopia, deception), AI agent infrastructure and governance, model transparency, and incident analysis for autonomous systems. He has also been affiliated with the Bennett School of Public Policy at the University of Cambridge as a visiting researcher.

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MW

Mark Weber

TeamIndividual
Individual

No summary available yet.

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Rachelle Palmer

TeamIndividual
Individual

No summary available yet.

Endorsed by-

Increasing the funding distributed by Foresight Insitute's AI safety grants

Team?
ProjectFundraisingManifund

focused on 1. bci and wbe for safe ai, 2. cryptography and security for safe ai, and 3. safe multipolar ai

Led byAllison Duettmann
Endorsed by-
KS

Karan Srivastava

TeamIndividual
Individual

No summary available yet.

Endorsed by-
CS

Conrad Stosz

TeamIndividual
Individual

Conrad Stosz is Head of Governance at Transluce, where he leads work on AI evaluation standards and policy. He previously led the U.S. Center for Standards and Innovation and has held AI policy roles across the White House, Congress, and the Department of Defense, building on prior experience as a machine learning engineer.

Endorsed by-
SK

Sudarsh K

TeamIndividual
Individual

No summary available yet.

Endorsed by-

3 months exploring career options in AI governance, upskilling, networking, producing work samples, applying for jobs

Team?
Project

3 months exploring career options in AI governance, upskilling, networking, producing work samples, applying for jobs

Led byPeter Ruschhaupt
Endorsed by-
DP

Daniel Paleka

TeamIndividual
Individual

PhD student at ETH Zurich, advised by Florian Tramèr, focusing on security and failure modes of artificial intelligence.

Endorsed by-
RF

Rachel Freedman

TeamIndividual
IndividualManifund

AIS researcher, PhD student at CHAI

Endorsed by-
SK

Sudarsh Kunnavakkam

TeamIndividual
IndividualManifund

No summary available yet.

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LR

Logan Riggs Smith

TeamIndividual
Individual

Logan Riggs Smith is an independent AI safety and mechanistic interpretability researcher who goes by the handle "elriggs" on LessWrong and the Alignment Forum. He earned a BS and MS in electrical and computer engineering from Mississippi State University (2014-2021), where he focused on machine learning and wireless signal processing. He is best known as a co-author of "Sparse Autoencoders Find Highly Interpretable Features in Language Models" (ICLR 2024), alongside Hoagy Cunningham, Aidan Ewart, Robert Huben, and Lee Sharkey, an influential paper that helped establish sparse autoencoders as a core technique for mechanistic interpretability. He also contributed to shard theory research with Quintin Pope, Alex Turner, and Charles Foster. The Long-Term Future Fund supported Logan for over two years with six-month stipends of $40,000 each, funding his work on sparse autoencoders and language model tools for alignment research.

Endorsed by-

Building understanding of the structure of risks from AI to inform prioritization

Team?
Project

Building understanding of the structure of risks from AI to inform prioritization

Led byDavid Manheim
Endorsed by-
P

Pa

TeamIndividual
IndividualManifund

Pitti

Endorsed by-

Kush Bhatia

TeamIndividual
Individual

Kush Bhatia is a Research Scientist at Google DeepMind in San Francisco, having previously completed a postdoctoral fellowship at Stanford University under Christopher Ré. He earned his PhD in Electrical Engineering and Computer Sciences from UC Berkeley in 2022, where he was co-advised by Peter Bartlett and Anca Dragan, and his dissertation was titled "Learning when Objectives are Hard to Specify." Before Berkeley, he completed his undergraduate degree in Computer Science at IIT Delhi and spent two years as a research fellow at Microsoft Research India working with Prateek Jain and Manik Varma. His research spans statistical machine learning, high-dimensional statistics, optimization, and AI alignment, with a particular focus on problems at the intersection of human feedback and learning system objectives, including reward misspecification, reward hacking, and developing value-aligned systems. Notable works include "The Effects of Reward Misspecification: Mapping and Mitigating Misaligned Models" (ICLR 2022), "On the Sensitivity of Reward Inference to Misspecified Human Models" (ICLR 2023), and contributions to large language model prompting and training methodology. His postdoctoral work on safety in AI and value-aligned systems was supported by the Long-Term Future Fund.

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PD

Peter D. Hershock

TeamIndividual
Individual

Intercultural philosopher and co-founder of the Buddhism & AI Initiative, Adjunct Senior Fellow and former director of the Asian Studies Development Program at the East-West Center in Honolulu, and author of works including Buddhism and Intelligent Technology (2021) and Consciousness Mattering (2023).

Endorsed by-

Lukas Fluri

TeamIndividual
Individual

Lukas Fluri is a PhD student in Computer Science at ETH Zurich, supervised by Prof. Florian Tramèr in the SPY Lab, where he researches when and how AI systems fail and how to prevent this. He holds a BSc in Computer Science and an MSc in Data Science, both from ETH Zurich, and was awarded an ETH Medal for his Master's thesis "Evaluating Superhuman Models with Consistency Checks," which proposed a framework for surfacing mistakes in superhuman AI models using logical consistency checks. His research spans AI safety, interpretability, model evaluation, red-teaming, reinforcement learning, and the science of deep learning, covering both theoretical and empirical approaches. Prior to his PhD, he completed research internships at the University of Cambridge and UC Berkeley, during which he received Long-Term Future Fund support for an unpaid internship focused on using theory and interpretability to increase the safety of AI systems. He is also involved with Zurich AI Safety (ZAIS), a community organization focused on AI safety capacity building in Switzerland.

Endorsed by-

Dmitrii Krasheninnikov

TeamIndividual
Individual

Dmitrii (Dima) Krasheninnikov is an AI safety researcher who completed his PhD in machine learning at the University of Cambridge in December 2025, supervised by David Krueger and Rich Turner, and subsequently joined Anthropic. He holds an MSc in AI from the University of Amsterdam (cum laude) and previously held research positions at UC Berkeley's Center for Human-Compatible AI and Sony AI Zurich. His research spans interpretability, the science of deep learning, control, and security, with a focus on ensuring advanced AI systems remain aligned with human values. He is known for coining the term "out-of-context learning" and for demonstrating that language models linearly encode the training-order of facts in their activations. He also co-authored "Defining and Characterizing Reward Hacking" (NeurIPS 2022) and has published work at NeurIPS 2024/2025, ICML 2024, and ICLR 2026. He has received funding from the Long-Term Future Fund for his PhD research in AI alignment.

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Seer

Team?
Project

No summary available yet.

Led by?
Endorsed by-
JB

James Balzer, MSusDev MPP

TeamIndividual
Individual

James Balzer is an Australian strategic foresight practitioner and the Foresight Lead at the Odyssean Institute, where he works with governments, international organisations and businesses on scenario mapping, horizon scanning and sense-making to build long-term resilience. He serves on the steering committee of the Next Generation Foresight Practitioners network, leads the Intergenerational Fairness in Cities community of practice at the School of International Futures, and previously helped found the World Economic Forum’s Future 50 Initiative to upskill young people in foresight. He also conducts research on anticipatory governance and carbon market reform with the Disruptive Futures Institute and holds teaching and advisory roles with institutions including Macquarie University and the Lee Kuan Yew School of Public Policy.

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