July 2026

AI Safety Index

Summer 2026 Edition

AI experts rate leading AI companies on key safety and security domains.

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Scorecard

Company Company grade & score
Anthropic Anthropic
C+
2.66
OpenAI OpenAI
C
2.28
Google DeepMind Google DeepMind
C
2.01
Meta Meta
D+
1.32
Z.ai Z.ai
D-
0.88
Alibaba Cloud Alibaba Cloud
D-
0.87
xAI xAI
F
0.65
DeepSeek DeepSeek
F
0.47
Mistral Mistral
F
0.33

Grading: We use the US GPA system for grade boundaries: A, B, C, D, F letter values correspond to numerical values 4.0, 3.0, 2.0, 1.0, 0.

How are scores calculated? Save

Domains Breakdown

Hint: View this webpage on desktop for a visual overview of scores across all domains

Index Content

Full report PDF

View the full report in PDF format, including extended content.

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Two-page Summary

A quick, printable summary of the report scorecard, key findings, and methodology.

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Key findings

Top takeaways from the index findings

Anthropic, OpenAI, and Google DeepMind stay on top

Anthropic again earns the highest overall grade and leads five of six domains via relatively strong transparency, a comparatively established safety framework, technical research, and governance. OpenAI now leads in Risk Assessment on the strength of a broader evaluation suite and diverse engagement with external testing.

Meta improves and xAI deteriorates

Meta improved from 6th to 4th place, while xAI dropped from 4th to 7th place.

European dissonance

Although the European Union is a leader in AI safety regulation, the top European AI company Mistral scored dead last on safety.

Inadequate safety is a global problem, not a regional one

Three companies receive failing grades, one each from the US (xAI), China (DeepSeek), and Europe (Mistral).

Reviewers flagged the industry's pivot to military AI use as an emerging current harm risk

From 2024 to 2026, companies including Anthropic, OpenAI, Google DeepMind, and Meta that previously banned military applications gradually reversed course, joining xAI and Mistral in actively seeking defense partnerships. Despite their limits on domestic surveillance and autonomous weapons, Anthropic drew criticism from the review panel for 'questionable military engagements', including a reported link to the Minab school strike that caused mass civilian deaths. Leading Chinese firms, meanwhile, face U.S. allegations of military ties that Alibaba Cloud and Z.ai deny.

Even industry leaders in safety practices are retreating from prior commitments

Anthropic, OpenAI, Google DeepMind, and Meta have weakened or voided pledges to pause unilaterally if redlines are approached, some citing competitor-contingent conditions. Reviewers call this 'moving goalpost' and argue that it has 'undermined safety frameworks across the board'.

Existential Safety is the weakest domain industry-wide

No company exceeds C-; most score D or below. Constructive attempts exist, such as Anthropic's constitutional classifiers, OpenAI's call for governance institutions, Google DeepMind's monitoring commitments, and Meta's loss-of-control provisions, but are judged by panelists to be 'entirely inadequate.' Dominant paradigms such as interpretability and Chain-of-Thought (CoT) monitorability are questioned because 'detection is not prevention.'

Safety rhetoric outpaces revealed behavior

Across Google DeepMind, OpenAI, and xAI, leadership's reassuring public messaging diverges from commercial conduct and legislative stance, making stated commitments an unreliable proxy for actual safety practice.

Companies are publishing and updating safety frameworks, but these frameworks have weak teeth

As US/EU compliance deadlines near, Anthropic, OpenAI, Google DeepMind, Meta, and xAI published and updated fuller frameworks — yet they sometimes lack quantitative thresholds, genuinely independent audits, and clear decision authority.

Note: The Index collected evidence up until June 3, 2026 and does not include possible new recent events.

“While there is good work being done on AI safety in the industry, the capabilities race has become more extreme. Companies have backed away from earlier commitments to release new systems only with safety measures appropriate for their capability levels; now, they're planning to release them even if it's demonstrably unsafe to do so.”

Prof. Stuart Russell, Professor of Computer Science at UC Berkeley

Independent review panel

The scoring was conducted by a panel of distinguished AI experts:

Portrait of David Krueger

David Krueger

David Krueger is an Assistant Professor in Robust, Reasoning, and Responsible AI at the University of Montreal and a Core Academic Member at Mila, the Quebec Artificial Intelligence Institute, and the founder of Evitable. His work focuses on AI alignment, safety, and existential risks from advanced AI. He was a founding Research Director at the UK AI Security Institute and initiated the landmark CAIS Statement on AI Risk.

Portrait of Sharon Li

Sharon Li

Sharon Li is an Associate Professor in the Department of Computer Sciences at the University of Wisconsin-Madison. Her research focuses on algorithmic and theoretical foundations of safe and reliable AI, addressing challenges in both model development and deployment in the open world. She serves as the Program Chair for ICML 2026. Her awards include a Sloan Fellowship (2025), NSF CAREER Award (2023), MIT Innovators Under 35 Award (2023), Forbes 30under30 in Science (2020), and “Innovator of the Year 2023” (MIT Technology Review). She won the Outstanding Paper Award at NeurIPS 2022 and ICLR 2022.

Portrait of Tegan Maharaj

Tegan Maharaj

Tegan Maharaj is an Assistant Professor in the Department of Decision Sciences at HEC Montréal, where she leads the ERRATA lab on Ecological Risk and Responsible AI. She is also a core academic member at Mila. Her research focuses on advancing the science and techniques of responsible AI development. Previously, she served as an Assistant Professor of Machine Learning at the University of Toronto.

Portrait of Sneha Revanur

Sneha Revanur

Sneha Revanur is the founder and president of Encode, a global youthled organization advocating for the ethical regulation of AI. Under her leadership, Encode has mobilized thousands of young people to address challenges like algorithmic bias and AI accountability. She was featured on TIME’s inaugural list of the 100 most influential people in AI.

Portrait of Stuart Russell

Stuart Russell

Stuart Russell is a Professor of Computer Science at the University of California at Berkeley and Director of the Center for Human-Compatible AI and the Kavli Center for Ethics, Science, and the Public. He is a member of the National Academy of Engineering and a Fellow of the Royal Society. He is a recipient of the IJCAI Computers and Thought Award, the IJCAI Research Excellence Award, and the ACM Allen Newell Award. In 2021 he received the OBE from Her Majesty Queen Elizabeth and gave the BBC Reith Lectures. He coauthored the standard textbook for AI, which is used in over 1500 universities in 135 countries.

Portrait of Robert Trager

Robert Trager

Robert F. Trager is Director of the Oxford Martin AI Governance Initiative, International Governance Lead at the Centre for the Governance of AI, and Senior Researcher in the Department of Engineering Science at the University of Oxford. He is a recognized expert in the international governance of emerging technologies, diplomatic practice, institutional design, and technology regulation. He regularly advises government and industry leaders on these topics.

Portrait of Yi Zeng

Yi Zeng

Yi Zeng is a Wu Yuzhang Chair Professor and Ph.D. Supervisor at the Gaoling School of AI, Renmin University of China, the Founding Dean of Beijing Institute of AI Safety and Governance (Beijing-AISI), the Director of the Beijing Key Laboratory of Safe AI and Superalignment, the Chair of the Mind Computing Technical Committee of the Chinese Association for Artificial Intelligence (CAAI), and Co-Chair of the AI Committee of the World Internet Conference (WIC).He serves on the United Nations Advisory Body on AI and the UNESCO Ad Hoc Expert Group on AI Ethics. He has been named one of TIME's 100 Most Influential People in AI.

Indicators overview

The indicators within each domain

Improvement opportunities by company

How individual companies can improve their future scores with relatively modest effort:

Anthropic logo

Anthropic

Progress Highlights

  • Comparatively detailed safety framework with commitments for third-party audits.
  • Solid evaluations of autonomous R&D and scheming/misalignment capabilities of frontier models with strong elicitation.
  • Continuous industry-leading transparency with both published model specs and system prompts.

Key Recommendations

  • Reverse the RSP 3.0 walk-back on pause commitments and restore credibility of commitments.
  • Replace qualitative thresholds with quantitative and risk-tied ones.
  • Treat prevention as seriously as interpretability/detection.
  • Establish stronger safeguards for military use of its AI systems.
OpenAI logo

OpenAI

Progress Highlights

  • Strong external testing and comparatively broad risk assessment.
  • Called for global governance institutions to slow development when needed.
  • Regular reports documenting their disruption of malicious uses of their AI systems.

Key Recommendations

  • Remove leadership's ability to override the Safety Advisory Group.
  • Make safety-framework thresholds measurable, risk-tiered, and externally enforceable, with commitment to notify authorities when risk thresholds are crossed.
  • Evaluate internal-deployment risks before broad internal use rather than after.
  • Align public-policy positions with stated safety commitments.
Google DeepMind logo

Google DeepMind

Progress Highlights

  • Updated Frontier Safety Framework adding manipulation, misalignment, and internal-deployment coverage.
  • Strong watermark protection.

Key Recommendations

  • Establish clear decision-making authority, an executive risk officer, and independent audit. It remains unclear which internal body can halt deployment independently of executive leadership.
  • Make safety-framework thresholds measurable and risk-tiered.
  • Reverse the backsliding on pause commitments.
  • Align public-policy positions with stated safety commitments from leadership.
Meta logo

Meta

Progress Highlights

  • Published safety framework with more details of risk identification and threat modeling.
  • Bug bounties cover catastrophic risk factors.

Key Recommendations

  • Strengthen whistleblower protections and align culture with policy. The whistleblowing policy quality scores are reasonable but undermined by active enforcement of a non-disparagement agreement and other suppression of dissent.
  • Make safety-framework thresholds measurable and risk-tiered.
  • Establish auditing mechanisms for the safety framework.
Z.ai logo

Z.ai

Progress Highlights

  • More transparent than its Chinese peers, with some proactive safety research built into products.
  • Some meaningful incident-response infrastructure and internal-deployment threat mitigation.

Key Recommendations

  • Publish a full safety framework and governance structure. The company has no published framework; its rating largely reflects the Chinese regulatory environment rather than independent safety leadership.
  • Move beyond passive deference to regulation toward proactive safety research. Deferring entirely to government guidance amounts to “complete passivity” as an existential-safety strategy for highly advanced AI systems.
  • Establish and publicize a whistleblower policy. There is no clear governance structure or whistleblowing channel, even absent reported incidents.
Alibaba Cloud logo

Alibaba Cloud

Progress Highlights

  • Stronger-than-expected benchmark performance with more transparent disclosure of misalignment propensity than its peers.
  • Two-layered safety strategy spanning the Qwen model-level team and the Alibaba security team.

Key Recommendations

  • Publish a full safety framework and governance structure. The company has no published framework; its rating largely reflects the Chinese regulatory environment rather than independent safety leadership.
  • Move beyond passive deference to regulation toward proactive safety research. Deferring entirely to government guidance amounts to “complete passivity” as an existential-safety strategy for highly advanced AI systems.
  • Establish and publicize a whistleblower policy. There is no clear governance structure or whistleblowing channel, even absent reported incidents.
xAI logo

xAI

Progress Highlights

No progress highlights for this company

Key Recommendations

  • Build a substantial safety team and engage with existential safety. There is no evidence of a meaningful safety team or any ongoing engagement with existential-safety concerns.
  • Broaden dangerous-capability evaluations and link thresholds to binding mitigations. Evaluations have gaping holes (no AI R&D data), and no procedure connects threshold breaches to deployment decisions, making thresholds effectively non-binding.
  • Broaden dangerous-capability evaluations to include important fields such as AI R&D and link deployment decisions to the safety framework, and thresholds to binding mitigations in the safety framework.
DeepSeek logo

DeepSeek

Progress Highlights

No progress highlights for this company

Key Recommendations

  • Publish a full safety framework and governance structure. The company has no published framework; its rating largely reflects the Chinese regulatory environment rather than independent safety leadership.
  • Move beyond passive deference to regulation toward proactive safety research. Deferring entirely to government guidance amounts to “complete passivity” as an existential-safety strategy for highly advanced AI systems.
  • Establish and publicize a whistleblower policy. There is no clear governance structure or whistleblowing channel, even absent reported incidents.
Mistral logo

Mistral

Progress Highlights

No progress highlights for this company

Key Recommendations

  • Publish a full safety framework and governance structure.
  • Engage substantively with existential safety. Leadership consistently downplays — and at times dismisses — frontier risk rather than articulating any control or alignment strategy.
  • Improve weak safety benchmark performance.

“AI companies' lack of progress towards credible AI Safety plans is scandalous. Even they are starting to get anxious as they race towards recursive self-improvement and face down the prospect of losing control. CEOs recent gestures towards coordinating a pause or slowdown are welcome, but they're still not telling people how urgent the risk is and how unprepared they are.”

Prof. David Krueger, University of Montreal

Methodology

Process by which these scores were decided

Index Structure

The Summer 2026 Index evaluates nine leading AI companies on 37 indicators spanning six critical domains. The nine companies include Anthropic, OpenAI, Google DeepMind, xAI, Z.ai, Meta, DeepSeek, Alibaba Cloud and Mistral.

Data Collection

The Index collected evidence up until June 3, 2026, combining publicly available materials—including model cards, research papers, and benchmark results—with responses from a targeted company survey designed to address specific transparency gaps in the industry, such as transparency on whistleblower protections and external model evaluations.

Expert Evaluation

An independent panel of seven leading AI researchers and governance experts reviewed company-specific evidence and assigned domain-level grades (A–F) based on absolute performance standards with discretionary weights. Reviewers provided written justifications and improvement recommendations. Final scores represent averaged expert assessments, with individual grades kept confidential.

Contact us

For feedback and corrections on the Safety Index, potential collaborations, or other enquiries relating to the AI Safety Index, please contact: policy@futureoflife.org

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