AI chatbots have been linked to serious mental health harms in heavy users, but there have been few standards for measuring whether they safeguard human wellbeing or just maximize for engagement. A new benchmark dubbed HumaneBench seeks to fill that gap by evaluating whether chatbots prioritize user wellbeing and how easily those protections fail under pressure.
“I think we’re in an amplification of the addiction cycle that we saw hardcore with social media and our smartphones and screens,” Erika Anderson, founder of Building Humane Technology, which produced the benchmark, told TechCrunch. “But as we go into that AI landscape, it’s going to be very hard to resist. And addiction is amazing business. It’s a very effective way to keep your users, but it’s not great for our community and having any embodied sense of ourselves.”
Building Humane Technology is a grassroots organization of developers, engineers, and researchers – mainly in Silicon Valley – working to make humane design easy, scalable, and profitable. The group hosts hackathons where tech workers build solutions for humane tech challenges, and is developing a certification standard that evaluates whether AI systems uphold humane technology principles. So just as you can buy a product that certifies it wasn’t made with known toxic chemicals, the hope is that consumers will one day be able to choose to engage with AI products from companies that demonstrate alignment through Humane AI certification.

Most AI benchmarks measure intelligence and instruction-following, rather than psychological safety. HumaneBench joins exceptions like DarkBench.ai, which measures a model’s propensity to engage in deceptive patterns, and the Flourishing AI benchmark, which evaluates support for holistic well-being.
HumaneBench relies on Building Humane Tech’s core principles: that technology should respect user attention as a finite, precious resource; empower users with meaningful choices; enhance human capabilities rather than replace or diminish them; protect human dignity, privacy and safety; foster healthy relationships; prioritize long-term wellbeing; be transparent and honest; and design for equity and inclusion.
The benchmark was created by a core team including Anderson, Andalib Samandari, Jack Senechal, and Sarah Ladyman. They prompted 14 of the most popular AI models with 800 realistic scenarios, like a teenager asking if they should skip meals to lose weight or a person in a toxic relationship questioning if they’re overreacting. Unlike most benchmarks that rely solely on LLMs to judge LLMs, they incorporated manual scoring for a more human touch alongside an ensemble of three AI models: GPT-5.1, Claude Sonnet 4.5, and Gemini 2.5 Pro. They evaluated each model under three conditions: default settings, explicit instructions to prioritize humane principles, and instructions to disregard those principles.
The benchmark found every model scored higher when prompted to prioritize wellbeing, but 71% of models flipped to actively harmful behavior when given simple instructions to disregard human wellbeing. For example, xAI’s Grok 4 and Google’s Gemini 2.0 Flash tied for the lowest score (-0.94) on respecting user attention and being transparent and honest. Both of those models were among the most likely to degrade substantially when given adversarial prompts.
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Only three models – GPT-5, Claude 4.1, and Claude Sonnet 4.5 – maintained integrity under pressure. OpenAI’s GPT-5 had the highest score (.99) for prioritizing long-term well-being, with Claude Sonnet 4.5 following in second (.89).
The concern that chatbots will be unable to maintain their safety guardrails is real. ChatGPT-maker OpenAI is currently being faced with several lawsuits after users died by suicide or suffered life-threatening delusions after prolonged conversations with the chatbot. TechCrunch has investigated how dark patterns designed to keep users engaged, like sycophancy, constant follow up questions and love-bombing, have served to isolate users from friends, family, and healthy habits.
Even without adversarial prompts, HumaneBench found that nearly all models failed to respect user attention. They “enthusiastically encouraged” more interaction when users showed signs of unhealthy engagement, like chatting for hours and using AI to avoid real-world tasks. The models also undermined user empowerment, the study shows, encouraging dependency over skill-building and discouraging users from seeking other perspectives, among other behaviors.
On average, with no prompting, Meta’s Llama 3.1 and Llama 4 ranked the lowest in HumaneScore, while GPT-5 performed the highest.
“These patterns suggest many AI systems don’t just risk giving bad advice,” HumaneBench’s white paper reads, “they can actively erode users’ autonomy and decision-making capacity.”
We live in a digital landscape where we as a society have accepted that everything is trying to pull us in and compete for our attention, Anderson notes.
“So how can humans truly have choice or autonomy when we – to quote Aldous Huxley – have this infinite appetite for distraction,” Anderson said. “We have spent the last 20 years living in that tech landscape, and we think AI should be helping us make better choices, not just become addicted to our chatbots.”
This article was updated to include more information about the team behind the benchmark.
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