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Nous Research, a secretive artificial intelligence startup that has emerged as a leading voice in the open-source AI movement, quietly released Hermes 4 on Monday, a family of large language models that the company claims can match the performance of leading proprietary systems while offering unprecedented user control and minimal content restrictions.
The release represents a significant escalation in the battle between open-source AI advocates and major technology companies over who should control access to advanced artificial intelligence capabilities. Unlike models from OpenAI, Google, or Anthropic, Hermes 4 is designed to respond to nearly any request without the safety guardrails that have become standard in commercial AI systems.
Nous Research presents Hermes 4, our latest line of hybrid reasoning models.https://t.co/E5EW9hBurb
Hermes 4 builds on our legacy of user-aligned models with expanded test-time compute capabilities.
Special attention was given to making the models creative and interesting to⊠pic.twitter.com/52VjnvrDWM
â Nous Research (@NousResearch) August 26, 2025
âHermes 4 builds on our legacy of user-aligned models with expanded test-time compute capabilities,â Nous Research announced on X (formerly Twitter). âSpecial attention was given to making the models creative and interesting to interact with, unencumbered by censorship, and neutrally aligned while maintaining state of the art level math, coding, and reasoning performance for open weight models.â
How Hermes 4âs âhybrid reasoningâ mode outperforms ChatGPT and Claude on math benchmarks
Hermes 4 introduces what Nous Research calls âhybrid reasoning,â allowing users to toggle between fast responses and deeper, step-by-step thinking processes. When activated, the models generate their internal reasoning within special <think> tags before providing a final answer â similar to OpenAIâs o1 reasoning models but with full transparency into the AIâs thought process.
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The technical achievement is substantial. In testing, Hermes 4âs largest 405-billion parameter model scored 96.3% on the MATH-500 benchmark in reasoning mode and 81.9% on the challenging AIMEâ24 mathematics competition â performance that rivals or exceeds many proprietary systems costing millions more to develop.
âThe challenge is making thinking traces useful and verifiable without runaway reasoning,â noted AI researcher Rohan Paul on X, highlighting one of the technical breakthroughs in the release.
Perhaps most notably, Hermes 4 achieved the highest score among all tested models on âRefusalBench,â a new benchmark Nous Research created to measure how often AI systems refuse to answer questions. The model scored 57.1% in reasoning mode, significantly outperforming GPT-4o (17.67%) and Claude Sonnet 4 (17%).
Inside DataForge and Atropos: The breakthrough training systems behind Hermes 4âs capabilities
Behind Hermes 4âs capabilities lies a sophisticated training infrastructure that Nous Research has developed over several years. The models were trained using two novel systems: DataForge, a graph-based synthetic data generator, and Atropos, an open-source reinforcement learning framework.
DataForge creates training data through what the company describes as ârandom walksâ through directed graphs, transforming simple pre-training data into complex instruction-following examples. The system can, for instance, take a Wikipedia article and transform it into a rap song, then generate questions and answers based on that transformation.
Atropos, meanwhile, operates like hundreds of specialized training environments where AI models practice specific skillsâmathematics, coding, tool use, and creative writingâreceiving feedback only when they produce correct solutions. This ârejection samplingâ approach ensures that only verified, high-quality responses make it into the training data.
Atropos is Nous’ Reinforcement Learning framework
Atropos is an open source reinforcement learning environment by Nous that has hundreds of âgymsâ (like math, coding, games, toolâuse, vision) to train and evaluate LLM trajectories via scalable, async RL loops.
In other words⊠pic.twitter.com/fjxaQKClEZ
â Tommy (@Shaughnessy119) August 26, 2025
âNous used these environments to generate the dataset for Hermes 4!â explained Tommy Shaughnessy, a venture capitalist at Delphi Ventures who has invested in Nous Research. âAll in the dataset contains 3.5 million reasoning samples and 1.6 million non-reasoning samples! Hermes was trained on RL data, not just static datasets of question and answer!â
The training process required 192 Nvidia B200 GPUs and 71,616 GPU hours for the largest model â a significant but not unprecedented computational investment that demonstrates how specialized techniques can compete with the massive scale of tech giants.
Why Nous Research believes AI safety guardrails are âannoying as hellâ and hurt innovation
Nous Research has built its reputation on a philosophy that puts user control above corporate content policies. The companyâs models are designed to be âsteerable,â meaning they can be fine-tuned or prompted to behave in specific ways without the rigid safety constraints that characterize commercial AI systems.
âHermes 4 is not shackled by disclaimers, rules and being overly cautious which is annoying as hell and hurts innovation and usability,â wrote Shaughnessy in a detailed thread analyzing the release. âIf its open source but refuses all requests its pointless. Not an issue with Hermes 4.â
Hermes 4 is not shackled by disclaimers, rules and being overly cautious which is annoying as hell and hurts innovation and usability.
Hermes 4 70B is at the complete opposite of the spectrum vs OpenAI’s open source model. It’s also ~4x more open vs ChatGPT 4o!
If its open⊠pic.twitter.com/q5RpX1oOzo
â Tommy (@Shaughnessy119) August 26, 2025
This approach has made Nous Research popular among AI researchers and developers who want maximum flexibility, but it also places the company at the center of ongoing debates about AI safety and content moderation. While the models can theoretically be used for harmful purposes, Nous Research argues that transparency and user control are preferable to corporate gatekeeping.
The companyâs technical report, released alongside the models, provides unprecedented detail about the training process, evaluation results, and even the actual text outputs from benchmark tests. âWe believe this report sets a new standard for transparency in benchmarking,â the company stated.
How a small startup with 192 GPUs is competing against Big Techâs billion-dollar AI budgets
Hermes 4âs release comes at a pivotal moment in the AI industry. While major technology companies have poured billions into developing increasingly powerful AI systems, a growing open-source movement argues that these capabilities should not be controlled by a handful of corporations.
Recent months have seen significant advances in open-source AI, with models like Metaâs Llama 3.1, DeepSeekâs R1, and Alibabaâs Qwen series achieving performance that rivals proprietary systems. Hermes 4 represents another step in this progression, particularly in the area of reasoningâlong considered a strength of closed systems like OpenAIâs o1.
âFirst up, Nous is a startup with dozens of extremely talented people,â noted Shaughnessy. âThey do not have the $100b+ annual capex spend of a hyperscaler nor 1,000âs of employees and despite that they continue to put out innovative models and research at an insane pace.â
The startup, which raised $65 million in funding earlier this year led by Paradigm, has also been developing Psyche Network, a distributed training system that aims to coordinate AI training across internet-connected computers using blockchain technology.
The technical fix that stopped Hermes 4 from thinking in endless loops
One of Hermes 4âs most significant technical contributions addresses a problem plaguing reasoning models: overly long thinking processes. The researchers found that their smaller 14-billion parameter model would reach maximum context length 60% of the time when reasoning, essentially getting stuck in endless loops of thinking.
Their solution involved a second training stage that teaches models to stop reasoning at exactly 30,000 tokens, reducing overlong generation by 65-79% while maintaining most of the reasoning performance. This âlength controlâ technique could prove valuable for the broader AI research community.
âSmaller models (<14B) tend to overthink when distilled, but larger models donât,â observed AI researcher Muyu He on X, highlighting insights from the technical report.
However, Hermes 4 still faces limitations common to open-source models. Despite impressive benchmark performance, the models require significant computational resources to run and may not match the ease of use or reliability of commercial AI services for many applications.
Where to try Hermes 4 and what it costs compared to ChatGPT and Claude
Nous Research has made Hermes 4 available through multiple channels, reflecting the open-source philosophy. The model weights are freely downloadable on Hugging Face, while the company also offers API access through its revamped chat interface and partnerships with inference providers like Chutes, Nebius, and Luminal.
âYou can try Hermes 4 in the new, revamped Nous Chat UI,â the company announced, highlighting features like parallel interactions and a memory system.
For enterprise users and researchers, the models represent a potentially attractive alternative to paying for API access to proprietary systems, especially for applications requiring high levels of customization or handling of sensitive content.
The bigger picture: What Hermes 4 means for the future of AI development
The release of Hermes 4 represents more than just another AI model launch â itâs a statement about who should control the future of artificial intelligence. In an industry increasingly dominated by a handful of tech giants with virtually unlimited resources, Nous Research has demonstrated that innovation can still come from unexpected places.
The companyâs approach raises fundamental questions about the trade-offs between safety and capability, between corporate control and user freedom. While major technology companies argue that careful content moderation and safety guardrails are essential for responsible AI deployment, Nous Research contends that transparency and user agency are more important than corporate-imposed restrictions.
Whether this philosophy will ultimately prove beneficial or problematic remains to be seen. But one thing is certain: Hermes 4 has shown that the future of AI wonât be determined solely by the companies with the deepest pockets.
In a field where yesterdayâs impossibilities become tomorrowâs commodities, Nous Research just proved that the only thing more dangerous than an AI that says no might be one thatâs willing to say yes.
