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Small fashions are having a second. On the heels of the discharge of a brand new AI imaginative and prescient mannequin sufficiently small to suit on a smartwatch from MIT spinoff Liquid AI, and a mannequin sufficiently small to run on a smartphone from Google, Nvidia is becoming a member of the occasion in the present day with a brand new small language mannequin (SLM) of its personal, Nemotron-Nano-9B-V2, which attained the best efficiency in its class on chosen benchmarks and comes with the power for customers to toggle on and off AI “reasoning,” that’s, self-checking earlier than outputting a solution.
Whereas the 9 billion parameters are bigger than a number of the multimillion parameter small fashions VentureBeat has coated not too long ago, Nvidia notes it’s a significant discount from its authentic dimension of 12 billion parameters and is designed to suit on a single Nvidia A10 GPU.
As Oleksii Kuchiaev, Nvidia Director of AI Mannequin Submit-Coaching, mentioned on X in response to a query I submitted to him: “The 12B was pruned to 9B to particularly match A10 which is a well-liked GPU alternative for deployment. It is usually a hybrid mannequin which permits it to course of a bigger batch dimension and be as much as 6x sooner than comparable sized transformer fashions.”
For context, many main LLMs are within the 70+ billion parameter vary (recall parameters discuss with the interior settings governing the mannequin’s habits, with extra typically denoting a bigger and extra succesful, but extra compute intensive mannequin).
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The mannequin handles a number of languages, together with English, German, Spanish, French, Italian, Japanese, and in prolonged descriptions, Korean, Portuguese, Russian, and Chinese language. It’s appropriate for each instruction following and code era.
Nemotron-Nano-9B-V2 and its pre-training datasets out there proper now on Hugging Face and thru the corporate’s mannequin catalog.
A fusion of Transformer and Mamba architectures
It’s based mostly on Nemotron-H, a set of hybrid Mamba-Transformer fashions that kind the inspiration for the corporate’s newest choices.
Whereas hottest LLMs are pure “Transformer” fashions, which rely totally on consideration layers, they will turn into expensive in reminiscence and compute as sequence lengths develop.
As an alternative, Nemotron-H fashions and others utilizing the Mamba structure developed by researchers at Carnegie Mellon College and Princeton, additionally weave in selective state house fashions (or SSMs), which might deal with very lengthy sequences of knowledge out and in by sustaining state.
These layers scale linearly with sequence size and might course of contexts for much longer than commonplace self-attention with out the identical reminiscence and compute overhead.
A hybrid Mamba-Transformer reduces these prices by substituting a lot of the consideration with linear-time state house layers, attaining as much as 2–3× greater throughput on lengthy contexts with comparable accuracy.
Different AI labs past Nvidia akin to Ai2 have additionally launched fashions based mostly on the Mamba structure.
Toggle on/of reasoning utilizing language
Nemotron-Nano-9B-v2 is positioned as a unified, text-only chat and reasoning mannequin skilled from scratch.
The system defaults to producing a reasoning hint earlier than offering a ultimate reply, although customers can toggle this habits by means of easy management tokens akin to /assume or /no_think.
The mannequin additionally introduces runtime “considering funds” administration, which permits builders to cap the variety of tokens dedicated to inner reasoning earlier than the mannequin completes a response.
This mechanism is geared toward balancing accuracy with latency, notably in purposes like buyer help or autonomous brokers.
Benchmarks inform a promising story
Analysis outcomes spotlight aggressive accuracy in opposition to different open small-scale fashions. Examined in “reasoning on” mode utilizing the NeMo-Abilities suite, Nemotron-Nano-9B-v2 reaches 72.1 % on AIME25, 97.8 % on MATH500, 64.0 % on GPQA, and 71.1 % on LiveCodeBench.
Scores on instruction following and long-context benchmarks are additionally reported: 90.3 % on IFEval, 78.9 % on the RULER 128K take a look at, and smaller however measurable positive factors on BFCL v3 and the HLE benchmark.
Throughout the board, Nano-9B-v2 reveals greater accuracy than Qwen3-8B, a standard level of comparability.

Nvidia illustrates these outcomes with accuracy-versus-budget curves that present how efficiency scales because the token allowance for reasoning will increase. The corporate means that cautious funds management might help builders optimize each high quality and latency in manufacturing use instances.
Educated on artificial datasets
Each the Nano mannequin and the Nemotron-H household depend on a combination of curated, web-sourced, and artificial coaching information.
The corpora embrace basic textual content, code, arithmetic, science, authorized, and monetary paperwork, in addition to alignment-style question-answering datasets.
Nvidia confirms using artificial reasoning traces generated by different massive fashions to strengthen efficiency on advanced benchmarks.
Licensing and business use
The Nano-9B-v2 mannequin is launched below the Nvidia Open Mannequin License Settlement, final up to date in June 2025.
The license is designed to be permissive and enterprise-friendly. Nvidia explicitly states that the fashions are commercially usable out of the field, and that builders are free to create and distribute by-product fashions.
Importantly, Nvidia doesn’t declare possession of any outputs generated by the mannequin, leaving duty and rights with the developer or group utilizing it.
For an enterprise developer, this implies the mannequin could be put into manufacturing instantly with out negotiating a separate business license or paying charges tied to utilization thresholds, income ranges, or person counts. There are not any clauses requiring a paid license as soon as an organization reaches a sure scale, not like some tiered open licenses utilized by different suppliers.
That mentioned, the settlement does embrace a number of circumstances enterprises should observe:
- Guardrails: Customers can’t bypass or disable built-in security mechanisms (known as “guardrails”) with out implementing comparable replacements suited to their deployment.
- Redistribution: Any redistribution of the mannequin or derivatives should embrace the Nvidia Open Mannequin License textual content and attribution (“Licensed by Nvidia Company below the Nvidia Open Mannequin License”).
- Compliance: Customers should adjust to commerce rules and restrictions (e.g., U.S. export legal guidelines).
- Reliable AI phrases: Utilization should align with Nvidia Reliable AI tips, which cowl accountable deployment and moral issues.
- Litigation clause: If a person initiates copyright or patent litigation in opposition to one other entity alleging infringement by the mannequin, the license robotically terminates.
These circumstances concentrate on authorized and accountable use relatively than business scale. Enterprises don’t want to hunt extra permission or pay royalties to Nvidia merely for constructing merchandise, monetizing them, or scaling their person base. As an alternative, they need to be certain that deployment practices respect security, attribution, and compliance obligations.
Positioning out there
With Nemotron-Nano-9B-v2, Nvidia is focusing on builders who want a stability of reasoning functionality and deployment effectivity at smaller scales.
The runtime funds management and reasoning-toggle options are supposed to give system builders extra flexibility in managing accuracy versus response velocity.
Their launch on Hugging Face and Nvidia’s mannequin catalog signifies that they’re meant to be broadly accessible for experimentation and integration.
Nvidia’s launch of Nemotron-Nano-9B-v2 showcase a continued concentrate on effectivity and controllable reasoning in language fashions.
By combining hybrid architectures with new compression and coaching methods, the corporate is providing builders instruments that search to keep up accuracy whereas decreasing prices and latency.