Lightweight Champ: NVIDIA Releases Small Language Model With State-of-the-Art Accuracy

Developers of generative AI typically face a tradeoff between model size and accuracy. But a new language model released by NVIDIA delivers the best of both, providing state-of-the-art accuracy in a compact form factor.

Mistral-NeMo-Minitron 8B — a miniaturized version of the open Mistral NeMo 12B model released by Mistral AI and NVIDIA last month — is small enough to run on an NVIDIA RTX-powered workstation while still excelling across multiple benchmarks for AI-powered chatbots, virtual assistants, content generators and educational tools. Minitron models are distilled by NVIDIA using NVIDIA NeMo, an end-to-end platform for developing custom generative AI.

“We combined two different AI optimization methods — pruning to shrink Mistral NeMo’s 12 billion parameters into 8 billion, and distillation to improve accuracy,” said Bryan Catanzaro, vice president of applied deep learning research at NVIDIA. “By doing so, Mistral-NeMo-Minitron 8B delivers comparable accuracy to the original model at lower computational cost.”

Unlike their larger counterparts, small language models can run in real time on workstations and laptops. This makes it easier for organizations with limited resources to deploy generative AI capabilities across their infrastructure while optimizing for cost, operational efficiency and energy use. Running language models locally on edge devices also delivers security benefits, since data doesn’t need to be passed to a server from an edge device.

Developers can get started with Mistral-NeMo-Minitron 8B packaged as an NVIDIA NIM microservice with a standard application programming interface (API) — or they can download the model from Hugging Face. A downloadable NVIDIA NIM, which can be deployed on any GPU-accelerated system in minutes, will be available soon.

State-of-the-Art for 8 Billion Parameters

For a model of its size, Mistral-NeMo-Minitron 8B leads on nine popular benchmarks for language models. These benchmarks cover a variety of tasks including language understanding, common sense reasoning, mathematical reasoning, summarization, coding and ability to generate truthful answers.

Packaged as an NVIDIA NIM microservice, the model is optimized for low latency, which means faster responses for users, and high throughput, which corresponds to higher computational efficiency in production.

In some cases, developers may want an even smaller version of the model to run on a smartphone or an embedded device like a robot. To do so, they can download the 8-billion-parameter model and, using NVIDIA AI Foundry, prune and distill it into a smaller, optimized neural network customized for enterprise-specific applications.

The AI Foundry platform and service offers developers a full-stack solution for creating a customized foundation model packaged as a NIM microservice. It includes popular foundation models, the NVIDIA NeMo platform and dedicated capacity on NVIDIA DGX Cloud. Developers using NVIDIA AI Foundry can also access NVIDIA AI Enterprise, a software platform that provides security, stability and support for production deployments.

Since the original Mistral-NeMo-Minitron 8B model starts with a baseline of state-of-the-art accuracy, versions downsized using AI Foundry would still offer users high accuracy with a fraction of the training data and compute infrastructure.

Harnessing the Perks of Pruning and Distillation 

To achieve high accuracy with a smaller model, the team used a process that combines pruning and distillation. Pruning downsizes a neural network by removing model weights that contribute the least to accuracy. During distillation, the team retrained this pruned model on a small dataset to significantly boost accuracy, which had decreased through the pruning process.

The end result is a smaller, more efficient model with the predictive accuracy of its larger counterpart.

This technique means that a fraction of the original dataset is required to train each additional model within a family of related models, saving up to 40x the compute cost when pruning and distilling a larger model compared to training a smaller model from scratch.

Read the NVIDIA Technical Blog and a technical report for details.

NVIDIA also announced this week Nemotron-Mini-4B-Instruct, another small language model optimized for low memory usage and faster response times on NVIDIA GeForce RTX AI PCs and laptops. The model is available as an NVIDIA NIM microservice for cloud and on-device deployment and is part of NVIDIA ACE, a suite of digital human technologies that provide speech, intelligence and animation powered by generative AI.

Experience both models as NIM microservices from a browser or an API at ai.nvidia.com.

See notice regarding software product information.


Blog Article: Here

  • Related Posts

    Nintendo Switch 2 Leveled Up With NVIDIA AI-Powered DLSS and 4K Gaming

    The Nintendo Switch 2, unveiled April 2, takes performance to the next level, powered by a custom NVIDIA processor featuring an NVIDIA GPU with dedicated RT Cores and Tensor Cores for stunning visuals and AI-driven enhancements. With 1,000 engineer-years of effort across every element — from system and chip design to a custom GPU, APIs
    Read Article

    NVIDIA Showcases Real-Time AI and Intelligent Media Workflows at NAB

    Real-time AI is unlocking new possibilities in media and entertainment, improving viewer engagement and advancing intelligent content creation.  At NAB Show, a premier conference for media and entertainment running April 5-9 in Las Vegas, NVIDIA will showcase how emerging AI tools and the technologies underpinning them help streamline workflows for streamers, content creators, sports leagues
    Read Article

    Leave a Reply

    Your email address will not be published. Required fields are marked *

    You Missed

    Copado and Agentforce: Automating Release Notes and Accelerating Production Deployments

    Copado and Agentforce: Automating Release Notes and Accelerating Production Deployments
    Celebrating Microsoft’s 50 years

    Vibe coding with GitHub Copilot: Agent mode and MCP support rolling out to all VS Code users

    Vibe coding with GitHub Copilot: Agent mode and MCP support rolling out to all VS Code users

    Say Hello to Your New Colleague, the AI Agent

    Say Hello to Your New Colleague, the AI Agent
    Your AI Companion

    The latest AI news we announced in March

    The latest AI news we announced in March