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Google's Gemma 4 12B model runs on laptops with 16GB RAM

Created at 3 Jun · 11:15 PM2 sources↑ Market-relevant2 events
IN SHORT

Google has released its Gemma 4 12B large language model, designed to run on consumer laptops with 16GB of RAM. This model offers multimodal capabilities, including native audio input, and performs comparably to larger models according to benchmarks.

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Key Numbers

12Bparameter model size
16GBsystem RAM or VRAM requirement
26BGemma 4 MoE model size

Who's Involved

Google
Developer of the Gemma 4 12B model

↳ Why This Matters

Google's new Gemma 4 12B model democratizes access to advanced AI by enabling powerful multimodal features on standard consumer laptops, reducing reliance on high-end hardware and potentially accelerating on-device AI adoption.

Key facts

  • Google released the Gemma 4 12B large language model.
  • The model is designed to run on consumer laptops with 16GB of system RAM or VRAM.
  • Gemma 4 12B is more capable than previous mobile-optimized Gemma models.
  • The new model has about half the memory footprint of the Gemma 4 26B MoE model.
  • Google claims Gemma 4 12B is nearly as capable as the 26B model based on benchmarks.
  • Gemma 4 12B is the first mid-sized model from Google to support native audio input.

Google has introduced its new Gemma 4 12B model, a large language model designed for efficiency and accessibility. This new model aims to address the high memory demands driven by the generative AI boom, making advanced AI capabilities available on standard consumer hardware. The Gemma 4 12B model is positioned between Google's previously released mobile-optimized options (E2B and E4B) and its more powerful 26B Mixture of Experts and 31B Dense models. Google states that the 12-billion-parameter model can operate on laptops equipped with 16GB of system RAM or VRAM, a significant reduction compared to the memory footprint of the 26B MoE model. Benchmarks suggest that Gemma 4 12B offers nearly comparable capabilities to its larger counterpart, despite its reduced resource requirements. It also features multimodal capabilities, including native audio input, and utilizes an encoder-free architecture for improved performance.

Frequently asked questions

Google has released Gemma 4 12B, a new large language model designed to be efficient enough to run on consumer laptops.

The model requires a computer with 16GB of system RAM or VRAM to run.

It is more capable than the mobile-optimized versions and has a smaller memory footprint than the 26B MoE model, while offering comparable performance according to benchmarks. It also supports native audio input.

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Cadence

How It Developed

4 Jun · 8:47 AM
Google's latest on-device AI model is custom-made for your laptop
Android Authority via PiQSuite
3 Jun · 7:10 PM
Google's new Gemma 4 12B model, with 12 billion parameters, may run on consumer laptops with 16GB of RAM.
Ars Technica via PiQSuite

Sources

T1
Google's new Gemma 4 12B model is designed to run on any laptop with 16GB of RAMm.piqsuite.com
T1
Google's latest on-device AI model is custom-made for your laptopm.piqsuite.com

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