Google’s Gemma 4 12B just dropped - here’s how to run it locally on your Mac
Summary
Google released Gemma 4 12B, an Apache 2.0 open-source multimodal model supporting text, vision, and audio with a 256K context window. The article provides a guide for running it locally on Macs using Ollama, LM Studio, or llama.cpp.
Similar Articles
@googleaidevs: We’re launching Gemma 4 12B: Our unified, encoder-free model that brings powerful multimodal intelligence straight to y…
Google launches Gemma 4 12B, an encoder-free multimodal model with native audio support, optimized for local execution on laptops under Apache 2.0.
@lmstudio: Gemma 4 12B is here! Dense, mid-sized Gemma that fits right on your laptop - released by @google under Apache 2.0 Avail…
Google released Gemma 4 12B, a dense mid-sized model that runs on laptops, under Apache 2.0, now available in LM Studio.
Google's new Gemma 4 12B model is designed to run on any laptop with 16GB of RAM
Google releases Gemma 4 12B, a compact AI model optimized for local laptop use with only 16GB of RAM, featuring multi-token prediction and streamlined multimodal capabilities for text, audio, and images.
Google Gemma 4 12B
Google's Gemma 4 12B model enables local multimodal AI using an encoder-free architecture.
@UnslothAI: Gemma 4 12B can now run locally on just 8GB RAM via Dynamic GGUFs. Google's new model, Gemma 4 12B Unified supports ima…
Gemma 4 12B, Google's multimodal open model supporting image, audio, and 256K context, can now run locally on just 8GB RAM via Unsloth's Dynamic GGUFs, enabling local training and inference through Unsloth Studio.