Google: Gemma 3n 2B
google/gemma-3n-e2b-it
Gemma 3n E2B IT is a multimodal, instruction-tuned model developed by Google DeepMind, designed to operate efficiently at an effective parameter size of 2B while leveraging a 6B architecture. Based on the MatFormer architecture, it supports nested submodels and modular composition via the Mix-and-Match framework. Gemma 3n models are optimized for low-resource deployment, offering 32K context length and strong multilingual and reasoning performance across common benchmarks. This variant is trained on a diverse corpus including code, math, web, and multimodal data.
Modalities
Context
Low
8K
Released
Jul 9, 2025
Knowledge Cutoff
Aug 2024
Activity
Token volume and request traffic to this model over time.