Comprehensive side-by-side LLM comparison
Phi-3.5-MoE Instruct leads with 7.8% higher average benchmark score. Gemma 3 12B supports multimodal inputs. Overall, Phi-3.5-MoE Instruct is the stronger choice for coding tasks.
Google DeepMind
Gemma 3 12B is a 12-billion-parameter open-weight model from Google DeepMind, released in March 2025 as part of the Gemma 3 series designed to bring multimodal reasoning to accessible hardware. The model supports both text and image inputs across a 128K token context window, extending the vision capabilities that defined the Gemma 3 generation compared to earlier text-only Gemma releases. It became widely adopted for domain-specific fine-tuning in research and enterprise settings where full multimodal capability was needed without the infrastructure demands of larger frontier models.
Microsoft
Phi-3.5-MoE-instruct is a sparse mixture-of-experts model from Microsoft's Phi research team, released in August 2024 with 42 billion total parameters across 16 experts and approximately 6.6 billion active parameters per forward pass. The model applies Microsoft's small-data, high-quality training philosophy — developed across earlier Phi generations — to a MoE architecture, targeting reasoning quality comparable to much larger dense models at a fraction of the inference compute. Released under the MIT license, it was notable in the research community for demonstrating that MoE efficiency gains could be realized at smaller total parameter counts than typical large-scale MoE deployments.
6 months newer

Phi-3.5-MoE Instruct
Microsoft
2024-08-22

Gemma 3 12B
Google DeepMind
2025-03-12
Average performance across 1 common benchmarks
Gemma 3 12B
Phi-3.5-MoE Instruct
Performance comparison across key benchmark categories
Gemma 3 12B
Phi-3.5-MoE Instruct
Available providers and their performance metrics
Gemma 3 12B
Phi-3.5-MoE Instruct
Gemma 3 12B
Phi-3.5-MoE Instruct