Compare/Gemma 4 vs Qwen3.6-35B-A3B

AI tool comparison

Gemma 4 vs Qwen3.6-35B-A3B

Which one should you ship with? Here is the side-by-side panel verdict, pricing read, reviewer split, and community vote comparison.

G

AI Models

Gemma 4

Google's sharpest open models — multimodal, 256K context, runs on a Raspberry Pi

Ship

75%

Panel ship

Community

Free

Entry

Gemma 4 is Google DeepMind's fourth-generation open model family, released April 2, 2026, under Apache 2.0. Four variants ship in the family: E2B and E4B edge models that run fully offline on phones, Raspberry Pi, and NVIDIA Jetson; a 26B Mixture-of-Experts model that activates only 3.8B parameters at inference; and a 31B Dense flagship. The 31B scores 1452 on the Arena AI text leaderboard (third among all open models), hits 89.2% on AIME 2026 math, and 85.2% on MMLU Pro — versus Gemma 3's 20.8% on AIME. All four model sizes accept text and image inputs. The edge models additionally handle native audio and video, making them the first on-device models with full multimodal coverage. Context windows reach 256K tokens on the large variants, enabling entire codebases or long documents in a single prompt. Native support for tool use, structured output, and agentic workflows is baked in from the start. For the open-source AI community, Gemma 4 is a watershed: a commercially permissive model that genuinely competes with closed-source alternatives on reasoning benchmarks. Gemma downloads crossed 400 million before this launch — Gemma 4's edge deployment story, combining on-device inference with frontier-class reasoning, looks set to make that number look small.

Q

AI Models

Qwen3.6-35B-A3B

35B MoE model with only 3B active params that beats models 10× its inference size

Ship

75%

Panel ship

Community

Paid

Entry

Alibaba's Qwen team has released Qwen3.6-35B-A3B, a Mixture-of-Experts model that activates just 3 billion parameters per forward pass while drawing on 35 billion total. The result is frontier coding performance at the inference cost of a small model — it outperforms comparable dense models 10× its active size on agentic coding benchmarks. The native context window is 262K tokens, extensible to 1,010,000 tokens for long-document tasks. A standout feature is "thinking preservation" — the model retains reasoning context across turns in iterative development sessions, reducing the need to re-explain state in long agent loops. GGUF quantizations from Unsloth are already live for local use via Ollama, LM Studio, and llama.cpp, and the model lands well within the VRAM budget of a single 24 GB GPU at Q4_K_M. For developers, Qwen3.6-35B-A3B represents a genuinely efficient path to near-frontier coding capability without paying frontier API prices or needing server-grade hardware. The Apache 2.0 license means commercial use is unrestricted, making it a strong candidate for self-hosted coding agent backends.

Decision
Gemma 4
Qwen3.6-35B-A3B
Panel verdict
Ship · 3 ship / 1 skip
Ship · 3 ship / 1 skip
Community
No community votes yet
No community votes yet
Pricing
Free / Open Source (Apache 2.0)
Open Source
Best for
Google's sharpest open models — multimodal, 256K context, runs on a Raspberry Pi
35B MoE model with only 3B active params that beats models 10× its inference size
Category
AI Models
AI Models

Reviewer scorecard

Builder
80/100 · ship

Apache 2.0, runs on a Pi, 256K context, beats proprietary models on AIME — this is the open-source AI stack I've been waiting for. The agentic workflow support baked in natively means I'm not bolting on separate tooling. Shipping today.

80/100 · ship

If you're running a self-hosted coding agent and paying $X/month in API bills, this is your exit ramp. 3B active params means a single 4090 can serve it comfortably, and the 262K context actually handles real codebases. Ship it as your backend and tune from there.

Skeptic
45/100 · skip

The benchmark numbers are impressive on paper, but Gemma 3 was also hyped and underdelivered in production on complex multi-step tasks. The edge models are still unproven outside of Google's own hardware partnerships. Watch the community benchmarks before committing to a migration.

45/100 · skip

We've seen 'beats models 10× its size' claims before — benchmark cherry-picking is rampant. The thinking preservation feature sounds promising, but agentic loop reliability is something you discover in production, not on leaderboards. Run your own evals before committing an entire stack to this.

Futurist
80/100 · ship

On-device frontier-class intelligence with native audio and video is the inflection point for ambient AI. When a $35 Raspberry Pi can run a model that beats last year's GPT-4 on math, the entire economics of edge AI applications change overnight. This is the model that makes AI infrastructure costs asymptotically cheap.

80/100 · ship

MoE is increasingly the dominant paradigm for the efficiency frontier, and this is one of the clearest demonstrations of why. 3B active params at 35B effective capacity is not a trick — it's an architecture win. The line between 'local model' and 'frontier model' is erasing faster than anyone predicted.

Creator
80/100 · ship

The document and PDF parsing, OCR, chart comprehension, and UI understanding built into every model size is huge for creative workflow automation. I can finally build tools that read design briefs, invoices, and mockups without needing a cloud API call. The offline capability means client data never leaves my machine.

80/100 · ship

1M token context on a local model is a game-changer for creative workflows — entire novel manuscripts, full design system docs, long-form scripts fit in a single window. The zero API cost means no throttling during high-creativity sprints. This earns a spot in the local toolkit.

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