Mistral Nemo vs Qwen3-32B
A complete head-to-head: pricing, context window, benchmarks, modality coverage, and openness, with a programmatic verdict synthesized from the underlying data.
Updated
Mistral Nemo specs · Qwen3-32B specs- PriceTie
Neither model publishes per-token API pricing.
- Context windowTie
Both ship a 128K-token context window.
- BenchmarksTie
No directly comparable public benchmarks are available for both models, check the spec sheets for individual scores.
- ModalitiesTie
Both handle text.
- OpennessTie
Both ship open weights, self-host either one.
It's a genuine coin-flip between Mistral Nemo and Qwen3-32B: 0 category wins each, with the rest tied. Neither model publishes per-token API pricing. Both ship a 128K-token context window.
No directly comparable public benchmarks are available for both models, check the spec sheets for individual scores. Both target the same set of modalities (text), so the deciding factors are price, context, and raw quality. Both ship open weights, self-host either one.
Qwen3-32B is the newer of the two, released 10 months after Mistral Nemo, which usually means a more recent knowledge cutoff and updated safety post-training. Mistral Nemo is usually picked for edge deployment and local llm workloads, while Qwen3-32B sees more deployments in open source llm and edge deployment. If pricing matters more than every last benchmark point, run the numbers in the calculator below before committing.
Side-by-side specs
| Spec | Mistral Nemo | Qwen3-32B |
|---|---|---|
| Provider | Mistral | Alibaba |
| Released | Jul 2024 | Apr 2025 |
| Modalities | text | text |
| Context window | 128K tokens | 128K tokens |
| Max output | , | , |
| Input · 1M | Pricing not published | Pricing not published |
| Output · 1M | Pricing not published | Pricing not published |
| Knowledge cutoff | , | , |
| Open weights | Yes (Apache-2.0) | Yes (Apache-2.0) |
| API available | Yes | Yes |
Pricing at scale
What you'd actually pay at typical workloads. Numbers come from each model's published per-million-token rates.
- Light usage, 100k in / 50k out per day, vs ,
- Heavy usage, 1M in / 500k out per day, vs ,
- RAG workload, 5M in / 200k out per day, vs ,
Light usage, 100k in / 50k out per day: pricing not directly comparable (one or both models are missing public per-token rates). Heavy usage, 1M in / 500k out per day: pricing not directly comparable (one or both models are missing public per-token rates). RAG workload, 5M in / 200k out per day: pricing not directly comparable (one or both models are missing public per-token rates).
Estimated spend for the listed models at your usage. Numbers are derived from each model's published per-million-token rates.
- Mistral NemoPricing unavailable
- Qwen3-32BPricing unavailable
Benchmarks compared
Only sourced numbers. Where a benchmark is missing for one model we show the available value rather than fabricating the other.
Mistral Nemo fits when…
- Apache-2.0
- Single-GPU fit
- Multilingual
Qwen3-32B fits when…
- Apache-2.0
- Fits modest hardware budgets
Consider Mistral Large 2
Mistral's flagship API model, strong on code and reasoning, EU-friendly hosting.
Frequently asked
Is Mistral Nemo or Qwen3-32B cheaper?
Per-token pricing isn't published for at least one of these models, check each model's spec page for current rates.Which has the larger context window?
Both Mistral Nemo and Qwen3-32B ship a 128K-token context window.Is Mistral Nemo or Qwen3-32B better for coding?
Both Mistral Nemo and Qwen3-32B are competitive on coding benchmarks. See each model's individual spec page for HumanEval and SWE-bench scores where published. For an opinionated pick, consult our Best LLM for Coding ranking.Are either of these models open source?
Both ship with open weights. Mistral Nemo is licensed under Apache-2.0; Qwen3-32B under Apache-2.0.When were Mistral Nemo and Qwen3-32B released?
Mistral Nemo was released by Mistral on 2024-07-18. Qwen3-32B was released by Alibaba on 2025-04-29.
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