Which is cheaper for input tokens: AllenAI: Olmo 2 32B Instruct or Meta: Llama 3.2 11B Vision Instruct?
Meta: Llama 3.2 11B Vision Instruct is cheaper on input token cost by $0.00 per 1M tokens.
Head-to-Head Pricing Benchmark
Side-by-side pricing and context window comparison for production model selection.
Default Recommendation (120M input + 60M output)
Meta: Llama 3.2 11B Vision Instruct is lower-cost for the default monthly workload scenario.
Adjust the workload in the calculator below to see a live recommendation for your usage.
| Metric | AllenAI: Olmo 2 32B Instruct | Meta: Llama 3.2 11B Vision Instruct |
|---|---|---|
| Developer | allenai | meta-llama |
| Context Window | 128,000 | 131,072 |
| Input Cost / 1M Tokens | $0.0500 | $0.0490 |
| Output Cost / 1M Tokens | $0.2000 | $0.0490 |
| Projected Monthly Cost | $18 | $8.82 |
| Vision | ❌ No | ✅ Yes |
| Tool Calling | ❌ No | ❌ No |
| Structured Output | ❌ No | ✅ Yes |
| Reasoning | ❌ No | ❌ No |
| MMLU Score | N/A | 46.4 |
| GPQA | N/A | 22.1 |
Price History
Current Input / 1M
$0.0500
Current Output / 1M
$0.2000
Price History
Current Input / 1M
$0.0490
Current Output / 1M
$0.0490
Adjust your workload to see projected monthly costs.
AllenAI: Olmo 2 32B Instruct
$18
per month
Meta: Llama 3.2 11B Vision Instruct
$8.82
per month
Lower costLive Recommendation
Meta: Llama 3.2 11B Vision Instruct is lower-cost at 120M input + 60M output tokens/month.
Continue evaluation with more “A vs B pricing” decision pages.
Quick Compare
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Common questions for AllenAI: Olmo 2 32B Instruct vs Meta: Llama 3.2 11B Vision Instruct pricing decisions.
Meta: Llama 3.2 11B Vision Instruct is cheaper on input token cost by $0.00 per 1M tokens.
Meta: Llama 3.2 11B Vision Instruct is cheaper on output token cost by $0.15 per 1M tokens.
$9.18 difference for the default scenario (120M input + 60M output tokens/month).
Use this page to compare context window and token pricing, then open each model page to evaluate additional alternatives and monthly workload fit.