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qwen-3-32b Cost Calculator - Vercel Ai Gateway

Calculate the cost of using qwen-3-32b from Vercel Ai Gateway for your AI applications

Pricing data last updated:

qwen-3-32b Cost Calculator

Mode: Chat

Max: 40,960 tokens

Max: 16,384 tokens

Cost Breakdown

Input Cost$0.00010000
Output Cost$0.00030000
Total Cost$0.00040000

Pricing Details

Input: $0.0000001000 per token
Output: $0.0000003000 per token
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Model Specifications

Capabilities

Function Calling

Limits

Max Input Tokens40,960
Max Output Tokens16,384
Max Tokens16,384

About qwen-3-32b

qwen-3-32b is a chat model from Vercel Ai Gateway, one of 95 chat models they offer. It is priced at $0.10 per 1M input tokens and $0.30 per 1M output tokens, ranking 272 out of 2292 chat models by cost and cheaper than 85% of models in this category. qwen-3-32b supports function calling. It accepts up to 41K input tokens.

Pricing Information

Input Cost$0.10 per 1M tokens
Output Cost$0.30 per 1M tokens

Note: Use the interactive calculator above to estimate costs for your specific usage patterns.

Technical Specifications

Maximum Input Tokens40,960
Maximum Output Tokens16,384
Maximum Total Tokens16,384

Pro Tip

Use the maximum token limits shown above to understand the model's capacity. This model can handle up to 40,960 input tokens. The maximum output length is 16,384 tokens.

Model Capabilities

Function Calling - Execute custom functions and tools

How qwen-3-32b Pricing Compares

At $0.10 per 1M input tokens and $0.30 per 1M output tokens, qwen-3-32b ranks 272 out of 2292 chat models by input cost. It is more affordable compared to the median of $0.55 for chat models, and is cheaper than 85% of models in this category.

qwen-3-32b is one of 95 Vercel Ai Gateway chat models, with support for function calling.

ModelProviderInput / 1M tokensOutput / 1M tokensvs qwen-3-32b
gpt-4.1-nanoAzure$0.10$0.400%
gpt-4.1-nano-2025-04-14Azure$0.10$0.400%
Phi-4Azure$0.13$0.50+25%

Alternatives to qwen-3-32b

Similar chat models from other providers

Azure
gpt-4.1-nano
$0.10/1M input
0% vs qwen-3-32b
Azure
Phi-4
$0.13/1M input
+25% vs qwen-3-32b
Azure
Phi-4-reasoning
$0.13/1M input
+25% vs qwen-3-32b

Frequently Asked Questions

Is qwen-3-32b cheaper than gpt-4.1-nano?

No. qwen-3-32b costs $0.10 per 1M input tokens while gpt-4.1-nano costs $0.10 per 1M input tokens, making gpt-4.1-nano 0% more affordable for input. However, qwen-3-32b may offer different capabilities or performance characteristics that justify the price difference.

How does qwen-3-32b pricing compare to the average chat model?

qwen-3-32b input pricing is $0.10 per 1M tokens, which is 82% below the median of $0.55 for chat models. It ranks 272 out of 2292 chat models by input cost, making it cheaper than 85% of models in this category. For output, it costs $0.30 per 1M tokens compared to the median of $1.50.

What makes qwen-3-32b different from other Vercel Ai Gateway models?

Among Vercel Ai Gateway's 95 chat models, qwen-3-32b ranks 11 by input cost.

What are the best alternatives to qwen-3-32b?

The most comparable chat models to qwen-3-32b are: gpt-4.1-nano from Azure ($0.10/1M input tokens); gpt-4.1-nano-2025-04-14 from Azure ($0.10/1M input tokens); Phi-4 from Azure ($0.13/1M input tokens); Phi-4-multimodal-instruct from Azure ($0.08/1M input tokens). These alternatives were selected based on similar capabilities, pricing, and provider diversity. You can compare any of these models in detail using the Bifrost Model Library.

How do I calculate qwen-3-32b costs?

qwen-3-32b is priced based on input and output tokens. Use the interactive calculator at the top of this page to estimate costs for your specific workload. Enter your expected input and output tokens volume and the calculator will show the total cost breakdown. For reference, processing 1M input tokens costs $0.10 and generating 1M output tokens costs $0.30.