Alibaba has launched a newer model, Qwen3.5 4B, we suggest considering this model instead.
For more information, see Comparison of Qwen3.5 4B to other models and API provider benchmarks for Qwen3.5 4B.
Qwen3 4B 2507 Instruct Intelligence, Performance & Price Analysis
Model summary
IntelligenceUpdated
Speed
Input Price
Output Price
Verbosity
Qwen3 4B 2507 Instruct is amongst the leading models in intelligence and well priced when comparing to other open weight non-reasoning models of similar size. The model supports text input, outputs text, and has a 262k tokens context window.
Qwen3 4B 2507 Instruct scores 7 on the Artificial Analysis Intelligence Index, placing it well above average among comparable models (averaging 3).
Pricing for Qwen3 4B 2507 Instruct is $0.00 per 1M input tokens (competitively priced, average: $0.00) and $0.00 per 1M output tokens (competitively priced, average: $0.00).
| Reasoning | No This page shows the non-reasoning version of this model. A reasoning variant may also exist. |
|---|---|
| Input modality | Supports: text |
| Output modality | Supports: text |
| Context window | 262k ~393 A4 pages of size 12 Arial font |
| Total parameters | 4.0B |
| License | Apache 2.0 |
| Model weights | Hugging Face |
Metrics are compared against models of the same class:
- Non-reasoning models → compared only with other non-reasoning models
- Reasoning models → compared across both reasoning and non-reasoning
- Open weights models → compared only with other open weights models of the same size class:
- Tiny: ≤4B parameters
- Small: 4B–40B parameters
- Medium: 40B–150B parameters
- Large: >150B parameters
- Proprietary models → compared across proprietary and open weights models of the same price range, using a blended 3:1 input/output price ratio:
- <$0.15 per 1M tokens
- $0.15–$1 per 1M tokens
- >$1 per 1M tokens
Highlights
IntelligenceUpdated
Artificial Analysis Intelligence Index
Artificial Analysis Intelligence Index by Open Weights / Proprietary
Intelligence Evaluations
Agentic real-world work tasks, (Elo-500)/2000
Agentic tool use
Agentic coding & terminal use
Coding
Reasoning & knowledge
Scientific reasoning
Physics reasoning
Knowledge
1 - hallucination rate
Long context reasoning
Agentic knowledge work, (Elo-500)/2000
Instruction following
Long-horizon agentic tasks
Kubernetes incident root-cause analysis
Visual reasoning
AA-BriefcaseNew
AA-Briefcase Elo
Openness
Artificial Analysis Openness Index: Score
Intelligence Index Comparisons
Intelligence vs. Cost per Intelligence Index Task
Token UseUpdated
Output Tokens per Intelligence Index Task
Price and CostUpdated
Cost per Intelligence Index Task
Cost to Run Artificial Analysis Intelligence Index
Pricing: Cache Hit, Input, and Output
Context Window
Context Window
SpeedUpdated
Measured by Output Speed (tokens per second)
Output Speed
Time per Intelligence Index Task
Latency
Measured by Time (seconds) to First Token
Latency: Time To First Answer Token
End-to-End Response Time
Seconds to output 500 tokens, calculated based on time to first token, 'thinking' time for reasoning models, and output speed
End-to-End Response Time
Model Size (Open Weights Models Only)
Model Size: Total and Active Parameters
Frequently Asked Questions
Common questions about Qwen3 4B 2507 Instruct
Qwen3 4B 2507 Instruct was released on August 6, 2025.
Qwen3 4B 2507 Instruct was created by Alibaba.
Qwen3 4B 2507 Instruct scores 7 (estimated) on the Artificial Analysis Intelligence Index, placing it well above average among other open weight non-reasoning models of similar size (median: 3).
No, Qwen3 4B 2507 Instruct is not a reasoning model. It provides direct responses without extended chain-of-thought reasoning.
Qwen3 4B 2507 Instruct supports text input.
Qwen3 4B 2507 Instruct supports text output.
No, Qwen3 4B 2507 Instruct does not support image input. It can only process text.
No, Qwen3 4B 2507 Instruct is not multimodal. It only supports text input.
Qwen3 4B 2507 Instruct has a context window of 260k tokens. This determines how much text and conversation history the model can process in a single request.
Yes, Qwen3 4B 2507 Instruct is open weights. The model weights are publicly available and can be downloaded for self-hosting.
Qwen3 4B 2507 Instruct has 4.02 billion parameters.
Qwen3 4B 2507 Instruct is released under the Apache 2.0 license. This license allows commercial use. View license
Qwen3 4B 2507 Instruct achieves a score of 7 on the Artificial Analysis Intelligence Index. This composite benchmark evaluates models across reasoning, knowledge, mathematics, and coding.
Qwen3 4B 2507 Instruct is an open weights model that can be self-hosted. View providers
Qwen3 4B 2507 Instruct is an open weights model that can be downloaded and self-hosted. Compare providers