Qwen/Qwen3.5-4B
Captured source
source ↗Qwen3.5-4B
> [!Note] > This repository contains model weights and configuration files for the post-trained model in the Hugging Face Transformers format. > > These artifacts are compatible with Hugging Face Transformers, vLLM, SGLang, KTransformers, etc.
Over recent months, we have intensified our focus on developing foundation models that deliver exceptional utility and performance. Qwen3.5 represents a significant leap forward, integrating breakthroughs in multimodal learning, architectural efficiency, reinforcement learning scale, and global accessibility to empower developers and enterprises with unprecedented capability and efficiency.
Qwen3.5 Highlights
Qwen3.5 features the following enhancement:
- Unified Vision-Language Foundation: Early fusion training on multimodal tokens achieves cross-generational parity with Qwen3 and outperforms Qwen3-VL models across reasoning, coding, agents, and visual understanding benchmarks.
- Efficient Hybrid Architecture: Gated Delta Networks combined with sparse Mixture-of-Experts deliver high-throughput inference with minimal latency and cost overhead.
- Scalable RL Generalization: Reinforcement learning scaled across million-agent environments with progressively complex task distributions for robust real-world adaptability.
- Global Linguistic Coverage: Expanded support to 201 languages and dialects, enabling inclusive, worldwide deployment with nuanced cultural and regional understanding.
- Next-Generation Training Infrastructure: Near-100% multimodal training efficiency compared to text-only training and asynchronous RL frameworks supporting massive-scale agent scaffolds and environment orchestration.
For more details, please refer to our blog post Qwen3.5.
Model Overview
- Type: Causal Language Model with Vision Encoder
- Training Stage: Pre-training & Post-training
- Language Model
- Number of Parameters: 4B
- Hidden Dimension: 2560
- Token Embedding: 248320 (Padded)
- Number of Layers: 32
- Hidden Layout: 8 × (3 × (Gated DeltaNet → FFN) → 1 × (Gated Attention → FFN))
- Gated DeltaNet:
- Number of Linear Attention Heads: 32 for V and 16 for QK
- Head Dimension: 128
- Gated Attention:
- Number of Attention Heads: 16 for Q and 4 for KV
- Head Dimension: 256
- Rotary Position Embedding Dimension: 64
- Feed Forward Network:
- Intermediate Dimension: 9216
- LM Output: 248320 (Tied to token embedding)
- MTP: trained with multi-steps
- Context Length: 262,144 natively and extensible up to 1,010,000 tokens.
Benchmark Results
Language
GPT-OSS-120BGPT-OSS-20BQwen3-Next-80B-A3B-ThinkingQwen3-30BA3B-Thinking-2507Qwen3.5-9BQwen3.5-4B
Knowledge & STEM
MMLU-Pro 80.8 74.8 82.7 80.9 82.5 79.1
MMLU-Redux 91.0 87.8 92.5 91.4 91.1 88.8
C-Eval 76.2 71.4 89.7 87.4 88.2 85.1
SuperGPQA 54.6 48.5 60.8 56.8 58.2 52.9
GPQA Diamond 80.1 71.5 77.2 73.4 81.7 76.2
Instruction Following
IFEval 88.9 88.2 88.9 88.9 91.5 89.8
IFBench 69.0 65.1 61.5 51.5 64.5 59.2
MultiChallenge 45.3 40.1 51.3 46.5 54.5 49.0
Long Context
AA-LCR 50.7 30.7 51.7 49.0 63.0 57.0
LongBench v2 48.2 45.6 48.0 44.8 55.2 50.0
Reasoning & Coding
HMMT Feb 25 90.0 76.7 73.7 63.1 83.2 74.0
HMMT Nov 25 90.0 81.8 81.2 73.8 82.9 76.8
LiveCodeBench v6 82.7 74.6 68.7 66.0 65.6 55.8
OJBench 41.5 36.3 29.7 25.1 29.2 24.1
General Agent
BFCL-V4 -- -- 49.7 42.4 66.1 50.3
TAU2-Bench -- -- 57.4 41.9 79.1 79.9
VITA-Bench -- -- 29.5 14.1 29.8 22.0
DeepPlanning -- -- 0.4 4.9 18.0 17.6
Multilingualism
MMMLU 78.2 69.7 81.3 78.4 81.2 76.1
MMLU-ProX <td s
Notability
notability 10.0/10Extremely high downloads, major model release