Jackrong/Qwen3.5-9B-DeepSeek-V4-Flash
Jackrong β’ imageπ Qwen3.5-9B-DeepSeek-V4-Flash
π‘ Model Overview & Design

[!NOTE] Qwen3.5-9B-DeepSeek-V4-Flash is an efficient reasoning model distilled using high-quality data from DeepSeek-V4.
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By leveraging the dataset Jackrong/DeepSeek-V4-Distill-8000x, this model successfully transfers the advanced structured reasoning and multi-step problem-solving capabilities of the DeepSeek-V4 architecture into the highly efficient Qwen3.5-9B parameter space.
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This model was trained in an Unsloth environment, prioritizing stable gradient propagation and rigorous data curation to ensure the distillation process avoids merely learning "hollow chain-of-thought" and instead captures genuine logical generalization.
Designed for:
- π§© Structured Reasoning: Inheriting DeepSeek-V4's deep logic capabilities.
- β‘ Flash Inference: Maintaining the token-efficiency and speed of the 9B parameter size.
- π§ Tool-augmented Workflows: Reliable agentic action generation.
π About the Teacher Model: DeepSeek-V4

DeepSeek-V4 is the latest flagship open-source model series from DeepSeek, engineered for extreme efficiency, million-token long context (1M), and advanced Agentic workflows. As the source for this distillation, DeepSeek-V4 provides the high-fidelity reasoning signals necessary to push a 9B model beyond its architectural limits.
Key Technical Strengths of the Teacher Model:
- π World-Class Reasoning & Coding: DeepSeek-V4 demonstrates elite performance in mathematics (MATH-500), STEM subjects, and real-world software engineering (SWE-bench). Its "Think" modes provide the sophisticated Long-CoT (Chain-of-Thought) traces that define this model's logic.
- π§ Architectural Innovation: * Hybrid Attention & DSA: Features Token-level compression and DeepSeek Sparse Attention, which reduces KV Cache memory overhead by up to 90%, allowing for highly efficient long-context processing.
- Engram Memory & mHC: Utilizes Manifold-constrained Hyper-connections to decouple factual knowledge retrieval from dynamic logical reasoning, ensuring exceptional stability and generalization.
- π€ Agent-Centric Design: Specifically optimized for multi-step tool calling and complex environment interaction, ensuring that the distilled knowledge includes reliable "how-to-act" procedures, not just "how-to-talk."
By distilling from DeepSeek-V4-Flash, we have successfully mapped the high-density logic of a trillion-parameter class model onto the agile and high-speed Qwen3.5-9B framework.
π€ Collaboration & Training Details
This model is the result of a close collaboration with hardware engineer Kyle Hessling. He generously provided the crucial compute equipment and managed both the rigorous post-training testing and continuous server maintenance. I want to express my gratitude to Kyle for his invaluable support! You can find him on X/Twitter here: @KyleHessling1
Training Infrastructure & Configuration:
- π₯οΈ Hardware: NVIDIA DGX
- πΎ Training Data: DeepSeek-V4-Distill-8000x
- π§ͺ Training Method: Distillation
π― Motivation & Distillation Insights
- π§ Latent Knowledge Activation: DeepSeek-V4's reasoning traces help the Qwen3.5-9B model activate its existing latent knowledge more effectively.
- ποΈ Learning Procedures: The model learns actual problem-solving procedures, not just the output format.
- π Efficiency: The 8000x dataset provides a dense signal, allowing the 9B model to converge on reasoning tasks much faster than traditional large-scale SFT.
π¬ Supporting Evidence
Recent work and empirical tests support this distillation approach:
Ren et al., 2026 β Rethinking Generalization in Reasoning SFT (arXiv:2604.06628)
The paper suggests that generalization in reasoning SFT is conditional. Key takeaways:
- High-quality long-CoT data from DeepSeek-V4 enables cross-domain transfer.
- Optimization Discipline: Short, highly-curated distillation (8000 examples) prevents the model from overfitting to the teacher's stylistic quirks while preserving the core reasoning engine.
π οΈ Best Practices
For optimal performance, we recommend the following generation parameters:
temperature=0.7to1.0(Use lower temperature for strict coding tasks, higher for creative reasoning)top_p=0.95
When interacting with the model, using a structured prompt template or standard ChatML format will yield the best reasoning results.
π Resources & Guides
π GitHub Repository: Jackrong-llm-finetuning-guide Visit the repository to dive into the codebase and reproduce the results locally or on Colab.
π₯ Core Technical Document
π Complete Fine-Tuning Guide (PDF)
A Note: My goal isn't just to detail a workflow, but to demystify LLM training. Beyond the social media hype, fine-tuning isn't an unattainable ritualβoften, all you need is a Google account, a standard laptop, and relentless curiosity. All training and testing for this project were self-funded. If you find this model or guide helpful, a Star βοΈ on GitHub would be the greatest encouragement. Thank you! π
β οΈ Limitations
- Parameter Constraints: While enhanced by DeepSeek-V4 distillation, the model is still bound by the 9B parameter limits and may struggle with extremely obscure knowledge.
- Over-reasoning: On very simple queries, the model might still attempt to produce a lengthy reasoning chain due to the SFT bias.
- Safety Trade-offs: Asymmetric gains mean that while reasoning improves, certain alignment-sensitive behaviors might regress.
π Acknowledgements
Special thanks to:
- DeepSeek Team for the foundational advancements in the V4 architecture.
- Unsloth for efficient fine-tuning frameworks.
- Open-source datasets and community contributors.
- Researchers exploring reasoning SFT and distillation.
π Citation
@misc{jackrong_qwen35_9b_deepseek_v4_flash,
title = {Qwen3.5-9B-DeepSeek-V4-Flash},
author = {Jackrong},
year = {2026},
publisher = {Hugging Face}
}