[DOC]: some minor updates (#10134)

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2025-09-07 17:58:15 -04:00
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@@ -104,7 +104,7 @@ Overall, with these optimizations, we have achieved up to **7x** acceleration in
<img src="https://lmsys.org/images/blog/sglang_v0_3/deepseek_mla.svg" alt="Multi-head Latent Attention for DeepSeek Series Models">
</p>
**Usage**: MLA optimization is enabled by default. For MLA models on Blackwell architecture (e.g., B200), the default backend is FlashInfer. To use the optimized TRTLLM MLA backend for decode operations, explicitly specify `--attention-backend trtllm_mla`. Note that TRTLLM MLA only optimizes decode operations - prefill operations (including multimodal inputs) will fall back to FlashInfer MLA.
**Usage**: MLA optimization is enabled by default. For MLA models on Blackwell architecture (e.g., B200), the default backend is FlashInfer. To use the optimized TRTLLM MLA backend for prefill and decode operations, explicitly specify `--attention-backend trtllm_mla`.
**Reference**: Check [Blog](https://lmsys.org/blog/2024-09-04-sglang-v0-3/#deepseek-multi-head-latent-attention-mla-throughput-optimizations) and [Slides](https://github.com/sgl-project/sgl-learning-materials/blob/main/slides/lmsys_1st_meetup_deepseek_mla.pdf) for more details.

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@@ -26,6 +26,7 @@ in the GitHub search bar.
| Model Family (Variants) | Example HuggingFace Identifier | Description |
|-------------------------------------|--------------------------------------------------|----------------------------------------------------------------------------------------|
| **DeepSeek** (v1, v2, v3/R1) | `deepseek-ai/DeepSeek-R1` | Series of advanced reasoning-optimized models (including a 671B MoE) trained with reinforcement learning; top performance on complex reasoning, math, and code tasks. [SGLang provides Deepseek v3/R1 model-specific optimizations](../basic_usage/deepseek.md) and [Reasoning Parser](../advanced_features/separate_reasoning.ipynb)|
| **GPT-OSS** | `openai/gpt-oss-20b`, `openai/gpt-oss-120b` | OpenAIs latest GPT-OSS series for complex reasoning, agentic tasks, and versatile developer use cases.|
| **Qwen** (3, 3MoE, 2.5, 2 series) | `Qwen/Qwen3-0.6B`, `Qwen/Qwen3-30B-A3B` | Alibabas latest Qwen3 series for complex reasoning, language understanding, and generation tasks; Support for MoE variants along with previous generation 2.5, 2, etc. [SGLang provides Qwen3 specific reasoning parser](../advanced_features/separate_reasoning.ipynb)|
| **Llama** (2, 3.x, 4 series) | `meta-llama/Llama-4-Scout-17B-16E-Instruct` | Meta's open LLM series, spanning 7B to 400B parameters (Llama 2, 3, and new Llama 4) with well-recognized performance. [SGLang provides Llama-4 model-specific optimizations](../basic_usage/llama4.md) |
| **Mistral** (Mixtral, NeMo, Small3) | `mistralai/Mistral-7B-Instruct-v0.2` | Open 7B LLM by Mistral AI with strong performance; extended into MoE (“Mixtral”) and NeMo Megatron variants for larger scale. |