| # Using HF3FS as L3 Global KV Cache | |
| This document provides step-by-step instructions for setting up a k8s + 3FS + SGLang runtime environment from scratch, describing how to utilize deepseek-hf3fs as the L3 KV cache for SGLang. | |
| The process consists of five main steps: | |
| ## Step 1: Install deepseek-3fs via 3fs-Operator | |
| Refer to the [3fs-operator documentation](https://github.com/aliyun/kvc-3fs-operator/blob/main/README_en.md) to deploy 3FS components in your Kubernetes environment using the Operator with one-click deployment. | |
| ## Step 2: Launch SGLang Pod | |
| Start your SGLang Pod while specifying 3FS-related labels in the YAML configuration. Follow the [fuse-client-creation guide](https://github.com/aliyun/kvc-3fs-operator/blob/main/README_en.md#fuse-client-creation). | |
| ## Step 3: Configure Usrbio Client in SGLang Pod | |
| The Usrbio client is required for accessing 3FS. Install it in your SGLang Pod using either method below: | |
| **Alternative 1 (Recommend):** Build from source (refer to [setup_usrbio_client.md](setup_usrbio_client.md)) | |
| **Alternative 2:** Run `pip3 install hf3fs-py-usrbio` (Follow https://pypi.org/project/hf3fs-py-usrbio/#files) | |
| ## Step 4: Deploy Model Serving | |
| ### Single Node Deployment | |
| ```bash | |
| export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/usr/local/lib/python3.12/dist-packages | |
| python3 -m sglang.launch_server \ | |
| --model-path /path/to/models/Qwen3-32B/ \ | |
| --host 0.0.0.0 --port 10000 \ | |
| --page-size 64 \ | |
| --enable-hierarchical-cache \ | |
| --hicache-ratio 2 --hicache-size 0 \ | |
| --hicache-write-policy write_through \ | |
| --hicache-storage-backend hf3fs | |
| ``` | |
| ### Multi-Node Deployment (Shared KV Cache) | |
| Follow the [deploy_sglang_3fs_multinode.md](deploy_sglang_3fs_multinode.md) guide to deploy SGLang with 3FS across multiple nodes for shared KV caching. | |
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