# Intern-S1-Pro Deployment Guide The Intern-S1-Pro release is a 1T parameter model stored in FP8 format. Deployment requires at least two 8-GPU H200 nodes, with either of the following configurations: - Tensor Parallelism (TP) - Data Parallelism (DP) + Expert Parallelism (EP) > NOTE: The deployment examples in this guide are provided for reference only and may not represent the latest or most optimized configurations. Inference frameworks are under active development — always consult the official documentation from each framework’s maintainers to ensure peak performance and compatibility. ## LMDeploy Required version `lmdeploy>=0.12.0` - Tensor Parallelism ```bash # start ray on node 0 and node 1 # node 0 lmdeploy serve api_server internlm/Intern-S1-Pro --backend pytorch --tp 16 ``` - Data Parallelism + Expert Parallelism ``` # node 0, proxy server lmdeploy serve proxy --server-name ${proxy_server_ip} --server-port ${proxy_server_port} --routing-strategy 'min_expected_latency' --serving-strategy Hybrid # node 0 export LMDEPLOY_DP_MASTER_ADDR=${node0_ip} export LMDEPLOY_DP_MASTER_PORT=29555 lmdeploy serve api_server \ internlm/Intern-S1-Pro \ --backend pytorch \ --tp 1 \ --dp 16 \ --ep 16 \ --proxy-url http://${proxy_server_ip}:${proxy_server_port} \ --nnodes 2 \ --node-rank 0 \ --reasoning-parser intern-s1 \ --tool-call-parser qwen3 # node 1 export LMDEPLOY_DP_MASTER_ADDR=${node0_ip} export LMDEPLOY_DP_MASTER_PORT=29555 lmdeploy serve api_server \ internlm/Intern-S1-Pro \ --backend pytorch \ --tp 1 \ --dp 16 \ --ep 16 \ --proxy-url http://${proxy_server_ip}:${proxy_server_port} \ --nnodes 2 \ --node-rank 1 \ --reasoning-parser intern-s1 \ --tool-call-parser qwen3 ``` ## vLLM - Tensor Parallelism + Expert Parallelism ```bash # start ray on node 0 and node 1 # node 0 export VLLM_ENGINE_READY_TIMEOUT_S=10000 vllm serve internlm/Intern-S1-Pro \ --tensor-parallel-size 16 \ --enable-expert-parallel \ --distributed-executor-backend ray \ --max-model-len 65536 \ --trust-remote-code \ --reasoning-parser deepseek_r1 \ --enable-auto-tool-choice \ --tool-call-parser hermes ``` - Data Parallelism + Expert Parallelism ```bash # node 0 export VLLM_ENGINE_READY_TIMEOUT_S=10000 vllm serve internlm/Intern-S1-Pro \ --all2all-backend deepep_low_latency \ --tensor-parallel-size 1 \ --enable-expert-parallel \ --data-parallel-size 16 \ --data-parallel-size-local 8 \ --data-parallel-address ${node0_ip} \ --data-parallel-rpc-port 13345 \ --gpu_memory_utilization 0.8 \ --mm_processor_cache_gb=0 \ --media-io-kwargs '{"video": {"num_frames": 768, "fps": 2}}' \ --max-model-len 65536 \ --trust-remote-code \ --api-server-count=8 \ --reasoning-parser deepseek_r1 \ --enable-auto-tool-choice \ --tool-call-parser hermes # node 1 export VLLM_ENGINE_READY_TIMEOUT_S=10000 vllm serve internlm/Intern-S1-Pro \ --all2all-backend deepep_low_latency \ --tensor-parallel-size 1 \ --enable-expert-parallel \ --data-parallel-size 16 \ --data-parallel-size-local 8 \ --data-parallel-start-rank 8 \ --data-parallel-address ${node0_ip} \ --data-parallel-rpc-port 13345 \ --gpu_memory_utilization 0.8 \ --mm_processor_cache_gb=0 \ --media-io-kwargs '{"video": {"num_frames": 768, "fps": 2}}' \ --max-model-len 65536 \ --trust-remote-code \ --headless \ --reasoning-parser deepseek_r1 \ --enable-auto-tool-choice \ --tool-call-parser hermes ``` > NOTE: To prevent out-of-memory (OOM) errors, we limit the context length using `--max-model-len 65536`. For datasets requiring longer responses, you may increase this value as needed. Additionally, video inference can consume substantial memory in vLLM API server processes; we therefore recommend setting `--media-io-kwargs '{"video": {"num_frames": 768, "fps": 2}}'` to constrain preprocessing memory usage during video benchmarking. ## SGLang - Tensor Parallelism + Expert Parallelism ```bash export DIST_ADDR=${master_node_ip}:${master_node_port} # node 0 python3 -m sglang.launch_server \ --model-path internlm/Intern-S1-Pro \ --tp 16 \ --ep 16 \ --mem-fraction-static 0.85 \ --trust-remote-code \ --dist-init-addr ${DIST_ADDR} \ --nnodes 2 \ --attention-backend fa3 \ --mm-attention-backend fa3 \ --keep-mm-feature-on-device \ --node-rank 0 \ --reasoning-parser qwen3 \ --tool-call-parser qwen # node 1 python3 -m sglang.launch_server \ --model-path internlm/Intern-S1-Pro \ --tp 16 \ --ep 16 \ --mem-fraction-static 0.85 \ --trust-remote-code \ --dist-init-addr ${DIST_ADDR} \ --nnodes 2 \ --attention-backend fa3 \ --mm-attention-backend fa3 \ --keep-mm-feature-on-device \ --node-rank 1 \ --reasoning-parser qwen3 \ --tool-call-parser qwen ```