#!/bin/bash # SPDX-FileCopyrightText: Copyright (c) 2025-2026 NVIDIA CORPORATION & AFFILIATES. All rights reserved. # SPDX-License-Identifier: Apache-2.0 # # Disaggregated prefill/decode on a SINGLE GPU. # Per-worker VRAM is controlled via build_sglang_gpu_mem_args (see gpu_utils.sh). # Override individual knobs (CONTEXT_LENGTH, MAX_RUNNING_REQUESTS) via env vars. # # Measured reference (Qwen/Qwen3-0.6B, --context-length 4096, RTX 6000 Ada 48 GiB): # estimate (from gpu_utils.sh) : ~5.7 GiB per worker (w=1.1 + kv=0.9 + oh=3.7) # actual (nvidia-smi) : ~5.3 GiB per worker (~10.9 GiB total) # fraction per worker (48 GiB) : 0.12 # KV cache : 25,536-29,712 tokens per worker # Handles full 4096-token context with --max-running-requests 2. set -e trap 'echo Cleaning up...; kill 0' EXIT SCRIPT_DIR="$(dirname "$(readlink -f "$0")")" source "$SCRIPT_DIR/../../../common/gpu_utils.sh" MODEL="Qwen/Qwen3-0.6B" # ---- Tunable (override via env vars) ---- CONTEXT_LENGTH="${CONTEXT_LENGTH:-4096}" MAX_RUNNING_REQUESTS="${MAX_RUNNING_REQUESTS:-2}" MAX_TOTAL_TOKENS="${MAX_TOTAL_TOKENS:-25000}" CUDA_VISIBLE_DEVICES="${CUDA_VISIBLE_DEVICES:-0}" GPU_MEM_ARGS=$(build_sglang_gpu_mem_args) if [[ -z "$GPU_MEM_ARGS" ]]; then GPU_MEM_ARGS="--max-total-tokens $MAX_TOTAL_TOKENS" fi source "$SCRIPT_DIR/../../../common/launch_utils.sh" DISAGG_BOOTSTRAP_PORT="${DYN_DISAGG_BOOTSTRAP_PORT:-12345}" HTTP_PORT="${DYN_HTTP_PORT:-8000}" print_launch_banner "Launching Disaggregated (same GPU)" "$MODEL" "$HTTP_PORT" \ "Workers: 2 (prefill + decode, fraction is per worker)" # run ingress # dynamo.frontend accepts either --http-port flag or DYN_HTTP_PORT env var (defaults to 8000) python3 -m dynamo.frontend & # NOTE: Each worker picks a random NCCL port (get_free_port) for torch.distributed. # This has a TOCTOU race — the port can be grabbed before init_process_group binds it, # causing sporadic EADDRINUSE. Pass --nccl-port per worker to avoid this. # run prefill worker with metrics on port 8081 CUDA_VISIBLE_DEVICES=$CUDA_VISIBLE_DEVICES \ DYN_SYSTEM_PORT=${DYN_SYSTEM_PORT1:-8081} \ python3 -m dynamo.sglang \ --model-path "$MODEL" \ --served-model-name "$MODEL" \ --page-size 16 \ --tp 1 \ --trust-remote-code \ --disaggregation-mode prefill \ --disaggregation-bootstrap-port "$DISAGG_BOOTSTRAP_PORT" \ --host 0.0.0.0 \ --disaggregation-transfer-backend nixl \ $GPU_MEM_ARGS \ --context-length "$CONTEXT_LENGTH" \ --chunked-prefill-size "$CONTEXT_LENGTH" \ --max-prefill-tokens "$CONTEXT_LENGTH" \ --enable-memory-saver \ --delete-ckpt-after-loading \ --max-running-requests "$MAX_RUNNING_REQUESTS" \ --enable-metrics & # Wait for prefill worker to initialize before starting decode worker. # Both workers share one GPU with --delete-ckpt-after-loading; without this # wait they compete for GPU memory during model loading and the scheduler OOMs. # || true: don't let set -e kill the script on timeout (wait_for_ready returns 1). PREFILL_SYSTEM_PORT="${DYN_SYSTEM_PORT1:-8081}" wait_for_ready "http://localhost:${PREFILL_SYSTEM_PORT}/health" 45 || true # run decode worker with metrics on port 8082 CUDA_VISIBLE_DEVICES=$CUDA_VISIBLE_DEVICES \ DYN_SYSTEM_PORT=${DYN_SYSTEM_PORT2:-8082} \ python3 -m dynamo.sglang \ --model-path "$MODEL" \ --served-model-name "$MODEL" \ --page-size 16 \ --tp 1 \ --trust-remote-code \ --disaggregation-mode decode \ --disaggregation-bootstrap-port "$DISAGG_BOOTSTRAP_PORT" \ --host 0.0.0.0 \ --disaggregation-transfer-backend nixl \ $GPU_MEM_ARGS \ --context-length "$CONTEXT_LENGTH" \ --chunked-prefill-size "$CONTEXT_LENGTH" \ --max-prefill-tokens "$CONTEXT_LENGTH" \ --enable-memory-saver \ --delete-ckpt-after-loading \ --max-running-requests "$MAX_RUNNING_REQUESTS" \ --enable-metrics & # Exit on first worker failure; kill 0 in the EXIT trap tears down the rest wait_any_exit