diff --git a/.github/configs/amd-master.yaml b/.github/configs/amd-master.yaml index 9e1f9834e..36f0eae97 100644 --- a/.github/configs/amd-master.yaml +++ b/.github/configs/amd-master.yaml @@ -411,6 +411,60 @@ kimik2.5-int4-mi300x-vllm: search-space: - { tp: 8, conc-start: 4, conc-end: 64 } +kimik2.5-int4-mi355x-vllm-mtp: + image: vllm/vllm-openai-rocm:v0.19.0 + model: moonshotai/Kimi-K2.5 + model-prefix: kimik2.5 + runner: mi355x + precision: int4 + framework: vllm + multinode: false + seq-len-configs: + - isl: 1024 + osl: 1024 + search-space: + - { tp: 4, conc-start: 4, conc-end: 64, spec-decoding: mtp } + - isl: 8192 + osl: 1024 + search-space: + - { tp: 4, conc-start: 4, conc-end: 64, spec-decoding: mtp } + +kimik2.5-int4-mi300x-vllm-mtp: + image: vllm/vllm-openai-rocm:v0.19.0 + model: moonshotai/Kimi-K2.5 + model-prefix: kimik2.5 + runner: mi300x + precision: int4 + framework: vllm + multinode: false + seq-len-configs: + - isl: 1024 + osl: 1024 + search-space: + - { tp: 4, conc-start: 4, conc-end: 64, spec-decoding: mtp } + - isl: 8192 + osl: 1024 + search-space: + - { tp: 4, conc-start: 4, conc-end: 64, spec-decoding: mtp } + +kimik2.5-int4-mi325x-vllm-mtp: + image: vllm/vllm-openai-rocm:v0.19.0 + model: moonshotai/Kimi-K2.5 + model-prefix: kimik2.5 + runner: mi325x + precision: int4 + framework: vllm + multinode: false + seq-len-configs: + - isl: 1024 + osl: 1024 + search-space: + - { tp: 4, conc-start: 4, conc-end: 64, spec-decoding: mtp } + - isl: 8192 + osl: 1024 + search-space: + - { tp: 4, conc-start: 4, conc-end: 64, spec-decoding: mtp } + kimik2.5-fp4-mi355x-vllm: image: vllm/vllm-openai-rocm:v0.18.0 model: amd/Kimi-K2.5-MXFP4 diff --git a/benchmarks/single_node/kimik2.5_int4_mi300x_mtp.sh b/benchmarks/single_node/kimik2.5_int4_mi300x_mtp.sh new file mode 100644 index 000000000..6376b5be7 --- /dev/null +++ b/benchmarks/single_node/kimik2.5_int4_mi300x_mtp.sh @@ -0,0 +1,86 @@ +#!/usr/bin/env bash + +source "$(dirname "$0")/../benchmark_lib.sh" + +check_env_vars \ + MODEL \ + TP \ + CONC \ + ISL \ + OSL \ + MAX_MODEL_LEN \ + RANDOM_RANGE_RATIO \ + RESULT_FILENAME + +if [[ -n "$SLURM_JOB_ID" ]]; then + echo "JOB $SLURM_JOB_ID running on $SLURMD_NODENAME" +fi + +hf download "$MODEL" + +# Set HIP_VISIBLE_DEVICES to match ROCR_VISIBLE_DEVICES for Ray compatibility in vLLM 0.14+ +if [ -n "$ROCR_VISIBLE_DEVICES" ]; then + export HIP_VISIBLE_DEVICES="$ROCR_VISIBLE_DEVICES" +fi + +SERVER_LOG=/workspace/server.log +PORT=${PORT:-8888} + +if [ "${EVAL_ONLY}" = "true" ]; then + setup_eval_context + MAX_MODEL_LEN="$EVAL_MAX_MODEL_LEN" +fi +# Start GPU monitoring (power, temperature, clocks every second) +start_gpu_monitor + +echo "Ensuring host benchmark dependencies (aiohttp/transformers/numpy/tqdm/huggingface-hub/tiktoken)..." +python3 -m pip install --no-cache-dir aiohttp transformers numpy tqdm huggingface-hub tiktoken + + + +set -x +export VLLM_ROCM_USE_AITER=1 +export VLLM_ROCM_QUICK_REDUCE_QUANTIZATION=INT4 +export VLLM_ROCM_USE_AITER_RMSNORM=0 +export VLLM_SPEC_CONFIG="${VLLM_SPEC_CONFIG:-{\"model\": \"nvidia/Kimi-K2.5-Thinking-Eagle3\", \"method\": \"eagle3\", \"num_speculative_tokens\": 3}}" + +vllm serve $MODEL --port $PORT \ +--tensor-parallel-size=$TP \ +--gpu-memory-utilization 0.8 \ +--max-model-len $MAX_MODEL_LEN \ +--block-size=64 \ +--trust-remote-code \ +--no-enable-prefix-caching \ +--max-num-seqs 256 \ +--speculative-config "$VLLM_SPEC_CONFIG" \ +--mm-encoder-tp-mode data > $SERVER_LOG 2>&1 & + +SERVER_PID=$! + +# Wait for server to be ready +wait_for_server_ready --port "$PORT" --server-log "$SERVER_LOG" --server-pid "$SERVER_PID" + +run_benchmark_serving \ + --model "$MODEL" \ + --port "$PORT" \ + --backend vllm \ + --input-len "$ISL" \ + --output-len "$OSL" \ + --random-range-ratio "$RANDOM_RANGE_RATIO" \ + --num-prompts "$((CONC * 10))" \ + --max-concurrency "$CONC" \ + --result-filename "$RESULT_FILENAME" \ + --result-dir /workspace/ \ + --trust-remote-code + +# After throughput, run evaluation only if RUN_EVAL is true +if [ "${RUN_EVAL}" = "true" ]; then + run_eval --framework lm-eval --port "$PORT" + append_lm_eval_summary +fi + +# Stop GPU monitoring +stop_gpu_monitor +set +x + + diff --git a/benchmarks/single_node/kimik2.5_int4_mi325x_mtp.sh b/benchmarks/single_node/kimik2.5_int4_mi325x_mtp.sh new file mode 100644 index 000000000..6376b5be7 --- /dev/null +++ b/benchmarks/single_node/kimik2.5_int4_mi325x_mtp.sh @@ -0,0 +1,86 @@ +#!/usr/bin/env bash + +source "$(dirname "$0")/../benchmark_lib.sh" + +check_env_vars \ + MODEL \ + TP \ + CONC \ + ISL \ + OSL \ + MAX_MODEL_LEN \ + RANDOM_RANGE_RATIO \ + RESULT_FILENAME + +if [[ -n "$SLURM_JOB_ID" ]]; then + echo "JOB $SLURM_JOB_ID running on $SLURMD_NODENAME" +fi + +hf download "$MODEL" + +# Set HIP_VISIBLE_DEVICES to match ROCR_VISIBLE_DEVICES for Ray compatibility in vLLM 0.14+ +if [ -n "$ROCR_VISIBLE_DEVICES" ]; then + export HIP_VISIBLE_DEVICES="$ROCR_VISIBLE_DEVICES" +fi + +SERVER_LOG=/workspace/server.log +PORT=${PORT:-8888} + +if [ "${EVAL_ONLY}" = "true" ]; then + setup_eval_context + MAX_MODEL_LEN="$EVAL_MAX_MODEL_LEN" +fi +# Start GPU monitoring (power, temperature, clocks every second) +start_gpu_monitor + +echo "Ensuring host benchmark dependencies (aiohttp/transformers/numpy/tqdm/huggingface-hub/tiktoken)..." +python3 -m pip install --no-cache-dir aiohttp transformers numpy tqdm huggingface-hub tiktoken + + + +set -x +export VLLM_ROCM_USE_AITER=1 +export VLLM_ROCM_QUICK_REDUCE_QUANTIZATION=INT4 +export VLLM_ROCM_USE_AITER_RMSNORM=0 +export VLLM_SPEC_CONFIG="${VLLM_SPEC_CONFIG:-{\"model\": \"nvidia/Kimi-K2.5-Thinking-Eagle3\", \"method\": \"eagle3\", \"num_speculative_tokens\": 3}}" + +vllm serve $MODEL --port $PORT \ +--tensor-parallel-size=$TP \ +--gpu-memory-utilization 0.8 \ +--max-model-len $MAX_MODEL_LEN \ +--block-size=64 \ +--trust-remote-code \ +--no-enable-prefix-caching \ +--max-num-seqs 256 \ +--speculative-config "$VLLM_SPEC_CONFIG" \ +--mm-encoder-tp-mode data > $SERVER_LOG 2>&1 & + +SERVER_PID=$! + +# Wait for server to be ready +wait_for_server_ready --port "$PORT" --server-log "$SERVER_LOG" --server-pid "$SERVER_PID" + +run_benchmark_serving \ + --model "$MODEL" \ + --port "$PORT" \ + --backend vllm \ + --input-len "$ISL" \ + --output-len "$OSL" \ + --random-range-ratio "$RANDOM_RANGE_RATIO" \ + --num-prompts "$((CONC * 10))" \ + --max-concurrency "$CONC" \ + --result-filename "$RESULT_FILENAME" \ + --result-dir /workspace/ \ + --trust-remote-code + +# After throughput, run evaluation only if RUN_EVAL is true +if [ "${RUN_EVAL}" = "true" ]; then + run_eval --framework lm-eval --port "$PORT" + append_lm_eval_summary +fi + +# Stop GPU monitoring +stop_gpu_monitor +set +x + + diff --git a/benchmarks/single_node/kimik2.5_int4_mi355x_mtp.sh b/benchmarks/single_node/kimik2.5_int4_mi355x_mtp.sh new file mode 100644 index 000000000..6376b5be7 --- /dev/null +++ b/benchmarks/single_node/kimik2.5_int4_mi355x_mtp.sh @@ -0,0 +1,86 @@ +#!/usr/bin/env bash + +source "$(dirname "$0")/../benchmark_lib.sh" + +check_env_vars \ + MODEL \ + TP \ + CONC \ + ISL \ + OSL \ + MAX_MODEL_LEN \ + RANDOM_RANGE_RATIO \ + RESULT_FILENAME + +if [[ -n "$SLURM_JOB_ID" ]]; then + echo "JOB $SLURM_JOB_ID running on $SLURMD_NODENAME" +fi + +hf download "$MODEL" + +# Set HIP_VISIBLE_DEVICES to match ROCR_VISIBLE_DEVICES for Ray compatibility in vLLM 0.14+ +if [ -n "$ROCR_VISIBLE_DEVICES" ]; then + export HIP_VISIBLE_DEVICES="$ROCR_VISIBLE_DEVICES" +fi + +SERVER_LOG=/workspace/server.log +PORT=${PORT:-8888} + +if [ "${EVAL_ONLY}" = "true" ]; then + setup_eval_context + MAX_MODEL_LEN="$EVAL_MAX_MODEL_LEN" +fi +# Start GPU monitoring (power, temperature, clocks every second) +start_gpu_monitor + +echo "Ensuring host benchmark dependencies (aiohttp/transformers/numpy/tqdm/huggingface-hub/tiktoken)..." +python3 -m pip install --no-cache-dir aiohttp transformers numpy tqdm huggingface-hub tiktoken + + + +set -x +export VLLM_ROCM_USE_AITER=1 +export VLLM_ROCM_QUICK_REDUCE_QUANTIZATION=INT4 +export VLLM_ROCM_USE_AITER_RMSNORM=0 +export VLLM_SPEC_CONFIG="${VLLM_SPEC_CONFIG:-{\"model\": \"nvidia/Kimi-K2.5-Thinking-Eagle3\", \"method\": \"eagle3\", \"num_speculative_tokens\": 3}}" + +vllm serve $MODEL --port $PORT \ +--tensor-parallel-size=$TP \ +--gpu-memory-utilization 0.8 \ +--max-model-len $MAX_MODEL_LEN \ +--block-size=64 \ +--trust-remote-code \ +--no-enable-prefix-caching \ +--max-num-seqs 256 \ +--speculative-config "$VLLM_SPEC_CONFIG" \ +--mm-encoder-tp-mode data > $SERVER_LOG 2>&1 & + +SERVER_PID=$! + +# Wait for server to be ready +wait_for_server_ready --port "$PORT" --server-log "$SERVER_LOG" --server-pid "$SERVER_PID" + +run_benchmark_serving \ + --model "$MODEL" \ + --port "$PORT" \ + --backend vllm \ + --input-len "$ISL" \ + --output-len "$OSL" \ + --random-range-ratio "$RANDOM_RANGE_RATIO" \ + --num-prompts "$((CONC * 10))" \ + --max-concurrency "$CONC" \ + --result-filename "$RESULT_FILENAME" \ + --result-dir /workspace/ \ + --trust-remote-code + +# After throughput, run evaluation only if RUN_EVAL is true +if [ "${RUN_EVAL}" = "true" ]; then + run_eval --framework lm-eval --port "$PORT" + append_lm_eval_summary +fi + +# Stop GPU monitoring +stop_gpu_monitor +set +x + +