# # Copyright (c) 2025 Huawei Technologies Co., Ltd. All Rights Reserved. # Copyright 2023 The vLLM team. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # """ Compare the outputs of vLLM with and without context parallel. Run `pytest tests/e2e/multicard/long_sequence/test_accuracy.py`. """ import pytest from tests.e2e.conftest import VllmRunner from tests.e2e.model_utils import check_outputs_equal MODELS = [ "Qwen/Qwen3-8B", "vllm-ascend/DeepSeek-V2-Lite-W8A8", ] @pytest.mark.parametrize("model", MODELS) @pytest.mark.parametrize("max_tokens", [10]) def test_models_long_sequence_output_between_tp_and_cp( model: str, max_tokens: int, ) -> None: prompts = [ "The president of the United States is", "The capital of France is" ] common_kwargs = { "max_model_len": 1024, } if model == "vllm-ascend/DeepSeek-V2-Lite-W8A8": cp_kwargs = { "tensor_parallel_size": 2, "decode_context_parallel_size": 2, "prefill_context_parallel_size": 2, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", } tp_kwargs = { "tensor_parallel_size": 4, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", } else: cp_kwargs = { "tensor_parallel_size": 1, "decode_context_parallel_size": 1, "prefill_context_parallel_size": 2, "compilation_config": { "cudagraph_mode": "FULL_DECODE_ONLY", "cudagraph_capture_sizes": [4, 8, 24, 48, 60] }, } tp_kwargs = { "tensor_parallel_size": 2, "enforce_eager": True, } cp_full_kwargs = {} cp_full_kwargs.update(common_kwargs) # type: ignore cp_full_kwargs.update(cp_kwargs) # type: ignore tp_full_kwargs = {} tp_full_kwargs.update(common_kwargs) # type: ignore tp_full_kwargs.update(tp_kwargs) # type: ignore with VllmRunner(model, **cp_full_kwargs) as runner: # type: ignore vllm_context_parallel_outputs = runner.generate_greedy( prompts, max_tokens) with VllmRunner(model, **tp_full_kwargs) as runner: # type: ignore vllm_eager_outputs = runner.generate_greedy(prompts, max_tokens) check_outputs_equal( outputs_0_lst=vllm_eager_outputs, outputs_1_lst=vllm_context_parallel_outputs, name_0="vllm_eager_outputs", name_1="vllm_context_parallel_outputs", ) model = "vllm-ascend/DeepSeek-V2-Lite-W8A8" @pytest.mark.parametrize("max_tokens", [10]) def test_accuracy_dcp_only_graph(max_tokens: int, ) -> None: prompts = [ "The president of the United States is", "The capital of France is" ] cp_kwargs = { "tensor_parallel_size": 2, "decode_context_parallel_size": 2, "prefill_context_parallel_size": 1, "enable_expert_parallel": True, "compilation_config": { "cudagraph_mode": "FULL_DECODE_ONLY", "cudagraph_capture_sizes": [4, 8, 24, 48, 60] }, "quantization": "ascend", "max_model_len": 1024, } tp_kwargs = { "tensor_parallel_size": 4, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", "max_model_len": 1024, } with VllmRunner(model, **cp_kwargs) as runner: # type: ignore vllm_context_parallel_outputs = runner.generate_greedy( prompts, max_tokens) with VllmRunner(model, **tp_kwargs) as runner: # type: ignore vllm_eager_outputs = runner.generate_greedy(prompts, max_tokens) check_outputs_equal( outputs_0_lst=vllm_eager_outputs, outputs_1_lst=vllm_context_parallel_outputs, name_0="vllm_eager_outputs", name_1="vllm_dcp_only_graph_outputs", ) @pytest.mark.parametrize("max_tokens", [10]) def test_accuracy_dcp_only_eager(max_tokens: int, ) -> None: prompts = [ "The president of the United States is", "The capital of France is" ] cp_kwargs = { "tensor_parallel_size": 2, "decode_context_parallel_size": 2, "prefill_context_parallel_size": 1, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", "max_model_len": 1024, } tp_kwargs = { "tensor_parallel_size": 4, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", "max_model_len": 1024, } with VllmRunner(model, **cp_kwargs) as runner: # type: ignore vllm_context_parallel_outputs = runner.generate_greedy( prompts, max_tokens) with VllmRunner(model, **tp_kwargs) as runner: # type: ignore vllm_eager_outputs = runner.generate_greedy(prompts, max_tokens) check_outputs_equal( outputs_0_lst=vllm_eager_outputs, outputs_1_lst=vllm_context_parallel_outputs, name_0="vllm_eager_outputs", name_1="vllm_dcp_only_eager_outputs", ) @pytest.mark.parametrize("max_tokens", [10]) def test_accuracy_pcp_only(max_tokens: int, ) -> None: prompts = [ "The president of the United States is", "The capital of France is" ] cp_kwargs = { "tensor_parallel_size": 2, "decode_context_parallel_size": 1, "prefill_context_parallel_size": 2, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", "max_model_len": 1024, } tp_kwargs = { "tensor_parallel_size": 4, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", "max_model_len": 1024, } with VllmRunner(model, **cp_kwargs) as runner: # type: ignore vllm_context_parallel_outputs = runner.generate_greedy( prompts, max_tokens) with VllmRunner(model, **tp_kwargs) as runner: # type: ignore vllm_eager_outputs = runner.generate_greedy(prompts, max_tokens) check_outputs_equal( outputs_0_lst=vllm_eager_outputs, outputs_1_lst=vllm_context_parallel_outputs, name_0="vllm_eager_outputs", name_1="vllm_pcp_only_outputs", ) @pytest.mark.parametrize("model", MODELS) @pytest.mark.parametrize("max_tokens", [10]) def test_models_long_sequence_cp_kv_interleave_size_output_between_tp_and_cp( model: str, max_tokens: int, ) -> None: prompts = [ "The president of the United States is", "The capital of France is" ] common_kwargs = { "max_model_len": 1024, } if model == "vllm-ascend/DeepSeek-V2-Lite-W8A8": cp_kwargs = { "tensor_parallel_size": 2, "decode_context_parallel_size": 2, "prefill_context_parallel_size": 2, "enable_expert_parallel": True, "cp_kv_cache_interleave_size": 128, "enforce_eager": True, "quantization": "ascend", } tp_kwargs = { "tensor_parallel_size": 4, "enable_expert_parallel": True, "enforce_eager": True, "quantization": "ascend", } else: cp_kwargs = { "tensor_parallel_size": 1, "decode_context_parallel_size": 1, "prefill_context_parallel_size": 2, "cp_kv_cache_interleave_size": 128, "compilation_config": { "cudagraph_mode": "FULL_DECODE_ONLY", "cudagraph_capture_sizes": [4, 8, 24, 48, 60] }, } tp_kwargs = { "tensor_parallel_size": 2, "enforce_eager": True, } cp_full_kwargs = {} cp_full_kwargs.update(common_kwargs) # type: ignore cp_full_kwargs.update(cp_kwargs) # type: ignore tp_full_kwargs = {} tp_full_kwargs.update(common_kwargs) # type: ignore tp_full_kwargs.update(tp_kwargs) # type: ignore with VllmRunner(model, **cp_full_kwargs) as runner: # type: ignore vllm_context_parallel_outputs = runner.generate_greedy( prompts, max_tokens) with VllmRunner(model, **tp_full_kwargs) as runner: # type: ignore vllm_eager_outputs = runner.generate_greedy(prompts, max_tokens) check_outputs_equal( outputs_0_lst=vllm_eager_outputs, outputs_1_lst=vllm_context_parallel_outputs, name_0="vllm_eager_outputs", name_1="vllm_context_parallel_outputs", )