* Restore per-channel pre-quant Signed-off-by: Barry Kang <43644113+Barry-Delaney@users.noreply.github.com> * Update TRT test script Signed-off-by: Barry Kang <43644113+Barry-Delaney@users.noreply.github.com> * Fix pre-commit Signed-off-by: Barry Kang <43644113+Barry-Delaney@users.noreply.github.com> --------- Signed-off-by: Barry Kang <43644113+Barry-Delaney@users.noreply.github.com> |
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| .. | ||
| batch_manager | ||
| executor | ||
| kernels | ||
| layers | ||
| resources | ||
| runtime | ||
| unit_tests | ||
| utils | ||
| CMakeLists.txt | ||
| README.md | ||
C++ Tests
This document explains how to build and run the C++ tests, and the included resources.
Pytest Scripts
The unit tests can be launched via the Pytest script in test_unit_tests.py. These do not require engines to be built. The Pytest script will also build TRT-LLM.
The Pytest scripts in test_e2e.py and test_multi_gpu.py build TRT-LLM, build engines, and generate expected outputs and execute the end-to-end C++ tests all in one go.
test_e2e.py and test_multi_gpu.py contain single and multi-device tests, respectively.
To get an overview of the tests and their parameterization, call:
pytest tests/integration/defs/cpp/test_unit_tests.py --collect-only
pytest tests/integration/defs/cpp/test_e2e.py --collect-only
pytest tests/integration/defs/cpp/test_multi_gpu.py --collect-only
All tests take the number of the CUDA architecture of the GPU you wish to use as a parameter e.g. 90 for Hopper.
It is possible to choose unit tests or a single model for end-to-end tests. Example calls could look like this:
export LLM_MODELS_ROOT="/path/to/model_cache"
pytest tests/integration/defs/cpp/test_unit_tests.py::test_unit_tests[runtime-90]
pytest tests/integration/defs/cpp/test_e2e.py::test_model[llama-90]
pytest tests/integration/defs/cpp/test_e2e.py::test_benchmarks[gpt-90]
pytest tests/integration/defs/cpp/test_multi_gpu.py::TestDisagg::test_symmetric_executor[gpt-mpi_kvcache-90]
Manual steps
Compile
From the top-level directory call:
CPP_BUILD_DIR=cpp/build
python3 scripts/build_wheel.py -a "80-real;86-real" --build_dir ${CPP_BUILD_DIR}
pip install -r requirements-dev.txt
pip install build/tensorrt_llm*.whl
cd $CPP_BUILD_DIR && make -j$(nproc) google-tests
Single tests can be executed from CPP_BUILD_DIR/tests, e.g.
./$CPP_BUILD_DIR/tests/allocatorTest
End-to-end tests
trtGptModelRealDecoderTest and executorTest require pre-built TensorRT engines, which are loaded in the tests. They also require data files which are stored in cpp/tests/resources/data.
Build engines
Scripts are provided that download the GPT2 and GPT-J models from Huggingface and convert them to TensorRT engines. The weights and built engines are stored under cpp/tests/resources/models. To build the engines from the top-level directory:
PYTHONPATH=examples/models/core/gpt:$PYTHONPATH python3 cpp/tests/resources/scripts/build_gpt_engines.py
PYTHONPATH=examples/models/core/llama:$PYTHONPATH python3 cpp/tests/resources/scripts/build_llama_engines.py
PYTHONPATH=examples/medusa:$PYTHONPATH python3 cpp/tests/resources/scripts/build_medusa_engines.py
PYTHONPATH=examples/eagle:$PYTHONPATH python3 cpp/tests/resources/scripts/build_eagle_engines.py
PYTHONPATH=examples/redrafter:$PYTHONPATH python3 cpp/tests/resources/scripts/build_redrafter_engines.py
It is possible to build engines with tensor and pipeline parallelism for LLaMA using 4 GPUs.
PYTHONPATH=examples/models/core/llama python3 cpp/tests/resources/scripts/build_llama_engines.py --only_multi_gpu
Generate expected output
End-to-end tests read inputs and expected outputs from Numpy files located at cpp/tests/resources/data. The expected outputs can be generated using scripts which employ the Python runtime to run the built engines:
PYTHONPATH=examples:$PYTHONPATH python3 cpp/tests/resources/scripts/generate_expected_gpt_output.py
PYTHONPATH=examples:$PYTHONPATH python3 cpp/tests/resources/scripts/generate_expected_llama_output.py
PYTHONPATH=examples:$PYTHONPATH python3 cpp/tests/resources/scripts/generate_expected_medusa_output.py
PYTHONPATH=examples:$PYTHONPATH python3 cpp/tests/resources/scripts/generate_expected_eagle_output.py
PYTHONPATH=examples:$PYTHONPATH python3 cpp/tests/resources/scripts/generate_expected_redrafter_output.py
Generate data with tensor and pipeline parallelism
It is possible to generate tensor and pipeline parallelism data for LLaMA using 4 GPUs. To generate results from the top-level directory:
PYTHONPATH=examples mpirun -n 4 python3 cpp/tests/resources/scripts/generate_expected_llama_output.py --only_multi_gpu
Run test
After building the engines and generating the expected output execute the tests
./$CPP_BUILD_DIR/tests/batch_manager/trtGptModelRealDecoderTest
Run all tests with ctest
To run all tests and produce an xml report, call
./$CPP_BUILD_DIR/ctest --output-on-failure --output-junit "cpp-test-report.xml"