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nv tiny cleanups (#5001) #3382

nv tiny cleanups (#5001)

nv tiny cleanups (#5001) #3382

Workflow file for this run

name: Benchmarks
on:
push:
branches:
- master
- update_benchmark
workflow_dispatch:
inputs:
run_process_replay:
description: "Run process replay tests"
required: false
default: false
type: boolean
jobs:
testmacbenchmark:
name: Mac Benchmark
runs-on: [self-hosted, macOS]
defaults:
run:
shell: bash -o pipefail {0}
if: github.repository_owner == 'tinygrad'
env:
PYTHONPATH: .
steps:
- name: Checkout Code
uses: actions/checkout@v4
- name: Symlink models and datasets
run: |
mkdir -p weights
ln -s ~/tinygrad/extra/disassemblers/applegpu extra/disassemblers/applegpu
ln -s ~/tinygrad/weights/sd-v1-4.ckpt weights/sd-v1-4.ckpt
ln -s ~/tinygrad/weights/bpe_simple_vocab_16e6.txt.gz weights/bpe_simple_vocab_16e6.txt.gz
ln -s ~/tinygrad/weights/LLaMA weights/LLaMA
ln -s ~/tinygrad/extra/datasets/cifar-10-python.tar.gz extra/datasets/cifar-10-python.tar.gz
# - name: Setup process replay
# if: github.event.inputs.run_process_replay == 'true' || contains(github.event.head_commit.message, '[run_process_replay]') || contains(github.event.pull_request.title, '[run_process_replay]')
# run: echo "RUN_PROCESS_REPLAY=1" >> $GITHUB_ENV
- name: Run Stable Diffusion
run: JIT=2 THREEFRY=1 python3 examples/stable_diffusion.py --seed 0 --noshow --timing | tee sd.txt
- name: Run model inference benchmark
run: METAL=1 python3 test/external/external_model_benchmark.py
- name: Test speed vs torch
run: BIG=2 MPS=1 python3 test/test_speed_v_torch.py | tee torch_speed.txt
- name: Test tensor cores
run: METAL=1 python3 test/test_linearizer.py TestLinearizer.test_tensor_cores TestLinearizer.test_tensor_cores_padded
- name: Run Tensor Core GEMM
run: |
DEBUG=2 python3 extra/gemm/simple_matmul.py | tee matmul.txt
DEBUG=2 HALF=1 python3 extra/gemm/simple_matmul.py | tee matmul_half.txt
- name: Fuzz Padded Tensor Core GEMM
run: METAL=1 M_START=6 M_STOP=10 M_STEP=1 N_START=6 N_STOP=10 N_STEP=1 K_START=6 K_STOP=24 K_STEP=1 TC_OPT=2 DEBUG=2 python3 ./extra/gemm/fuzz_matmul.py
- name: Run LLaMA
run: |
JIT=0 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_unjitted.txt
JIT=1 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_jitted.txt
- name: Run LLaMA with BEAM
run: JIT=1 BEAM=2 CACHELEVEL=0 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_beam.txt
- name: Run quantized LLaMA
run: |
JIT=1 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing --quantize int8 | tee llama_int8.txt
JIT=1 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing --quantize nf4 | tee llama_nf4.txt
- name: Run LLaMA 7B on 4 (virtual) GPUs
run: JIT=1 python3 examples/llama.py --gen 1 --size 7B --shard 4 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_four_gpu.txt
- name: Run GPT2
run: |
JIT=0 python3 examples/gpt2.py --prompt "Hello." --count 10 --temperature 0 --timing | tee gpt2_unjitted.txt
JIT=1 python3 examples/gpt2.py --prompt "Hello." --count 10 --temperature 0 --timing | tee gpt2_jitted.txt
- name: Run GPT2 w HALF
run: JIT=1 HALF=1 python3 examples/gpt2.py --count 10 --temperature 0 --timing | tee gpt2_half.txt
- name: Run GPT2 w HALF/BEAM
run: JIT=1 HALF=1 BEAM=2 CACHELEVEL=0 CAST_BEFORE_VIEW=0 python3 examples/gpt2.py --count 10 --temperature 0 --timing | tee gpt2_half_beam.txt
- name: Train MNIST
run: time PYTHONPATH=. TARGET_EVAL_ACC_PCT=97.3 python3 examples/beautiful_mnist.py | tee beautiful_mnist.txt
- name: Run 10 CIFAR training steps
run: JIT=2 STEPS=10 python3 examples/hlb_cifar10.py | tee train_cifar.txt
- name: Run 10 CIFAR training steps w HALF
run: JIT=2 STEPS=10 DEFAULT_FLOAT=HALF python3 examples/hlb_cifar10.py | tee train_cifar_half.txt
#- name: Run 10 CIFAR training steps w BF16
# run: STEPS=10 DEFAULT_FLOAT=BFLOAT16 python3 examples/hlb_cifar10.py | tee train_cifar_bf16.txt
- name: Run 10 CIFAR training steps w winograd
run: JIT=2 WINO=1 STEPS=10 python3 examples/hlb_cifar10.py | tee train_cifar_wino.txt
- name: Run process replay tests
if: env.RUN_PROCESS_REPLAY == '1'
run: cp test/external/replay_codegen.py ./replay_codegen.py && git fetch origin master && git checkout origin/master && PYTHONPATH=. python3 replay_codegen.py
- uses: actions/upload-artifact@v4
with:
name: Speed (Mac)
path: |
onnx_inference_speed.csv
torch_speed.txt
llama_unjitted.txt
llama_jitted.txt
llama_beam.txt
llama_int8.txt
llama_nf4.txt
llama_four_gpu.txt
gpt2_unjitted.txt
gpt2_jitted.txt
gpt2_half.txt
gpt2_half_beam.txt
matmul.txt
matmul_half.txt
sd.txt
beautiful_mnist.txt
train_cifar.txt
train_cifar_half.txt
train_cifar_bf16.txt
train_cifar_wino.txt
testnvidiabenchmark:
name: tinybox green Benchmark
runs-on: [self-hosted, Linux, tinyboxgreen]
defaults:
run:
shell: bash -o pipefail {0}
if: github.repository_owner == 'tinygrad'
env:
PYTHONPATH: .
steps:
- name: Checkout Code
uses: actions/checkout@v4
- name: Print nvidia-smi
run: nvidia-smi
- name: Symlink models and datasets
run: |
mkdir -p weights
ln -s ~/tinygrad/weights/LLaMA weights/LLaMA
ln -s /raid/weights/mixtral-8x7b-32kseqlen weights/mixtral-8x7b-32kseqlen
ln -s /raid/weights/LLaMA-2 weights/LLaMA-2
ln -s /raid/weights/LLaMA-3 weights/LLaMA-3
mkdir -p extra/datasets
ln -s /raid/datasets/imagenet extra/datasets/imagenet
- name: Run model inference benchmark
run: CUDA=1 NOCLANG=1 python3 test/external/external_model_benchmark.py
- name: Test speed vs torch
run: CUDA=1 BIG=2 TORCHCUDA=1 python3 test/test_speed_v_torch.py | tee torch_speed.txt
- name: Test tensor cores
run: |
CUDA=1 python3 test/test_linearizer.py TestLinearizer.test_tensor_cores TestLinearizer.test_tensor_cores_padded
PTX=1 python3 test/test_linearizer.py TestLinearizer.test_tensor_cores TestLinearizer.test_tensor_cores_padded
- name: Run Tensor Core GEMM (CUDA)
run: |
CUDA=1 HALF=1 DEBUG=2 python3 extra/gemm/simple_matmul.py | tee matmul.txt
CUDA=1 BFLOAT16=1 DEBUG=2 python3 extra/gemm/simple_matmul.py | tee matmul_bfloat16.txt
- name: Run Tensor Core GEMM (CUDA) with BEAM
run: BEAM=4 CUDA=1 HALF=1 CACHELEVEL=0 DEBUG=2 python3 extra/gemm/simple_matmul.py
- name: Run Tensor Core GEMM (PTX)
run: CUDA=1 PTX=1 HALF=1 DEBUG=2 python3 extra/gemm/simple_matmul.py | tee matmul_ptx.txt
- name: Run Tensor Core GEMM (NV)
run: NV=1 HALF=1 DEBUG=2 python3 extra/gemm/simple_matmul.py | tee matmul_nv.txt
- name: Fuzz Padded Tensor Core GEMM(CUDA)
run: CUDA=1 M_START=12 M_STOP=20 M_STEP=1 N_START=6 N_STOP=10 N_STEP=1 K_START=28 K_STOP=36 K_STEP=1 HALF=1 TC_OPT=2 python3 ./extra/gemm/fuzz_matmul.py
- name: Fuzz Padded Tensor Core GEMM(PTX)
run: CUDA=1 PTX=1 M_START=12 M_STOP=20 M_STEP=1 N_START=6 N_STOP=10 N_STEP=1 K_START=28 K_STOP=36 K_STEP=1 HALF=1 TC_OPT=2 python3 ./extra/gemm/fuzz_matmul.py
- name: Run Stable Diffusion
run: CUDA=1 THREEFRY=1 python3 examples/stable_diffusion.py --seed 0 --noshow --timing | tee sd.txt
- name: Run LLaMA
run: |
CUDA=1 JIT=0 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_unjitted.txt
CUDA=1 JIT=1 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_jitted.txt
- name: Run LLaMA with BEAM
run: CUDA=1 JIT=1 BEAM=2 CACHELEVEL=0 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_beam.txt
- name: Run LLaMA 7B on 4 GPUs
run: CUDA=1 python3 examples/llama.py --gen 1 --size 7B --shard 4 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_four_gpu.txt
- name: Run LLaMA 7B on 6 GPUs
run: CUDA=1 python3 examples/llama.py --gen 1 --size 7B --shard 6 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_six_gpu.txt
- name: Run LLaMA-3 8B BEAM
run: NV=1 JITBEAM=2 CACHELEVEL=0 python3 examples/llama3.py --model weights/LLaMA-3/8B-SF-DPO/ --benchmark | tee llama3_beam.txt
- name: Run LLaMA-3 8B on 4 GPUs
run: NV=1 CACHELEVEL=0 python3 examples/llama3.py --shard 4 --model weights/LLaMA-3/8B-SF-DPO/ --benchmark | tee llama3_four_gpu.txt
- name: Run LLaMA-3 8B on 6 GPUs
run: NV=1 CACHELEVEL=0 python3 examples/llama3.py --shard 6 --model weights/LLaMA-3/8B-SF-DPO/ --benchmark | tee llama3_six_gpu.txt
# - name: Run LLaMA-2 70B
# run: CUDA=1 python3 examples/llama.py --gen 2 --size 70B --shard 6 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_2_70B.txt
# - name: Run Mixtral 8x7B
# run: time CUDA=1 python3 examples/mixtral.py --temperature 0 --count 10 --timing | tee mixtral.txt
- name: Run GPT2
run: |
CUDA=1 JIT=0 python3 examples/gpt2.py --prompt "Hello." --count 10 --temperature 0 --timing | tee gpt2_unjitted.txt
CUDA=1 JIT=1 python3 examples/gpt2.py --prompt "Hello." --count 10 --temperature 0 --timing | tee gpt2_jitted.txt
- name: Run GPT2 w HALF
run: CUDA=1 JIT=1 HALF=1 python3 examples/gpt2.py --count 10 --temperature 0 --timing | tee gpt2_half.txt
- name: Run GPT2 w HALF/BEAM
run: CUDA=1 JIT=1 HALF=1 BEAM=2 CACHELEVEL=0 CAST_BEFORE_VIEW=0 JIT_BATCH_SIZE=4 python3 examples/gpt2.py --count 10 --temperature 0 --timing | tee gpt2_half_beam.txt
- uses: actions/upload-artifact@v4
with:
name: Speed (NVIDIA)
path: |
onnx_inference_speed.csv
torch_speed.txt
matmul.txt
matmul_bfloat16.txt
matmul_ptx.txt
matmul_nv.txt
sd.txt
llama_unjitted.txt
llama_jitted.txt
llama_beam.txt
llama_four_gpu.txt
llama_six_gpu.txt
llama3_beam.txt
llama3_four_gpu.txt
llama3_six_gpu.txt
# llama_2_70B.txt
# mixtral.txt
gpt2_unjitted.txt
gpt2_jitted.txt
gpt2_half.txt
gpt2_half_beam.txt
testmorenvidiabenchmark:
name: tinybox green Training Benchmark
runs-on: [self-hosted, Linux, tinyboxgreen]
defaults:
run:
shell: bash -o pipefail {0}
if: github.repository_owner == 'tinygrad'
env:
PYTHONPATH: .
steps:
- name: Checkout Code
uses: actions/checkout@v4
- name: Symlink models and datasets
run: |
mkdir -p weights
ln -s ~/tinygrad/weights/bpe_simple_vocab_16e6.txt.gz weights/bpe_simple_vocab_16e6.txt.gz
ln -s ~/tinygrad/weights/LLaMA weights/LLaMA
ln -s ~/tinygrad/extra/datasets/cifar-10-python.tar.gz extra/datasets/cifar-10-python.tar.gz
ln -s /raid/weights/mixtral-8x7b-32kseqlen weights/mixtral-8x7b-32kseqlen
ln -s /raid/weights/LLaMA-2 weights/LLaMA-2
mkdir -p extra/datasets
ln -s /raid/datasets/imagenet extra/datasets/imagenet
- name: Train MNIST
run: time PYTHONPATH=. CUDA=1 TARGET_EVAL_ACC_PCT=97.3 python3 examples/beautiful_mnist.py | tee beautiful_mnist.txt
- name: Run 10 CIFAR training steps
run: CUDA=1 STEPS=10 python3 examples/hlb_cifar10.py | tee train_cifar.txt
- name: Run 10 CIFAR training steps w HALF
run: CUDA=1 STEPS=10 DEFAULT_FLOAT=HALF python3 examples/hlb_cifar10.py | tee train_cifar_half.txt
- name: Run 10 CIFAR training steps w BF16
run: CUDA=1 STEPS=10 DEFAULT_FLOAT=BFLOAT16 python3 examples/hlb_cifar10.py | tee train_cifar_bf16.txt
- name: Run 10 CIFAR training steps w winograd
run: CUDA=1 WINO=1 STEPS=10 python3 examples/hlb_cifar10.py | tee train_cifar_wino.txt
- name: Run full CIFAR training w 1 GPU
run: time CUDA=1 DEFAULT_FLOAT=HALF LATEWINO=1 STEPS=1000 TARGET_EVAL_ACC_PCT=93.2 python3 examples/hlb_cifar10.py | tee train_cifar_one_gpu.txt
- name: Run full CIFAR training steps w 6 GPUS
run: time CUDA=1 DEFAULT_FLOAT=HALF STEPS=350 BS=1536 GPUS=6 TARGET_EVAL_ACC_PCT=93.2 python3 examples/hlb_cifar10.py | tee train_cifar_six_gpu.txt
- name: Run MLPerf resnet eval on training data
run: time CUDA=1 MODEL=resnet python3 examples/mlperf/model_eval.py
- name: Run 10 MLPerf ResNet50 training steps (1 gpu)
run: CUDA=1 DEFAULT_FLOAT=HALF BENCHMARK=10 BS=256 GPUS=1 MODEL=resnet python3 examples/mlperf/model_train.py | tee train_resnet_one_gpu.txt
- name: Run 10 MLPerf ResNet50 training steps (6 gpu)
run: CUDA=1 DEFAULT_FLOAT=HALF BENCHMARK=10 BS=1536 GPUS=6 MODEL=resnet python3 examples/mlperf/model_train.py | tee train_resnet.txt
- uses: actions/upload-artifact@v4
with:
name: Speed (NVIDIA Training)
path: |
beautiful_mnist.txt
train_cifar.txt
train_cifar_half.txt
train_cifar_bf16.txt
train_cifar_wino.txt
train_cifar_one_gpu.txt
train_resnet.txt
train_resnet_one_gpu.txt
train_cifar_six_gpu.txt
testamdbenchmark:
name: tinybox red Benchmark
runs-on: [self-hosted, Linux, tinybox]
defaults:
run:
shell: bash -o pipefail {0}
if: github.repository_owner == 'tinygrad'
env:
PYTHONPATH: .
steps:
- name: Checkout Code
uses: actions/checkout@v4
- name: Symlink models and datasets
run: |
mkdir -p weights
ln -s ~/tinygrad/weights/bpe_simple_vocab_16e6.txt.gz weights/bpe_simple_vocab_16e6.txt.gz
ln -s ~/tinygrad/weights/LLaMA weights/LLaMA
ln -s ~/tinygrad/extra/datasets/cifar-10-python.tar.gz extra/datasets/cifar-10-python.tar.gz
ln -s /raid/weights/mixtral-8x7b-32kseqlen weights/mixtral-8x7b-32kseqlen
ln -s /raid/weights/LLaMA-2 weights/LLaMA-2
ln -s /raid/weights/LLaMA-3 weights/LLaMA-3
mkdir -p extra/datasets
ln -s /raid/datasets/imagenet extra/datasets/imagenet
- name: Show off tinybox
run: /opt/rocm/bin/rocm-bandwidth-test
# TODO: unstable on AMD
#- name: Run model inference benchmark
# run: LD_PRELOAD="/opt/rocm/lib/libhsa-runtime64.so" HSA=1 NOCLANG=1 python3 test/external/external_model_benchmark.py
# TODO: unstable on AMD
#- name: Test speed vs torch
# run: |
# python3 -c "import torch; print(torch.__version__)"
# LD_PRELOAD="/opt/rocm/lib/libhsa-runtime64.so" HSA=1 BIG=2 TORCHCUDA=1 python3 test/test_speed_v_torch.py | tee torch_speed.txt
- name: Test tensor cores
run: |
AMD=1 python3 test/test_linearizer.py TestLinearizer.test_tensor_cores TestLinearizer.test_tensor_cores_padded
- name: Run Tensor Core GEMM (AMD)
run: AMD=1 HALF=1 DEBUG=2 python3 extra/gemm/simple_matmul.py | tee matmul_amd.txt
# TODO: AMD compiler bug causes this to fail
#- name: Fuzz Padded Tensor Core GEMM
# run: HSA=1 M_START=12 M_STOP=20 M_STEP=1 N_START=12 N_STOP=20 N_STEP=1 K_START=28 K_STOP=36 K_STEP=1 HALF=1 TC_OPT=2 DEBUG=2 python3 ./extra/gemm/fuzz_matmul.py
- name: Run Stable Diffusion
run: AMD=1 THREEFRY=1 python3 examples/stable_diffusion.py --seed 0 --noshow --timing | tee sd.txt
- name: Run LLaMA 7B
run: |
AMD=1 JIT=0 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_unjitted.txt
AMD=1 JIT=1 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_jitted.txt
- name: Run LLaMA 7B with BEAM
run: AMD=1 JIT=1 BEAM=2 CACHELEVEL=0 python3 examples/llama.py --gen 1 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_beam.txt
- name: Run LLaMA 7B on 4 GPUs
run: AMD=1 python3 examples/llama.py --gen 1 --size 7B --shard 4 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_four_gpu.txt
- name: Run LLaMA 7B on 6 GPUs
run: AMD=1 python3 examples/llama.py --gen 1 --size 7B --shard 6 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_six_gpu.txt
- name: Run LLaMA-3 8B BEAM
run: AMD=1 JITBEAM=2 CACHELEVEL=0 python3 examples/llama3.py --model weights/LLaMA-3/8B-SF-DPO/ --benchmark | tee llama3_beam.txt
- name: Run LLaMA-3 8B on 4 GPUs
run: AMD=1 CACHELEVEL=0 python3 examples/llama3.py --shard 4 --model weights/LLaMA-3/8B-SF-DPO/ --benchmark | tee llama3_four_gpu.txt
- name: Run LLaMA-3 8B on 6 GPUs
run: AMD=1 CACHELEVEL=0 python3 examples/llama3.py --shard 6 --model weights/LLaMA-3/8B-SF-DPO/ --benchmark | tee llama3_six_gpu.txt
- name: Run LLaMA-2 70B
run: AMD=1 python3 examples/llama.py --gen 2 --size 70B --shard 6 --prompt "Hello." --count 10 --temperature 0 --timing | tee llama_2_70B.txt
- name: Run Mixtral 8x7B
run: time AMD=1 python3 examples/mixtral.py --temperature 0 --count 10 --timing | tee mixtral.txt
- name: Run GPT2
run: |
AMD=1 JIT=0 python3 examples/gpt2.py --prompt "Hello." --count 10 --temperature 0 --timing | tee gpt2_unjitted.txt
AMD=1 JIT=1 python3 examples/gpt2.py --prompt "Hello." --count 10 --temperature 0 --timing | tee gpt2_jitted.txt
- name: Run GPT2 w HALF
run: AMD=1 JIT=1 HALF=1 python3 examples/gpt2.py --count 10 --temperature 0 --timing | tee gpt2_half.txt
- name: Run GPT2 w HALF/BEAM
run: AMD=1 JIT=1 HALF=1 BEAM=2 CACHELEVEL=0 CAST_BEFORE_VIEW=0 python3 examples/gpt2.py --count 10 --temperature 0 --timing | tee gpt2_half_beam.txt
- uses: actions/upload-artifact@v4
with:
name: Speed (AMD)
path: |
onnx_inference_speed.csv
torch_speed.txt
llama_unjitted.txt
llama_jitted.txt
llama_beam.txt
llama_four_gpu.txt
llama_six_gpu.txt
llama3_beam.txt
llama3_four_gpu.txt
llama3_six_gpu.txt
llama_2_70B.txt
gpt2_unjitted.txt
gpt2_jitted.txt
gpt2_half.txt
gpt2_half_beam.txt
matmul.txt
matmul_amd.txt
sd.txt
mixtral.txt
testmoreamdbenchmark:
name: tinybox red Training Benchmark
runs-on: [self-hosted, Linux, tinybox]
defaults:
run:
shell: bash -o pipefail {0}
if: github.repository_owner == 'tinygrad'
env:
PYTHONPATH: .
steps:
- name: Checkout Code
uses: actions/checkout@v4
- name: Symlink models and datasets
run: |
mkdir -p weights
ln -s ~/tinygrad/weights/bpe_simple_vocab_16e6.txt.gz weights/bpe_simple_vocab_16e6.txt.gz
ln -s ~/tinygrad/weights/LLaMA weights/LLaMA
ln -s ~/tinygrad/extra/datasets/cifar-10-python.tar.gz extra/datasets/cifar-10-python.tar.gz
ln -s /raid/weights/mixtral-8x7b-32kseqlen weights/mixtral-8x7b-32kseqlen
ln -s /raid/weights/LLaMA-2 weights/LLaMA-2
mkdir -p extra/datasets
ln -s /raid/datasets/imagenet extra/datasets/imagenet
- name: Train MNIST
run: time PYTHONPATH=. AMD=1 TARGET_EVAL_ACC_PCT=97.3 python3 examples/beautiful_mnist.py | tee beautiful_mnist.txt
- name: Run 10 CIFAR training steps
run: AMD=1 STEPS=10 python3 examples/hlb_cifar10.py | tee train_cifar.txt
- name: Run 10 CIFAR training steps w HALF
run: AMD=1 STEPS=10 DEFAULT_FLOAT=HALF python3 examples/hlb_cifar10.py | tee train_cifar_half.txt
- name: Run 10 CIFAR training steps w BF16
run: AMD=1 STEPS=10 DEFAULT_FLOAT=BFLOAT16 python3 examples/hlb_cifar10.py | tee train_cifar_bf16.txt
- name: Run 10 CIFAR training steps w winograd
run: AMD=1 WINO=1 STEPS=10 python3 examples/hlb_cifar10.py | tee train_cifar_wino.txt
- name: Run full CIFAR training w 1 GPU
run: time AMD=1 DEFAULT_FLOAT=HALF LATEWINO=1 STEPS=1000 TARGET_EVAL_ACC_PCT=93.2 python3 examples/hlb_cifar10.py | tee train_cifar_one_gpu.txt
- name: Run full CIFAR training steps w 6 GPUS
run: time AMD=1 DEFAULT_FLOAT=HALF STEPS=350 BS=1536 GPUS=6 TARGET_EVAL_ACC_PCT=93.2 python3 examples/hlb_cifar10.py | tee train_cifar_six_gpu.txt
- name: Run MLPerf resnet eval
run: time AMD=1 MODEL=resnet python3 examples/mlperf/model_eval.py
- name: Run 10 MLPerf ResNet50 training steps (1 gpu)
run: AMD=1 DEFAULT_FLOAT=HALF BENCHMARK=10 BS=256 GPUS=1 MODEL=resnet python3 examples/mlperf/model_train.py | tee train_resnet_one_gpu.txt
- name: Run 10 MLPerf ResNet50 training steps (6 gpu)
run: AMD=1 DEFAULT_FLOAT=HALF BENCHMARK=10 BS=1536 GPUS=6 MODEL=resnet python3 examples/mlperf/model_train.py | tee train_resnet.txt
- uses: actions/upload-artifact@v4
with:
name: Speed (AMD Training)
path: |
beautiful_mnist.txt
train_cifar.txt
train_cifar_half.txt
train_cifar_bf16.txt
train_cifar_wino.txt
train_cifar_one_gpu.txt
train_resnet.txt
train_resnet_one_gpu.txt
train_cifar_six_gpu.txt