default.yaml 2.9 KB
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# SuperBench Config
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version: v0.2
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superbench:
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  enable: null
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  var:
    default_local_mode: &default_local_mode
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      enable: true
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      modes:
        - name: local
          proc_num: 8
          prefix: CUDA_VISIBLE_DEVICES={proc_rank}
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          parallel: yes
    default_pytorch_mode: &default_pytorch_mode
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      enable: true
      modes:
        - name: torch.distributed
          proc_num: 8
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          node_num: 1
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      frameworks:
        - pytorch
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    common_model_config: &common_model_config
      duration: 0
      num_warmup: 16
      num_steps: 128
      precision:
        - float32
        - float16
      model_action:
        - train
  benchmarks:
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    nccl-bw:
      enable: true
      modes:
        - name: local
          prefix: NCCL_DEBUG=INFO NCCL_IB_DISABLE=1
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    ib-loopback:
      enable: true
      modes:
        - name: local
          proc_num: 4
          prefix: PROC_RANK={proc_rank} IB_DEVICES=0,2,4,6 NUMA_NODES=1,0,3,2
          parallel: yes
        - name: local
          proc_num: 4
          prefix: PROC_RANK={proc_rank} IB_DEVICES=1,3,5,7 NUMA_NODES=1,0,3,2
          parallel: yes
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    disk-benchmark:
      enable: false
      modes:
        - proc_num: 1
          parallel: no
      parameters:
        block_devices:
          - /dev/nvme0n1
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    mem-bw:
      enable: true
      modes:
        - name: local
          proc_num: 8
          prefix: CUDA_VISIBLE_DEVICES={proc_rank} numactl -c $(({proc_rank}/2))
          parallel: yes
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    kernel-launch:
      <<: *default_local_mode
    gemm-flops:
      <<: *default_local_mode
    cudnn-function:
      <<: *default_local_mode
    cublas-function:
      <<: *default_local_mode
    matmul:
      <<: *default_local_mode
      frameworks:
        - pytorch
    sharding-matmul:
      <<: *default_pytorch_mode
    computation-communication-overlap:
      <<: *default_pytorch_mode
    gpt_models:
      <<: *default_pytorch_mode
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      models:
        - gpt2-small
        - gpt2-large
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      parameters:
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        <<: *common_model_config
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        batch_size: 4
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    bert_models:
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      <<: *default_pytorch_mode
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      models:
        - bert-base
        - bert-large
      parameters:
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        <<: *common_model_config
        batch_size: 8
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    lstm_models:
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      <<: *default_pytorch_mode
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      models:
        - lstm
      parameters:
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        <<: *common_model_config
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        batch_size: 128
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    resnet_models:
      <<: *default_pytorch_mode
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      models:
        - resnet50
        - resnet101
        - resnet152
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      parameters:
        <<: *common_model_config
        batch_size: 128
    densenet_models:
      <<: *default_pytorch_mode
      models:
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        - densenet169
        - densenet201
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      parameters:
        <<: *common_model_config
        batch_size: 128
    vgg_models:
      <<: *default_pytorch_mode
      models:
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        - vgg11
        - vgg13
        - vgg16
        - vgg19
      parameters:
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        <<: *common_model_config
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        batch_size: 128