UofT-EcoSystem / DietCode

DietCode Code Release

Home Page:https://UofT-EcoSystem.github.io/DietCode/

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DietCode

Installation

  • Clone the project by
    git clone https://github.com/UofT-EcoSystem/DietCode -b MLSys2022_AE
  • Install docker-compose, which is a wrapper on top of Docker.
    sudo -H pip3 install docker-compose
  • Build the Docker image that includes all the software dependencies required to run the experiments:
    DietCode$ docker-compose build tvm-dev
  • Create a running container out of the image:
    DietCode$ docker-compose run --rm tvm-dev
  • Build the DietCode and the TVM baseline.
    /mnt$ ./scripts/1-compile.sh tvm
    /mnt$ ./scripts/1-compile.sh tvm_base

Experiments

  • Dense Layer with Dynamic Sequence Length (Section 5.3 of the main text)
    /mnt$ ./scripts/2_1-experiment_dynamic_dense.sh
  • BatchMatmul Layer with Dynamic Sequence Length (Section 5.4 of the main text)
    /mnt$ ./scripts/2_2-experiment_dynamic_batch_matmul_nt.sh
    /mnt$ ./scripts/2_3-experiment_dynamic_batch_matmul_nn.sh
  • BERT with Various Sequence Lengths (Section 5.2)
    /mnt$ ./scripts/2_4-experiment_bert.sh

Evaluation and Expected Results

After each experiment has been run, a CSV file named temp_workspace.csv will be generated in each folder ops/dense, ops/batch_matmul, and networks/bert respectively that reports the latency numbers (in seconds, the lower the better). At the same time, dietcode_autosched_timer.csv (or ansor_autosched_timer.csv if one is running the Ansor baseline) will be generated in the same folder that reports the time to complete the auto-scheduling process (also in seconds, the lower the better).

Notes

With each experiment, the Ansor baseline is already provided, but can be reobtained using the provided ./scripts/*_ansor_baseline.sh script files. Note that the entire auto-scheduling workflow takes time to complete. Therefore, we one can use the

AUTO_SCHED_NTRIALS=200 ./scripts/...

prefix that uses fewer number auto-scheduling trials. The resulting tensor programs will still be functionally correct but the performance can be sub-optimal.

About

DietCode Code Release

https://UofT-EcoSystem.github.io/DietCode/


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