This README provides an abbreviated documentation of the DLIO code. Please refer to https://dlio-benchmark.readthedocs.io for full user documentation.
DLIO is an I/O benchmark for Deep Learning. DLIO is aimed at emulating the I/O behavior of various deep learning applications. The benchmark is delivered as an executable that can be configured for various I/O patterns. It uses a modular design to incorporate more data loaders, data formats, datasets, and configuration parameters. It emulates modern deep learning applications using Benchmark Runner, Data Generator, Format Handler, and I/O Profiler modules.
git clone https://github.com/argonne-lcf/dlio_benchmark
cd dlio_benchmark/
pip install .
dlio_benchmark ++workload.workflow.generate_data=True
git clone https://github.com/argonne-lcf/dlio_benchmark
cd dlio_benchmark/
pip install .[pydftracer]
git clone https://github.com/argonne-lcf/dlio_benchmark
cd dlio_benchmark/
docker build -t dlio .
docker run -t dlio dlio_benchmark ++workload.workflow.generate_data=True
You can also pull rebuilt container from docker hub (might not reflect the most recent change of the code):
docker docker.io/zhenghh04/dlio:latest
docker run -t docker.io/zhenghh04/dlio:latest python ./dlio_benchmark/main.py ++workload.workflow.generate_data=True
If your running on a different architecture, refer to the Dockerfile to build the dlio_benchmark container from scratch.
One can also run interactively inside the container
docker run -t docker.io/zhenghh04/dlio:latest /bin/bash
root@30358dd47935:/workspace/dlio$ python ./dlio_benchmark/main.py ++workload.workflow.generate_data=True
PowerPC requires installation through anaconda.
# Setup required channels
conda config --prepend channels https://public.dhe.ibm.com/ibmdl/export/pub/software/server/ibm-ai/conda/
# create and activate environment
conda env create --prefix ./dlio_env_ppc --file environment-ppc.yaml --force
conda activate ./dlio_env_ppc
# install other dependencies
python -m pip install .
For specific instructions on how to install and run the benchmark on Lassen please refer to: Install Lassen
A DLIO run is split in 3 phases:
- Generate synthetic data that DLIO will use
- Run the benchmark using the previously generated data
- Post-process the results to generate a report
The configurations of a workload can be specified through a yaml file. Examples of yaml files can be found in dlio_benchmark/configs/workload/.
One can specify the workload through the workload=
option on the command line. Specific configuration fields can then be overridden following the hydra
framework convention (e.g. ++workload.framework=tensorflow
).
First, generate the data
mpirun -np 8 dlio_benchmark workload=unet3d ++workload.workflow.generate_data=True ++workload.workflow.train=False
If possible, one can flush the filesystem caches in order to properly capture device I/O
sudo sync && echo 3 | sudo tee /proc/sys/vm/drop_caches
Finally, run the benchmark
mpirun -np 8 dlio_benchmark workload=unet3d
Finally, run the benchmark with Tracer
export DFTRACER_ENABLE=1
export DFTRACER_INC_METADATA=1
mpirun -np 8 dlio_benchmark workload=unet3d
All the outputs will be stored in hydra_log/unet3d/$DATE-$TIME
folder. To post process the data, one can do
dlio_postprocessor --output-folder hydra_log/unet3d/$DATE-$TIME
This will generate DLIO_$model_report.txt
in the output folder.
Workload characteristics are specified by a YAML configuration file. Below is an example of a YAML file for the UNet3D workload which is used for 3D image segmentation.
# contents of unet3d.yaml
model: unet3d
framework: pytorch
workflow:
generate_data: False
train: True
checkpoint: True
dataset:
data_folder: data/unet3d/
format: npz
num_files_train: 168
num_samples_per_file: 1
record_length: 146600628
record_length_stdev: 68341808
record_length_resize: 2097152
reader:
data_loader: pytorch
batch_size: 4
read_threads: 4
file_shuffle: seed
sample_shuffle: seed
train:
epochs: 5
computation_time: 1.3604
checkpoint:
checkpoint_folder: checkpoints/unet3d
checkpoint_after_epoch: 5
epochs_between_checkpoints: 2
model_size: 499153191
The full list of configurations can be found in: https://argonne-lcf.github.io/dlio_benchmark/config.html
The YAML file is loaded through hydra (https://hydra.cc/). The default setting are overridden by the configurations loaded from the YAML file. One can override the configuration through command line (https://hydra.cc/docs/advanced/override_grammar/basic/).
-
DLIO currently assumes the samples to always be 2D images, even though one can set the size of each sample through
--record_length
. We expect the shape of the sample to have minimal impact to the I/O itself. This yet to be validated for case by case perspective. We plan to add option to allow specifying the shape of the sample. -
We assume the data/label pairs are stored in the same file. Storing data and labels in separate files will be supported in future.
-
File format support: we only support tfrecord, hdf5, npz, csv, jpg, jpeg formats. Other data formats can be extended.
-
Data Loader support: we support reading datasets using TensorFlow tf.data data loader, PyTorch DataLoader, and a set of custom data readers implemented in ./reader. For TensorFlow tf.data data loader, PyTorch DataLoader
- We have complete support for tfrecord format in TensorFlow data loader.
- For npz, jpg, jpeg, hdf5, we currently only support one sample per file case. In other words, each sample is stored in an independent file. Multiple samples per file case will be supported in future.
We welcome contributions from the community to the benchmark code. Specifically, we welcome contribution in the following aspects: General new features needed including:
- support for new workloads: if you think that your workload(s) would be interested to the public, and would like to provide the yaml file to be included in the repo, please submit an issue.
- support for new data loaders, such as DALI loader, MxNet loader, etc
- support for new frameworks, such as MxNet
- support for noval file systems or storage, such as AWS S3.
- support for loading new data formats.
If you would like to contribute, please submit an issue to https://github.com/argonne-lcf/dlio_benchmark/issues, and contact ALCF DLIO team, Huihuo Zheng at [email protected]
The original CCGrid'21 paper describes the design and implementation of DLIO code. Please cite this paper if you use DLIO for your research.
@article{devarajan2021dlio,
title={DLIO: A Data-Centric Benchmark for Scientific Deep Learning Applications},
author={H. Devarajan and H. Zheng and A. Kougkas and X.-H. Sun and V. Vishwanath},
booktitle={IEEE/ACM International Symposium in Cluster, Cloud, and Internet Computing (CCGrid'21)},
year={2021},
volume={},
number={81--91},
pages={},
publisher={IEEE/ACM}
}
We also encourage people to take a look at a relevant work from MLPerf Storage working group.
@article{balmau2022mlperfstorage,
title={Characterizing I/O in Machine Learning with MLPerf Storage},
author={O. Balmau},
booktitle={SIGMOD Record DBrainstorming},
year={2022},
volume={51},
number={3},
publisher={ACM}
}
This work used resources of the Argonne Leadership Computing Facility, which is a DOE Office of Science User Facility under Contract DE-AC02-06CH11357 and is supported in part by National Science Foundation under NSF, OCI-1835764 and NSF, CSR-1814872.
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