An IR to represent distributed computations. Our main goal is an IR capable of representing the complex distributed strategies used in large-scale distributed training, while at the same time enabling fast cost models/simulations.
Distributed strategies we want to support:
- Data parallelism
- Horizontal parallelism
- Pipeline parallelism
- Megatron
- ZeRO partitioning
- PyTorch lightning's Zero
- Stashing & recomputation
- Overlapping computation and communication
- Local layer parallelism
See the build file and PIP packages list.
- dist_ir: Python source for DistIR
- ir: IR definitions
- importer: create DistIR from ONNX/MLIR
- executor: ways to "execute" or simulate DistIR
- docs: documentation and notes
- notebooks: small experiments and worked examples
- test: unit tests, small/toy example models
Run the following from the root of this repository:
python -m pytest
- Executors:
- SequentialExecutor: a reference implementation that runs a DistIR function on a single device. Can be used to check correctness of transforms.
- DistributedSimulator: an executor that uses profile data or flop counts to
simulate the execution of a given DistIR function on a given hardware
configuration (including communication bandwidths and processor speed).
Returns estimated execution time and live memory profile. This can be
split into three subcomponents:
- Shape Inference: a pass that uses the shapes of inputs to calculate the shapes of all intermediate values.
- Cost Inference: a pass that uses either shape information to compute (or profiles the function and measures) the runtime and temporary memory requirement of each op in the function. This output can be cached.
- Simulator: takes a function and a mapping from op to time/memory consumption and does a simulation to obtain a concurrent trace (from which total runtime and memory usage plots can be derived).
- Importers:
- ONNX Importer: convert a
.onnx
file to a DistIR function. Can be given an intermediate graph from ORT (for example, after AD). - MLIR Importer: import a DistIR function written in MLIR text format to an in-memory DistIR function object. TODO
- ONNX Importer: convert a
- Exporter/Prettyprinter: converts a DistIR function to an MLIR text format string.
- Transforms: a module containing DistIR->DistIR transforms.
Ideally, these transforms should be composable and should run on subfunctions
so that we can have nested parallelism (data parallel where a subset of the
layers are horizontal parallel, or pipeline parallel where each stage is
data parallel with a different degree).
- DataParallelTransform: converts a given DistIR function to a data-parallel version that runs on a given number of devices.
- HorizontalParallelTransform: converts a given DistIR function to a horizontal-parallel version (if possible) that runs on a given number of devices.
- PipelineParallelTransform: converts a given DistIR function to a pipeline-parallel version that runs on a given number of devices.
- Search: an algorithm to find the best distributed version of a given sequential DistIR function. Initially, this can be something that searches the DHP space (i.e. find the optimal parameters to give the D/H/P transforms).
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