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Using torch.compile in Pyro models #2256
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Hi @vitkl, |
The purpose is to enable general support for Pyro scvi-tools models. It is possible that some models benefit from this more than other models but it's good to have this option. Pyro adds additional challenges to using Re-implementation of models in numpyro is not always practical because i) numpyro doesn't cover all functionality and because ii) we observed in the past that JAX uses 2-4x of GPU memory for the same data size -meaning> less practical to use for larger datasets where every bit of GPU memory matters. |
I agree that speed-up is expected to be largely model-dependent and that scVI is small and might be a bad proxy. Adam and Martin experimented with torch.compile, however, only in the pytorch models. I would expect it's more straightforward to train the model/guide for one step (similar to our current load procedure) scvi-tools/scvi/module/base/_base_module.py Line 388 in 4965279
|
Do you suggest to modify self.module.on_load(self)
self.module._model = torch.compile(self.module.model)
self.module._guide = torch.compile(self.module.guide) Are |
As a proxy for compilation effect on cell2location, I can mention that our old theano+pymc3 implementation was 2-4 times faster for the same number of training steps. Would be great to see what happens here. A 2-4x speedup would be really nice. |
I tried it out on my side and got some cryptic error messages (it was on a private repo with a not published model though). My idea was to call self.train(max_steps=1) once and afterwards compile. So using the guide warmup by running a single train step. I'm happy to review if you have a PR. |
I will try your suggestion. Do I get this right that you suggest to def train(self, ...):
self.train(..., max_steps=1)
self.module._model = torch.compile(self.module.model)
self.module._guide = torch.compile(self.module.guide)
self.train(...) ? |
Yes, that's my understanding of how we do guide warmups for Pyro (e.g. during loading a trained model). I don't think pyro.clear_param_store() is necessary here. |
This is a good point. I will test this. Lets see what happens with cell2location. |
Looks like def MyModelClass(PyroSampleMixin, PyroSviTrainMixin, BaseModelClass):
def train_compiled(self, **kwargs):
import torch
self.train(**kwargs, max_steps=1)
self.module._model = torch.compile(self.module.model)
self.module._guide = torch.compile(self.module.guide)
self.train(**kwargs) The model and guide are successfully replaced:
Pytorch documentation says (https://pytorch.org/tutorials/intermediate/torch_compile_tutorial.html):
I wonder if this means that speedups only come for models that don't already have 100% GPU utilisation. Cell2location mainly uses very large full data batches. I also get errors if I attempt using amortised inference (using encoder NN as part of the guide). File /nfs/team283/vk7/software/miniconda3farm5/envs/cell2loc_env_2023/lib/python3.9/site-packages/torch/fx/experimental/symbolic_shapes.py:1544, in ShapeGuardPrinter._print_Symbol(self, expr)
1538 def repr_symbol_to_source():
1539 return repr({
1540 symbol: [s.name() for s in sources]
1541 for symbol, sources in self.symbol_to_source.items()
1542 })
-> 1544 assert self.symbol_to_source.get(expr), (
1545 f"{expr} (could be from {[s.name() for s in self.var_to_sources[expr]]}) "
1546 f"not in {repr_symbol_to_source()}. If this assert is failing, it could be "
1547 "due to the issue described in https://github.com/pytorch/pytorch/pull/90665"
1548 )
1549 return self.source_ref(self.symbol_to_source[expr][0])
AssertionError: s2 (could be from ["L['msg']['infer']['prior']._batch_shape[0]"]) not in {s0: ["L['msg']['value'].size()[0]"], s1: ["L['msg']['value'].size()[1]", "L['msg']['value'].stride()[0]"], s5: [], s2: [], s4: [], s3: []}. If this assert is failing, it could be due to the issue described in https://github.com/pytorch/pytorch/pull/90665 |
Hi @adamgayoso and others (also cc @fritzo, @martinjankowiak @eb8680)
It would be great if the new
torch.compile
function could be used with the Pyro model and guide in scvi-tools.I am happy to contribute this functionality, however, I need your recommendations on what to do with the following problem. Suppose we create add
torch.compile
as shown below:The problem is that Pyro creates guide parameters when they are first needed - requiring these callbacks
scvi-tools/scvi/model/base/_pyromixin.py
Lines 19 to 71 in a210867
torch.compile(_guide)
should similarly be called only after the parameters are created.I see one solution to this. Run the following code
scvi-tools/scvi/model/base/_pyromixin.py
Lines 65 to 71 in a210867
model.train()
manually without using a callback after creating data loaders but before creatingTrainRunner
andTrainingPlan
.Then modify the training plan as follows:
What do you think about this? Do you have any better ideas on how to implement this?
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